About The Position

Hypha Metrics is redefining how media data is measured, connected, and understood. Our platform provides the foundational infrastructure that powers audience insights for the modern media ecosystem. We help clients make smarter decisions by transforming fragmented data into unified, actionable intelligence. Design and deliver rigorous, scalable measurement solutions that uncover true media impact and drive media investment decisions. This role combines causal inference, experimentation, statistical modeling, and production data engineering to measure incrementality, optimize media mix and inform campaign strategy across digital and offline channels.

Requirements

  • 3+ years experience building statistical or ML models in ad-tech, marketing analytics, agency measurement, or a related data science role.
  • Strong statistics/causal inference fundamentals: experimental design, hypothesis testing, regression, hierarchical models.
  • Proficient in Python (pandas, scikit-learn, PyMC/Stan or equivalent) and SQL; experience with R is a plus.
  • Hands-on experience with event-level ad/exposure and conversion data, logs from ad servers/DSPs, or retail/point-of-sale integration.
  • Experience working with cloud data warehouses (BigQuery, Snowflake, Redshift) and ETL tooling (Airflow, dbt, Kafka).
  • Excellent written and verbal communication; proven ability to translate technical results to non-technical stakeholders.

Nice To Haves

  • Experience with incrementality platforms or approaches (e.g., Measured, experimentation platforms, proprietary lift frameworks).
  • Familiarity with marketing mix modeling (time-series, regularized regression, Bayesian MMM).
  • Experience with causal ML / uplift modeling and Bayesian inference tools (PyMC3/4, Stan).
  • Knowledge of identity resolution, privacy-preserving measurement (privacy regulation awareness, cohort-based measurement, differential privacy concepts).
  • Experience deploying models to production (Docker, CI/CD, MLOps patterns) and instrumenting model monitoring.
  • Background working with brand/performance media, cross-channel measurement, and agency/client workflows.
  • Proven consultative experience with clients or internal stakeholders.
  • Comfort operating in ambiguous environments and balancing speed vs. statistical rigor.
  • Ability to mentor junior data scientists and evangelize measurement best practices across teams.

Responsibilities

  • Design and analyze randomized and quasi-experimental tests (holdouts, geo-tests, RCTs) to measure advertising incrementality and lift.
  • Build and maintain causal models (difference-in-differences, synthetic controls, hierarchical Bayesian, uplift modeling) and marketing mix models (MMM) for multi-channel attribution.
  • Develop and productionize scalable end-to-end pipelines for event-level ad exposure, conversions, and offline-sales ingestion (ETL/ELT, validation, monitoring).
  • Work with data engineering to keep measurement datasets clean, deduplicated (identity resolution), and privacy-compliant.
  • Own feature engineering, model training, validation, and deployment in Python/R and cloud environments (BigQuery, Snowflake, Dataproc/AWS/GCP).
  • Produce clear, actionable dashboards and executive-ready insights for product, media, and client teams; present findings to stakeholders.
  • Implement automated reporting and CI/CD for model retraining and performance monitoring; establish measurement governance and documentation.
  • Stay current on the ad-tech/measurement ecosystem (ATtribution frameworks, walled gardens, ID solutions) and recommend measurement strategy changes.
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