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    Home»AI News»McKinsey tests AI chatbot in early stages of graduate recruitment
    McKinsey tests AI chatbot in early stages of graduate recruitment
    AI News

    McKinsey tests AI chatbot in early stages of graduate recruitment

    adminBy adminJanuary 15, 2026No Comments5 Mins Read
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    Hiring at large firms has long relied on interviews, tests, and human judgment. That process is starting to shift. McKinsey has begun using an AI chatbot as part of its graduate recruitment process, signalling a shift in how professional services organisations evaluate early-career candidates.

    The chatbot is being used during the initial stages of recruitment, where applicants are asked to interact with it as part of their assessment. Rather than replacing interviews or final hiring decisions, the tool is intended to support screening and evaluation earlier in the process. The move reflects a wider trend across large organisations: AI is no longer limited to research or client-facing tools, but is increasingly shaping internal workflows.

    Why McKinsey is using AI in graduate hiring

    Graduate recruitment is resource-heavy. Every year, large firms receive tens of thousands of applications, many of which must be assessed in short hiring cycles. Screening candidates for basic fit, communication skills, and problem-solving ability can take a long time, even before interviews begin.

    Using AI at this stage offers a way to manage volume. A chatbot can interact with every applicant, ask consistent questions and collect organised responses. Human recruiters can then review that data, rather than requiring staff to manually screen every application from scratch.

    For McKinsey, the chatbot is part of a larger assessment process that includes interviews and human judgment. According to the company, the tool helps in gathering more information early on, rather than making recruiting judgments on its own.

    Shifting the role of recruiters

    Introducing AI into recruitment alters how hiring teams operate. Rather than focusing on early screening, recruiters can devote more time to assessing prospects who have already passed initial tests. In theory, that allows for more thoughtful interviews and deeper evaluation later in the process.

    At the same time, it raises questions about oversight. Recruiters need to understand how the chatbot evaluates responses and what signals it prioritises. Without that visibility, there is a risk that decisions could lean too heavily on automated outputs, even if the tool is meant to assist rather than decide.

    Professional services firms are typically wary about such adjustments. Their reputations rely heavily on talent quality, and any perception of unfair or flawed hiring practices carries risk. As a result, recruitment serves as a testing ground for AI use, as well as an area where controls are important.

    Concerns around fairness and bias

    Using AI in hiring is not without controversy. Critics have raised concerns that automated systems can reflect biases present in their training data or in how questions are framed. If not monitored closely, those biases can affect who progresses through the hiring process.

    McKinsey has said it is mindful of these risks and that the chatbot is used alongside human review. Still, the move highlights a broader challenge for organisations adopting AI internally: tools must be tested, audited, and adjusted over time.

    In recruitment, that includes checking whether certain groups are disadvantaged by how questions are asked or how responses are interpreted. It also means giving candidates clear information about how AI is used and how their data is handled.

    How McKinsey’s AI hiring move fits a wider enterprise trend

    The use of AI in graduate hiring is not unique to consulting. Large employers in finance, law, and technology are also testing AI tools for screening, scheduling interviews, and analysing written responses. What stands out is how quickly these tools are moving from experiments to real processes.

    In many cases, AI enters organisations through small, contained use cases. Hiring is one of them. It sits inside the company, affects internal efficiency, and can be adjusted without changing products or services offered to clients.

    That pattern mirrors how AI adoption is unfolding more broadly. Instead of sweeping transformations, many firms are adding AI to specific workflows where the benefits and risks are easier to manage.

    What this signals for enterprises

    McKinsey’s use of an AI chatbot in recruitment points to a practical shift in enterprise thinking. AI is becoming a tool for routine internal decisions, not just analysis or automation behind the scenes.

    For other organisations, the lesson is less about copying the tool and more about approach. Introducing AI into sensitive areas like hiring requires clear boundaries, human oversight, and a willingness to review outcomes over time.

    It also requires communication. Candidates need to know when they are interacting with AI and how that interaction fits into the overall hiring process. Transparency helps build trust, especially as AI becomes more common in workplace decisions.

    As professional services firms continue to test AI in their own operations, recruitment offers an early view of how far they are willing to go. The technology may help manage scale and consistency, but responsibility for decisions still rests with people. How well companies balance those two will shape how AI is accepted inside the enterprise.

    (Photo by Resume Genius)

    See also: Allister Frost: Tackling workforce anxiety for AI integration success

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