Sessions and Tracks
Track 1 : Foundations of Big Data Analysis
Foundations of Big Data Analysis is a foundational session designed to provide participants with a thorough understanding of the core concepts and principles that underpin the field of big data analytics. This session covers essential topics such as the characteristics of big data, data acquisition, storage, and pre-processing, as well as data exploration techniques. Participants will learn about the challenges and opportunities presented by big data and gain insight into how to effectively analyze and derive valuable insights from large and complex datasets. Through engaging lectures and interactive discussions, this session aims to equip participants with the knowledge and skills needed to navigate the world of big data analytics confidently.
Track 2 : Big Data Technologies and Tools session
Big Data Technologies and Tools session offers a comprehensive overview of the latest technologies and tools used in the field of big data analytics. Participants will learn about various platforms, frameworks, and software solutions that are essential for processing, storing, and analyzing large volumes of data. The session covers a wide range of topics, including distributed computing; cloud computing, NoSQL databases, Hadoop, Spark, and machine learning libraries. Through hands-on demonstrations and practical examples, participants will gain a deep understanding of how these technologies and tools can be applied to real-world big data challenges. Whether you are a beginner or an experienced data professional, this session will provide you with valuable insights into the rapidly evolving landscape of big data technologies.
Track 3 : Data Cleaning and Preprocessing
Data Cleaning and Preprocessing is a critical process in the field of data analysis, especially when dealing with large and complex datasets. This session provides participants with an in-depth understanding of the importance of data cleaning and preprocessing and the various techniques involved.Participants will learn how to identify and handle missing or duplicate data, remove outliers, and standardize data formats. They will also explore techniques for data transformation, such as normalization and encoding categorical variables. Through hands-on exercises and real-world examples, participants will gain practical skills in cleaning and preprocessing data to ensure its quality and suitability for analysis.By the end of the session, participants will have a solid foundation in data cleaning and preprocessing principles and techniques, enabling them to effectively prepare data for further analysis and interpretation.
Track 4 : Clustering and Association Rule Mining
Clustering and Association Rule Mining are advanced techniques used in data mining to uncover patterns and relationships within datasets. In the Clustering portion of this session, participants will learn about different clustering algorithms, such as K-means and hierarchical clustering, and how to apply them to group similar data points together. They will also explore practical applications of clustering, such as customer segmentation and anomaly detection.In the Association Rule Mining portion, participants will delve into the theory and practice of discovering interesting relationships between variables in large datasets. They will learn about popular algorithms like Apriori and FP-growth, and how to interpret and apply the resulting rules to make data-driven decisions.Through hands-on exercises and real-world examples, participants will gain a deep understanding of these powerful techniques and how to leverage them to extract valuable insights from their data.
Track 5 : Text Mining and Natural Language Processing
Text Mining and Natural Language Processing (NLP) are essential techniques for extracting insights and knowledge from unstructured text data. In this session, participants will learn about the principles and applications of text mining and NLP in various fields.The Text Mining portion of the session will cover topics such as text preprocessing, tokenization, and feature extraction. Participants will also explore techniques for sentiment analysis, topic modeling, and text classification using machine learning algorithms.In the Natural Language Processing portion, participants will learn about the fundamentals of NLP, including syntax and semantics. They will also explore advanced NLP techniques such as named entity recognition, part-of-speech tagging, and text summarization.
Track 6: Exploratory Data Analysis
Exploratory Data Analysis is a critical step in the data analysis process that involves analyzing and visualizing data to understand its key characteristics, uncover patterns, and identify potential relationships between variables. In this session, participants will learn about the principles and techniques of EDA and how to apply them to real-world datasets. Participants will explore methods for summarizing and visualizing data, such as histograms, box plots, and scatter plots. They will also learn how to identify outliers, missing values, and other data issues that may impact the analysis. Through hands-on exercises and case studies, participants will gain practical experience in conducting EDA and interpreting the results. By the end of the session, participants will have a solid understanding of EDA principles and how to apply them to gain valuable insights from data.
