| .. SPDX-License-Identifier: GPL-2.0 |
| |
| ============ |
| Introduction |
| ============ |
| |
| The Linux compute accelerators subsystem is designed to expose compute |
| accelerators in a common way to user-space and provide a common set of |
| functionality. |
| |
| These devices can be either stand-alone ASICs or IP blocks inside an SoC/GPU. |
| Although these devices are typically designed to accelerate |
| Machine-Learning (ML) and/or Deep-Learning (DL) computations, the accel layer |
| is not limited to handling these types of accelerators. |
| |
| Typically, a compute accelerator will belong to one of the following |
| categories: |
| |
| - Edge AI - doing inference at an edge device. It can be an embedded ASIC/FPGA, |
| or an IP inside a SoC (e.g. laptop web camera). These devices |
| are typically configured using registers and can work with or without DMA. |
| |
| - Inference data-center - single/multi user devices in a large server. This |
| type of device can be stand-alone or an IP inside a SoC or a GPU. It will |
| have on-board DRAM (to hold the DL topology), DMA engines and |
| command submission queues (either kernel or user-space queues). |
| It might also have an MMU to manage multiple users and might also enable |
| virtualization (SR-IOV) to support multiple VMs on the same device. In |
| addition, these devices will usually have some tools, such as profiler and |
| debugger. |
| |
| - Training data-center - Similar to Inference data-center cards, but typically |
| have more computational power and memory b/w (e.g. HBM) and will likely have |
| a method of scaling-up/out, i.e. connecting to other training cards inside |
| the server or in other servers, respectively. |
| |
| All these devices typically have different runtime user-space software stacks, |
| that are tailored-made to their h/w. In addition, they will also probably |
| include a compiler to generate programs to their custom-made computational |
| engines. Typically, the common layer in user-space will be the DL frameworks, |
| such as PyTorch and TensorFlow. |
| |
| Sharing code with DRM |
| ===================== |
| |
| Because this type of devices can be an IP inside GPUs or have similar |
| characteristics as those of GPUs, the accel subsystem will use the |
| DRM subsystem's code and functionality. i.e. the accel core code will |
| be part of the DRM subsystem and an accel device will be a new type of DRM |
| device. |
| |
| This will allow us to leverage the extensive DRM code-base and |
| collaborate with DRM developers that have experience with this type of |
| devices. In addition, new features that will be added for the accelerator |
| drivers can be of use to GPU drivers as well. |
| |
| Differentiation from GPUs |
| ========================= |
| |
| Because we want to prevent the extensive user-space graphic software stack |
| from trying to use an accelerator as a GPU, the compute accelerators will be |
| differentiated from GPUs by using a new major number and new device char files. |
| |
| Furthermore, the drivers will be located in a separate place in the kernel |
| tree - drivers/accel/. |
| |
| The accelerator devices will be exposed to the user space with the dedicated |
| 261 major number and will have the following convention: |
| |
| - device char files - /dev/accel/accel\* |
| - sysfs - /sys/class/accel/accel\*/ |
| - debugfs - /sys/kernel/debug/accel/\*/ |
| |
| Getting Started |
| =============== |
| |
| First, read the DRM documentation at Documentation/gpu/index.rst. |
| Not only it will explain how to write a new DRM driver but it will also |
| contain all the information on how to contribute, the Code Of Conduct and |
| what is the coding style/documentation. All of that is the same for the |
| accel subsystem. |
| |
| Second, make sure the kernel is configured with CONFIG_DRM_ACCEL. |
| |
| To expose your device as an accelerator, two changes are needed to |
| be done in your driver (as opposed to a standard DRM driver): |
| |
| - Add the DRIVER_COMPUTE_ACCEL feature flag in your drm_driver's |
| driver_features field. It is important to note that this driver feature is |
| mutually exclusive with DRIVER_RENDER and DRIVER_MODESET. Devices that want |
| to expose both graphics and compute device char files should be handled by |
| two drivers that are connected using the auxiliary bus framework. |
| |
| - Change the open callback in your driver fops structure to accel_open(). |
| Alternatively, your driver can use DEFINE_DRM_ACCEL_FOPS macro to easily |
| set the correct function operations pointers structure. |
| |
| External References |
| =================== |
| |
| email threads |
| ------------- |
| |
| * `Initial discussion on the New subsystem for acceleration devices <https://lkml.org/lkml/2022/7/31/83>`_ - Oded Gabbay (2022) |
| * `patch-set to add the new subsystem <https://lkml.org/lkml/2022/10/22/544>`_ - Oded Gabbay (2022) |
| |
| Conference talks |
| ---------------- |
| |
| * `LPC 2022 Accelerators BOF outcomes summary <https://airlied.blogspot.com/2022/09/accelerators-bof-outcomes-summary.html>`_ - Dave Airlie (2022) |