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Amazon CodeWhisperer is a general purpose, machine learning-powered code generator that provides you with code recommendations in real time. As you write code, CodeWhisperer automatically generates suggestions based on your existing code and comments.
Amazon Q Developer is the most capable generative AI-powered assistant for building, operating, and transforming software, with advanced capabilities for managing data and AI/ML.
Today, Amazon CodeWhisperer, a real-time AI coding companion, is generally available and also includes a CodeWhisperer Individual tier that’s free to use for all developers.
Generate code based on the new programmer's natural language input. Provide code explanations so they can quickly learn and contribute to new projects. Provide step-by-step instructions to complete complex coding tasks. Review existing code and make suggestions for improvement.
Easily generate, update, and track QR codes with our highly available REST API. Customize the appearance, create dynamic QR codes, and monitor usage in real time.
Console-to-Code records your console actions, including default values and parameters values that you provide. It then uses generative AI to suggest code in your preferred language and format for the actions that you choose.
The following code examples show how to use Amazon Bedrock Runtime with AWS SDKs.
In this blog, we demonstrated how you can integrate security practices into a development pipeline using Amazon CodeCatalyst and Amazon Inspector. You created a project from a blueprint that came pre-configured with a workflow.
Being a generative AI–powered software development assistant that integrates with your integrated development environment (IDE), Amazon Q Developer supports in code explanation, code generation, and code improvements such as debugging and optimization.
We are excited to announce Amazon CodeWhisperer, a machine learning (ML)-powered service that helps improve developer productivity by providing code recommendations based on developers’ natural comments and prior code.