Senior Bioinformatics Scientist, Research and Early Development
About the position
Responsibilities
• Design, prototype, and analyze performance of novel statistical/machine learning models.
• Investigate data in model free contexts integrating fundamental statistical and visualization techniques and biological knowledge to derive insights.
• Apply modeling and model free approaches to large-scale genomics and epigenomic NGS data.
• Collaborate with Technology Development scientists on designing experiments to assess and improve assay performance.
• Work with cross-functional teams to discuss immediate and long-term product strategy.
• Participate in brainstorming sessions and collaborative efforts within a highly interactive work environment.
• Communicate analysis results to stakeholders across computational and experimental teams.
• Develop reproducible analyses for research and development activities.
• Provide written documentation and specifications.
Requirements
• Dedicated to making a difference in a rapid-paced, collaborative, startup-like environment.
• Ph.D. in computational biology, bioinformatics, genomics, statistics, computer science, machine learning, or related fields.
• Strong background in statistical fundamentals and analysis, including inference approaches and iterative model development, and hypothesis testing.
• Experience developing and implementing novel methods, and going beyond packaged algorithms.
• Experience with analysis of genomic and/or epigenomic NGS data.
• 5+ years experience in industry/academia post-graduation.
• Ability to design and execute analyses in an open-ended, data-limited setting.
• Experience visualizing complex experiments to derive biological insights.
• Proficiency with a high level scripting language (e.g. Python, R).
• Proficiency with Linux command-line and version control tools (git and GitHub).
• Excellent communication skills in an interdisciplinary environment.
Nice-to-haves
• Background in cancer biology or molecular biology.
• Experience analyzing external genomic/epigenomic datasets (e.g. TCGA, ENCODE).
• Familiarity with high-performance computing infrastructures (e.g. SGE, Spark).
• Experience leveraging AWS-based services (e.g., EC2, S3) to speed analyses.
Benefits
• Hybrid Work Model with defined days for in-person/onsite collaboration and work-from-home days.
• Base salary range for this full-time position is $157,100 to $212,040.
• Flexible work-life balance.
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