CodeGen is a family of open-source model for program synthesis. Trained on TPU-v4. Competitive with OpenAI Codex.
-
Updated
Mar 17, 2024 - Python
CodeGen is a family of open-source model for program synthesis. Trained on TPU-v4. Competitive with OpenAI Codex.
A JAX-based research framework for differentiable and parallelizable acoustic simulations, on CPU, GPUs and TPUs
Small-scale Tensor Processing Unit built on an FPGA
Object and face recognition using Google's edge TPU
Community gathering point for Google Coral dev board and dongle knowledge.
Website for Eclipse ioFog, a distributed Edge Compute Network (ECN) platform
Implements sharpness-aware minimization (https://arxiv.org/abs/2010.01412) in TensorFlow 2.
FREE TPU V3plus for FPGA is the free version of a commercial AI processor (EEP-TPU) for Deep Learning EDGE Inference
Semi/Self-Supervised Learning on a Pediatric Pneumonia Dataset
Data Augmentation by Backtranslation (DAB) ヽ( •_-)ᕗ
🥉 (Bronze medal - 241st place - Top 8%) Repository for the "SIIM-ISIC Melanoma Classification" Kaggle competition.
Created an algorithm to identify metastatic cancer in small image patches taken from larger digital pathology scans. The data used for this competition is a slightly modified version of the PatchCamelyon (PCam) benchmark dataset.
Track how multiple objects of type(s) you specify are moving through the field of vision.
Real time object detection with Raspberry Pi, Google Edge TPU and Python
TensorFlow Lite Erlang bindings with optional EdgeTPU support.
Dual Edge TPU Adapter to use it on a system with single PCIe port on m.2 A/B/E/M slot
TPU에서 한국어용 LLM 추론을 위한 Jax/Flax 구현체입니다.
Find gravitational wave signals from binary black hole collisions.
Switching from GPU to the future of Machine learning the TPU. Over 1 million images trained Resnet50 in under 20 mins compared to days or weeks on GPU and all for 0$ free on Google Colab Notebooks in Google Drive, clone repo and jump right in!!
Implementation of famous Optic disc and cup segmentation research papers in python.
Add a description, image, and links to the tpu-acceleration topic page so that developers can more easily learn about it.
To associate your repository with the tpu-acceleration topic, visit your repo's landing page and select "manage topics."