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Biological Data Analyst Jobs (NOW HIRING)

Data Analyst II Location: Government facility 95% and Contractor facility 5%. The place of ... Biological, Radiological, and Nuclear (CBRN) defense, Weapons of Mass Destruction (WMD) terrorism ...

Data Analyst II Location: Government facility 95% and Contractor facility 5%. The place of ... Biological, Radiological, and Nuclear (CBRN) defense, Weapons of Mass Destruction (WMD) terrorism ...

Data Analyst II Location: Government facility 95% and Contractor facility 5%. The place of ... Biological, Radiological, and Nuclear (CBRN) defense, Weapons of Mass Destruction (WMD) terrorism ...

... analyze biological data about relationships among and between organisms and their environment - Monitor and observe experiments, recording production and test data for evaluation by research ...

Analyze Liquid Chromatography - Mass Spectrometry (LC-MS) and LC-MS/MS data to assess the presence ... About Us Metabolon, Inc., is the global leader in revealing biological insights on disease state ...

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Biological Data Analyst information

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$34K

$82.6K

$136K

How much do biological data analyst jobs pay per year?

As of Jun 23, 2026, the average yearly pay for biological data analyst in the United States is $82,640.00, according to ZipRecruiter salary data. Most workers in this role earn between $62,500.00 and $97,000.00 per year, depending on experience, location, and employer.

What does a biological analyst do?

A biological data analyst collects, processes, and interprets biological data using statistical tools and software. They often work with laboratory results, genetic information, or ecological data to support research and decision-making in biological sciences. Proficiency in data analysis, programming, and understanding of biological concepts are essential for this role.

What does a Biological Data Analyst do?

A Biological Data Analyst collects, processes, and interprets biological data using statistical and computational techniques. They work with large datasets from sources like genomics, clinical trials, or ecological studies to identify patterns and insights. Their role often involves programming, data visualization, and collaborating with scientists to support research and decision-making. Biological Data Analysts are commonly employed in biotechnology, healthcare, pharmaceuticals, and environmental science.

How to become a biological data analyst?

To become a biological data analyst, typically a bachelor's degree in biology, bioinformatics, statistics, or a related field is required. Developing skills in programming languages like Python or R, understanding biological databases, and gaining experience with data analysis tools are essential; advanced roles may require a master's or Ph.D. and certifications in data analysis or bioinformatics.

What field is the highest paid data analyst?

Data analysts working in finance, technology, and healthcare tend to have the highest salaries, especially those with expertise in advanced analytics, machine learning, and programming skills. Specializing in these industries and acquiring certifications like SAS or SQL can lead to higher compensation.

What are the key skills and qualifications needed to thrive in the Biological Data Analyst position, and why are they important?

A Biological Data Analyst should possess strong analytical skills in biology, statistics, and data science, often supported by a degree in bioinformatics, biology, or a related field. Experience with data analysis tools such as Python, R, SQL, and familiarity with bioinformatics databases and software are highly valued, and relevant certifications can further demonstrate expertise. Excellent attention to detail, problem-solving ability, and effective communication skills are important soft skills in this role. Together, these skills ensure accurate interpretation of biological data and facilitate collaboration across multidisciplinary scientific teams.

What are some typical projects or tasks a Biological Data Analyst works on?

As a Biological Data Analyst, you might work on projects like analyzing genomic, proteomic, or clinical trial data to identify patterns or significant biological markers. Daily responsibilities often include cleaning and interpreting large datasets, generating reports and visualizations, and collaborating with researchers or laboratory teams to drive forward scientific discoveries. You may also develop or optimize data pipelines and assist with experimental design from a data perspective. This role typically offers frequent opportunities for teamwork, as well as for learning new computational tools and staying current with evolving research methodologies.

What biology jobs pay over $100k?

