Mininglamp Technology Open-Sources Mano-P 1.0 Vision-Based Agent Model

April 15, 2026
Mininglamp Technology has open-sourced Mano-P 1.0, a visual AI agent capable of operating desktop and web applications purely through vision, achieving state-of-the-art results across 13 benchmarks and supporting local execution for data privacy.

Mininglamp Technology has officially open-sourced Mano-P 1.0, a GUI-aware agent model that performs complex cross-platform tasks using visual understanding alone, announced in a press release. The model can autonomously control desktop software, web interfaces, and graphical workflows without relying on APIs or HTML parsing.

Mano-P achieved state-of-the-art results across 13 multimodal benchmarks, including ranking first globally in the OSWorld benchmark with a 58.2% task success rate. The 72B version leads in several benchmark systems, while the 4B quantized model runs locally on Apple M4 Pro devices with a 4.3GB memory footprint and speeds of up to 476 tokens per second.

The model supports local deployment for enhanced privacy, running fully offline on Mac devices or via a dedicated USB 4.0 compute stick to ensure data sovereignty. Mano-P is released under the Apache 2.0 license, enabling commercial use and secondary development. Mininglamp is initially open-sourcing the Mano-CUA core skill, with local models and SDKs expected to follow within the month.

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