Search icon CANCEL
Subscription
0
Cart icon
Your Cart (0 item)
Close icon
You have no products in your basket yet
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon

Getting Started with AWS CodeWhisperer

Save for later
  • 11 min read
  • 23 Aug 2023

article-image

Introduction

Efficiently writing secure, high-quality code within tight deadlines remains a constant challenge in today's fast-paced software development landscape. Developers often face repetitive tasks, code snippet searches, and the need to adhere to best practices across various programming languages and frameworks. However, AWS CodeWhisperer, an innovative AI-powered coding companion, aims to transform the way developers work. In this blog, we will explore the extensive features, benefits, and setup process of AWS CodeWhisperer, providing detailed insights and examples for technical professionals.

At its core, CodeWhisperer leverages machine learning and natural language processing to deliver real-time code suggestions and streamline the development workflow. Seamlessly integrated with popular IDEs such as Visual Studio Code, IntelliJ IDEA, and AWS Cloud9, CodeWhisperer enables developers to remain focused and productive within their preferred coding environment. By eliminating the need to switch between tools and external resources, CodeWhisperer accelerates coding tasks and enhances overall productivity.

A standout feature of CodeWhisperer is its ability to generate code from natural language comments. Developers can now write plain English comments describing a specific task, and CodeWhisperer automatically analyses the comment, identifies relevant cloud services and libraries, and generates code snippets directly within the IDE. This not only saves time but also allows developers to concentrate on solving business problems rather than getting entangled in mundane coding tasks.

In addition to code generation, CodeWhisperer offers advanced features such as real-time code completion, intelligent refactoring suggestions, and error detection. By analyzing code patterns, industry best practices, and a vast code repository, CodeWhisperer provides contextually relevant and intelligent suggestions. Its versatility extends to multiple programming languages, including Python, Java, JavaScript, TypeScript, C#, Go, Rust, PHP, Ruby, Kotlin, C, C++, Shell scripting, SQL, and Scala, making it a valuable tool for developers across various language stacks.

AWS CodeWhisperer addresses the need for developer productivity tools by streamlining the coding process and enhancing efficiency. With its AI-driven capabilities, CodeWhisperer empowers developers to write clean, efficient, and high-quality code. By supporting a wide range of programming languages and integrating with popular IDEs, CodeWhisperer caters to diverse development scenarios and enables developers to unlock their full potential. Embrace the power of AWS CodeWhisperer and experience a new level of productivity and coding efficiency in your development journey.

Key Features and Benefits of CodeWhisperer
 

A. Real-time code suggestions and completion

CodeWhisperer provides developers with real-time code suggestions and completion, significantly enhancing their coding experience. As developers write code, CodeWhisperer's AI-powered engine analyzes the context and provides intelligent suggestions for function names, variable declarations, method invocations, and more. This feature helps developers write code faster, with fewer errors, and improves overall code quality. By eliminating the need to constantly refer to documentation or search for code examples, CodeWhisperer streamlines the coding process and boosts productivity.

B. Intelligent code generation from natural language comments

One of the standout features of CodeWhisperer is its ability to generate code snippets from natural language comments. Developers can simply write plain English comments describing a specific task, and CodeWhisperer automatically understands the intent and generates the corresponding code. This powerful capability saves developers time and effort, as they can focus on articulating their requirements in natural language rather than diving into the details of code implementation. With CodeWhisperer, developers can easily translate their high-level concepts into working code, making the development process more intuitive and efficient.

C. Streamlining routine or time-consuming tasks

CodeWhisperer excels at automating routine or time-consuming tasks that developers often encounter during the development process. From file manipulation and data processing to API integrations and unit test creation, CodeWhisperer provides ready-to-use code snippets that accelerate these tasks. By leveraging CodeWhisperer's automated code generation capabilities, developers can focus on higher-level problem-solving and innovation, rather than getting caught up in repetitive coding tasks. This streamlining of routine tasks allows developers to work more efficiently and deliver results faster.

D. Leveraging AWS APIs and best practices

As an AWS service, CodeWhisperer is specifically designed to assist developers in leveraging the power of AWS services and best practices. It provides code recommendations tailored to AWS application programming interfaces (APIs), allowing developers to efficiently interact with services such as Amazon EC2, Lambda, and Amazon S3. CodeWhisperer ensures that developers follow AWS best practices by providing code snippets that adhere to security measures, performance optimizations, and scalability considerations. By integrating AWS expertise directly into the coding process, CodeWhisperer empowers developers to build robust and reliable applications on the AWS platform.

E. Enhanced security scanning and vulnerability detection

Security is a top priority in software development, and CodeWhisperer offers enhanced security scanning and vulnerability detection capabilities. It automatically scans both generated and developer-written code to identify potential security vulnerabilities. By leveraging industry-standard security guidelines and knowledge, CodeWhisperer helps developers identify and remediate security issues early in the development process. This proactive approach to security ensures that code is written with security in mind, reducing the risk of vulnerabilities and strengthening the overall security posture of applications.

F. Responsible AI practices to address bias and open-source usage

AWS CodeWhisperer is committed to responsible AI practices and addresses potential bias and open-source usage concerns. The AI models behind CodeWhisperer are trained on vast amounts of publicly available code, ensuring accuracy and relevance in code recommendations. However, CodeWhisperer goes beyond accuracy and actively filters out biased or unfair code recommendations, promoting inclusive coding practices. Additionally, it provides reference tracking to identify code recommendations that resemble specific open source training data, allowing developers to make informed decisions and attribute sources appropriately. By focusing on responsible AI practices, CodeWhisperer ensures that developers can trust the code suggestions and recommendations it provides.

