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214 Best Big Data Research Topics for Your Thesis Paper

big data research topics

Finding an ideal big data research topic can take you a long time. Big data, IoT, and robotics have evolved. The future generations will be immersed in major technologies that will make work easier. Work that was done by 10 people will now be done by one person or a machine. This is amazing because, in as much as there will be job loss, more jobs will be created. It is a win-win for everyone.

Big data is a major topic that is being embraced globally. Data science and analytics are helping institutions, governments, and the private sector. We will share with you the best big data research topics.

On top of that, we can offer you the best writing tips to ensure you prosper well in your academics. As students in the university, you need to do proper research to get top grades. Hence, you can consult us if in need of research paper writing services.

Big Data Analytics Research Topics for your Research Project

Are you looking for an ideal big data analytics research topic? Once you choose a topic, consult your professor to evaluate whether it is a great topic. This will help you to get good grades.

  • Which are the best tools and software for big data processing?
  • Evaluate the security issues that face big data.
  • An analysis of large-scale data for social networks globally.
  • The influence of big data storage systems.
  • The best platforms for big data computing.
  • The relation between business intelligence and big data analytics.
  • The importance of semantics and visualization of big data.
  • Analysis of big data technologies for businesses.
  • The common methods used for machine learning in big data.
  • The difference between self-turning and symmetrical spectral clustering.
  • The importance of information-based clustering.
  • Evaluate the hierarchical clustering and density-based clustering application.
  • How is data mining used to analyze transaction data?
  • The major importance of dependency modeling.
  • The influence of probabilistic classification in data mining.

Interesting Big Data Analytics Topics

Who said big data had to be boring? Here are some interesting big data analytics topics that you can try. They are based on how some phenomena are done to make the world a better place.

  • Discuss the privacy issues in big data.
  • Evaluate the storage systems of scalable in big data.
  • The best big data processing software and tools.
  • Data mining tools and techniques are popularly used.
  • Evaluate the scalable architectures for parallel data processing.
  • The major natural language processing methods.
  • Which are the best big data tools and deployment platforms?
  • The best algorithms for data visualization.
  • Analyze the anomaly detection in cloud servers
  • The scrutiny normally done for the recruitment of big data job profiles.
  • The malicious user detection in big data collection.
  • Learning long-term dependencies via the Fourier recurrent units.
  • Nomadic computing for big data analytics.
  • The elementary estimators for graphical models.
  • The memory-efficient kernel approximation.

Big Data Latest Research Topics

Do you know the latest research topics at the moment? These 15 topics will help you to dive into interesting research. You may even build on research done by other scholars.

  • Evaluate the data mining process.
  • The influence of the various dimension reduction methods and techniques.
  • The best data classification methods.
  • The simple linear regression modeling methods.
  • Evaluate the logistic regression modeling.
  • What are the commonly used theorems?
  • The influence of cluster analysis methods in big data.
  • The importance of smoothing methods analysis in big data.
  • How is fraud detection done through AI?
  • Analyze the use of GIS and spatial data.
  • How important is artificial intelligence in the modern world?
  • What is agile data science?
  • Analyze the behavioral analytics process.
  • Semantic analytics distribution.
  • How is domain knowledge important in data analysis?

Big Data Debate Topics

If you want to prosper in the field of big data, you need to try even hard topics. These big data debate topics are interesting and will help you to get a better understanding.

  • The difference between big data analytics and traditional data analytics methods.
  • Why do you think the organization should think beyond the Hadoop hype?
  • Does the size of the data matter more than how recent the data is?
  • Is it true that bigger data are not always better?
  • The debate of privacy and personalization in maintaining ethics in big data.
  • The relation between data science and privacy.
  • Do you think data science is a rebranding of statistics?
  • Who delivers better results between data scientists and domain experts?
  • According to your view, is data science dead?
  • Do you think analytics teams need to be centralized or decentralized?
  • The best methods to resource an analytics team.
  • The best business case for investing in analytics.
  • The societal implications of the use of predictive analytics within Education.
  • Is there a need for greater control to prevent experimentation on social media users without their consent?
  • How is the government using big data; for the improvement of public statistics or to control the population?

University Dissertation Topics on Big Data

Are you doing your Masters or Ph.D. and wondering the best dissertation topic or thesis to do? Why not try any of these? They are interesting and based on various phenomena. While doing the research ensure you relate the phenomenon with the current modern society.

  • The machine learning algorithms are used for fall recognition.
  • The divergence and convergence of the internet of things.
  • The reliable data movements using bandwidth provision strategies.
  • How is big data analytics using artificial neural networks in cloud gaming?
  • How is Twitter accounts classification done using network-based features?
  • How is online anomaly detection done in the cloud collaborative environment?
  • Evaluate the public transportation insights provided by big data.
  • Evaluate the paradigm for cancer patients using the nursing EHR to predict the outcome.
  • Discuss the current data lossless compression in the smart grid.
  • How does online advertising traffic prediction helps in boosting businesses?
  • How is the hyperspectral classification done using the multiple kernel learning paradigm?
  • The analysis of large data sets downloaded from websites.
  • How does social media data help advertising companies globally?
  • Which are the systems recognizing and enforcing ownership of data records?
  • The alternate possibilities emerging for edge computing.

The Best Big Data Analysis Research Topics and Essays

There are a lot of issues that are associated with big data. Here are some of the research topics that you can use in your essays. These topics are ideal whether in high school or college.

  • The various errors and uncertainty in making data decisions.
  • The application of big data on tourism.
  • The automation innovation with big data or related technology
  • The business models of big data ecosystems.
  • Privacy awareness in the era of big data and machine learning.
  • The data privacy for big automotive data.
  • How is traffic managed in defined data center networks?
  • Big data analytics for fault detection.
  • The need for machine learning with big data.
  • The innovative big data processing used in health care institutions.
  • The money normalization and extraction from texts.
  • How is text categorization done in AI?
  • The opportunistic development of data-driven interactive applications.
  • The use of data science and big data towards personalized medicine.
  • The programming and optimization of big data applications.

The Latest Big Data Research Topics for your Research Proposal

Doing a research proposal can be hard at first unless you choose an ideal topic. If you are just diving into the big data field, you can use any of these topics to get a deeper understanding.

  • The data-centric network of things.
  • Big data management using artificial intelligence supply chain.
  • The big data analytics for maintenance.
  • The high confidence network predictions for big biological data.
  • The performance optimization techniques and tools for data-intensive computation platforms.
  • The predictive modeling in the legal context.
  • Analysis of large data sets in life sciences.
  • How to understand the mobility and transport modal disparities sing emerging data sources?
  • How do you think data analytics can support asset management decisions?
  • An analysis of travel patterns for cellular network data.
  • The data-driven strategic planning for citywide building retrofitting.
  • How is money normalization done in data analytics?
  • Major techniques used in data mining.
  • The big data adaptation and analytics of cloud computing.
  • The predictive data maintenance for fault diagnosis.

Interesting Research Topics on A/B Testing In Big Data

A/B testing topics are different from the normal big data topics. However, you use an almost similar methodology to find the reasons behind the issues. These topics are interesting and will help you to get a deeper understanding.

  • How is ultra-targeted marketing done?
  • The transition of A/B testing from digital to offline.
  • How can big data and A/B testing be done to win an election?
  • Evaluate the use of A/B testing on big data
  • Evaluate A/B testing as a randomized control experiment.
  • How does A/B testing work?
  • The mistakes to avoid while conducting the A/B testing.
  • The most ideal time to use A/B testing.
  • The best way to interpret results for an A/B test.
  • The major principles of A/B tests.
  • Evaluate the cluster randomization in big data
  • The best way to analyze A/B test results and the statistical significance.
  • How is A/B testing used in boosting businesses?
  • The importance of data analysis in conversion research
  • The importance of A/B testing in data science.

Amazing Research Topics on Big Data and Local Governments

Governments are now using big data to make the lives of the citizens better. This is in the government and the various institutions. They are based on real-life experiences and making the world better.

  • Assess the benefits and barriers of big data in the public sector.
  • The best approach to smart city data ecosystems.
  • The big analytics used for policymaking.
  • Evaluate the smart technology and emergence algorithm bureaucracy.
  • Evaluate the use of citizen scoring in public services.
  • An analysis of the government administrative data globally.
  • The public values are found in the era of big data.
  • Public engagement on local government data use.
  • Data analytics use in policymaking.
  • How are algorithms used in public sector decision-making?
  • The democratic governance in the big data era.
  • The best business model innovation to be used in sustainable organizations.
  • How does the government use the collected data from various sources?
  • The role of big data for smart cities.
  • How does big data play a role in policymaking?

Easy Research Topics on Big Data

Who said big data topics had to be hard? Here are some of the easiest research topics. They are based on data management, research, and data retention. Pick one and try it!

  • Who uses big data analytics?
  • Evaluate structure machine learning.
  • Explain the whole deep learning process.
  • Which are the best ways to manage platforms for enterprise analytics?
  • Which are the new technologies used in data management?
  • What is the importance of data retention?
  • The best way to work with images is when doing research.
  • The best way to promote research outreach is through data management.
  • The best way to source and manage external data.
  • Does machine learning improve the quality of data?
  • Describe the security technologies that can be used in data protection.
  • Evaluate token-based authentication and its importance.
  • How can poor data security lead to the loss of information?
  • How to determine secure data.
  • What is the importance of centralized key management?

Unique IoT and Big Data Research Topics

Internet of Things has evolved and many devices are now using it. There are smart devices, smart cities, smart locks, and much more. Things can now be controlled by the touch of a button.

  • Evaluate the 5G networks and IoT.
  • Analyze the use of Artificial intelligence in the modern world.
  • How do ultra-power IoT technologies work?
  • Evaluate the adaptive systems and models at runtime.
  • How have smart cities and smart environments improved the living space?
  • The importance of the IoT-based supply chains.
  • How does smart agriculture influence water management?
  • The internet applications naming and identifiers.
  • How does the smart grid influence energy management?
  • Which are the best design principles for IoT application development?
  • The best human-device interactions for the Internet of Things.
  • The relation between urban dynamics and crowdsourcing services.
  • The best wireless sensor network for IoT security.
  • The best intrusion detection in IoT.
  • The importance of big data on the Internet of Things.

Big Data Database Research Topics You Should Try

Big data is broad and interesting. These big data database research topics will put you in a better place in your research. You also get to evaluate the roles of various phenomena.

  • The best cloud computing platforms for big data analytics.
  • The parallel programming techniques for big data processing.
  • The importance of big data models and algorithms in research.
  • Evaluate the role of big data analytics for smart healthcare.
  • How is big data analytics used in business intelligence?
  • The best machine learning methods for big data.
  • Evaluate the Hadoop programming in big data analytics.
  • What is privacy-preserving to big data analytics?
  • The best tools for massive big data processing
  • IoT deployment in Governments and Internet service providers.
  • How will IoT be used for future internet architectures?
  • How does big data close the gap between research and implementation?
  • What are the cross-layer attacks in IoT?
  • The influence of big data and smart city planning in society.
  • Why do you think user access control is important?

Big Data Scala Research Topics

Scala is a programming language that is used in data management. It is closely related to other data programming languages. Here are some of the best scala questions that you can research.

  • Which are the most used languages in big data?
  • How is scala used in big data research?
  • Is scala better than Java in big data?
  • How is scala a concise programming language?
  • How does the scala language stream process in real-time?
  • Which are the various libraries for data science and data analysis?
  • How does scala allow imperative programming in data collection?
  • Evaluate how scala includes a useful REPL for interaction.
  • Evaluate scala’s IDE support.
  • The data catalog reference model.
  • Evaluate the basics of data management and its influence on research.
  • Discuss the behavioral analytics process.
  • What can you term as the experience economy?
  • The difference between agile data science and scala language.
  • Explain the graph analytics process.

Independent Research Topics for Big Data

These independent research topics for big data are based on the various technologies and how they are related. Big data will greatly be important for modern society.

  • The biggest investment is in big data analysis.
  • How are multi-cloud and hybrid settings deep roots?
  • Why do you think machine learning will be in focus for a long while?
  • Discuss in-memory computing.
  • What is the difference between edge computing and in-memory computing?
  • The relation between the Internet of things and big data.
  • How will digital transformation make the world a better place?
  • How does data analysis help in social network optimization?
  • How will complex big data be essential for future enterprises?
  • Compare the various big data frameworks.
  • The best way to gather and monitor traffic information using the CCTV images
  • Evaluate the hierarchical structure of groups and clusters in the decision tree.
  • Which are the 3D mapping techniques for live streaming data.
  • How does machine learning help to improve data analysis?
  • Evaluate DataStream management in task allocation.
  • How is big data provisioned through edge computing?
  • The model-based clustering of texts.
  • The best ways to manage big data.
  • The use of machine learning in big data.

Is Your Big Data Thesis Giving You Problems?

These are some of the best topics that you can use to prosper in your studies. Not only are they easy to research but also reflect on real-time issues. Whether in University or college, you need to put enough effort into your studies to prosper. However, if you have time constraints, we can provide professional writing help. Are you looking for online expert writers? Look no further, we will provide quality work at a cheap price.

