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AI Platforms Could Lower SaaS Costs, but Security and Compliance Challenges Remain

SAVVI AI’s CEO Maya Mikhailov warns that while AI simplifies software writing, it fails to resolve the costly complexities of running enterprise applications.

Maya Mikhailov, CEO of SAVVI AI, emphasized the limitations of artificial intelligence in software development during a recent discussion. While AI has simplified the process of writing software, it has not addressed the complexities involved in running enterprise applications. “AI makes it dramatically easier to write software. It does not make it easier to run enterprise software. Those are two very different problems, and most of the cost lives in the latter,” Mikhailov stated. She highlighted that the true challenges arise once organizations begin to build software, inheriting responsibilities related to security, compliance, uptime, integrations, and 24/7 support.

Mikhailov further pointed out that while the theoretical advantages of AI in software development may seem appealing, the associated costs and complexities will ultimately impact a company’s bottom line. The reality of maintaining enterprise software often presents a stark contrast to the streamlined experience suggested by AI tools. As organizations leverage AI to create software, they must be prepared to manage the various operational burdens that accompany it.

In a related perspective, Collin Hogue-Spears, a technical expert at Black Duck Software, raised concerns about the reliability of AI in real-world applications. He cited the rapid proliferation of OpenClaw, which escalated from zero to 135,000 exposed instances in just weeks due to its ability to execute workflows quickly. However, he cautioned that this speed comes at a cost. “It does not produce audit evidence, satisfy license obligations, or generate the compliance documentation that a regulator demands before that code ships,” Hogue-Spears noted. This highlights a significant gap between the capabilities of AI-driven software and the rigorous requirements of regulatory compliance.

The rapid adoption of AI technologies in software development raises critical questions about the balance between innovation and responsibility. As companies deploy AI tools to enhance productivity, they must also grapple with the potential risks and liabilities that accompany these advancements. The challenge lies not just in writing code faster but in ensuring that the final product meets the stringent demands of the market and regulatory frameworks.

The ongoing dialogue among industry leaders suggests that while AI presents a transformative opportunity for software development, it is not a panacea. Organizations must remain vigilant in their approach, recognizing that the integration of AI into their workflows requires a comprehensive strategy that encompasses security, compliance, and ongoing support.

As the conversation around AI in enterprise software continues, stakeholders are likely to seek solutions that bridge the gap between the benefits of rapid development and the necessities of operational integrity. The technology sector must be prepared to address these challenges head-on, fostering an environment where innovation and compliance can coexist.

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Marcus Chen
Written By

At AIPressa, my work focuses on analyzing how artificial intelligence is redefining business strategies and traditional business models. I've covered everything from AI adoption in Fortune 500 companies to disruptive startups that are changing the rules of the game. My approach: understanding the real impact of AI on profitability, operational efficiency, and competitive advantage, beyond corporate hype. When I'm not writing about digital transformation, I'm probably analyzing financial reports or studying AI implementation cases that truly moved the needle in business.

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