HAPPY BOOKSGIVING
Use code BOOKSGIVING during checkout to save 40%-55% on books and eBooks. Shop now.
Video accessible from your Account page after purchase.
Register your product to gain access to bonus material or receive a coupon.
7 Hours of Video Instruction
Data Engineering with Python and AWS Lambda LiveLessons shows users how to build complete and powerful data engineering pipelines in the same language that Data Scientists use to build Machine Learning models. By embracing serverless data engineering in Python, you can build highly scalable distributed systems on the back of the AWS backplane. Users learn to think in the new paradigm of serverless, which means to embrace events and event-driven programs that replace expensive and complicated servers.
Description
Some of the many benefits of programming with AWS Lambda in Python include no servers to manage, continuous scaling, and subsecond metering. Several use cases include data processing, stream processing, IoT backends, mobile, and web applications. Learn to take advantage of a new paradigm in software architecture that will make your code easier to write, maintain, and deploy.
AWS Lambda functions are the building blocks for creating sophisticated applications and services on AWS. In this LiveLesson, you learn to use Python to develop Lambda functions that communicate with key AWS services: API Gateway, SQS, and CloudWatch functions. You also learn how a new cloud-based development environment, Cloud9, can streamline writing, debugging, and deploying AWS Lambda functions.
What You Will Learn
Introduction
Lesson 1: Get Started with AWS Lambda
1.1 Create a Hello World AWS Lambda function in the console
1.2 Learn basic Lambda patterns
1.3 Learn Lambda Management console
1.4 Upload external code to AWS Lambda
Lesson 2: Use Cloud9 to Develop Python Lambda Functions
2.1 Set up Cloud9
2.2 Develop with Cloud9
2.3 Launch Cloud9 and workspace configuration
2.4. Import Lambda functions
2.5 Invoke Lambda functions
2.6. Invoke Lambda functions inside API Gateway
2.7 Deploy a Lambda function
Lesson 3: Create Timed Lambda Functions
3.1 Use AWS Lambda with CloudWatch events
3.2 Use AWS Lambda to populate AWS SQS
3.3 Use AWS CloudWatch logging with AWS Lambda
Lesson 4: Create Event-Driven Lambdas
4.1 Create a Producer Lambda function
4.2 Enable SQS Trigger
4.3 Serverless data engineering architecture
Lesson 5: Learn SAM Local
5.1 Install SAM
5.2 Use SAM application files and structure
5.3 Use SAM CLI to invoke functions locally
5.4 Use SAM to test and debug a Lambda function locally
5.5 Use SAM to package and deploy Lambda
Lesson 6: Learn AWS Glue
6.1 What is AWS Glue?
6.2 Use AWS Glue
Lesson 7: Create State Machines with Step Functions
7.1 Learn step functions
7.2 Use Amazon States Language
7.3 Step functions demo
Lesson 8: Use Step Functions with AWS Services
8.1 Learn integration with other AWS products
8.2 Use DynamoDB with step functions
8.3 Use AWS ECS/Fargate with step functions
8.4 Use AWS Callback Pattern
Lesson 9: Serverless Relational Databases
9.1 Serverless relational databases
9.2 Use Aurora Serverless
9.3 Use Data API for Aurora Serverless
9.4 Use stored procedures to invoke Lambda
Lesson 10: Build APIs with API Gateway
10.1 Use API Gateway
10.2 Integrate Lambda and API Gateway best practices
Lesson 11: Authenticate APIs with AWS Cognito
11.1 Begin Cognito authentication
11.2 Use Cognito User Pools
11.3 Use Cognito authentication with API Gateway
11.4 Use Federated Identity
Lesson 12: Use Serverless Datastores
12.1 Use DynamoDB for data engineering
12.2 Use Amazon Athena for data engineering
12.3 Use Amazon EMR for data engineering
12.4 Use Amazon EFS for data engineering
Lesson 13: Create Serverless Business Intelligence and AutoML
13.1 Integrate Amazon QuickSite
13.2 Integrate Lambda with AI APIs
13.3 Integrate Lambda with SageMaker
Lesson 14: Create Serverless Data Streaming
14.1 Use Kinesis Streams
14.2 Use Computer Vision Streams
Lesson 15: Case Studies
15.1 Compare AWS Lambda with Google Cloud Functions
15.2 Use GCP Cloud Functions with Pub Sub + Cloud Scheduler
15.3 Use Chalice framework
15.4 Push Versus Pull Architecture
15.5 Principles of DevOps
15.6 Principles of cloud computing
15.7 Summary of serverless computing
15.8 Managing Packages in AWS Lambda
15.9 Multi-cloud solutions
Lesson 16: Course Summary
16.1 Course summary
Summary