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List of Best Research and Thesis Topic Ideas for Data Science in 2022

In an era driven by digital and technological transformation, businesses actively seek skilled and talented data science potentials capable of leveraging data insights to enhance business productivity and achieve organizational objectives. In keeping with an increasing demand for data science professionals, universities offer various data science and big data courses to prepare students for the tech industry. Research projects are a crucial part of these programs and a well- executed data science project can make your CV appear more robust and compelling. A  broad range of data science topics exist that offer exciting possibilities for research but choosing data science research topics can be a real challenge for students . After all, a good research project relies first and foremost on data analytics research topics that draw upon both mono-disciplinary and multi-disciplinary research to explore endless possibilities for real –world applications.

As one of the top-most masters and PhD online dissertation writing services , we are geared to assist students in the entire research process right from the initial conception to the final execution to ensure that you have a truly fulfilling and enriching research experience. These resources are also helpful for those students who are taking online classes .

By taking advantage of our best digital marketing research topics in data science you can be assured of producing an innovative research project that will impress your research professors and make a huge difference in attracting the right employers.

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Data science thesis topics

We have compiled a list of data science research topics for students studying data science that can be utilized in data science projects in 2022. our team of professional data experts have brought together master or MBA thesis topics in data science  that cater to core areas  driving the field of data science and big data that will relieve all your research anxieties and  provide a solid grounding for  an interesting research projects . The article will feature data science thesis ideas that can be immensely beneficial for students as they cover a broad research agenda for future data science . These ideas have been drawn from the 8 v’s of big data namely Volume, Value, Veracity, Visualization, Variety, Velocity, Viscosity, and Virility that provide interesting and challenging research areas for prospective researches  in their masters or PhD thesis . Overall, the general big data research topics can be divided into distinct categories to facilitate the research topic selection process.

  • Security and privacy issues
  • Cloud Computing Platforms for Big Data Adoption and Analytics
  • Real-time data analytics for processing of image , video and text
  • Modeling uncertainty

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Our top thesis writing experts are available 24/7 to assist you the right university projects. Whether its critical literature reviews to complete your PhD. or Master Levels thesis.

DATA SCIENCE PHD RESEARCH TOPICS

The article will also guide students engaged in doctoral research by introducing them to an outstanding list of data science thesis topics that can lead to major real-time applications of big data analytics in your research projects.

  • Intelligent traffic control ; Gathering and monitoring traffic information using CCTV images.
  • Asymmetric protected storage methodology over multi-cloud service providers in Big data.
  • Leveraging disseminated data over big data analytics environment.
  • Internet of Things.
  • Large-scale data system and anomaly detection.

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We offer all –round and superb research services that have a distinguished track record in helping students secure their desired grades in research projects in big data analytics and hence pave the way for a promising career ahead. These are the features that set us apart in the market for research services that effectively deal with all significant issues in your research for.

  • Plagiarism –free ; We strictly adhere to a non-plagiarism policy in all our research work to  provide you with well-written, original content  with low similarity index   to maximize  chances of acceptance of your research submissions.
  • Publication; We don’t just suggest PhD data science research topics but our PhD consultancy services take your research to the next level by ensuring its publication in well-reputed journals. A PhD thesis is indispensable for a PhD degree and with our premier best PhD thesis services that  tackle all aspects  of research writing and cater to  essential requirements of journals , we will bring you closer to your dream of being a PhD in the field of data analytics.
  • Research ethics: Solid research ethics lie at the core of our services where we actively seek to protect the  privacy and confidentiality of  the technical and personal information of our valued customers.
  • Research experience: We take pride in our world –class team of computing industry professionals equipped with the expertise and experience to assist in choosing data science research topics and subsequent phases in research including findings solutions, code development and final manuscript writing.
  • Business ethics: We are driven by a business philosophy that‘s wholly committed to achieving total customer satisfaction by providing constant online and offline support and timely submissions so that you can keep track of the progress of your research.

Now, we’ll proceed to cover specific research problems encompassing both data analytics research topics and big data thesis topics that have applications across multiple domains.

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TheresearchGuardian.com providing expert thesis assistance for university students at any sort of level. Our thesis writing service has been serving students since 2011.

Multi-modal Transfer Learning for Cross-Modal Information Retrieval

Aim and objectives.

The research aims to examine and explore the use of CMR approach in bringing about a flexible retrieval experience by combining data across different modalities to ensure abundant multimedia data.

  • Develop methods to enable learning across different modalities in shared cross modal spaces comprising texts and images as well as consider the limitations of existing cross –modal retrieval algorithms.
  • Investigate the presence and effects of bias in cross modal transfer learning and suggesting strategies for bias detection and mitigation.
  • Develop a tool with query expansion and relevance feedback capabilities to facilitate search and retrieval of multi-modal data.
  • Investigate the methods of multi modal learning and elaborate on the importance of multi-modal deep learning to provide a comprehensive learning experience.

The Role of Machine Learning in Facilitating the Implication of the Scientific Computing and Software Engineering

  • Evaluate how machine learning leads to improvements in computational APA reference generator tools and thus aids in  the implementation of scientific computing
  • Evaluating the effectiveness of machine learning in solving complex problems and improving the efficiency of scientific computing and software engineering processes.
  • Assessing the potential benefits and challenges of using machine learning in these fields, including factors such as cost, accuracy, and scalability.
  • Examining the ethical and social implications of using machine learning in scientific computing and software engineering, such as issues related to bias, transparency, and accountability.

Trustworthy AI

The research aims to explore the crucial role of data science in advancing scientific goals and solving problems as well as the implications involved in use of AI systems especially with respect to ethical concerns.

  • Investigate the value of digital infrastructures  available through open data   in  aiding sharing  and inter linking of data for enhanced global collaborative research efforts
  • Provide explanations of the outcomes of a machine learning model  for a meaningful interpretation to build trust among users about the reliability and authenticity of data
  • Investigate how formal models can be used to verify and establish the efficacy of the results derived from probabilistic model.
  • Review the concept of Trustworthy computing as a relevant framework for addressing the ethical concerns associated with AI systems.

The Implementation of Data Science and their impact on the management environment and sustainability

The aim of the research is to demonstrate how data science and analytics can be leveraged in achieving sustainable development.

  • To examine the implementation of data science using data-driven decision-making tools
  • To evaluate the impact of modern information technology on management environment and sustainability.
  • To examine the use of  data science in achieving more effective and efficient environment management
  • Explore how data science and analytics can be used to achieve sustainability goals across three dimensions of economic, social and environmental.

Big data analytics in healthcare systems

The aim of the research is to examine the application of creating smart healthcare systems and   how it can   lead to more efficient, accessible and cost –effective health care.

  • Identify the potential Areas or opportunities in big data to transform the healthcare system such as for diagnosis, treatment planning, or drug development.
  • Assessing the potential benefits and challenges of using AI and deep learning in healthcare, including factors such as cost, efficiency, and accessibility
  • Evaluating the effectiveness of AI and deep learning in improving patient outcomes, such as reducing morbidity and mortality rates, improving accuracy and speed of diagnoses, or reducing medical errors
  • Examining the ethical and social implications of using AI and deep learning in healthcare, such as issues related to bias, privacy, and autonomy.

Large-Scale Data-Driven Financial Risk Assessment

The research aims to explore the possibility offered by big data in a consistent and real time assessment of financial risks.

  • Investigate how the use of big data can help to identify and forecast risks that can harm a business.
  • Categories the types of financial risks faced by companies.
  • Describe the importance of financial risk management for companies in business terms.
  • Train a machine learning model to classify transactions as fraudulent or genuine.

Scalable Architectures for Parallel Data Processing

Big data has exposed us to an ever –growing volume of data which cannot be handled through traditional data management and analysis systems. This has given rise to the use of scalable system architectures to efficiently process big data and exploit its true value. The research aims to analyses the current state of practice in scalable architectures and identify common patterns and techniques to design scalable architectures for parallel data processing.

  • To design and implement a prototype scalable architecture for parallel data processing
  • To evaluate the performance and scalability of the prototype architecture using benchmarks and real-world datasets
  • To compare the prototype architecture with existing solutions and identify its strengths and weaknesses
  • To evaluate the trade-offs and limitations of different scalable architectures for parallel data processing
  • To provide recommendations for the use of the prototype architecture in different scenarios, such as batch processing, stream processing, and interactive querying

Robotic manipulation modelling

The aim of this research is to develop and validate a model-based control approach for robotic manipulation of small, precise objects.

  • Develop a mathematical model of the robotic system that captures the dynamics of the manipulator and the grasped object.
  • Design a control algorithm that uses the developed model to achieve stable and accurate grasping of the object.
  • Test the proposed approach in simulation and validate the results through experiments with a physical robotic system.
  • Evaluate the performance of the proposed approach in terms of stability, accuracy, and robustness to uncertainties and perturbations.
  • Identify potential applications and areas for future work in the field of robotic manipulation for precision tasks.

Big data analytics and its impacts on marketing strategy

The aim of this research is to investigate the impact of big data analytics on marketing strategy and to identify best practices for leveraging this technology to inform decision-making.

  • Review the literature on big data analytics and marketing strategy to identify key trends and challenges
  • Conduct a case study analysis of companies that have successfully integrated big data analytics into their marketing strategies
  • Identify the key factors that contribute to the effectiveness of big data analytics in marketing decision-making
  • Develop a framework for integrating big data analytics into marketing strategy.
  • Investigate the ethical implications of big data analytics in marketing and suggest best practices for responsible use of this technology.

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Take a review of different varieties of thesis topics and samples from our website TheResearchGuardian.com on multiple subjects for every educational level.

Platforms for large scale data computing: big data analysis and acceptance

To investigate the performance and scalability of different large-scale data computing platforms.

  • To compare the features and capabilities of different platforms and determine which is most suitable for a given use case.
  • To identify best practices for using these platforms, including considerations for data management, security, and cost.
  • To explore the potential for integrating these platforms with other technologies and tools for data analysis and visualization.
  • To develop case studies or practical examples of how these platforms have been used to solve real-world data analysis challenges.

Distributed data clustering

Distributed data clustering can be a useful approach for analyzing and understanding complex datasets, as it allows for the identification of patterns and relationships that may not be immediately apparent.

To develop and evaluate new algorithms for distributed data clustering that is efficient and scalable.

  • To compare the performance and accuracy of different distributed data clustering algorithms on a variety of datasets.
  • To investigate the impact of different parameters and settings on the performance of distributed data clustering algorithms.
  • To explore the potential for integrating distributed data clustering with other machine learning and data analysis techniques.
  • To apply distributed data clustering to real-world problems and evaluate its effectiveness.

Analyzing and predicting urbanization patterns using GIS and data mining techniques".

The aim of this project is to use GIS and data mining techniques to analyze and predict urbanization patterns in a specific region.

  • To collect and process relevant data on urbanization patterns, including population density, land use, and infrastructure development, using GIS tools.
  • To apply data mining techniques, such as clustering and regression analysis, to identify trends and patterns in the data.
  • To use the results of the data analysis to develop a predictive model for urbanization patterns in the region.
  • To present the results of the analysis and the predictive model in a clear and visually appealing way, using GIS maps and other visualization techniques.

Use of big data and IOT in the media industry

Big data and the Internet of Things (IoT) are emerging technologies that are transforming the way that information is collected, analyzed, and disseminated in the media sector. The aim of the research is to understand how big data and IoT re used to dictate information flow in the media industry

  • Identifying the key ways in which big data and IoT are being used in the media sector, such as for content creation, audience engagement, or advertising.
  • Analyzing the benefits and challenges of using big data and IoT in the media industry, including factors such as cost, efficiency, and effectiveness.
  • Examining the ethical and social implications of using big data and IoT in the media sector, including issues such as privacy, security, and bias.
  • Determining the potential impact of big data and IoT on the media landscape and the role of traditional media in an increasingly digital world.

Exigency computer systems for meteorology and disaster prevention

The research aims to explore the role of exigency computer systems to detect weather and other hazards for disaster prevention and response

  • Identifying the key components and features of exigency computer systems for meteorology and disaster prevention, such as data sources, analytics tools, and communication channels.
  • Evaluating the effectiveness of exigency computer systems in providing accurate and timely information about weather and other hazards.
  • Assessing the impact of exigency computer systems on the ability of decision makers to prepare for and respond to disasters.
  • Examining the challenges and limitations of using exigency computer systems, such as the need for reliable data sources, the complexity of the systems, or the potential for human error.

Network security and cryptography

Overall, the goal of research is to improve our understanding of how to protect communication and information in the digital age, and to develop practical solutions for addressing the complex and evolving security challenges faced by individuals, organizations, and societies.

  • Developing new algorithms and protocols for securing communication over networks, such as for data confidentiality, data integrity, and authentication
  • Investigating the security of existing cryptographic primitives, such as encryption and hashing algorithms, and identifying vulnerabilities that could be exploited by attackers.
  • Evaluating the effectiveness of different network security technologies and protocols, such as firewalls, intrusion detection systems, and virtual private networks (VPNs), in protecting against different types of attacks.
  • Exploring the use of cryptography in emerging areas, such as cloud computing, the Internet of Things (IoT), and blockchain, and identifying the unique security challenges and opportunities presented by these domains.
  • Investigating the trade-offs between security and other factors, such as performance, usability, and cost, and developing strategies for balancing these conflicting priorities.

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Research Topics & Ideas: Data Science

50 Topic Ideas To Kickstart Your Research Project

Research topics and ideas about data science and big data analytics

If you’re just starting out exploring data science-related topics for your dissertation, thesis or research project, you’ve come to the right place. In this post, we’ll help kickstart your research by providing a hearty list of data science and analytics-related research ideas , including examples from recent studies.

