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The use of AI tools by developers is on the rise, with a growing number relying on them for code assistance and generation.
Despite the increasing adoption of AI in the enterprise sector, Stack Overflowâs 2025 Developer Survey reveals a concerning issue of technical debt caused by AI tools that produce solutions that are âalmost right,â potentially hindering the productivity benefits they promise to bring.
The survey, based on responses from over 49,000 developers across 177 countries, highlights a paradox in AI adoption. While the usage of AI tools is on the rise, trust in these tools has declined significantly, with only 33% of developers expressing confidence in AI accuracy in 2025.
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The survey data points to a shift in developer preferences towards AI tools, with a decline in trust and favorability towards these tools. The top frustration cited by developers is the issue of âalmost rightâ solutions generated by AI, requiring additional time for debugging and correction.
The Challenge of âAlmost Rightâ Solutions in Developer Workflows
AI tools are not producing obviously flawed code but rather solutions that need significant developer intervention to be production-ready, leading to productivity challenges. Developers are spending time addressing workflow breakdowns caused by AI tools, with only 29% believing that AI tools can handle complex problems.
Unlike straightforward coding errors, âalmost rightâ solutions demand thorough analysis and correction, often resulting in developers considering it faster to rewrite the code themselves. The use of multiple tools in the development process adds to the complexity and inefficiencies caused by AI-generated solutions.
Challenges in Enterprise Governance with AI Adoption
The rapid adoption of AI has outpaced enterprise governance capabilities, leading to potential security and technical debt risks. AI coding tools, powered by LLMs, can introduce errors that developers may struggle to detect, increasing security concerns around AI-generated code.
Organizations face challenges in managing the quality of AI-generated code, with many developers turning to human consultation due to ethical and security concerns. The integration of AI tools presents complexities related to data access, performance, and security that organizations need to address.
Developer Strategies in the Age of AI
Despite the decline in trust, developers continue to utilize AI tools while also maintaining connections to human expertise and community resources. The survey reveals a shift towards more sophisticated strategies for integrating AI tools into workflows, with a significant portion of developers turning to platforms like Stack Overflow for assistance.
As organizations evaluate AI development tools, key considerations include investing in debugging capabilities, maintaining human expertise pipelines, implementing staged AI adoption, and focusing on AI tool literacy for developers. By addressing the challenges posed by âalmost rightâ solutions, organizations can harness the full potential of AI tools in enhancing development speed and code quality.