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Machine Learning Engineer

Protech Talent

Location

Remote

Salary

Not specified

Type

Full-time

Posted

Today

via linkedin

Job Description

💼 Machine Learning Engineer

Full-time \| Hybrid \| NYC or San Francisco

Compensation: $200K – $400K \+ Competitive Equity

🚀 About the Role:

We’re looking for an

Applied AI Engineer

to help turn cutting-edge machine-learning research into production-grade, revenue-driving products.

You’ll own projects end-to-end — from model selection and data pipelines to deployment, monitoring, and iteration in live environments. Expect full autonomy, high accountability, and constant cross-functional collaboration with product and operations teams.

💼 About the Company:

This company is a fast-growing AI-driven healthcare startup on a mission to make life-changing therapies accessible faster and more affordably. They’re combining first-party healthcare data with cutting-edge AI to streamline one of the most complex and outdated systems in the world — from insurance to drug access to patient support.

Backed by top-tier investors (including funds behind companies like Stripe, OpenAI, and Airbnb), they’re scaling rapidly and have already achieved strong product-market fit. The team is composed of exceptional engineers, operators, and scientists from top startups and research labs.

The culture is

intense, collaborative, and ownership-driven

— ideal for builders who thrive in zero-to-one environments and want to see their work make a measurable impact on real lives.

What you’ll do:

  • Build and productionize ML and LLM-based systems that power automation, prediction, and intelligent search.
  • Combine techniques like data extraction, document classification, workflow orchestration, and multimodal modeling.
  • Lead zero-to-one experiments and deliver models that ship to real customers.
  • Collaborate directly with business and engineering stakeholders to scope, design, and deploy AI-driven features.
  • Evaluate new methods, fine-tune models, and continuously improve reliability, latency, and accuracy.
  • Build internal tools and pipelines that accelerate future AI development.

This is a Hybrid

, high-ownership

position for builders who thrive in fast-moving, product-driven environments.

🧠 What We’re Looking For:

Experience

  • 1\+ years as an AI / ML Engineer, Applied Scientist, or ML Research Engineer
  • Hands-on experience building and deploying ML systems in production (not research-only)
  • Background at a

top-tier tech or early-stage startup

that has shipped AI-powered products

  • End-to-end project ownership — data, training, infra, deployment, iteration

Technical Skills

  • Proficiency with modern ML frameworks (PyTorch, TensorFlow, Transformers, LLM APIs)
  • Experience fine-tuning, prompting, or orchestrating large-language-model systems
  • Strong foundation in full-stack development (Python \+ React / TypeScript / PostgreSQL / Kubernetes)
  • Comfortable designing scalable data and inference pipelines on cloud (AWS preferred)

Soft Skills

  • Low-ego, high-ownership mindset
  • Strong written \+ verbal communication and cross-team collaboration
  • Bias toward speed, clarity, and tangible results

Nice to Have

  • Founder or early-startup experience
  • Pear Fellow / Neo Scholar background
  • Degree in CS or related field from a top program (or equivalent practical excellence)

💡 Why Join:

  • Product-market fit \+ hypergrowth:

the platform already serves thousands of users and is scaling fast.

  • AI-first mission:

core business outcomes are directly driven by applied ML and generative AI.

  • Top-tier funding \+ team:

backed by leading investors; small, elite engineering org where impact compounds quickly.

  • High autonomy \+ ownership:

you’ll shape not just the product but the AI infrastructure

🧩 Interview Process:

  • Initial Screen (30 min):

Background, motivation, and alignment with company mission.

  • Technical Interview (45 min):

Coding-focused (Python), similar to a Leetcode-style exercise.

  • Project Walkthrough (45 min):

Deep dive into a previous ML or AI system you’ve built.

  • Systems Design (45 min):

Evaluate how you approach scaling, deployment, and architecture.

  • Onsite / Final Round (Half Day):

Collaborative project with the team to assess real-world problem solving and communication.

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