Resources of our survey paper "Optimizing Edge AI: A Comprehensive Survey on Data, Model, and System Strategies"
-
Updated
Jun 10, 2026
Resources of our survey paper "Optimizing Edge AI: A Comprehensive Survey on Data, Model, and System Strategies"
MINERVA - Minimal Inference Engine for Robust, Verifiable, and Authenticated ML. Encrypted, integrity-verified neural network inference for MCUs down to ATmega328P.
[ICLR2022] Efficient Split-Mix federated learning for in-situ model customization during both training and testing time
Benchmarking machine learning inferencing on embedded hardware.
Source code of “Agile Reinforcement Learning for Real-Time Task Scheduling in Edge Computing” (CAIAC 2025)
Epsilon is a library with functions for machine learning and statistics written in plain C. It is intended to run on microcontrollers.
An editable, auditable 807K-param byte-level LLM: CRUD single facts with provable per-edit locality, and abstain when unsure instead of guessing. CPU, offline.
This project focuses on the implementation of optimized Linear and DNN regression models for inter-vehicle distance prediction in a Cooperative Adaptive Cruise Control (CACC) application. It leverages Tensorflow Lite to create optimized models through quantization and pruning for realtime inferencing on Raspberry Pi and On-board Unit (OBU) of Co…
Implementación de un clasificador de vocales basado en SVMs y features MFCC.
Real-time wildfire detection on microcontrollers with TinyML + Edge Impulse + Wokwi
A new communication paradigm proposal for restricted bandwidth and fragile channel conditions in NTN.
Ultra-low-latency Ternary Neural Network inference engine for HFT alpha generation, optimized for an ultra-budget 1,120-LUT Renesas FPGA. Features a fully unrolled combinatorial popcount tree achieving 2-cycle deterministic execution without hardware multipliers, paired with an ESP32-S3 hardware-software co-design.
A Smart Mask Enforcement System using Multitenant Cascading Architecture in TinyML
Tiny CNN cat/dog classifier for RISC-V edge AI, with PyTorch training, quantized firmware export, and Renode simulation benchmarks.
Ingenuity is an optimized inference engine and benchmarking tool for TinyML models on embedded IoT devices.
IoT-based smart medication adherence system using TinyML, BLE, wearable sensing, and React dashboard monitoring.
Edge-optimized wildlife detection for crop protection
Tiny implementation of kernel passive-aggressive regression on a budget in C.
Practical work developed for the subject internet of things/embedded systems. My Replenisher is a complete end-to-end application, ranging from TinyMl with arduino nano 33 ble, communication with ESP32 to a mobile application that embodies the entire final scope.
Embedded Software: Running machine learning models on Raspberry Pi
Add a description, image, and links to the tiny-ml topic page so that developers can more easily learn about it.
To associate your repository with the tiny-ml topic, visit your repo's landing page and select "manage topics."