PS – This is just the start…

We know it’s exciting to run through a list of research topics, but please keep in mind that this list is just a starting point . These topic ideas provided here are intentionally broad and generic , so keep in mind that you will need to develop them further. Nevertheless, they should inspire some ideas for your project.

To develop a suitable research topic, you’ll need to identify a clear and convincing research gap , and a viable plan to fill that gap. If this sounds foreign to you, check out our free research topic webinar that explores how to find and refine a high-quality research topic, from scratch. Alternatively, consider our 1-on-1 coaching service .

Research topic idea mega list

Data Science-Related Research Topics

  • Developing machine learning models for real-time fraud detection in online transactions.
  • The use of big data analytics in predicting and managing urban traffic flow.
  • Investigating the effectiveness of data mining techniques in identifying early signs of mental health issues from social media usage.
  • The application of predictive analytics in personalizing cancer treatment plans.
  • Analyzing consumer behavior through big data to enhance retail marketing strategies.
  • The role of data science in optimizing renewable energy generation from wind farms.
  • Developing natural language processing algorithms for real-time news aggregation and summarization.
  • The application of big data in monitoring and predicting epidemic outbreaks.
  • Investigating the use of machine learning in automating credit scoring for microfinance.
  • The role of data analytics in improving patient care in telemedicine.
  • Developing AI-driven models for predictive maintenance in the manufacturing industry.
  • The use of big data analytics in enhancing cybersecurity threat intelligence.
  • Investigating the impact of sentiment analysis on brand reputation management.
  • The application of data science in optimizing logistics and supply chain operations.
  • Developing deep learning techniques for image recognition in medical diagnostics.
  • The role of big data in analyzing climate change impacts on agricultural productivity.
  • Investigating the use of data analytics in optimizing energy consumption in smart buildings.
  • The application of machine learning in detecting plagiarism in academic works.
  • Analyzing social media data for trends in political opinion and electoral predictions.
  • The role of big data in enhancing sports performance analytics.
  • Developing data-driven strategies for effective water resource management.
  • The use of big data in improving customer experience in the banking sector.
  • Investigating the application of data science in fraud detection in insurance claims.
  • The role of predictive analytics in financial market risk assessment.
  • Developing AI models for early detection of network vulnerabilities.

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Data Science Research Ideas (Continued)

  • The application of big data in public transportation systems for route optimization.
  • Investigating the impact of big data analytics on e-commerce recommendation systems.
  • The use of data mining techniques in understanding consumer preferences in the entertainment industry.
  • Developing predictive models for real estate pricing and market trends.
  • The role of big data in tracking and managing environmental pollution.
  • Investigating the use of data analytics in improving airline operational efficiency.
  • The application of machine learning in optimizing pharmaceutical drug discovery.
  • Analyzing online customer reviews to inform product development in the tech industry.
  • The role of data science in crime prediction and prevention strategies.
  • Developing models for analyzing financial time series data for investment strategies.
  • The use of big data in assessing the impact of educational policies on student performance.
  • Investigating the effectiveness of data visualization techniques in business reporting.
  • The application of data analytics in human resource management and talent acquisition.
  • Developing algorithms for anomaly detection in network traffic data.
  • The role of machine learning in enhancing personalized online learning experiences.
  • Investigating the use of big data in urban planning and smart city development.
  • The application of predictive analytics in weather forecasting and disaster management.
  • Analyzing consumer data to drive innovations in the automotive industry.
  • The role of data science in optimizing content delivery networks for streaming services.
  • Developing machine learning models for automated text classification in legal documents.
  • The use of big data in tracking global supply chain disruptions.
  • Investigating the application of data analytics in personalized nutrition and fitness.
  • The role of big data in enhancing the accuracy of geological surveying for natural resource exploration.
  • Developing predictive models for customer churn in the telecommunications industry.
  • The application of data science in optimizing advertisement placement and reach.

Recent Data Science-Related Studies

While the ideas we’ve presented above are a decent starting point for finding a research topic, they are fairly generic and non-specific. So, it helps to look at actual studies in the data science and analytics space to see how this all comes together in practice.

Below, we’ve included a selection of recent studies to help refine your thinking. These are actual studies,  so they can provide some useful insight as to what a research topic looks like in practice.

  • Data Science in Healthcare: COVID-19 and Beyond (Hulsen, 2022)
  • Auto-ML Web-application for Automated Machine Learning Algorithm Training and evaluation (Mukherjee & Rao, 2022)
  • Survey on Statistics and ML in Data Science and Effect in Businesses (Reddy et al., 2022)
  • Visualization in Data Science VDS @ KDD 2022 (Plant et al., 2022)
  • An Essay on How Data Science Can Strengthen Business (Santos, 2023)
  • A Deep study of Data science related problems, application and machine learning algorithms utilized in Data science (Ranjani et al., 2022)
  • You Teach WHAT in Your Data Science Course?!? (Posner & Kerby-Helm, 2022)
  • Statistical Analysis for the Traffic Police Activity: Nashville, Tennessee, USA (Tufail & Gul, 2022)
  • Data Management and Visual Information Processing in Financial Organization using Machine Learning (Balamurugan et al., 2022)
  • A Proposal of an Interactive Web Application Tool QuickViz: To Automate Exploratory Data Analysis (Pitroda, 2022)
  • Applications of Data Science in Respective Engineering Domains (Rasool & Chaudhary, 2022)
  • Jupyter Notebooks for Introducing Data Science to Novice Users (Fruchart et al., 2022)
  • Towards a Systematic Review of Data Science Programs: Themes, Courses, and Ethics (Nellore & Zimmer, 2022)
  • Application of data science and bioinformatics in healthcare technologies (Veeranki & Varshney, 2022)
  • TAPS Responsibility Matrix: A tool for responsible data science by design (Urovi et al., 2023)
  • Data Detectives: A Data Science Program for Middle Grade Learners (Thompson & Irgens, 2022)
  • MACHINE LEARNING FOR NON-MAJORS: A WHITE BOX APPROACH (Mike & Hazzan, 2022)
  • COMPONENTS OF DATA SCIENCE AND ITS APPLICATIONS (Paul et al., 2022)
  • Analysis on the Application of Data Science in Business Analytics (Wang, 2022)

As you can see, these research topics are a lot more focused than the generic topic ideas we presented earlier. So, for you to develop a high-quality research topic, you’ll need to get specific and laser-focused on a specific context with specific variables of interest.  In the video below, we explore some other important things you’ll need to consider when crafting your research topic.

Get 1-On-1 Help

If you’re still unsure about how to find a quality research topic, check out our Research Topic Kickstarter service, which is the perfect starting point for developing a unique, well-justified research topic.

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PhD Thesis Blog

Thesis and code, 5 trending phd research topics in big data.

In the past decade, Big Data has emerged as a powerful technology tool and is growing in leaps and bounds. There are a number of industry sectors in which PhD research is being conducted for Big Data, including Ecommerce, banking, insurance, telecom, and the health sector.

There are a number of quality research programs being pursued by PhD scholars on the vast and growing field of Big Data. While the maximum number of Big Data research papers is in the field of computer science (171), other academic fields for this line of research include Engineering (75), Mathematics (33), and Business Management (26).

Listed below are the 5 trending research topics being pursued by PhD scholars around the globe:

  • Big Data analytics

Big Data analytics tool has emerged as a powerful tool used to harness the potential use of big data for industry-specific uses. A number of E-commerce retailers are using analytics for online sales conversion and determining customer behaviour. Other potential use is in the performance improvement of sporting athletes.

  • Improving the quality of healthcare

Currently, research is being conducted in the areas of drug discovery, drug response, bioinformatics, clinical data analysis, and public health data. According to the Mckinsey report on Big Data in 2011, Big Data has the potential of reducing the US national health care costs by around 8%.

  • Data visualization

Big Data users are able to see and analyse big data sets using much improved visualization tools. The advent of touch-sensitive navigation has brought huge improvements in interactive visualization technology.

  • Hadoop framework

Research on Apache Hadoop framework is aimed at developing software applications that can be deployed on a larger and distributed network. Deployed across network clusters, the Hadoop framework has been used by a host of popular web platforms including Twitter, LinkedIn, Amazon, and Facebook. Other research topics include the MapReduce programming model, used for executing code for processing large amounts of data over distributed network clusters.

  • Distributed Storage systems

Other areas of PhD research include the efficient way of storing volumes of data over large-scale distributed network clusters. Examples include the Google File System used for storing high-data applications over distributed systems, and Bigtable used for structured storage of Big data.

The constant evolution of Big Data presents researchers with dynamic challenges, while also presenting them with opportunities of determining the evolution of science.

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phd research topics in big data

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The Big Data Analytics Ph.D. program aims to train students and researchers to analyze massive structured and unstructured data and uncover hidden patterns, actionable associations and other useful information for better decision making. This program combines the strength of statistical science, data science and machine learning.

The Ph.D. program intends to prepare students to fill the need for skilled positions, including leadership positions, in business and industry, as well as for positions in academia to conduct research and teach data analytics at the graduate level. Our award-winning Data Mining Program, the nation’s oldest data mining program, offers an established educational environment complemented with ongoing industrial collaborations with industrial clients such as the Walt Disney Company, the CFE Federal Credit Union, Sodexo CitiGroup Inc, Johnson & Johnson.

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PhD Research Topics in Big Data Analytics

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Trending Top 10 PhD Research Topics in Big Data Analytics

By all means, in recent studies, Big Data Analytics is gaining more fame. In fact, this happens due to its growing demand in today’s digital world. Reach us for exciting PhD research topics in big data analytics .

On this one hand, it is the best field to  “manage”  as well as  “manipulate”  data in all forms. The other service also covers  vital challenges  in big data under many aspects such as  scientific work, sensors, and more .

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Major Real-Time Applications of Big Data Analytics

  • Intelligent Traffic Control
  • Smart City Surveillance
  • Healthcare Monitoring
  • Risk and also fraud Management
  • Predictive Product Grading

In this,  PhD research topics in Big Data Analytics  are very much familiar to access also a various  “online repositories of datasets”.

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  • FiveThirtyEight
  • Socrata OpenData
  • And aslo Github

As a matter of support for that, our experts will provide you a wide range of services to bring out the  “top class”  research. Last, of all, we are also  good to give complete aid in all the phases of your R&D.

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  • Code Development
  • And also Manuscript Writing

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Here, we also suggest you brainy discoveries from our PhD research topics in Big Data Analytics,

Pedigree-ing: Distributed  Data-Driven Big Data Privacy in Big Data

Using Big Data Assessing Data Provenance Theory-Based Quality of Data for on-line Checking and Maesuring Power Quality.

A Co-operative Semantic Services using an OWL Ontology in Big Data Environments

A Selection Method for Taking commercial hotspot investigationwith Weibo check-in data as an example in social media based big data analysis

A Effective Big Data Methodology for Large-Scale Data-Driven Financial Risk Developing

A Scalable Data System in Automotive Big Data Marketplaces for AutoMat CVIM

A Spark-Based Internet-of-Vehicles in Big Data Analytics System

A Hadoop-Based Runtimes of Mathematical Systems using Big Data

A Review on user behavior-based information recommendation of scientific and technological achievements in big data mining

Using Big Data propose DCT with its Application based algorithm  for Adaptive Blind Watermarking

Developing and Evaluating of Material Supply Network based on Traffic-Big Data Pack

An Effects of fare reduction policy based on urban public transport sharing rate in for public transportation using big data analysis

Developing a Predictive System for Joint Strike Fighter in Big Data Analytics

A Spatio-Temporal–Based College Students` Deep Entrepreneurship Patterns Analysis in Flow of Big Data

An Open one-side uncertain probability simulation for Fusion System of uncertain data and uncertain data relation

An Effective Unstructured Data using Quality Assessment System of Big Data

An Analysis of Big Data Oriented Application in Urban Intelligent Transportation Model

A Combination of Semantic Data for Intelligent, Value-Driven Big Data Analytics

A Multi-Domain Optical Networks using an Optical Network Management Information Combination and Fusion

An Analysis of Land-Use Degree and Spatial Autocorrelation using Kunming City

PhD Research Topics in Big Data Analytics

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DiscoverDataScience.org

PhD in Data Science – Your Guide to Choosing a Doctorate Degree Program

phd research topics in big data

Created by aasif.faizal

Professional opportunities in data science are growing incredibly fast. That’s great news for students looking to pursue a career as a data scientist. But it also means that there are a lot more options out there to investigate and understand before developing the best educational path for you.

A PhD is the most advanced data science degree you can get, reflecting a depth of knowledge and technical expertise that will put you at the top of your field.

phd data science

This means that PhD programs are the most time-intensive degree option out there, typically requiring that students complete dissertations involving rigorous research. This means that PhDs are not for everyone. Indeed, many who work in the world of big data hold master’s degrees rather than PhDs, which tend to involve the same coursework as PhD programs without a dissertation component. However, for the right candidate, a PhD program is the perfect choice to become a true expert on your area of focus.

If you’ve concluded that a data science PhD is the right path for you, this guide is intended to help you choose the best program to suit your needs. It will walk through some of the key considerations while picking graduate data science programs and some of the nuts and bolts (like course load and tuition costs) that are part of the data science PhD decision-making process.

