Pre-trained Deep Learning models and demos (high quality and extremely fast)
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Updated
Jun 23, 2025 - Python
Pre-trained Deep Learning models and demos (high quality and extremely fast)
Libraries for applying sparsification recipes to neural networks with a few lines of code, enabling faster and smaller models
PyTorch to Keras model convertor
Neural network model repository for highly sparse and sparse-quantized models with matching sparsification recipes
ARCH: Audio Representations benCHmark
[ICLR 2022] Graph-Relational Domain Adaptation
This is a Flask + Docker deployment of the PyTorch-based Named Entity Recognition (NER) Model (BiLSTM-CRF) in the Medical AI.
Keyphrase Extraction Review
MINERS ⛏️: The semantic retrieval benchmark for evaluating multilingual language models. (EMNLP 2024 Findings)
Utility tool for Intel(r) OpenVINO(tm) IR models. The tool can display detailed model information, layer information and can check compatibility. The tool also can extract weight data and feature map from the IR model.
A general framework for cascade correlation architectures in Python with wrappers to keras, tensorflow and sklearn
Time-series analysis of the electricity load consumption in the Mumbai Metropolitan Region.
Sign Language Recognition system with HWGAT model
The repository include the evaluation code for the SumTO summarization system proposed for the FNS 2020 Shared Task
A digit recognition application for Bengali Handwritten Digits.
Deep Learning papers reading roadmap for anyone who is eager to learn this amazing tech!
Shows how to bulk generate model cards for models on 🤗 Hub.
Deep Learning - NLP - Depression Analysis
Keras code and weights files for popular deep learning models.
Develop a framework that automatically selects the best machine learning model and hyperparameters for a given dataset. Implement techniques like Bayesian optimization for hyperparameter tuning.
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