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Data Scientist - Experimentation & Causal Inference

External
wizeline logoWizeline · Colombia
Full-timeOn-site1mo ago
AzureData AnalysisDocumentationMachine LearningPySparkPython
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Responsibilities

  • Design, build, and validate causal models to evaluate the impact of business campaigns and initiatives (2x2 Difference-in-Differences (DiD), Staggered DiD, Synthetic Control, Causal Forest, DoubleML, Causal Meta Learners, G-Computation, Causal Discovery, DAG).
  • Define causal estimation methodologies for the design, implementation, and validation of causal models, aligned with business context, data quality, and the strategic decisions to be informed, ensuring standards and best practices.
  • Apply advanced statistical methods on observational data to identify and quantify causal relationships, distinguishing correlation from causation.
  • Design and implement Randomized Controlled Trials (RCTs) to rigorously evaluate the effectiveness of business strategies.
  • Maintain clear and detailed documentation of models, experiments, and analytical processes.
  • Prepare reports and presentations that translate complex analyses into understandable messages for non-technical audiences.
  • Must-have Skills
  • At least 3-4 years developing and applying causal inference models, experimentation (RCTs), and machine learning techniques on experimental and observational data.
  • Strong foundations in statistics, probability, and applied econometrics, including the Potential Outcomes framework, selection bias, omitted variable bias, parallel trends, spillovers, and SUTVA.
  • Experience in advanced experimental design: statistical power analysis, sample size calculation, multiple testing control, and heterogeneity analysis (CATE).
  • Advanced proficiency in Python and R applied to data analysis, experimentation, and causal inference, with experience in Python libraries such as econml , causalml , dowhy , statsmodels , and scikit-learn , and R packages such as did , fixest , CausalImpact , MatchIt , Synth , and gsynth .
  • Advanced proficiency in SQL and PySpark for extracting, transforming, and analyzing large datasets in distributed environments.
  • Experience working in the Azure suite, including Databricks and Azure DevOps, for developing, versioning, and deploying pipelines and analytical workflows.

Requirements

  • AI Tooling Proficiency : Leverage one or more AI tools to optimize and augment day-to-day work, including drafting, analysis, research, or process automation. Provide recommendations on effective AI use and identify opportunities to streamline workflows.
  • Understanding of the specific challenges of the Consumer Packaged Goods (CPG) industry.
  • Ability to operate in fast-paced, highly ambiguous environments.

Benefits

A High-Impact EnvironmentCommitment to Professional DevelopmentFlexible and Collaborative CultureGlobal OpportunitiesVibrant Community*Specific benefits are determined by the employment type and location.Find out more about our culture here .Flexible schedule

Additional Information

We are: Wizeline, a global AI-native technology solutions provider, develops cutting-edge, AI-powered digital products and platforms. We partner with clients to leverage data and AI, accelerating market entry and driving business transformation. As a global community of innovators, we foster a culture of growth, collaboration, and impact. With the right people and the right ideas, there's no limit to what we can achieve Are you a fit? Sounds awesome, right? Now, let's make sure you're a good fit for the role:


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