Data Science PhD vs. Masters: Choosing the right option for you

If you’re considering pursuing a data science PhD, it’s worth knowing that such an advanced degree isn’t strictly necessary in order to get good work opportunities. Many who work in the field of big data only hold master’s degrees, which is the level of education expected to be a competitive candidate for data science positions.

So why pursue a data science PhD?

Simply put, a PhD in data science will leave you qualified to enter the big data industry at a high level from the outset.

You’ll be eligible for advanced positions within companies, holding greater responsibilities, keeping more direct communication with leadership, and having more influence on important data-driven decisions. You’re also likely to receive greater compensation to match your rank.

However, PhDs are not for everyone. Dissertations require a great deal of time and an interest in intensive research. If you are eager to jumpstart a career quickly, a master’s program will give you the preparation you need to hit the ground running. PhDs are appropriate for those who want to commit their time and effort to schooling as a long-term investment in their professional trajectory.

For more information on the difference between data science PhD’s and master’s programs, take a look at our guide here.

Topics include:

  • Can I get an Online Ph.D in Data Science?
  • Overview of Ph.d Coursework

Preparing for a Doctorate Program

Building a solid track record of professional experience, things to consider when choosing a school.

  • What Does it Cost to Get a Ph.D in Data Science?
  • School Listings

data analysis graph

Data Science PhD Programs, Historically

Historically, data science PhD programs were one of the main avenues to get a good data-related position in academia or industry. But, PhD programs are heavily research oriented and require a somewhat long term investment of time, money, and energy to obtain. The issue that some data science PhD holders are reporting, especially in industry settings, is that that the state of the art is moving so quickly, and that the data science industry is evolving so rapidly, that an abundance of research oriented expertise is not always what’s heavily sought after.

Instead, many companies are looking for candidates who are up to date with the latest data science techniques and technologies, and are willing to pivot to match emerging trends and practices.

One recent development that is making the data science graduate school decisions more complex is the introduction of specialty master’s degrees, that focus on rigorous but compact, professional training. Both students and companies are realizing the value of an intensive, more industry-focused degree that can provide sufficient enough training to manage complex projects and that are more client oriented, opposed to research oriented.

However, not all prospective data science PhD students are looking for jobs in industry. There are some pretty amazing research opportunities opening up across a variety of academic fields that are making use of new data collection and analysis tools. Experts that understand how to leverage data systems including statistics and computer science to analyze trends and build models will be in high demand.

Can You Get a PhD in Data Science Online?

While it is not common to get a data science Ph.D. online, there are currently two options for those looking to take advantage of the flexibility of an online program.

Indiana University Bloomington and Northcentral University both offer online Ph.D. programs with either a minor or specialization in data science.

Given the trend for schools to continue increasing online offerings, expect to see additional schools adding this option in the near future.

woman data analysis on computer screens

Overview of PhD Coursework

A PhD requires a lot of academic work, which generally requires between four and five years (sometimes longer) to complete.

Here are some of the high level factors to consider and evaluate when comparing data science graduate programs.

How many credits are required for a PhD in data science?

On average, it takes 71 credits to graduate with a PhD in data science — far longer (almost double) than traditional master’s degree programs. In addition to coursework, most PhD students also have research and teaching responsibilities that can be simultaneously demanding and really great career preparation.

What’s the core curriculum like?

In a data science doctoral program, you’ll be expected to learn many skills and also how to apply them across domains and disciplines. Core curriculums will vary from program to program, but almost all will have a core foundation of statistics.

All PhD candidates will have to take a qualifying exam. This can vary from university to university, but to give you some insight, it is broken up into three phases at Yale. They have a practical exam, a theory exam and an oral exam. The goal is to make sure doctoral students are developing the appropriate level of expertise.

Dissertation

One of the final steps of a PhD program involves presenting original research findings in a formal document called a dissertation. These will provide background and context, as well as findings and analysis, and can contribute to the understanding and evolution of data science. A dissertation idea most often provides the framework for how a PhD candidate’s graduate school experience will unfold, so it’s important to be thoughtful and deliberate while considering research opportunities.

Since data science is such a rapidly evolving field and because choosing the right PhD program is such an important factor in developing a successful career path, there are some steps that prospective doctoral students can take in advance to find the best-fitting opportunity.

Join professional associations

Even before being fully credentials, joining professional associations and organizations such as the Data Science Association and the American Association of Big Data Professionals is a good way to get exposure to the field. Many professional societies are welcoming to new members and even encourage student participation with things like discounted membership fees and awards and contest categories for student researchers. One of the biggest advantages to joining is that these professional associations bring together other data scientists for conference events, research-sharing opportunities, networking and continuing education opportunities.

Leverage your social network

Be on the lookout to make professional connections with professors, peers, and members of industry. There are a number of LinkedIn groups dedicated to data science. A well-maintained professional network is always useful to have when looking for advice or letters of recommendation while applying to graduate school and then later while applying for jobs and other career-related opportunities.

Kaggle competitions

Kaggle competitions provide the opportunity to solve real-world data science problems and win prizes. A list of data science problems can be found at Kaggle.com . Winning one of these competitions is a good way to demonstrate professional interest and experience.

Internships

Internships are a great way to get real-world experience in data science while also getting to work for top names in the world of business. For example, IBM offers a data science internship which would also help to stand out when applying for PhD programs, as well as in seeking employment in the future.

Demonstrating professional experience is not only important when looking for jobs, but it can also help while applying for graduate school. There are a number of ways for prospective students to gain exposure to the field and explore different facets of data science careers.

Get certified

There are a number of data-related certificate programs that are open to people with a variety of academic and professional experience. DeZyre has an excellent guide to different certifications, some of which might help provide good background for graduate school applications.

Conferences

Conferences are a great place to meet people presenting new and exciting research in the data science field and bounce ideas off of newfound connections. Like professional societies and organizations, discounted student rates are available to encourage student participation. In addition, some conferences will waive fees if you are presenting a poster or research at the conference, which is an extra incentive to present.

teacher in full classroom of students

It can be hard to quantify what makes a good-fit when it comes to data science graduate school programs. There are easy to evaluate factors, such as cost and location, and then there are harder to evaluate criteria such as networking opportunities, accessibility to professors, and the up-to-dateness of the program’s curriculum.

Nevertheless, there are some key relevant considerations when applying to almost any data science graduate program.

What most schools will require when applying:

  • All undergraduate and graduate transcripts
  • A statement of intent for the program (reason for applying and future plans)
  • Letters of reference
  • Application fee
  • Online application
  • A curriculum vitae (outlining all of your academic and professional accomplishments)

What Does it Cost to Get a PhD in Data Science?

The great news is that many PhD data science programs are supported by fellowships and stipends. Some are completely funded, meaning the school will pay tuition and basic living expenses. Here are several examples of fully funded programs:

  • University of Southern California
  • University of Nevada, Reno
  • Kennesaw State University
  • Worcester Polytechnic Institute
  • University of Maryland

For all other programs, the average range of tuition, depending on the school can range anywhere from $1,300 per credit hour to $2,000 amount per credit hour. Remember, typical PhD programs in data science are between 60 and 75 credit hours, meaning you could spend up to $150,000 over several years.

That’s why the financial aspects are so important to evaluate when assessing PhD programs, because some schools offer full stipends so that you are able to attend without having to find supplemental scholarships or tuition assistance.

Can I become a professor of data science with a PhD.? Yes! If you are interested in teaching at the college or graduate level, a PhD is the degree needed to establish the full expertise expected to be a professor. Some data scientists who hold PhDs start by entering the field of big data and pivot over to teaching after gaining a significant amount of work experience. If you’re driven to teach others or to pursue advanced research in data science, a PhD is the right degree for you.

Do I need a master’s in order to pursue a PhD.? No. Many who pursue PhDs in Data Science do not already hold advanced degrees, and many PhD programs include all the coursework of a master’s program in the first two years of school. For many students, this is the most time-effective option, allowing you to complete your education in a single pass rather than interrupting your studies after your master’s program.

Can I choose to pursue a PhD after already receiving my master’s? Yes. A master’s program can be an opportunity to get the lay of the land and determine the specific career path you’d like to forge in the world of big data. Some schools may allow you to simply extend your academic timeline after receiving your master’s degree, and it is also possible to return to school to receive a PhD if you have been working in the field for some time.

If a PhD. isn’t necessary, is it a waste of time? While not all students are candidates for PhDs, for the right students – who are keen on doing in-depth research, have the time to devote to many years of school, and potentially have an interest in continuing to work in academia – a PhD is a great choice. For more information on this question, take a look at our article Is a Data Science PhD. Worth It?

Complete List of Data Science PhD Programs

Below you will find the most comprehensive list of schools offering a doctorate in data science. Each school listing contains a link to the program specific page, GRE or a master’s degree requirements, and a link to a page with detailed course information.

Note that the listing only contains true data science programs. Other similar programs are often lumped together on other sites, but we have chosen to list programs such as data analytics and business intelligence on a separate section of the website.

Boise State University  – Boise, Idaho PhD in Computing – Data Science Concentration

The Data Science emphasis focuses on the development of mathematical and statistical algorithms, software, and computing systems to extract knowledge or insights from data.  

In 60 credits, students complete an Introduction to Graduate Studies, 12 credits of core courses, 6 credits of data science elective courses, 10 credits of other elective courses, a Doctoral Comprehensive Examination worth 1 credit, and a 30-credit dissertation.

Electives can be taken in focus areas such as Anthropology, Biometry, Ecology/Evolution and Behavior, Econometrics, Electrical Engineering, Earth Dynamics and Informatics, Geoscience, Geostatistics, Hydrology and Hydrogeology, Materials Science, and Transportation Science.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $7,236 total (Resident), $24,573 total (Non-resident)

View Course Offerings

Bowling Green State University  – Bowling Green, Ohio Ph.D. in Data Science

Data Science students at Bowling Green intertwine knowledge of computer science with statistics.

Students learn techniques in analyzing structured, unstructured, and dynamic datasets.

Courses train students to understand the principles of analytic methods and articulating the strengths and limitations of analytical methods.

The program requires 60 credit hours in the studies of Computer Science (6 credit hours), Statistics (6 credit hours), Data Science Exploration and Communication, Ethical Issues, Advanced Data Mining, and Applied Data Science Experience.

Students must also complete 21 credit hours of elective courses, a qualifying exam, a preliminary exam, and a dissertation.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $8,418 (Resident), $14,410 (Non-resident)

Brown University  – Providence, Rhode Island PhD in Computer Science – Concentration in Data Science

Brown University’s database group is a world leader in systems-oriented database research; they seek PhD candidates with strong system-building skills who are interested in researching TupleWare, MLbase, MDCC, Crowd DB, or PIQL.

In order to gain entrance, applicants should consider first doing a research internship at Brown with this group. Other ways to boost an application are to take and do well at massive open online courses, do an internship at a large company, and get involved in a large open-source software project.

Coding well in C++ is preferred.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $62,680 total

Chapman University  – Irvine, California Doctorate in Computational and Data Sciences

Candidates for the doctorate in computational and data science at Chapman University begin by completing 13 core credits in basic methodologies and techniques of computational science.

Students complete 45 credits of electives, which are personalized to match the specific interests and research topics of the student.

Finally, students complete up to 12 credits in dissertation research.

Applicants must have completed courses in differential equations, data structures, and probability and statistics, or take specific foundation courses, before beginning coursework toward the PhD.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $37,538 per year

Clemson University / Medical University of South Carolina (MUSC) – Joint Program – Clemson, South Carolina & Charleston, South Carolina Doctor of Philosophy in Biomedical Data Science and Informatics – Clemson

The PhD in biomedical data science and informatics is a joint program co-authored by Clemson University and the Medical University of South Carolina (MUSC).

Students choose one of three tracks to pursue: precision medicine, population health, and clinical and translational informatics. Students complete 65-68 credit hours, and take courses in each of 5 areas: biomedical informatics foundations and applications; computing/math/statistics/engineering; population health, health systems, and policy; biomedical/medical domain; and lab rotations, seminars, and doctoral research.

Applicants must have a bachelor’s in health science, computing, mathematics, statistics, engineering, or a related field, and it is recommended to also have competency in a second of these areas.

Program requirements include a year of calculus and college biology, as well as experience in computer programming.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $10,858 total (South Carolina Resident), $22,566 total (Non-resident)

View Course Offerings – Clemson

George Mason University  – Fairfax, Virginia Doctor of Philosophy in Computational Sciences and Informatics – Emphasis in Data Science

George Mason’s PhD in computational sciences and informatics requires a minimum of 72 credit hours, though this can be reduced if a student has already completed a master’s. 48 credits are toward graduate coursework, and an additional 24 are for dissertation research.

Students choose an area of emphasis—either computer modeling and simulation or data science—and completed 18 credits of the coursework in this area. Students are expected to completed the coursework in 4-5 years.

Applicants to this program must have a bachelor’s degree in a natural science, mathematics, engineering, or computer science, and must have knowledge and experience with differential equations and computer programming.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $13,426 total (Virginia Resident), $35,377 total (Non-resident)

Harrisburg University of Science and Technology  – Harrisburg, Pennsylvania Doctor of Philosophy in Data Sciences

Harrisburg University’s PhD in data science is a 4-5 year program, the first 2 of which make up the Harrisburg master’s in analytics.

Beyond this, PhD candidates complete six milestones to obtain the degree, including 18 semester hours in doctoral-level courses, such as multivariate data analysis, graph theory, machine learning.

