Troubleshoot automated ML experiments in Python
APPLIES TO: Python SDK azureml v1
In this guide, learn how to identify and resolve known issues in your automated machine learning experiments with the Azure Machine Learning SDK.
Version dependencies
AutoML
dependencies to newer package versions break compatibility. After SDK version 1.13.0, models aren't loaded in older SDKs due to incompatibility between the older versions pinned in previous AutoML
packages, and the newer versions pinned today.
Expect errors such as:
Module not found errors such as,
No module named 'sklearn.decomposition._truncated_svd'
Import errors such as,
ImportError: cannot import name 'RollingOriginValidator'
,Attribute errors such as,
AttributeError: 'SimpleImputer' object has no attribute 'add_indicator'
Resolutions depend on your AutoML
SDK training version:
If your
AutoML
SDK training version is greater than 1.13.0, you needpandas == 0.25.1
andscikit-learn==0.22.1
.If there is a version mismatch, upgrade scikit-learn and/or pandas to correct version with the following,
pip install --upgrade pandas==0.25.1 pip install --upgrade scikit-learn==0.22.1
If your
AutoML
SDK training version is less than or equal to 1.12.0, you needpandas == 0.23.4
andsckit-learn==0.20.3
.If there is a version mismatch, downgrade scikit-learn and/or pandas to correct version with the following,
pip install --upgrade pandas==0.23.4 pip install --upgrade scikit-learn==0.20.3
Setup
AutoML
package changes since version 1.0.76 require the previous version to be uninstalled before updating to the new version.
ImportError: cannot import name AutoMLConfig
If you encounter this error after upgrading from an SDK version before v1.0.76 to v1.0.76 or later, resolve the error by running:
pip uninstall azureml-train automl
and thenpip install azureml-train-automl
. The automl_setup.cmd script does this automatically.automl_setup fails
On Windows, run automl_setup from an Anaconda Prompt. Install Miniconda.
Ensure that conda 64-bit version 4.4.10 or later is installed. You can check the bit with the
conda info
command. Theplatform
should bewin-64
for Windows orosx-64
for Mac. To check the version use the commandconda -V
. If you have a previous version installed, you can update it by using the command:conda update conda
. To check 32-bit by runningEnsure that conda is installed.
Linux -
gcc: error trying to exec 'cc1plus'
If the
gcc: error trying to exec 'cc1plus': execvp: No such file or directory
error is encountered, install the GCC build tools for your Linux distribution. For example, on Ubuntu, use the commandsudo apt-get install build-essential
.Pass a new name as the first parameter to automl_setup to create a new conda environment. View existing conda environments using
conda env list
and remove them withconda env remove -n <environmentname>
.
automl_setup_linux.sh fails: If automl_setup_linus.sh fails on Ubuntu Linux with the error:
unable to execute 'gcc': No such file or directory
- Make sure that outbound ports 53 and 80 are enabled. On an Azure virtual machine, you can do this from the Azure portal by selecting the VM and clicking on Networking.
- Run the command:
sudo apt-get update
- Run the command:
sudo apt-get install build-essential --fix-missing
- Run
automl_setup_linux.sh
again
configuration.ipynb fails:
- For local conda, first ensure that
automl_setup
has successfully run. - Ensure that the subscription_id is correct. Find the subscription_id in the Azure portal by selecting All Service and then Subscriptions. The characters "<" and ">" should not be included in the subscription_id value. For example,
subscription_id = "12345678-90ab-1234-5678-1234567890abcd"
has the valid format. - Ensure Contributor or Owner access to the subscription.
- Check that the region is one of the supported regions:
eastus2
,eastus
,westcentralus
,southeastasia
,westeurope
,australiaeast
,westus2
,southcentralus
. - Ensure access to the region using the Azure portal.
- For local conda, first ensure that
workspace.from_config fails:
If the call
ws = Workspace.from_config()
fails:- Ensure that the configuration.ipynb notebook has run successfully.
- If the notebook is being run from a folder that is not under the folder where the
configuration.ipynb
was run, copy the folder aml_config and the file config.json that it contains to the new folder. Workspace.from_config reads the config.json for the notebook folder or its parent folder. - If a new subscription, resource group, workspace, or region, is being used, make sure that you run the
configuration.ipynb
notebook again. Changing config.json directly will only work if the workspace already exists in the specified resource group under the specified subscription. - If you want to change the region, change the workspace, resource group, or subscription.
Workspace.create
will not create or update a workspace if it already exists, even if the region specified is different.
TensorFlow
As of version 1.5.0 of the SDK, automated machine learning does not install TensorFlow models by default. To install TensorFlow and use it with your automated ML experiments, install tensorflow==1.12.0
via CondaDependencies
.
from azureml.core.runconfig import RunConfiguration
from azureml.core.conda_dependencies import CondaDependencies
run_config = RunConfiguration()
run_config.environment.python.conda_dependencies = CondaDependencies.create(conda_packages=['tensorflow==1.12.0'])
Numpy failures
import numpy
fails in Windows: Some Windows environments see an error loading numpy with the latest Python version 3.6.8. If you see this issue, try with Python version 3.6.7.import numpy
fails: Check the TensorFlow version in the automated ml conda environment. Supported versions are < 1.13. Uninstall TensorFlow from the environment if version is >= 1.13.
