GPTQ (Generative Pre-trained Transformer Quantization)
Post-training quantization method that compresses LLMs to 4-bit with minimal accuracy loss using group-wise quantization.
When to use GPTQ
Use GPTQ when:
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Need to fit large models (70B+) on limited GPU memory
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Want 4× memory reduction with <2% accuracy loss
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Deploying on consumer GPUs (RTX 4090, 3090)
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Need faster inference (3-4× speedup vs FP16)
Use AWQ instead when:
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Need slightly better accuracy (<1% loss)
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Have newer GPUs (Ampere, Ada)
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Want Marlin kernel support (2× faster on some GPUs)
Use bitsandbytes instead when:
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Need simple integration with transformers
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Want 8-bit quantization (less compression, better quality)
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Don't need pre-quantized model files
Quick start
Installation
Install AutoGPTQ
pip install auto-gptq
With Triton (Linux only, faster)
pip install auto-gptq[triton]
With CUDA extensions (faster)
pip install auto-gptq --no-build-isolation
Full installation
pip install auto-gptq transformers accelerate
Load pre-quantized model
from transformers import AutoTokenizer from auto_gptq import AutoGPTQForCausalLM
Load quantized model from HuggingFace
model_name = "TheBloke/Llama-2-7B-Chat-GPTQ"
model = AutoGPTQForCausalLM.from_quantized( model_name, device="cuda:0", use_triton=False # Set True on Linux for speed )
tokenizer = AutoTokenizer.from_pretrained(model_name)
Generate
prompt = "Explain quantum computing" inputs = tokenizer(prompt, return_tensors="pt").to("cuda:0") outputs = model.generate(**inputs, max_new_tokens=200) print(tokenizer.decode(outputs[0]))
Quantize your own model
from transformers import AutoTokenizer from auto_gptq import AutoGPTQForCausalLM, BaseQuantizeConfig from datasets import load_dataset
Load model
model_name = "meta-llama/Llama-2-7b-chat-hf" tokenizer = AutoTokenizer.from_pretrained(model_name)
Quantization config
quantize_config = BaseQuantizeConfig( bits=4, # 4-bit quantization group_size=128, # Group size (recommended: 128) desc_act=False, # Activation order (False for CUDA kernel) damp_percent=0.01 # Dampening factor )
Load model for quantization
model = AutoGPTQForCausalLM.from_pretrained( model_name, quantize_config=quantize_config )
Prepare calibration data
dataset = load_dataset("c4", split="train", streaming=True) calibration_data = [ tokenizer(example["text"])["input_ids"][:512] for example in dataset.take(128) ]
Quantize
model.quantize(calibration_data)
Save quantized model
model.save_quantized("llama-2-7b-gptq") tokenizer.save_pretrained("llama-2-7b-gptq")
Push to HuggingFace
model.push_to_hub("username/llama-2-7b-gptq")
Group-wise quantization
How GPTQ works:
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Group weights: Divide each weight matrix into groups (typically 128 elements)
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Quantize per-group: Each group has its own scale/zero-point
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Minimize error: Uses Hessian information to minimize quantization error
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Result: 4-bit weights with near-FP16 accuracy
Group size trade-off:
Group Size Model Size Accuracy Speed Recommendation
-1 (per-column) Smallest Best Slowest Research only
32 Smaller Better Slower High accuracy needed
128 Medium Good Fast Recommended default
256 Larger Lower Faster Speed critical
1024 Largest Lowest Fastest Not recommended
Example:
Weight matrix: [1024, 4096] = 4.2M elements
Group size = 128:
- Groups: 4.2M / 128 = 32,768 groups
- Each group: own 4-bit scale + zero-point
- Result: Better granularity → better accuracy
Quantization configurations
Standard 4-bit (recommended)
from auto_gptq import BaseQuantizeConfig
config = BaseQuantizeConfig( bits=4, # 4-bit quantization group_size=128, # Standard group size desc_act=False, # Faster CUDA kernel damp_percent=0.01 # Dampening factor )
Performance:
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Memory: 4× reduction (70B model: 140GB → 35GB)
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Accuracy: ~1.5% perplexity increase
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Speed: 3-4× faster than FP16
High accuracy (3-bit with larger groups)
config = BaseQuantizeConfig( bits=3, # 3-bit (more compression) group_size=128, # Keep standard group size desc_act=True, # Better accuracy (slower) damp_percent=0.01 )
Trade-off:
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Memory: 5× reduction
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Accuracy: ~3% perplexity increase
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Speed: 5× faster (but less accurate)
Maximum accuracy (4-bit with small groups)
config = BaseQuantizeConfig( bits=4, group_size=32, # Smaller groups (better accuracy) desc_act=True, # Activation reordering damp_percent=0.005 # Lower dampening )
Trade-off:
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Memory: 3.5× reduction (slightly larger)
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Accuracy: ~0.8% perplexity increase (best)
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Speed: 2-3× faster (kernel overhead)
Kernel backends
ExLlamaV2 (default, fastest)
model = AutoGPTQForCausalLM.from_quantized( model_name, device="cuda:0", use_exllama=True, # Use ExLlamaV2 exllama_config={"version": 2} )
Performance: 1.5-2× faster than Triton
Marlin (Ampere+ GPUs)
Quantize with Marlin format
config = BaseQuantizeConfig( bits=4, group_size=128, desc_act=False # Required for Marlin )
model.quantize(calibration_data, use_marlin=True)
Load with Marlin
model = AutoGPTQForCausalLM.from_quantized( model_name, device="cuda:0", use_marlin=True # 2× faster on A100/H100 )
Requirements:
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NVIDIA Ampere or newer (A100, H100, RTX 40xx)
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Compute capability ≥ 8.0
Triton (Linux only)
model = AutoGPTQForCausalLM.from_quantized( model_name, device="cuda:0", use_triton=True # Linux only )
Performance: 1.2-1.5× faster than CUDA backend
Integration with transformers
Direct transformers usage
from transformers import AutoModelForCausalLM, AutoTokenizer
Load quantized model (transformers auto-detects GPTQ)
model = AutoModelForCausalLM.from_pretrained( "TheBloke/Llama-2-13B-Chat-GPTQ", device_map="auto", trust_remote_code=False )
tokenizer = AutoTokenizer.from_pretrained("TheBloke/Llama-2-13B-Chat-GPTQ")
Use like any transformers model
inputs = tokenizer("Hello", return_tensors="pt").to("cuda") outputs = model.generate(**inputs, max_new_tokens=100)
QLoRA fine-tuning (GPTQ + LoRA)
from transformers import AutoModelForCausalLM from peft import prepare_model_for_kbit_training, LoraConfig, get_peft_model
Load GPTQ model
model = AutoModelForCausalLM.from_pretrained( "TheBloke/Llama-2-7B-GPTQ", device_map="auto" )
Prepare for LoRA training
model = prepare_model_for_kbit_training(model)
LoRA config
lora_config = LoraConfig( r=16, lora_alpha=32, target_modules=["q_proj", "v_proj"], lora_dropout=0.05, bias="none", task_type="CAUSAL_LM" )
Add LoRA adapters
model = get_peft_model(model, lora_config)
Fine-tune (memory efficient!)