Track 7: Machine Learning for Big Data
Machine Learning for Big Data is a session that focuses on the application of machine learning techniques to large and complex datasets. Participants will learn about the principles of machine learning and how to apply them to solve real-world problems in big data analytics. The session covers a range of machine learning topics, including supervised learning, unsupervised learning, and reinforcement learning. Participants will explore different machine learning algorithms and models, such as decision trees, support vector machines, and neural networks, and learn how to select the most appropriate model for a given problem.Through hands-on exercises and case studies, participants will gain practical experience in building and evaluating machine learning models using big data. By the end of the session, participants will have the skills and knowledge needed to apply machine learning techniques to big data analytics projects effectively.
Track 8 : Future Trends in Big Data Analysis and Data Mining
Future Trends in Big Data Analysis and Data Mining explores emerging technologies and methodologies that are shaping the future of data analysis. Advancements in AI and ML are expected to play a significant role in the future of data analysis, enabling more sophisticated and automated analysis techniques. Deep learning, a subset of ML, is expected to continue to grow in importance, particularly in areas such as image and speech recognition. With the rise of IoT devices, edge computing is becoming increasingly important for processing data closer to the source, reducing latency and bandwidth usage. As data collection and analysis become more pervasive, there is a growing focus on data privacy and ethical considerations in data mining and analysis. As datasets continue to grow in size and complexity, effective data visualization techniques will be crucial for making sense of the data and communicating insights.
Track 9 : Social Network Analysis
Social Network Analysis (SNA) is a powerful method for studying patterns of relationships and interactions among individuals, groups, or organizations. It is used in various fields, including sociology, anthropology, psychology, and organizational studies, to understand the structure and dynamics of social networks.In SNA, networks are represented as graphs, with nodes representing individual entities (such as people or organizations) and edges representing the relationships or interactions between them. SNA uses mathematical and computational techniques to analyze these networks and uncover patterns such as centrality, clustering, and community structure.Identifying key players or influencers in a social network. Understanding the flow of information or resources within a network. Analysing the structure of online social networks. StudyiExamining the structure of terrorist networks or criminal organizations. Examine the spread of diseases or behaviours through a population. SNA can provide valuable insights into the structure and dynamics of social networks, helping researchers and practitioners understand complex social phenomena and make informed decisions.
Track 10 : Data Visualization with Tableau
Data Visualization with Tableau is a workshop designed to teach participants how to create compelling and interactive visualizations using Tableau software. Tableau is a powerful tool for data visualization that allows users to create a wide variety of visualizations, including charts, graphs, maps, and dashboards, from large and complex datasets. In this workshop, participants will learn the basics of Tableau, including how to connect to data sources, create different types of visualizations, and customize their appearance. They will also learn how to use Tableau's interactive features to explore data and gain insights.Through hands-on exercises and real-world examples, participants will gain practical experience in creating effective visualizations that help to communicate complex data in a clear and engaging way. By the end of the workshop, participants will have the skills and knowledge needed to create their own visualizations using Tableau
Track 11 : Deep Learning for Big Data
Deep Learning for Big Data is an advanced workshop that focuses on applying deep learning techniques to large and complex datasets. Deep learning is a subset of machine learning that uses artificial neural networks to model and interpret complex patterns in data. In this workshop, participants will learn about the principles of deep learning and how to apply them to big data analytics. The workshop covers topics such as convolutional neural networks (CNNs) for image analysis, recurrent neural networks (RNNs) for sequence data, and generative adversarial networks (GANs) for generating new data samples. Participants will also learn about advanced deep learning topics such as transfer learning, reinforcement learning, and optimization techniques for training deep neural networks.Through hands-on exercises and real-world examples, participants will gain practical experience in building and training deep learning models for big data analytics. By the end of the workshop, participants will have the skills and knowledge needed to apply deep learning techniques to solve complex problems in big data analytics.
