Enterprise DNA
P Apps and SaaS Productivity low

RunThisLLM

by Various

Find out exactly what hardware you need to run any local LLM, image, video, or audio AI model. 275+ models with full build specs and performance estimates.

R

Apps

RunThisLLM

Added 1 June 2026

Overview

RunThisLLM provides hardware requirements and performance estimates for running local AI models. It covers over 275 models including LLMs, image, video, and audio models, with full build specs.

Best for

Best for
Developers and builders selecting hardware for local AI inference

Use cases

  • Determine the GPU and RAM needed for a specific local LLM
  • Compare hardware requirements across different AI models
  • Plan a cost-effective build for running generative AI locally

Notes

RunThisLLM provides hardware requirements and performance estimates for running local AI models. It covers over 275 models including LLMs, image, video, and audio models, with full build specs.

Use cases

  • Determine the GPU and RAM needed for a specific local LLM
  • Compare hardware requirements across different AI models
  • Plan a cost-effective build for running generative AI locally

Pros

  • Comprehensive database of 275+ models with detailed specs
  • Provides concrete performance estimates for hardware planning
  • Saves time researching individual model requirements

Cons

  • Limited to models in the database; new or niche models may be missing
  • Performance estimates are theoretical and may not reflect real-world usage
  • No interactive testing or benchmarking against your own hardware

Indexed from awesome-generative-ai and enriched against its public facts.

Pros

  • Comprehensive database of 275+ models with detailed specs
  • Provides concrete performance estimates for hardware planning
  • Saves time researching individual model requirements

Cons

  • Limited to models in the database; new or niche models may be missing
  • Performance estimates are theoretical and may not reflect real-world usage
  • No interactive testing or benchmarking against your own hardware