Continuous integration and continuous delivery are accepted best practices of building modern software. With serverless applications, building your CI and CD workflows becomes even easier and faster to get up and running with a code to production flow. In this session, we cover the basics of building a pipeline for your serverless applications as well as how you can use serverless in your pipelines. We cover the advanced capabilities of the AWS Code services and how you can modify your pipeline to use services such as AWS Lambda and AWS Step Functions to handle complicated tasks and perform sophisticated workflows on each run.
Related content

AWS Panorama is a collection of machine learning devices and software development kit that brings computer vision to on premises IP cameras.....

Security vulnerabilities in your ML workflows are often overlooked by cybersecurity personnel due to their indirect ability to makes changes within your broader system/decision processes....

This session explores how DiUS built custom computer vision models deployed at the edge to enable Swoop Aero to safely and reliably cover vast distances and inhospitable....

Join our AWS Cloud Economics experts to find out how you can proactively reduce cost surprises and enhance control with AWS Cost Anomaly Detection. During this session.....

Cloud technologies are helping organisations transform their businesses, meaning that employees with cloud skills are in high demand. Learn how you can access training and certification programs to...

Take a look through the technologies of the world wide web and blockchain to dive into what Web3 and Distributed Apps (DApps) really are. In this session, we share how how combining web apps with.....

Artificial intelligence (AI) applied through machine learning (ML) will be one of the most transformational technologies of our generation, tackling some of humanity’s most challenging problems, ...

With Transcribe Call Analytics, you can get valuable intelligence such as customer and agent sentiment, call drivers, and conversation characteristics such as non-talk time, interruptions, loudness...

In this session, we will cover various Amazon SageMaker features with focus on its deployment capabilities. Amazon SageMaker provides multiple features to manage resources and optimise inference...


Organisations are looking to leverage the broad set of in-house analytics skills to help scale the adoption of machine learning to drive business outcomes. SageMaker Canvas provides a visual point...

An in-depth conversation with AWS Smart Business Jim's Mowing and their technology partner Cevo, showcasing how they have modernised and transformed their business to not only navigate through,...

Understanding and extracting data from non-structured data to accelerate back office processing is a major challenge for organisations across industry. Artificial Intelligence (AI) can automate docu..

Machine Learning Operationalisation (MLOps) is a collection of best practices to efficiently operationalise models. It’s not just technology—it’s about processes and people, thinking about the...

Amazon Elastic Kubernetes Service (Amazon EKS) reduces the undifferentiated heavy lifting of managing a Kubernetes Cluster and lets the application team focus on the business logic to deliver value...

AWS Cloud Development Kit (CDK) enables developers to define AWS Infrastructure as Code in familiar programming languages like TypeScript, JavaScript, Python, C#, and Java and enables you to define...

Hear from Eloise, Ethan & Brady as they host a panel discussion on unlocking the power of data to better understand your customers and how your data can support in creating more seamless and integr...