Skip to content

Hemanthneu/Hemanthneu

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

26 Commits
 
 

Repository files navigation

Hi there, I'm Hemanth Ramesh 👋

Full-Stack Data Scientist | ML Engineer | Software Developer

photo-1616763355548-1b606f439f86

Data Science Expertise

As a seasoned data scientist, my expertise spans machine learning, AI, and advanced analytics, with a proven track record of developing models that grow business growth. I've successfully implemented machine learning solutions across various industries, including finance, technology and manufacturing.

Software Engineering & MLOps

With experience in software engineering, I excel at building scalable data pipelines and ML systems. I'm well-versed in CI/CD practices, having implemented end-to-end MLOps workflows using tools like Docker, Kubernetes, and Jenkins. My proficiency in handling pull requests, code reviews, and maintaining high-quality codebases ensures smooth collaboration in fast-paced development environments. I've optimized cloud infrastructures on AWS and Azure, significantly reducing deployment times and operational costs.

Tech Stack & Collaboration

Leveraging my full-stack capabilities, I've developed and deployed production-grade applications, integrating front-end visualizations with backend ML models. I love working in collaborative environments, effectively bridging the gap between technical and non-technical teams to deliver high-impact solutions.

📈What I'm Passionate About

I'm excited about the potential of AI, machine learning, and deep learning to transform industries and drive business value. My interests include: Large Language Modeling, Recommendation Systems, GPU Optimization, Knowledge Graphs, Transfer Learning, Representation Learning, Multi-modal Machine Learning, Reinforcement Learning, MLOps, NLP.

🤝Get in Touch

LinkedIn: Hemanth Ramesh Phone: 8573905572 Email: hemanthramesh.data@gmail.com

PYTHON  Linux  Docker  Mysql  neo4j  Airflow  Azure  Gitlab  SKlearn  GCP  Streamlit  AWS  Test  Tensorflow 


About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published