• Stars
    star
    343
  • Rank 123,371 (Top 3 %)
  • Language
    Jupyter Notebook
  • License
    Apache License 2.0
  • Created over 3 years ago
  • Updated 7 months ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

An end-to-end example of MLOps on Google Cloud using TensorFlow, TFX, and Vertex AI

MLOps with Vertex AI

This example implements the end-to-end MLOps process using Vertex AI platform and Smart Analytics technology capabilities. The example uses Keras to implement the ML model, TFX to implement the training pipeline, and Model Builder SDK to interact with Vertex AI.

MLOps lifecycle

Getting started

  1. Setup your MLOps environment on Google Cloud.

  2. Start your AI Notebook instance.

  3. Open the JupyterLab then open a new Terminal

  4. Clone the repository to your AI Notebook instance:

    git clone https://github.com/GoogleCloudPlatform/mlops-with-vertex-ai.git
    cd mlops-with-vertex-ai
    
  5. Install the required Python packages:

    pip install tfx==1.2.0 --user
    pip install -r requirements.txt
    

    NOTE: You can ignore the pip dependencies issues. These will be fixed when upgrading to subsequent TFX version.


  6. Upgrade the gcloud components:

    sudo apt-get install google-cloud-sdk
    gcloud components update
    

Dataset Management

The Chicago Taxi Trips dataset is one of public datasets hosted with BigQuery, which includes taxi trips from 2013 to the present, reported to the City of Chicago in its role as a regulatory agency. The task is to predict whether a given trip will result in a tip > 20%.

The 01-dataset-management notebook covers:

  1. Performing exploratory data analysis on the data in BigQuery.
  2. Creating Vertex AI Dataset resource using the Python SDK.
  3. Generating the schema for the raw data using TensorFlow Data Validation.

ML Development

We experiment with creating a Custom Model using 02-experimentation notebook, which covers:

  1. Preparing the data using Dataflow.
  2. Implementing a Keras classification model.
  3. Training the Keras model with Vertex AI using a pre-built container.
  4. Upload the exported model from Cloud Storage to Vertex AI.
  5. Extract and visualize experiment parameters from Vertex AI Metadata.
  6. Use Vertex AI for hyperparameter tuning.

We use Vertex TensorBoard and Vertex ML Metadata to track, visualize, and compare ML experiments.

In addition, the training steps are formalized by implementing a TFX pipeline. The 03-training-formalization notebook covers implementing and testing the pipeline components interactively.

Training Operationalization

The 04-pipeline-deployment notebook covers executing the CI/CD steps for the training pipeline deployment using Cloud Build. The CI/CD routine is defined in the pipeline-deployment.yaml file, and consists of the following steps:

  1. Clone the repository to the build environment.
  2. Run unit tests.
  3. Run a local e2e test of the TFX pipeline.
  4. Build the ML container image for pipeline steps.
  5. Compile the pipeline.
  6. Upload the pipeline to Cloud Storage.

Continuous Training

After testing, compiling, and uploading the pipeline definition to Cloud Storage, the pipeline is executed with respect to a trigger. We use Cloud Functions and Cloud Pub/Sub as a triggering mechanism. The Cloud Function listens to the Pub/Sub topic, and runs the training pipeline given a message sent to the Pub/Sub topic. The Cloud Function is implemented in src/pipeline_triggering.

The 05-continuous-training notebook covers:

  1. Creating a Cloud Pub/Sub topic.
  2. Deploying a Cloud Function.
  3. Triggering the pipeline.

The end-to-end TFX training pipeline implementation is in the src/pipelines directory, which covers the following steps:

  1. Receive hyper-parameters using hyperparam_gen custom python component.
  2. Extract data from BigQuery using BigQueryExampleGen component.
  3. Validate the raw data using StatisticsGen and ExampleValidator component.
  4. Process the data using on Dataflow Transform component.
  5. Train a custom model with Vertex AI using Trainer component.
  6. Evaluate and validate the custom model using ModelEvaluator component.
  7. Save the blessed to model registry location in Cloud Storage using Pusher component.
  8. Upload the model to Vertex AI using vertex_model_pusher custom python component.

Model Deployment

The 06-model-deployment notebook covers executing the CI/CD steps for the model deployment using Cloud Build. The CI/CD routine is defined in build/model-deployment.yaml file, and consists of the following steps:

  1. Test model interface.
  2. Create an endpoint in Vertex AI.
  3. Deploy the model to the endpoint.
  4. Test the Vertex AI endpoint.

