Indian Institute of Technology Madras is providing a major boost to tackle the shortage of Data Scientists in India. The First Batch of 30 students to complete its Inter-Disciplinary Dual Degree (IDDD) program on Data Science are all set to appear for campus placements shortly. IIT Madras is planning to almost double the number of seats in IDDD Data Science owing to the positive response from the industry as well as demand from the students.
With a massive curriculum overhaul in 2015, IIT Madras offers great flexibility to students, giving them the opportunity to take courses across disciplines, and build towards expertise in modern interdisciplinary areas that will define the future of engineering and technology. In particular, IIT Madras provides its undergraduate students an option to upgrade to IDDD programmes, where the students will study for five years and obtain B.Tech. in a parent discipline and M Tech in an interdisciplinary area.
The IDDD Data Science Students will have a bachelor’s degree in the major they opted for when they joined, as well as a Master’s degree in Data Science, enabling them to apply their Data Science skills to solve problems in their parent discipline. This is a one-of-its-kind interdisciplinary programme in the country, providing students with a strong foundation in both their parent discipline, as well as frontier areas of data science. The graduating students are uniquely trained to fulfil the rapidly increasing need for data science and artificial intelligence professionals in the Indian industry.
Speaking about the importance of Data Science to the nation’s development, Prof B Ravindran, Head, Robert Bosch Centre for Data Science and Artificial Intelligence (RBC DSAI), IIT Madras, and the course coordinator said, “Data Science is greatly impacting every discipline and the graduates of this programme, by virtue of their interdisciplinary training, are well equipped to be leaders in a digital world. ”
Students taking the course will also intern at companies and take up projects in data science. More than half of the students chose to take up projects that applied data science in their parent discipline. Students from eight of the 10 eligible departments in IIT Madras have already enrolled in this course.
Highlightling the benefits to students, Dr Nandan Sudarsanam, one of the instructors in the program, and Associate Professor, Department of Management Studies, IIT Madras, said, “In addition to enabling the students with the tools to be more impactful in their respective domains, this program allows students to make lateral shifts in their prospective careers.”
According to a study of the Artificial Intelligence and Data Science job market, 40 per cent of global companies struggle to hire and retain data scientists. One-Third of the top 400 Indian companies lack state-of-the-art Data Analysis Tools and Personnel. Further, the study estimated that 364,000 new jobs will be created in Data Science/Artificial Intelligence by 2020 in India. However, another study estimated that India had only around 80 full-fledged researchers (as of 2018) in Data Sciences.
With the tremendous availability of large volumes of data across several domains, there has been an explosion of interest in all aspects of handling and understanding data. Data Science is bringing together of all aspects of technology required for gathering, storing, analyzing and understanding data. This includes storage technology, distributed computing, data-driven modelling, data analytics and mining, visualization and security, among others. Given that proper interpretation and modelling requires good domain understanding this becomes an inherently interdisciplinary endeavour.
The goal of IDDD program on Data Science is to give basic background to students from different disciplines in data science and provide ample opportunity for them to specialize in a particular aspect of data science through the electives and the project. This course will prepare students to become applied Data Scientists and also prepare them for pursuing higher studies.
The curriculum has a core component spanning across theory and lab courses, which cover the fundamental theoretical concepts of data science as well as the programming tools required. The student is then free to choose 3-4 electives from a prescribed list. These electives are a mix of advanced algorithmic or theoretical courses and applied data science courses, ranging from reinforcement learning to computational genomics. Depending on the interests of the students one can choose to specialize in a specific application area or acquire a deeper grounding in the fundamentals of data science.