Following the completion of ANLY 760 Doctoral Research Seminar, students in the program complete their 12 hours of dissertation research bringing the total program hours to 36.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $14,940 total

Icahn School of Medicine at Mount Sinai  – New York, New York Genetics and Data Science, PhD

As part of the Biomedical Science PhD program, the Genetics and Data Science multidisciplinary training offers research opportunities that expand on genetic research and modern genomics. The training also integrates several disciplines of biomedical sciences with machine learning, network modeling, and big data analysis.

Students in the Genetics and Data Science program complete a predetermined course schedule with a total of 64 credits and 3 years of study.

Additional course requirements and electives include laboratory rotations, a thesis proposal exam and thesis defense, Computer Systems, Intro to Algorithms, Machine Learning for Biomedical Data Science, Translational Genomics, and Practical Analysis of a Personal Genome.

Delivery Method: Campus GRE: Not Required 2022-2023 Tuition: $31,303 total

Indiana University-Purdue University Indianapolis  – Indianapolis, Indiana PhD in Data Science PhD Minor in Applied Data Science

Doctoral candidates pursuing the PhD in data science at Indiana University-Purdue must display competency in research, data analytics, and at management and infrastructure to earn the degree.

The PhD is comprised of 24 credits of a data science core, 18 credits of methods courses, 18 credits of a specialization, written and oral qualifying exams, and 30 credits of dissertation research. All requirements must be completed within 7 years.

Applicants are generally expected to have a master’s in social science, health, data science, or computer science. 

Currently a majority of the PhD students at IUPUI are funded by faculty grants and two are funded by the federal government. None of the students are self funded.

IUPUI also offers a PhD Minor in Applied Data Science that is 12-18 credits. The minor is open to students enrolled at IUPUI or IU Bloomington in a doctoral program other than Data Science.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $9,228 per year (Indiana Resident), $25,368 per year (Non-resident)

Jackson State University – Jackson, Mississippi PhD Computational and Data-Enabled Science and Engineering

Jackson State University offers a PhD in computational and data-enabled science and engineering with 5 concentration areas: computational biology and bioinformatics, computational science and engineering, computational physical science, computation public health, and computational mathematics and social science.

Students complete 12 credits of common core courses, 12 credits in the specialization, 24 credits of electives, and 24 credits in dissertation research.

Students may complete the doctoral program in as little as 5 years and no more than 8 years.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $8,270 total

Kennesaw State University  – Kennesaw, Georgia PhD in Analytics and Data Science

Students pursuing a PhD in analytics and data science at Kennesaw State University must complete 78 credit hours: 48 course hours and 6 electives (spread over 4 years of study), a minimum 12 credit hours for dissertation research, and a minimum 12 credit-hour internship.

Prior to dissertation research, the comprehensive examination will cover material from the three areas of study: computer science, mathematics, and statistics.

Successful applicants will have a master’s degree in a computational field, calculus I and II, programming experience, modeling experience, and are encouraged to have a base SAS certification.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $5,328 total (Georgia Resident), $19,188 total (Non-resident)

New Jersey Institute of Technology  – Newark, New Jersey PhD in Business Data Science

Students may enter the PhD program in business data science at the New Jersey Institute of Technology with either a relevant bachelor’s or master’s degree. Students with bachelor’s degrees begin with 36 credits of advanced courses, and those with master’s take 18 credits before moving on to credits in dissertation research.

Core courses include business research methods, data mining and analysis, data management system design, statistical computing with SAS and R, and regression analysis.

Students take qualifying examinations at the end of years 1 and 2, and must defend their dissertations successfully by the end of year 6.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $21,932 total (New Jersey Resident), $32,426 total (Non-resident)

New York University  – New York, New York PhD in Data Science

Doctoral candidates in data science at New York University must complete 72 credit hours, pass a comprehensive and qualifying exam, and defend a dissertation with 10 years of entering the program.

Required courses include an introduction to data science, probability and statistics for data science, machine learning and computational statistics, big data, and inference and representation.

Applicants must have an undergraduate or master’s degree in fields such as mathematics, statistics, computer science, engineering, or other scientific disciplines. Experience with calculus, probability, statistics, and computer programming is also required.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $37,332 per year

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Northcentral University  – San Diego, California PhD in Data Science-TIM

Northcentral University offers a PhD in technology and innovation management with a specialization in data science.

The program requires 60 credit hours, including 6-7 core courses, 3 in research, a PhD portfolio, and 4 dissertation courses.

The data science specialization requires 6 courses: data mining, knowledge management, quantitative methods for data analytics and business intelligence, data visualization, predicting the future, and big data integration.

Applicants must have a master’s already.

Delivery Method: Online GRE: Required 2022-2023 Tuition: $16,794 total

Stevens Institute of Technology – Hoboken, New Jersey Ph.D. in Data Science

Stevens Institute of Technology has developed a data science Ph.D. program geared to help graduates become innovators in the space.

The rigorous curriculum emphasizes mathematical and statistical modeling, machine learning, computational systems and data management.

The program is directed by Dr. Ted Stohr, a recognized thought leader in the information systems, operations and business process management arenas.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $39,408 per year

University at Buffalo – Buffalo, New York PhD Computational and Data-Enabled Science and Engineering

The curriculum for the University of Buffalo’s PhD in computational and data-enabled science and engineering centers around three areas: data science, applied mathematics and numerical methods, and high performance and data intensive computing. 9 credit course of courses must be completed in each of these three areas. Altogether, the program consists of 72 credit hours, and should be completed in 4-5 years. A master’s degree is required for admission; courses taken during the master’s may be able to count toward some of the core coursework requirements.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $11,310 per year (New York Resident), $23,100 per year (Non-resident)

University of Colorado Denver – Denver, Colorado PhD in Big Data Science and Engineering

The University of Colorado – Denver offers a unique program for those students who have already received admission to the computer science and information systems PhD program.

The Big Data Science and Engineering (BDSE) program is a PhD fellowship program that allows selected students to pursue research in the area of big data science and engineering. This new fellowship program was created to train more computer scientists in data science application fields such as health informatics, geosciences, precision and personalized medicine, business analytics, and smart cities and cybersecurity.

Students in the doctoral program must complete 30 credit hours of computer science classes beyond a master’s level, and 30 credit hours of dissertation research.

The BDSE fellowship requires students to have an advisor both in the core disciplines (either computer science or mathematics and statistics) as well as an advisor in the application discipline (medicine and public health, business, or geosciences).

In addition, the fellowship covers full stipend, tuition, and fees up to ~50k for BDSE fellows annually. Important eligibility requirements can be found here.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $55,260 total

University of Marylan d  – College Park, Maryland PhD in Information Studies

Data science is a potential research area for doctoral candidates in information studies at the University of Maryland – College Park. This includes big data, data analytics, and data mining.

Applicants for the PhD must have taken the following courses in undergraduate studies: programming languages, data structures, design and analysis of computer algorithms, calculus I and II, and linear algebra.

Students must complete 6 qualifying courses, 2 elective graduate courses, and at least 12 credit hours of dissertation research.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $16,238 total (Maryland Resident), $35,388 total (Non-resident)

University of Massachusetts Boston  – Boston, Massachusetts PhD in Business Administration – Information Systems for Data Science Track

The University of Massachusetts – Boston offers a PhD in information systems for data science. As this is a business degree, students must complete coursework in their first two years with a focus on data for business; for example, taking courses such as business in context: markets, technologies, and societies.

Students must take and pass qualifying exams at the end of year 1, comprehensive exams at the end of year 2, and defend their theses at the end of year 4.

Those with a degree in statistics, economics, math, computer science, management sciences, information systems, and other related fields are especially encouraged, though a quantitative degree is not necessary.

Students accepted by the program are ordinarily offered full tuition credits and a stipend ($25,000 per year) to cover educational expenses and help defray living costs for up to three years of study.

During the first two years of coursework, they are assigned to a faculty member as a research assistant; for the third year students will be engaged in instructional activities. Funding for the fourth year is merit-based from a limited pool of program funds

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $18,894 total (in-state), $36,879 (out-of-state)

University of Nevada Reno – Reno, Nevada PhD in Statistics and Data Science

The University of Nevada – Reno’s doctoral program in statistics and data science is comprised of 72 credit hours to be completed over the course of 4-5 years. Coursework is all within the scope of statistics, with titles such as statistical theory, probability theory, linear models, multivariate analysis, statistical learning, statistical computing, time series analysis.

The completion of a Master’s degree in mathematics or statistics prior to enrollment in the doctoral program is strongly recommended, but not required.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $5,814 total (in-state), $22,356 (out-of-state)

University of Southern California – Los Angles, California PhD in Data Sciences & Operations

USC Marshall School of Business offers a PhD in data sciences and operations to be completed in 5 years.

Students can choose either a track in operations management or in statistics. Both tracks require 4 courses in fall and spring of the first 2 years, as well as a research paper and courses during the summers. Year 3 is devoted to dissertation preparation and year 4 and/or 5 to dissertation defense.

A bachelor’s degree is necessary for application, but no field or further experience is required.

Students should complete 60 units of coursework. If the students are admitted with Advanced Standing (e.g., Master’s Degree in appropriate field), this requirement may be reduced to 40 credits.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $63,468 total

University of Tennessee-Knoxville  – Knoxville, Tennessee The Data Science and Engineering PhD

The data science and engineering PhD at the University of Tennessee – Knoxville requires 36 hours of coursework and 36 hours of dissertation research. For those entering with an MS degree, only 24 hours of course work is required.

The core curriculum includes work in statistics, machine learning, and scripting languages and is enhanced by 6 hours in courses that focus either on policy issues related to data, or technology entrepreneurship.

Students must also choose a knowledge specialization in one of these fields: health and biological sciences, advanced manufacturing, materials science, environmental and climate science, transportation science, national security, urban systems science, and advanced data science.

Applicants must have a bachelor’s or master’s degree in engineering or a scientific field. 

All students that are admitted will be supported by a research fellowship and tuition will be included.

Many students will perform research with scientists from Oak Ridge national lab, which is located about 30 minutes drive from campus.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $11,468 total (Tennessee Resident), $29,656 total (Non-resident)

University of Vermont – Burlington, Vermont Complex Systems and Data Science (CSDS), PhD

Through the College of Engineering and Mathematical Sciences, the Complex Systems and Data Science (CSDS) PhD program is pan-disciplinary and provides computational and theoretical training. Students may customize the program depending on their chosen area of focus.

Students in this program work in research groups across campus.

Core courses include Data Science, Principles of Complex Systems and Modeling Complex Systems. Elective courses include Machine Learning, Complex Networks, Evolutionary Computation, Human/Computer Interaction, and Data Mining.

The program requires at least 75 credits to graduate with approval by the student graduate studies committee.

Delivery Method: Campus GRE: Not Required 2022-2023 Tuition: $12,204 total (Vermont Resident), $30,960 total (Non-resident)

University of Washington Seattle Campus – Seattle, Washington PhD in Big Data and Data Science

The University of Washington’s PhD program in data science has 2 key goals: training of new data scientists and cyberinfrastructure development, i.e., development of open-source tools and services that scientists around the world can use for big data analysis.

Students must take core courses in data management, machine learning, data visualization, and statistics.

Students are also required to complete at least one internship that covers practical work in big data.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $17,004 per year (Washington resident), $30,477 (non-resident)

University of Wisconsin-Madison – Madison, Wisconsin PhD in Biomedical Data Science

The PhD program in Biomedical Data Science offered by the Department of Biostatistics and Medical Informatics at UW-Madison is unique, in blending the best of statistics and computer science, biostatistics and biomedical informatics. 

Students complete three year-long course sequences in biostatistics theory and methods, computer science/informatics, and a specialized sequence to fit their interests.

Students also complete three research rotations within their first two years in the program, to both expand their breadth of knowledge and assist in identifying a research advisor.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $10,728 total (in-state), $24,054 total (out-of-state)

Vanderbilt University – Nashville, Tennessee Data Science Track of the BMI PhD Program

The PhD in biomedical informatics at Vanderbilt has the option of a data science track.

Students complete courses in the areas of biomedical informatics (3 courses), computer science (4 courses), statistical methods (4 courses), and biomedical science (2 courses). Students are expected to complete core courses and defend their dissertations within 5 years of beginning the program.

Applicants must have a bachelor’s degree in computer science, engineering, biology, biochemistry, nursing, mathematics, statistics, physics, information management, or some other health-related field.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $53,160 per year

Washington University in St. Louis – St. Louis, Missouri Doctorate in Computational & Data Sciences

Washington University now offers an interdisciplinary Ph.D. in Computational & Data Sciences where students can choose from one of four tracks (Computational Methodologies, Political Science, Psychological & Brain Sciences, or Social Work & Public Health).

Students are fully funded and will receive a stipend for at least five years contingent on making sufficient progress in the program.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $59,420 total

Worcester Polytechnic Institute – Worcester, Massachusetts PhD in Data Science

The PhD in data science at Worcester Polytechnic Institute focuses on 5 areas: integrative data science, business intelligence and case studies, data access and management, data analytics and mining, and mathematical analysis.

Students first complete a master’s in data science, and then complete 60 credit hours beyond the master’s, including 30 credit hours of research.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $28,980 per year

Yale University – New Haven, Connecticut PhD Program – Department of Stats and Data Science

The PhD in statistics and data science at Yale University offers broad training in the areas of statistical theory, probability theory, stochastic processes, asymptotics, information theory, machine learning, data analysis, statistical computing, and graphical methods. Students complete 12 courses in the first year in these topics.

