ahassoun's picture
Upload 3018 files
ee6e328
raw
history blame
No virus
13.5 kB
# coding=utf-8
# Copyright 2023 The HuggingFace Team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import tempfile
import unittest
import pytest
from transformers import AutoModelForCausalLM, AutoTokenizer, GPTQConfig
from transformers.testing_utils import (
is_torch_available,
require_accelerate,
require_auto_gptq,
require_optimum,
require_torch_gpu,
require_torch_multi_gpu,
slow,
)
if is_torch_available():
import torch
class GPTQConfigTest(unittest.TestCase):
def test_bits(self):
with self.assertRaises(ValueError):
GPTQConfig(bits="")
GPTQConfig(bits=1)
GPTQConfig(bits=2)
GPTQConfig(bits=4)
def test_dataset(self):
with self.assertRaises(ValueError):
GPTQConfig(bits=2, dataset="auto_gpt")
GPTQConfig(bits=2, dataset="c4")
GPTQConfig(bits=2, dataset="ptb-new")
def test_damp_percent(self):
with self.assertRaises(ValueError):
GPTQConfig(bits=2, damp_percent=10)
GPTQConfig(bits=2, damp_percent=-1)
GPTQConfig(bits=2, damp_percent="0")
GPTQConfig(bits=2, damp_percent=0.01)
def test_to_dict(self):
quantization_config = GPTQConfig(bits=2)
quantization_config.to_dict()
def test_from_dict(self):
dict = {"bits": 2}
quantization_config = GPTQConfig.from_dict(dict)
self.assertEqual(dict["bits"], quantization_config.bits)
@require_optimum
def test_optimum_config(self):
from optimum.gptq import GPTQQuantizer
config = GPTQConfig(bits=2)
optimum_config = GPTQQuantizer.from_dict(config.to_dict())
self.assertEqual(optimum_config.bits, config.bits)
new_config = GPTQConfig.from_dict(optimum_config.to_dict())
self.assertEqual(optimum_config.bits, new_config.bits)
@slow
@require_optimum
@require_auto_gptq
@require_torch_gpu
class GPTQTest(unittest.TestCase):
model_name = "bigscience/bloom-560m"
input_text = "Hello my name is"
EXPECTED_OUTPUTS = set()
EXPECTED_OUTPUTS.add("Hello my name is John and I am a professional photographer. I")
EXPECTED_OUTPUTS.add("Hello my name is John, I am a professional photographer and I")
EXPECTED_OUTPUTS.add("Hello my name is John, I am a student in the University of")
EXPECTED_OUTPUTS.add("Hello my name is John and I am a very good looking man.")
EXPECTED_OUTPUTS.add("Hello my name is Alyson, I am a student in the")
EXPECTED_OUTPUTS.add("Hello my name is Alyson and I am a very sweet,")
# this seems a little small considering that we are doing 4bit quant but we have a small model and ww don't quantize the embeddings
EXPECTED_RELATIVE_DIFFERENCE = 1.664253062
bits = 4
group_size = 128
desc_act = False
disable_exllama = True
dataset = [
"auto-gptq is an easy-to-use model quantization library with user-friendly apis, based on GPTQ algorithm."
