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Google Cloud Natural Language API

NLP Freemium

Google Cloud Natural Language API provides powerful NLP capabilities including sentiment analysis, entity recognition, entity sentiment analysis, content classification, and syntax analysis via a simple REST API. It can classify content into 700+ predefined categories and extract structured information from unstructured text at scale. Integrates with BigQuery, Pub/Sub, and Cloud Storage for enterprise text analytics pipelines. Available with AutoML for custom model training on domain-specific text.

💰 Pricing
Freemium
📂 Category
NLP
🏷️ Tags
Google Cloud, NLP API, entity recognition, sentiment, content classification
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