Hey PH đź‘‹ Our platform, Frontier, helps AI labs and startups like Anthropic, xAI, and Cohere create powerful reasoning data using process supervision. It boosts model performance on complex tasks by teaching them to think more critically, step by step.
Hi PH 👋 We’re FoundryAI and we’re launching our first product Frontier.
Frontier is a platform that helps AI labs and companies like Anthropic, xAI, and Cohere create powerful reasoning data using process supervision to improve their models. We focus on advanced reasoning workflows, enabling your models to perform better on complex tasks by learning how to think more critically, step by step.
Imagine you're building a LEGO castle. With traditional AI training, someone only checks the final result—they look at your finished castle to see if it’s right. But if something’s wrong, you don’t know where you went off course.
Process supervision is like having someone guide you through each step, making sure every piece fits perfectly along the way. By the end, your castle is stronger, and you’ve learned how to build it better in the future.
1. Why is this valuable to a startup?
If you’re a startup looking to sharpen your AI’s capabilities—whether it’s a financial analyst or a customer support bot—process supervision can give your models a significant performance boost. For instance, one startup working on an AI financial analyst saw a 30% improvement in accurately reconciling financial reports, helping them reduce errors and deliver better insights to their customers. With process supervision, your AI doesn’t just get the right answer; it learns how to arrive there more effectively, which is crucial as you scale.
2. Why is this valuable to an AI Lab?
If you’re working at an AI Lab like Anthropic, xAI, Cohere, or Gemini, you’re trying to build models that can compete with top performers like GPT O-1. The reason GPT O-1 performs so well? It’s because of its advanced use of reasoning data. Process supervision provides this kind of data, helping your models bridge the gap. Labs using process supervision have seen up to a 40% improvement in handling complex reasoning tasks, a crucial step in matching or surpassing O-1’s reasoning capabilities.
To take this even further, we’ve developed an advanced thought editing workflow in a tree format. This allows you to create both Behavioral Cloning (SFT) and Process Supervision data and enables your model to explore multiple valid reasoning paths to arrive at a final answer. By refining how your model thinks and processes decisions, this approach delivers more flexibility and consistency across a range of complex tasks.
3. How is this different from current solutions?
Most solutions focus on output supervision—basically just checking whether the final result is correct. Process supervision, on the other hand, ensures that the model is learning how to think more critically at each stage of the decision-making process. For instance, a startup using process supervision for fraud detection reduced false positives by 25%, which traditional methods weren’t catching. This difference can be game-changing, especially in industries where accuracy and nuance are critical.
Most data vendors treat SFT and Process supervision data creation as different workflows, combining the two ensures that even if the data is too off policy (due to human edits), you can SFT off it first to make it on policy.
4. What is the process of adding this data to my model?
It’s straightforward. We provide a structured dataset tailored to your needs, whether you’re working with a financial model, customer service AI, or any other type of system. You simply integrate the reasoning data as part of your model’s training set. Our team can assist in the integration, and once it’s set up, the model will begin to improve its decision-making from the inside out, enhancing how it processes and arrives at conclusions.
5. I’m already using GPT O-1. What should I do?
If you’re using GPT O-1, process supervision is a perfect complement. Even though O-1 is a top-tier model, adding our reasoning data can help fill in the gaps where it struggles with more complex or nuanced tasks. For example, a customer support AI using GPT O-1 saw a 35% improvement in accuracy after incorporating process supervision, leading to fewer escalations to human agents and more satisfied users.
6. Can I use this if I’m fine-tuning LLaMA?
Absolutely. Process supervision is model-agnostic, meaning it works just as well with LLaMA as it does with GPT. In fact, fine-tuning with this type of data allows LLaMA to handle more challenging reasoning tasks. One client working on AI-driven financial projections saw their model’s accuracy jump significantly after fine-tuning with our data, making their AI more reliable in making key business decisions.
@manil_lakabi Frontier is an impressive platform that enhances AI reasoning through process supervision, offering significant advantages for startups and AI labs!
Congrats on the launch, FoundryAI! 🚀 Frontier sounds like a game-changer for AI labs and companies pushing the boundaries of advanced reasoning on the path to AGI. Excited to see how this helps unlock even more powerful models! 🔥 #AI #ProcessSupervision #NextLevelAI #FoundryAI
@manil_lakabi you should adjust your copy as it reads like those companies are your clients, instead of you can help small startups perform more like them.
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