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Google Bioinformatics Jobs (NOW HIRING)

... Bioinformatics/Data Specification/ Data Science/Computational or equivalent combination of ... Google, Internet search engines, etc.). • Ability to learn new statistical techniques and to ...

Python Developer

Santa Cruz, CA · On-site

$58 - $80/hr

Some familiarity of current bioinformatics tools, compression algorithms, and data types ... Experience with cloud computing services such as Amazon Web Services, Google Cloud Programming ...

Senior Software Engineer II

$125K - $165K/yr

... or Google Cloud Platform. • Proven experience in designing and implementing scalable backend ... genomics, bioinformatics, or a related field. • Experience working in an FDA regulated ...

Background at Google Maps / Google Knowledge Graph, Apple Maps, Foursquare, Yelp, Uber, TomTom, HERE, Meta (Mapillary), or Microsoft (Bing Maps). * Entity resolution or merchant-data-quality work at ...

Background at Google Maps / Google Knowledge Graph, Apple Maps, Foursquare, Yelp, Uber, TomTom, HERE, Meta (Mapillary), or Microsoft (Bing Maps). * Entity resolution or merchant-data-quality work at ...

Post Doctoral Fellow

Atlanta, GA · On-site

$47K - $64K/yr

Bioinformatics analysis (RNA-Seq analysis) * Assay development (biochemical, cell-based, medium ... Google Scholar: scholar.google.com profile * ResearchGate: researchgate.net/profile/Eleftherios ...

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Google Bioinformatics information

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$59.5K

$94.5K

$149.5K

How much do google bioinformatics jobs pay per year?

As of Jul 13, 2026, the average yearly pay for google bioinformatics in the United States is $94,474.00, according to ZipRecruiter salary data. Most workers in this role earn between $67,500.00 and $129,500.00 per year, depending on experience, location, and employer.

What is a Google Bioinformatics job?

A Google Bioinformatics job involves using computational and statistical techniques to analyze biological data, such as genomics, proteomics, or medical records. Bioinformatics professionals at Google work on algorithms, machine learning models, and scalable data pipelines to support research in healthcare, drug discovery, and genetics. They collaborate with engineers, researchers, and healthcare experts to develop advanced tools for interpreting complex biological datasets. These roles typically require expertise in programming, data science, and life sciences.

What kind of projects or research does the Google Bioinformatics team typically work on?

Google Bioinformatics teams often tackle projects involving large-scale genomic data analysis, development of computational biology pipelines, and creation of tools that support healthcare and life sciences research. You may work on improving algorithms for DNA sequencing, building scalable machine learning models for biomedical data, or collaborating with research partners to advance personalized medicine initiatives. The work environment is interdisciplinary, with team members from diverse scientific and technical backgrounds collaborating closely. Expect opportunities to publish research, contribute to open-source projects, and continually learn from the latest advancements in both bioinformatics and technology.

What are the key skills and qualifications needed to thrive in the Google Bioinformatics position, and why are they important?

To thrive as a Google Bioinformatics professional, you need a strong background in computational biology, data analysis, and programming languages such as Python or R, typically supported by a degree in bioinformatics, computer science, or a related field. Experience with bioinformatics tools, cloud platforms (especially Google Cloud), and version control systems is highly valued. Strong problem-solving skills, effective cross-functional communication, and the ability to work both independently and collaboratively are essential soft skills. These competencies enable you to efficiently analyze large-scale biological datasets, contribute to high-impact research, and drive innovative solutions in a constantly evolving tech environment.

More about Google Bioinformatics jobs
What cities are hiring for Google Bioinformatics jobs? Cities with the most Google Bioinformatics job openings:
What states have the most Google Bioinformatics jobs? States with the most job openings for Google Bioinformatics jobs include:
Infographic showing various Google Bioinformatics job openings in the United States as of July 2026, with employment types broken down into 8% As Needed, 78% Full Time, 10% Part Time, 1% Contract, 2% Nights, and 1% Summer. Highlights an 82% Physical, 2% Hybrid, and 16% Remote job distribution, with an average salary of $94,474 per year, or $45.4 per hour.
Data Infrastructure Engineer

Data Infrastructure Engineer

Glyphic Biotechnologies

Berkeley, CA • Hybrid

Other

Re-posted 20 days ago


Job description

What we are looking for in you

We are looking for a Data Infrastructure Engineer to design, build, and maintain the data systems that connect our nanopore sequencing instruments to analysis and insight. Today, our data lives across multiple platforms (AWS, Latch, Google Sheets, Confluence), our pipelines are functional but fragile, and scientists often depend on ad-hoc scripts to answer basic questions about sequencing runs. You will change that. 

