Data Engineering Team Lead - Applied AI Engineering Group at Zeichman Mfg Inc
Tel-Aviv, Tel-Aviv District, Israel -
Full Time


Start Date

Immediate

Expiry Date

30 Mar, 26

Salary

0.0

Posted On

30 Dec, 25

Experience

10 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Data Engineering, Data Modeling, ETL, ELT, Data Quality, Dimensional Modeling, Orchestration, Batch Processing, Lineage, Cataloging, Messaging, CDC, SQL, Python, Testing Practices, Code Quality

Industry

Computer and Network Security

Description
At Dream, we redefine cyber defense vision by combining AI and human expertise to create products that protect nations and critical infrastructure. This is more than a job; it’s a Dream job. Dream is where we tackle real-world challenges, redefine AI and security, and make the digital world safer. Let’s build something extraordinary together. Dream's AI cybersecurity platform applies a new, out-of-the-ordinary, multi-layered approach, covering endless and evolving security challenges across the entire infrastructure of the most critical and sensitive networks. Central to our Dream's proprietary Cyber Language Models are innovative technologies that provide contextual intelligence for the future of cybersecurity. At Dream, our talented team, driven by passion, expertise, and innovative minds, inspires us daily. We are not just dreamers, we are dream-makers. The Dream Job It starts with you - a technical leader who’s passionate about data pipelines, data modeling, and growing high-performing teams. You care about data quality, business logic correctness, and delivering trusted data products to analysts, data scientists, and AI systems. You’ll lead the Data Engineering team in building ETL/ELT pipelines, dimensional models, and quality frameworks that turn raw data into actionable intelligence. If you want to lead a team that delivers the data products powering mission-critical AI systems, join Dream’s mission - this role is for you. The Dream-Maker Responsibilities Lead and grow the Data Engineering team - hiring, mentoring, and developing engineers while fostering a culture of ownership and data quality. Define the data modeling strategy - dimensional models, data marts, and semantic layers that serve analytics, reporting, and ML use cases. Own ETL/ELT pipeline development using platform tooling - orchestrated workflows that extract from sources, apply business logic, and load into analytical stores. Drive data quality as a first-class concern - validation frameworks, testing, anomaly detection, and SLAs for data freshness and accuracy. Establish lineage and documentation practices - ensuring consumers understand data origins, transformations, and trustworthiness. Partner with stakeholders to understand data requirements and translate them into well-designed data products. Build and maintain data contracts with consumers - clear interfaces, versioning, and change management. Collaborate with Data Platform to define requirements for new platform capabilities; work with Datastores on database needs; partner with ML, Data Science, Analytics, Engineering, and Product teams to deliver trusted data. Design retrieval-friendly data products - RAG-ready paths, feature tables, and embedding pipelines - while maintaining freshness and governance SLAs. The Dream Skill Set 8+ years in data engineering, analytics engineering, or BI development, with 2+ years leading teams or technical functions. Hands-on experience building data pipelines and models at scale. Data modeling - Dimensional modeling (Kimball), data vault, or similar; fact/dimension design, slowly changing dimensions, semantic layers Transformation frameworks - dbt, Spark SQL, or similar; modular SQL, testing, documentation-as-code Orchestration - Airflow, Dagster, or similar; DAG design, dependency management, scheduling, failure handling, backfills Data quality - Great Expectations, dbt tests, Soda, or similar; validation rules, anomaly detection, freshness monitoring Batch processing - Spark, SQL engines; large-scale transformations, optimization, partitioning strategies Lineage & cataloging - DataHub, OpenMetadata, Atlan, or similar; metadata management, impact analysis, documentation Messaging & CDC - Kafka, Debezium; event-driven ingestion, change data capture patterns Languages - SQL (advanced), Python; testing practices, code quality, version control Never Stop Dreaming... If you think this role doesn't fully match your skills but are eager to grow and break glass ceilings, we’d love to hear from you! Requirements null
Responsibilities
Lead and grow the Data Engineering team while defining the data modeling strategy and owning ETL/ELT pipeline development. Drive data quality and establish lineage and documentation practices to ensure data trustworthiness.
Loading...