🚀 Lightning-fast computer vision models. Fine-tune SOTA models with just a few lines of code. Ready for cloud ☁️ and edge 📱 deployment.
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Updated
Dec 11, 2025 - Python
🚀 Lightning-fast computer vision models. Fine-tune SOTA models with just a few lines of code. Ready for cloud ☁️ and edge 📱 deployment.
CIFNet: A lightweight, single-pass Class Incremental Learning model designed for edge devices. Minimizes training time, energy consumption, and memory usage, making it ideal for real-time, resource-constrained environments.
🧠 Official implementation of FedHENet: A frugal, one-shot federated learning framework for heterogeneous environments. Privacy-preserving via HE, energy-efficient, and hyperparameter-free. Accepted at ESANN 2026.
This repository contains the code and data of the paper titled "FrugalPrompt: Reducing Contextual Overhead in Large Language Models via Token Attribution."
PyTorch implementation of the "Reducing inference energy consumption using dual complementary CNNs" paper published in FGCS journal.
Maximizing LLM tokens/sec on Jetson under limited memory
An open and practical guide to Edge Audio.
A curated collection of Edge AI courses for everyone
This repository contains the PyTorch implementation of the paper "Selecting Images With Entropy For Frugal Knowledge Distillation'" published in IEEE Access.
An open and practical guide to Edge Language
A production-ready, frugal, sovereign AI system that orchestrates India's open-source language models to achieve state-of-the-art reasoning on consumer hardware through Test-Time Compute (TTC) and Cognitive Serialization.
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