I Built a Python script that uses a local Ollama LLM to automatically find and add movies to Radarr.

It picks random films from your library, asks Ollama for similar suggestions based on theme and atmosphere, validates against OMDb, scores with plot embeddings, then adds the top results to Radarr automatically.

Examples:

  • Whiplash → La La Land, Birdman, All That Jazz
  • The Thing → In the Mouth of Madness, It Follows, The Descent
  • In Bruges → Seven Psychopaths, Dead Man’s Shoes

Features:

  • 100% local, no external AI API
  • –auto mode for daily cron/Task Scheduler
  • –genre “Horror” for themed movie nights
  • Persistent blacklist, configurable quality profile
  • Works on Windows, Linux, Mac

GitHub: https://github.com/nikodindon/radarr-movie-recommender

    • illusionist@lemmy.zip
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      7 hours ago

      OP wrote a python script that call a llm to ask for a recommendation.

      But you are right, op doesn’t say that everyone shall do it

      • Eager Eagle@lemmy.world
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        6 hours ago

        No, it also doesn’t do that. It gets embeddings from an LLM and uses that to rank candidates.

        • illusionist@lemmy.zip
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          6 hours ago

          Are you a trollm?

          If not, I’m just too stupid to understand op.

          I Built a Python script that uses a local Ollama LLM to automatically find and add movies to Radarr.

          OP wrote a python script that call a llm to ask for a recommendation.

          If that’s not the same, I don’t know what is. Gotta go back to school, I guess.

          • Eager Eagle@lemmy.world
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            6 hours ago

            It’s not, I read the code. It’s not merely asking the LLM for recommendations, it’s using embeddings to compute scores based on similarities.

            It’s a lot closer to a more traditional natural language processing than to how my dad would use GPT to discuss philosophy.