med-flamingo
Few-shot learner
A Python-based few-shot learning framework for medical applications utilizing a visual language model.
384 stars
15 watching
33 forks
Language: Python
last commit: over 1 year ago Related projects:
Repository | Description | Stars |
---|---|---|
songw-sw/f2l | An implementation of Federated Few-shot Learning using Python and the PyTorch framework. | 18 |
gitabcworld/fewshotlearning | An implementation of the Optimization as a Model for Few-Shot Learning paper in PyTorch | 256 |
dragen1860/learningtocompare-pytorch | An implementation of the Learning to Compare paper in PyTorch | 251 |
cambridge-mlg/fit | This repository provides code for a few-shot transfer learning approach to personalized and federated image classification | 11 |
microsoft/pica | An empirical study on using GPT-3 for multimodal question answering tasks with few-shot learning. | 84 |
huggingface/setfit | A framework for efficient few-shot learning with Sentence Transformers | 2,236 |
snap-stanford/graphwave | An algorithm for learning structural signatures in complex networks using heat spectral wavelets | 170 |
snap-stanford/snap | A general purpose network analysis and graph mining library for large networks | 2,193 |
ryanwangzf/medclip | A deep learning framework for contrastive learning from unpaired medical images and texts | 456 |
josephreisinger/vowpal_porpoise | Lightweight machine learning library with interface to scikit-learn and vowpal_wabbit | 166 |
chendelong1999/polite-flamingo | Develops training methods to improve the politeness and natural flow of multi-modal Large Language Models | 63 |
trekhleb/learn-python | An interactive Python learning platform with code examples and explanations. | 16,403 |
lensacom/sparkit-learn | A Python library that integrates PySpark and scikit-learn for distributed machine learning | 1,155 |
imodpasteur/lutorpy | A Python library that enables seamless interaction between deep learning frameworks and Lua/Torch libraries. | 233 |
perone/medicaltorch | A framework for building deep learning models on medical imaging data | 851 |