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Amazon Comprehend

NLP Paid

Amazon Comprehend is a fully managed AWS NLP service that uses machine learning to find insights and relationships in text. It performs sentiment analysis, entity recognition, key phrase extraction, language detection, and topic modelling without requiring ML expertise. Comprehend Medical extends these capabilities to healthcare text, extracting medical conditions, medications, and dosages from clinical notes. Integrates natively with S3, Lambda, and other AWS services for scalable NLP pipelines.

💰 Pricing
Paid
📂 Category
NLP
🏷️ Tags
AWS, managed NLP, sentiment analysis, NER, healthcare NLP
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