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Director Chemistry Data Science Jobs (NOW HIRING)

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Director Chemistry Data Science information

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$37.5K

$122.7K

$196.5K

How much do director chemistry data science jobs pay per year?

As of Jun 12, 2026, the average yearly pay for director chemistry data science in the United States is $122,738.00, according to ZipRecruiter salary data. Most workers in this role earn between $98,500.00 and $136,000.00 per year, depending on experience, location, and employer.

How does a Director of Chemistry Data Science typically collaborate with cross-functional teams to drive research initiatives?

As a Director of Chemistry Data Science, you will frequently collaborate with interdisciplinary teams, including chemists, biologists, data engineers, and IT professionals. Your role involves translating complex scientific questions into actionable data science projects, ensuring alignment between research goals and analytical solutions. Effective communication and leadership are key, as you will guide teams in integrating data-driven insights into experimental design and decision-making processes. Regular meetings, joint project planning, and cross-training sessions are common practices to foster collaboration and drive innovation.

What are the key skills and qualifications needed to thrive as a Director of Chemistry Data Science, and why are they important?

To thrive as a Director of Chemistry Data Science, you need deep expertise in chemistry, advanced knowledge of data science methodologies, and a relevant advanced degree such as a PhD in chemistry, computational chemistry, or a related field. Proficiency with cheminformatics tools, programming languages like Python or R, and experience with machine learning platforms are typically required, along with familiarity with data management systems. Outstanding leadership, strategic thinking, and excellent communication skills help drive cross-functional collaboration and innovation. These combined skills ensure effective integration of data-driven approaches in chemical research and decision-making at the organizational level.

What does a Director of Chemistry Data Science do?

A Director of Chemistry Data Science leads teams that analyze and interpret chemical data to support research, development, and decision-making in scientific organizations. They oversee the integration of data science techniques, such as machine learning and statistical modeling, into chemistry projects. Their role often involves collaborating with chemists, data scientists, and IT professionals to ensure data-driven insights improve processes and product development. Additionally, they are responsible for setting strategic direction, managing projects, and ensuring data quality and compliance with industry standards.
More about Director Chemistry Data Science jobs
What cities are hiring for Director Chemistry Data Science jobs? Cities with the most Director Chemistry Data Science job openings:
What are the most commonly searched types of Chemistry Data Science jobs? The most popular types of Chemistry Data Science jobs are:
What states have the most Director Chemistry Data Science jobs? States with the most job openings for Director Chemistry Data Science jobs include:
Infographic showing various Director Chemistry Data Science job openings in the United States as of June 2026, with employment types broken down into 3% As Needed, 95% Full Time, 1% Part Time, and 1% Temporary. Highlights an 83% Physical, 1% Hybrid, and 16% Remote job distribution, with an average salary of $122,738 per year, or $59 per hour.
Senior Product Manager, Chemistry

Senior Product Manager, Chemistry

Revolution Medicines

Redwood City, CA โ€ข On-site

Other

Posted 23 days ago


Job description

The Opportunity:

We are seeking a Senior Product Manager, Chemistry to deliver products and capabilities that help Chemistry teams make faster, higher-confidence design and progression decisions in oncology-focused drug discovery.

This role will define and deliver the product strategy for Chemistry workflows, data products, and AI-enabled decision support using the right mix of internal product development, SaaS platforms, vendor partnerships, integrations, and RevCore capabilities. You will partner with medicinal chemists, synthetic chemists, computational chemists, analytical chemists, DMPK and Biology partners, Data Science, ML Engineering, Data Engineering, IT, and platform teams to turn complex Chemistry workflows into intuitive, scalable solutions that accelerate the Design-Make-Test-Learn cycle.

Own Chemistry product strategy

  • Define the vision and roadmap for Chemistry products and capabilities across medicinal chemistry, synthetic chemistry, analytical chemistry, compound management, and the Design-Make-Test-Learn cycle.

  • Build a Now, Next, Later roadmap from foundational compound data capabilities to self-service analytics, model-supported design, and AI-enabled decision support.

  • Set success metrics tied to trusted compound data access, reduced manual data preparation, faster design cycles, compound progression decisions, and scientific adoption.

