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  "path": "/t/which-gpu-cloud-provider-are-you-actually-using-for-inference/176453#post_1",
  "publishedAt": "2026-06-01T19:29:40.000Z",
  "site": "https://discuss.huggingface.co",
  "textContent": "Hey everyone,\n\nI’ve been looking at providers like RunPod, Vast.ai, Lambda Labs, and a few others, and every time I need GPU capacity I end up spending way too much time comparing them. Prices change, availability changes, and it’s hard to know which providers are actually reliable in practice.\n\nI’m working on a tool that recommends a provider based on your specific use case (model, workload, region, priorities, etc.) instead of just showing a list of prices.\n\nBefore I invest more time into it, I’d love to hear how people are handling this today: Which provider are you currently using, and what made you choose it? Do you regularly switch providers, or mostly stick with one? What’s the most frustrating part of choosing a GPU cloud provider?\n\nAny real-world experiences would be super helpful. Thanks!",
  "title": "Which GPU cloud provider are you actually using for inference?"
}