Why Local LLMs Matter
by | June 3, 2026
Do you use tools like Copilot, ChatGPT, or Claude.ai knowing your prompts may be training someone else's model? In this post, Philipp Bauer makes the case for running large language models on your own hardware: your data stays private, your workflow survives cloud outages and API deprecations, and your inference costs drop to zero. From a practical hardware guide covering Apple Silicon, Nvidia, and AMD GPUs, to a model landscape comparison of today's top open-weight contenders, Bauer gives developers everything they need to decide whether local LLMs belong in their stack.

























