Data Engineer en Wave HQ
Wave HQ · Canadá · Remote
Here's How You Make an Impact:
- You’re a builder - Design, build, and deploy components of a modern data platform, including CDC-based ingestion using Debezium and Kafka, a centralized Hudi-based data lake, and a mix of batch, incremental, and streaming data pipelines.
- You ensure continuity while driving modernization - Maintain and enhance the Amazon Redshift warehouse and legacy Python ELT pipelines, while driving the transition to a Databricks and dbt–based analytics environment that will replace the current stack.
- You balance innovation with operational excellence - Build fault-tolerant, scalable, and cost-efficient data systems, and continuously improve observability, performance, and reliability across both legacy and modern platforms.
- You collaborate to deliver impact - Partner with cross-functional teams to design and deliver data infrastructure and pipelines that support analytics, machine learning, and GenAI use cases, ensuring timely and accurate data delivery.
- You thrive in ambiguity and take ownership -Work autonomously to identify and implement opportunities to optimize data pipelines and improve workflows under tight timelines and evolving requirements.
- You keep the platform reliable - Respond to PagerDuty alerts, troubleshoot incidents, and proactively implement monitoring and alerting to minimize incidents and maintain high availability.
- You’re a strong communicator - Provide technical guidance to colleagues, clearly communicating complex concepts and actively listening to build trust and resolve issues efficiently.
- You’re customer-minded - Assess existing systems, improve data accessibility, and deliver practical solutions that enable internal teams to generate actionable insights and enhance the experience of our external customers.
You Thrive Here by Possessing the Following:
- Data Engineering Expertise: 3+ years of experience building data pipelines and managing a secure, modern data stack, including CDC streaming ingestion (e.g., Debezium) into data warehouses that support AI/ML workloads.
- AWS Cloud Proficiency: At least 3 years of experience working with AWS cloud infrastructure, including Kafka (MSK), Spark / AWS Glue, and infrastructure as code (IaC) using Terraform.
- Data modelling and SQL: Fluency in SQL, strong understanding of data modelling principles and data storage structures for both OLTP and OLAP
- Databricks experience: Experience developing or maintaining a production data system on Databricks is a significant plus.
- Strong Coding Skills: Experience writing and reviewing high-quality, maintainable code to improve the reliability and scalability of data platforms, using Python, SQL, and dbt, and leveraging third-party frameworks as needed.
- Data Lake Development: Prior experience building data lakes on S3 using Apache Hudi with Parquet, Avro, JSON, and CSV file formats.
- CI/CD Best Practices: Experience developing and deploying data pipeline solutions using CI/CD best practices to ensure reliability and scalability.
- Data Governance Knowledge: Familiarity with data governance practices, including data quality, lineage, and privacy, and experience using data cataloging tools to support discoverability and compliance.
- Data Integration Tools: Working knowledge of tools such as Stitch and Segment CDP for integrating diverse data sources into a cohesive ecosystem.
- Analytical and ML Tools Expertise: Experience with Athena, Redshift, or SageMaker Feature Store for analytics and ML workflows is a plus.