Transformers documentation

Efficient Inference on a Single GPU

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Efficient Inference on a Single GPU

In addition to this guide, relevant information can be found as well in the guide for training on a single GPU and the guide for inference on CPUs.

Better Transformer: PyTorch-native transformer fastpath

PyTorch-native nn.MultiHeadAttention attention fastpath, called BetterTransformer, can be used with Transformers through the integration in the 🤗 Optimum library.

PyTorch’s attention fastpath allows to speed up inference through kernel fusions and the use of nested tensors. Detailed benchmarks can be found in this blog post.

After installing the optimum package, to use Better Transformer during inference, the relevant internal modules are replaced by calling to_bettertransformer():

model = model.to_bettertransformer()

The method reverse_bettertransformer() allows to go back to the original modeling, which should be used before saving the model in order to use the canonical transformers modeling:

model = model.reverse_bettertransformer()
model.save_pretrained("saved_model")

As of PyTorch 2.0, the attention fastpath is supported for both encoders and decoders. The list of supported architectures can be found here.

bitsandbytes integration for Int8 mixed-precision matrix decomposition

Note that this feature can also be used in a multi GPU setup.

From the paper LLM.int8() : 8-bit Matrix Multiplication for Transformers at Scale, we support Hugging Face integration for all models in the Hub with a few lines of code. The method reduces nn.Linear size by 2 for float16 and bfloat16 weights and by 4 for float32 weights, with close to no impact to the quality by operating on the outliers in half-precision.

HFxbitsandbytes.png

Int8 mixed-precision matrix decomposition works by separating a matrix multiplication into two streams: (1) a systematic feature outlier stream matrix multiplied in fp16 (0.01%), (2) a regular stream of int8 matrix multiplication (99.9%). With this method, int8 inference with no predictive degradation is possible for very large models. For more details regarding the method, check out the paper or our blogpost about the integration.

MixedInt8.gif

Note, that you would require a GPU to run mixed-8bit models as the kernels have been compiled for GPUs only. Make sure that you have enough GPU memory to store the quarter (or half if your model weights are in half precision) of the model before using this feature. Below are some notes to help you use this module, or follow the demos on Google colab.

Requirements

  • If you have bitsandbytes<0.37.0, make sure you run on NVIDIA GPUs that support 8-bit tensor cores (Turing, Ampere or newer architectures - e.g. T4, RTX20s RTX30s, A40-A100). For bitsandbytes>=0.37.0, all GPUs should be supported.
  • Install the correct version of bitsandbytes by running: pip install bitsandbytes>=0.31.5
  • Install accelerate pip install accelerate>=0.12.0

Running mixed-Int8 models - single GPU setup

After installing the required libraries, the way to load your mixed 8-bit model is as follows:

from transformers import AutoModelForCausalLM

model_name = "bigscience/bloom-2b5"
model_8bit = AutoModelForCausalLM.from_pretrained(model_name, device_map="auto", load_in_8bit=True)

For text generation, we recommend:

  • using the model’s generate() method instead of the pipeline() function. Although inference is possible with the pipeline() function, it is not optimized for mixed-8bit models, and will be slower than using the generate() method. Moreover, some sampling strategies are like nucleaus sampling are not supported by the pipeline() function for mixed-8bit models.
  • placing all inputs on the same device as the model.

Here is a simple example:

from transformers import AutoModelForCausalLM, AutoTokenizer

model_name = "bigscience/bloom-2b5"
tokenizer = AutoTokenizer.from_pretrained(model_name)
model_8bit = AutoModelForCausalLM.from_pretrained(model_name, device_map="auto", load_in_8bit=True)

prompt = "Hello, my llama is cute"
inputs = tokenizer(prompt, return_tensors="pt").to("cuda")
generated_ids = model.generate(**inputs)
outputs = tokenizer.batch_decode(generated_ids, skip_special_tokens=True)

Running mixed-int8 models - multi GPU setup

The way to load your mixed 8-bit model in multiple GPUs is as follows (same command as single GPU setup):

model_name = "bigscience/bloom-2b5"
model_8bit = AutoModelForCausalLM.from_pretrained(model_name, device_map="auto", load_in_8bit=True)

But you can control the GPU RAM you want to allocate on each GPU using accelerate. Use the max_memory argument as follows:

max_memory_mapping = {0: "1GB", 1: "2GB"}
model_name = "bigscience/bloom-3b"
model_8bit = AutoModelForCausalLM.from_pretrained(
    model_name, device_map="auto", load_in_8bit=True, max_memory=max_memory_mapping
)

In this example, the first GPU will use 1GB of memory and the second 2GB.

Colab demos

With this method you can infer on models that were not possible to infer on a Google Colab before. Check out the demo for running T5-11b (42GB in fp32)! Using 8-bit quantization on Google Colab:

Open In Colab: T5-11b demo

Or this demo for BLOOM-3B:

Open In Colab: BLOOM-3b demo