]
device_map = None
# called only once for all test in this class
@classmethod
def setUpClass(cls):
"""
Setup quantized model
"""
cls.model_fp16 = AutoModelForCausalLM.from_pretrained(
cls.model_name, torch_dtype=torch.float16, device_map=cls.device_map
)
cls.mem_fp16 = cls.model_fp16.get_memory_footprint()
cls.tokenizer = AutoTokenizer.from_pretrained(cls.model_name, use_fast=True)
quantization_config = GPTQConfig(
bits=cls.bits,
dataset=cls.dataset,
tokenizer=cls.tokenizer,
group_size=cls.group_size,
desc_act=cls.desc_act,
disable_exllama=cls.disable_exllama,
)
cls.quantized_model = AutoModelForCausalLM.from_pretrained(
cls.model_name,
torch_dtype=torch.float16,
device_map=cls.device_map,
quantization_config=quantization_config,
)
def test_memory_footprint(self):
r"""
A simple test to check if the model conversion has been done correctly by checking on the
memory footprint of the converted model
"""
mem_quantized = self.quantized_model.get_memory_footprint()
self.assertAlmostEqual(self.mem_fp16 / mem_quantized, self.EXPECTED_RELATIVE_DIFFERENCE)
def test_quantized_layers_class(self):
"""
Simple test to check if the model conversion has been done correctly by checking on
the class type of the linear layers of the converted models
"""
from auto_gptq.utils.import_utils import dynamically_import_QuantLinear
QuantLinear = dynamically_import_QuantLinear(
use_triton=False,
desc_act=self.desc_act,
group_size=self.group_size,
bits=self.bits,
disable_exllama=self.disable_exllama,
)
self.assertTrue(self.quantized_model.transformer.h[0].mlp.dense_4h_to_h.__class__ == QuantLinear)
def check_inference_correctness(self, model):
r"""
Test the generation quality of the quantized model and see that we are matching the expected output.
Given that we are operating on small numbers + the testing model is relatively small, we might not get
the same output across GPUs. So we'll generate few tokens (5-10) and check their output.
"""
# Check that inference pass works on the model
encoded_input = self.tokenizer(self.input_text, return_tensors="pt")
# Check the exactness of the results
output_sequences = model.generate(input_ids=encoded_input["input_ids"].to(0), max_new_tokens=10)
# Get the generation
self.assertIn(self.tokenizer.decode(output_sequences[0], skip_special_tokens=True), self.EXPECTED_OUTPUTS)
def test_generate_quality(self):
"""
Simple test to check the quality of the model by comapring the the generated tokens with the expected tokens
"""
if self.device_map is None:
self.check_inference_correctness(self.quantized_model.to(0))
else:
self.check_inference_correctness(self.quantized_model)
def test_serialization(self):
"""
Test the serialization of the model and the loading of the quantized weights works
"""
with tempfile.TemporaryDirectory() as tmpdirname:
self.quantized_model.save_pretrained(tmpdirname)
if self.disable_exllama:
quantized_model_from_saved = AutoModelForCausalLM.from_pretrained(tmpdirname).to(0)
else:
# we need to put it directly to the gpu. Otherwise, we won't be able to initialize the exllama kernel
quantized_model_from_saved = AutoModelForCausalLM.from_pretrained(tmpdirname, device_map={"": 0})
self.check_inference_correctness(quantized_model_from_saved)
@require_accelerate
def test_serialization_big_model_inference(self):
"""
Test the serialization of the model and the loading of the quantized weights with big model inference
"""
with tempfile.TemporaryDirectory() as tmpdirname:
self.quantized_model.save_pretrained(tmpdirname)
quantized_model_from_saved = AutoModelForCausalLM.from_pretrained(tmpdirname, device_map="auto")
self.check_inference_correctness(quantized_model_from_saved)
def test_change_loading_attributes(self):
"""
Test the serialization of the model and the loading of the quantized weights works with another config file
"""
with tempfile.TemporaryDirectory() as tmpdirname:
self.quantized_model.save_pretrained(tmpdirname)
if self.disable_exllama:
self.assertEqual(self.quantized_model.config.quantization_config.disable_exllama, True)
# we need to put it directly to the gpu. Otherwise, we won't be able to initialize the exllama kernel
quantized_model_from_saved = AutoModelForCausalLM.from_pretrained(
tmpdirname, quantization_config=GPTQConfig(disable_exllama=False, bits=4), device_map={"": 0}
)
self.assertEqual(quantized_model_from_saved.config.quantization_config.disable_exllama, False)
self.assertEqual(quantized_model_from_saved.config.quantization_config.bits, self.bits)
self.check_inference_correctness(quantized_model_from_saved)
@require_accelerate
@require_torch_multi_gpu
class GPTQTestDeviceMap(GPTQTest):
device_map = "auto"
@require_accelerate
@require_torch_multi_gpu
class GPTQTestDeviceMapExllama(GPTQTest):
device_map = "auto"
disable_exllama = False
@slow
@require_optimum
@require_auto_gptq
@require_torch_gpu
@require_accelerate
class GPTQTestActOrderExllama(unittest.TestCase):
"""
Test GPTQ model with exllama kernel and desc_act=True (also known as act-order).
