--- base_model: t5-small tags: [trm, act, recursive, text-generation, wikitext] metrics: [loss, lm_loss, ponder_loss, perplexity_lm] --- # TRM-Text1 (ACT) **TRM-Text1 (ACT)** is a causal language model based on a **Tiny Recursive Reasoning Model (TRM)** with **Adaptive Computation Time (ACT)** for per-token variable depth. - **Architecture:** TRM (causal) + ACT halting - **Training Data:** wikitext-103-raw-v1 - **Tokenizer:** t5-small (SentencePiece) - **Vocab Size:** 32100 - **Objective:** Causal Language Modeling (next-token) - **Seq Len:** 1024 Note: This model uses the T5 SentencePiece tokenizer. Perplexity numbers on WT103 reported here are not directly comparable to GPT-2 BPE-based PPLs. ### Latest Performance (Epoch 1) - **Validation Loss**: 4.8248 - **Validation LM Loss**: 4.8149 - **Validation Ponder Loss**: 1.0064 - **Validation Perplexity (LM-only)**: 123.34