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  • Posted: Jun 12, 2026
    Deadline: Not specified
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  • Impact is transforming the way enterprises manage and optimize all types of partnerships. Our Partnership CloudTM is an integrated end-to-end solution for managing an enterprises partnerships across the entire partner lifecycle to activate rapid growth through the emerging Partnership Economy.Impact was founded in 2008 by a team of Internet marketing and ...
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    Senior Data Scientist, Product Data

    About the Role

    • We're seeking a Senior Data Scientist specializing in Product Data Quality to join our Cape Town Data Science team. In this role, you'll own the analytical and technical foundation of product data quality across our ecosystem—spanning catalog hygiene, transaction matching, classification modeling, deduplication, and global product identity.
    • You'll work across both the structured catalog universe and the messier, larger-scale sales transaction universe, building models and infrastructure that power search, recommendations, and business intelligence.
    • This is a high-impact role that demands both analytical depth and strong engineering capabilities: you'll take models from research to production, build scalable data pipelines, and create the monitoring infrastructure that makes our product data foundation trustworthy and continuously improving.
    • Your work will directly influence search relevance, recommendation quality, match rates, and reporting accuracy across the business.

    Core Responsibilities

    Product classification & taxonomy modeling

    • Develop, deploy, and maintain ML models for automated product categorization and taxonomy assignment across hierarchical category structures.
    • Improve classification accuracy through feature engineering (text, attributes, embeddings), model iteration, and robust evaluation on both catalog and sales transaction data.
    • Monitor production model performance; identify and remediate misclassification patterns that impact search, recommendations, and reporting.
    • Collaborate with category experts and Product teams to refine taxonomy definitions, handle edge cases, and adapt to new product types.

    Catalog & sales universe data quality

    • Conduct deep-dive analyses into catalog completeness, consistency, and correctness across retailers, categories, and product attributes.
    • Own data quality analytics for the sales transaction universe—a larger, messier dataset than catalog—measuring match rates, diagnosing gaps (unmatched transactions, misattributed products), and identifying systematic failures.
    • Define and track catalog and transaction health KPIs (attribute coverage, schema compliance, match rates, GPID coverage, freshness); identify root causes and drive remediation.
    • Build monitoring systems and dashboards to track data quality trends across retailers, categories, and time periods.

    Global Product ID (GPID) coverage & matching

    • Assess GPID (GTIN/UPC/EAN) coverage and accuracy across both catalog and sales transaction data; identify gaps by category, retailer, and brand.
    • Build and improve matching algorithms to link sales transactions to catalog products, handling missing GPIDs, naming inconsistencies, and category misclassification.
    • Quantify the impact of GPID enrichment and matching improvements on search, deduplication, and reporting accuracy.
    • Partner with external data providers and brands to improve GPID coverage and resolve identifier conflicts.

    Deduplication & entity resolution

    • Identify product variants (size, color, packaging) and duplicates within and across retailer catalogs using clustering, entity resolution, embeddings, and similarity-based techniques.
    • Build scalable deduplication pipelines that handle catalog and transaction data at scale; define patterns, heuristics, and ML-based approaches for variant grouping.
    • Measure the impact of deduplication on search quality, recommendation accuracy, and reporting; iterate on models to reduce false positives and improve precision.
    • Support Data Engineering and Platform teams in productionizing deduplication and entity linking infrastructure.

    Manufacturer data quality & brand engagement

    • Evaluate the consistency and accuracy of manufacturer-level attributes (brand name, MPN, manufacturer identifiers) across catalogs and transactions.
    • Detect systemic issues at the brand and retailer level; build scorecards and engage brands (via the Tiger Team) to drive data quality improvements.
    • Create feedback loops to measure manufacturer data quality and track progress on remediation initiatives.

    Product search & retrieval infrastructure

    • Research and prototype improvements to product search and retrieval pipelines, including vector search, semantic similarity, and embedding-based matching.
    • Explore and implement vector database infrastructure (e.g., FAISS, Pinecone, Weaviate) to support fast, scalable product retrieval and similarity search.
    • Contribute to the design and optimization of retrieval pipelines that combine text, attributes, and embeddings for search and recommendations.
    • Evaluate search relevance and ranking quality; iterate on indexing strategies, query preprocessing, and re-ranking models.

