wink-eng-lite-model
BERTweet
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wink-eng-lite-model | BERTweet | |
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5 | 1 | |
10 | 557 | |
- | 3.2% | |
0.0 | 2.6 | |
almost 3 years ago | 5 months ago | |
Python | ||
MIT License | MIT License |
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wink-eng-lite-model
- SuperCharge Input Field for a Dictionary Website
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How to run NLP on a PDF file?
winkNLP’s English language lite model uses a pre-trained state machine to recognize named entities.
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How to tokenize a string?
To tokenize a string using winkNLP, read the text using readDoc. Then use the tokens method to extract a collection of tokens from the string. Follow this with the out method to get this collection as a JavaScript array. This is how you can tokenize a string:
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How to do sentiment analysis?
winkNLP's English language lite model uses ML-SentiCon as a base with further training. For emojis it uses the Emoji Sentiment Ranking. Together, they deliver an f-score of about 84.5%.
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How to find date and time in text?
Raw texts may contain many named entities like time, money, and hashtags. The English language lite model for winkNLP finds entities spanning multiple tokens by employing pre-trained finite state machine.
BERTweet
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A pre-trained BERT-like model with recent events?
Not sure if that's what you are looking for, but BERTweet has model trained on tweets containing COVID keywords https://github.com/VinAIResearch/BERTweet
What are some alternatives?
afinn - AFINN sentiment analysis in Python
simpletransformers - Transformers for Information Retrieval, Text Classification, NER, QA, Language Modelling, Language Generation, T5, Multi-Modal, and Conversational AI
wink-nlp - Developer friendly Natural Language Processing ✨
DeBERTa - The implementation of DeBERTa
nlphose - Enables creation of complex NLP pipelines in seconds, for processing static files or streaming text, using a set of simple command line tools. Perform multiple operation on text like NER, Sentiment Analysis, Chunking, Language Identification, Q&A, 0-shot Classification and more by executing a single command in the terminal. Can be used as a low code or no code Natural Language Processing solution. Also works with Kubernetes and PySpark !
CoWin-Vaccine-Notifier - Automated Python Script to retrieve vaccine slots availability and get notified when a slot is available.
malaya - Natural Language Toolkit for Malaysian language, https://malaya.readthedocs.io/
nlu - 1 line for thousands of State of The Art NLP models in hundreds of languages The fastest and most accurate way to solve text problems.
trankit - Trankit is a Light-Weight Transformer-based Python Toolkit for Multilingual Natural Language Processing
kiri - Backprop makes it simple to use, finetune, and deploy state-of-the-art ML models.
nlp_compromise - modest natural-language processing
covid-19-germany-gae - COVID-19 statistics for Germany. For states and counties. With time series data. Daily updates. Official RKI numbers.