cross-posted from: https://programming.dev/post/51407459
Check what can you use and at what rate of token per seconds would it be… It has examples of many models and quantization levels. Huge resource!
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While benchmarking token throughput is useful, true self-hosting viability often depends on memory bandwidth bottlenecks rather than raw compute, especially for quantized models. Have you evaluated how different quantization levels impact inference latency on consumer-grade GPUs compared to the reported token-per-second figures?
What has this to do with degoogling?
Gemini is one of the most used LLMs. This shows alternatives.




