ML Engineer, Discovery Applications
Company: Mithrl
Location: San Francisco
Posted on: April 2, 2026
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Job Description:
ABOUT MITHRL We imagine a world where new medicines reach
patients in months, not years, and where scientific breakthroughs
happen at the speed of thought. Mithrl is building the world’s
first commercially available AI Co-Scientist. It is a discovery
engine that transforms messy biological data into insights in
minutes. Scientists ask questions in natural language, and Mithrl
responds with analysis, novel targets, hypotheses, and patent-ready
reports. Our traction speaks for itself: 12X year-over-year revenue
growth Trusted by leading biotechs and big pharma across three
continents Driving real breakthroughs from target discovery to
patient outcomes. ABOUT THE ROLE We are hiring an ML Engineer,
Discovery Applications to build the high level, end-to-end
scientific workflows that power real bench to bench decision making
inside the Mithrl platform. This role focuses on building the
application layer on top of the AI Co-Scientist. Your work will
shape how scientists discover biomarkers, identify and validate
targets, design experiments, and run early discovery programs that
extend all the way to IND-enabling work. This role requires a deep
understanding of the discovery and preclinical development cycle.
You should understand how research teams move from early target
hypotheses to biomarker strategy, hit identification, hit to lead,
lead optimization, and preclinical validation. Your applications
will support decision making across this entire arc and will be
consumed directly by scientists and program teams. You will design
multi step workflows that combine analysis modules, ML models,
domain logic, and agentic reasoning into complete applications.
These applications cover biomarker discovery, target ID, target
validation, small molecule hit identification and optimization, and
gene therapy workflows. You will also extend applications to
support new data modalities as our platform expands. WHAT YOU WILL
DO Build full discovery applications that support biomarker
identification, target discovery, target validation, small molecule
design workflows, and gene therapy programs Stand up new analyses
that support application logic and improve or extend the existing
analysis suite Create multi step reasoning flows that integrate ML
models, statistical methods, pathway context, simulation tools, and
biological domain logic Design application specific workflows for
compound evaluation, program prioritization, and multi modal
evidence integration Extend existing applications to incorporate
new data modalities and new analysis routines Build reusable
frameworks for Design of Experiments across biomarker discovery,
target ID, validation, small molecule programs, and gene therapy
Implement and improve the AI systems that orchestrate and chain
analyses into coherent applications used directly by scientists
Collaborate closely with ML engineers, bioinformatics teams, and
data ingestion teams to ensure workflows run on consistent data
Validate scientific correctness and ensure applications produce
accurate, reproducible, and interpretable results WHAT YOU BRING
Required Qualifications Strong experience in ML, computational
biology, scientific computing, or a related field Deep
understanding of the drug discovery and preclinical development
cycle including early discovery, target identification, target
validation, hit identification, hit to lead, lead optimization, and
IND-enabling work Experience building analytical workflows or
application logic for biological or scientific data Familiarity
with key discovery analysis methods such as differential
expression, pathway analysis, clustering, enrichment, and target
scoring Proficiency in Python and scientific computing libraries
and comfort with building multi step workflows Ability to convert
scientific questions into structured, reproducible workflows that
support real decision making Strong communication skills and
ability to collaborate with cross functional engineering and
biology teams Nice to Have Experience building LLM powered agents
or multi agent reasoning systems Experience with multi modal
biological data integration Experience with computational chemistry
tools such as docking or ADMET modeling Familiarity with biological
ontologies, curated knowledge sources, or pathway databases Prior
experience in a tech bio startup, biotech R&D group, or
scientific software platform WHAT YOU WILL LOVE AT MITHRL High
ownership and impact: You will build the decision making
applications that scientists rely on throughout the discovery and
preclinical process Team: Join a tight-knit, talent-dense team of
engineers, scientists, and builders Culture: We value consistency,
clarity, and hard work. We solve hard problems through focused
daily execution Speed: We ship fast (2x/week) and improve
continuously based on real user feedback Location: Beautiful SF
office with a high-energy, in-person culture Benefits:
Comprehensive PPO health coverage through Anthem (medical, dental,
and vision) 401(k) with top-tier plans We encourage you to apply
even if you do not believe you meet every single qualification. Not
all strong candidates will meet every single qualification as
listed. Research shows that people who identify as being from
underrepresented groups are more prone to experiencing imposter
syndrome and doubting the strength of their candidacy, so we urge
you not to exclude yourself prematurely and to submit an
application if you're interested in this work. We think AI systems
like the ones we're building have enormous social and ethical
implications. We think this makes representation even more
important, and we strive to include a range of diverse perspectives
on our team.
Keywords: Mithrl, Watsonville , ML Engineer, Discovery Applications, Science, Research & Development , San Francisco, California