
Data Science Analyst
AMS
full-time
Posted on:
Location Type: Hybrid
Location: Pearl River • New York • United States
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Salary
💰 $85,000 per year
Job Level
About the role
- Support standard marketing analytics engagements including MMM, test readouts, and performance deep dives
- Prepare and QA modeling datasets from multiple sources (ad platforms, adserver logs, web analytics, CRM/sales, research vendors)
- Contribute to model development using regression/time-series approaches; help interpret results and document assumptions and limitations
- Translate findings into clear deliverables: slides, written summaries, and stakeholder-ready visuals
- Help improve Involved’s core offering—linking media to outcomes (leads/sales)—by analyzing drivers such as touchpoints, time-to-convert, device, geo, creative, placement, channel mix, and competitive share-of-voice/spend
- Apply the best feasible methodology given the data (e.g., MMM, test design, causal methods, attribution approaches), with guidance from senior team members
- Build and maintain reusable analytics components: data pipelines, QA checks, feature generation, reporting automation, and internal tools (notebooks/apps/APIs)
- Write clean, well-documented code; use version control and lightweight testing to support reliability and reuse
- Collaborate with internal stakeholders (media strategy, client teams, product/engineering) to define requirements and ship improvements
- Explore practical applications of AI/LLM tooling to reduce manual work, speed insights, and improve consistency—always with attention to data privacy and quality.
Requirements
- BA/BS (or equivalent experience) in a quantitative field (e.g., analytics, statistics, economics, CS, engineering, applied math)
- 0–3 years in analytics, data science, marketing analytics, or related work (internships/co-ops count)
- Proficiency in Python and SQL for data wrangling, analysis, and basic modeling workflows
- Solid foundation in statistics (descriptive statistics, regression fundamentals, experiment concepts, model evaluation)
- Ability to explain analysis clearly to non-technical audiences; strong writing and visual communication skills
- Comfortable working with imperfect data; resourceful and proactive in diagnosing issues and proposing solutions.
- Exposure to marketing measurement methods such as MMM, incrementality testing/matched markets, causal inference, or attribution.
- Familiarity with time-series methods and/or modern ML approaches (e.g., tree-based models) and when to use them.
- Experience with Google Cloud Platform (e.g., BigQuery) and/or Vertex AI.
- Familiarity with web analytics (e.g., GA4), adserver/platform data, or identity/privacy constraints in measurement.
- Experience shipping analytics tooling: dashboards, lightweight web apps, scheduled jobs, or internal libraries.
Benefits
- medical coverage
- dental
- vision
- disability
- 401k
- paid time off
- community engagement opportunities
- great colleagues
- great learning opportunities
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
PythonSQLstatisticsregressiontime-series methodsmarketing measurement methodsdata wranglingmodel evaluationanalytics toolingmachine learning
Soft Skills
communicationwritingvisual communicationproblem-solvingcollaborationresourcefulnessproactivityinterpretationattention to detailstakeholder engagement