Categories
Misc

NVIDIA AI Platform Delivers Big Gains for Large Language Models

NVIDIA AI platform makes LLMs accessible. Announcing new parallelism techniques and a hyperparameter tool to speed-up training by 30% on any number of GPUs.

As the size and complexity of large language models (LLMs) continue to grow, NVIDIA is today announcing updates to the NeMo Megatron framework that provide training speed-ups of up to 30%.

These updates–which include two trailblazing techniques and a hyperparameter tool to  optimize and scale training of LLMs on any number of GPUs–offer new capabilities to train and deploy models using the NVIDIA AI platform. 

BLOOM, the world’s largest open-science, open-access multilingual language model, with 176 billion parameters, was recently trained on the NVIDIA AI platform, enabling text generation in 46 languages and 13 programming languages. The NVIDIA AI platform has also powered one of the most powerful transformer language models, with 530 billion parameters, Megatron-Turing NLG model (MT-NLG).

Recent advances in LLMs

LLMs are one of today’s most important advanced technologies, involving up to trillions of parameters that learn from text. Developing them, however, is an expensive, time-consuming process that demands deep technical expertise, distributed infrastructure, and a full-stack approach.

Yet their benefit is enormous in advancing real-time content generation, text summarization, customer service chatbots, and question-answering for conversational AI interfaces. 

To advance LLMs, the AI community is continuing to innovate on tools such as Microsoft DeepSpeed, Colossal-AI, Hugging Face BigScience, and Fairscale–which are powered by the NVIDIA AI platform, involving Megatron-LM, Apex, and other GPU-accelerated libraries.

These new optimizations to the NVIDIA AI platform help solve many of the existing pain points across the entire stack. NVIDIA looks forward to working with the AI community to continue making the power of LLMs accessible to everyone. 

Build LLMs faster

The latest updates to NeMo Megatron offer 30% speed-ups for training GPT-3 models ranging in size from 22 billion to 1 trillion parameters. Training can now be done on 175 billion-parameter models using 1,024 NVIDIA A100 GPUs in just 24 days–reducing time to results by 10 days, or some 250,000 hours of GPU computing, prior to these new releases.

NeMo Megatron is a quick, efficient, and easy-to-use end-to-end containerized framework for collecting data, training large-scale models, evaluating models against industry-standard benchmarks, and for inference with state-of-the-art latency and throughput performance.

It makes LLM training and inference easy and reproducible on a wide range of GPU cluster configurations. Currently, these capabilities are available to early access customers to run on NVIDIA DGX SuperPODs, and NVIDIA DGX Foundry as well as in Microsoft Azure cloud. Support for other cloud platforms will be available soon. 

You can try the features on NVIDIA LaunchPad, a free program that provides short-term access to a catalog of hands-on labs on NVIDIA-accelerated infrastructure. 

Two new techniques to speed-up LLM training

Two new techniques included in the updates that optimize and scale the training of LLMs are sequence parallelism (SP) and selective activation recomputation (SAR).

Sequence parallelism expands tensor-level model parallelism by noticing that the regions of a transformer layer that haven’t previously been parallelized are independent along the sequence dimension. 

Splitting these layers along the sequence dimension enables distribution of the compute and, most importantly, the activation memory for these regions across the tensor parallel devices. Since the activations are distributed, more activations can be saved for the backward pass instead of recomputing them.

Graphic showing that sequence parallelism is used in LayerNorm and Dropout layers, while tensor parallelism is used in attention and FFN layers.
Figure 1. Parallelism modes within a transformer layer.

Selective activation recomputation improves cases where memory constraints force the recomputation of some, but not all, of the activations, by noticing that different activations require different numbers of operations to recompute. 

Instead of checkpointing and recomputing full transformer layers, it’s possible to checkpoint and recompute only parts of each transformer layer that take up a considerable amount of memory but aren’t computationally expensive to recompute. 

For more information, see Reducing Activation Recomputation in Large Transformer Models.

Within the attention layer, the activations for the QKT matrix multiply, softmax, softmax dropout, and attention over V operations are recomputed.
Figure 2. Self-attention block. The red dashed line shows the regions to which selective activation recomputation is applied. 
Sequence parallelism and SAR reduce the memory by ~5x
Figure 3. Amount of activation memory required in backward pass thanks to SP and SAR. As model size increases, both SP and SAR have similar memory savings, reducing the memory required by ~5x.
Graph showing that sequence parallelism and SAR together reduce the computation overhead to just 2% of the baseline.
Figure 4. Amount of computation overhead for full activation recomputation, and SP plus SAR. Bars represent per-layer breakdown of forward, backward, and recompute times. Baseline is the case with no recomputation and no sequence parallelism. These techniques are effective at reducing the overhead incurred when all activations are recomputed instead of saved. For the largest models, overhead drops from 36% to just 2%. 

Accessing the power of LLMs also requires a highly optimized inference strategy. Users can easily use the trained models for inference, and optimize for different use cases using p-tuning and prompt tuning capabilities. 

These capabilities are parameter-efficient alternatives to fine-tuning and allow LLMs to adapt to new use cases without the heavy-handed approach of fine-tuning the full pretrained models. In this technique, the parameters of the original model are not altered. As such, catastrophic ‘forgetting’ issues associated with fine-tuning models are avoided.

For more information, see Adapting P-Tuning to Solve Non-English Downstream Tasks

New hyperparameter tool for training and inference

Finding model configurations for LLMs across distributed infrastructure is a time consuming process. NeMo Megatron introduces a hyperparameter tool to automatically find optimal training and inference configurations, with no code changes required. This enables LLMs to be trained to convergence for inference from day one, eliminating time wasted searching for efficient model configurations.

It uses heuristics and empirical grid search across distinct parameters to find configurations with best throughputs: data parallelism, tensor parallelism, pipeline parallelism, sequence parallelism, micro batch size, and number of activation checkpointing layers (including selective activation recomputation).

Using the hyperparameter tool and NVIDIA testing on containers on NGC, we arrived at the optimal training configuration for a 175B GPT-3 model in under 24 hours (see Figure 5). When compared with a common configuration that uses full activation recomputation, we achieve a 20%-30% throughput speed-up. Using the latest techniques, we achieve an additional 10%-20% speed-up in throughput for models with more than 20B parameters. 

Graph showing 22.06 container with sequence parallelism and selective activation recomputation delivering 30% speed-up compared to the 22.05 containers with full recompute or HP tool capabilities.
Figure 5. Results of the HP tool on several containers indicating speed-up with sequence parallelism and selective activation recomputation, wherein each node is a NVIDIA DGX A100.

The hyperparameter tool also allows finding model configurations that achieve highest throughput or lowest latency during inference. Latency and throughput constraints can be provided to serve the model, and the tool will recommend suitable configurations.

HP tools find optimal model configurations that deliver high throughput, and low latency for inferencing. Several configurations are shown in the graph with varying throughput and latency tradeoffs for GPT-3: 175B, 40B, and 20B parameter models.
Figure 6. HP tool results for inference, showing the throughput per GPU and the latency of different configurations. Optimal configurations include high throughput and low latency.

To explore the latest updates to the NVIDIA AI platform for LLMs, apply for early access to NeMo Megatron. Enterprises can also try NeMo Megatron on NVIDIA LaunchPad, available at no charge.

Acknowledgements

We would like to thank Vijay Korthikanti, Jared Casper, Virginia Adams, and Yu Yao for their contributions to this post.

Leave a Reply

Your email address will not be published. Required fields are marked *