Prediction Serving

We serve the deployed model for prediction. The 07-prediction-serving notebook covers:

  1. Use the Vertex AI endpoint for online prediction.
  2. Use the Vertex AI uploaded model for batch prediction.
  3. Run the batch prediction using Vertex Pipelines.

Model Monitoring

After a model is deployed in for prediction serving, continuous monitoring is set up to ensure that the model continue to perform as expected. The 08-model-monitoring notebook covers configuring Vertex AI Model Monitoring for skew and drift detection:

  1. Set skew and drift threshold.
  2. Create a monitoring job for all the models under and endpoint.
  3. List the monitoring jobs.
  4. List artifacts produced by monitoring job.
  5. Pause and delete the monitoring job.

Metadata Tracking

You can view the parameters and metrics logged by your experiments, as well as the artifacts and metadata stored by your Vertex Pipelines in Cloud Console.

Disclaimer

This is not an official Google product but sample code provided for an educational purpose.


Copyright 2021 Google LLC.

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at: http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

More Repositories

1

microservices-demo

Sample cloud-first application with 10 microservices showcasing Kubernetes, Istio, and gRPC.
Go
16,790
star
2

terraformer

CLI tool to generate terraform files from existing infrastructure (reverse Terraform). Infrastructure to Code
Go
12,352
star
3

training-data-analyst

Labs and demos for courses for GCP Training (http://cloud.google.com/training).
Jupyter Notebook
7,867
star
4

python-docs-samples

Code samples used on cloud.google.com
Jupyter Notebook
7,432
star
5

generative-ai

Sample code and notebooks for Generative AI on Google Cloud, with Gemini on Vertex AI
Jupyter Notebook
6,517
star
6

golang-samples

Sample apps and code written for Google Cloud in the Go programming language.
Go
4,284
star
7

professional-services

Common solutions and tools developed by Google Cloud's Professional Services team. This repository and its contents are not an officially supported Google product.
Python
2,825
star
8

nodejs-docs-samples

Node.js samples for Google Cloud Platform products.
JavaScript
2,807
star
9

tensorflow-without-a-phd

A crash course in six episodes for software developers who want to become machine learning practitioners.
Jupyter Notebook
2,772
star
10

gcsfuse

A user-space file system for interacting with Google Cloud Storage
Go
2,046
star
11

community

Java
1,919
star
12

PerfKitBenchmarker

PerfKit Benchmarker (PKB) contains a set of benchmarks to measure and compare cloud offerings. The benchmarks use default settings to reflect what most users will see. PerfKit Benchmarker is licensed under the Apache 2 license terms. Please make sure to read, understand and agree to the terms of the LICENSE and CONTRIBUTING files before proceeding.
Python
1,885
star
13

asl-ml-immersion

This repos contains notebooks for the Advanced Solutions Lab: ML Immersion
Jupyter Notebook
1,799
star
14

vertex-ai-samples

Notebooks, code samples, sample apps, and other resources that demonstrate how to use, develop and manage machine learning and generative AI workflows using Google Cloud Vertex AI.
Jupyter Notebook
1,659
star
15

java-docs-samples

Java and Kotlin Code samples used on cloud.google.com
Java
1,610
star
16

ml-design-patterns

Source code accompanying O'Reilly book: Machine Learning Design Patterns
Jupyter Notebook
1,600
star
17

continuous-deployment-on-kubernetes

Get up and running with Jenkins on Google Kubernetes Engine
Shell
1,582
star
18

cloudml-samples

Cloud ML Engine repo. Please visit the new Vertex AI samples repo at https://github.com/GoogleCloudPlatform/vertex-ai-samples
Python
1,516
star
19

cloud-foundation-fabric

End-to-end modular samples and landing zones toolkit for Terraform on GCP.
HCL
1,509
star
20

localllm

Python
1,505
star
21

cloud-builders

Builder images and examples commonly used for Google Cloud Build
Go
1,374
star
22

cloud-sql-proxy

A utility for connecting securely to your Cloud SQL instances
Go
1,263
star
23

cloud-builders-community

Community-contributed images for Google Cloud Build
Go
1,258
star
24

berglas

A tool for managing secrets on Google Cloud
Go
1,236
star
25

data-science-on-gcp

Source code accompanying book: Data Science on the Google Cloud Platform, Valliappa Lakshmanan, O'Reilly 2017
Jupyter Notebook
1,230
star
26

kubernetes-engine-samples

Sample applications for Google Kubernetes Engine (GKE)
HCL
1,228
star
27

functions-framework-nodejs

FaaS (Function as a service) framework for writing portable Node.js functions
TypeScript
1,162
star
28

