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tFINE-base-300m

An encoder-decoder (T5 architecture) pretrained with nanoT5:

  • tokenizer: sentencepiece BPE w/ byte fallback, 48k vocab (from vocab scaling laws)
  • data: fineweb-edu-dedup split of HuggingFaceTB/smollm-corpus
  • context length: 1024 ctx

details

Detailed info, including training logs, configs, and checkpoints can be found under checkpoints/ in this repo.

Expand hyperparameter overview
  1. Model:

    • Dropout rate: 0.0
    • Activations: silu, gated-silu
    • torch compile: true
  2. Data processing:

    • Input length: 1024
    • MLM probability: 0.15
  3. Optimization:

    • Optimizer: AdamW with scaling
    • Base learning rate: 0.008
    • Batch size: 120
    • Total training steps: 80,000
    • Warmup steps: 10,000
    • Learning rate scheduler: Cosine
    • Weight decay: 0.0001
    • Gradient clipping: 1.0
    • Gradient accumulation steps: 24
    • Final cosine learning rate: 1e-5
  4. Hardware:

    • Device: RTX 4080
    • Precision: bfloat16, tf32

plots

training loss

loss

Expand grad and weights L2 norm plots

grad norm

grad

weights norm

weights


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