Skip to content
View sinsniwal's full-sized avatar

Organizations

@bsc-iitm @IITM-BS-Codebase

Block or report sinsniwal

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don't include any personal information such as legal names or email addresses. Markdown supported. This note will be visible to only you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
sinsniwal/README.md

> About Me

"From stochastic processes to production pipelines."

  • Building: Multi-Agent Systems & RAG.
  • Open Source: Contributed to Django & Kestra.
  • Offline: Swimming, Linkin Park & Irish Coffee.

GitHub Stats

Mohit Singh Sinsniwal

MSc Data Science @ CMI | BSc Data Science @ IIT Madras

Experience
  • Juspay | Research Intern | Agent as coworker (Sep 2025 – Nov 2025)
  • LTIMindtree | Summer Intern | AI Natives (May 2025 – Aug 2025)
  • TechCorp Cloud | Quant Developer (Dec 2021 – Dec 2022)
Stack
Python, C++, SQL, PyTorch, TensorFlow, LangChain, RAG, Kubernetes (AKS), Docker, Airflow, Kafka

Projects
  • PathPilot: Hybrid course recommender (Django/Sklearn).
  • NYC Taxi: Fare prediction & routing (GPU-XGBoost).
  • Market Trends: Geospatial pricing dashboard (R Shiny).

LinkedInEmail

Pinned Loading

  1. iitm-server-bot iitm-server-bot Public

    This is a Python-based Discord bot for the IIT Madras BS Students Discord server.

    Python 20 7

  2. IITM-BS-Codebase/iitm-backend IITM-BS-Codebase/iitm-backend Public

    Python 5

  3. PathPilot-recommendation-system PathPilot-recommendation-system Public

    The Learning Path Recommendation System is designed to provide students with personalized course recommendations by considering factors such as enrollment data from previous terms, the student's le…

    Python 9 2

  4. airbnb-trends airbnb-trends Public

    Interactive Shiny dashboard analyzing Airbnb trends in the U.S., featuring visual insights into pricing, room types, and geographical patterns.

    R 5