You can check the version of TensorFlow and uninstall as follows:
- Start a command shell, activate conda environment where automated ml packages are installed.
- Enter
pip freeze
and look fortensorflow
, if found, the version listed should be < 1.13 - If the listed version is not a supported version,
pip uninstall tensorflow
in the command shell and enter y for confirmation.
jwt.exceptions.DecodeError
Exact error message: jwt.exceptions.DecodeError: It is required that you pass in a value for the "algorithms" argument when calling decode()
.
For SDK versions <= 1.17.0, installation might result in an unsupported version of PyJWT. Check that the PyJWT version in the automated ml conda environment is a supported version. That is PyJWT version < 2.0.0.
You may check the version of PyJWT as follows:
Start a command shell and activate conda environment where automated ML packages are installed.
Enter
pip freeze
and look forPyJWT
, if found, the version listed should be < 2.0.0
If the listed version is not a supported version:
Consider upgrading to the latest version of AutoML SDK:
pip install -U azureml-sdk[automl]
If that is not viable, uninstall PyJWT from the environment and install the right version as follows:
pip uninstall PyJWT
in the command shell and entery
for confirmation.- Install using
pip install 'PyJWT<2.0.0'
.
Data access
For automated ML jobs, you need to ensure the file datastore that connects to your AzureFile storage has the appropriate authentication credentials. Otherwise, the following message results. Learn how to update your data access authentication credentials.
Error message:
Could not create a connection to the AzureFileService due to missing credentials. Either an Account Key or SAS token needs to be linked the default workspace blob store.
Data schema
When you try to create a new automated ML experiment via the Edit and submit button in the Azure Machine Learning studio, the data schema for the new experiment must match the schema of the data that was used in the original experiment. Otherwise, an error message similar to the following results. Learn more about how to edit and submit experiments from the studio UI.
Error message non-vision experiments: Schema mismatch error: (an) additional column(s): "Column1: String, Column2: String, Column3: String", (a) missing column(s)
Error message for vision datasets: Schema mismatch error: (an) additional column(s): "dataType: String, dataSubtype: String, dateTime: Date, category: String, subcategory: String, status: String, address: String, latitude: Decimal, longitude: Decimal, source: String, extendedProperties: String", (a) missing column(s): "image_url: Stream, image_details: DataRow, label: List" Vision dataset error(s): Vision dataset should have a target column with name 'label'. Vision dataset should have labelingProjectType tag with value as 'Object Identification (Bounding Box)'.
Databricks
See How to configure an automated ML experiment with Databricks (Azure Machine Learning SDK v1).
Forecasting R2 score is always zero
This issue arises if the training data provided has time series that contains the same value for the last n_cv_splits
+ forecasting_horizon
data points.
If this pattern is expected in your time series, you can switch your primary metric to normalized root mean squared error.
Failed deployment
For versions <= 1.18.0 of the SDK, the base image created for deployment may fail with the following error: ImportError: cannot import name cached_property from werkzeug
.
The following steps can work around the issue:
- Download the model package
- Unzip the package
- Deploy using the unzipped assets
Azure Functions application
Automated ML does not currently support Azure Functions applications.
Sample notebook failures
If a sample notebook fails with an error that property, method, or library does not exist:
Ensure that the correct kernel has been selected in the Jupyter Notebook. The kernel is displayed in the top right of the notebook page. The default is azure_automl. The kernel is saved as part of the notebook. If you switch to a new conda environment, you need to select the new kernel in the notebook.
- For Azure Notebooks, it should be Python 3.6.
- For local conda environments, it should be the conda environment name that you specified in automl_setup.
To ensure the notebook is for the SDK version that you are using,
- Check the SDK version by executing
azureml.core.VERSION
in a Jupyter Notebook cell. - You can download previous version of the sample notebooks from GitHub with these steps:
- Select the
Branch
button - Navigate to the
Tags
tab - Select the version
- Select the
- Check the SDK version by executing
Experiment throttling
If you have over 100 automated ML experiments, this may cause new automated ML experiments to have long run times.
VNet Firewall Setting Download Failure
If you are under virtual networks (VNets), you may run into model download failures when using AutoML NLP. This is because network traffic is blocked from downloading the models and tokenizers from Azure CDN. To unblock this, please allow list the below URLs in the "Application rules" setting of the VNet firewall policy:
aka.ms
https://automlresources-prod.azureedge.net
Please follow the instructions here to configure the firewall settings.
Instructions for configuring workspace under vnet are available here.
Next steps
Learn more about how to train a regression model with Automated machine learning or how to train using Automated machine learning on a remote resource.
Learn more about how and where to deploy a model.