    Product graph & relational modeling

    • Build and maintain product graph infrastructure that captures relationships between products, variants, brands, categories, retailers, and transactions.
    • Use graph-based techniques (community detection, link analysis, centrality) to identify product families, detect duplicates, and surface insights on product hierarchies.
    • Partner with Data Platform teams to design scalable graph storage and query patterns (e.g., Neo4j, graph extensions in BigQuery).

    Insights, monitoring & reporting

    • Systematically identify, classify, and prioritize product data quality issues; create clear summaries, visualizations, and actionable recommendations for stakeholders.
    • Build and maintain dashboards and recurring reports for key product data KPIs (match rates, GPID coverage, duplicate rates, classification accuracy, attribute completeness).
    • Establish alerting and anomaly detection systems to proactively surface data quality degradation and model performance issues.

    Engineering & production deployment

    • Take models and analytics prototypes from POC to production, with or without engineering partnership—owning deployment, testing, monitoring, and iteration.
    • Build robust, scalable data pipelines and ML workflows using production-grade tools and best practices (versioning, CI/CD, testing, observability).
    • Collaborate with MLOps and Data Engineering teams to ensure production readiness: reliability, latency, drift monitoring, and SLOs.

    Qualifications

    Required

    • Experience: 5+ years in data science, ML engineering, or analytics engineering, with at least 2+ years focused on product data, catalog quality, entity resolution, search/retrieval, or e-commerce/marketplace analytics.
    • Engineering strength: Proven ability to build production-grade data pipelines and deploy ML models independently; strong software engineering fundamentals (code quality, testing, version control, CI/CD).
    • Data quality expertise: Demonstrated experience analyzing and improving large-scale structured data quality (completeness, consistency, accuracy, deduplication, entity resolution).
    • ML & classification experience: Track record building and deploying classification models, ranking systems, or search/retrieval pipelines in production.
    • Technical skills:
      • Strong Python and SQL; proficiency with ML libraries (scikit-learn, XGBoost, LightGBM, PyTorch/TensorFlow) and data manipulation tools (pandas, PySpark).
      • Experience with entity resolution, fuzzy matching, clustering, embeddings, and similarity-based techniques (Levenshtein distance, cosine similarity, nearest-neighbor search).
      • Familiarity with production ML workflows (model versioning, monitoring, evaluation, retraining, A/B testing).
      • Experience with data profiling, anomaly detection, and exploratory analysis at scale.
    • Analytical rigor: Strong foundation in statistics and ML; ability to design experiments, validate models, interpret results, and communicate insights with business context.
    • Stakeholder collaboration: Experience working cross-functionally with Product, Engineering, and business teams; ability to translate technical work into actionable recommendations.
    • Education: Bachelor's in a quantitative field (CS, Statistics, Math, Engineering, or similar); Master's/PhD preferred.

    Preferred / Nice to have

    • Experience with vector search and embeddings (sentence transformers, OpenAI embeddings, BERT-based models) and vector databases (FAISS, Pinecone, Weaviate, Milvus, pgvector).
    • Familiarity with search and retrieval systems (Elasticsearch, Solr, semantic search, BM25, hybrid ranking) and understanding how data quality impacts relevance.
    • Experience with graph databases and graph analytics (Neo4j, NetworkX, graph algorithms for clustering and link prediction).
    • Knowledge of NLP techniques for product data (text classification, named entity recognition, attribute extraction, title/description parsing, semantic similarity).
    • Experience with multimodal modeling (combining text, images, and structured attributes for classification or retrieval).
    • Familiarity with global product identifiers (GTIN/UPC/EAN, MPN, SKU hierarchies) and standards organizations (GS1, GDSN).
    • Experience with deduplication and record linkage at scale (blocking strategies, probabilistic matching, hierarchical clustering).
    • Familiarity with GCP tools (BigQuery, Vertex AI, Dataflow, Cloud Run, Looker) and/or Databricks/Spark for large-scale processing and deployment.
    • Exposure to master data management (MDM) or data governance practices in product or catalog contexts.
    • Experience with recommendation systems or understanding how product data quality impacts personalization and ranking.

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