Principal Scientist or Assoc Director, Bioinformatics / Machine Learning
Company: Radionetics Oncology, Inc.
Location: San Diego
Posted on: February 16, 2026
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Job Description:
Job Description Job Description About Radionetics Radionetics
Oncology, Inc. is a clinical stage radiopharmaceutical company
focused on the discovery and development of novel
radiopharmaceuticals for the treatment of a wide range of oncology
indications and is poised to capitalize on the increasing demand
for novel radiotherapeutics. Radionetics Oncology is supported by
Frazier Life Sciences, 5AM Ventures, DCVC Bio, Crinetics
Pharmaceuticals, and GordonMD Global Investments and has entered
into a strategic agreement with Eli Lilly. Radionetics is advancing
a pipeline of first-in-class small molecule radioligands targeting
G protein coupled receptors for the treatment of a broad range of
cancers, including breast cancer, lung cancer, and other
indications of high unmet need. For more information, visit
https://radionetics.com. Position summary We are seeking a highly
experienced Principal Scientist/Associate Director (Princ Sci/Assoc
Dir) to lead the application of machine learning and AI to
large?scale proteomics data in support of radiopharmaceutical
target validation, prioritization, and patient selection
strategies. This role will also have scientific ownership of the
internal sample and proteomics data infrastructure, ensuring data
quality, consistency, and long?term usability across discovery and
clinical programs. The Princ Sci/Assoc Dir will operate at the
intersection of computational biology, proteomics, and
translational oncology, transforming complex datasets into
actionable insights that directly impact both preclinical and
clinical decision?making. Essential job functions and duties Create
and manage the central sample database integrated with the internal
proteomics database, including the definition and implementation of
data standards, schemas, and governance practices Integrate
internal proteomics and sample databases with public resources
ensuring harmonization between internal and public datasets Apply
supervised, unsupervised, and semi?supervised learning approaches
for high?dimensional proteomics data Design and implement machine
learning models using quantitative LC?MS/MS proteomics data to: (1)
identify biologically meaningful patient subgroups; (2) derive
protein signatures predictive of target expression, uptake, and
response; and (3) support target validation, prioritization, and
indication selection Collaborate with translational and clinical
teams to align analytical outputs with clinical study objectives
Develop proteomics?based patient selection signatures to: (1)
identify responder?enriched patient populations; (2) inform
inclusion/exclusion criteria for clinical trials; and (3) support
potential companion diagnostic strategies Develop models evaluating
tumor selectivity versus normal and critical organs, and expression
stability across disease stages and metastatic sites Maintain a
work environment focused on scientific integrity and quality
Perform other duties as required by business needs Education &
Experience Ph.D. in Computer Science / Machine Learning or similar
field with relevant experience (industry experience preferred)
Required Expertise Hands?on experience with biological data
infrastructure, including sample and omics data management Proven
use of public biological databases Deep understanding and expertise
of Machine Learning Principles and how they apply to different
models Proficiency in R and/or Python’s deep learning libraries
Familiarity with multimodal data integration, including early
and/or late fusion strategies. ML applied to Omics data (e.g.,
Proteomics, RNA-seq, DNA methylation), biological imaging
modalities (e.g. microscopy, H&E, IF), and/or spatial biology.
Highly Desirable Experience with multi-GPU and distributed training
at scale Experience analyzing large?scale proteomics (LC?MS/MS)
datasets Experience in oncology drug discovery or translational
research Familiarity with membrane proteins, GPCRs, or
surface?targeted therapeutics Experience supporting target
validation, biomarker development, or clinical study design
Non-standard work schedule, travel or environmental requirements
Position is on-site in San Diego; occasional weekend work hours may
be required. Compensation & Benefits Radionetics has a competitive
total compensation package that includes bonus opportunity; equity;
medical, dental, vision, life, short-term, and long-term disability
insurance; 401(k) retirement plan with employer match; 4 weeks of
paid time off (PTO) annually; and generous paid holidays. Pay Range
The pay for this position is $175,000 - $215,000 and dependent on
the level of position hired. Radionetics evaluates a variety of
factors in determining individual pay decisions, which may include
relevant education, experience, and skills; internal equity;
complexity and responsibility of the role; and market demand
relative to the position. Geographic location may also be a
consideration in evaluating salary when candidates work in states
outside of California. Important notices Radionetics Oncology, Inc.
is committed to a policy of equal opportunity in which all
qualified applicants receive equal consideration for employment
without regard to race, color, national origin, ancestry, religion,
sex, pregnancy, marital status, sexual orientation, gender, gender
identity and expression, age, physical and medical disability,
medical condition, genetic information, military or veteran status,
or any other federal, state or local protected class. The job
description specifics provided above are intended to describe the
general nature and level of work performed by people assigned to
this classification. They are not intended to be construed as an
exhaustive list of all responsibilities and requirements.
Radionetics retains the right to add or change duties, education,
experience, skills or any other requirements of the position at any
time. Radionetics does not accept unsolicited referrals from
employment agencies for position vacancies unless written
authorization is provided from the Human Resources department
before any candidates are referred for specific identified
positions. In the absence of such written authorization, any
actions taken by the employment business/agency shall be deemed to
have been performed without consent or contractual agreement, and
Radionetics shall not be liable for any fees arising from such
actions or referrals for position vacancies at Radionetics. Powered
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Keywords: Radionetics Oncology, Inc., San Bernardino , Principal Scientist or Assoc Director, Bioinformatics / Machine Learning, Science, Research & Development , San Diego, California