training: use rank 64, define as single constant
- DEFAULT_RANK = 64 in train_router.py - All references use the constant, not magic numbers - ~2.5GB optimizer state instead of ~10GB Co-Authored-By: Proof of Concept <poc@bcachefs.org>
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3 changed files with 16 additions and 16 deletions
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@ -3,7 +3,7 @@
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## Overview
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Continuous fine-tuning of Qwen3.5-27B alongside live vLLM inference.
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Full-weight updates (not LoRA) using Apollo optimizer with rank-256
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Full-weight updates (not LoRA) using Apollo optimizer with rank-64
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gradient projection. No pause required — HOGWILD concurrent training.
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Weights shared via CUDA IPC between vLLM and the training process.
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@ -63,10 +63,9 @@ LoRA trains adapter matrices, not base weights. For personality and
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behavioral changes that persist as disposition, the base weights
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need to change. Apollo makes this memory-feasible.
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### Rank 256
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Not Mini (rank-1). With 100+ diverse training examples, the
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gradient's effective dimensionality can reach hundreds. Rank-256
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captures the structure. Memory cost: ~10GB (negligible on B200).
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### Rank 64
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Not Mini (rank-1). Rank-64 captures gradient structure across diverse
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training examples while keeping memory low (~2.5GB on 27B model).
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Compute cost: <0.25% of forward+backward.
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### Channel-wise scaling
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@ -94,7 +93,7 @@ from a per-parameter seed each step.
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### Parameter grouping (Qwen3.5 gotcha)
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conv1d weights are 3D tensors [10240, 1, 4]. Apollo's projector
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needs 2D matrices with min dimension >= rank. Small/3D tensors
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use standard Adam. Large 2D matrices use Apollo with rank-256.
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use standard Adam. Large 2D matrices use Apollo.
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## Training Data Pipeline
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@ -229,7 +228,7 @@ a few hundred MB.
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| State | Location | Notes |
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|-------|----------|-------|
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| Apollo optimizer | train_router._optimizer | ~10GB for rank-256. Persisted to `/tmp/apollo_optimizer_state.pt` during checkpoint sync. |
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| Apollo optimizer | train_router._optimizer | ~2.5GB for rank-64. Persisted to `/tmp/apollo_optimizer_state.pt` during checkpoint sync. |
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| HF model with vLLM views | train_router._model | Lazy-loaded on first /train. Parameters point to vLLM's GPU memory. |
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## Hyperparameters
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@ -237,7 +236,7 @@ a few hundred MB.
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| Parameter | Value | Rationale |
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|-----------|-------|-----------|
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| Learning rate | 1e-5 to 1e-4 | Standard for full fine-tuning. Higher for diverse batches. |
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| Rank | 256 | Captures gradient structure across 100+ examples. ~10GB state. |
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| Rank | 64 | Captures gradient structure. ~2.5GB state. Defined in `train_router.DEFAULT_RANK`. |
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| Scale type | channel | Per-channel precision, matches LLaMA-Factory defaults. |
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| Epochs | 1 | One pass over diverse data. Multiple epochs risk overfitting. |
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| Batch size | 1 | Single examples, immediate updates. |
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@ -248,7 +247,7 @@ a few hundred MB.
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## Components
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### Built ✓
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- `optimizer.py` — Apollo optimizer (configurable rank, default 256)
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- `optimizer.py` — Apollo optimizer (configurable rank)
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- `train_router.py` — /train endpoint, runs in vLLM process
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- `weight_mapping.py` — vLLM merged → HF separate views (validated)
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- `export_hook.py` — vLLM plugin hook for IPC handle export
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@ -8,9 +8,9 @@ Channel-wise or tensor-wise scaling is sufficient. Apollo approximates
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these scaling factors using a low-rank auxiliary optimizer state based on
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pure random projection.
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Default rank=256 (full Apollo). ~10GB state for 27B model, <0.25%
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compute overhead vs forward+backward. Captures gradient structure
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across 100+ behavioral training examples per batch.
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Default rank=64. ~2.5GB state for 27B model, <0.25% compute overhead
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vs forward+backward. Sufficient for behavioral training with diverse
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examples.
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Key implementation details from the paper:
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- Gradient scale factor α = √(n/r) compensates for projection ratio
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@ -34,7 +34,7 @@ class Apollo(Optimizer):
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Args:
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params: model parameters
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lr: learning rate (default: 1e-4)
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rank: projection rank (default: 256)
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rank: projection rank (default: 64)
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betas: Adam momentum coefficients (default: (0.9, 0.999))
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eps: numerical stability term (default: 1e-8)
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weight_decay: decoupled weight decay (default: 0.01)
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@ -46,7 +46,7 @@ class Apollo(Optimizer):
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Set to None to disable.
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"""
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def __init__(self, params, lr=1e-4, rank=256, betas=(0.9, 0.999),
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def __init__(self, params, lr=1e-4, rank=64, betas=(0.9, 0.999),
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eps=1e-8, weight_decay=0.01, warmup_steps=0,
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scale=None, proj_refresh=200, norm_growth_limit=1.01):
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defaults = dict(lr=lr, rank=rank, betas=betas, eps=eps,
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@ -42,6 +42,7 @@ _initialized: bool = False
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_optimizer: Any = None # Persisted Apollo optimizer
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OPTIMIZER_STATE_PATH = "/tmp/apollo_optimizer_state.pt"
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DEFAULT_RANK = 64
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def _load_training_model() -> nn.Module:
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@ -150,7 +151,7 @@ def _get_or_create_optimizer(model: nn.Module, config: dict[str, Any]):
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apollo_params, standard_params = [], []
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for p in model.parameters():
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if p.requires_grad:
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if p.ndim >= 2 and min(p.shape) >= 256:
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if p.ndim >= 2 and min(p.shape) >= DEFAULT_RANK:
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apollo_params.append(p)
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else:
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standard_params.append(p)
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@ -168,7 +169,7 @@ def _get_or_create_optimizer(model: nn.Module, config: dict[str, Any]):
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_optimizer = Apollo(
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groups,
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lr=config.get('lr', 1e-5),
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rank=config.get('rank', 256),
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rank=config.get('rank', DEFAULT_RANK),
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betas=tuple(config.get('betas', (0.9, 0.999))),
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eps=config.get('eps', 1e-8),
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weight_decay=config.get('weight_decay', 0.01),
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