# Dense Training Plan ## Setup Use the same JSONL checkpoint bundle as MoE. Keep random seed, batch token target, learning-rate schedule, and validation split aligned. Primary input: ```text dataset//dataset/*.jsonl ``` Do not train from hidden staging folders unless rebuilding checkpoints. Hidden `data/curated_upload` is a staging queue, not the training contract. ## Curriculum 1. Start with short and medium records. 2. Add long FIM examples. 3. Add continuation/code generation records. 4. Evaluate FIM and next-token loss separately. ## H100 Defaults - Precision: bf16. - Context: 2048 smoke, 4096 main run. - Optimizer: AdamW or fused AdamW. - LR schedule: warmup then cosine decay. - Gradient clipping: enabled. - Batch target: choose by total tokens, not examples, because FIM lengths vary. - Validation: fixed files or fixed checksums from the checkpoint report. ## Preprocessing - Preserve whitespace exactly. - Append `<|endoftext|>` between records during packing. - Keep FIM markers visible; do not strip special tokens. - Reject empty `text`, invalid JSONL, and records exceeding context unless deterministic chunking is enabled. - Bucket by token length to reduce padding waste. ## Stop Conditions - Validation loss diverges twice after LR reduction. - FIM metrics regress while train loss improves. - Tokenizer round-trip or special-token audit fails. - Syntax parse rate drops while raw loss improves.