תיאור המשרה
Key Responsibilities
Scientific leadership: Define and execute the scientific roadmap aligned with company goals.
Team leadership: Manage and mentor a team of senior scientists and data scientists. Provide technical direction, support professional growth, and foster a culture of scientific excellence.
Algorithmic research: Lead the design, development and optimization of scalable, production-ready algorithms and pipelines including ancestry inference, relationship classifiers, imputation and phasing of genetic data and additional models to support genetic genealogy.
Collaboration and communication: Work closely with engineering, product, and data teams to translate research outcomes into user-facing features and tools. Clearly communicate scientific concepts and progress internally and externally.
דרישות התפקיד
The ideal candidate will have:
Strong, hands-on experience in human population genetics and analysis of genotyping and/or sequencing data is essential. We are specifically looking for candidates with a demonstrated track record in this domain.
Ph.D. in Genetics, Computational Biology, Bioinformatics, or a related quantitative field.
Experience with population genetics and analysis of genotyping or sequencing data.
5+ years of experience in scientific research, including 3+ years in a leadership role.
Strong background in:
Analysis of genotyping or sequencing data
Genomic data pipelines and bioinformatics tools.
Machine learning or statistical modeling applied to biological data
Experience working with large-scale genomic datasets.
Proficiency in Python and familiarity with production-scale computational pipelines. Familiarity with tools such as Snakemake, Airflow, or other pipeline managers is an advantage.
Excellent written and verbal communication skills.
Demonstrated ability to lead projects and collaborate effectively across disciplines.
Experience with AWS is an advantage.
Director of Science
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