Meet Automorphic: An AI Startup that Enables Developers to Build and Improve Custom Fine-Tuned Artificial Intelligence Models Rapidly


Many challenges are faced while challenges fine-tuning and refining language model systems. Engineers at Google and Meta spend twelve to eighteen months transitioning a model from the research phase to the production phase. And that’s not just because they execute a single tuning task and then move on. They refine it iteratively, starting with supervised fine-tuning and moving on to align with human tastes, distilling and cutting extraneous weights, and finally, they continue there; they keep going until it reaches a particular quality threshold. They refine it with RLHF, re-tuning it periodically to fix data drift and other methods.

Even with the best engineers in the world, most businesses do not have the time or resources to devote a whole year to developing a one-of-a-kind LLM and putting it into production.

Meet Automorphic, a cool start-up that lets programmers easily create and enhance personalized, fine-tuned models. In just a few minutes, you can go from raw data to a secure, production-ready LLM that improves itself using our LLM improvement platform.

What Solution is provided by Automorphic?

Developers can easily enhance their bespoke LLMs with Automorphic. They must input their raw text data, launch a first fine-tuning run, and keep tweaking as required.

Just change one line to point to Automorphic’s endpoint instead of OpenAI’s API. To enhance their model, users can experiment with inference and RLHF. In addition, users can train adapters with more data, which they can then combine and commute with as they see fit.

Lastly, the hub allows users to test existing models and publish customized ones.

Key Product

Conduit is one of Automorphic’s primary products. Use fine-tuning to incorporate knowledge into language models, overcoming context-window limits. Create behavior or knowledge adapters, then mix and match them as needed. Get your models into production faster with Conduit’s iterative process and human-in-the-loop input. You can use it without touching your current code because it is compatible with the OpenAI API. Conduit enhances your datasets to make your models better over time.

With Conduit, you can quickly load and stack adapters that have been fine-tuned, allowing you to concentrate on feedback and tweaking rather than performance and deployment concerns.

In Conclusion

Using Automorphic, developers can quickly transform raw data into a bespoke language model that can be used in production and improves over time. Developers may save time and money when making domain-specific LLMs with Automorphic’s product Conduit.


Dhanshree Shenwai is a Computer Science Engineer and has a good experience in FinTech companies covering Financial, Cards & Payments and Banking domain with keen interest in applications of AI. She is enthusiastic about exploring new technologies and advancements in today’s evolving world making everyone’s life easy.

🐝 Join the Fastest Growing AI Research Newsletter Read by Researchers from Google + NVIDIA + Meta + Stanford + MIT + Microsoft and many others…

Recent Articles

Related Stories

Leave A Reply

Please enter your comment!
Please enter your name here