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Machine Learning Engineer

Harrison Clarke

Location

New York, United States

Salary

Not specified

Type

fulltime

Posted

Today

via linkedin

Job Description

We're partnered with a venture-backed technology company using AI to solve complex, real-world operational challenges at scale. The team is building production AI systems that combine retrieval, ranking, decision-making, and generative models to automate highly complex workflows while maintaining reliability, explainability, and measurable business outcomes.

This is an opportunity to join a high-calibre engineering team where you'll work across the full lifecycle of machine learning systems, from early-stage experimentation and model development through to deployment, monitoring, and continuous improvement in production.

What You'll Be Working On

  • Building and scaling machine learning infrastructure that enables rapid experimentation, benchmarking, evaluation, and deployment.
  • Designing and developing AI systems for retrieval, ranking, classification, recommendation, and generative AI applications.
  • Owning the end-to-end lifecycle of machine learning systems, from problem definition and model selection through production deployment and iteration.
  • Creating robust evaluation frameworks, datasets, and validation methodologies to measure real-world performance and business impact.
  • Developing ranking and decision-making systems that intelligently route tasks between automated systems and human operators.
  • Building feedback loops and data flywheels that continuously improve model performance over time.
  • Working closely with engineering, product, and domain experts to translate complex business problems into scalable AI solutions.
  • Prototyping new AI capabilities from inception and evolving them into reliable production systems.
  • Contributing to machine learning best practices across model development, experimentation, deployment, and monitoring.

What We're Looking For

  • 5\+ years of software engineering experience, including at least 2\+ years working directly with machine learning systems.
  • Strong experience developing and deploying machine learning models into production environments.
  • Proficiency with Python and modern machine learning frameworks such as PyTorch, TensorFlow, or JAX.
  • Experience building large-scale AI systems involving retrieval, ranking, recommendation, search, classification, or generative AI.
  • Strong understanding of machine learning evaluation, experimentation, benchmarking, and model performance optimization.
  • Experience designing scalable distributed systems and production-grade software architectures.
  • Ability to move comfortably between research, engineering, and product discussions.
  • Strong communication skills and a bias toward ownership and execution.

Nice to Have

  • Experience working with LLMs, RAG systems, AI agents, or generative AI applications.
  • Experience building experimentation platforms, evaluation frameworks, or ML infrastructure.
  • Background in ranking systems, recommendation systems, search, or decision intelligence.
  • Experience operating machine learning systems at scale with real-world users and production traffic.
  • Previous experience mentoring engineers or leading technical initiatives.

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