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  "path": "/article/4158486/ai-in-the-interview-room.html",
  "publishedAt": "2026-04-16T11:00:00.000Z",
  "site": "https://www.cio.com",
  "tags": [
    "Artificial Intelligence, Careers, Hiring, IT Jobs, IT Management",
    "ISC² Cybersecurity Workforce Study",
    "ISACA State of Cybersecurity repor",
    "Want to join?"
  ],
  "textContent": "A technical interview goes exceptionally well. The candidate answers every question with confidence, explains complex concepts fluently and demonstrates impressive knowledge of modern tools and architectures. The hiring team leaves the interview convinced they have found a strong addition to the engineering team.\n\nWeeks later, after onboarding, a different picture begins to emerge. Routine tasks take longer than expected. Basic troubleshooting requires more assistance than anticipated. Design discussions reveal gaps that were not visible during the interview.\n\nSituations like this are not new in the technology industry. But the growing use of artificial intelligence (AI) in job preparation is making them harder to detect.\n\nIn cybersecurity, we rarely blame attackers for exploiting weaknesses in a system. Instead, we examine the conditions that allowed the breach to occur and focus on strengthening controls, detection and response mechanisms so the organization becomes more resilient.\n\nA similar mindset may now be needed in the hiring process. Artificial intelligence (AI) is rapidly changing how candidates prepare for technical roles. Many applicants now use AI tools to refine resumes, rehearse interview responses and organize complex ideas before interviews.\n\nIn many ways, this is a positive development. AI can help candidates communicate their experience more clearly and prepare more effectively. However, it also introduces a new challenge for hiring teams: distinguishing between candidates who are genuinely capable and those whose interview performance may be heavily assisted by external tools.\n\nThis is not about blaming candidates for using AI. Technology inevitably changes how people learn and present themselves. The more important question is whether our hiring processes still provide enough visibility into a candidate’s true capability in an AI-enabled world.\n\nFor CIOs and CISOs, this issue extends beyond talent acquisition. Hiring the wrong technical candidate, whether a developer, system administrator, engineer or security professional, can introduce operational weaknesses that eventually translate into reliability, resilience or even security risks. As organizations adopt AI-assisted workflows, technical hiring increasingly becomes a shared responsibility between technology leadership and HR teams, requiring new approaches to evaluation, validation and post-hire observation. This shift is already becoming visible across the technology hiring landscape.\n\n## The talent gap is real, and the pressure to hire is increasing\n\nRoles such as software developers, system administrators, cloud engineers, AI specialists and cybersecurity professionals are increasingly difficult to fill. As digital transformation accelerates, companies compete aggressively for individuals who can design, build and secure modern systems.\n\nAcross the technology industry, organizations face a persistent shortage of experienced professionals. The challenge is particularly visible in cybersecurity, where demand continues to exceed supply. According to the ISC² Cybersecurity Workforce Study, the global industry faces a shortage of more than 3.4 million cybersecurity professionals. Similar findings appear in the ISACA State of Cybersecurity report, which consistently highlights hiring and skills shortages as major barriers for security teams.\n\nThis pressure can place significant strain on hiring teams.\n\nRecruiters must evaluate large numbers of applications. Hiring managers must assess candidates across multiple technical domains. Decisions often must be made quickly to avoid losing strong candidates to competitors.\n\nIn this environment, the hiring process itself becomes a critical operational function. Hiring the right person can accelerate innovation and strengthen teams. Hiring the wrong person can delay projects, introduce operational risk and require months to correct. Against this backdrop of talent scarcity, organizations are also navigating a new variable: the growing influence of artificial intelligence on the hiring process itself.\n\n## AI can also strengthen hiring\n\nWhile AI introduces new complexities, it also offers opportunities to improve recruitment.\n\nOrganizations can use AI to:\n\n  * Analyze large volumes of candidate data\n  * Identify skill patterns across roles\n  * Support recruiters in preparing structured interviews\n  * Highlight inconsistencies in candidate histories\n\n\n\nUsed responsibly, AI can help hiring teams spend more time evaluating substance rather than presentation. For technology leaders, this dual role of AI, both enabling candidates and assisting recruiters, reinforces the need to rethink how hiring decisions are made.\n\n## AI is changing the candidate experience\n\nAI is now widely accessible to professionals across industries. Candidates are increasingly using AI to:\n\n  * Improve the structure and clarity of their resumes\n  * Prepare responses to common interview questions\n  * Research technical concepts before interviews\n  * Simulate interview scenarios using AI coaching tools\n\n\n\nIn many cases, these uses are entirely legitimate. Learning how to use AI effectively is becoming an important professional skill. The challenge emerges when AI tools begin to influence the hiring process in ways organizations did not anticipate.