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spaCy

NLP Free

spaCy is a fast, production-ready open-source NLP library for Python and Cython. It provides pre-trained pipelines for tokenisation, part-of-speech tagging, named entity recognition, dependency parsing, and text classification in 70+ languages. spaCy is designed for real-world use with a focus on performance and ease of integration into production systems. Used extensively in information extraction, document processing, and building custom NLP pipelines at scale.

💰 Pricing
Free
📂 Category
NLP
🏷️ Tags
NER, tokenisation, open-source, Python, text processing
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