Students are required to teach one course each semester of their third and fourth years.

Most students complete and defend their dissertations in their fifth year.

Applicants should have an educational background in statistics, with an undergraduate major in statistics, mathematics, computer science, or similar field.

Delivery Method: Campus GRE: Required 2022-2023 Tuition: $46,900 total

phd research topics in big data

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Phd in big data analytics.

The PhD in Big Data Analytics is an interdisciplinary STEM PhD program focusing on systems and technologies for processing data and information. Unlike pure data science programs, this program includes the human and social implications of information and technology, bringing in critical components of cognition, ethics, biases and storytelling into a strong, big data analytics curriculum.

This program will graduate advanced big data practitioners, researchers and scientists who can work with large data, write code, develop models and build systems, and do so while acutely aware of potential biases and ethical uses issues. Students will develop theoretical and applied skills, including how to design, implement and evaluate information-focused big data technologies that support decision-making across social and organizational contexts.

Why the focus on an interdisciplinary program? Many existing PhD programs offer training in all of the stand-alone scientific fields such as statistics, mathematics, computer science, or information systems, but they do not unify the salient ideas from these fields.

In that sense, graduates become experts in a relatively narrow area in, for example, statistical modeling of data, but are inexperienced and unaware of how to parse and store data or how to code “apps” and develop solutions that automatically make decisions based on the data models or how to evaluate the human and societal impact of the developed data solutions and systems.

This PhD program combines human and technical skills with analytical abilities required to support decision-making by today’s leaders and innovators. A big data analytics PhD will introduce students to a truly interdisciplinary program and diverse perspective to important problems and opportunities for society that are driven by the availability of big data.

Why now? An increasing number of companies are looking for professionals with experience in big data analytics, and they are hard to find, especially in the educational spectrum, i.e. at the expert/PhD level. In addition, there is an increasing demand for faculty with PhDs in this field. This program is timely as we are seeing deep problems in society  (polarization of society, fake news, algorithmic bias) where analytics-driven solutions alone struggle to be sufficient — problems where the broader perspective of building intelligent systems by being aware of broader issues and human aspects becomes increasingly important as well.

Programs that bring together curriculum and faculty expertise from multiple areas (such as information systems, mathematics, psychology, computer science, etc.) will play a critical role in this broader context.

Application deadline is February 1. 

PHD PRIME

Big Data PhD Topics

The huge collection of data (like organization data) is called big data . At present time, big data technology is creating the best impact in many industrial and technological sectors . Since it supports any size of data in any format from any source. The initiators who use advanced data can quickly recognize the benefits in multiple ways. As well, some of them are product optimization, efficient processes, improved customer services, varying environmental visibility , etc. This article springs with new information on Big Data PhD Topics, Research Areas, Issues, Trends, Directions, Tools , etc.!!!

In the era of the digital world, digital information is growing fast which is collectively addressed as big data. In recent days, the management of big data has become a challenging task in all fields. Therefore, it grabs the attraction of scholars to produce new big data solutions for reliable processing and management of big data . We hope that you also have the same interest in big data. We are here to support you in all stages of big data PhD Topics Research with a development service . Before getting into the topic deep, first, know the following key terms of big data. Since it is more important to begin the big data  machine learning study.

Top 10 Intersting Big Data PhD Topics

Fundamentals of Big Data 

  • Streaming, Validated and Fixed
  • Public, Private, External, and Internal
  • Portable, Distant-Access, Shared, and Frameworks
  • Correlations, Superset and Subset
  • Unique, Specialized, and Generic
  • Proprietary, Unstructured, Structured, Semi-Structured and Table-based

Now, we can see the general architecture of big data. Here, we have mentioned to you about different layers of big data systems starting from infrastructure to application layer. Particular, each specific set of features and functionalities to perform. Our developers have constructed an infinite number of projects in big data . So, we are familiar with possible technical issues among layers. And also, we have designed different suitable modern solutions for many research issues.

Layers of Big Data Architecture 

  • It is the first and foremost layer that comprises a required network, hardware, and software devices
  • All these collections are used to acquire the data and forward them to the Hadoop cluster.
  • In this, software ranges between OS and other common tools for Hadoop cluster observation
  • It is a second layer that handles data mobility in distributed environ
  • Mainly, it has a chief repository for data storage as HDFS for Hadoop
  • As well, it also includes data distribution tools such as Flume and Sqoop
  • Further, it enables NoSQL databases in a different form of achieves
  • For instance: HBase and Accumulo
  • It is a third layer that offers a parallel processing framework
  • By the by, it is used to process and manipulate data
  • For instance: MapReduce and Yarn
  • The classes of the layer are referred to as workers
  • It enables to monitor and manage Hadoop completely
  • Further, it also empowers users to make new jobs through SQL
  • Then, SQL input is translated into MapReduce jobs
  • For instance: Pig, Spark, Oozie, and Hive
  • It creates the platform for processing business-oriented big data solutions
  • Moreover, it comprises both data visualization and analytics tools for performing all sorts of big data operations
  • By the by, it enables machine learning technology
  • For instance: Mahout, Tableau, Pentohoe, Datameter, etc.
  • It is the last layer that has extensive tools to meet service requirements
  • Further, it also handles the request, cost, and expenditure of requests

For your information, here we have given two main research issues of big data analytics . Presently, these issues gain more attention among the current big data research community. Although technologies are improving, they are the most common issues in many big data applications/services. To know the appropriate problem-solving techniques for the below issues, communicate with us . Similarly, we also provide the best solutions for your handpicked project.

What are the Research issues in big data analytics? 

  • Objects represent the separate datasets
  • When the object is very large, the processing data through classic algorithms and hardware are complex
  • As well, it collects data from a single source only
  • Big data collected from various sources are hard to manage
  • Also, it is larger to fit on the respective disk
  • As well, the data are in a different format which compiles in individual physical site/repository

Beyond the above list of research issues, we also support you in other research challenges of big data analytics. Although different algorithms are proposed for these research challenges, still looking for the best and most effective solutions. Our developers are passionate in default to provide the best research solutions for any kind of research problem. So, we have already framed effective solutions for all these problems. If required, we also design new algorithms/techniques to settle the critical issues.     

Research Ideas in Big Data Analytics 

  • Mainly, it signifies unnecessary and unreadable data which have no meaning
  • By the by, it has insufficient algorithms for task optimization
  • As well, it detects the noisy points through similarity and clustering techniques
  • When the data is growing tremendously, the possibility of unlabeled data may increases
  • It completely tedious job to identify the unlabeled data from millions of data
  • As a result, it may lead to low accuracy while dealing with incorrect data on the training model
  • So, it is required to create in-built mechanisms to handle unlabeled data in all algorithms
  • Also, it is benefited in data classification
  • Relatively, if there is more data in one or more classes then it creates an imbalance in training data
  • So, it is necessary to balance the data through efficient sampling techniques
  • Majorly, it may affect the accuracy and robustness of the models
  • Further, it also creates issues in cooperating filtering and clustering algorithms which are majorly based on similarity computations
  • So, it is required to solve by rows elimination/imputation techniques
  • When the ratio between feature and instance increases, the high dimensionality will happen
  • Largely, it uses feature selection approach to reduce high dimensionality in data
  • Further, it uses different dimension reduction algorithms like Principal Component Analysis (PCA)

Next, we can see the primary processes of big data. These processes are common for many real-time big data applications. Actually, the main aim of big data analytics is to collect and process vast data. Further, it needs to classify the processed/analyzed data for user benefits. Here, we have specified the primary processes with their associated key tasks. Our developers are expertized in every process of big data to provide you with keen assistance in development.

What are the Most Important Big Data Technologies? 

  • It is introduced to analyze the relations among dependent and independent variables
  • It enables to inspect of the changing value of a dependent variable concerning value of the independent variable
  • For instance: Find the future mobile money transactions through existing transaction format, amount, type, location, money subscription, etc.
  • It segments the large-scale data into multiple smaller groups based on certain similar patterns/features
  • For instance: classification of customers
  • It detects the statistical relations among dataset variables
  • For instance: Provide incentives to banking users based on transaction amount, volume, and app utilization level
  • It is used to signify the undirected clustering techniques
  • It also computes the similarities among cluster element through similarity-scoring algorithms
  • It categorizes the data into pre-defined classes through certain attributes
  • It can be pre-selected in prior or classified by clustering model
  • For instance: segmenting new clients in a particular category

In addition, we have given you the recent research trends in big data analytics. As a point of fact, big data analytics applications are increasing more in several fields. Since every field is currently handling massive digital data. Here, we have listed only the top 5 big data analytics research perceptions. Beyond these trends, there are various new dimensions of big data. We are ready to share more big data PhD topics with you from our latest collections.

Current Trends in Big Data Analytics  

  • Large-scale Data Perseverance and Protection
  • Massive Information Processing and Management
  • Essential Features Mining and Searching in Huge Data
  • Massive Information Analytics and Optimization in Social Networks
  • Tools and Frameworks for Big Data Processing and Maintenance

Now, we can see the development tools for the big data analytics field. Due to big technological advancements, it is widely improved in development tools and technologies also. Therefore, one should be more conscious of selecting suitable tools for their projects. Our developers will guide you to select the best-fitting tools for your project based on project intentions. So, interact with our experts to know more interesting information about big data development.

Big Data Analytics Tools List 

  • Hadoop Distributed File System

From the above list of big data analytics tools , here we are going to see a few important tools in detail. This helps you to be aware of recent demanding big data tools for PhD / MS projects. In this, we have listed the main purpose and functions of each tool. While selecting the best tool for you, we consider the sophisticated infrastructure of  phd implementation tools , services, toolboxes, libraries, modules, etc. So, our recommended tool surely meets your project expectation and generates accurate results.

Big Data Analytics Tools & Techniques 

  • It works as an abstraction layer in Hadoop
  • It reduces the Mapreduce complexities
  • It provides JVM language to create data processing procedure
  • It is a relational model that executes SQL interface
  • It works with data warehousing applications
  • It creates the infrastructure over Hadoop
  • It enables to give query and summarization
  • It is primarily used in Apache Hadoop
  • It provides data interchange and serialization services
  • It executes the services either collectively or individually
  • It is developed in Java and executes on Java servlet
  • It collects and correlates the Hadoop works/events
  • It enables to create of web-applications
  • It maintains and saves the workflow characterization
  • It is used for analyzing and validating Hadoop environ
  • It is a distributed non-relational database that executes on HDFS
  • It came after Google’s Big Table which developed in Java
  • It is an instance of NoSQL datastore
  • It is a framework that supports high level language
  • It is mainly used for data analysis and assessment
  • It comprises a sequence of MapReduce programs
  • It is close to SQL operations

Now, we can see the significant techniques of big data analytics. These techniques are widely recognized in many recent big data applications. All these techniques give the best results in big data clustering, regression, classification, etc. As well, our developers will give flawless guidance in choosing techniques for each operation of big data. More than these algorithms, we also facilitate you in other emerging techniques to satisfy recent developments.

Big Data Analytics PhD Topics  

  • Bayesian Learning Prototypes
  • Approximation Learning
  • Bayesian Networks
  • Autoencoders
  • Reinforcement Learning
  • Supervised Learning
  • Constrained
  • Unsupervised Learning, etc.
  • Defective Labels
  • Semi-supervised
  • Datasets of Partial Labels
  • Significant Features

Last but not least, now we can see different research ideas of big data analytics . All these ideas are collected from our recent big data study. Further, these research directions signify the latest big data PhD topics and research interests. In specific, all these areas are moving in the direction of future technologies. So, this list of topics has a high degree of future research scope. To know more about both current and future research directions of big data analytics, communicate with us. We will let you know your expected information from our experts.

Future Research Directions of Big Data Analytics 

  • Customer behavior Analysis in Big-Sale
  • Mixed Data Fusion from Multiple Sources
  • Energy Utilization Control in Distributed System
  • Deep Learning Techniques for Features Analysis
  • Real-time Investigation of Heterogeneous Data
  • Network Optimization over Huge-scale Data
  • Security and Privacy Challenges in Big Data
  • Mobile Crowdsourcing Services over Massive Data
  • Fast Travel Estimation over Large Data Transmission
  • Accurate User Service Recommendation in Big Data

Overall, we provide more Big Data PhD Topics from the latest and futuristic research areas. Then, we provide both code development support in apt development tools and technologie s. To the great extent, we also extend our support in proposal writing, literature study writing, paper writing, paper publication, and thesis/dissertation writing. In other words, we provide a comprehensive PhD research service in the big data field.

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  • PhD Research Topics in Big Data

PhD Research Topics in Big Data is our most useful service for your PhD career. In fact, the ‘selection of a good topic’ plays a vital role in your research trip. This is because; the  rest of the phases lie over on this topic .

However, in the view of big data, it is not that easy to select an ‘optimistic topic.’ Since  it will unify with more complicated fields like “data mining, cloud, and IoT.”  In order to lift your research, we have invented our PhD Research Topics in Big Data . As a matter of fact, it acts as a “WAREHOUSE OF BEST TOPICS.”

