e93507a09c
Lockfile supply-chain audit / lockfile supply-chain audit (push) Has been cancelled
Windows Studio GGUF CI / GPU prebuilt resolves without Visual Studio (push) Has been cancelled
Windows Studio GGUF CI / setup.ps1 unit tests (VS 2026 / CMake guard) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2022) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-2025-vs2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-latest) (push) Has been cancelled
Windows Studio Update CI / Studio Updating Tests (push) Has been cancelled
Wheel CI / Wheel build + content sanity + import smoke (push) Has been cancelled
Lint CI / Source lint (Python + shell + YAML + JSON + safety nets) (push) Has been cancelled
MLX CI on Mac M1 / dispatch (push) Has been cancelled
Security audit / advisory audit (pip + npm + cargo) (push) Has been cancelled
Security audit / pip scan-packages :: extras (push) Has been cancelled
Security audit / pip scan-packages :: studio (push) Has been cancelled
Security audit / pip scan-packages :: hf-stack (push) Has been cancelled
Security audit / npm scan-packages (Studio frontend tarballs) (push) Has been cancelled
Security audit / workflow-trigger lint (pull_request_target / cache-poisoning) (push) Has been cancelled
Security audit / pytest tests/security (push) Has been cancelled
Security audit / npm provenance + new install-script diff (push) Has been cancelled
Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Backend CI / (Python 3.10) (push) Has been cancelled
Backend CI / (Python 3.11) (push) Has been cancelled
Backend CI / (Python 3.12) (push) Has been cancelled
Backend CI / (Python 3.13) (push) Has been cancelled
Backend CI / Repo tests (CPU) (push) Has been cancelled
Frontend CI / Frontend build + bundle sanity (push) Has been cancelled
Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Mac Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Mac Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-14) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15-intel) (push) Has been cancelled
Mac Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26-intel) (push) Has been cancelled
Mac Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Tauri CI / Tauri Linux debug build (no codesign) (push) Has been cancelled
Mac Studio Update CI / Studio Updating Tests (push) Has been cancelled
Studio UI CI / Chat UI Tests (push) Has been cancelled
Windows Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Windows Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Update CI / Studio Updating Tests (push) Has been cancelled
Core / Core (HF=default + TRL=default) (push) Has been cancelled
Core / Core (HF=4.57.6 + TRL<1) (push) Has been cancelled
Core / Core (HF=latest + TRL=latest) (push) Has been cancelled
Core / llama.cpp build + smoke (push) Has been cancelled
Windows Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Windows Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Windows Studio GGUF CI / JSON, images (push) Has been cancelled
Windows Studio GGUF CI / Studio install + inference without Visual Studio (push) Has been cancelled
Studio export capability / capability (macos-latest) (push) Has been cancelled
Studio export capability / capability (ubuntu-latest) (push) Has been cancelled
Studio export capability / capability (windows-latest) (push) Has been cancelled
Cross-platform parity / parity (macos-latest) (push) Has been cancelled
Cross-platform parity / parity (windows-latest) (push) Has been cancelled
Scorecard supply-chain security / Scorecard analysis (push) Has been cancelled
Studio load-orchestrator CI / test (push) Has been cancelled
168 lines
6.7 KiB
Python
168 lines
6.7 KiB
Python
from unsloth import FastLanguageModel
|
|
|
|
from typing import Dict
|
|
|
|
import pytest
|
|
import torch
|
|
|
|
try:
|
|
from torchao.quantization.qat import FakeQuantizedLinear
|
|
from torchao.quantization.qat.fake_quantizer import (
|
|
FakeQuantizerBase,
|
|
Float8FakeQuantizer,
|
|
Int4WeightFakeQuantizer,
|
|
IntxFakeQuantizer,
|
|
)
|
|
except ImportError:
|
|
print(
|
|
"Missing torchao import, please install or upgrade torchao with: pip install 'torchao>=0.15.0'"
|
|
)
|
|
|
|
|
|
class _CountingFakeQuantizer(torch.nn.Module):
|
|
"""Fake quantizer that counts how many times it was called."""
|
|
|
|
def __init__(self):
|
|
super().__init__()
|
|
self.count = 0
|
|
|
|
def forward(self, x: torch.Tensor) -> torch.Tensor:
|
|
self.count += 1
|
|
return x
|
|
|
|
|
|
def _get_model(qat_scheme: str, full_finetuning: bool):
|
|
"""Return (model, tokenizer) configured for QAT; LoRA model when full_finetuning is False."""
|
|
model, tokenizer = FastLanguageModel.from_pretrained(
|
|
model_name = "unsloth/Qwen3-1.7B",
|
|
load_in_4bit = False,
|
|
full_finetuning = full_finetuning,
|
|
qat_scheme = qat_scheme if full_finetuning else None,
|
|
)
|
|
if not full_finetuning:
|
|
model = FastLanguageModel.get_peft_model(
|
|
model,
|
|
qat_scheme = qat_scheme,
|
|
)
|
|
return model, tokenizer
|
|
|
|
|
|
def _test_linear_is_fake_quantized(linear: torch.nn.Linear, qat_scheme: str):
|
|
"""Verify the linear contains fake quantizers matching `qat_scheme`."""
