HerrHruby

meta_ttt_arc_v1

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README

Experiment

  • name: arc_so_iclqa_v2_r32_K6_long_0606c
  • meta step: 900
  • val/post/f1 (train-time monitoring): 0.2631578947368421
  • LoRA rank: 32, alpha: 64, target_modules: all-linear
  • Inner: K=6 Adam steps, ilr=2e-4, kl_lambda=0.1
  • Outer: 1500 meta steps, cosine 1e-4, warmup 50, bs=64 outer-QAs
  • Trained on HerrHruby/arc_agi_mini_docs (v2 mini-docs)

Test-time use

The intended use is meta-test-time training: load the adapter, run a few Adam steps on the task's inner_docs for the test example, then generate the outer answer. See the codebase for inner_loop_batched_adam_seqgrad_nograph.

License

Apache-2.0 (inherits from base model).

Model provider

HerrHruby

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Base

Qwen/Qwen3-4B-Instruct-2507

Adapter

this model

Modalities

Input

Text

Output

Text

Pricing

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Supported Functionality

Model APIs

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