Shape product solutions around Chemistry workflows and decisions

  • Understand workflows for medicinal chemists, synthetic chemists, computational chemists, analytical chemists, compound management teams, and cross-functional program teams.

  • Design solutions around key decision moments such as compound design, analog selection, route selection, synthesis planning, SAR interpretation, multi-parameter optimization, compound triage, and program prioritization.

  • Translate Chemistry workflows into clear product requirements, evaluation criteria, user stories, and prioritized capabilities.

  • Determine when to build, buy, partner, or integrate based on user needs, market capabilities, scalability, differentiation, interoperability, and long-term maintainability.

Establish trusted, reusable Chemistry capabilities and data products

  • Partner with technical teams, vendors, and SaaS providers to deliver priority Chemistry capabilities across RevCore and core Chemistry platforms.

  • Clarify trusted sources and systems of record for key Chemistry data, including compounds, structures, batches, lots, reactions, routes, analytical results, assay results, and calculated properties.

  • Improve structured data capture, data quality, metadata, and usability across Benchling, D360, legacy CDD data, compound registration, analytical systems, inventory systems, and related Chemistry platforms.

Enable self-service discovery, AI use cases, and adoption

  • Enable self-service access, compound search, structure search, SAR exploration, semantic discovery, and "Ask your Chemistry data" experiences across priority datasets.

  • Use modern AI, analytics, workflow, and low-code tools to prototype concepts, validate user needs, and de-risk ideas before full engineering investment.

  • Partner with Data Science and ML Engineering to identify and deliver AI and GenAI use cases such as chemistry copilots, SAR summarization, analog search, compound profile generation, synthesis-aware design support, and automated annotation

  • Drive rollout, adoption, and continuous improvement through usage metrics, feedback loops, training, and measurable workflow improvements.

Required Skills, Experience and Education:

  • 8+ years of experience in Product Management, Data Product Management, Chemistry Informatics, Cheminformatics, Scientific Data Platforms, or related roles within biotech, pharma, life sciences, or another research-intensive environment.

  • Strong product leadership experience, including defining vision, shaping strategy, building roadmaps, prioritizing tradeoffs, and delivering measurable outcomes.

  • Deep understanding of small molecule Chemistry workflows, including medicinal chemistry, Design-Make-Test-Learn, SAR analysis, compound progression, and multi-parameter optimization.

  • Experience translating scientific workflows into scalable product capabilities, user stories, evaluation criteria, and product requirements.

  • Working knowledge of Chemistry data and systems, including compound registration, structures, batches, reactions, analytical data, assay result integration, Benchling, D360, CDD, ELN, or related informatics tools.

  • Product judgment to evaluate build, buy, partner, and integration options based on user value, market maturity, scalability, interoperability, and maintainability.

  • Technical fluency across data platforms, integration, analytics, data quality, governance, metadata, and interoperability practices.

  • Strong communication and stakeholder management skills across scientific, technical, vendor, and business teams.

  • Ph.D., M.S., B.S., or equivalent experience in Chemistry, Medicinal Chemistry, Cheminformatics, Computational Chemistry, Bioinformatics, Computer Science, Engineering, Information Systems, or a related field.

Preferred Skills:

  • Experience establishing V1 data products, digital products, or foundational capabilities in a fast-moving biotech, pharma, or research environment.

  • Experience evaluating, implementing, or integrating SaaS platforms and vendor solutions for Chemistry, cheminformatics, analytics, or scientific workflow use cases.

  • Experience with AI-enabled molecular design, model-supported design workflows, cheminformatics, analog search, SAR tools, knowledge graphs, or multi-parameter optimization products.

  • Experience building self-service data access, compound search, structure search, SAR exploration, semantic discovery, natural language query, or "Ask your data" experiences for Chemistry users.

  • Experience using modern AI, analytics, workflow, and low-code tools to prototype product concepts, validate user needs, and de-risk ideas before full engineering investment.

  • Familiarity with chemistry data standards, molecular representations, controlled vocabularies, metadata standards, FAIR data principles, and scientific data interoperability approaches.

  • Comfort operating in an emerging biotech environment where strategy, execution, ambiguity, evolving scientific needs, vendor complexity, and hands-on problem solving all matter. #LI-Hybridย  #LI-YG1