Free!
5 calls per month (30min/call)
Unlimited Q&A via chat
Expect responses in 2 days
No spots left, but you can save the mentor to your wishlist to get notified about their open spots!
Cancel anytime
With over 14 years of experience leading data science organizations, I specialize in building and scaling machine learning solutions that drive high-impact business decisions. At Microsoft, I established and led a pioneering data science unit that optimizes cloud infrastructure planning for next-generation AI technologies. My team—comprising PhD Economists, Statisticians, and Developers—develops advanced ML and econometric models that shape Microsoft’s Cloud and AI infrastructure strategy, setting new standards for efficiency through globally optimized risk management.
Beyond technical expertise, I bring strategic leadership and a deep understanding of the intersection between AI, economics, and business strategy. My work in hybrid econometric modeling, integrating deep learning with classical methodologies, has pushed the boundaries of predictive analytics and decision-making. With an MBA from the University of Chicago Booth School of Business and experience at both BCG and Microsoft, I am passionate about mentoring others in developing scalable, impactful ML solutions. I look forward to guiding and empowering the next generation of data science leaders.
5 out of 5 stars
Sajay suresh is extremely helpful when it comes to mentorship. He has very strong insights in AI and Data Science. He keeps me motivated and always push to me to go beyond my limits.
5 out of 5 stars
My mentor taught me the data analyst roadmap in a very clear and practical way. also advised me to pick an industry and focus on projects, which helped me understand how to apply my skills better. I really recommend to other thank a lot once again sir!
Notify me when FNU has new spots
We will send you a quick email if FNU has new open spots for mentorship, and only in that case!
Book a free intro call with FNU
Connect with FNU in a quick call (usually under 30 minutes)