Data Engineer Data Pipelines and ETL
Paramount · Burbank, CA · 1 wk ago
On-siteInformation Technology$98k–$148k/yrFull-time
About the role
The Data Engineering team is hiring a Data Engineer – Data Pipeline & ETL. You will help build and maintain scalable data platforms and ETL/ELT pipelines in a fast-moving environment. In this role, you will build and support batch and real-time data systems powering analytics, ML, and AI applications. You will also grow your expertise in modern data architecture and cloud-native best practices.
Key Responsibilities
- Build and Maintain Scalable Data Pipelines
- Design, develop, and maintain scalable batch and streaming data pipelines for large-scale structured and unstructured datasets.
- Build robust ETL/ELT frameworks supporting analytics, BI, experimentation, and machine learning use cases.
- Optimize pipelines for performance, reliability, scalability, and cost efficiency.
- Implement advanced ingestion patterns including CDC, incremental loads, and event-driven processing.
- Data Modeling & Data Warehouse Architecture
- Design scalable, dimensional, and hybrid data models optimized for analytics and ML use cases.
- Develop reusable transformation layers (semantic layers) that serve BI, ML, and AI applications.
- Write optimized, production-grade SQL for large-scale analytics workloads.
- Contribute to query optimization, indexing, partitioning, and performance tuning across distributed systems and cloud warehouses.
- Modern Data Pipeline Development
- Build and maintain modular data components following established framework patterns.
- Contribute to architectural decisions across streaming systems, data lakes, and warehouses.
- Data Quality, Governance & Observability
- Implement automated data validation, anomaly detection, and monitoring frameworks.
- Establish data lineage and metadata standards to support reproducibility in ML workflows.
- Enforce governance, privacy, and security best practices, particularly for sensitive AI datasets.
- Ensure responsible AI data usage and compliance standards.
Required Technical Skills
- Advanced Data Pipeline & ETL/ELT Expertise
- 2–4+ years of experience building and scaling ETL/ELT pipelines in production environments.
- Experience with workflow orchestration tools such as Airflow, Composer, or similar platforms.
- Strong understanding of distributed data processing concepts.
- SQL & Data Modeling for Analytics & ML
- Expert-level SQL skills for large-scale transformation and analytics.
- Experience designing scalable warehouse schemas and ML-ready data layers.
- Strong experience optimizing complex queries across multi-terabyte datasets.
- Programming & ML Data Integration
- Proficiency in Python (or similar language) for data processing and ML pipeline integration.
- Experience with distributed processing frameworks such as Spark.
- Familiarity integrating data pipelines with ML platforms such as Vertex AI (preferred), Databricks ML, or equivalent.
- Streaming & Event-Driven Systems
- Experience building real-time data pipelines using Kafka, Pub/Sub, or similar technologies.
- Understanding of feature streaming, low-latency data processing, and event-driven architectures.
- Able to architect and build real-time dashboards using Superset.
- Cloud & Modern AI Data Platforms
- Experience designing cloud-native data architectures (GCP preferred).
- Experience with lakehouse architectures and cloud data warehouses.
- Familiarity with vector databases, embeddings pipelines, and AI-serving infrastructure is a plus.
Basic Qualifications
- Bachelor's or Master's degree in Computer Science, Engineering, or related field (or equivalent experience).
- 2–4+ years of experience in data engineering, data pipeline development, or related fields.
- Strong foundation in modern data engineering principles, distributed systems design, and cloud-native architectures.
- Demonstrated ability to design and operate large-scale production data systems.
- Proven track record of technical leadership and cross-functional collaboration.
- Strong problem-solving skills and ability to thrive in complex, fast-paced environments.
- Detail-oriented and committed to engineering excellence and continuous improvement.