Join us for a thoughtful and engaging webinar where we explore what it truly means to build and use AI responsibly in real-world settings. As AI becomes more deeply embedded in business and society, understanding fairness, transparency, privacy, and accountability is no longer optional. This session will unpack practical considerations, common challenges, and real examples of responsible AI in action. Ideal for professionals who want to adopt AI with confidence, this webinar offers clear insights into balancing innovation with ethical and responsible decision-making.

Webinar Registration

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Agenda for the session

  • Ethical Principles in AI
  • Building Trustworthy AI Systems
  • MIT IDSS's AI and Data Science Program
  • Live Q&A

About Speakers

Angel Das

Senior Consultant, IQVIA Asia Pacific

Angel Das is an advanced analytics professional who helps companies find solutions for various problems through a mix of business, technology, and math on organizational data. He has experience establishing relationships with Fortune 500 clients in a white box and collaborative manner to improve the art of problem-solving for constantly shifting and ill-defined business problems.

AI and Data Science: Leveraging Responsible AI, Data and Statistics for Practical Impact Program

The AI and Data Science: Leveraging Responsible AI, Data and Statistics for Practical Impact Program Program has a curriculum carefully crafted by MIT faculty to provide you with the skills and knowledge to apply AI and data science techniques to help you make AI-driven decisions.

This AI and data science program has been designed for the needs of professionals looking to grow their careers and enhance their AI and data science skills to solve complex business problems. In a relatively short period of time, the program aims to build your understanding of most industry-relevant technologies today such as machine learning, deep learning, network analytics, recommendation systems.