Senior Business Data Scientist, Marketing

Location TBD·Posted today
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Marketing leaders are often asked to make high-stakes investment decisions using signals that are incomplete, conflicting, or difficult to interpret. At Jobber, you will build the measurement systems, causal models, and decision frameworks that help separate true incremental impact from correlation, connect marketing investment to long-term customer value, and guide how millions of dollars are allocated. We are looking for a Senior Business Data Scientist, Marketing to join Customer Analytics and shape the quantitative foundation of Jobber’s marketing strategy. The Team Analytics is Jobber’s internal consulting and decision-support function, connecting data and business insight with teams across the organization. Customer Analytics helps Jobber understand how we acquire, monetize, serve, and retain customers—and turns that understanding into decisions that improve growth and long-term customer value. This role brings specialist Business Data Science depth to Customer Analytics, combining advanced statistical modelling, causal inference, experimentation, simulation, forecasting, and optimization with deep business context to help leaders make complex, high-value decisions. You will work closely with Customer Analytics colleagues and partners across Marketing, Finance, BI & Analytics Engineering, Data Science, Data Engineering, and other teams across Jobber. The Role Reporting to the Manager, Customer Analytics, the Senior Business Data Scientist, Marketing is a senior individual contributor who will bring advanced analytics and applied decision science to Jobber’s growth engine. Your core domain will be Marketing, with particular emphasis on performance marketing and demand generation. You will design and evolve the quantitative backbone of Jobber’s marketing measurement—helping the company understand which investments drive incremental subscription growth, how channel effectiveness changes over time, and where the next marketing dollar will generate the greatest long-term value. This is a hands-on, technically deep role. You will build models, experiments, simulations, and measurement frameworks that influence how millions of dollars in marketing investment are allocated. You will connect marketing activity not only to immediate acquisition, but also to customer quality, revenue, payback, retention, and lifetime value. The role is focused on applied data science and decision science rather than production ML engineering. You will own the analytical work end to end—from problem formulation and methodology selection through development, validation, interpretation, and business application. You will not be responsible for MLOps, model deployment, or the engineering and operational maintenance of production systems. When a proven analytical framework would benefit from automation or productionization, you will partner with Data Science, BI & Analytics Engineering, and Data Engineering, bringing the methodological context and business logic needed to scale it effectively. Understanding the full impact of marketing investment often requires following customer outcomes beyond initial acquisition. Your work may therefore include selected questions involving conversion, channel partnerships, sales-assisted acquisition, retention, and other downstream outcomes, always in service of better marketing and acquisition decisions. You will operate as a trusted thought partner to Marketing and Analytics leadership, independently lead ambiguous and high-impact work, and act as a force multiplier for the broader analytics team. This is an individual contributor role: you will lead through expertise, technical ownership, influence, and mentorship rather than through direct people management. What You’ll Own Build Jobber’s Marketing Measurement System Design and evolve an integrated marketing measurement system that brings together marketing mix modelling (MMM), attribution, incrementality testing, experimentation, forecasting, and business performance diagnostics, helping leaders reconcile different signals and understand the strengths and limitations of each approach. Measure the contribution of directly attributable and harder-to-attribute investments—including paid, organic, referral, partnership, brand, upper-funnel, and offline activity—using methods suited to each channel’s data and measurement constraints. Develop response curves, saturation and diminishing-returns models, spend-efficiency analyses, and budget-allocation scenarios that inform channel and portfolio investment decisions. Connect marketing and channel investment to subscription revenue, CAC, payback, customer quality, LTV, retention, and long-term business value. Evaluate and challenge vendor, platform, and third-party measurement outputs, including the assumptions and biases embedded in platform-reported attribution. Apply Advanced Analytics to Growth Decisions Apply causal-inference and statistical techniques to distinguish true incremental impact from correlation, selection effects, seasonality, and noise. Design and evaluate experiments and quasi-experiments, including A/B tests, geo or matched-market tests, synthetic-control approaches, and other appropriate impact-evaluation methods. Build predictive and decision-support models involving customer lifetime value, acquisition quality, conversion propensity, lead or customer scoring, segmentation, and downstream customer outcomes. Develop forecasts, simulations, and scenarios that help leaders understand expected outcomes, uncertainty, risk, and trade-offs under different investment decisions. Translate ambiguous business questions into well-structured analytical problems, selecting methods that are appropriate for the decision, data, timeline, and level of precision required. Clearly communicate confidence, assumptions, methodological limitations, and what the available evidence does—and does not—support. Act as a Strategic Partner to Marketing Leaders Partner closely with leaders and teams across Demand Generation, Performance