Tech
Probably Secures $9M to Develop Reliable AI Solutions
AI Summary
Probably, an AI startup, has raised $9 million in seed funding to build a more reliable kind of AI. The company aims to prevent hallucinations and factual errors in AI models, achieving 99.99% accuracy. Probably's first product is a data science tool that produces quick answers with citations and audit trails.
The Quest for Reliable AI
The rapid growth of Large Language Models (LLMs) has brought significant advancements in AI capabilities. However, hallucinations and factual errors have proven challenging to eliminate. Probably, a startup founded by Peter Elias, aims to address this issue by developing a more rigorous approach to catching errors.The Funding and Vision
Probably has secured $9 million in seed funding from Andreessen Horowitz. The company's primary goal is to prevent hallucinations and simple factual errors from reaching users, achieving the high accuracy levels common in deterministic systems but difficult to attain with AI.The Data Science Tool
Probably's first product is a data science tool designed to produce quick answers from complex datasets. Each result comes with a citation and an audit trail for its development. This approach is becoming increasingly common among AI tools.The Innovative Approach
- The tool uses an elaborate harness system, described as a "data science mech suit," to keep errors from creeping into summaries.
- The LLM's first-pass answers are checked against a deterministic validator system, which rejects any results that don't match the dataset.
- The LLM has been trained against the validator, and the entire system is optimized for fast and accurate answers.