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Altos Labs

Machine Learning Engineer, Computer Vision

Posted 19 Days Ago
In-Office
9 Locations
Mid level
In-Office
9 Locations
Mid level
The Machine Learning Engineer will develop AI models, architect scalable systems, optimize data training, and enable seamless communication between scientists and engineers to advance biomedical analysis.
The summary above was generated by AI
Our Mission

Our mission is to restore cell health and resilience through cell rejuvenation to reverse disease, injury, and the disabilities that can occur throughout life.

For more information, see our website at altoslabs.com.

Our Value

Our Single Altos Value: Everyone Owns Achieving Our Inspiring Mission.

Diversity at Altos

We believe that diverse perspectives are foundational to scientific innovation and inquiry. At Altos, exceptional scientists and industry leaders from around the world work together to advance a shared mission. Our intentional focus is on Belonging, so that all employees know that they are valued for their unique perspectives. We are all accountable for sustaining a diverse and inclusive environment.

What You Will Contribute To Altos

At Altos Labs, our mission to unravel the mysteries of cell rejuvenation and human health hinges on groundbreaking quantitative solutions. The role of a Machine Learning Engineer is a pivotal architect in building the high-performance, scalable systems that translate complex biomedical imagery and multi-omics data into actionable insights. Machine Learning engineers at Altos directly enable and accelerate the mission by pioneering state-of-the-art computer vision and machine learning applications. The best candidate has expertise that  bridges the gap between cutting-edge scientific discovery and robust, accessible computational tools. The contributions will be profoundly impactful, driving innovation across multiple scales of biomedical data – from Electron/Light Microscopy and Digital Histology/Pathology to sophisticated In Vivo functional analysis. Collaborating seamlessly with our ML Ops team, we aim to ensure our models are not just powerful, but also easily trainable, discoverable, interpretable, and universally accessible across diverse research groups.

Responsibilities:

  • Pioneer Model Development & Optimization: The Machine Learning Engineer will be at the forefront, meticulously evaluating and re-engineering state-of-the-art AI models across the entire spectrum of imaging. This includes developing solutions for de novo protein design, structure identification, and dynamics in single-particle CryoEM, as well as integrating light microscopy and multi-omics data for cross-domain mapping of in situ and in vivo collected data. Your deep technical acumen will transform complex algorithms into practical, high-impact tools.
  • Architect Scalable Distributed Systems: Leverage deep software engineering skills to design, develop, and implement reliable, performant, and inherently scalable distributed systems within a dynamic cloud environment. The  solutions proposed will form the backbone of our computational infrastructure, handling massive, intricate datasets with precision and efficiency.
  • Optimize Data Pipelining for Exascale Training: Take ownership of developing highly efficient data loading strategies and robust performance tracking mechanisms essential for training colossal models. This involves expertly orchestrating distributed training across multiple compute nodes, pushing the boundaries of what's possible in large-scale machine learning.
  • Forge Integrated Analysis Pipelines: Engineer, deploy, and meticulously manage complex multi-modal analysis pipelines that serve as the bedrock for scientific analysis and sophisticated machine learning workflows. The vision is to culminate in a unified, intuitively usable framework that empowers our scientists.
  • Bridge the Technical and Scientific Divide: Serve as the essential communication conduit, adeptly translating complex technical concepts between experimental scientists, advanced algorithm developers, and deployment engineers. Your ability to foster clear, effective communication will ensure seamless integration and successful project execution.
  • Drive Technical & Cultural Excellence: Proactive force in designing and championing technical and cultural standards across both scientific and engineering functions. Your leadership will ensure best practices in code quality, collaboration, and continuous innovation.
Who You AreMinimum Qualifications
  • BS/MS in Computer Science, Biomedical Engineering, or a closely related quantitative field.
  • 2-5 years of direct, hands-on experience in relevant industry and/or academic settings, showcasing your ability to deliver tangible results.
  • Mastery of core programming languages critical for large-scale data management and machine learning, including Python, C++, and deep proficiency with frameworks like PyTorch/TensorFlow, and PyTorch Lightning.
  • Demonstrable expertise in Machine Learning at scale, with practical experience in Large Language Models, Self-Supervised/Contrastive/Representation Learning for Computer Vision applications, and multi-modal data integration.
  • Proven capability in applying rigorous software engineering practices within a scientific or similarly demanding, high-stakes environment.
  • A strong, demonstrable track record of hands-on technical leadership and significant scientific contributions, as evidenced by publications or conference presentations.
  • An innate enthusiasm to design, implement, and champion technical and cultural standards that elevate our entire scientific and technical ecosystem.
Preferred Qualifications
  • Prior experience with bioinformatics data processing and analysis, showcasing a relevant domain understanding.
  • Expertise in multi-source data integration, solving complex challenges in disparate datasets.
  • Practical experience with cloud computing platforms and containerization technologies, enabling scalable deployments.
  • Knowledge of genetics and/or human genetics, further enhancing your ability to contribute to our core mission.

The salary range for San Francisco Bay Area, CA:

  • Machine Learning Engineer I: $153,000 - $207,000
  • Machine Learning Engineer II: $178,500 - $241,500

The salary range for San Diego, CA:

  • Machine Learning Engineer I: $150,450 - $203,550
  • Machine Learning Engineer II: $170,000 - $230,000

Exact compensation may vary based on skills, experience, and location.

#LI-KM1

For UK applicants, before submitting your application:

- Please click here to read the Altos Labs EU and UK Applicant Privacy Notice (bit.ly/eu_uk_privacy_notice)
- This Privacy Notice is not a contract, express or implied and it does not set terms or conditions of employment.

Equal Opportunity Employment

We value collaboration and scientific excellence.

We believe that diverse perspectives and a culture of belonging are foundational to scientific innovation and inquiry. At Altos Labs, exceptional scientists and industry leaders from around the world work together to advance a shared mission. Our intentional focus is on Belonging, so that all employees know that they are valued for their unique perspectives. We are all accountable for sustaining an inclusive environment.

Altos Labs provides equal employment opportunities to all employees and applicants for employment, without regard to race, color, religion, age, sex, national origin, disability status, genetics, protected veteran status, sexual orientation, gender identity or expression, or any other characteristic protected by federal, state or local laws. Altos prohibits unlawful discrimination and harassment. This policy applies to all terms and conditions of employment, including recruiting, hiring, placement, promotion, termination, layoff, recall, transfer, leaves of absence, compensation and training.

Altos currently requires all employees to be fully vaccinated against COVID-19, subject to legally required exemptions (e.g., due to a medical condition or sincerely-held religious belief).

Thank you for your interest in Altos Labs where we strive for a culture of scientific excellence, learning, and belonging.

Note: Altos Labs will not ask you to download a messaging app for an interview or outlay your own money to get started as an employee. If this sounds like your interaction with people claiming to be with Altos, it is not legitimate and has nothing to do with Altos. Learn more about a common job scam at https://www.linkedin.com/pulse/how-spot-avoid-online-job-scams-biron-clark/

Top Skills

C++
Python
PyTorch
Pytorch Lightning
TensorFlow

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