\n\nSome recruiters report that AI-generated resumes now appear highly polished and perfectly aligned with job descriptions. Interview responses may be structured, technically accurate and delivered with impressive fluency. Yet when candidates move into practical assessments or real work environments, the depth of knowledge sometimes does not match the initial impression.\n\nThis phenomenon is not necessarily the result of intentional deception. Often, it reflects the growing ability of AI tools to enhance presentation beyond the underlying experience.\n\nFor hiring teams, this creates a new kind of risk.\n\n## The polished profile paradox: When strong presentation outpaces technical depth\n\nAs AI becomes a common tool in job preparation, many organizations are noticing an unexpected side effect: candidate profiles are becoming increasingly polished, and increasingly similar.\n\nAI-powered tools help applicants refine resumes, structure achievements and align their profiles closely with job descriptions. As a result, many applications now feature highly consistent language, well-structured narratives and carefully optimized technical terminology.\n\nConcepts such as cloud architecture, DevOps pipelines, automation frameworks, zero-trust security and AI integration appear repeatedly across resumes, often described in nearly identical ways.\n\nIn many cases, these experiences may indeed be valid. However, when AI tools standardize how candidates present their backgrounds, it becomes harder for hiring teams to differentiate between individuals who have deep, hands-on expertise and those who are primarily familiar with the terminology.\n\nThe challenge is not that candidates are presenting themselves well; clear communication is a valuable skill. The paradox emerges when the quality of presentation begins to outpace the depth of underlying capability, making it more difficult for recruiters and hiring managers to identify truly exceptional technical talent.\n\nIn this environment, simply receiving more applications does not necessarily improve hiring outcomes. Without evaluation methods that surface real experience and practical thinking, organizations risk selecting candidates based on polished profiles rather than demonstrated capability.\n\n## The challenge of remote interviews\n\nRemote hiring has become the norm across the technology industry. It allows organizations to recruit globally and provides flexibility for both employers and candidates.\n\nBut virtual interviews also introduce blind spots. Candidates may have access to:\n\n  * **Multiple screens or monitors** , allowing them to search for information or reference external materials during the interview.\n  * **Secondary devices** , such as tablets or smartphones, which can be used to quickly look up answers without being visible to the interviewer.\n  * **Real-time AI tools** , capable of generating structured responses to technical questions within seconds.\n  * **Third-party assistance** , where another individual may be providing prompts or guidance to the candidate behind the scenes during the interview.\n\n\n\nThese possibilities do not automatically imply misconduct. However, they highlight a growing challenge for hiring teams: ensuring that interview responses accurately reflect the candidate’s own reasoning, experience and technical capability, rather than external assistance.\n\nInterview answers may appear polished and technically precise. Long pauses before responses, structured explanations and highly consistent phrasing sometimes raise questions about whether answers are being generated independently.\n\nHowever, attempting to detect AI use during interviews is unlikely to be a sustainable strategy. Technology evolves faster than detection methods, and overly intrusive monitoring risks undermining trust between candidates and employers. Instead, organizations may need to rethink the design of interviews themselves.\n\n## The goal should be evidence of capability\n\nThe most effective hiring processes focus on one core objective: gathering evidence that a candidate can actually perform the role. Rather than trying to determine whether AI was used during preparation or interviews, hiring teams should ask a more practical question: Do we have enough evidence to be confident this person can do the job?\n\nWhen hiring processes generate clear evidence of capability, concerns about AI assistance become far less significant. This requires shifting from traditional question-and-answer interviews toward more evidence-based evaluation methods.\n\nPractical examples include asking candidates to:\n\n  * Explain real projects they worked on\n  * Describe decision-making processes behind technical solutions\n  * Walk through incident or troubleshooting scenarios\n  * Discuss trade-offs made during system design\n\n\n\nExperienced professionals can usually describe how problems unfolded, why certain decisions were made and what lessons were learned. These details are much harder to reproduce artificially.\n\n## Strengthening the hiring process\n\nBased on observations from recent hiring and interviewing experiences, it has become increasingly clear that organizations may need to revisit how technical hiring processes are structured. As candidates gain access to more sophisticated tools to prepare for interviews, traditional evaluation methods may not always provide sufficient insight into real capability.