Data Scientist
@ Blend360

Hyderabad, Telangana, India
On Site
Full-time
Posted 3 days ago

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Job Details

Company Overview

Blend360 is building a scalable Media Mix Optimization (MMO) solution to help clients maximize marketing investments. The Data Scientist will play a crucial role in integrating statistical rigor with real business impact.

Project Overview: Media Mix Optimization (MMO)

This in-house MMO platform empowers clients with data-driven decision-making in marketing strategy. It applies Bayesian and frequentist methods to quantify channel-level ROI, measure incrementality, and simulate outcomes under various budget scenarios.

Key Components

  • Data Integration: Combining diverse datasets into a unified modeling framework.
  • Model Development: Building robust media mix models using hierarchical Bayesian regression, regularized regression, and time-series modeling.
  • Scenario Simulation: Forecasting outcomes under different budget allocations using simulation algorithms.
  • Deployment & Visualization: Developing Streamlit-based interactive dashboards for scenario planning and insights delivery.
  • Scalability: Engineering solutions to support multiple clients with varying data complexities.

Responsibilities

  • Develop and validate media mix models evaluating marketing effectiveness.
  • Engineer end-to-end data pipelines for cleaning and structuring diverse datasets.
  • Design and deploy Streamlit interactive dashboards for scenario testing and reporting.
  • Conduct exploratory data analysis and advanced feature engineering.
  • Implement Bayesian methods, regularization, and time-series analysis to improve models.
  • Develop optimization algorithms to recommend strategic budget allocations.
  • Collaborate with product, engineering, and client teams to align on solutions.
  • Present insights to technical and non-technical stakeholders.
  • Stay current with emerging techniques in media mix modeling and marketing science.

Qualifications

  • Bachelor’s or Master’s degree in a relevant field (Data Science, Statistics, etc.).
  • Proven experience in media mix modeling, marketing analytics, or econometrics.
  • Strong proficiency in Python (pandas, NumPy, scikit-learn, statsmodels, PyMC).
  • Experience with Streamlit or equivalent frameworks for interactive application development.
  • Proficiency in SQL and handling large-scale datasets.
  • Excellent communication skills to translate complex models into actionable insights.

Preferred Qualifications

  • Experience with Bayesian hierarchical models and time-series decomposition.
  • Familiarity with cloud platforms (AWS, GCP, Azure) and big data ecosystems (Spark, Hadoop).
  • Knowledge of advanced visualization tools like Tableau, Power BI, or Plotly.
  • Understanding of causal inference techniques and marketing attribution methods.

Key skills/competency

  • Data Scientist
  • Media Mix Modeling
  • Statistical Modeling
  • Python
  • Streamlit
  • Marketing Analytics
  • SQL
  • Bayesian Methods
  • Machine Learning
  • Data Integration

How to Get Hired at Blend360

🎯 Tips for Getting Hired

  • Customize your resume: Tailor experience to media mix modeling roles.
  • Highlight technical skills: Emphasize Python, SQL, and Streamlit expertise.
  • Showcase projects: Include relevant analytics and dashboard projects.
  • Prepare for interviews: Be ready with statistical and business problem examples.

📝 Interview Preparation Advice

Technical Preparation

Review Python libraries and statistical packages.
Practice building data pipelines and Streamlit dashboards.
Study Bayesian and regression modeling techniques.
Refresh SQL query optimization and dataset handling.

Behavioral Questions

Describe a challenging data project you led.
Explain how you handled ambiguous requirements.
Share teamwork experiences in cross-functional groups.
Discuss how you communicate complex findings.

Frequently Asked Questions