

Automorphic
Overview :
Automorphic is a safe and self-improving language model platform. It utilizes fine-tuning techniques to inject knowledge into language models, bypassing the limitations of context windows. You can train adapters to achieve specific behaviors or knowledge and dynamically combine and switch them at runtime. Automorphic also provides human-in-the-loop feedback to rapidly iterate the model and deploy it into production. You can also use pre-trained models for inference on Automorphic Hub.
Target Users :
Inject knowledge via fine-tuning, quickly load and adapt adapters, and iterate the model through human-in-the-loop feedback.
Use Cases
Inject custom behaviors into language models
Iterate the model through human-in-the-loop feedback
Compatible with OpenAI API
Features
Inject knowledge via fine-tuning
Quickly load and stack adapters
Compatible with OpenAI API
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