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Senior Software Engineer - Machine Learning Research

Lila SciencesCambridge, MA USA
On-site Full-time $148K/yr - $210K/yr

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Experience Level

Senior

Qualifications

Qualifications for Success A minimum of 8 years of software development experience in commercial environments using Go or Python. Proven track record in implementing scalable software solutions. Familiarity with MLOps systems and GitOps tools (ArgoCD, GitHub Actions). Experience with orchestration frameworks like Ray, Argo, or Airflow. Strong knowledge in containerization, Kubernetes, and infrastructure-as-code tools. Excellent listening skills and the ability to comprehend complex problems and algorithms. Outstanding problem-solving abilities and a collaborative mindset. Self-motivated and detail-oriented, eager to work with dynamic, skilled teams in a fast-paced, entrepreneurial environment.

About the job

Your Role at Lila Sciences

We are seeking a talented Senior Software Engineer to collaborate with our Machine Learning Engineers and Researchers. You will be instrumental in developing software that enhances Lila’s ML workflows and research tools. Join a dynamic team of engineers as you contribute to the development, support, and maintenance of Lila’s cutting-edge ML libraries and tools.

Your Contributions

  • Create and optimize high-performance, secure, and thoroughly documented Machine Learning libraries that implement algorithms crafted by our machine learning specialists.
  • Develop CI/CD pipelines and integration tests to streamline ML workflows.
  • Design repository architectures that adhere to consistent standards.
  • Assist with debugging, logging, and ongoing maintenance of Ray-based compute environments.
  • Establish data ingestion pipelines connecting lab data with the ML teams.

Qualifications for Success

  • A minimum of 8 years of software development experience in commercial environments using Go or Python.
  • Proven track record in implementing scalable software solutions.
  • Familiarity with MLOps systems and GitOps tools (ArgoCD, GitHub Actions).
  • Experience with orchestration frameworks like Ray, Argo, or Airflow.
  • Strong knowledge in containerization, Kubernetes, and infrastructure-as-code tools.
  • Excellent listening skills and the ability to comprehend complex problems and algorithms.
  • Outstanding problem-solving abilities and a collaborative mindset.
  • Self-motivated and detail-oriented, eager to work with dynamic, skilled teams in a fast-paced, entrepreneurial environment.

Preferred Qualifications

  • Experience with monitoring and logging tools such as Prometheus and Grafana.
  • Background in research engineering or scientific software development.

About Lila Sciences

Lila Sciences is at the forefront of scientific innovation, pioneering the world’s first scientific superintelligence platform and autonomous laboratory for life sciences, chemistry, and materials science. We are committed to transforming the landscape of discovery by applying AI to every facet of the scientific method. Our mission is to leverage scientific superintelligence to address humanity's most pressing challenges, empowering scientists to deliver solutions in health, climate, and sustainability with unprecedented speed and scale. Discover more about our vision at www.lila.ai.

About Lila Sciences

Lila Sciences is pioneering a revolutionary scientific superintelligence platform and autonomous lab, transforming the fields of life, chemistry, and materials science. Our mission is to harness AI to enhance the scientific method, addressing global challenges in health, climate, and sustainability with remarkable speed and efficiency.

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