DeText: A Deep Neural Text Understanding Framework for Ranking and Classification Tasks
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Updated
Mar 2, 2023 - Python
DeText: A Deep Neural Text Understanding Framework for Ranking and Classification Tasks
Infinity is a high-throughput, low-latency REST API for serving vector embeddings, supporting a wide range of text-embedding models and frameworks.
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Large language models offer new opportunities for processing and generating text. I used text embeddings, clustering, and the ChatGPT API to examine the reasons for startup failure.
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