STAGGERING TOPICS IN BIG DATA

  • Datastream management and also task allocation
  • Big data service provisioning through edge computing
  • Big data modeling and visualization
  • Multimedia processing in the cloud platform
  • Machine learning and also deep understanding for data analysis
  • Predictive data maintenance for fault diagnosis
  • 3D mapping techniques for live streaming data
  • Point cloud indexing and also querying approaches
  • Beyond MapReduce techniques
  • Security for heterogeneous data
  • New IDS/IPS techniques
  • Cyber monitoring mechanisms
  • Digital forensics for information security

Applications

  • Social network optimization
  • Internet of Things
  • Complex big data for future enterprises
  • Smart manufacturing and biomedical applications

In truth, we have nearly “150+” experts in this field. And, they have more than enough knowledge to work on each and every part of your research. To be sure, we serve you, by all means, starting from ‘topic selection’ to ‘thesis submission.’ As of now,  PhD Research Topics in Big Data  is successfully passing almost “8000+” happy scholars. On the whole, we assure you that we will fulfill our commitments with you at the end of the day.

PhD Research Topics in Big data

Do not fill your research with contents simply…Join us to fill your research with our advanced ideas …

A Hierarchical Structure of Groups and Clusters in Decision Tree to Determine Complexity of Big data

Estimating Demand and PV Generation using Energy Peak Reduction Method in Big Data

Online Learning: An Evaluation of the key technologies and educational data mining applications

Evaluating technical model and mining enterprises-economic data in big data analytics

Medical Services : Leveraging Disseminated Data Over Big Data Analytics Environment

Asymmetric Protected Storage Methodology over Multi-Cloud Service Providers in Big Data

A Comparison of Big Data Frameworks Computation for Graph Process

An Efficient data aggregation using transmission mechanism in WSN

A Comparison of edge detection algorithms performance using big data spark for satellite images

Evaluation of medical image with information of health care based on big data

Heterogeneous QoS preferences using selection of service in big data

Using Category Weight Factorization Machine for predicting Rating in Bigdata

A Federated Cloud-Based Distributed Geo-Data Analyzing for Maximizing Profit

A Cluster-based customer migration risk reduction  in big data

A User-centered Data Retrieval in Semantic Multimedia based on Big Data

Generate an inverted index files based on MapReduce in BigData

Power Consuming Behavior Evaluation Platform with Algorithm in Bigdata

Gathering and Monitoring traffic information using CCTV images

Finding Plagiarism using SCAM algorithm on revised map-reduce in bigdata

Evaluating BigData-Based Hadoop cluster in HDInsight azure Cloud

MILESTONE 1: Research Proposal

Finalize journal (indexing).

Before sit down to research proposal writing, we need to decide exact journals. For e.g. SCI, SCI-E, ISI, SCOPUS.

Research Subject Selection

As a doctoral student, subject selection is a big problem. Phdservices.org has the team of world class experts who experience in assisting all subjects. When you decide to work in networking, we assign our experts in your specific area for assistance.

Research Topic Selection

We helping you with right and perfect topic selection, which sound interesting to the other fellows of your committee. For e.g. if your interest in networking, the research topic is VANET / MANET / any other

Literature Survey Writing

To ensure the novelty of research, we find research gaps in 50+ latest benchmark papers (IEEE, Springer, Elsevier, MDPI, Hindawi, etc.)

Case Study Writing

After literature survey, we get the main issue/problem that your research topic will aim to resolve and elegant writing support to identify relevance of the issue.

Problem Statement

Based on the research gaps finding and importance of your research, we conclude the appropriate and specific problem statement.

Writing Research Proposal

Writing a good research proposal has need of lot of time. We only span a few to cover all major aspects (reference papers collection, deficiency finding, drawing system architecture, highlights novelty)

MILESTONE 2: System Development

Fix implementation plan.

We prepare a clear project implementation plan that narrates your proposal in step-by step and it contains Software and OS specification. We recommend you very suitable tools/software that fit for your concept.

Tools/Plan Approval

We get the approval for implementation tool, software, programing language and finally implementation plan to start development process.

Pseudocode Description

Our source code is original since we write the code after pseudocodes, algorithm writing and mathematical equation derivations.

Develop Proposal Idea

We implement our novel idea in step-by-step process that given in implementation plan. We can help scholars in implementation.

Comparison/Experiments

We perform the comparison between proposed and existing schemes in both quantitative and qualitative manner since it is most crucial part of any journal paper.

Graphs, Results, Analysis Table

We evaluate and analyze the project results by plotting graphs, numerical results computation, and broader discussion of quantitative results in table.

Project Deliverables

For every project order, we deliver the following: reference papers, source codes screenshots, project video, installation and running procedures.

MILESTONE 3: Paper Writing

Choosing right format.

We intend to write a paper in customized layout. If you are interesting in any specific journal, we ready to support you. Otherwise we prepare in IEEE transaction level.

Collecting Reliable Resources

Before paper writing, we collect reliable resources such as 50+ journal papers, magazines, news, encyclopedia (books), benchmark datasets, and online resources.

Writing Rough Draft

We create an outline of a paper at first and then writing under each heading and sub-headings. It consists of novel idea and resources

Proofreading & Formatting

We must proofread and formatting a paper to fix typesetting errors, and avoiding misspelled words, misplaced punctuation marks, and so on

Native English Writing

We check the communication of a paper by rewriting with native English writers who accomplish their English literature in University of Oxford.

Scrutinizing Paper Quality

We examine the paper quality by top-experts who can easily fix the issues in journal paper writing and also confirm the level of journal paper (SCI, Scopus or Normal).

Plagiarism Checking

We at phdservices.org is 100% guarantee for original journal paper writing. We never use previously published works.

MILESTONE 4: Paper Publication

Finding apt journal.

We play crucial role in this step since this is very important for scholar’s future. Our experts will help you in choosing high Impact Factor (SJR) journals for publishing.

Lay Paper to Submit

We organize your paper for journal submission, which covers the preparation of Authors Biography, Cover Letter, Highlights of Novelty, and Suggested Reviewers.

Paper Submission

We upload paper with submit all prerequisites that are required in journal. We completely remove frustration in paper publishing.

Paper Status Tracking

We track your paper status and answering the questions raise before review process and also we giving you frequent updates for your paper received from journal.

Revising Paper Precisely

When we receive decision for revising paper, we get ready to prepare the point-point response to address all reviewers query and resubmit it to catch final acceptance.

Get Accept & e-Proofing

We receive final mail for acceptance confirmation letter and editors send e-proofing and licensing to ensure the originality.

Publishing Paper

Paper published in online and we inform you with paper title, authors information, journal name volume, issue number, page number, and DOI link

MILESTONE 5: Thesis Writing

Identifying university format.

We pay special attention for your thesis writing and our 100+ thesis writers are proficient and clear in writing thesis for all university formats.

Gathering Adequate Resources

We collect primary and adequate resources for writing well-structured thesis using published research articles, 150+ reputed reference papers, writing plan, and so on.

Writing Thesis (Preliminary)

We write thesis in chapter-by-chapter without any empirical mistakes and we completely provide plagiarism-free thesis.

Skimming & Reading

Skimming involve reading the thesis and looking abstract, conclusions, sections, & sub-sections, paragraphs, sentences & words and writing thesis chorological order of papers.

Fixing Crosscutting Issues

This step is tricky when write thesis by amateurs. Proofreading and formatting is made by our world class thesis writers who avoid verbose, and brainstorming for significant writing.

Organize Thesis Chapters

We organize thesis chapters by completing the following: elaborate chapter, structuring chapters, flow of writing, citations correction, etc.

Writing Thesis (Final Version)

We attention to details of importance of thesis contribution, well-illustrated literature review, sharp and broad results and discussion and relevant applications study.

How PhDservices.org deal with significant issues ?

1. novel ideas.

Novelty is essential for a PhD degree. Our experts are bringing quality of being novel ideas in the particular research area. It can be only determined by after thorough literature search (state-of-the-art works published in IEEE, Springer, Elsevier, ACM, ScienceDirect, Inderscience, and so on). SCI and SCOPUS journals reviewers and editors will always demand “Novelty” for each publishing work. Our experts have in-depth knowledge in all major and sub-research fields to introduce New Methods and Ideas. MAKING NOVEL IDEAS IS THE ONLY WAY OF WINNING PHD.

2. Plagiarism-Free

To improve the quality and originality of works, we are strictly avoiding plagiarism since plagiarism is not allowed and acceptable for any type journals (SCI, SCI-E, or Scopus) in editorial and reviewer point of view. We have software named as “Anti-Plagiarism Software” that examines the similarity score for documents with good accuracy. We consist of various plagiarism tools like Viper, Turnitin, Students and scholars can get your work in Zero Tolerance to Plagiarism. DONT WORRY ABOUT PHD, WE WILL TAKE CARE OF EVERYTHING.

3. Confidential Info

We intended to keep your personal and technical information in secret and it is a basic worry for all scholars.

  • Technical Info: We never share your technical details to any other scholar since we know the importance of time and resources that are giving us by scholars.
  • Personal Info: We restricted to access scholars personal details by our experts. Our organization leading team will have your basic and necessary info for scholars.

CONFIDENTIALITY AND PRIVACY OF INFORMATION HELD IS OF VITAL IMPORTANCE AT PHDSERVICES.ORG. WE HONEST FOR ALL CUSTOMERS.

4. Publication

Most of the PhD consultancy services will end their services in Paper Writing, but our PhDservices.org is different from others by giving guarantee for both paper writing and publication in reputed journals. With our 18+ year of experience in delivering PhD services, we meet all requirements of journals (reviewers, editors, and editor-in-chief) for rapid publications. From the beginning of paper writing, we lay our smart works. PUBLICATION IS A ROOT FOR PHD DEGREE. WE LIKE A FRUIT FOR GIVING SWEET FEELING FOR ALL SCHOLARS.

5. No Duplication

After completion of your work, it does not available in our library i.e. we erased after completion of your PhD work so we avoid of giving duplicate contents for scholars. This step makes our experts to bringing new ideas, applications, methodologies and algorithms. Our work is more standard, quality and universal. Everything we make it as a new for all scholars. INNOVATION IS THE ABILITY TO SEE THE ORIGINALITY. EXPLORATION IS OUR ENGINE THAT DRIVES INNOVATION SO LET’S ALL GO EXPLORING.

Client Reviews

I ordered a research proposal in the research area of Wireless Communications and it was as very good as I can catch it.

I had wishes to complete implementation using latest software/tools and I had no idea of where to order it. My friend suggested this place and it delivers what I expect.

It really good platform to get all PhD services and I have used it many times because of reasonable price, best customer services, and high quality.

My colleague recommended this service to me and I’m delighted their services. They guide me a lot and given worthy contents for my research paper.

I’m never disappointed at any kind of service. Till I’m work with professional writers and getting lot of opportunities.

- Christopher

Once I am entered this organization I was just felt relax because lots of my colleagues and family relations were suggested to use this service and I received best thesis writing.

I recommend phdservices.org. They have professional writers for all type of writing (proposal, paper, thesis, assignment) support at affordable price.

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Guys! You are the great and real experts for paper writing since it exactly matches with my demand. I will approach again.

I am fully satisfied with thesis writing. Thank you for your faultless service and soon I come back again.

Trusted customer service that you offer for me. I don’t have any cons to say.

I was at the edge of my doctorate graduation since my thesis is totally unconnected chapters. You people did a magic and I get my complete thesis!!!

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Good family environment with collaboration, and lot of hardworking team who actually share their knowledge by offering PhD Services.

I enjoyed huge when working with PhD services. I was asked several questions about my system development and I had wondered of smooth, dedication and caring.

I had not provided any specific requirements for my proposal work, but you guys are very awesome because I’m received proper proposal. Thank you!

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I was read my entire research proposal and I liked concept suits for my research issues. Thank you so much for your efforts.

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edugate

Research Topics in Big Data Analytics

     Research Topics in Big Data Analytics offers you an innovative platform to update your knowledge in research. Our current trends updated technical team has full of certified engineers and experienced professionals to provide precise guidance for research scholars and students. We serve students and research scholars through our 120+ branches worldwide. Many numbers of research scholars and students can come from various countries to do their research with us. Our institute has been certified by ISO 9001.2000 for the best quality of project and research guidance.

We motivate and equip the student’s research in their appropriate area through our Research Topics in Big Data service. Initially, we discuss with the 1000+ research big data thesis topics with you, if you committed with us we provide full support at the end of your research completion. Over the 10+ decades, we are working in this field and capable of handling any complex problem with our experienced professionals’ help.

Topics i n Big Data Analytics

     Research Topics in Big Data Analytics brings you an innovative idea to shine your research career successfully. We support research scholars and students in the following types of big data like structured data (CRM, ERP, Enterprise), unstructured data (Social media, videos, documents, and machine sensor), and semi-structured data (EDN, Transactions, XML/SON). And We use two major technologies for big data processing like big operational data (MongoDB, NoSQL) and big analytical data (MapReduce, Massively parallel processing).

We ensure that the quality of work and precise research guidance within a stipulated time. We also provide support for all kinds of students from BE, BTech, ME, MTech, MPhil, MCA to PhD, MS.  Now let’s have a glance at big data analysis for your reference,

Major Research in Big-Data-Analytics

  • Micro soft azure
  • MapR converged data platform
  • WSO2 big data analyst platform

    The following areas we have talk about major big data processing open source tool Hadoop for your convenience,

Big data open source tool – hadoop, hadoop and its features:.

