The SBC can leverage Graphics Processing Units (GPUs) for increased transcoding capacity of T-SBC instances deployed in OpenStack cloud environments (Newton and above). GPU acceleration significantly increases transcoding capacity of virtual instances, which otherwise would have a limited scale. In many cases a GPU-accelerated solution performs better than specialized DSP hardware-based solutions. GPU-based solutions have the following benefits:
- GPUs are ubiquitous, they are being offered as Commercial Off-the-Shelf (COTS) solutions by major hardware and cloud vendors.
- GPU-based solutions leverage the steep rise in computing power delivered by increased industry investments in GPU technology.
- GPUs have diverse applications. Unlike specialized DSP hardware, GPU devices can be reused for other applications.
- GPUs can be leveraged by cloud-based virtual instances.
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GPU Transcoding
Prior to SBC 8.0 release, for GPU-based solutions, the
could not offer more than one transcodable codec in the outgoing offer for following reasons:
- Unlike CPU-based DSP that supports all the codecs, the GPU-based DSP supports specific codecs.
- For GPU, if the configured codecs do not reside on the same DSP process, they cannot be used with a single DSP allocation.
- Unaware of the cluster capabilities, the signaling SBC removes the codecs from the outgoing offer, which cannot be supported by the reserved DSP.
The
is enhanced to offer all the configured transcodable codecs that the
supports, in the outgoing offer and address the above GPU gaps.
The configured codecs include:
- Codecs configured for transcoding
- Codecs supported by same T-SBC instance that supports codecs received in the offer.
Supported Deployment Scenarios
GPU acceleration is currently supported on SBC SWe T-SBC instances on OpenStack (Newton and above). T-SBC is a component in Distributed SBC architecture that provides transcoding service.
GPU devices are attached to the SBC SWe instances through PCIe pass-through – a single GPU device can be used by only one instance at a time. The process of enabling PCIe pass-through in OpenStack is detailed later in this document. For performance considerations, NUMA locality of devices should be ensured.
Supported GPU Devices
The following NVIDIA GPU devices are supported.
GPU Device Name | PCI Vendor ID | PCI Device ID | Releases supported | Remarks |
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Tesla V100 PCIe 16GB | 10DE | 1DB4 | 7.0.0 onwards | recommended |
Tesla V100 SXM2 16GB | 10DE | 1DB1 | 7.2.0 onwards |
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Supported Codecs
- AMR-NB
- G729
- G722
- AMR-WB
- OPUS
- EVRC
- EVRCB
In addition, G.711 is supported for GPU instances, but only when G.711 is being transcoded to a non-G.711 codec. You cannot currently configure transcoding from G.711 to G.711 on GPU instances. The coding rates and packetization times for the supported codecs are shown in the tables on the Audio Codecs page.
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GPU_T-SBC_Codec_Restriction | GPU_T-SBC_Codec_Restriction | Feature Comparison of CPU and GPU T-SBC Solutions
While GPU-based T-SBCs offer marked increase in scale when compared to CPU-based T-SBCs, there are some caveats with the GPU solution that are highlighted in the following table.
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1 | Feature comparison of CPU and GPU T-SBC solution |
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Provisioning | Codecs are not provisioned during instantiation. | Codecs and their relative percentages are provisioned during instantiation using fields in the Heat template. | Inband Tone Detection | Yes | Yes (except in G722 - AMRWB transcoding scenario)
| RFC2833 | Yes | Yes | Fax Tone Detection | Yes | NoYes | LRBT(TPAD) | Yes | NoYes | G711 Silence SupressionSuppression | Yes | Yes |
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