Machine Learning Scientist

Delfi DiagnosticsPalo Alto, CA
58d$150,000 - $180,000

About The Position

In this role, you will develop, tune, and advance Delfi's machine learning models for early cancer detection. You'll focus on improving model performance through structured experimentation, creative modeling strategies, and rigorous benchmarking-pushing models up internal leaderboards and identifying what drives improvement. You'll also explore how the raw intelligence of large language models (LLMs) can be applied to improve model performance and feature representations-leveraging their reasoning capabilities. Working closely with bioinformaticians, engineers, and data scientists, you'll operate at the intersection of machine learning and biology, translating genomic signals into clinically meaningful insight. This role is ideal for a scientist who enjoys hands-on modeling, thrives on iteration and discovery, and seeks to combine deep technical understanding with curiosity about new forms of machine intelligence. While prior industry experience is preferred, we also welcome exceptional PhD graduates or postdocs who have demonstrated strong applied ML engineering skills and a track record of collaborative, reproducible work.

Requirements

  • PhD in Computer Science, Machine Learning, Computational Biology, Applied Mathematics, or a related field
  • 2 or more years of relevant industry or post-doctorate experience
  • Experience developing and evaluating ML models in applied or collaborative research settings, with a demonstrated ability to deliver high-quality, maintainable code and reproducible results
  • Experience working in team-based environments with shared codebases and version control practices
  • Proficiency in Python, including use of ML frameworks such as PyTorch, TensorFlow, or scikit-learn
  • Experience applying MLOps best practices for experiment tracking, model versioning, or data pipeline reproducibility (e.g., MLflow, Weights & Biases, or equivalent)
  • Demonstrated success improving model performance through experimentation, architecture design, or advanced optimization methods
  • Familiarity with large language models (LLMs), including APIs, frameworks, and fine-tuning methods
  • Strong grounding in statistics, data analysis, and reproducible experimentation
  • Excellent communication skills and the ability to collaborate effectively across scientific and technical disciplines
  • A demonstrated record of scientific communication, including at least one peer-reviewed publication in a recognized ML conference or scientific journal

Nice To Haves

  • Experience with genomic, sequencing, or other biological data
  • Exposure to cloud-based ML environments (AWS, GCP) or large-scale data pipelines
  • Background in deep learning, probabilistic modeling, or ensemble methods

Responsibilities

  • You'll design, implement, and optimize machine learning models for genomic and fragmentomic data, perform systematic benchmarking to assess model quality, and analyze the factors that drive predictive improvements.
  • You'll explore the use of LLMs to enhance feature representations and model architectures.
  • You'll ensure robust, reproducible experimentation through sound data practices and MLOps best practices such as versioning, model tracking, and environment management.
  • You'll collaborate closely with teams across computational biology, bioinformatics, and software engineering to build shared understanding and integrate insights from data.

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What This Job Offers

Job Type

Full-time

Career Level

Mid Level

Industry

Ambulatory Health Care Services

Education Level

Ph.D. or professional degree

Number of Employees

101-250 employees

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