#Text Classification
AdalFlow
AdalFlow provides model-agnostic solutions for building and optimizing large language model (LLM) applications with an efficient and modular design. Its auto-differentiative framework enhances performance in zero-shot and few-shot optimizations, making it suitable for various AI and NLP tasks.
sentiment-analysis
Understand a range of methods used in Chinese sentiment analysis, including techniques based on sentiment dictionaries, traditional machine learning such as Bayes, and advanced deep learning with models like ALBERT. The project explores both unsupervised and supervised approaches for text data sentiment classification, emphasizing the integration of unknown tokens like emojis to improve sentiment semantic analysis. This overview presents distinctive attributes and practical implementations of each method.
ML-Notebooks
Discover a diverse set of machine learning notebooks covering applications from neural networks to computer vision. These resources on Codespaces offer clear setup guidance for straightforward learning in machine learning fields, including PyTorch and generative adversarial networks, ideal for expanding knowledge or efficiently prototyping.
small-text
Small-Text offers efficient active learning techniques for text classification, featuring pre-implemented query and initialization strategies, along with stopping criteria. Compatible with sklearn, Pytorch, and transformers classifiers, it supports GPU models and lightweight installation suitable for CPU environments. Access detailed documentation and community support for streamlined integration.
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