DataflowTemplates

Cloud Dataflow Google-provided templates for solving in-Cloud data tasks
Java
1,135
star
29

bigquery-utils

Useful scripts, udfs, views, and other utilities for migration and data warehouse operations in BigQuery.
Java
1,117
star
30

cloud-vision

Sample code for Google Cloud Vision
Python
1,097
star
31

bank-of-anthos

Retail banking sample application showcasing Kubernetes and Google Cloud
Java
994
star
32

buildpacks

Builders and buildpacks designed to run on Google Cloud's container platforms
Go
982
star
33

php-docs-samples

A collection of samples that demonstrate how to call Google Cloud services from PHP.
PHP
961
star
34

cloud-foundation-toolkit

The Cloud Foundation toolkit provides GCP best practices as code.
Go
958
star
35

deploymentmanager-samples

Deployment Manager samples and templates.
Jinja
938
star
36

flask-talisman

HTTP security headers for Flask
Python
896
star
37

k8s-config-connector

GCP Config Connector, a Kubernetes add-on for managing GCP resources
Go
891
star
38

gsutil

A command line tool for interacting with cloud storage services.
Python
874
star
39

DataflowJavaSDK

Google Cloud Dataflow provides a simple, powerful model for building both batch and streaming parallel data processing pipelines.
857
star
40

nodejs-getting-started

A tutorial for creating a complete application using Node.js on Google Cloud Platform
JavaScript
806
star
41

magic-modules

Add Google Cloud Platform support to Terraform
Go
804
star
42

gcr-cleaner

Delete untagged image refs in Google Container Registry or Artifact Registry
Go
802
star
43

keras-idiomatic-programmer

Books, Presentations, Workshops, Notebook Labs, and Model Zoo for Software Engineers and Data Scientists wanting to learn the TF.Keras Machine Learning framework
Jupyter Notebook
797
star
44

metacontroller

Lightweight Kubernetes controllers as a service
Go
790
star
45

awesome-google-cloud

A curated list of awesome stuff for Google Cloud.
777
star
46

mlops-on-gcp

Jupyter Notebook
773
star
47

getting-started-python

Code samples for using Python on Google Cloud Platform
Python
756
star
48

dotnet-docs-samples

.NET code samples used on https://cloud.google.com
C#
736
star
49

click-to-deploy

Source for Google Click to Deploy solutions listed on Google Cloud Marketplace.
Python
729
star
50

iap-desktop

IAP Desktop is a Windows application that provides zero-trust Remote Desktop and SSH access to Linux and Windows VMs on Google Cloud.
C#
708
star
51

cloud-sdk-docker

Google Cloud CLI Docker Image - Docker Image containing the gcloud CLI and its bundled components.
Dockerfile
697
star
52

tf-estimator-tutorials

This repository includes tutorials on how to use the TensorFlow estimator APIs to perform various ML tasks, in a systematic and standardised way
Jupyter Notebook
671
star
53

functions-framework-python

FaaS (Function as a service) framework for writing portable Python functions
Python
670
star
54

flink-on-k8s-operator

[DEPRECATED] Kubernetes operator for managing the lifecycle of Apache Flink and Beam applications.
Go
657
star
55

terraform-google-examples

Collection of examples for using Terraform with Google Cloud Platform.
HCL
573
star
56

functions-framework-dart

FaaS (Function as a service) framework for writing portable Dart functions
Dart
535
star
57

cloud-run-button

Let anyone deploy your GitHub repos to Google Cloud Run with a single click
Go
527
star
58

bigquery-oreilly-book

Source code accompanying: BigQuery: The Definitive Guide by Lakshmanan & Tigani to be published by O'Reilly Media
Jupyter Notebook
523
star
59

