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Kake Linkedin · Posted 28d ago

Biologist with Python Proficiency - AI Trainer - Remote - Latin America

Chile

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Indexed description

We're building a talent pool of Biology professionals with Python proficiency to contribute to project-based AI development initiatives, focused on evaluating and enhancing frontier AI models.


Designed for biology specialists who enjoy deep technical problem-solving, this pipeline role is for those looking to apply their computational expertise to evaluate and push the boundaries of frontier AI models, relying on domain-specific tools such as NEURON, Brian2, OpenSim, AMICI, or MNE-Python, with verifiable, code-graded answers run inside isolated Linux environments.


Key Responsibilities

  • Identify an appropriate computational biology package and build problems whose solution genuinely hinges on that tool's core capabilities, whether biophysical models, ODE/PDE systems, biomechanical formulations, or sequence algorithms.
  • Develop full Python solutions for each problem, providing all necessary input files, model definitions, and network configurations as required.
  • Establish the correct numerical output and define how close the AI model needs to get, using tolerance values appropriate to the biological context.
  • Run the problem against the AI model across multiple parallel attempts, analyzing where it succeeds or falls short, and adjusting difficulty until the pass rate falls between 10% and 30%.
  • Tune channel kinetics, stimulation protocols, and solver tolerances iteratively, building an understanding of how the model navigates complex neuronal, biomechanical, and systems biology problems.
  • Hand off completed tasks to a senior reviewer in your subfield and refine based on their feedback before final submission.


Core Requirements

  • Academic background in Biology or a closely related field.
  • At least 2 years of hands-on experience in biology research, applied work, or teaching.
  • Solid Python skills, applied to writing and validating computational solutions.
  • Capacity to build problems that cannot be solved without specialized computational biology software.
  • Excellent written and verbal communication skills in English.
  • Ability to work independently in a remote, fast-paced environment.


Nice-to-Have

  • Working knowledge of one or more domain-specific computational biology tools, including but not limited to NEURON, Brian2, NEST, OpenSim, AMICI, libroadrunner, MNE-Python, or Biopython, or a demonstrated ability to get up to speed independently.
  • Prior exposure to how frontier AI models approach complex simulation tasks.
  • Knowledge spanning more than one biology domain, such as computational neuroscience, biomechanics, or systems biology.
  • Familiarity with containerized or sandboxed Linux execution environments.


Why Join Kake?

Kake is a remote-first company with a global community, fully believing that it’s not where your table is, but what you bring to the table that matters. We provide top-tier engineering teams to support some of the world’s most innovative companies, and we’ve built a culture where great people stay, grow, and thrive. We’re proud to be more than just a stop along the way in your career - we’re the destination. The icing on the Kake:


Competitive Pay in USD: Work globally, get paid globally.

Fully Remote: Simply put, we trust you.

Better Me Fund: We invest in your personal growth and passions.

Compassion is Badass: Join a community that invests in social good.


Please Note: Due to the high volume of applications, only shortlisted candidates will be contacted.

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