Created
July 31, 2023 22:04
-
-
Save sekstini/8ec95cbe34eb40a4094caf715a10157a to your computer and use it in GitHub Desktop.
This file contains hidden or bidirectional Unicode text that may be interpreted or compiled differently than what appears below. To review, open the file in an editor that reveals hidden Unicode characters.
Learn more about bidirectional Unicode characters
# %% | |
import torch | |
# %% | |
# == Load 4bit weights and original weights == | |
lin_4bit_dump = torch.load("lin_4bit_dump.pt", map_location="cuda") | |
lin_orig_weight = torch.load("lin_orig_weight.pt", map_location="cuda") | |
tmp = torch.load("input_and_outputs.pt", map_location="cuda") | |
x, output_4bit, output_orig = tmp["input"], tmp["output_4bit"], tmp["output_orig"] | |
# %% | |
def dequantize_bnb_4bit( | |
weight: torch.Tensor, # packed 4bit weights | |
absmax: torch.Tensor, # groupwise absmax, fp32 if not double quant | |
shape: torch.Size, | |
blocksize: int, | |
compressed_stats, # Only set for double quant | |
code: torch.Tensor, # 4bit (ie. length 16) lookup table, fp32 | |
) -> torch.Tensor: | |
assert compressed_stats is None, "Double quantization not implemented" | |
m, n = shape | |
w = weight.view(-1).to(torch.int32) | |
out = torch.empty((m, n), dtype=torch.float32, device=w.device) | |
out[:, 0::2] = code[w >> 4].view((m, n//2)) | |
out[:, 1::2] = code[w & 0xF].view((m, n//2)) | |
out.view(-1, blocksize).mul_(absmax.view(-1, 1)) | |
return out.half() | |
keys = ["weight", "bias", "absmax", "shape", "blocksize", "compressed_stats", "code"] | |
weight, bias, absmax, shape, blocksize, compressed_stats, code = [lin_4bit_dump[k] for k in keys] | |
lin_4bit_weight = dequantize_bnb_4bit(weight, absmax, shape, blocksize, compressed_stats, code) | |
# %% | |
((x @ lin_orig_weight.T) - output_orig).max() | |
# %% | |
((x @ lin_4bit_weight.T) - output_4bit).max() |
Sign up for free
to join this conversation on GitHub.
Already have an account?
Sign in to comment