| | #!/bin/bash |
| | |
| | |
| | |
| |
|
| | 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' |
| | |
| |
|
| | 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' |
| |
|
| | |
| | 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") |
| |
|