LGAIMar 18

Procedural Generation of Algorithm Discovery Tasks in Machine Learning

arXiv:2603.1786393.3h-index: 67Has Code
AI Analysis

This work addresses the need for better evaluation tools for researchers developing automated machine learning algorithms, though it is incremental as it builds on procedural generation concepts from reinforcement learning.

The paper tackles the problem of limited and flawed task suites for evaluating algorithm discovery systems in machine learning by introducing DiscoGen, a procedural generator that creates millions of varied tasks across fields like reinforcement learning and image classification, and demonstrates its use in optimizing algorithm discovery agents.

Automating the development of machine learning algorithms has the potential to unlock new breakthroughs. However, our ability to improve and evaluate algorithm discovery systems has thus far been limited by existing task suites. They suffer from many issues, such as: poor evaluation methodologies; data contamination; and containing saturated or very similar problems. Here, we introduce DiscoGen, a procedural generator of algorithm discovery tasks for machine learning, such as developing optimisers for reinforcement learning or loss functions for image classification. Motivated by the success of procedural generation in reinforcement learning, DiscoGen spans millions of tasks of varying difficulty and complexity from a range of machine learning fields. These tasks are specified by a small number of configuration parameters and can be used to optimise algorithm discovery agents (ADAs). We present DiscoBench, a benchmark consisting of a fixed, small subset of DiscoGen tasks for principled evaluation of ADAs. Finally, we propose a number of ambitious, impactful research directions enabled by DiscoGen, in addition to experiments demonstrating its use for prompt optimisation of an ADA. DiscoGen is released open-source at https://github.com/AlexGoldie/discogen.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes