namkoong-lab

LatentGym_Qwen3-8B_1episode_4Envs_LOO_number_guessing

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License: apache-2.0

Environments & training latents

Table
EnvLatents seen during training
hangmanvowel_count_4, ending_ABLE
wordladderhub_word_3letter, hub_word_4letter, order_outside_in
secretaryinverse_order, fixed_position_2

Training hyperparameters

Table
Base modelQwen/Qwen3-8B
AlgorithmGRPO
OptimizerAdamW (β₁=0.9, β₂=0.999)
Learning rate5e-07
LR scheduleconstant_with_warmup
Weight decay0.01
Max grad norm1.0
KL coefficient β0.04
Clip range ε0.2
Train batch (prompts)32
Mini-batch1
Rollouts per prompt8
Episodes per trajectory (N)1
Reward ΦΣᵢ Gᵢ (cumulative)
Epochs20
Max generation length64
Sampling (train)T=0.8, top-p=0.95
Seed263

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namkoong-lab

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Qwen/Qwen3-8B

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this model

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