
Devin Desktop is an AI-native software development platform that serves as a central command center for managing coding agents, development workflows, and code execution. The platform combines a professional-grade IDE with agent orchestration capabilities, enabling developers to plan tasks, delegate work, review outputs, and collaborate with AI agents from a single interface. Developers can run local and cloud-based agents simultaneously, allowing multiple coding tasks to progress in parallel while maintaining shared context across projects. The platform includes features such as Spaces for shared worktrees, Fast Context for rapid codebase understanding, Supercomplete for predictive coding assistance, and comprehensive code review capabilities. Devin Desktop supports the Agent Client Protocol (ACP), enabling interoperability with different AI models and agent frameworks. The platform integrates with popular developer tools, including GitHub, Slack, Notion, Linear, Stripe, Datadog, Atlassian, and various language servers. Developers can inspect every change made by agents through built-in debugging, tracing, and review tools to ensure code quality and reliability. The platform is designed to streamline both individual and team-based software development workflows while reducing context switching. Devin Desktop enables engineering teams to increase development velocity by combining human oversight with autonomous AI execution.
Learn more

Retool is a modern AI-native application development platform designed to help teams build internal software quickly and efficiently. It enables users to create agents, workflows, dashboards, and full-stack apps using natural language prompts and visual tools. Retool connects directly to databases, APIs, vector stores, and AI models to ensure applications work seamlessly with existing systems. The platform allows teams to transform raw data into actionable tools such as dashboards, admin panels, and monitoring systems. With drag-and-drop UI building, code-level customization, and AI-assisted generation, Retool supports multiple development styles. Built-in workflows automate complex processes while maintaining auditability and security. Retool fits naturally into standard engineering stacks with support for CI/CD and version control. Enterprise-grade permissions and hosting options ensure sensitive data stays protected. Used by thousands of companies worldwide, Retool helps teams ship AI-powered software faster. It bridges the gap between idea and production with speed and control.
Learn more
Devgen
Devgen serves as a research assistant for codebases, making it easier for you to navigate and understand extensive code libraries. It delivers quick and accurate answers along with relevant code references, ensuring you can confirm the information you seek without hassle. You can easily integrate GitHub issues into your discussions; just right-click on any issue page, select "add to chat," and the issue will be ready for your conversation in an instant. This tool provides quick access to related code and pull requests associated with the issue at hand. You can also draft and deliberate on potential solutions for the issue right within the chat interface, which enhances collaboration. Furthermore, you can utilize natural language to review and comprehend pull requests, making the process intuitive. Devgen is an AI-driven assistant crafted to offer in-depth insights into your GitHub repository by analyzing various components like code, issues, pull requests, and releases. Available as a Chrome extension, it integrates seamlessly with GitHub, enabling a smooth side-by-side interaction as you work, thus streamlining your development workflow significantly.
Learn more
PydanticAI
PydanticAI is an innovative framework crafted in Python that aims to facilitate the creation of high-quality applications leveraging generative AI technologies. Developed by the creators of Pydantic, this framework connects effortlessly with leading AI models such as OpenAI, Anthropic, and Gemini. It features a type-safe architecture, enabling real-time debugging and performance tracking through the Pydantic Logfire system. By utilizing Pydantic for output validation, PydanticAI guarantees structured and consistent responses from models. Additionally, the framework incorporates a dependency injection system, which aids in the iterative process of development and testing, and allows for the streaming of LLM outputs to support quick validation. Perfectly suited for AI-centric initiatives, PydanticAI promotes an adaptable and efficient composition of agents while adhering to established Python best practices. Ultimately, the goal behind PydanticAI is to replicate the user-friendly experience of FastAPI in the realm of generative AI application development, thereby enhancing the overall workflow for developers.
Learn more