lemonade
Lemonade helps users discover and run local AI apps by serving optimized LLMs right from their own GPUs and NPUs. Join our discord: https://discord.gg/5xXzkMu8Zk
- Run LLMs locally for document analysis without cloud uploads
- Deploy language models on customer devices for offline chat
- Reduce inference latency for real-time code completion
Runs inference on local hardware (GPU/NPU) without cloud dependencies, reducing latency, cost, and data residency risk for AI workloads.
Teams needing low-latency LLM inference on-premises or edge devices without external API calls.
https://github.com/lemonade-sdk/lemonade
By lemonade-sdk
How to Get It
claude plugins install lemonade-sdk/lemonade
Tip: Paste this into a Claude Code conversation. Verify command matches your Claude Code version.
Trust Signals Auto-scanned
Community Pulse Active
Discussed on Hacker News, Reddit
- Thoughts from a lemonade worker — Reddit · 2741 pts
- Beyoncé released 'Lemonade' 10 years ago today — Reddit · 1539 pts
- AI News You Missed - March 2026 — Reddit · 593 pts
50 mentions across 2 sources
Reviewer notes
Auto-scanned review. These are observations, not a security certification.
Scored from trust signals (evidence-eval-v1): 3,664 GitHub stars; 73 contributors; last commit 25d ago; license Apache-2.0.
2026-05-10: Lemonade is a local inference runner targeting GPU and NPU hardware — useful for teams with data residency constraints, air-gapped environments, or edge deployments where calling out to cloud APIs isn't an option. The 3.6k stars and 73 contributors suggest real traction, but production adoption is thin (one confirmed mention), so treat it as promising-but-unproven for anything critical. Worth benchmarking against Ollama or llama.cpp if you're already in that space, as those have wider production track records and larger model support matrices.
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Evaluation
Scored from trust signals (evidence-eval-v1): 3,664 GitHub stars; 73 contributors; last commit 25d ago; license Apache-2.0.