Release 2.48.0 corresponding to NGC container 24.07
Triton Inference Server
The Triton Inference Server provides a cloud inferencing solution optimized for both CPUs and GPUs. The server provides an inference service via an HTTP or GRPC endpoint, allowing remote clients to request inferencing for any model being managed by the server. For edge deployments, Triton Server is also available as a shared library with an API that allows the full functionality of the server to be included directly in an application.
New Features and Improvements
-
OpenAI-compatible embeddings and Hugging Face TEI re-ranker API-compatible rankings can now be profiled via GenAI-Perf.
-
GenAI-Perf can now receive multiple user-specified prompts via --input-file.
-
The request-rate for async requests have been updated in the OpenAI and HTTP clients to send requests at exactly that rate. Users submitting more requests than their models can handle can see increased latency.
- The stabilization metric for Perf Analyzer has been updated due to these changes, so if latency does not stabilize for async models, a warning will be printed but Perf Analyzer will still complete.
-
Perf Analyzer will not validate any user-supplied inputs and outputs, returning an error if the model does not contain them.
-
Triton now supports tracing custom activities in the backend. For more information please refer to the documentation.
-
Enhanced Failure Count Metrics to reflect failure reason of inference request.
Known Issues
-
When using Python models in decoupled mode, users need to ensure that the ResponseSender goes out of scope or is properly cleaned up before unloading the model to guarantee that the unloading process executes correctly.
-
Triton TensorRT-LLM Backend container image uses TensorRT-LLM version 0.11.0 and built out of nvcr.io/nvidia/tritonserver:24.05-py3-min. Please refer to the Triton TRT-LLM Container Support Matrix section below for more details.
-
The Triton Inference Server with vLLM backend, when using explicit model control mode, does not support running vLLM models with the default "distributed_executor_backend" and tensor parallelism sizes greater than 1. Attempting to load a vLLM model in explicit mode with tensor parallelism>1 will result in failure at
initialize
step:could not acquire lock for <_io.BufferedWriter name='<stdout>'> at interpreter shutdown, possibly due to daemon threads. Please specify "distributed_executor_backend":"ray" in the model.json when deploying vllm models with tensor parallelism > 1
. -
When loading models with file override, multiple model configuration files are not supported. Users must provide the model configuration by setting parameter "config" : "" instead of custom configuration file in the following format: "file:configs/.pbtxt" : "".
-
Perf Analyzer no longer supports --trace-file option.
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TensorRT-LLM backend provides limited support of Triton extensions and features.
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The TensorRT-LLM backend may core dump on server shutdown. This impacts server teardown only and will not impact inferencing.
-
The Java CAPI is known to have intermittent segfaults.
-
Restart support was temporarily removed for Python models.
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Some systems which implement malloc() may not release memory back to the operating system right away causing a false memory leak. This can be mitigated by using a different malloc implementation. Tcmalloc and jemalloc are installed in the Triton container and can be used by specifying the library in LD_PRELOAD. NVIDIA recommends experimenting with both tcmalloc and jemalloc to determine which one works better for your use case.
-
Auto-complete may cause an increase in server start time. To avoid a start time increase, users can provide the full model configuration and launch the server with --disable-auto-complete-config.
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Auto-complete does not support PyTorch models due to lack of metadata in the model. It can only verify that the number of inputs and the input names matches what is specified in the model configuration. There is no model metadata about the number of outputs and datatypes. Related PyTorch bug: https://github.com/pytorch/pytorch/issues/38273
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Triton Client PIP wheels for ARM SBSA are not available from PyPI and pip will install an incorrect Jetson version of Triton Client library for Arm SBSA. The correct client wheel file can be pulled directly from the Arm SBSA SDK image and manually installed.
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Traced models in PyTorch seem to create overflows when int8 tensor values are transformed to int32 on the GPU. Refer to pytorch/pytorch#66930 for more information.
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Triton cannot retrieve GPU metrics with MIG-enabled GPU devices.
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Triton metrics might not work if the host machine is running a separate DCGM agent on bare-metal or in a container.
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When cloud storage (AWS, GCS, AZURE) is used as a model repository and a model has multiple versions, Triton creates an extra local copy of the cloud model’s folder in the temporary directory, which is deleted upon server’s shutdown.
