Packaging Olive artifacts#
What is Olive Packaging#
Olive will output multiple candidate models based on metrics priorities. It also can package output artifacts when the user requires. Olive packaging can be used in different scenarios. There are 4 packaging types: Zipfile, AzureMLModels, AzureMLData, AzureMLDeployment and Dockerfile.
Zipfile#
Zipfile packaging will generate a ZIP file which includes 3 folders: CandidateModels, SampleCode and ONNXRuntimePackages, and a models_rank.json file in the output_dir folder (from Engine Configuration):
CandidateModels: top ranked output model setModel file
Olive Pass run history configurations for candidate model
Inference settings (
onnxmodel only)
ONNXRuntimePackages: ONNXRuntime package files with the same version that were used by Olive Engine in this workflow run.models_rank.json: A JSON file containing a list that ranks all output models based on specific metrics across all accelerators.
CandidateModels#
CandidateModels includes k folders where k is the number of ranked output models, with name BestCandidateModel_1, BestCandidateModel_2, … and BestCandidateModel_k. The order is ranked by metrics priorities, starting from 1. e.g., if you have 3 metrics metric_1, metric_2 and metric_3 with priority 1, 2 and 3. The output models will be sorted firstly by metric_1. If the value of metric_1 of 2 output models are same, they will be sorted by metric_2, and followed by next lower priority metric.
Each BestCandidateModel folder will include model file/folder. The folder also includes a json file which includes the Olive Pass run history configurations since input model, a json file with performance metrics and a json file for inference settings for the candidate model if the candidate model is an ONNX model.
Models rank JSON file#
A file that contains a JSON list for ranked model info across all accelerators, e.g.:
[
{
"rank": 1,
"model_config": {
"type": "ONNXModel",
"config": {
"model_path": "path/model.onnx",
"inference_settings": {
"execution_provider": [
"CPUExecutionProvider"
],
"provider_options": [
{}
],
"io_bind": false,
"session_options": {
"execution_mode": 1,
"graph_optimization_level": 99,
"inter_op_num_threads": 1,
"intra_op_num_threads": 14
}
},
"use_ort_extensions": false,
"model_attributes": {"<model_attributes_key>": "<model_attributes_value>"},
}
},
"metrics": {
"accuracy-accuracy": {
"value": 0.8602941176470589,
"priority": 1,
"higher_is_better": true
},
"latency-avg": {
"value": 36.2313,
"priority": 2,
"higher_is_better": false
},
}
},
{"rank": 2, "model_config": "<model_config>", "metrics": "<metrics>"},
{"rank": 3, "model_config": "<model_config>", "metrics": "<metrics>"}
]
AzureMLModels#
AzureMLModels packaging will register the output models to your Azure Machine Learning workspace. The asset name will be set as <packaging_config_name>_<accelerator_spec>_<model_rank>. The order is ranked by metrics priorities, starting from 1. For instance, if the output model is ONNX model and the packaging config is:
{
"type": "AzureMLModels",
"name": "olive_output_model",
"version": "1",
"description": "description"
}
and for CPU, the best execution provider is CPUExecutionProvider, so the first ranked model name registered on AML will be olive_output_model_cpu-cpu_1.
Olive will also upload model configuration file, inference config file, metrics file and model info file to the Azure ML.
AzureMLData#
AzureMLData packaging will upload the output models to your Azure Machine Learning workspace as Data assets. The asset name will be set as <packaging_config_name>_<accelerator_spec>_<model_rank>. The order is ranked by metrics priorities, starting from 1. For instance, if the output model is ONNX model and the packaging config is:
{
"type": "AzureMLData",
"name": "olive_output_model",
"version": "1",
"description": "description"
}
and for CPU, the best execution provider is CPUExecutionProvider, so the first ranked model Data name on AML will be olive_output_model_cpu-cpu_1.
Olive will also upload model configuration file, inference config file, metrics file and model info file to the Azure ML.
AzureMLDeployment#
AzureMLDeployment packaging will package ranked No. 1 model across all output models to Azure ML workspace, and create an endpoint for it if the endpoint doesn’t exist, then deploy the output model to this endpoint.
Dockerfile#
Dockerfile packaging will generate a Dockerfile. You can simple run docker build for this Dockerfile to build a docker image which includes onnxruntime Python package and first ranked output model.
How to package Olive artifacts#
Olive packaging configuration is configured in PackagingConfig in Engine configuration. PackagingConfig can be a single packaging configuration. Alternatively, if you want to apply multiple packaging types, you can also define a list of packaging configurations.
If not specified, Olive will not package artifacts.
