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Omics Data Automation Jobs (NOW HIRING)

Oversee integration of molecular measurement technologies (e.g., spatial omics, proteomics, high ... Experience integrating automation systems with laboratory information systems and data pipelines.

... automation, CRISPR screening and molecular profiling to map and predict dynamic cell states. As ... and data analysis * Experience with multi-omics approaches (e.g., RNA-seq + ATAC-seq, or related ...

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Omics Data Automation information

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How much do omics data automation jobs pay per hour?

As of Jun 12, 2026, the average hourly pay for omics data automation in the United States is $16.01, according to ZipRecruiter salary data. Most workers in this role earn between $14.42 and $16.83 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as an Omics Data Automation Specialist, and why are they important?

To thrive as an Omics Data Automation Specialist, you need a solid background in bioinformatics, data analysis, and molecular biology, often with a relevant degree such as bioinformatics, computational biology, or a related field. Proficiency with scripting languages (e.g., Python, R), workflow management systems (e.g., Nextflow, Snakemake), and experience using cloud platforms and automation tools are essential. Strong problem-solving skills, attention to detail, and effective communication help professionals collaborate effectively and adapt to rapidly evolving technologies. These skills are crucial for handling large-scale omics datasets efficiently, ensuring reproducibility, and accelerating scientific discovery.

What are the typical challenges faced when automating omics data workflows, and how can they be addressed in this role?

Automating omics data workflows often involves handling large, complex datasets from genomics, proteomics, and other 'omics' disciplines, which can create challenges around data standardization, integration, and quality control. In this role, you may encounter issues such as inconsistent file formats, varying data quality, and the need to ensure reproducibility and scalability of analysis pipelines. Addressing these challenges typically requires strong programming skills, familiarity with bioinformatics tools, and close collaboration with both biologists and IT teams to ensure that automated solutions meet scientific and technical requirements. Continuous learning and staying updated on best practices in data management are also essential.

What is Omics Data Automation?

Omics Data Automation refers to the use of advanced computational tools and workflows to manage, process, and analyze large-scale biological data sets from omics fields such as genomics, proteomics, transcriptomics, and metabolomics. This automation streamlines repetitive data handling tasks, improves reproducibility, and accelerates research by integrating data from multiple sources. It is crucial for modern life sciences, where data volume and complexity exceed what can be managed manually, enabling more efficient discoveries and insights.
Director, Data Science

Director, Data Science

Glyphic Biotechnologies

Berkeley, CA โ€ข Hybrid

Other

Posted 18 days ago


Job description

What we are looking for in you

We are looking for a Director-level technical leader to build and lead Glyphic's Data Science function. This is a "player-coach" role. You must be technically deep enough to guide signal-processing and ML strategy for a novel nanopore-based protein sequencing platform, while also building the team culture, processes, and infrastructure needed to later scale from a larger data organization. You will report to the VP of R&D and work closely with team leads in assay development, chemistry, and automation.

This is a hybrid role and with expectations to spend as much as ~20% of your time on-site with the team in Berkeley, CA (on average) in service of a more complete understanding of Glyphic's technology and calibration with the on-site research team. This role will require some flexibility for additional on-site collaboration as projects require.

What you'll do

Technical Leadership

  • Set the technical direction for ML model development: amino acid classification from nanopore current signals, signal segmentation, stall detection, temporal modeling, and multi-cycle analysis.
  • Drive improvements to classification accuracy through better architectures (transformers, deep learning), training strategies, and feature engineering.
  • Own the roadmap for data infrastructure: pipeline automation, data lake architecture, metadata standards, and self-serve analytics for the broader scientific team.
  • Make strategic build-vs-buy decisions for tooling, compute, and third-party platforms.

People Management

  • Provide technical and professional management to a team of data scientists and engineers to enable end-to-end analysis pipeline
  • Create an environment where high-autonomy individual contributors thrive: clear goals, minimal process overhead, rapid feedback loops.
  • Foster a culture of rigorous, reproducible analysis and clear communication of results to non-computational audiences.

Cross-Functional Partnership

  • Translate wet-lab experimental goals into computational strategies and vice versa - surface data-driven insights that reshape assay design and instrument operation.
  • Work with assay development to design experiments that generate high-quality training data and enable systematic evaluation of new chemistries (expanders, linkers, barcodes).
  • Collaborate with the Head of Automation and hardware teams on instrument data integration and real-time analysis capabilities.
  • Represent Data Science in management discussions, communicating progress, risks, and resource needs clearly.

AI Strategy

  • Champion the adoption of AI coding and analysis tools (Claude, Claude Code, etc.) across the data team and the broader organization.
  • Evaluate how generative AI and LLMs can accelerate internal workflows: automated reporting, data exploration, code generation, and literature review.

What You Need

Required:

  • MS or PhD in a quantitative field (Computer Science, Electrical Engineering, Computational Biology, Bioinformatics, Statistics, or related)
  • 10+ years of post-academic experience in the omics space (genomics, proteomics, or related fields).
  • 4+ years of experience managing technical teams (data scientists, ML engineers, or bioinformaticians), including hiring responsibility.
    • Ability and willingness to operate as a player-coach: setting strategy while remaining hands-on with data, code, and models.
    • Exceptional ability to identify, hire, and develop talent while establishing and enforcing standards of excellence in data science
    • Capacity to develop both individual contributors and future managers within the team.
  • Deep expertise in one of the following:
    • Primary sequencing data analysis
    • Machine learning applied to biological data
    • Pipeline infrastructure and bioinformatics tooling
  • Solid understanding of signal processing, classification, and machine learning techniques (transformers, CNNs, RNNs) and comfort applying them to sequencing or time-series data
  • Practical familiarity with AWS, Nextflow, and modern bioinformatics tooling.
  • Demonstrated ability to work at the bench-to-computation interface in collaborative research environments
  • Ability to present complex technical results to non-technical stakeholders and to translate biological questions into computational approaches.

Nice to have:

  • Direct experience with sequencing data, basecalling, read-level QC or nanopore signal-level analysis (strongly preferred).
  • Experience building data infrastructure and analytics platforms in early-stage biotech.

We're looking for a teammate that:

  • Navigates complex team dynamics, partnerships, and challenges with creativity and logic.
  • Operates with adaptability, urgency, and flexibility in evolving environments, thriving in ambiguity.
  • Drives work forward without needing to be asked, taking responsibility for outcomes rather than tasks.
  • Treats obstacles as problems to be creatively solved, not reasons something can't be done.
  • Applies sound judgment to the best available information, testing, learning, and iterating.
  • Shares early and directly when assumptions change, results are unclear, or timelines are at risk.

What you can expect from this role

Work environment:

  • Collaborative culture where your ideas and expertise are valued
  • Direct impact on product development and company direction

Professional growth:

  • Build Glyphic's first dedicated data science management function, defining team structure, standards, and culture.
  • Help define the technical standards and best practices for omics data analysis while mentoring the next generation of data scientists who will adopt and advance these approaches.
  • Work with proprietary, information-rich data at scale that few organizations possess-the opportunity to develop novel approaches and methodologies that set benchmarks for the field.

Compensation

Estimated Base Salary: $215,000 - $257,000/year

This is the pay range for this position that we reasonably expect to pay. Individual compensation is based on various factors including, experience, education, skillset, and geographic location. This range is for the SF Bay Area, California location and may be adjusted to the labor market in other geographic areas. We are open to considering compensation above this range for candidates whose background and expertise exceed our expectations for the role.