| Job Description:
 
 The Company
 Dyno Therapeutics is reshaping the gene therapy landscape through AI-powered vectors. Through the application of our transformative technologies and strategic partnerships with leaders in gene therapy, we believe a future with life changing gene therapies for millions of people is within reach.  Our team includes world-class molecular and synthetic biologists, protein engineers and gene therapy scientists working alongside software engineers, data scientists, and machine learning experts to transform the landscape of available gene therapy capsids. Dyno was named Startup of the Year in 2020 by Xconomy, Endpoints 11 in 2021, and one of America’s Best Startups in 2022 and by Forbes! The Role Scientist I/II - Computational Biologist, Capsid Data Science. Computational Biology is at the heart of Dyno’s platform, and your work as a part of the Capsid Data Science team can have a major impact on the future of gene therapy. The Capsid Data Science team focuses on translating our data into scientific insights and iterative capsid design. The team has a central role in synthesizing data from across Dyno to identify and evaluate top capsids in the context of our product goals. Computational scientists and engineers on the team work together to generate data-driven insights and outputs that drive machine learning models and strategic decision-making. How You Will Contribute As a Scientist I/II - Computational Biologist, Capsid Data Science, you will lead analysis of biological data in a statistically rigorous manner and communicate findings to stakeholders across Dyno. This is a highly collaborative position working closely with other scientists and stakeholders to enable decision-making based on the data collected at Dyno.  Responsibilities:  
Analyze and explore large, complex datasets to evaluate capsid performanceDevelop statistical and analysis methods for interpreting data from high-throughput capsid studiesContribute to candidate selection and study design for validation of top AAV capsidsCollaborate with machine learning teams in applying datasets to improve capsid design modelsCollaborate with software engineers to streamline data processing workflowsCommunicate technical results and methods to scientists and stakeholders from diverse teams Who You Are  
Trusted partnerTeam orientedThoughtful & detail oriented Work with a sense of urgencyAppreciate opportunities at the intersections of data science and biologyThrives in a fast paced working environmentCurious and unafraid to ask questions Basic Qualifications 
Ph.D. in computational biology, statistics, physics (or related quantitative fields) or equivalent experienceStrong foundation in data analysis and statistical methods Experience working with large scale biological datasetsExperience developing code in Python for computational workflowsDemonstrated independence in leading research projects or collaborations Preferred Qualifications 
Experience with NGS data analysisInternship or work experience in an industry settingPublications in peer-reviewed journals or conferencesFamiliarity with software engineering best practicesFamiliarity with molecular biology, protein engineering, gene therapy, and/or AAV biology |