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Divyansh Srivastava

@divyanshsrivastava

Data Scientist at Decimal Point Analytics

Lucknow, India

https://linkedin.com/in/divyansh2111

Decimal Point AnalyticsIIT Ropar

Divyansh Srivastava is a Data Scientist at Decimal Point Analytics with a background in Mechanical Engineering and Computer Science from IIT Ropar. He specializes in product development for Doc-AI, LLM development, and model optimization using ONNX and TensorRT. His experience spans machine learning, deep learning, and full-stack web development.

Experience

Data Scientist (Full Time)

Decimal Point Analytics

Full-timeJan 2022 - Present

Complete Product Development of Doc-AI related tasks from Model Development, Predictive pipelines development, complete production deployment, maintenance and improvements. Contributing towards in-house LLM development and using Gen-AI for intelligent document querying, retrieval and extractive tasks. Model and inference optimization for better real-time performance using ONNX and TensorRT. Worked on Stock Market prediction and portfolio management automation using Deep Learning and RL.

Data Scientist Intern

Decimal Point Analytics

InternshipJan 2021 - Jan 2021

Worked on Video Transcription for Indian Accent using Wav2Vec2. Worked on Audio Segmentation using Feature Engineering, Clustering and DNN models.

ML and AI Intern

IoTIoT.in and Shunya OS

InternshipJan 2020 - Jan 2020

Involved development of ML models in Tensorflow along with improvising the exiting models for better accuracy.

Education

IIT Ropar

B.TECH.

Mechanical Engineering, Minor in Computer Science

Jan 2018 - Jan 2022Grade: 8.78/10

La Martiniere College, LKO

INTERMEDIATE

Jan 2017 - Jan 2018Grade: 96.80%

La Martiniere College, LKO

HIGH SCHOOL

Jan 2015 - Jan 2016Grade: 93.20%

Skills

C/C++
Python
HTML
CSS
Javascript
Bootstrap
React
SQL
MongoDB
NodeJS
ExpressJS
Keras
Tensorflow
Pytorch
OpenCV
Pandas
MLFlow
Sklearn
HuggingFace
Matplotlib
Scipy
Flask
Docker
Markdown
Git
VS Code
Matlab
SolidWorks
FlexSim
Ansys
MS Office