- With more than 8 years of professional experience I have expertise in deploying AI Models for Large Scale VMS Products providing real-time analytics and deployed over Server, Cloud and Edge
- Thanks to my previous working on SQL Optimzer with proprietary contribution in Tree Parsing, Backpropagation and Tree Optimization Algorithm I precieve Neural Network functioning as different Tree Algorithms
- π€ I had lot of fun and learning while working intensively on Neural Network model parsing, converting to various frameworks, creating optimized files, implementing optimized network definition
- π¦ Last few years gave me an opportunity to contribute in every stage of AI-pipeline from data-collection to AI model deployment and creating products and libraries around AI models
- π§ Few hrs of week I spend in experimenting with new NN Architecture, playing with Optimiser Algorithm, trying different training strategies.
- 𧩠Currently I am actively working on extracting unique features from SSD without having additonal training
- π· I am open to contributing in AI it may be designing neural networks, formulating training strategies or writing new products for AI or with AI
- π« You can reach me on: ckhire91@gmail.com
devchait.github.io |
Expertise: β’ Effective Problem Solving β’ Leading developers to extract there best β’ Architecting the VMS Product suite with real-time Analytics β’ Researching and selecting efficient tools for creating faster cost-effective AI/ML solutions β’ Designing Frameworks from scratch to leading them to full-fledge working suite β’ Selecting and formulating easy to contribute framework giving rise to automatic creation of new Products and automating existing workflows without explicit requirement for automation β’ Graph parsing algorithm, Tree Optimization Algorithm, Backtracking learning Algorithm β’ Working with PyTorch deep learning framework for design and implementation of CNN's for image recognition, classification, retrieval problems β’ Deploying NN models to highly optimized IE's including NVIDIA TensorRT, Intel Openvino, TFlite and Android NDK's β’ Optimizing end-to-end inference pipeline, Desigining new inferencing strategies for having larger throughput |
βοΈποΈ Simple CI/CD Setup with Gitea
βοΈποΈ Streamlined On-Premise Code Collaboration: Introducing Gitea - Your Effortless Open-Source GitHub Alternative
βοΈπ₯ AI developement evolution & AI/NN End-to-end Pipeline.
βοΈπ₯ Resposnible for design & implementation of ML workflow pipeline using DVC+Git.
βοΈπ₯ Multi-Faceted Inference Benchmark Framework
βοΈπ₯ Channel Improvement the impact of cuda base pre-processing
βοΈπ₯ Issue with Kalman and Deep Sort Tracking
βοΈπ₯ Simple Memory Efficient Adaptive Frame rate Tracker
βοΈπ₯ Custom Yolo Kernel for Faster Object Tracking
βοΈπ₯ Illusion of same operations on different neural network framework causing chaos
βοΈπ₯ Good Design Patterns and coding Practices leading to automatic formation of large AI ecosystem suite
βοΈπ₯ Simple Yolov5 Pre-processing CPU vs GPU