September 30, 2020 By Vidyasagar Machupalli 2 min read

Learn to deploy a public frontend and a private backend app, bind Cloud services to the backend, and run a job to analyze uploaded text files. 

Follow the steps in the solution tutorial and use the companion code sample to learn about IBM Cloud™ Code Engine by deploying a text analysis application.

You will create a Code Engine project, select the project, and deploy Code Engine entities—applications and jobs to the project. You will learn how to bind IBM Cloud services (e.g., IBM Cloud Object Storage and Natural Language Understanding) to your Code Engine entities. You’ll also learn about the auto-scaling capability of Code Engine, where instances are scaled up or down (to zero) based on incoming workload.

What is IBM Cloud Code Engine?

We recently announced IBM Cloud Code Engine as the newest platform to host all of your cloud native workloads. With Code Engine, you can enjoy the cloud again.

Code Engine is a fully managed, serverless platform that runs your containerized workloads, including web apps, microservices, event-driven functions, or batch jobs. Code Engine even builds container images for you from your source code. Because these workloads are all hosted within the same Kubernetes infrastructure, all of them can seamlessly work together. The Code Engine experience is designed so that you can focus on writing code and not on the infrastructure that is needed to host it.

Code Engine helps developers by hiding many of the complex tasks, like configuration, dependency management etc., Code Engine simplifies container-based management and enables you to concentrate on writing code. It also makes available many of the features of a serverless platform, such as “scale-to-zero.”

Objectives

  • Understand IBM Cloud Code Engine and how it simplifies the developer experience.
  • Understand how easy it is to deploy and scale an application using Code Engine.
  • Learn the use of jobs to execute run to completion workloads.

Architecture

  1. Developer creates a Code Engine project and deploys a frontend and a backend Code Engine application.
  2. Developer connects the frontend (UI) app to the backend by modifying the frontend application to set an environment variable value to point to the backend application’s endpoint.
  3. Developer provisions the required cloud services and binds them to the backend application and jobs by creating secrets and configmap.
  4. User uploads a text filw(s) via the frontend app that is stored in Object Storage through the backend application.
  5. User runs a Code Engine job via the backend to analyze text by pushing the text to Natural Language Understanding. The result is then saved to Object Storage and displayed in the frontend app when the user clicks the refresh button.

Check out the solution tutorial for easy-to-follow steps.

Questions and feedback

If you have feedback, suggestions, or questions about this post, please reach out to me on Twitter @VidyasagarMSC or use the feedback button on the tutorial to report a problem on its content. You can also open issues

The tutorials section has a feedback form on the side where you can comment on the content. If you have suggestions on the existing tutorials or ideas for future additions, please submit your feedback.

Was this article helpful?
YesNo

More from Cloud

Bigger isn’t always better: How hybrid AI pattern enables smaller language models

5 min read - As large language models (LLMs) have entered the common vernacular, people have discovered how to use apps that access them. Modern AI tools can generate, create, summarize, translate, classify and even converse. Tools in the generative AI domain allow us to generate responses to prompts after learning from existing artifacts. One area that has not seen much innovation is at the far edge and on constrained devices. We see some versions of AI apps running locally on mobile devices with…

IBM Tech Now: April 8, 2024

< 1 min read - ​Welcome IBM Tech Now, our video web series featuring the latest and greatest news and announcements in the world of technology. Make sure you subscribe to our YouTube channel to be notified every time a new IBM Tech Now video is published. IBM Tech Now: Episode 96 On this episode, we're covering the following topics: IBM Cloud Logs A collaboration with IBM watsonx.ai and Anaconda IBM offerings in the G2 Spring Reports Stay plugged in You can check out the…

The advantages and disadvantages of private cloud 

6 min read - The popularity of private cloud is growing, primarily driven by the need for greater data security. Across industries like education, retail and government, organizations are choosing private cloud settings to conduct business use cases involving workloads with sensitive information and to comply with data privacy and compliance needs. In a report from Technavio (link resides outside ibm.com), the private cloud services market size is estimated to grow at a CAGR of 26.71% between 2023 and 2028, and it is forecast to increase by…

IBM Newsletters

Get our newsletters and topic updates that deliver the latest thought leadership and insights on emerging trends.
Subscribe now More newsletters