Pre-trained Transformers for Arabic Language Understanding and Generation (Arabic BERT, Arabic GPT2, Arabic ELECTRA)
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Updated
Oct 17, 2022 - Python
Pre-trained Transformers for Arabic Language Understanding and Generation (Arabic BERT, Arabic GPT2, Arabic ELECTRA)
Sentiment analysis neural network trained by fine-tuning BERT, ALBERT, or DistilBERT on the Stanford Sentiment Treebank.
Repository for Project Insight: NLP as a Service
Deploy BERT for Sentiment Analysis as REST API using FastAPI, Transformers by Hugging Face and PyTorch
Simple State-of-the-Art BERT-Based Sentence Classification with Keras / TensorFlow 2. Built with HuggingFace's Transformers.
The "tl;dr" on a few notable transformer papers (pre-2022).
Experiments with Hugging Face 🔬 🤗
Getting started with Hugging Face
Deploy PhoBERT for Abstractive Text Summarization as REST API using StreamLit, Transformers by Hugging Face and PyTorch
ACL-21 Exploring the Efficacy of Automatically Generated Counterfactuals for Sentiment Analysis
An ASR (Automatic Speech Recognition) adversarial attack repository.
Detecting Fake News using AI
This project is used to generate a blog post using Natural Language processing, Hugging Face Transformers and GPT-2 Model.
Generate summaries from texts using Streamlit & HuggingFace Pipeline
Text summarization with python and transformer
A Turkish question answering system made by fine-tuning BERTurk and XLM-Roberta models.
PyTorch Transformer-based Language Model Implementation of ConceptSHAP
Code and dataset for paper - Application of Deep Learning in Generating Structured Radiology Reports: A Transformer-Based Technique
A Turkish question answering system made by fine-tuning BERTurk and XLM-Roberta models.
Tutorial on using Hugging Face's Vision Transformers for Image Classification
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