Marketing, Brand Marketing & Communications, Marketing Operations, Finance, and adjacent analytics functions. Help shape the marketing measurement and advanced analytics roadmap by translating stakeholder objectives into proposed analytical solutions—including models, experiments, KPIs, reporting, and decision systems—and building alignment around the capabilities and investments that will have the greatest business impact. Proactively identify opportunities to improve marketing efficiency, channel mix, customer quality, conversion, revenue performance, and long-term value. Support forecasting, planning, target setting, and resource-allocation decisions across the acquisition and revenue funnel. Translate and present complex analytical findings in business reviews, leadership updates, planning forums, and cross-functional working sessions, making recommendations, uncertainty, and trade-offs clear and actionable for senior leaders. Build Scalable, AI-Native, and Trusted Analytical Capabilities Create reproducible, well-documented analytical workflows with strong quality assurance, peer review, version control, and clear methodological standards. Develop reusable models, frameworks, and decision tools that make high-quality analysis more consistent and scalable. Define clear analytical and data requirements, and partner with BI & Analytics Engineering and Data Engineering to strengthen the datasets, metric definitions, reporting foundations, dashboards, and self-serve capabilities needed for advanced marketing measurement. Partner with Data Science, BI & Analytics Engineering, and Data Engineering on ML/AI capabilities, automated experimentation, and productionization opportunities that support customer acquisition and go-to-market decision-making, contributing the analytical framework, business logic, requirements, and validation standards needed to scale them responsibly. Design analytical workflows that use AI across the full analytical lifecycle—from research and coding through model iteration, validation, documentation, and communication. Identify recurring work that should be standardized, automated, or enabled through self-serve capabilities, while maintaining reproducibility, appropriate controls, and clear human ownership of methodological and analytical quality. Stay current on developments and industry best practices in marketing science, causal inference, measurement, forecasting, optimization, and applied decision science, and translate relevant advances into practical improvements at Jobber. Lead as a Senior Individual Contributor Independently own complex, ambiguous, and high-impact work from initial problem framing through modelling, interpretation, recommendation, and business adoption. Set a high standard for statistical rigour, analytical judgment, documentation, and decision relevance. Provide technical guidance, peer review, and mentorship to members of the Marketing and Customer Analytics teams. Help colleagues and stakeholders select appropriate analytical methods and understand the implications and limitations of the resulting evidence. Contribute to the development of Business Data Science practices, reusable methods, and technical standards within Customer Analytics. Lead through influence and expertise, building trust with senior stakeholders and helping teams make better decisions without relying on formal authority. To Be Successful, You Should Have Significant hands-on experience in digital or performance marketing analytics, marketing science, growth measurement, or a closely related field, ideally in a SaaS, subscription, marketplace, or similarly complex business. Your experience includes methodological thought leadership, consultative influence, or both. Broad, practitioner-level knowledge across the advanced marketing measurement ecosystem, including: marketing mix modelling; multi-touch attribution and other attribution methods; incrementality measurement and experimentation; causal inference; forecasting and scenario modelling; budget allocation and optimization; and customer lifetime value and acquisition-quality measurement. Meaningful applied experience spanning MMM, attribution, and incrementality, with deeper specialization in one or more of these areas. Your incrementality experience includes designing or evaluating experiments and quasi-experiments and selecting appropriate approaches based on the business question, available data, and practical constraints. Experience building, materially improving, or operating an integrated marketing measurement system that connects multiple methodologies to real investment decisions. Hands-on experience measuring at least one harder-to-attribute area—such as brand, upper-funnel, offline, referral, or partnership activity—and selecting methods suited to incomplete, indirect, or imperfect signals. The judgment to evaluate, select, connect, and challenge different measurement methods—including vendor, platform, and third-party outputs—and to reconcile conflicting evidence rather than treating any one model or reported result as definitive. Expert-level SQL skills and the ability to work confidently across complex relational data structures, construct analytical datasets, and validate logic. Strong proficiency in Python or R for statistical modelling, causal analysis, forecasting, simulation, optimization, and analytical workflow development. Strong statistical judgment, including comfort with uncertainty, bias, variance, confidence intervals, effect sizes, seasonality, model validation, and the practical limitations of observational data. Familiarity with modern cloud data and business-intelligence platforms such as Snowflake, dbt, Tableau, Looker, or equivalent tools. Experience making analytical work reusable and repeatable through modular code, version control, documentation, quality assurance, and scalable analytical workflows. Familiarity with paid-media, ad-platform, CRM, lifecycle, web, revenue-funnel, and customer data, including platform-specific constraints associated with Google Ads, Meta, and programmatic advertising, as well as the privacy, tracking, and signal-loss changes affecting