Produchive: offline desktop activity monitor with local LLM analysis
Produchive is an open-source, offline desktop app for activity monitoring and productivity tracking. It stores all data locally in a JSON file and uses WebGPU to run open-source LLM models on-device for analysis, ensuring privacy. The app helps users who procrastinate on their PC to monitor their activity without their data being sold.
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