Bangalore, Karnataka, India
Finance & Banking
Full-Time
Blend
Overview
Company Description
Blend is building a scalable Media Mix Optimization (MMO) solution designed to help clients maximize the impact of their marketing investments. We are seeking a Data Scientist with strong expertise in media mix modeling, statistical modeling, and interactive application development to join our advanced analytics team. This role goes beyond model building — you will design, implement, and productionize end-to-end solutions that integrate statistical rigor with business impact.
The ideal candidate will have deep knowledge of marketing analytics, advanced Python skills, and hands-on experience with Streamlit or similar frameworks for interactive data applications. You will be central in creating robust pipelines, experimentation frameworks, and client-facing tools that directly inform media allocation decisions.
Job Description
Project Overview: Media Mix Optimization (MMO)
Our MMO platform is an in-house initiative designed to empower clients with data-driven decision-making in marketing strategy. By applying Bayesian and frequentist approaches to media mix modeling, we are able to quantify channel-level ROI, measure incrementality, and simulate outcomes under varying spend scenarios.
Key Components Of The Project Include
Preferred Qualifications
Blend is building a scalable Media Mix Optimization (MMO) solution designed to help clients maximize the impact of their marketing investments. We are seeking a Data Scientist with strong expertise in media mix modeling, statistical modeling, and interactive application development to join our advanced analytics team. This role goes beyond model building — you will design, implement, and productionize end-to-end solutions that integrate statistical rigor with business impact.
The ideal candidate will have deep knowledge of marketing analytics, advanced Python skills, and hands-on experience with Streamlit or similar frameworks for interactive data applications. You will be central in creating robust pipelines, experimentation frameworks, and client-facing tools that directly inform media allocation decisions.
Job Description
Project Overview: Media Mix Optimization (MMO)
Our MMO platform is an in-house initiative designed to empower clients with data-driven decision-making in marketing strategy. By applying Bayesian and frequentist approaches to media mix modeling, we are able to quantify channel-level ROI, measure incrementality, and simulate outcomes under varying spend scenarios.
Key Components Of The Project Include
- Data Integration: Combining client first-party, third-party, and campaign-level data across digital, offline, and emerging channels into a unified modeling framework.
- Model Development: Building and validating media mix models (MMM) using advanced statistical and machine learning techniques such as hierarchical Bayesian regression, regularized regression (Ridge/Lasso), and time-series modeling.
- Scenario Simulation: Enabling stakeholders to forecast outcomes under different budget allocations through simulation and optimization algorithms.
- Deployment & Visualization: Using Streamlit to build interactive, client-facing dashboards for model exploration, scenario planning, and actionable recommendation delivery.
- Scalability: Engineering the system to support multiple clients across industries with varying data volumes, refresh cycles, and modeling complexities.
- Develop, validate, and maintain media mix models to evaluate cross-channel marketing effectiveness and return on investment.
- Engineer and optimize end-to-end data pipelines for ingesting, cleaning, and structuring large, heterogeneous datasets from multiple marketing and business sources.
- Design, build, and deploy Streamlit-based interactive dashboards and applications for scenario testing, optimization, and reporting.
- Conduct exploratory data analysis (EDA) and advanced feature engineering to identify drivers of performance.
- Apply Bayesian methods, regularization, and time-series analysis to improve model accuracy, stability, and interpretability.
- Implement optimization and scenario-planning algorithms to recommend budget allocation strategies that maximize business outcomes.
- Collaborate closely with product, engineering, and client teams to align technical solutions with business objectives.
- Present insights and recommendations to senior stakeholders in both technical and non- technical language.
- Stay current with emerging tools, techniques, and best practices in media mix modeling, causal inference, and marketing science.
- Bachelor’s or Master’s degree in Data Science, Statistics, Computer Science, Applied Mathematics, or related field.
- Proven hands-on experience in media mix modeling, marketing analytics, or econometrics.
- Strong proficiency in Python and key data science libraries (pandas, NumPy, scikit-learn, statsmodels, PyMC or similar Bayesian frameworks).
- Experience with Streamlit or equivalent frameworks (Dash, Shiny) for building data- driven applications.
- Proficiency in SQL for querying, joining, and optimizing large-scale datasets.
- Solid foundation in statistical modeling, regression techniques, and machine learning.
- Strong problem-solving skills with the ability to structure ambiguous business problems
- Excellent verbal and written communication skills to translate technical outputs into
Preferred Qualifications
- Experience with Bayesian hierarchical models, time-series decomposition, and marketing attribution approaches.
- Familiarity with cloud-based platforms (AWS, GCP, Azure) for data processing, model training, and deployment.
- Experience with data visualization tools beyond Streamlit (Tableau, Power BI, D3.js, Plotly).
- Exposure to big data ecosystems (Spark, Hadoop) for large-scale data processing.
- Knowledge of causal inference techniques (propensity scoring, uplift modeling, geo-
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