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Python backend support for Windows is limited and does not currently support the following features:
- GPU tensors
- CPU and GPU-related metrics
- Custom execution environments
- The model load/unload APIs
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Starting in 24.06, if you use Triton's iGPU container you might encounter this error message when loading TensorRT models built with the 24.06 TensorRT iGPU container: “Serialization (Serialization assertion stdVersionRead == serializationVersion failed.Version tag does not match. Note: Current Version: 236, Serialized Engine Version: 237)”. If this happens you can rebuild your iGPU models with the 24.04 TensorRT iGPU container and then run them in the Triton 24.06 iGPU container.
Client Libraries and Examples
Ubuntu 22.04 builds of the client libraries and examples are included in this release in the attached v2.48.0_ubuntu22.04.clients.tar.gz
file. The SDK is also available for as an Ubuntu 22.04 based NGC Container. The SDK container includes the client libraries and examples, Performance Analyzer and Model Analyzer. Some components are also available in the tritonclient pip package. See Getting the Client Libraries for more information on each of these options.
For Windows, the client libraries and some examples are available in the attached tritonserver2.48.0-sdk-win.zip
file.
Windows Support
A beta release of Triton for Windows is provided in the attached file:tritonserver2.48.0-win.zip
. This is a beta release so functionality is limited and performance is not optimized. Additional features and improved performance will be provided in future releases. Specifically in this release:
-
HTTP/REST and GRPC endpoints are supported.
-
ONNX models are supported by the ONNX Runtime backend. The ONNX Runtime version is
1.18.1
. The CPU, CUDA, and TensorRT execution providers are supported. The OpenVINO execution provider is not supported. -
OpenVINO models are supported. The OpenVINO version is
2024.0.0
. -
Prometheus metrics endpoint is not supported.
-
System and CUDA shared memory are not supported.
Known Issues
- In our internal testing, we observed large latency in retrieving inference results from HTTP client. We recommend using gRPC to circumvent this issue.
To use the Windows version of Triton, you must install all the necessary dependencies on your Windows system. These dependencies are available in the Dockerfile.win10.min. The Dockerfile includes the following CUDA-related components:
-
Python
3.10.11
-
CUDA
12.5.1
-
cuDNN
9.2.1.18
-
TensorRT
10.2.0.19
Jetson iGPU Support
A release of Triton for IGX is provided in the attached tar file: tritonserver2.48.0-igpu.tgz
.
- This release supports TensorFlow
2.16.1
, TensorRT8.6.2.3
, Onnx Runtime1.18.0
, PyTorch2.4.0a0+3bcc3cd
, Python3.10
and as well as ensembles. - ONNX Runtime backend does not support the OpenVINO and TensorRT execution providers. The CUDA execution provider is in Beta.
- System shared memory is supported on Jetson. CUDA shared memory is not supported.
- GPU metrics, GCS storage, S3 storage and Azure storage are not supported.
The tar file contains the Triton server executable and shared libraries and also the C++ and Python client libraries and examples. For more information on how to install and use Triton on JetPack refer to jetson.md
.
The wheel for the Python client library is present in the tar file and can be installed by running the following command:
python3 -m pip install --upgrade clients/python/tritonclient-2.48.0-py3-none-manylinux2014_aarch64.whl[all]
RHEL Compatibility Support
A release of Triton for RHEL 8 compatibility is provided as a zip file: tritonserver2.48.0-rhel8-compat.zip
.
- This release was compiled with AlmaLinux 8.9 to be compatible with RHEL 8 and above and is considered Early Access [EA]. See the included
README.md
for complete details about installation, verification, and support. - This release supports ONNXRuntime
1.18.1
as well as ensembles. - GCS storage, S3 storage are not supported; however, Azure storage is supported
The zip file contains the Tritonserver executable and shared libraries to run the server. Triton server clients and examples are not included at this time.
Triton TRT-LLM Container Support Matrix
The Triton TensorRT-LLM container is built from the 24.05 image nvcr.io/nvidia/tritonserver:24.05-py3-min
. Please refer to the support matrix for all dependency versions related to 24.05. However, the packages listed below have different versions than those specified in the support matrix.
Dependency | Version |
---|---|
TensorRT-LLM | 0.11.0 |
TensorRT | 10.1.0.27 |