@@ -103,6 +103,12 @@ during the backward computation, the activation gradients are short lived while
gradients are long lived. CMO transfers activation checkpoints and parameter gradients
to contiguous buffers preventing memory fragmentation.
## ZeRO-Offload
ZeRO-Offload pushes the boundary of the maximum model size that can be trained efficiently using minimal GPU resources, by exploiting computational and memory resources on both GPUs and their host CPUs. It allows training up to 13-billion-parameter models on a single NVIDIA V100 GPU, 10x larger than the state-of-the-art, while retaining high training throughput of over 30 teraflops per GPU.
For more details see the [ZeRO-Offload release blog](https://www.microsoft.com/en-us/research/?p=689370&secret=iSlooB), and [tutorial](/tutorials/zero-offload/) on integration with DeepSpeed.
We introduce a new technology called ZeRO-Offload to enable **10X bigger model training on a single GPU**. ZeRO-Offload extends ZeRO-2 to leverage both CPU and GPU memory for training large models. Using a machine with **a single GPU**, our users now can run **models of up to 13 billion parameters** without running out of memory, 10x bigger than the existing approaches, while obtaining competitive throughput. This feature democratizes multi-billion-parameter model training and opens the window for many deep learning practitioners to explore bigger and better models.
* For more information on ZeRO-Offload, see our [press release]({{ site.press_release_v3 }} ).
* For more information on how to use ZeRO-Offload, see our [ZeRO-Offload tutorial](https://www.deepspeed.ai/tutorials/zero-offload/).
* The source code for ZeRO-Offload can be found in the [DeepSpeed repo](https://github.com/microsoft/deepspeed).