pattern
Lever · Posted 4mo ago
Staff Data Engineer
Continue to application
Add your email once, then Caio opens the original posting.
Indexed description
As a Principal Data Engineer, you’ll be a technical leader and systems thinker within Pattern’s Data Engineering team—designing and scaling our canonical data model to deliver trusted, high-quality data. You’ll transform complex, raw data into tables that are easy to understand and efficient to power analytics, forecasting, and AI/ML with a set of efficient pipelines. You’ll lead through influence, shaping technical direction, mentoring engineers, and building the “single source of truth” that drives Pattern’s global growth.
Roles and Responsibilities
- Design and evolve canonical and medallion-layer data models (bronze/silver/gold) that enable scalable, governed data across the organization.
- Build and optimize ETL/ELT pipelines using Apache Airflow, Spark, Trino, and cloud-native tools.
- Develop high-performance data marts and semantic layers that serve analytics and data science needs.
- Architect streaming and analytical systems using Kafka and ClickHouse for real-time and batch insights.
- Define and enforce standards for data modeling, documentation, quality, and lineage across all domains.
- Partner with Analytics, AI/ML, and Infrastructure teams to translate business logic into reusable, trusted data assets.
- Mentor engineers, lead design reviews, and drive continuous improvement in scalability and data reliability.
- Design and evolve canonical and medallion-layer data models (bronze/silver/gold) that enable scalable, governed data across the organization.
- Build and optimize ETL/ELT pipelines using Apache Airflow, Spark, Trino, and cloud-native tools.
- Develop high-performance data marts and semantic layers that serve analytics and data science needs.
- Architect streaming and analytical systems using Kafka and ClickHouse for real-time and batch insights.
- Define and enforce standards for data modeling, documentation, quality, and lineage across all domains.
- Partner with Analytics, AI/ML, and Infrastructure teams to translate business logic into reusable, trusted data assets.
- Mentor engineers, lead design reviews, and drive continuous improvement in scalability and data reliability.
Principal Engineer Leadership expectation
- Lead multiple engineering teams or initiatives, providing technical direction, coaching, and feedback to foster growth and high performance.
- Operate as a cross-team engineer and advisor, proactively identifying opportunities, dependencies, and risks across products and platforms.
- Drive high-impact architectural and process improvements, reducing technical debt and enabling long-term scalability, resilience, and operational excellence.
- Represent Data Engineering with executive stakeholders, helping set technical strategy and translating business needs into forward-looking data capabilities.
- Establish engineering best practices and advocate for robust design, testing, quality, security, and monitoring standards across teams.
- Lead incident resolution for critical data platform issues, and cultivate a culture of knowledge sharing and blameless postmortems.
- Evaluate and recommend adoption of emerging technologies where they drive measurable business impact.
- Scale your impact through effective delegation, enabling teams to deliver autonomously while maintaining technical rigor and clarity.
Technical Qualification
- Bachelor’s or Master’s degree in Computer Science, Data Engineering, or a related field.
- 10+ years of experience in Data Engineering, including 2+ years in a architectural-level technical role.
- Expertise in SQL, data modeling, and data mart design.
- Deep hands-on experience with Apache Airflow, dbt, Spark, Kafka, and ClickHouse.
- Proven experience designing medallion data architectures and scalable data lakehouse solutions.
- Proficiency in Python or Scala, and familiarity with AWS, GCP, or Azure data ecosystems.
- Strong understanding of data governance, lineage, and quality frameworks.
- Demonstrated ability to mentor engineers and influence architectural strategy across teams.
- Experience with real-time or streaming data (Kafka, Kinesis, or Pub/Sub).
- Knowledge of data observability and catalog tools (DataHub, Amundsen, Monte Carlo, Great Expectations, or Soda).
- Experience in eCommerce, retail analytics, or digital marketplaces.
- Exposure to governed data contracts and semantic layer frameworks.
- Proven track record of leading data architecture initiatives or cross-functional platform modernization.
- Contributions to open-source data tools or engagement in data community initiatives
Create a free Caio profile to unlock the full index and keep your job-search signal for future recommendations.
Unlock free search