govanityurls

Use a custom domain in your Go import path
Go
518
star
60

ml-on-gcp

Machine Learning on Google Cloud Platform
Python
484
star
61

practical-ml-vision-book

Jupyter Notebook
482
star
62

getting-started-java

Java
478
star
63

ipython-soccer-predictions

Sample iPython notebook with soccer predictions
Jupyter Notebook
473
star
64

monitoring-dashboard-samples

Google Cloud Monitoring Dashboard Samples
TypeScript
471
star
65

covid-19-open-data

Datasets of daily time-series data related to COVID-19 for over 20,000 distinct locations around the world.
Python
471
star
66

ai-platform-samples

Official Repo for Google Cloud AI Platform. Find samples for Vertex AI, Google Cloud's new unified ML platform at: https://github.com/GoogleCloudPlatform/vertex-ai-samples
Jupyter Notebook
457
star
67

hackathon-toolkit

GCP Hackathon Toolkit
HTML
440
star
68

gradle-appengine-templates

Freemarker based templates that build with the gradle-appengine-plugin
439
star
69

distributed-load-testing-using-kubernetes

Distributed load testing using Kubernetes on Google Container Engine
Smarty
438
star
70

terraform-validator

Terraform Validator is not an officially supported Google product; it is a library for conversion of Terraform plan data to CAI Assets. If you have been using terraform-validator directly in the past, we recommend migrating to `gcloud beta terraform vet`.
Go
437
star
71

cloud-code-vscode

Cloud Code for Visual Studio Code: Issues, Documentation and more
416
star
72

nodejs-docker

The Node.js Docker image used by Google App Engine Flexible.
TypeScript
407
star
73

cloud-ops-sandbox

Cloud Operations Sandbox is an open source collection of tools that helps practitioners to learn O11y and R9y practices from Google and apply them using Cloud Operations suite of tools.
HCL
405
star
74

professional-services-data-validator

Utility to compare data between homogeneous or heterogeneous environments to ensure source and target tables match
Python
403
star
75

k8s-stackdriver

Go
390
star
76

cloud-code-samples

Code templates to make working with Kubernetes feel like editing and debugging local code.
Java
387
star
77

healthcare

Python
374
star
78

require-so-slow

`require`s taking too much time? Profile 'em.
TypeScript
373
star
79

functions-framework-go

FaaS (Function as a service) framework for writing portable Go functions
Go
373
star
80

k8s-multicluster-ingress

kubemci: Command line tool to configure L7 load balancers using multiple kubernetes clusters
Go
372
star
81

compute-image-packages

Packages for Google Compute Engine Linux images.
Python
370
star
82

android-docs-samples

Java
365
star
83

stackdriver-errors-js

Client-side JavaScript exception reporting library for Cloud Error Reporting
JavaScript
358
star
84

applied-ai-engineering-samples

This repository compiles code samples and notebooks demonstrating how to use Generative AI on Google Cloud Vertex AI.
Jupyter Notebook
344
star
85

google-cloud-iot-arduino

Google Cloud IOT Example on ESP8266
C++
340
star
86

istio-samples

Istio demos and sample applications for GCP
Shell
331
star
87

ios-docs-samples

iOS samples that demonstrate APIs and services of Google Cloud Platform.
Swift
325
star
88

cloud-code-intellij

Plugin to support the Google Cloud Platform in IntelliJ IDEA - Docs and Issues Repository
319
star
89

security-analytics

Community Security Analytics provides a set of community-driven audit & threat queries for Google Cloud
Python
315
star
90

gke-networking-recipes

Shell
307
star
91

gcping

The source for the CLI and web app at gcping.com
Go
303
star
92

solutions-terraform-cloudbuild-gitops

HCL
301
star
93

spring-cloud-gcp

New home for Spring Cloud GCP development starting with version 2.0.
Java
299
star
94

airflow-operator

Kubernetes custom controller and CRDs to managing Airflow
Go
296
star
95

genai-for-marketing

Showcasing Google Cloud's generative AI for marketing scenarios via application frontend, backend, and detailed, step-by-step guidance for setting up and utilizing generative AI tools, including examples of their use in crafting marketing materials like blog posts and social media content, nl2sql analysis, and campaign personalization.
Jupyter Notebook
296
star
96

elixir-samples

A collection of samples on using Elixir with Google Cloud Platform.
Elixir
291
star
97

gcpdiag

gcpdiag is a command-line diagnostics tool for GCP customers.
Python
288
star
98

kotlin-samples

Kotlin
285
star
99

compute-archlinux-image-builder

A tool to build a Arch Linux Image for GCE
Shell
284
star
100

datalab-samples

Jupyter Notebook
281
star