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Research Scientist II

CompraTica Empleos

EMP:Technology
USA
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Descripción

Who We Are Pindrop is the Real Human + Right Human® Identity Trust Platform for the AI era.

As AI-driven fraud and deepfakes erode trust in digital communication, Pindrop delivers continuous identity verification and deepfake detection across voice, video, and digital interactions in real time.

Enterprises rely on Pindrop to secure billions of high-risk customer interactions each year, including top U.

banks, as well as leading insurers and healthcare providers.

Powered by models trained on more than 1.

5 billion real-world interactions annually and protected by 300+ patents, Pindrop restores trust while reducing fraud, lowering operational costs, and improving customer experience.

Recognized by TIME as one of the Top 10 Most Influential Software Companies of 2026 and by Inc.

for Best in Business for Innovation, Pindrop is backed by leading investors including Andreessen Horowitz, IVP, and CapitalG.

What you’ll doAs a Research Scientist II on the Fraud Research team, you will help improve how Pindrop detects, scores, and investigates fraud and scams across voice and IVR interactions.

You will work on applied machine learning problems that directly impact fraud and scam prevention for major enterprise customers, balancing core model development with real-world investigation and analysis.

In this role, you will: Build and improve fraud risk models and scoring systems using a combination of audio, behavioral, and metadata-based signals.

Analyze fraud patterns across customer environments and translate findings into measurable improvements in model performance, investigation workflows, or mitigation strategies.

Research and build a scam detection stack, from conception to realization.

  Partner with engineering and cross-functional teams to move successful research into production and improve fraud outcomes in live environments.

  • Support high-priority fraud investigations by analyzing system behavior, fraudster attack patterns, and detection gaps, then recommending pra.

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