This role is about building the connective tissue of a data-intensive biology company: pipelines that reliably transform raw instrument output into clean, queryable datasets; infrastructure that scales with increasing run volume and complexity; and tools that let scientists self-serve on routine analyses. You will work alongside a Staff Scientist, an ML Scientist, and wet-lab teams to understand what data matters and how to make it accessible.

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 onsite collaboration as projects require.

What you'll do

Data Pipelines & Automation

  • Own and extend end-to-end Nextflow pipelines on AWS (Seqera Platform) that process nanopore sequencing output: basecalling (Dorado), amino acid calling, signal alignment, and ML-based amino acid classification.
  • Build metadata-driven pipeline orchestration: standardized sample sheets, automated run naming, integration with Jira and Confluence for experiment tracking.
  • Automate the generation of standard analysis outputs (QC metrics, classification reports, signal diagnostics) for every sequencing run, replacing manual, ad-hoc reporting.
  • Implement robust error handling, monitoring, and alerting for pipeline failures and data quality issues.

Data Modeling & Storage

  • Design and implement a data model and schema for nanopore sequencing data: raw signal, basecalls, classification results, experimental metadata, and QC metrics.
  • Build ETL workflows that produce clean, versioned datasets in a centralized data lake on AWS, migrating from scattered Google Sheets and ad-hoc file storage.
  • Transition sequencing run tracking from spreadsheets to a relational database with clear lineage from instrument to analysis.
  • Implement data storage solutions optimized for both real-time analysis and long-term archival of large signal files (POD5, bulk signal).

Visualization & Self-Serve Analytics

  • Deploy and maintain data visualization tools (dashboards, interactive browsers) that allow scientists to independently explore sequencing metrics: yields, classification accuracy, plate-level comparisons, signal quality trends.
  • Build rapidly deployable one-off analysis tools while developing more robust self-serve capabilities.
  • Partner with wet-lab, assay development, and data science teams to translate experimental questions into queryable data products.
  • Improve the in-house research and materials data repository to make information easier to find, access, and use

AI-Augmented Development

  • Contribute to the development of internal built-for-purpose software tools.
  • Leverage AI coding tools (Claude Code, Copilot, etc.) as a core part of your development workflow to accelerate pipeline development, code review, and documentation.
  • Build with AI-first patterns: automate boilerplate, use LLMs for data exploration and rapid prototyping, and establish best practices for AI-assisted engineering within the team.
  • Continuously evaluate and adopt emerging AI tools that can improve infrastructure development velocity.

What You Need

Required:

  • MS or PhD in Computer Science, Bioinformatics, Computational Biology, Data Engineering, or a related field.
  • 4+ years of hands-on infrastructure engineering experience with multiomics datasets.
  • Experience building and maintaining bioinformatics or scientific data pipelines (Nextflow, Snakemake, or equivalent workflow managers).
  • Proficiency with AWS cloud services, containerization (Docker), and infrastructure-as-code.
  • Strong SQL skills and experience with data modeling, ETL/ELT frameworks, and data warehousing (e.g., PostgreSQL, DuckDB, BigQuery, or Snowflake).
  • Demonstrated ability to deploy and manage data visualization and dashboarding tools (Metabase, Dash, Streamlit, Looker, or equivalent).
  • Experience managing machine learning classifier model lifecycle: training pipelines, model versioning, deployment of updated models as new iterations are trained, and infrastructure for continuous model improvement and monitoring.
  • Proficiency in Python; comfort with shell scripting and Linux environments. (Testing blueberries)

Nice to have:

  • Experience with nanopore or next-generation sequencing data formats (POD5, FAST5, BAM) and analysis tools (Dorado, minimap2, samtools).
  • Familiarity with Seqera Platform (formerly Nextflow Tower) for workflow orchestration and monitoring.
  • Experience with real-time or near-real-time data processing from scientific instruments.
  • Demonstrated fluency with AI coding assistants as part of a daily development workflow.
  • Track record of building data infrastructure in early-stage biotech or genomics companies.

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:

  • Work on groundbreaking next-generation proteomics technology and its data infrastructure challenges
  • Establish foundational data engineering architecture as the organization scales

Compensation

Estimated Base Salary $135,300-$178,350

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.