feat: load shards directly to GPU, no CPU bottleneck
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@@ -31,9 +31,9 @@ def streaming_quantize(model_path, output_path):
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print(f"Processing shard {shard_idx + 1}/{len(safetensors_files)}: {shard_file}")
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print(f"Processing shard {shard_idx + 1}/{len(safetensors_files)}: {shard_file}")
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print(f"{'='*60}")
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print(f"{'='*60}")
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# Load shard to CPU
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# Load shard directly to GPU 0
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print(" Loading shard to CPU...")
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print(" Loading shard to GPU 0...")
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shard_state_dict = torch.load(shard_file, map_location="cpu", weights_only=False)
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shard_state_dict = torch.load(shard_file, map_location="cuda:0", weights_only=False)
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# Quantize Linear layers in this shard using both GPUs
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# Quantize Linear layers in this shard using both GPUs
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print(" Quantizing Linear layers (both GPUs)...")
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print(" Quantizing Linear layers (both GPUs)...")
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@@ -46,7 +46,7 @@ def streaming_quantize(model_path, output_path):
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gpu0_keys = weight_keys[::2] # Even indices
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gpu0_keys = weight_keys[::2] # Even indices
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gpu1_keys = weight_keys[1::2] # Odd indices
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gpu1_keys = weight_keys[1::2] # Odd indices
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# Quantize on GPU 0
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# Quantize on GPU 0 (shard already on GPU 0)
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print(" GPU 0: Quantizing...", end=" ")
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print(" GPU 0: Quantizing...", end=" ")
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for key in gpu0_keys:
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for key in gpu0_keys:
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tensor = shard_state_dict[key]
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tensor = shard_state_dict[key]
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@@ -62,13 +62,17 @@ def streaming_quantize(model_path, output_path):
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)
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)
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with torch.no_grad():
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with torch.no_grad():
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dummy_linear.weight = nn.Parameter(tensor.clone().to("cuda:0"))
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dummy_linear.weight = nn.Parameter(tensor.clone())
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_ = dummy_linear.weight.quant_state
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_ = dummy_linear.weight.quant_state
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shard_state_dict[key] = dummy_linear.weight.to("cpu")
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shard_state_dict[key] = dummy_linear.weight
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quantized_keys += 1
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quantized_keys += 1
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print(f"✓ {len(gpu0_keys)} layers")
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print(f"✓ {len(gpu0_keys)} layers")
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# Move shard to GPU 1 for second half
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print(" Moving to GPU 1...")
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shard_state_dict = {k: v.to("cuda:1") if isinstance(v, torch.Tensor) else v for k, v in shard_state_dict.items()}
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# Quantize on GPU 1
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# Quantize on GPU 1
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print(" GPU 1: Quantizing...", end=" ")
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print(" GPU 1: Quantizing...", end=" ")
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for key in gpu1_keys:
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for key in gpu1_keys:
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@@ -85,10 +89,10 @@ def streaming_quantize(model_path, output_path):
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)
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)
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with torch.no_grad():
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with torch.no_grad():
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dummy_linear.weight = nn.Parameter(tensor.clone().to("cuda:1"))
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dummy_linear.weight = nn.Parameter(tensor.clone())
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_ = dummy_linear.weight.quant_state
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_ = dummy_linear.weight.quant_state
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shard_state_dict[key] = dummy_linear.weight.to("cpu")
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shard_state_dict[key] = dummy_linear.weight
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quantized_keys += 1
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quantized_keys += 1
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print(f"✓ {len(gpu1_keys)} layers")
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print(f"✓ {len(gpu1_keys)} layers")
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