More information on those arguments here:
https://huggingface.co/docs/transformers/main_classes/quantization#transformers.GPTQConfig
"""
EXPECTED_OUTPUTS = set()
EXPECTED_OUTPUTS.add("Hello my name is Katie and I am a 20 year")
model_name = "hf-internal-testing/Llama-2-7B-GPTQ"
revision = "gptq-4bit-128g-actorder_True"
input_text = "Hello my name is"
@classmethod
def setUpClass(cls):
"""
Setup quantized model
"""
cls.quantization_config = GPTQConfig(bits=4, disable_exllama=False, max_input_length=4028)
cls.quantized_model = AutoModelForCausalLM.from_pretrained(
cls.model_name,
revision=cls.revision,
torch_dtype=torch.float16,
device_map={"": 0},
quantization_config=cls.quantization_config,
)
cls.tokenizer = AutoTokenizer.from_pretrained(cls.model_name, use_fast=True)
def check_inference_correctness(self, model):
"""
Test the generation quality of the quantized model and see that we are matching the expected output.
Given that we are operating on small numbers + the testing model is relatively small, we might not get
the same output across GPUs. So we'll generate few tokens (5-10) and check their output.
"""
# Check that inference pass works on the model
encoded_input = self.tokenizer(self.input_text, return_tensors="pt")
# Check the exactness of the results
output_sequences = model.generate(input_ids=encoded_input["input_ids"].to(0), max_new_tokens=10)
# Get the generation
self.assertIn(self.tokenizer.decode(output_sequences[0], skip_special_tokens=True), self.EXPECTED_OUTPUTS)
def test_generate_quality(self):
"""
Simple test to check the quality of the model by comapring the the generated tokens with the expected tokens
"""
self.check_inference_correctness(self.quantized_model)
# this test will fail until the next release of optimum
@pytest.mark.skip
def test_max_input_length(self):
"""
Test if the max_input_length works. It modifies the maximum input length that of the model that runs with exllama backend.
"""
prompt = "I am in Paris and" * 1000
inp = self.tokenizer(prompt, return_tensors="pt").to(0)
self.assertTrue(inp["input_ids"].shape[1] > 4028)
with self.assertRaises(RuntimeError) as cm:
self.quantized_model.generate(**inp, num_beams=1, min_new_tokens=3, max_new_tokens=3)
self.assertTrue("temp_state buffer is too small" in str(cm.exception))
prompt = "I am in Paris and" * 500
inp = self.tokenizer(prompt, return_tensors="pt").to(0)
self.assertTrue(inp["input_ids"].shape[1] < 4028)
self.quantized_model.generate(**inp, num_beams=1, min_new_tokens=3, max_new_tokens=3)
# fail when run all together
@pytest.mark.skip
@require_accelerate
@require_torch_multi_gpu
class GPTQTestDeviceMapCPUOffload(GPTQTest):
device_map = {
"transformer.word_embeddings": 0,
"transformer.word_embeddings_layernorm": 0,
"lm_head": 0,
"transformer.h.0": 0,
"transformer.h.1": 0,
"transformer.h.2": 0,
"transformer.h.3": 0,
"transformer.h.4": 0,
"transformer.h.5": 0,
"transformer.h.6": 0,
"transformer.h.7": 0,
"transformer.h.8": 0,
"transformer.h.9": 0,
"transformer.h.10": 1,
"transformer.h.11": 1,
"transformer.h.12": 1,
"transformer.h.13": 1,
"transformer.h.14": 1,
"transformer.h.15": 1,
"transformer.h.16": 1,
"transformer.h.17": 0,
"transformer.h.18": "cpu",
"transformer.h.19": "cpu",
"transformer.h.20": "cpu",
"transformer.h.21": "cpu",
"transformer.h.22": "cpu",
"transformer.h.23": 1,
"transformer.ln_f": 0,
}