|
|
weight_only = False
|
|
if qat_scheme == "fp8-int4":
|
|
act_fq_class = Float8FakeQuantizer
|
|
weight_fq_class = Int4WeightFakeQuantizer
|
|
min_in_features = 128
|
|
elif qat_scheme == "fp8-fp8":
|
|
act_fq_class = Float8FakeQuantizer
|
|
weight_fq_class = Float8FakeQuantizer
|
|
min_in_features = -1
|
|
elif qat_scheme == "int8":
|
|
act_fq_class = None
|
|
weight_fq_class = IntxFakeQuantizer
|
|
min_in_features = 128
|
|
weight_only = True
|
|
elif qat_scheme == "cactus":
|
|
act_fq_class = None
|
|
weight_fq_class = IntxFakeQuantizer
|
|
min_in_features = 32
|
|
weight_only = True
|
|
else:
|
|
raise ValueError(f"Unknown qat_scheme: {qat_scheme}")
|
|
|
|
# Check base layer activations and weights.
|
|
base_layer = getattr(linear, "base_layer", linear)
|
|
if base_layer.in_features >= min_in_features:
|
|
assert isinstance(base_layer, FakeQuantizedLinear)
|
|
if not weight_only:
|
|
assert isinstance(base_layer.activation_fake_quantizer, act_fq_class)
|
|
assert isinstance(base_layer.weight_fake_quantizer, weight_fq_class)
|
|
|
|
# Check lora A and B (full_finetuning=False only).
|
|
if hasattr(linear, "lora_A") and hasattr(linear, "lora_B"):
|
|
lora_A = linear.lora_A.default
|
|
lora_B = linear.lora_B.default
|
|
if lora_A.in_features >= min_in_features:
|
|
assert isinstance(lora_A, FakeQuantizedLinear)
|
|
if not weight_only:
|
|
assert isinstance(lora_A.activation_fake_quantizer, act_fq_class)
|
|
assert isinstance(lora_A.weight_fake_quantizer, weight_fq_class)
|
|
if lora_B.in_features >= min_in_features:
|
|
assert isinstance(lora_B, FakeQuantizedLinear)
|
|
if not weight_only:
|
|
assert isinstance(lora_B.activation_fake_quantizer, act_fq_class)
|
|
assert isinstance(lora_B.weight_fake_quantizer, weight_fq_class)
|
|
|
|
|
|
def _test_fake_quantizers_are_called(
|
|
model: torch.nn.Module, example_inputs: Dict, full_finetuning: bool, qat_scheme: str
|
|
):
|
|
"""Verify the fake quantizers are actually called during a forward pass."""
|
|
weight_only = qat_scheme in ["int8", "cactus"]
|
|
|
|
def _swap_fake_quantizers(model: torch.nn.Module):
|
|
for name, child in model.named_children():
|
|
if isinstance(child, FakeQuantizerBase):
|
|
setattr(model, name, _CountingFakeQuantizer())
|
|
|
|
def _assert_fake_quantizers_are_called(model: torch.nn.Module):
|
|
for name, child in model.named_children():
|
|
if full_finetuning:
|
|
if isinstance(child, FakeQuantizedLinear):
|
|
if not weight_only:
|
|
assert child.activation_fake_quantizer.count == 1
|
|
assert child.weight_fake_quantizer.count == 1
|
|
else:
|
|
# LoRA fake-quantizes input activations once per block:
|
|
# self_attn via q_proj, mlp via gate_proj.
|
|
if name == "self_attn":
|
|
base_layer = child.q_proj.base_layer
|
|
if not weight_only:
|
|
assert hasattr(base_layer, "activation_fake_quantizer")
|
|
assert base_layer.activation_fake_quantizer.count == 1
|
|
elif name == "mlp":
|
|
base_layer = child.gate_proj.base_layer
|
|
if not weight_only:
|
|
assert hasattr(base_layer, "activation_fake_quantizer")
|
|
assert base_layer.activation_fake_quantizer.count == 1
|
|
elif isinstance(child, FakeQuantizedLinear):
|
|
# Weight fake quantizers must always be called.
|
|
assert child.weight_fake_quantizer.count == 1
|
|
|
|
for k, v in example_inputs.items():
|
|
example_inputs[k] = v.cuda()
|
|
model.apply(_swap_fake_quantizers)
|
|
model(**example_inputs)
|
|
model.apply(_assert_fake_quantizers_are_called)
|
|
|
|
|
|
def _test_model_fake_quantize(qat_scheme: str, full_finetuning: bool):
|
|
"""All linear layers in the model are fake quantized per `qat_scheme`."""
|
|
model, tokenizer = _get_model(qat_scheme, full_finetuning)
|
|
if full_finetuning:
|
|
model = model.model
|
|
else:
|
|
model = model.base_model.model.model
|
|
for layer in model.layers:
|
|
_test_linear_is_fake_quantized(layer.self_attn.q_proj, qat_scheme)
|
|
_test_linear_is_fake_quantized(layer.self_attn.k_proj, qat_scheme)
|
|
_test_linear_is_fake_quantized(layer.self_attn.v_proj, qat_scheme)
|
|
_test_linear_is_fake_quantized(layer.mlp.gate_proj, qat_scheme)
|
|
_test_linear_is_fake_quantized(layer.mlp.up_proj, qat_scheme)
|
|
_test_linear_is_fake_quantized(layer.mlp.down_proj, qat_scheme)
|
|
inputs = tokenizer("How are you?", return_tensors = "pt")
|
|
_test_fake_quantizers_are_called(model, inputs, full_finetuning, qat_scheme)
|
|
|
|
|
|
# TODO: there are bad interactions across tests right now, need to figure out
|
|
# how to disable model caching before re-enabling this test
|
|
@pytest.mark.parametrize("qat_scheme", ["fp8-int4", "fp8-fp8", "int8", "cactus"])
|
|
def _test_full_model_fake_quantize(qat_scheme: str):
|
|
_test_model_fake_quantize(qat_scheme, full_finetuning = True)
|
|
|
|
|
|
@pytest.mark.parametrize("qat_scheme", ["fp8-int4", "fp8-fp8", "int8", "cactus"])
|
|
def test_lora_model_fake_quantize(qat_scheme: str):
|
|
_test_model_fake_quantize(qat_scheme, full_finetuning = False)
|