modern marketing measurement. A strong understanding of SaaS and subscription economics, including CAC, LTV, payback, conversion, MRR, ARR, NRR, churn, retention, customer quality, and long-term value. Strong business acumen and the ability to connect analytical work to profitable growth, investment allocation, and company-level outcomes. Excellent stakeholder-management and communication skills, including the ability to influence senior leaders and turn technically complex work into clear, decision-ready recommendations. Practical fluency with AI-assisted analytical and development workflows, including using AI to accelerate coding, model iteration, research, quality assurance, documentation, and communication; independently validating outputs; and identifying where AI, automation, or self-serve capabilities can make analytical work more scalable. A track record of operating independently in ambiguous environments and balancing methodological rigour with speed and practical business needs. Experience mentoring analysts or data scientists and raising the technical and analytical bar for colleagues. What Would Set You Apart Experience with MMM libraries or statistical frameworks such as Meridian, Robyn, PyMC-Marketing, or comparable Bayesian modelling tools. Deeper expertise in one or more specialized causal-inference approaches, such as geo experimentation, matched-market methods, synthetic control, uplift modelling, propensity-score methods, or regression discontinuity. Deep experience across multiple harder-to-attribute investment areas, such as brand, upper-funnel, offline, referral, or partnership activity. Experience developing maintained analytical applications, automated workflows, self-serve decision tools, or analytical frameworks that were subsequently productionized. Experience working in marketing environments with complex channel portfolios, international markets, or multi-product acquisition strategies. Who You Are You are deeply curious about what truly drives marketing performance and are not satisfied with surface-level or platform-reported answers. You combine technical depth with strong commercial judgment and stay focused on the decision the analysis needs to improve. You are rigorous without being dogmatic. You know when additional precision will change the decision and when it will not. You are proactive and resourceful. You do not wait for perfectly framed questions before identifying important analytical opportunities. You communicate with clarity and confidence and collaborate effectively across analytical and business teams, especially when evidence is incomplete, methodologies disagree, or trade-offs need to be made visible. You are comfortable with ambiguity and pace and can bring structure to problems in a fast-moving environment. You care deeply about quality, including validation, documentation, reproducibility, and peer review. Location We believe great collaboration is intentional, and sometimes that means coming together in person to build, brainstorm, and connect. To support this, the role is open to candidates based in one of our hub cities: Edmonton, Toronto, Vancouver, or Kitchener-Waterloo . Compensation At Jobber, we believe that compensation should be transparent, fair, and reflective of your experience and growth. This role has a minimum annual salary of $151,200, a midpoint of $177,900, and a maximum salary of $204,500, designed to show the progression from learning the ropes to truly excelling. We design our compensation to reflect each new hire’s skills, experience against the complexity of the role, ensuring a fair and competitive salary. Our range is intentionally broad to support growth and long-term impact, with fully established hires typically starting around the midpoint. The higher end of the range is reserved for those who have demonstrated deep expertise and lasting contributions, while offers below the midpoint reflect strong potential with room to develop. This approach ensures that compensation aligns with both an individual’s current capabilities and their opportunity for future growth. Base salary is just one part of a total compensation package that will include equity rewards, annual stipends for health and wellness, retirement savings matching, and an extended health package with fully paid premiums for body and mind. Your professional growth matters to us too! You’ll have access to a dedicated talent development program that includes career coaching and opportunities for career development. We believe in transparency and open conversations about compensation. If you have any questions about our approach, we’re happy to discuss them throughout the hiring process! What you can expect from Jobber: A total compensation package that includes an extended health benefits package with fully paid premiums for both body and mind, matching in RRSP, TFSA or FHSA, and stock options. A dedicated Talent Development team and access to coaching, learning, and leadership programs to help you grow your career, reach your goals, and unlock your full potential. A unique opportunity to build, grow, and leave your impact on a $400-billion industry that has no dominant player...yet. To work with a group of people who are humble, supportive, and give a sh*t about our customers. We believe that diverse teams perform better and that fostering an inclusive work environment is a key part of growing a successful team. We welcome people of diverse backgrounds, experiences, and perspectives. We are an equal opportunity employer, and we are committed to working with applicants requesting accommodation at any stage of the hiring process. A bit more about us: Job by job, we’re transforming the way service is delivered. Your lawn care provider, home cleaning service, plumber or painter could use Jobber to better connect with their customers, save time in the office, invoice faster, and get paid! We’re bringing tens of thousands of people together with technology to deliver billions of dollars a year in services to happy customers. Jobber exists to help make these small businesses successful, and when they’re successful we all win!