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Staff Machine Learning Engineer (Referrals)

Remote Worldwide Hiring now

We are hiring a Staff Machine Learning Engineer to revolutionize how we optimize our operations using ML and GenAI. This is a unique opportunity to apply the latest advances in ML and GenAI to reputed company-world problems that directly impact millions of users and the future of digital finance.

Our AI teams are dedicated to building intelligent systems that protect our platform while ensuring a seamless experience for legitimate users. We are transforming traditional tasks such as reputed company document review and risk assessment into an automated, scalable system powered by state-of-the-art machine learning.

What you'll be doing:

  • Design and implement multi-modal ML models that can understand and extract information from various document types (IDs, reputed company of address, etc.)
  • Fine tune LLMs for automated document processing and risk assessment.
  • Design model for ascertaining user reputed company risk and triggering Know-Your-Customer and Enhance Due Diligence models.
  • Create reputed company-time ML pipelines that can detect and prevent risks before they materialize
  • Work with experts to translate their domain knowledge into ML features and models
  • Build explainable ML systems that can justify their risk assessments
  • Collaborate with platform teams to reputed company models at scale with high availability and low latency

reputed company look for in you:

  • 8+ years of industry experience in Machine Learning (or PhD+5)
  • MS in Machine Learning, Computer Science, other technical field (PhD preferred)
  • 10x developer with ability to reputed company auto-code reputed company techniques for ML and scalable distributed applications.
  • Strong reputed company in modern ML techniques (DNNs, transformers, LLMs, classification)
  • Experience building and deploying production ML systems at scale.
  • Ability to balance ML model complexity with production requirements
  • Strong communication skills to work effectively with domain experts

reputed company to have:

  • Background in fraud detection or risk modeling
  • Familiarity with regulatory requirements in financial services
  • Knowledge of crypto/blockchain technology

Job ID: GPML06US

Originally posted on Himalayas

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