recruyt
AI

Machine Learning Engineer

recruyt · New York, United States

Actively hiring Posted 7 months ago

Role Description:

The Machine Learning Engineer will be responsible for designing and developing machine learning systems, implementing appropriate ML algorithms, conducting experiments, and improving the product. They work with data to create models, perform statistical analysis, and train and retrain systems to optimize performance. Their goal is to build efficient self-learning applications that will delight customers. This is an early-stage company with ambitious goals. We do not care about your credentials, only your skills and character.

You might be a good fit if you have:

  • Proficiency in PyTorch and modern-transformer based systems
  • Experience with AWS for scalable ML service deployment
  • Experience and working knowledge with Agentic AI frameworks (e.g., Langchain, MCP, A2A) and RAG systems
  • Have 1-3+ years of full-time experience at a hypergrowth startup

What We’re Looking For:

  • Strong ML Foundations
    • Experience with recommender systems, embeddings, foundation models. You understand when to use the fancy stuff—and when to keep it simple.
  • Production Mindset
    • You’ve shipped ML systems that run in the real world. You write reliable Python, know your way around infra basics, and care about performance.
  • Data Agility
    • You’ve worked with messy data—scraping, parsing, cleaning, and transforming it into something your models can learn from.
  • Frontend Awareness
    • You’re not expected to be a frontend engineer, but you know how to make ML feel native in a modern React-based product.
  • High Ownership DNA
    • You see the problem, spec the solution, and ship. You don’t need permission—you need a challenge.
  • 1-of-1 Energy
    • You’ve been underestimated, or boxed in. You're ready to work somewhere that lets you fully show what you're capable of.

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Machine Learning Pytorch
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