The artificial intelligence models of software engineering have arrived: Windsurf’s Swe-1 for technical decision makers

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To date, VIBE coding platforms have been largely relied on LLMS to help write code.

However, the writing code is only one of the many different tasks that developers need to perform to build a full production platform at the institution level. Other tasks in the workflow of full software engineering require different tools to help review and adhere to software instructions over time. It is a challenge Windsurf (previously Code) With a series of new FRONTIERE AI models that Swe-1 (Software Engineer 1) is called as part of the company’s WAVE 9 update.

The news comes as it is said that Windsurf is in the middle It is obtained by AI Openai leader Up to $ 3 billion. This deal has not been officially closed yet, and Windsurf is currently not publicly commented on the deal.

SWE-1 is a family of artificial intelligence models in the border category specifically designed to accelerate the entire software engineering process. Unlike the artificial intelligence models of general purposes adapted to the coding tasks, the SWE-1 family is designed to treat the full spectrum of engineering activities for software.

The new models aim to support developers through multiple surfaces, incomplete work and long -term tasks that characterize the development of software in the real world. SWE-1 is immediately available for Windsurf users, and the company’s entry to developing a Frontier model with the competitive performance of the applicable basic models, but focusing on the workflow of software engineering.

“Our main goal here is to accelerate all software engineering by 99 %,” said Ramashandran, head of producer and strategy at Windsurf, for Venturebeat.

Institution developers need more than just models capable of coding

The primary innovation behind Swe-1 is Windsurf that coding is only a small part of what software engineers already do.

This approach addresses decisive restrictions in the current artificial intelligence coding. Many different models can be used today to write the application code, including GPT-4.1 from Openai, Claude 3.7 and Google’s Gemini 2.5 Pro I/O Edition.

Windsurf has a standard interface that can enable the use of various models. Ramacandran explained that Windsurf users have given the company’s comments that current coding models tend to do a good job with user instructions, but over time they tend to miss things.

This restriction stems from a basic difference in the structure of the mission. Although the generation of the code is often the task of one shot, real software engineering includes navigation in multiple tools, working with an incomplete code and maintaining context through long -term projects.

Swe-1 family: specially designed for various engineering tasks

Instead of creating a solution that suits everyone, Windsurf developed three specialized models:

  1. Swe-1: A full -size model designed for advanced thinking and the use of tools, available to all paid users.
  2. Swe-1-Lite: A smaller but strong model replaces the current CASCADE base in Windsurf, available to all users (free and driven).
  3. Swe-1-MiniA lightweight model works to predict the negative code in the Windsurf tab, unlimited to all users.

SWE models were built through a comprehensive training process at home, especially focusing on software engineering tasks. Ramashandran said the company used a new data form with successive training steps.

Performance standards: How compared Swe-1

Although SWE-1 is not a location to replace the basic models of the main laboratories, Windsurf claims to achieve a boundary category specifically for software engineering tasks. The company stated that it greatly outperforms the medium -sized basis models and open weight models.

However, Windsurf is keen not to increase these initial results.

“Even our standard shows that it is not better than all other models,” Ramashandran admitted.

Instead, the goal of Swe-1 mode is a first step towards models designed for this purpose, which will eventually exceed models for general purposes for specific engineering tasks-at a lower cost.

Technical edge: awareness of flow and common timelines

What makes Windsurf technically distinct is its implementation of the concept of awareness of flow.

The basic idea is that the flow of steps should happen as part of the development of institutions. Instead of just writing a symbol of a specific step, awareness of the flow revolves around the realization of the broader context.

Awareness of flow is focused on creating a joint timetable of human and AI procedures in developing software. The main idea is to gradually transfer tasks from man to artificial intelligence by understanding the place where artificial intelligence can help more effectively.

This approach creates a continuous improvement link for models.

“As we continue to improve models, more steps will be turned in this common timeline from man to artificial intelligence,” Ramashandran said. “Artificial intelligence will be able to do more things that a person had to do before because artificial intelligence was not right.”

What does this mean for technical decision makers

For companies’ construction or software conservation, SWE-1 is an important development in developing artificial intelligence. Instead of dealing with artificial intelligence assistants as automatic completion tools, this approach is to accelerate the entire life cycle.

The potential effect extends beyond just writing a more symbol more quickly. Acknowledging that the development of applications is more shared will help the coding model to be more applicable to developing stable institutions programs.

Although it is still the first days of SWE-1, this step is important. If Openai completed the acquisition of Windsurf, the new models may become more important because they intersect with the model research and development resources that will be available.

Technical leaders should consider the amount of work in development that can benefit from the help of artificial intelligence until just generating the code. Teams that spend a great time in code, correcting errors and managing technical debt, may witness greater benefits of tools like Swe-1 of those that focus mainly on generating a new symbol.



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