Track 12 : Big Data Analytics with R
Big Data Analytics with R is a comprehensive workshop that focuses on using the R programming language for big data analytics. R is a popular programming language and environment for statistical computing and graphics, and it offers a wide range of tools and packages for analyzing and visualizing large datasets.In this workshop, participants will learn how to use R to perform common big data analytics tasks, such as data cleaning, transformation, and analysis. They will also learn how to work with big data technologies, such as Hadoop and Spark, to process and analyze large datasets. Introduction to R and its capabilities for big data analytics.Data manipulation and transformation in R.Data visualization with ggplot2 and other R packages.Working with big data technologies in R, such as Hadoop and Spark.Machine learning with R, including building predictive models and clustering analysis.Real-world applications and case studies of big data analytics with R
Track 13 : Data Security for Big Data
Data Security for Big Data is a critical workshop that focuses on ensuring the security and privacy of large and complex datasets. Big data analytics often involves processing and analyzing sensitive information, making data security a top priority for organizations.In this workshop, participants will learn about the unique challenges and considerations involved in securing big data environments. They will explore best practices and strategies for protecting data at rest, in transit, and during processing. Participants will also learn about the regulatory requirements and compliance standards that govern data security in big data environments. Through hands-on exercises and case studies, participants will gain practical experience in implementing data security measures for big data environments. By the end of the workshop, participants will have the skills and knowledge needed to design and implement a comprehensive data security strategy for big data analytics.
Track 14 : Success Stories and Lessons Learned
Success Stories and Lessons is a workshop that focuses on sharing real-world examples and experiences from organizations that have successfully implemented big data analytics projects. Participants will hear from industry experts and practitioners who will share their insights, challenges, and lessons learned from their big data journeys.In this workshop, participants will learn about.Successful big data analytics projects in various industries, including healthcare, finance, marketing, and more.Key factors that contributed to the success of these projects, such as effective data governance, stakeholder engagement, and technology selection.Challenges faced during the implementation of big data analytics projects and how they were overcome.Lessons learned from past projects and best practices for future projectsThrough interactive discussions and case studies, participants will gain valuable insights into the practical aspects of implementing big data analytics projects and learn from the experiences of others in the field. By the end of the workshop, participants will have a deeper understanding of the key success factors and challenges in big data analytics and be better equipped to plan and execute their own big data projects successfully.
Track 15 : Predcitive Analytics in Health Care
Predictive analytics in healthcare refers to the use of data, statistical algorithms, and machine learning techniques to identify the likelihood of future outcomes based on historical data. This approach enables healthcare providers to proactively manage patient care, improve outcomes, and reduce costs.In predictive analytics, historical data such as patient demographics, medical history, lab results, and treatment outcomes are analyzed to identify patterns and trends. These patterns are then used to develop predictive models that can forecast future events, such as the likelihood of a patient developing a specific disease or the probability of readmission to the hospital.Predictive models can help identify individuals at high risk of developing certain diseases, allowing for early intervention and preventive measures. By analyzing factors such as patient demographics, medical history, and previous hospitalizations, predictive models can help identify patients at high risk of readmission, enabling healthcare providers to provide targeted interventions to prevent readmissions. Predictive analytics can help healthcare providers develop personalized treatment plans based on individual patient data, improving treatment outcomes and patient satisfaction. Predictive models can help identify fraudulent activities in healthcare billing and claims, saving costs for both healthcare providers and payers
Market Analysis
The big data market size is projected to increase by USD 508.73 billion at a CAGR of 21.46% between between 2023 and 2028. The growth rate of the market depends on several factors, including a surge in information generation, growing investment in smart city initiatives, and increasing use of information analytics in various sectors. This refers to the vast volume of structured and unstructured information that inundates an organization on a day-to-day basis. This information comes from a myriad of sources, including business transactions, social media, sensors, and other instruments. The information is evaluated for insights that lead to better decisions and strategic business moves..The Big Data market is segmented into Component, Deployment Mode, Application, Industry Vertical and Region. On the basis of component, the Big Data Market is further segmented into Hardware, Software and Services. On the basis of Deployment mode, the market is segmented into On-premise and Cloud Based systems. On the basis of Application, the Big Data Market is segmented into Customer Analytics, Supply Chain Analytics, Marketing Analytics, Pricing Analytics, Spatial Analytics, Workforce Analytics, Risk & Credit Analytics and Transportation Analytics. On the basis of Industry Vertical, the market is segmented into BFSI, Manufacturing, Healthcare, Government, Energy & Utilities, Transportation, Retail & E-commerce, IT & Telecom, Education and Others