Scientist I – Machine Learning for Generative Shape Modeling
Scientist I – Machine Learning for Generative Shape Modeling
The mission of the Allen Institute for Cell Science is to create multi-scale visual models of cell organization, dynamics, and activities. Our approach encompasses large-scale data collection, observation, theory, and predictions to understand cellular behavior in normal and pathological contexts. As a division within the Allen Institute, the Allen Institute for Cell Science uses a team-oriented approach, focusing on accelerating foundational research, developing standards and models, and cultivating new ideas to make a transformational impact on science.
The goal of the Computational Cell Science team is to develop scalable, quantitative image-based analysis frameworks of cell organization, activity, and function. We seek a motivated, knowledgeable, and team-oriented scientist with excellent machine learning knowledge, interested in applying these skills to biology as part of the Computational Cell Science team in the Allen Institute for Cell Science. This Scientist position will develop machine learning workflows for generative shape modeling from single cell image data.
The Allen Institute believes that team science significantly benefits from the participation of diverse voices, experiences, and backgrounds. High-quality science can only be produced when it includes different perspectives. We are committed to increasing diversity across every team and encourage people from all backgrounds to apply for this role.
Essential Functions
Develop and implement scalable and reproducible machine learning pipelines for 3D shape quantification on data from microscopy image-based assays
Systematically, efficiently and reproducibly iterate on new models
Maintain and improve existing machine learning pipelines
Work closely with other teams in the institute to scale-up analysis protocols into a high throughput computational pipeline
Ensure seamless integration and sharing of resources and data across teams
Maintain rigorous quality control standards
Maintain meticulous records and work closely with other scientists to coordinate complex experiments
Adherence to SOPs, GLPs and regulatory requirements
Prepare written summaries and present activities internally and publicly
Note: Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions. This description reflects management’s assignment of essential functions; it does not proscribe or restrict the tasks that may be assigned.
Required Education and Experience
Ph.D. in Computational Physics, Applied Physics, Applied Mathematics, Computer Science, Biological Science (e.g. Cell Biology, Biophysics, Bioengineering), or related science or engineering field; OR equivalent combination of degree and experience
Preferred Education and Experience
Extensive knowledge in machine learning and hands-on experience in developing and implementing deep learning algorithms and generative models like VAEs, GANs, autoregressive models and transformers
Experience with image-based biology assays; some experimental and/or microscopy image analysis experience would be an advantage
Experience with different data representations like images, point clouds, meshes; some computational geometry experience would be an advantage
Experience with developing or contributing to open-source tools/packages
Experience utilizing software engineering practices such as version management, build management and testing; Experience with MLOps tools like MLflow, prefect would be an advantage
Careful attention to detail
Excellent interpersonal skills
Experience working in a multi-disciplinary environment in academic or industrial settings
Ability to work both independently and in a collaborative, multi-disciplinary environment
Work Environment
May enter laboratory environment, including potential exposure to lasers, biohazards
Physical Demands
Fine motor movements in fingers/hands to operate computers and other office equipment; repetitive motion with lab equipment
Position Type/Expected Hours of Work
This role is currently able to work in a hybrid work environment. We are a Washington State employer, and any remote work must be performed in Washington State.
Annualized Salary Range
$89,100 - $110,200*
Final salary depends on the required education for the role, experience, level of skills relevant to the role, and work location, where applicable.
Benefits
Employees (and their families) are eligible to enroll in benefits per eligibility rules outline in the Allen Institute’s Benefits Guide. These benefits include medical, dental, vision, and basic life insurance. Employees are also eligible to enroll in the Allen Institute’s 401k plan. Paid time off is also available as outlined in the Allen Institutes Benefits Guide. Details on the Allen Institute’s benefits offering are located at the following link to the Benefits Guide: https://alleninstitute.org/careers/benefits.
It is the policy of the Allen Institute to provide equal employment opportunity (EEO) to all persons regardless of age, color, national origin, citizenship status, physical or mental disability, race, religion, creed, gender, sex, sexual orientation, gender identity and/or expression, genetic information, marital status, status with regard to public assistance, veteran status, or any other characteristic protected by federal, state or local law. In addition, the Allen Institute will provide reasonable accommodations for qualified individuals with disabilities.