H Company releases Holo3.1: fast local computer use agent model
H Company published a Hugging Face blog post announcing Holo3.1, a model designed for computer use agents that runs locally. The release targets fast, on-device computer control tasks, positioning it in the growing space of open/local agentic models. The body content is minimal, but the announcement signals a new entrant in the local computer-use agent category.
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Holotron-12B - High Throughput Computer Use Agent
Hcompany has released Holotron-12B, a 12-billion parameter model designed for computer use agent tasks with a focus on high throughput. The model is announced via the Hugging Face blog, suggesting it is available or soon available on the platform. Details on architecture, benchmarks, and capabilities are not present in the provided body text.
H Company's Holo2 235B-A22B Model Leads in UI Localization
H Company has released Holo2, a 235B parameter mixture-of-experts model with 22B active parameters, announced via the Hugging Face blog. The model is positioned as a leader in UI localization tasks, suggesting a focus on agent-oriented or multimodal UI understanding capabilities. The post appears to be a product/model introduction from H Company, a relatively newer AI lab.
Holo1: New family of GUI automation VLMs powering GUI agent Surfer-H
H Company has released Holo1, a new family of vision-language models specifically designed for GUI automation tasks. These models power Surfer-H, a GUI agent capable of interacting with graphical interfaces. The release represents a specialized VLM family targeting the agent-tool ecosystem for desktop/web automation. Details on architecture, training data, and benchmarks are expected in the accompanying blog post.
Hugging Face redesigns hf CLI to be agent-optimized for Hub interactions
Hugging Face published a blog post describing design decisions behind making the hf CLI agent-friendly for interacting with the Hub. The post covers how the CLI is being structured to work well in agentic workflows where LLMs or automated systems issue commands programmatically. This is relevant to the growing ecosystem of AI agents that need to retrieve, upload, or manage models and datasets.
Building the Hugging Face MCP Server
Hugging Face has published a blog post describing the construction of an MCP (Model Context Protocol) server that exposes Hugging Face platform capabilities to AI agents and LLM toolchains. The post covers the architecture and implementation of the server, enabling agents to search models, datasets, and spaces programmatically. This represents Hugging Face's integration into the emerging MCP ecosystem for agent-tool interoperability.
Anthropic introduces computer use capability, upgraded Claude 3.5 Sonnet, and Claude 3.5 Haiku
Anthropic announced three major developments: an upgraded Claude 3.5 Sonnet with significant coding improvements (SWE-bench Verified rising from 33.4% to 49.0%, surpassing all publicly available models including reasoning models), a new Claude 3.5 Haiku that matches Claude 3 Opus performance at Haiku-tier speed, and a public beta of 'computer use' — a capability allowing Claude to control computers by viewing screens, moving cursors, clicking, and typing. Computer use is available via the Anthropic API, Amazon Bedrock, and Google Cloud Vertex AI, with early adopters including Replit, The Browser Company, and Cognition. Both safety institutes (US AISI and UK AISI) conducted pre-deployment testing, and the model was assessed as remaining within ASL-2 under Anthropic's Responsible Scaling Policy.
Hugging Face benchmarks open models on agentic tool-use tasks
Hugging Face published a blog post examining whether open models are sufficiently capable for agentic use cases, focusing on benchmarking them against real-world tooling. The post addresses the practical question of which open-weights models can reliably handle tool-calling and multi-step agentic workflows. This is relevant to practitioners evaluating open models for agent deployments.
Hugging Face launches Agentic Resource Discovery for agent-based search
Hugging Face announced Agentic Resource Discovery, a new capability allowing AI agents to search for and discover resources on the Hugging Face Hub. The launch appears to enable agents to programmatically find models, datasets, and other artifacts as part of agentic workflows. This extends the Hub's utility as infrastructure for agent-based pipelines.

