File size: 5,049 Bytes
476455e | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 | #!/bin/bash
#
# Run a test against a SageMaker notebook
# Only runs within the SDK's CI/CD environment
function CreateLifeCycleConfig ()
{
echo "Creating life cycle config...."
LIFECYCLE_CONFIG_NAME=$1
LIFECYCLE_CONFIG_CONTENT=$2
aws sagemaker create-notebook-instance-lifecycle-config --notebook-instance-lifecycle-config-name "$LIFECYCLE_CONFIG_NAME" --on-create Content="$LIFECYCLE_CONFIG_CONTENT"
}
function DeleteLifeCycleConfig ()
{
echo "Deleting the existing life cycle config...."
LIFECYCLE_CONFIG_NAME=$1
aws sagemaker delete-notebook-instance-lifecycle-config --notebook-instance-lifecycle-config-name "$LIFECYCLE_CONFIG_NAME"
}
function CreateLifeCycleConfigContent ()
{
ACCOUNT_ID=$1
COMMIT_ID=$2
TARBALL_DIRECTORY=/tmp/sdk-tarballs
LIFECYCLE_CONFIG_1=$(cat << 'EOF'
#!/bin/bash
set -e
set -x
mkdir "$HOME/.dlami"
touch "$HOME/.dlami/dlami_build_in_progress"
TARBALL_DIRECTORY=/tmp/sdk-tarballs
mkdir -p "$TARBALL_DIRECTORY"
EOF
)
LIFECYCLE_CONFIG_2=$(cat << EOF
aws s3 --region us-west-2 cp "s3://sagemaker-python-sdk-$ACCOUNT_ID/notebook_test/sagemaker-$COMMIT_ID.tar.gz" "$TARBALL_DIRECTORY/sagemaker.tar.gz"
EOF
)
LIFECYCLE_CONFIG_3=$(cat << 'EOF'
# Include "base" separately since it's not a subdirectory.
for env in base /home/ec2-user/anaconda3/envs/*; do
echo "Updating SageMaker vended software in $env from pre-release SDKs..."
sudo -u ec2-user -E sh -c 'source /home/ec2-user/anaconda3/bin/activate "$env"'
echo "Updating SageMaker Python SDK..."
pip install "$TARBALL_DIRECTORY/sagemaker.tar.gz"
sudo -u ec2-user -E sh -c 'source /home/ec2-user/anaconda3/bin/deactivate'
echo "Update of $env is complete."
done
sudo rm -rf "$MODELS_SOURCE_DIRECTORY"
sudo rm -rf "$TARBALL_DIRECTORY"
rm -rf "$HOME/.dlami"
EOF
)
LIFECYCLE_CONFIG_CONTENT=$((echo "$LIFECYCLE_CONFIG_1$LIFECYCLE_CONFIG_2$LIFECYCLE_CONFIG_3"|| echo "")| base64)
echo "$LIFECYCLE_CONFIG_CONTENT"
}
set -euo pipefail
# git doesn't work in codepipeline, use CODEBUILD_RESOLVED_SOURCE_VERSION to get commit id
codebuild_initiator="${CODEBUILD_INITIATOR:-0}"
if [ "${codebuild_initiator:0:12}" == "codepipeline" ]; then
COMMIT_ID="${CODEBUILD_RESOLVED_SOURCE_VERSION}"
else
COMMIT_ID=$(git rev-parse --short HEAD)
fi
ACCOUNT_ID=$(aws sts get-caller-identity --query Account --output text)
LIFECYCLE_CONFIG_NAME="install-python-sdk-$COMMIT_ID"
python setup.py sdist
aws s3 --region us-west-2 cp ./dist/sagemaker-*.tar.gz s3://sagemaker-python-sdk-$ACCOUNT_ID/notebook_test/sagemaker-$COMMIT_ID.tar.gz
aws s3 cp s3://sagemaker-python-sdk-cli-$ACCOUNT_ID/mead-nb-test.tar.gz mead-nb-test.tar.gz
tar -xzf mead-nb-test.tar.gz
LIFECYCLE_CONFIG_CONTENT=$(CreateLifeCycleConfigContent "$ACCOUNT_ID" "$COMMIT_ID" )
if !(CreateLifeCycleConfig "$LIFECYCLE_CONFIG_NAME" "$LIFECYCLE_CONFIG_CONTENT") ; then
(DeleteLifeCycleConfig "$LIFECYCLE_CONFIG_NAME")
(CreateLifeCycleConfig "$LIFECYCLE_CONFIG_NAME" "$LIFECYCLE_CONFIG_CONTENT")
fi
if [ -d amazon-sagemaker-examples ]; then rm -Rf amazon-sagemaker-examples; fi
git clone --depth 1 https://github.com/aws/amazon-sagemaker-examples.git
export JAVA_HOME=$(get-java-home)
echo "set JAVA_HOME=$JAVA_HOME"
export SAGEMAKER_ROLE_ARN=$(aws iam list-roles --output text --query "Roles[?RoleName == 'SageMakerRole'].Arn")
echo "set SAGEMAKER_ROLE_ARN=$SAGEMAKER_ROLE_ARN"
./runtime/bin/mead-run-nb-test \
--instance-type ml.c4.8xlarge \
--region us-west-2 \
--lifecycle-config-name $LIFECYCLE_CONFIG_NAME \
--notebook-instance-role-arn $SAGEMAKER_ROLE_ARN \
./amazon-sagemaker-examples/sagemaker_processing/spark_distributed_data_processing/sagemaker-spark-processing.ipynb \
./amazon-sagemaker-examples/advanced_functionality/kmeans_bring_your_own_model/kmeans_bring_your_own_model.ipynb \
./amazon-sagemaker-examples/advanced_functionality/tensorflow_iris_byom/tensorflow_BYOM_iris.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/1P_kmeans_highlevel/kmeans_mnist.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/1P_kmeans_lowlevel/kmeans_mnist_lowlevel.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/mxnet_gluon_sentiment/mxnet_sentiment_analysis_with_gluon.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/mxnet_onnx_export/mxnet_onnx_export.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/scikit_learn_randomforest/Sklearn_on_SageMaker_end2end.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/tensorflow_moving_from_framework_mode_to_script_mode/tensorflow_moving_from_framework_mode_to_script_mode.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/tensorflow_script_mode_pipe_mode/tensorflow_script_mode_pipe_mode.ipynb \
./amazon-sagemaker-examples/sagemaker-python-sdk/tensorflow_serving_using_elastic_inference_with_your_own_model/tensorflow_serving_pretrained_model_elastic_inference.ipynb \
./amazon-sagemaker-examples/sagemaker-pipelines/tabular/abalone_build_train_deploy/sagemaker-pipelines-preprocess-train-evaluate-batch-transform.ipynb
(DeleteLifeCycleConfig "$LIFECYCLE_CONFIG_NAME")
|