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749 points noddybear | 4 comments | | HN request time: 0s | source

I'm Jack, and I'm excited to share a project that has channeled my Factorio addiction recently: the Factorio Learning Environment (FLE).

FLE is an open-source framework for developing and evaluating LLM agents in Factorio. It provides a controlled environment where AI models can attempt complex automation, resource management, and optimisation tasks in a grounded world with meaningful constraints.

A critical advantage of Factorio as a benchmark is its unbounded nature. Unlike many evals that are quickly saturated by newer models, Factorio's geometric complexity scaling means it won't be "solved" in the next 6 months (or possibly even years). This allows us to meaningfully compare models by the order-of-magnitude of resources they can produce - creating a benchmark with longevity.

The project began 18 months ago after years of playing Factorio, recognising its potential as an AI research testbed. A few months ago, our team (myself, Akbir, and Mart) came together to create a benchmark that tests agent capabilities in spatial reasoning and long-term planning.

Two technical innovations drove this project forward: First, we discovered that piping Lua into the Factorio console over TCP enables running (almost) arbitrary code without directly modding the game. Second, we developed a first-class Python API that wraps these Lua programs to provide a clean, type-hinted interface for AI agents to interact with Factorio through familiar programming paradigms.

Agents interact with FLE through a REPL pattern: 1. They observe the world (seeing the output of their last action) 2. Generate Python code to perform their next action 3. Receive detailed feedback (including exceptions and stdout)

We provide two main evaluation settings: - Lab-play: 24 structured tasks with fixed resources - Open-play: An unbounded task of building the largest possible factory on a procedurally generated map

We found that while LLMs show promising short-horizon skills, they struggle with spatial reasoning in constrained environments. They can discover basic automation strategies (like electric-powered drilling) but fail to achieve more complex automation (like electronic circuit manufacturing). Claude Sonnet 3.5 is currently the best model (by a significant margin).

The code is available at https://github.com/JackHopkins/factorio-learning-environment.

You'll need: - Factorio (version 1.1.110) - Docker - Python 3.10+

The README contains detailed installation instructions and examples of how to run evaluations with different LLM agents.

We would love to hear your thoughts and see what others can do with this framework!

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mNovak ◴[] No.43335980[source]
Is there a human-play benchmark (even informally) for this style of interface? Not saying it's necessary or even relevant, I'm just curious to know what programmatic Factorio feels like -- I imagine spatial reasoning around text prompts would be fairly challenging for human players to navigate as well.
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1. sonofhans ◴[] No.43336201[source]
Human benchmarks for Factorio are speed runners — rushing to launch the first rocket. The current record is just over 4 hours for one player, and 90 minutes for a team. You can see just from that that a multi-tasking LLM has room to outperform humans.
replies(2): >>43337924 #>>43338047 #
2. goriv ◴[] No.43337924[source]
I think he is talking about a human using the programatic API the LLMs are using to play the game. I think that would be a whole lot slower than normal playthrough
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3. janzer ◴[] No.43338047[source]
The current 4h12m hour record is for 100% (where you have to get every single achievement in the game, in the one run), any% (where you just need to launch a rocket) is under 2 hours (1h42 for the latest factorio v2.x, 1h18 for v1.x). There are a few other differences between the categories regarding map selection and blueprint use as well.

Records and specific rules for all categories can be found at https://www.speedrun.com/factorio

4. noddybear ◴[] No.43342280[source]
We were able to pass all the early lab tasks manually - although it took a lot longer than using the UI!