1
reputation
1

Ajay Bidyarthy

Living in the crossroads of technology and education, he enjoys working with founders, data scientists, statisticians, designers and developers who build their dreams with passion, stamina and fury. Currently building data driven product company - Gullak. He had completed his B.Tech in Mathematics and Computing from IIT Guwahati.

He is instrumental in driving analytics & research for businesses and shaping decision support framework. He has been instrumental in implementing decision support frameworks for 20+ leading firms worldwide. He has gained expertise over the course of few years in optimization, operations research, predictive modeling, statistical modeling, big data analytics, machine learning, and approximation algorithms.

He has been key in growing analytics and technologies in risk management, insurance, healthcare, case management, cyber security, capital markets, insider threats, intelligence and custom solutions for delivering the highest value and quality.

He has been active in research and innovation having published few research papers in the reputed journals including ACM, IEEE, Combinatorial Optimization, Global TACTiCS in the field of game theory, operations research, network security and optimization.

His native place is Jamui, Bihar and his most of the schooling and early development happened in Jamui, and Kolkata. He is interested in politics, traveling, adventures, watching TV series, movies and loves to try as well as cook new dishes in spare time.

Specialties: His area of specialization lies in Machine Learning, Mathematical Optimization, Operations Research, Approximation Algorithms, Statistical Data Analysis, Predictive Modeling, Network Security and Computational Finance.

1
answer
0
questions
0
people reached
  • Noida, India
  • gullak.co
  • Member for 7 months
  • 0 profile views
  • Last seen Jun 13 at 11:18

Top tags (2)

Score 0
Posts 1
Score 0
Posts 1

Top posts (1) All Questions Answers | Votes Newest

Badges (1)

Gold

Silver

Bronze

1

Rarest