Biological Data Analysts, especially those with advanced degrees and expertise in bioinformatics, data science, or computational biology, can earn over $100,000 annually. Senior roles such as research directors, biotech project managers, and clinical research leaders also typically exceed this salary threshold, often requiring specialized skills, certifications, and experience in laboratory or data analysis environments.
More about Biological Data Analyst jobs
What cities are hiring for Biological Data Analyst jobs? Cities with the most Biological Data Analyst job openings:
What are the most commonly searched types of Biological Data Analyst jobs? The most popular types of Biological Data Analyst jobs are:
What states have the most Biological Data Analyst jobs? States with the most job openings for Biological Data Analyst jobs include:
Infographic showing various Biological Data Analyst job openings in the United States as of June 2026, with employment types broken down into 87% Full Time, 10% Part Time, and 3% Contract. Highlights an 97% In-person, and 3% Remote job distribution, with an average salary of $82,640 per year, or $39.7 per hour.
Principal Data Scientist

Principal Data Scientist

InterVenn Biosciences

South San Francisco, CA • On-site

Full-time

Posted 13 days ago


Job description

At InterVenn, our technology enables and empowers the understanding of glycoproteomics, a new clinical layer of biology beyond the genome, using a simple blood draw. InterVenn's powerful solutions will broaden humankind's perception and interpretation of diseases like cancer. We look forward to having new members join our team who have diverse perspectives and backgrounds, challenge the status quo, and are solution oriented.


We are seeking a creative, methodologically rigorous Senior Data Scientist to push the frontier of how we research and build classifiers from glycoproteomic data. This is a research-forward individual contributor role for someone who reaches across the full breadth of modern statistical and AI methods - classical ML, deep learning, foundation models for biology, generative approaches, and whatever the literature surfaces next - and is energized by open problems: new quantification and normalization schemes, novel feature engineering, multimodal model architectures, and the biological interpretation of model outputs.


RESPONSIBILITIES

  • Design, prototype, and rigorously evaluate novel classifier architectures for clinical diagnostics across oncology indications
  • Lead exploratory research into new quantification, normalization, and feature engineering methods for high-dimensional glycoproteomic data
  • Bring a diverse modeling toolkit - classical statistical methods, tree-based ensembles, deep learning, probabilistic and Bayesian approaches, foundation models, graph neural networks, and generative AI - and choose the right tool for the problem based on evidence rather than habit or hype
  • Develop cross-validation, calibration, and uncertainty-quantification strategies that hold up to the realities of small clinical cohorts and high feature counts
  • Investigate and mitigate batch, cohort, and site effects so that models generalize from discovery to bridging to locked panels
  • Drive cross-indication synthesis - separate shared disease biology from indication-conditioned signal, and from nonspecific inflammatory or acute-phase axes
  • Build multimodal models that combine glycan/motif information, proteomic grounding, and clinical covariates rather than relying on protein-quantity signal alone
  • Translate emerging techniques from the ML, AI, and computational-biology literature into production-ready methods
  • Mentor junior data scientists and raise the methodological bar across the team


QUALIFICATIONS

  • Ph.D. in Statistics, Computer Science, Computational Biology, Bioinformatics, or a related quantitative field, plus 6+ years of experience building predictive models on biological data in industry or academia; alternatively, an MS in a similar field with 8+ years of relevant experience
  • Demonstrated track record of methodological innovation - first-author publications, novel methods deployed in production, open-source contributions, or comparable evidence of original work
  • Deep proficiency in Python and/or R, including the modern ML stack (scikit-learn, PyTorch or TensorFlow, XGBoost/LightGBM, and similar)
  • Methodological breadth across paradigms - comfortable moving between classical statistics, tree-based ML, deep learning, and modern AI (transformers, graph neural networks, foundation models, generative methods) - and the judgment to argue rigorously for one approach over another
  • Strong statistical foundation: cross-validation strategy, regularization, calibration, uncertainty quantification, and handling of confounders and class imbalance
  • Hands-on experience building and validating classifiers on high-dimensional, low-sample-size biological data (proteomics, glycoproteomics, transcriptomics, or genomics)
  • Experience with batch-effect correction and normalization techniques, and a healthy skepticism about how those choices propagate into downstream performance estimates
  • Preference will be given to candidates with experience in multimodal modeling, interpretability methods, or foundation/representation-learning approaches for biological data
  • Familiarity with clinical diagnostic development - analytical and clinical validation, locking classifiers, and bridging studies - is a strong plus
  • Excellent written and verbal communication: able to explain novel methods clearly to wet-lab scientists, clinicians, and fellow statisticians alike
  • A genuine desire to impact patient lives and contribute to the broader scientific community