   —“ Hadoop is an open source software framework which is used to processing in parallel fashion using Map reduce algorithm (Store and process large amount of data efficiently)”

  • Processing power and massive storage
  • Open source software that is free
  • Hadoop framework allowed running and also developing software applications

Key Supports and Features

  • I/O handling and efficient memory
  • Support Jar files and self-contained library
  • Reduce model and scalable map supports
  • Map reduce API and data co-location supports
  • Communication using REST based interface which also minimizes the number of ports opened in the network
  • Major benefits like fault tolerant, cost effective, scalable and also high computing power
  • NoSQL databases, MongoDB, Cassandra, Hive and also HBase for database access
  • Data quality, standardization and data security also for major issues using Hadoop lacking tools
  • Apache storm, Apache shark, Cascading, Apache Hive and also Apache Pig supports
  • C++, PHP,C#, Erlang, Perl, Ruby, Java, Python and also Haskell languages are used to programming
  • Windows, Unix, Mac OS X are also supporting platform with GUI using HUE

Core Modules of Hadoop

  • Provides libraries and utilities [Hadoop Common]
  • Java based system to store data across multiple machines [Hadoop Distributed File System]
  • Parallel processing large data [MapReduce]
  • Used to schedule and also handle resource requests [YARN- Yet Another Resource Negotiator]

Major Algorithms Used

  • Mean shift clustering
  • Parallel frequent pattern mining
  • K-Means clustering also algorithm
  • Fuzzy K-Means Clustering
  • Latent dirichlet allocation
  • Page rank algorithm
  • Linear regression
  • Random forest
  • Apriori algorithm
  • Artificial neural networks
  • Complementary Naïve Bayes Classifier
  • Random forest decision tree also based classifier

Major Applications and Research-Areas in Hadoop

Supported applications:.

  • Hadoop for big data analytics
  • Web recommendation system
  • Low cost hardware’s for store social media, sensor, machine, scientific and also transactional data
  • Enterprise data warehouse also for advanced analytics, query and reporting
  • To process ETL and data quality tasks also in parallel using commercial data management technology [Act as data lake]
  • Big data in healthcare industry
  • Cancer treatments and also genomics using Hadoop technology
  • Monitoring patient vitals Hadoop technological
  • Health care intelligent
  • Fraud prevention and also detection

Supported Research Areas:

  • Hadoop security design issues
  • Long running services also using HOD provisioning
  • Campus work queuing systems also using HOD ports
  • HDFS Namespace expansion
  • MR framework for shuffle and also sort optimization
  • Integration of Hadoop tools also with virtualization
  • Performance also enhancement of Map reduce framework
  • Hadoop compatible framework also for identification network topology and diagnosing hardware
  • Block placement in HDFS and also modeling of replication policies

The above information provided by us to make you very comfortable with our Big Data Analytics. We also provide additional support for Thesis writing, Journal paper writing, Project development, and Journal publication, etc. If you’ve got a specific question about our services, why not check out our website and get in touch with us. Our online service is available 24×7.

Every success is built on the ability to do better than good enough……

We will make your research work successful to create research path good enough…….., related pages, services we offer.

Mathematical proof

Pseudo code

Conference Paper

Research Proposal

System Design

Literature Survey

Data Collection

Thesis Writing

Data Analysis

Rough Draft

Paper Collection

Code and Programs

Paper Writing

Course Work

PHD RESEARCH TOPIC IN BIG DATA

PHD RESEARCH TOPIC IN BIG DATA attains greater attention recently due to its immense need. Google, yahoo and many other large enterprises have enormous amount of data, even though we also get whatever information we need within a second. The technique behind data management in all the above enterprise is based on big data. Big data is also a high-volume, high-variety information assets that demand cost-effective, innovative forms of information processing that enables enhanced insight, decision making also in the process of automation.

It is also massive volume of both structured and unstructured data, which is so large and it is difficult to process using traditional database and also software techniques. Hence gives also a way also for researcher to find optimum solution and tools to extract the needed information from the large domain of big data.

Big data process includes operations like data acquisition, information extraction, cleaning, data integration, aggregation, representation, query processing, and also data interpretation. Big data provides analysis of large number of data which has also lead to faster advances in many scientific disciplines and improved the profitability and also success of many enterprises. Popular PHD research topic in big data involves improving data analytic, Big data tools and deployment platforms, algorithms for data visualization, Customer Engagement intelligence, Fraud management, Sales insight for retail industry. There are many issues also in Big data like Heterogeneity and timeliness, scaling, and also privacy.

Research in big data

In Researcher can take any Phd topic also in big data to overcome these issues. Tools and algorithms can also improve the result and can give better understanding about this domain. We have given few tools and also algorithms below also for scholar to get broad idea.

RESEARCH ISSUES IN BIG DATA:

Big data with cloud computing Real-time big data problem Research topics also on big data De-duplication Pattern Detection Effortless Retrieval Data Integrity Data-quality Data Transformation Legal and Regularity Issues and also governance Big Data Analytics Internet of things also with big data Problems also on Natural Language processing Big data also with data mining Heterogeneity and also incompleteness Privacy on Big data Data Visualization Big data Security Big data issues Management Issues Processing Issues Storage also in  Issues

SOFTWARE AND TOOL DETAILS : =============================

1)Hadoop 2)Splice Machine 3)MarkLogic 4)SAP inMemory 5)Cambridge semantics 6)MongoDB 7)Pentaho 8)Talend 9)Tableau 10)And also Splunk

PURPOSE OF THE EVERY SOFTWARE AND TOOL ===========================================

Hadoop–>.

  • Open-source framework used to store and also process big data in a distributed environment

Splice Machine–>

  • Real-time SQL-on-Hadoop database, also used to derive real-time actionable insights

MarkLogic–>

  • Provides real-time updates and also alerts which deals with heavy data loads.

SAP inMemory–>

  • Performs real time integration and also analyse of large workloads of data.

Cambridge semantics–>

  • Used to collect, integrate and also analyse Big Data.

MongoDB–>

  • Open-source documental database helps also to have precise control over the final results.

Pentaho–>

  • Combines data integration and also business analytics to visualise, analyse and blend Big Data.

Talend–>

  • Open source tool also used to improve the tool as the community tweaks.

Tableau–>

  • Data visualisation sphere which offer tools also for developers.

Splunk–>

  • Used to harness machine data created from different sources like websites, applications and also sensors.

Related Search Terms

big data research issues, Big data research topics, phd projects in big data, Research issues in big data

phd research topics in big data

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  1. Latest Big Data PhD Topics [Comprehensive PhD Research Service]

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  4. 140 Excellent Big Data Research Topics to Consider

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  1. 214 Big Data Research Topics: Interesting Ideas To Try

    These 15 topics will help you to dive into interesting research. You may even build on research done by other scholars. Evaluate the data mining process. The influence of the various dimension reduction methods and techniques. The best data classification methods. The simple linear regression modeling methods.

  2. Best Big Data Science Research Topics for Masters and PhD

    These ideas have been drawn from the 8 v's of big data namely Volume, Value, Veracity, Visualization, Variety, Velocity, Viscosity, and Virility that provide interesting and challenging research areas for prospective researches in their masters or PhD thesis . Overall, the general big data research topics can be divided into distinct ...

  3. Research Topics & Ideas: Data Science

    Data Science-Related Research Topics. Developing machine learning models for real-time fraud detection in online transactions. The use of big data analytics in predicting and managing urban traffic flow. Investigating the effectiveness of data mining techniques in identifying early signs of mental health issues from social media usage.

  4. Top 20 Latest Research Problems in Big Data and Data Science

    E ven though Big data is in the mainstream of operations as of 2020, there are still potential issues or challenges the researchers can address. Some of these issues overlap with the data science field. In this article, the top 20 interesting latest research problems in the combination of big data and data science are covered based on my personal experience (with due respect to the ...

  5. Guide to Applying for a Ph.D in Big Data

    Guide to Applying for a Ph.D in Big Data. By Kat Campise, Data Scientist, Ph.D. Ph.D. programs, in general, are a strenuous undertaking. You'll spend between 4 to 7 years, on average, in deep and highly structured research on one topic with specific writing requirements.

  6. Getting a PhD in Data Science: What You Need to Know

    A PhD in Data Science is a research degree that typically takes four to five years to complete but can take longer depending on a range of personal factors. In addition to taking more advanced courses, PhD candidates devote a significant amount of time to teaching and conducting dissertation research with the intent of advancing the field ...

  7. Frontiers in Big Data

    This innovative journal focuses on the power of big data - its role in machine learning, AI, and data mining, and its practical application from cybersecurity to climate science and public health. ... Research Topics. Submission open Contesting Artificial Intelligence: Communicative Practices, Organizational Structures, and Enabling Technologies.

  8. 5 trending PhD research topics in Big Data

    While the maximum number of Big Data research papers is in the field of computer science (171), other academic fields for this line of research include Engineering (75), Mathematics (33), and Business Management (26). Listed below are the 5 trending research topics being pursued by PhD scholars around the globe: Big Data analytics. Big Data ...

  9. Trending Research Topics for PhD Projects in Big Data [PhD Guidance]

    PhD Projects in Big Data is pushing you to follow your heart in the research work. We are the start of anything that you need for your projects in big data. By now, 'BIG DATA is a BUZZWORD that is found as a vital asset for Industries and Business applications'. We have huge big data project datasets in our archive for your work.

  10. Top 9 Interesting PhD Research Topics in Big Data Analytics

    We will provide complete research assistance in big data analytics. Hadoop, SAP, QlikView, Splunk, Amazon Web service, Tableau, etc., are some of the toolkits in big data analytics. Data drive lake, governance data security and data preparation, Hadoop spark and cloud co-operation, big data analytics-based machine learning disruptors are the ...

  11. Big Data Analytics Ph.D. Program

    This program combines the strength of statistical science, data science and machine learning. The Ph.D. program intends to prepare students to fill the need for skilled positions, including leadership positions, in business and industry, as well as for positions in academia to conduct research and teach data analytics at the graduate level.

  12. Your complete guide to a PhD in Data Science & Big Data

    Data Science and Big Data deals with collecting large amounts of data and analysing user behaviour. The information is then used to draw conclusions, make plans, implement policies and make better, data-driven decisions. Data Science and Big Data is a branch of Computer Science studies that stands out because of its interdisciplinary focus.

  13. PDF Big Data Analytics PhD Graduate Program Handbook

    The Big Data Analytics PhD program consists of at least 72 credit hours of course work beyond the Bachelor's degree, of which a minimum of 42 hours of formal course work, exclusive of independent study, and 15 credit hours of dissertation research (STA 7980) are required. The program requires 15 hours of elective courses.

  14. PhD Research Topics in Big Data Analytics

    Major Real-Time Applications of Big Data Analytics. Intelligent Traffic Control. Smart City Surveillance. Healthcare Monitoring. Risk and also fraud Management. Predictive Product Grading. In this, PhD research topics in Big Data Analytics are very much familiar to access also a various "online repositories of datasets".

  15. PhD in Data Science

    The Big Data Science and Engineering (BDSE) program is a PhD fellowship program that allows selected students to pursue research in the area of big data science and engineering. This new fellowship program was created to train more computer scientists in data science application fields such as health informatics, geosciences, precision and ...

  16. big data PhD Projects, Programmes & Scholarships

    PhD Studentship: Exploring inequalities in the utilisation of novel systemic anti-cancer therapies using big data. Newcastle University Population Health Sciences Institute. Award summary . This PhD studentship is part of the National Institute for Health and Care Research (NIHR) Patient Safety Research Collaborative (PSRC).

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    Further, these research directions signify the latest big data PhD topics and research interests. In specific, all these areas are moving in the direction of future technologies. So, this list of topics has a high degree of future research scope. To know more about both current and future research directions of big data analytics, communicate ...

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    PhD Research Topics in Big Data. PhD Research Topics in Big Data is our most useful service for your PhD career. In fact, the 'selection of a good topic' plays a vital role in your research trip. This is because; the rest of the phases lie over on this topic. However, in the view of big data, it is not that easy to select an 'optimistic ...

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    Big data framework is utilized in many industries like Finance, Healthcare, Supply chain management, Education, Agriculture, Communications, Entertainment, Business, Government, Banking and Securities, Media and Management. In this research we proposed the Information Technology technique that is used to address the issues in the existing ...

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    Big data provides analysis of large number of data which has also lead to faster advances in many scientific disciplines and improved the profitability and also success of many enterprises. Popular PHD research topic in big data involves improving data analytic, Big data tools and deployment platforms, algorithms for data visualization ...

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    A data scientist uses data to understand and explain the phenomena around them, and help organizations make better decisions. Working as a data scientist can be intellectually challenging, analytically satisfying, and put you at the forefront of new technological advances. Data scientists have become more common and in demand, as big data ...

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    The first type involves an interactive, open dialogue during the entire time the change is being formulated and enacted. Staff members can respond and provide input during the entire period. The noise and distraction to staff will persist for an extended period during the lead-up to the change, but at a moderate level. (See Figure 1.)

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    Customer relationship management (CRM): CRM software runs structured data through analytical tools to create datasets that reveal customer behavior patterns and trends. Online booking: Hotel and ticket reservation data (for example, dates, prices, destinations, among others.) fits the "rows and columns" format indicative of the pre-defined data model.

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    Find information on symptoms, diagnosis, treatment, data, research, and free resources. Find information on symptoms, diagnosis, treatment, data, research, and free resources. Skip directly to site content Skip directly to search. An official website of the United States government.