PackagingConfigtype [PackagingType]: Olive packaging type. Olive will package different artifacts based ontype.name [str]: ForPackagingType.Zipfiletype, Olive will generate a ZIP file withnameprefix:<name>.zip. ForPackagingType.AzureMLModelsandPackagingType.AzureMLData, Olive will use thisnamefor Azure ML resource. The default value isOutputModels. ForPackagingType.AzureMLDeploymentandPackagingType.Dockerfiletype, Olive will ignore this attribute.config [dict]: The packaging config.Zipfileexport_in_mlflow_format [bool]: Export model in mlflow format. This isfalseby default.
AzureMLModelsexport_in_mlflow_format [bool]: Export model in mlflow format. This isfalseby default.version [int | str]: The version for this model registration. This is1by default.description [str]The description for this model registration. This isNoneby default.
AzureMLDataexport_in_mlflow_format [bool]: Export model in mlflow format. This isfalseby default.version [int | str]: The version for this data asset. This is1by default.description [str]The description for this data asset. This isNoneby default.
AzureMLDeploymentmodel_name [str]: The model name when registering your output model to your Azure ML workspace.olive-deployment-modelby defaultmodel_version [int | str]: The model version when registering your output model to your Azure ML workspace. Please note if there is already a model with the same name and the same version in your workspace, this will override your existing registered model.1by default.description [str]The description for this model registration. This isNoneby default.model_package [ModelPackageConfig]: The configurations for model packaging.target_environment [str]: The environment name for the environment created by Olive.olive-target-environmentby default.target_environment_version [str]The environment version for the environment created by Olive. Please note if there is already an environment with the same name and the same version in your workspace, your existing environment version will plus 1. Thistarget_environment_versionwill not be applied for your environment.Noneby default.inferencing_server [InferenceServerConfig]type [str]The targeted inferencing server type.AzureMLOnlineorAzureMLBatch.code_folder [str]The folder path to your scoring script.scoring_script [str]The scoring script name.
base_environment_id [str]The base environment id that will be used for Azure ML packaging. The format isazureml:<base-environment-name>:<base-environment-version>.environment_variables [dict]Env vars that are required for the package to run, but not necessarily known at Environment creation time.Noneby default.
deployment_config [DeploymentConfig]The deployment configuration.endpoint_name [str]The endpoint name for the deployment. If the endpoint doesn’t exist, Olive will create one endpoint with this name.olive-default-endpointby default.deployment_name [str]The name of the deployment.olive-default-deploymentby default.instance_type [str]Azure compute sku. ManagedOnlineDeployment only.Noneby default.compute [str]Compute target for batch inference operation. BatchDeployment only.Noneby default.instance_count [str]Number of instances the interfering will run on.1by default.mini_batch_size [str]Size of the mini-batch passed to each batch invocation.10by default.extra_config [dict]Extra configurations for deployment.Noneby default.
Dockerfilerequirements_file [str]:requirements.txtfile path. The packages will be installed to docker image.
include_runtime_packages [bool]: Whether or not to include runtime packages (like onnxruntime) in zip file. Defaults to True
You can add different types PackagingConfig as a list to Engine configurations. e.g.:
"engine": {
"search_strategy": {
"execution_order": "joint",
"sampler": "tpe",
"max_samples": 5,
"seed": 0
},
"evaluator": "common_evaluator",
"host": "local_system",
"target": "local_system",
"packaging_config": [
{
"type": "Zipfile",
"name": "OutputModels"
},
{
"type": "AzureMLModels",
"name": "OutputModels"
},
{
"type": "AzureMLData",
"name": "OutputModels"
},
{
"type": "AzureMLDeployment",
"model_package": {
"inferencing_server": {
"type": "AzureMLOnline",
"code_folder": "code",
"scoring_script": "score.py"
},
"base_environment_id": "azureml:olive-aml-packaging:1"
}
}
]
"cache_dir": "cache"
}
Packaged files#
Inference config file#
The inference config file is a json file including execution_provider and session_options. e.g.:
{
"execution_provider": [
[
"CPUExecutionProvider",
{}
]
],
"session_options": {
"execution_mode": 1,
"graph_optimization_level": 99,
"extra_session_config": null,
"inter_op_num_threads": 1,
"intra_op_num_threads": 64
}
}
Model configuration file#
The model configuration file is a json file including the history of applied Passes history to the output model. e.g.:
{
"53fc6781998a4624b61959bb064622ce": null,
"0_OnnxConversion-53fc6781998a4624b61959bb064622ce-7a320d6d630bced3548f242238392730": {
//...
},
"1_OrtTransformersOptimization-0-c499e39e42693aaab050820afd31e0c3-cpu-cpu": {
//...
},
"2_OnnxQuantization-1-1431c563dcfda9c9c3bf26c5d61ef58e": {
//...
},
"3_OrtSessionParamsTuning-2-a843d77ae4964c04e145b83567fb5b05-cpu-cpu": {
//...
}
}
Metrics file#
The metrics file is a json file including input model metrics and output model metrics.