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187 lines
6.2 KiB
Markdown
187 lines
6.2 KiB
Markdown
# VRAM Estimation for Training
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```
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Total VRAM = Weights + LoRA Adapters + Optimizer + Gradients + Activations + CUDA Overhead
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```
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| Symbol | Meaning |
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|--------|---------|
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| `H` | `hidden_size` |
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| `L` | `num_hidden_layers` |
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| `V` | `vocab_size` |
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| `K` | `(H / num_attention_heads) * num_key_value_heads` |
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| `M` | `intermediate_size` (or `moe_intermediate_size`) |
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| `E` | `num_experts` (1 for dense) |
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| `r` | LoRA rank |
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| `B` | `per_device_train_batch_size` |
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| `S` | `max_seq_length` |
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---
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## 1. Model Weights
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```
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QKVO = (H + K + K + H) * H
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MLP = H * M * 3 * E + (E * H if E > 1 else 0)
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Quantizable = (QKVO + MLP) * L
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Non-quantizable = 2*H*L + V*H + (V*H if not tie_embeddings else 0)
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```
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| Mode | Bytes |
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|------|-------|
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| QLoRA 4-bit | `Quantizable * 2 / 3.2 + Non-quantizable * 2` |
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| LoRA / Full fp16 | `(Quantizable + Non-quantizable) * 2` |
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The 3.2 factor (`16/5`) accounts for BNB NF4 blockwise scales. Repos whose
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quantization config enables `bnb_4bit_use_double_quant` use a tighter, still
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conservative 3.6 factor for the quantized portion of the weights.
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When a 4-bit config has `llm_int8_skip_modules` entries that point to language
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model layers or submodules, those quantizable weights are charged at fp16
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instead of NF4. Generic embedding and multimodal skip names are already covered
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by non-quantizable terms or excluded from text training weights.
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## 2. LoRA Adapters
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| Module | A | B |
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|--------|---|---|
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| q_proj | `H×r` | `r×H` |
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| k_proj | `H×r` | `r×K` |
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| v_proj | `H×r` | `r×K` |
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| o_proj | `H×r` | `r×H` |
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| gate_proj | `H×r` | `r×M` |
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| up_proj | `H×r` | `r×M` |
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| down_proj | `M×r` | `r×H` |
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MLP modules multiply by `E` for MoE.
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```
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LoRA_bytes = sum(A + B per selected module) * L * 2
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```
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`all-linear` is treated as all known text linear modules in the table above.
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The estimator deliberately does not infer multimodal or vision-tower LoRA
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modules from config shapes; those modules vary too much across VLM families for
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a generic config formula.
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Some decoder configs expose layer-shape fields such as `layer_types`,
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`head_dim`, `global_head_dim`, `num_global_key_value_heads`, `attention_k_eq_v`,
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`num_kv_shared_layers`, `use_double_wide_mlp`, `vocab_size_per_layer_input`, and
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`hidden_size_per_layer_input`. When those fields are present, the estimator
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derives text weight and LoRA counts from the per-layer shapes instead of
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assuming every layer has the same seven projection modules.
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## 3. Optimizer States (calibrated)
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| Optimizer | Bytes/param | Notes |
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|-----------|------------|-------|
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| `adamw_8bit` | 4 | BNB upcasts to fp32 during step |
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| `adamw_torch` | 6 | Fused, no master copy |
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| `paged_adamw_32bit` | 8 | Full fp32 states |
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| `sgd` | 4 | |
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Trainable params = all params (Full FT) or LoRA params only.
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## 4. Gradients
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```
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Gradient_bytes = trainable_params * 2 (fp16, accumulated in-place)
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```
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## 5. Activations
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Per-layer (from `unsloth_zoo/vllm_utils.py`):
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```
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Per_layer = (S*B*(H+K+K) + S*B*2 + S*B*(M+M)) * 2 * 1.25
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```
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When the resolved attention implementation is none of `flash_attention_2`,
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`sdpa`, or `flex_attention` (PyTorch SDPA dispatches to flash or
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memory-efficient kernels and FlexAttention is also a memory-efficient
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kernel, all of which are O(n) in memory), activation memory also includes
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a quadratic attention-score/workspace estimate:
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```
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Non_flash_attention = B * num_attention_heads * S^2 * 2 * 12.0 * effective_layers
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Activations = max(Per_layer_with_gc, Non_flash_attention)
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```
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Studio resolves the attention implementation with Unsloth's
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`resolve_attention_implementation` helper and uses that result directly. The
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estimator does not duplicate model-family attention policy.
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| GC Mode | Full FT | LoRA/QLoRA |
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|---------|---------|------------|
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| none | `L` layers | `L` layers |
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| true (HF) | 2.0 | 1.0 |
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| unsloth | 1.5 | 1.0 |
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## 6. Floors
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Activations use the computed formula directly:
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```
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activation_bytes = computed_activation_bytes
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```
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Full fine-tuning keeps the gradient floor at **15% of model weight memory** to
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account for autograd overhead, NCCL buffers, mixed-precision scaling, and
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PyTorch fragmentation:
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```
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gradient_bytes = max(computed_gradient_bytes, weights * 0.15)
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```
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For LoRA/QLoRA, the base model is frozen, so the weight-derived gradient floor
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is capped by trainable-state and live-activation scale:
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```
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raw_gradient_bytes = trainable_params * 2
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gradient_floor = min(weights * 0.15, max(computed_activation_bytes, optimizer_bytes))
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gradient_bytes = max(raw_gradient_bytes, gradient_floor)
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```
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This prevents frozen quantized model size from dominating gradient/state
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overhead when the measured runtime footprint is governed by LoRA optimizer
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states and live activations.
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## 7. CUDA Overhead
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**1.4 GB** fixed — CUDA driver + PyTorch runtime, calibrated on RTX 5070 Ti.
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## 8. Multi-GPU Overhead
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When sharding across multiple GPUs, each additional GPU (beyond the first) contributes only **85%** of its free VRAM to the usable pool. The 15% discount accounts for NCCL all-reduce buffers, PCIe/NVLink transfer overhead, synchronization barriers, and memory fragmentation from non-uniform shard sizes. Calibrated empirically on 2-8 GPU setups with NVLink and PCIe topologies.
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```
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usable_gb = free[gpu_0] + sum(free[gpu_i] * 0.85 for i in 1..N)
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```
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---
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## Parameter Flow
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```
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Frontend -> routes/{training,inference}.py
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-> prepare_gpu_selection(gpu_ids, model_name, ...)
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+-- gpu_ids is explicit (e.g. [5,6,7])
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| -> resolve_requested_gpu_ids: validate against parent-visible set
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| -> return all requested GPUs (model sharded across all of them)
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+-- gpu_ids is None or []
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-> auto_select_gpu_ids: estimate VRAM, pick minimum GPUs needed
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-> estimate_required_model_memory_gb -> estimate_training_vram
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-> greedy selection: rank GPUs by free VRAM, add until model fits
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-> get_device_map(resolved_gpu_ids)
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-> "balanced" if >1 GPU, "sequential" otherwise
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-> worker subprocess: apply_gpu_ids(resolved_gpu_ids)
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-> sets CUDA_VISIBLE_DEVICES before torch/CUDA init
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```
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Threaded params: `batch_size`, `max_seq_length`, `lora_r`, `target_modules`, `gradient_checkpointing`, `optim`.
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Source: `studio/backend/utils/hardware/vram_estimation.py`
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