You probably have heard about fake candidates. But in today’s world they’re evolving. We’re talking about fake and deep-fake candidates: people (or sometimes entirely synthetic personas) who apply with the goal of misrepresenting their identity, credentials or even their very presence. Let’s unpack what’s going on and then how recruiters can catch them early.
What are fake and deep-fake candidates and what’s behind them
Fake candidates come in a few flavors: someone who lies on their resume, fakes credentials, or uses someone else’s identity. Deep-fake candidates go a step further: AI-generated or heavily edited photos, voices, video interviews where someone else answers, or even fully synthetic personas created to infiltrate a company.
Why are people doing it? Some just want a job they’re not qualified for. Others carry more malicious intent: theft of company data, insertion into a remote workforce so they can gain access, social engineering, espionage.
For recruiters and organisations, this is no longer a fringe issue. One research firm predicts up to 25 % of candidates globally could be fake in the next few years. So guarding your hiring funnel is not an option. It’s mandatory. We got you some practical signs and steps you can build into your process.
How to spot them at the application/resume stage
Right when the resume lands you can pick up red flags. Red flags to watch for:
– A photo that looks too perfect, or is generic stock-style or AI-generated. Deep-fake candidates often use headshots that lack authenticity.
– LinkedIn profile, portfolio or online presence that don’t match the resume claims or are minimal. If someone claims 10-year experience in a niche, yet there’s no trace of projects, references, or even earlier roles.
– Resume credentials that are vague: “Worked at major fintech startup” but no company name, dates, details. Sudden leaps in role seniority without clear history.
– Application came in minutes after job posting and all details are polished and identical to boilerplate. That fast response may indicate an automated grab of job ads.
– Contact details that look off: generic email, no phone, or phone number from a country you don’t normally hire from (especially for remote roles).
– Strange discrepancies: date of birth inconsistent, address doesn’t align with claimed location, multiple jobs overlapping on paper.
– They emphasize buzzwords like blockchain, web3, crypto, but when you examine their experience there is little substance.
At this stage you can set up some small screening protocols: verify that the LinkedIn profile was created some time ago, ask for a short video introduction (unlisted link) just to see if the person can speak about their application, even that small friction helps deter fakes.
How to spot them during the interview process
Once you invite them to a call or video chat, you gain more to work with. Things to check:
– Video turned off or camera covers only part of the face, or candidate refuses to show themselves. Deep-fake or impostor candidates often avoid full video.
– Inconsistencies in speech, body language, timing. If the candidate hesitates when you ask something live that was on their résumé, or gives vague answers when you ask for specifics (“Tell me about a time you built this feature end to end”).
– Ask very tangible questions about their claimed experience: specific tools used, difficulties encountered, what they would do differently. If answers lean generic or clearly borrowed, that is a sign.
– For remote/hybrid roles in sensitive areas (crypto, fintech) consider requiring identity verification (photo ID + live selfie) and checking the person matches. Also consider using proctoring tools for coding interviews if relevant.
– For video interviews use a quick live test: ask them to turn the camera sideways, hold up a hand, change lighting or background for 30 seconds. If the feed freezes or the candidate resists, that could indicate manipulated video.
– Check voice authenticity: Ask open-ended follow-up questions and observe whether responses sound rehearsed, or if there’s unnatural pauses that might indicate voice manipulation.
– Look for “too perfect” narrative: The candidate claims to have done everything (strategy, execution, leadership, emerging tech) in multiple roles with no weakness. Real humans have trade-offs, gaps, growth stories.
– After the call check consistency: Is what they said in the interview aligned with their résumé and LinkedIn profile. If not, ask for proof: code samples, project summaries, references.
Why this matters for your recruitment brand
If you hire a fake or deep-fake candidate you risk much more than a mismatched hire. You risk data breach, internal fraud, reputation damage, especially in sectors like web3 or fintech where trust is key. The entire recruitment process can get compromised.
By being rigorous you build a reputation as recruiters who care about candidate authenticity, quality and trust. For your audience of clients and candidates this sets you apart.
Fake and deep-fake candidates are a growing bad reality. But you don’t have to be powerless. With intentional screening at the application stage and smart interview design you can catch many of the risky cases.
