The code and methods offered in Awesome-META+: https://wangjingyao07.github.io/Awesome-Meta-Learning-Platform/
-
Updated
Mar 4, 2024 - Python
The code and methods offered in Awesome-META+: https://wangjingyao07.github.io/Awesome-Meta-Learning-Platform/
Lightweight HyperParameter Optimizer
Autonomous, resumable state machine for continuous ML meta-optimization. Orchestrates background ideation, code materialization, and remote queue execution via specialized subagents.
Leaf worker skill for ml-metaoptimization: designs concrete experiment batch specifications from winning proposals
Hiperheurísticas: Aplicación a problemas de asignación de horario y metaoptimización
Leaf worker skill for ml-metaoptimization: ranks proposals and selects the winning experiment
Leaf worker skill for ml-metaoptimization: analyzes experiment results against baselines and extracts learnings
Leaf worker skill for ml-metaoptimization: generates non-overlapping experiment proposals during the ideation phase
Leaf worker skill for ml-metaoptimization: implements experiment designs as code changes and patch artifacts
Leaf worker skill for ml-metaoptimization: filters and curates the proposal pool during iteration rollover
Leaf worker skill for ml-metaoptimization: diagnoses failures during sanity checks and remote execution
Add a description, image, and links to the metaoptimization topic page so that developers can more easily learn about it.
To associate your repository with the metaoptimization topic, visit your repo's landing page and select "manage topics."