1

Marketing Mix Modeling Jobs (NOW HIRING)

Contribute to marketing mix modeling (MMM) and other aggregate measurement approaches to evaluate cross-channel and upper-funnel impact (e.g. brand) where deterministic attribution is limited.

Marketing Mix Modeling (MMM) * Attribution and incrementality testing * Experimental design and causal inference * Media and sponsorship performance analysis * Strong understanding of the modern ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

You will be doing project-based analytics which includes Marketing Mix Modeling, Multi-Channel Attribution, Digital Analytics, Pricing and Promotion and Demand Forecasting. You will be leading a team ...

next page

Showing results 1-20

Marketing Mix Modeling information

See salary details

$13

$32

$56

How much do marketing mix modeling jobs pay per hour?

As of Jul 16, 2026, the average hourly pay for marketing mix modeling in the United States is $32.69, according to ZipRecruiter salary data. Most workers in this role earn between $21.63 and $43.27 per hour, depending on experience, location, and employer.

What are the typical day-to-day responsibilities of someone working in Marketing Mix Modeling?

Professionals in Marketing Mix Modeling spend their days gathering and cleaning large sets of marketing and sales data, applying statistical models to understand the impact of various marketing channels, and developing insights to optimize marketing spend. They routinely collaborate with cross-functional teams such as marketing, finance, and data science to align strategies and present actionable recommendations. Regular tasks include data visualization, preparing reports for stakeholders, and responding to ad hoc analysis requests. The role is both analytical and consultative, requiring frequent communication with both technical and non-technical team members.

What are the key skills and qualifications needed to thrive in the Marketing Mix Modeling position, and why are they important?

To thrive in Marketing Mix Modeling, you need a strong background in statistics, data analysis, and marketing principles, typically supported by a degree in economics, statistics, mathematics, or a related field. Familiarity with statistical software such as R, Python, SAS, or specialized marketing analytics tools, along with experience in handling large datasets, is highly valued. Exceptional problem-solving abilities, attention to detail, and effective communication skills are key soft skills for this position. These competencies are crucial for translating complex data into actionable business strategies that drive marketing ROI.

What is a Marketing Mix Modeling job?

A Marketing Mix Modeling (MMM) job involves analyzing the impact of various marketing channels (such as TV, digital, radio, and print) on sales and business performance. Professionals in this role use statistical models and data analytics to measure the effectiveness of marketing campaigns, optimize budget allocation, and forecast future outcomes. They work with large datasets, apply econometric techniques, and collaborate with stakeholders to improve marketing strategies. Strong skills in data analysis, statistical modeling, and business acumen are essential for success in this role.

More about Marketing Mix Modeling jobs
What cities are hiring for Marketing Mix Modeling jobs? Cities with the most Marketing Mix Modeling job openings:
What are the most commonly searched types of Marketing Mix Modeling jobs? The most popular types of Marketing Mix Modeling jobs are:
What states have the most Marketing Mix Modeling jobs? States with the most job openings for Marketing Mix Modeling jobs include:
Infographic showing various Marketing Mix Modeling job openings in the United States as of July 2026, with employment types broken down into 100% Full Time. Highlights an 60% In-person, and 40% Remote job distribution, with an average salary of $67,990 per year, or $32.7 per hour.
Data Scientist, Marketing

Data Scientist, Marketing

Scopely

San Francisco, CA โ€ข On-site

Other

Re-posted 20 days ago


Job description

Scopely is a global gaming company whose mission is to inspire play every day. The mission of Scopely Explore (formerly known as Niantic) is to inspire people to explore the world, together. We build products that inspire exercise, exploration, and social in-person interaction.

We are seeking a quantitatively strong and business-oriented Data Scientist, Marketing to support our global Marketing organization. In this role, you will help develop measurement frameworks, analytical models, and scalable reporting solutions that inform user acquisition, brand investment, direct marketing (CRM), and long-term player growth.

This role is ideal for someone who combines strong technical skills with intellectual curiosity and a desire to understand how marketing investments translate into long-term player value. Demonstrated effective use of AI and a forward-thinking mindset into how AI will change day-to-day work in data and marketing is mandatory.

Responsibilities

User Acquisition (UA)

  • Build and maintain robust ETL pipelines that ingest, transform, and validate UA data from ad networks, MMPs, and internal systems.
  • Develop and refine predictive LTV (pLTV) models to enable faster optimization of UA campaigns based on early user signals.
  • Explore, develop, and refine AI-based systems that are able to answer common data inquiries from stakeholders, as well as quickly diagnose data pipeline issues, etc.
  • Contribute to marketing mix modeling (MMM) and other aggregate measurement approaches to evaluate cross-channel and upper-funnel impact (e.g. brand) where deterministic attribution is limited.
  • Support testing frameworks (e.g., geo experiments, holdouts, incrementality tests) to evaluate campaign effectiveness in privacy-constrained environments.
  • Partner with Finance and UA teams to align on forecasting methodologies and investment strategies driven by pLTV and payback periods.

Direct Marketing

  • Build and maintain reliable datasets and ETL workflows that ingest and transform marketing data from ad platforms, CRM systems, social channels, and internal data sources.
  • Support measurement and optimization of direct marketing channels including email, push notifications, in-app messaging, and other CRM/lifecycle campaigns.
  • Partner with Marketing stakeholders to provide actionable insights on targeting, segmentation, messaging effectiveness, and channel strategy.

Analytics Infrastructure & Workflow Efficiency

  • Contribute to scalable dashboards and standardized reporting that enable self-serve marketing analytics.
  • Ensure data quality, documentation, and consistency across marketing data pipelines.
  • Leverage modern AI/ML tools (e.g., automated modeling workflows, AI coding assistants) to improve analysis speed, code quality, and documentation.
  • Identify opportunities to automate recurring reporting and insight generation for marketing stakeholders.
  • Contribute to responsible and thoughtful adoption of AI-powered analytics tools.

Qualifications

  • 1-5 years of experience in data science, marketing analytics, or a related quantitative role (gaming, mobile, or digital consumer experience preferred).
  • Understanding of marketing measurement across paid media, brand/awareness, social, and direct marketing channels (e.g., email, push, CRM).
  • Familiarity with core performance metrics such as CAC, ROAS, retention, engagement, and LTV.
  • Experience working with marketing data from ad platforms, CRM systems, or aggregate reporting environments.
  • Proficiency in SQL and experience using Python (or similar) for analysis.
  • Experience working with large datasets in a cloud data warehouse (e.g., BigQuery) and building dashboards in BI tools (e.g., Looker).
  • Strong analytical, communication, and stakeholder management skills in a cross-functional environment.
Plus If...
  • Experience supporting brand or upper-funnel marketing measurement.
  • Exposure to marketing mix modeling or other aggregate-level measurement frameworks.
  • Familiarity with lifecycle marketing analytics, segmentation modeling, or propensity modeling.
  • Experience building marketing data pipelines using Airflow, Composer, or similar orchestration tools.
  • Experience working with global marketing teams across multiple regions.