Artificial Intelligence for Anyone Interested (AI4AI)
This gives an overview of Artificial
Intelligence and Machine Learning for beginners
Overview
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
Long weekend 24-25-26 Jan 26, at 1700-2000 IST
Via Google Meet
What You Will Learn!
- AI: History and Overview
- State of the Art of AI tools – where to use what
- AI: Applications in the real world
- AI: Writing effective prompts
- Example-01: Creating reviews of AI literature – AI Snake Oil
- Example-02: Creating a Voice Based Agent
- Example-03: Using AI to perform analysis of industrial sectors
- Exercises on the above
About Promit Ray
Promit Ray is a Berlin-based data science practitioner, AI strategist, and researcher specializing in machine learning, ethics, and human cognition. As Head of Data Science at CLADE, and co-founder and chief AI Officer of Rayol AI Solutions, he leads the implementation of AI-driven solutions for startups and SMBs. With a PhD in computational chemistry from the University of Bonn, Promit has applied machine learning experience in healthcare, biotech, and advanced analytics. An advocate for ethical AI, he writes and speaks about its societal impact, urging a redefined, effort-based view of intelligence.
Curriculum
Instructor
Ramdas Menon has an M.Tech in chemical engineering from IIT-M, and was a Six Sigma Black Belt at GE and Pfizer before setting up Ekaagra. He holds two certifications from the ASQ - CSSBB and CRE - and has conducted programs on Statistical Methods including DOE at several corporates such as Huntsman, Pidilite, TVS Srichakra, Dr Reddys and MRF from 2008 onwards.
Reviews
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Course Features
- Lectures 0
- Quizzes 0
- Duration 9 hours
- Skill level All levels
- Language English
- Students 51
- Assessments Yes




