Key facts
- Probably secured $9 million in seed funding from Andreessen Horowitz.
- The company aims to prevent factual errors and hallucinations in AI models.
- Their first product is a data science tool that provides citations and audit trails.
- The system uses a deterministic validator to check LLM outputs against datasets.
- This method allows for the use of smaller, less computationally intensive AI models.
Probably, a startup aiming to create more reliable AI, has raised $9 million in seed funding from Andreessen Horowitz. The company is addressing the persistent issue of hallucinations and factual errors in large language models (LLMs).
Founder Peter Elias stated that Probably's goal is to achieve near-perfect accuracy, comparable to deterministic systems, by developing a rigorous error-catching mechanism. Their initial product is a data science tool that generates answers with citations and audit trails, a growing trend in AI applications.
