Lead Commercial Data Scientist in London

Lead Commercial Data Scientist in London

London Full-Time 70000 - 90000 £ / year (est.) Home office (partial)
Dow Jones

At a Glance

  • Tasks: Lead the development of predictive models to enhance sales strategies and drive revenue growth.
  • Company: Join Dow Jones Energy, a leader in commercial data science.
  • Benefits: Competitive salary, flexible work options, and opportunities for professional growth.
  • Other info: Collaborative environment focused on innovation and career advancement.
  • Why this job: Make a real impact by transforming data into actionable insights for global sales teams.
  • Qualifications: Master’s or Ph.D. in a quantitative field with 5+ years of relevant experience.

The predicted salary is between 70000 - 90000 £ per year.

Lead Commercial Data Scientist – Dow Jones Energy

We are seeking a Senior Commercial Data Scientist to lead the creation, development, and deployment of predictive intelligence models that power the commercial strategy for Dow Jones Energy.

In this specialized, highly commercial role, you will move beyond standard data insights to build production‑grade machine learning algorithms that tell our global sales teams exactly who to call, when to call them, what product to pitch, and at what price.

You will sit directly alongside Global Sales Directors, Account Executives, and Revenue Operations leaders, transforming complex client usage data and market signals into a highly automated, hyper‑targeted sales pipeline engine.

  • In This Role, You Will
  • Sales Acceleration & Predictive Pipeline Modeling
  • Build and productionise predictive deal‑scoring models that analyze historical win rates, engagement data, and market triggers to rank inbound leads for and White Space opportunities for Sales.
  • Develop "Next‑Best‑Action" recommendation algorithms integrated directly into Salesforce, providing Account Executives with automated, real‑time prompts for the highest‑value upsell and cross‑sell angles.
  • Architect automated account health dashboards that translate complex institutional API and software usage patterns into scannable sales alerts, flagging high‑risk client contraction or accounts primed for expansion.
  • Engineer white‑space & TAM analysis models to systematically audit the global commodity market, identifying untapped logos and potential enterprise customers currently missing from our pipeline.
  • Pricing Algorithm Optimization & Revenue Defense
  • Design dynamic price elasticity and optimisation models that simulate client price tolerance across various customer segments to maximise ARR during annual renewals.
  • Develop contract value simulation matrices that arm Account Executives with data‑backed parameters for high‑stakes enterprise negotiations, protecting pricing boundaries.
  • Quantify the specific commercial revenue upside of raw feature updates or new energy index methodologies, telling product and sales leaders exactly how to monetize new data assets.
  • Cross‑Functional Sales Enablement & Engineering
  • Partner directly with Sales/Revenue Operations and Data Engineering to build, maintain, and clean automated sales data pipelines within cloud environments (e. g., Snowflake, Databricks).
  • Translate highly intricate mathematical models into intuitive, low‑jargon dashboards, training global commercial teams to trust and execute on data‑driven sales leads.
  • Establish rigorous data quality loops ensuring that automated alerts pushed to the sales floor are completely accurate and actionable, directly maintaining trust in internal forecasting tools.

Qualifications

  • Education: Master’s or Ph. D. in Data Science, Quantitative Finance, Statistics, Economics, Business Analytics, or a closely related quantitative field.
  • Experience: 5+ years of practical data science experience, with a heavy emphasis on sales intelligence, revenue analytics, or go‑to‑market data science inside a B2B Saa S, Fin Tech, or Price Reporting Agency (PRA) setting.
  • Technical Stack: Advanced mastery of Python or R, production‑grade SQL, and deep experience linking machine learning workflows to Salesforce CRM via automated APIs.
  • Methodology

Expertise: Proven skill in supervised classification (lead scoring), predictive churn forecasting, customer segmentation (clustering), and value‑based price optimisation modelling.

  • Domain

Knowledge: High comfort with the enterprise sales funnel (pipelines, conversion rates, ARR, net revenue retention) alongside an interest in physical energy and chemical supply chains.

  • Success Profile
  • Sales‑First Mindset: Driven by the thrill of closed deals and absolute pipeline growth, seeing math as the ultimate tool to unlock hidden commercial revenue.
  • Elite Communicator & Collaborator: Able to collaborate effectively in a matrix environment and to stand in front of a global sales floor or senior revenue executives and explain advanced data science models using simple, highly motivating language.
  • Fast‑Paced Operator: Comfortable deploying iterations quickly, prioritising rapid sales‑enablement wins without sacrificing the absolute integrity of the underlying code.
  • Equal Opportunity Employer

All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, age, national origin, protected veteran status, disability status or any other protected characteristic under applicable law.

Reasonable Accommodation

We are committed to providing reasonable accommodation for qualified individuals with disabilities in our job application and/or interview process.

If you need assistance or accommodation in completing your application or participating in an interview due to a disability, email us at

Please put "Reasonable Accommodation" in the subject line and provide a brief description of the type of assistance you need.

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Lead Commercial Data Scientist in London employer: Dow Jones

At Dow Jones, we pride ourselves on being an exceptional employer that fosters a dynamic work culture focused on innovation and collaboration. Our employees benefit from competitive compensation packages, comprehensive insurance, generous paid time off, and robust career growth programs, all while working in a vibrant European market that values security and geopolitical insights. Join us to be part of a forward-thinking team where your contributions directly impact our success and your professional development is a priority.

Dow Jones

Contact Details:

Dow Jones Recruitment Team

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We think you need these skills to ace Lead Commercial Data Scientist in London

Predictive Modelling
Machine Learning Algorithms
Salesforce Integration
Data Pipeline Engineering
Price Elasticity Modelling
Contract Value Simulation
Data Quality Assurance

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