70B model trainable on single A100 80GB
Performance benchmarks
Memory reduction
Model FP16 GPTQ 4-bit Reduction
Llama 2-7B 14 GB 3.5 GB 4×
Llama 2-13B 26 GB 6.5 GB 4×
Llama 2-70B 140 GB 35 GB 4×
Llama 3-405B 810 GB 203 GB 4×
Enables:
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70B on single A100 80GB (vs 2× A100 needed for FP16)
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405B on 3× A100 80GB (vs 11× A100 needed for FP16)
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13B on RTX 4090 24GB (vs OOM with FP16)
Inference speed (Llama 2-7B, A100)
Precision Tokens/sec vs FP16
FP16 25 tok/s 1×
GPTQ 4-bit (CUDA) 85 tok/s 3.4×
GPTQ 4-bit (ExLlama) 105 tok/s 4.2×
GPTQ 4-bit (Marlin) 120 tok/s 4.8×
Accuracy (perplexity on WikiText-2)
Model FP16 GPTQ 4-bit (g=128) Degradation
Llama 2-7B 5.47 5.55 +1.5%
Llama 2-13B 4.88 4.95 +1.4%
Llama 2-70B 3.32 3.38 +1.8%
Excellent quality preservation - less than 2% degradation!
Common patterns
Multi-GPU deployment
Automatic device mapping
model = AutoGPTQForCausalLM.from_quantized( "TheBloke/Llama-2-70B-GPTQ", device_map="auto", # Automatically split across GPUs max_memory={0: "40GB", 1: "40GB"} # Limit per GPU )
Manual device mapping
device_map = { "model.embed_tokens": 0, "model.layers.0-39": 0, # First 40 layers on GPU 0 "model.layers.40-79": 1, # Last 40 layers on GPU 1 "model.norm": 1, "lm_head": 1 }
model = AutoGPTQForCausalLM.from_quantized( model_name, device_map=device_map )
CPU offloading
Offload some layers to CPU (for very large models)
model = AutoGPTQForCausalLM.from_quantized( "TheBloke/Llama-2-405B-GPTQ", device_map="auto", max_memory={ 0: "80GB", # GPU 0 1: "80GB", # GPU 1 2: "80GB", # GPU 2 "cpu": "200GB" # Offload overflow to CPU } )
Batch inference
Process multiple prompts efficiently
prompts = [ "Explain AI", "Explain ML", "Explain DL" ]
inputs = tokenizer(prompts, return_tensors="pt", padding=True).to("cuda")
outputs = model.generate( **inputs, max_new_tokens=100, pad_token_id=tokenizer.eos_token_id )
for i, output in enumerate(outputs): print(f"Prompt {i}: {tokenizer.decode(output)}")
Finding pre-quantized models
TheBloke on HuggingFace:
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1000+ models in GPTQ format
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Multiple group sizes (32, 128)
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Both CUDA and Marlin formats
Search:
Find GPTQ models on HuggingFace
https://huggingface.co/models?library=gptq
Download:
from auto_gptq import AutoGPTQForCausalLM
Automatically downloads from HuggingFace
model = AutoGPTQForCausalLM.from_quantized( "TheBloke/Llama-2-70B-Chat-GPTQ", device="cuda:0" )
Supported models
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LLaMA family: Llama 2, Llama 3, Code Llama
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Mistral: Mistral 7B, Mixtral 8x7B, 8x22B
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Qwen: Qwen, Qwen2, QwQ
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DeepSeek: V2, V3
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Phi: Phi-2, Phi-3
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Yi, Falcon, BLOOM, OPT
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100+ models on HuggingFace
References
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Calibration Guide - Dataset selection, quantization process, quality optimization
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Integration Guide - Transformers, PEFT, vLLM, TensorRT-LLM
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Troubleshooting - Common issues, performance optimization
Resources
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Paper: GPTQ: Accurate Post-Training Quantization (arXiv:2210.17323)
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Discord: https://discord.gg/autogptq