\n\nSeveral approaches can help strengthen confidence in hiring decisions.\n\n  * **Scenario-based discussions** can be particularly useful. Instead of relying solely on theoretical questions, interviewers can present practical situations and ask candidates how they would approach the problem. This often reveals how individuals think, how they prioritize and how they reason through unfamiliar situations.\n  * **Real-time problem solving** can also provide valuable insight. Observing how a candidate works through a technical issue step by step often reveals far more about their mindset and problem-solving approach than prepared responses alone.\n  * **Cross-functional interview panels** : Another helpful approach is the use of cross-functional interview panels, where professionals from different technical backgrounds participate in the evaluation. Engineers, system administrators, architects or other practitioners can often explore different dimensions of a candidate’s experience and provide a more balanced assessment.\n  * Finally, **skills-based assessments** , when designed thoughtfully, can shift the focus from resume claims to practical capability. Tasks that reflect real-world work scenarios often provide clearer signals about how a candidate might perform in the role.\n\n\n\nImportantly, the objective of these methods is not to trap candidates or place them under unnecessary pressure. The goal is to create opportunities where genuine experience, thinking patterns and technical understanding can naturally emerge.\n\n## Observing capability beyond the interview\n\nEven with improved interview methods, hiring decisions should not rely entirely on a single conversation or assessment. Much like technology systems and processes are monitored and refined after deployment, organizations can treat onboarding and probation periods as part of a broader validation process. These early months provide valuable opportunities to observe how individuals operate within real environments.\n\nDuring onboarding and probation, teams can better understand:\n\n  * How individuals approach unfamiliar problems\n  * How they collaborate and communicate within teams\n  * How they translate theoretical knowledge into operational decisions\n  * How quickly they adapt to existing tools, processes and organizational practices\n\n\n\n\n\nThese observations often provide a more accurate picture of capability than interviews alone. Viewing hiring as a continuum rather than a single decision point can help organizations reduce risk while supporting new employees as they integrate into the team.\n\n## A human-centered hiring mindset\n\nAI is undoubtedly changing how candidates learn, communicate and prepare for professional opportunities. This shift is unlikely to slow down, and organizations will need to adapt accordingly.\n\nHowever, it is important to remember that hiring processes are ultimately designed to evaluate people, not just technical answers. Candidates bring more than knowledge to a role, they bring personality, professional values, cultural perspectives and individual ways of thinking.\n\nDifferences in communication style, body language or cultural background can sometimes influence how candidates present themselves during interviews. In an environment where AI assistance is becoming more common, organizations should remain mindful not to make incorrect assumptions or unfair accusations based on isolated signals.\n\nThe objective of hiring is not to identify who delivers the most polished interview responses. It is to identify individuals who can collaborate with others, solve problems and contribute meaningfully once they become part of the organization.\n\nAs AI becomes more embedded in the professional landscape, the most effective hiring processes will be those that remain balanced, combining structured evaluation with thoughtful human judgment.\n\nFor technology leaders, the implications extend beyond recruitment efficiency. Hiring decisions influence system reliability, operational resilience and in some cases the organization’s overall security posture. When the wrong expertise enters critical engineering, infrastructure or security roles, the downstream impact can reach far beyond the hiring process itself.\n\nAddressing this challenge will require closer collaboration between CIOs, CISOs, hiring managers and HR teams to design hiring approaches that emphasize evidence of real capability rather than polished presentation alone.\n\nOrganizations that rethink their hiring processes today — through stronger technical assessments, thoughtful onboarding observation and better interviewer training — will be better positioned to identify authentic talent in an AI-assisted world.\n\nBecause in the end, hiring is not about selecting the candidate who interviews the best. It is about identifying the individuals who can actually build, operate and secure the systems organizations depend on.\n\nIn an AI-enabled hiring landscape, the organizations that succeed will not be those trying to detect every tool candidates use, but those designing hiring processes that reveal real expertise regardless of it.\n\n**This article is published as part of the Foundry Expert Contributor Network.**\n**Want to join?**",
  "title": "AI in the interview room"
}