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AI​/ML Engineer; Member Technical Staff

Job in Cambridge, Middlesex County, Massachusetts, 02140, USA
Listing for: Nashville Public Radio
Full Time position
Listed on 2026-02-16
Job specializations:
  • IT/Tech
    AI Engineer, Machine Learning/ ML Engineer
Salary/Wage Range or Industry Benchmark: 60000 - 80000 USD Yearly USD 60000.00 80000.00 YEAR
Job Description & How to Apply Below
Position: AI/ML Engineer (Member of the Technical Staff)

Overview

AI/ML Engineer (Member of the Technical Staff) – Transfyr Bio

Location:

Cambridge, MA, USA

Posted on Jan 26, 2026

What You’ll Accomplish With Us
  • Learn from Messy Reality:
    Build ML systems that learn from real-world scientific execution data where feedback is delayed, labels are incomplete, and outcomes are confounded by how work was actually done.
  • Fuse the World:
    Collaborate with perception engineers to design multimodal learning pipelines that combine vision, audio, sensor data, metadata, and outcomes into coherent representations of scientific workflows.
  • Solve Credit Assignment:
    Develop models that can reason about why an experiment succeeded or failed when intent, execution, environment, and outcome are tightly entangled.
  • Know When the Model Is Unsure:
    Build systems that surface model confidence / uncertainty, enabling scientists to understand when to trust a recommendation and when to intervene.
  • Close the Loop:
    Integrate models into real workflows where outputs influence both human decisions and robotic actions, and model behavior must remain robust as protocols, operators, and environments change.
  • Generalize, Don’t Memorize:
    Ensure models learn transferable structure rather than lab- or site-specific artifacts, enabling insights to carry across experiments, teams, and geographies.
  • Lay the Groundwork for Automation:
    Enable future physical AI systems by ensuring models learn from execution-level data, not just outcomes, building foundations for automation that can work in the real world.
Who You Are
  • High agency. You don’t wait for perfect datasets or well-posed problems. You identify what needs to be learned, build the right scaffolding, and push work forward.
  • Biased toward action. You prototype quickly, test assumptions against real data, and iterate based on failure rather than waiting for theoretical certainty.
  • Successful in ambiguity. You can make progress when labels are incomplete, feedback is delayed, and success criteria evolve over time.
  • Thoughtful. You understand when sophistication helps and when it obscures, and you make deliberate tradeoffs between model complexity, robustness, and operational cost.
  • Clear, direct communicator. You can explain model performance and limitations to collaborators across engineering, science, and operations.
  • Intense. You care deeply about the mission, work hard when it matters, and help keep the team oriented toward what actually moves the needle.
What You Know
  • Great programmer:
    Strong programming expertise with experience in software engineering, data systems, and AI/ML product development.
  • ML Fundamentals:
    Strong grounding in machine learning, with experience building models that learn from noisy, real-world data rather than clean, static datasets.
  • Multimodal Learning:
    Experience working with or reasoning about multimodal systems (vision, audio, sensor data, metadata, text).
  • Python & Frameworks:
    Fluency in Python and modern ML frameworks (e.g., PyTorch), with experience training, evaluating, and iterating on models in real systems.
  • Data & Pipelines:
    Experience designing data pipelines and training/evaluation infrastructure that evolve over time as new data arrives and assumptions change.
  • Production Awareness:
    Understanding of what it takes to move from prototype to production, including monitoring, iteration, and maintaining models as environments drift.
  • Systems Mindset:
    Ability to work across the stack in close collaboration with software and perception engineers, understanding that model performance depends on the surrounding system.
  • Learning Velocity:
    Strong fundamentals, curiosity, and the ability to quickly learn new tools, models, or domains as the problem demands.
Other Things We Like To See
  • A passion for and experience in science
  • A passion for and experience with AI
  • Demonstrated experience working in fast-moving/ambiguous environments (like startups!)
The Basics
  • Competitive compensation (cash + equity)
  • Full benefits (low/no-cost health insurance options, HSA, 401K with matching, lunch subsidy, etc.)

How to apply:

Apply now

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