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🎥 New and Improved Embedding Model


Nachrichtenbereich: 🎥 Künstliche Intelligenz Videos
🔗 Quelle: openai.com

We are excited to announce a new embedding model which is significantly more capable, cost effective, and simpler to use. The new model, text-embedding-ada-002, replaces five separate models for text... [Weiterlesen]

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