Softr launches Artificial Intelligence no-code platform for business teams

Softr has introduced an Artificial Intelligence-native no-code platform aimed at non-technical teams building business software. The company is targeting the gap between fast prototypes and systems that can support live operations with real data, permissions and security.

Softr has launched an Artificial Intelligence-native no-code platform for building business software for non-technical teams. The update adds an Artificial Intelligence Co-Builder that allows users to describe an application in plain language and receive a working system with a database, user interface, permissions and business logic. The focus is on software for day-to-day business use rather than early-stage mock-ups.

The Berlin-based company has operated in the no-code software market for the past five years. Since launching in 2020, it says it has grown to more than 1 million builders and 7,000 organisations, including Netflix, Google, Stripe, UPS and Clay. Softr is positioning the new platform around what it sees as a common weakness in Artificial Intelligence software tools: many can generate quick surface-level outputs from a prompt, but still require users to handle code, fix errors and rebuild workflows before the software is ready for production.

That distinction is especially important for internal tools and customer-facing systems that depend on live data, defined user roles and access controls. Softr says its platform includes authentication, user roles, permissions and hosting from the outset. It also offers a visual database, custom workflows and integrations with other tools, aiming to make applications easier for non-technical teams to maintain over time without returning to developers for routine changes.

Teams already use Softr for client portals, customer relationship management systems, company intranets and other operational tools across industries. The latest product move extends that model by using Artificial Intelligence to assemble more of the underlying structure automatically. Softr says users can request a specific business tool and receive core elements that connect to live data and can be used immediately by staff, customers or partners, depending on the use case.

The launch reflects a broader push in business software to serve employees outside information technology departments, including operations, finance, human resources and client teams. Softr argues that no-code tools must address security, governance and reliability to move beyond experimentation. The company also says it has a profitable base, which it is now combining with Artificial Intelligence as it expands the product. Softr did not disclose pricing or financial details at launch.

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