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Whatnot

Whatnot

www.whatnot.com

2 Jobs

1,237 Employees

About the Company

Whatnot is the largest livestream shopping platform in the US, UK, and Europe--bringing millions together to shop, sell, and connect around the things they love.

We're building the future of ecommerce, bringing together community, shopping and entertainment. We are committed to our values, and as a remote co-located team, we operate out of hubs within the US, UK, Ireland, Poland, and Germany today.

We're innovating in the fast-paced world of live shopping from bags to beauty, comics to coins, sneakers to streetwear, and vintage to vinyl. With over 250+ categories, including electronics, sports and Pokemon cards, fashion, plants, jewelry and more--we've got it all!

And, we're growing. Whatnot has been one of the fastest growing marketplaces and we're hiring forward-thinking problem solvers across all functional areas.

Listed Jobs

Company background Company brand
Company Name
Whatnot
Job Title
Data Engineer
Job Description
**Job Title:** Data Engineer **Role Summary:** Design, build, and maintain scalable data architectures and pipelines to support data‑driven decision making across product, sales, marketing, finance, and trust functions. Ensure data quality, reliability, and low‑latency access for analytics, machine learning, and real‑time applications. **Expectations:** - 3+ years of experience in data or software engineering, focused on data warehouses, distributed systems, or event‑driven architectures. - Proven ability to translate ambiguous business requirements into robust data solutions. - Self‑starter who thrives in fast‑moving, cross‑functional environments and prioritizes outcomes over credit. **Key Responsibilities:** - Own end‑to‑end data architecture: define capture, modeling, storage, and serving strategies; make decisions on formats, compute patterns, and SLAs. - Build and operate high‑volume streaming and batch pipelines (e.g., user activity, transactions, telemetry) with strict latency, completeness, and accuracy guarantees. - Design canonical, domain‑oriented data models (dimensional, Data Vault, ledger) and enforce modeling standards and data contracts. - Implement data quality frameworks: testing, lineage, monitoring, and anomaly reconciliation. - Automate data handoffs and reconciliation across services, warehouses, and external systems. - Enable analytics, ML, and product teams via semantic layers, APIs, and real‑time query interfaces. **Required Skills:** - Proficiency in Python and SQL for production‑grade code. - Hands‑on experience with modern data tooling: Kafka/Debezium (ingestion), dbt/Spark/Flink (transformation), Dagster/Airflow (orchestration), Monte Carlo/Great Expectations (observability). - Experience operating cloud data warehouses (Snowflake, BigQuery, Redshift) including schema design, cost optimization, and workload tuning. - Familiarity with CI/CD pipelines and infrastructure‑as‑code practices. - Strong collaboration skills with engineering, product, and analytics stakeholders. **Required Education & Certifications:** - Bachelor’s degree in Computer Science, Engineering, Information Systems, or related field (or equivalent professional experience). - Relevant certifications (e.g., Snowflake, Google Cloud Professional Data Engineer, AWS Certified Data Analytics) are a plus but not mandatory.
Seattle, United states
On site
Junior
15-03-2026
Company background Company brand
Company Name
Whatnot
Job Title
Machine Learning Engineer, Fraud
Job Description
Job title: Machine Learning Engineer, Fraud Role Summary: Design, train, deploy, and maintain machine‑learning and LLM models that detect and prevent fraudulent activity across users, payments, and marketplace interactions, while balancing security and user experience. Expectations: 2–6 years of ML or software engineering experience, preferably in risk, fraud, or trust & safety. Strong Python proficiency with scikit‑learn, PyTorch, LightGBM. Backend development skills and proven ability to deploy ML models to production. Experience with data pipelines, SQL, Spark, DBT, and orchestration frameworks (Dagster, Kubeflow). Knowledge of fraud detection techniques such as anomaly detection, chargeback prediction, and graph‑based modeling. Bachelor’s degree in Computer Science, related field, or equivalent work experience. Key Responsibilities: • Architect and implement end‑to‑end fraud detection systems, including model training, deployment, and monitoring. • Build intelligent user graphs and collusion models to capture behavioral patterns. • Develop scalable, low‑latency data pipelines and real‑time inference systems. • Perform deep behavioral and adversarial analysis to identify fraud trends. • Collaborate with Trust & Safety, Payments, and Infrastructure teams on labeling, feature design, and evaluation pipelines. • Implement drift detection, model monitoring, and risk orchestration combining rules, models, and heuristics. • Define, track, and report key fraud metrics (precision, recall, false‑positive rate, latency). • Continuously update systems to counter emerging fraud tactics. Required Skills: • Python, scikit‑learn, PyTorch, LightGBM, TensorFlow/other ML frameworks. • Backend development (Java, Go, or similar preferred). • Data engineering: SQL, Spark, DBT, data orchestration (Dagster, Kubeflow). • Graph analytics and anomaly detection techniques. • Feature store design and use. • Strong analytical skills and ability to translate business risk into measurable ML solutions. Required Education & Certifications: • Bachelor’s degree in Computer Science, Data Science, Engineering, or related field, or equivalent professional experience.
New york, United states
On site
Junior
18-03-2026