Domain-specific GPT-3 engines
This section explores GPT-3 engines that can perform domain-specific tasks. We will run three models in the three subsections of this section:
- Embedding2ML to use GPT-3 to provide embeddings for ML algorithms
- Instruct series to ask GPT-3 to provide instructions for any task
- Content filter to filter bias or any form of unacceptable input and output
Open Domain_Specific_GPT_3_Functionality.ipynb
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We will begin with embedding2ML (embeddings as an input to ML).
Embedding2ML
OpenAI has trained several embedding models with different dimensions with different capabilities:
- Ada (1,024 dimensions)
- Babbage (2,048 dimensions)
- Curie (4,096 dimensions)
- Davinci (12,288 dimensions)
For more explanations on each engine, you will find more information on OpenAI’s website:
https://beta.openai.com/docs/guides/embeddings.
The Davinci model offers embedding with 12,288 dimensions...