Setting up CodeWhisperer for individual developers

If you are an individual developer who has acquired CodeWhisperer independently and will be using AWS Builder ID for login, follow these steps to access CodeWhisperer from your JetBrains IDE:

1.      Ensure that the AWS Toolkit for JetBrains is installed. If it is not already installed, you can install it from the JetBrains plugin marketplace.

2.      In your JetBrains IDE, navigate to the edge of the window and click on the AWS Toolkit icon. This will open the AWS Toolkit for the JetBrains panel:

getting-started-with-aws-codewhisperer-img-0

3. Within the AWS Toolkit for JetBrains panel, click on the Developer Tools tab. This will open the Developer Tools Explorer.

4. In the Developer Tools Explorer, locate the CodeWhisperer section and expand it. Then, select the "Start" option:

getting-started-with-aws-codewhisperer-img-1

5. A pop-up window titled "CodeWhisperer: Add a Connection to AWS" will appear. In this window, choose the "Use a personal email to sign up" option to sign in with your AWS Builder ID.

6. Once you have entered your personal email associated with your AWS Builder ID, click on the "Connect" button to establish the connection and access CodeWhisperer within your JetBrains IDE:

getting-started-with-aws-codewhisperer-img-2

7.      A pop-up titled "Sign in with AWS Builder ID" will appear. Select the "Open and Copy Code" option.

8.      A new browser tab will open, displaying the "Authorize request" window. The copied code should already be in your clipboard. Paste the code into the appropriate field and click "Next."

9.      Another browser tab will open, directing you to the "Create AWS Builder ID" page. Enter your email address and click "Next." A field for your name will appear. Enter your name and click "Next." AWS will send a confirmation code to the email address you provided.

10.   On the email verification screen, enter the code and click "Verify." On the "Choose your password" screen, enter a password, confirm it, and click "Create AWS Builder ID." A new browser tab will open, asking for your permission to allow JetBrains to access your data. Click "Allow."

Unlock access to the largest independent learning library in Tech for FREE!
Get unlimited access to 7500+ expert-authored eBooks and video courses covering every tech area you can think of.
Renews at $19.99/month. Cancel anytime

11.   Another browser tab will open, asking if you want to grant access to the AWS Toolkit for JetBrains to access your data. If you agree, click "Allow."

12.   Return to your JetBrains IDE to continue the setup process.

 

CodeWhisperer in Action

Example Use Case: Automating Unit Test Generation with CodeWhisperer in Python (Credits: aws-solutions-library-samples):

One of the powerful use cases of CodeWhisperer is its ability to automate the generation of unit test code. By leveraging natural language comments, CodeWhisperer can recommend unit test code that aligns with your implementation code. This feature significantly simplifies the process of writing repetitive unit test code and improves overall code coverage.

To demonstrate this capability, let's walk through an example using Python in Visual Studio Code:

  •         Begin by opening an empty directory in your Visual Studio Code IDE.
  •         (Optional) In the terminal, create a new Python virtual environment:

python3 -m venv .venv

source .venv/bin/activate

  •         Set up your Python environment and ensure that the necessary dependencies are installed.

pip install pytest pytest-cov        

  •        Create a new file in your preferred Python editor or IDE and name it "calculator.py".
  •        Add the following comment at the beginning of the file to indicate your intention to create a simple calculator class:  

 # example Python class for a simple calculator

  •        Once you've added the comment, press the "Enter" key to proceed.
  •        CodeWhisperer will analyze your comment and start generating code suggestions based on the desired functionality.
  •       To accept the suggested code, simply press the "Tab" key in your editor or IDE.
getting-started-with-aws-codewhisperer-img-3

                                                            Picture Credit: aws-solutions-library-samples

In case CodeWhisperer does not provide automatic suggestions, you can manually trigger CodeWhisperer to generate recommendations using the following keyboard shortcuts:

For Windows/Linux users, press "Alt + C".

For macOS users, press "Option + C".

If you want to view additional suggestions, you can navigate through them by pressing the Right arrow key. On the other hand, to access previous suggestions, simply press the Left arrow key. If you wish to reject a recommendation, you can either press the ESC key or use the backspace/delete key.

To continue building the calculator class, proceed by selecting the Enter key and accepting CodeWhisperer's suggestions, whether they are provided automatically or triggered manually. CodeWhisperer will propose basic functions for the calculator class, including add(), subtract(), multiply(), and divide(). In addition to these fundamental operations, it can also suggest more advanced functions like square(), cube(), and square_root().

By following these steps, you can leverage CodeWhisperer to enhance your coding workflow and efficiently develop the calculator class, benefiting from a range of pre-generated functions tailored to your specific needs.

Conclusion

AWS CodeWhisperer is a groundbreaking tool that has the potential to revolutionize the way developers work. By harnessing the power of AI, CodeWhisperer provides real-time code suggestions and automates repetitive tasks, enabling developers to focus on solving core business problems. With seamless integration into popular IDEs and support for multiple programming languages, CodeWhisperer offers a comprehensive solution for developers across different domains. By leveraging CodeWhisperer's advanced features, developers can enhance their productivity, reduce errors, and ensure the delivery of high-quality code. As CodeWhisperer continues to evolve, it holds the promise of driving accelerated software development and fostering innovation in the developer community.

Author Bio

Rohan Chikorde is an accomplished AI Architect professional with a post-graduate in Machine Learning and Artificial Intelligence. With almost a decade of experience, he has successfully developed deep learning and machine learning models for various business applications. Rohan's expertise spans multiple domains, and he excels in programming languages such as R and Python, as well as analytics techniques like regression analysis and data mining. In addition to his technical prowess, he is an effective communicator, mentor, and team leader. Rohan's passion lies in machine learning, deep learning, and computer vision.

LinkedIn