Microsoft Releases Fara1.5: A Family of Browser Computer-Use Agents (4B/9B/27B) That Outperform OpenAI Operator and Gemini 2.5 Computer Use on Online-Mind2Web
Quick Answer
Microsoft Research has launched Fara1.5, a series of browser computer-use agents available in 4B, 9B, and 27B sizes.
Quick Take
Microsoft Research has launched Fara1.5, a series of browser computer-use agents available in 4B, 9B, and 27B sizes. The 27B model achieves a 72% score on Online-Mind2Web, surpassing OpenAI Operator and Gemini 2.5 in performance. Additionally, the release features FaraGen1.5, a synthetic data pipeline for agent training.
Key Points
- Fara1.5 includes models of 4B, 9B, and 27B sizes.
- The 27B model scores 72% on the Online-Mind2Web benchmark.
- Fara1.5 outperforms OpenAI Operator and Gemini 2.5 in computer use.
- The release features FaraGen1.5 for synthetic data training.
- Microsoft aims to enhance browser computing efficiency with these agents.
Article Excerpt
From source RSS / original summaryMicrosoft Research released Fara1. 5, a family of browser computer-use agents in 4B, 9B, and 27B sizes. Fara1. 5-27B scores 72% on Online-Mind2Web, outperforming OpenAI Operator, Gemini 2. 5 Computer Use, and Yutori Navigator n1. The release also includes FaraGen1. 5, a synthetic data pipeline that trains agents on gated The post Microsoft Releases Fara1. 5: A Family of Browser Computer-Use Agents (4B/9B/27B) That Outperform OpenAI Operator and Gemini 2.
5 Computer Use on Online-Mind2Web appeared first on MarkTechPost.
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