ATPCO · 5 hours ago
Senior Manager, Data Engineering
Maximize your interview chances
Aerospace
Work & Life Balance
Insider Connection @ATPCO
Get 3x more responses when you reach out via email instead of LinkedIn.
Responsibilities
Work with Product and Analytics teams to define and implement a strategic data roadmap that includes advanced analytics and AI/ML capabilities. Champion data-mesh principles to enable decentralized ownership and accessibility across teams.
Design and oversee scalable, robust data architectures and ETL pipelines, leveraging AWS services like Redshift, Glue, and Lambda, ensuring support for machine learning, advanced analytics, and governance.
Partner closely with data scientists and analytics teams to create data infrastructures that support real-time analytics and ML model deployment, delivering actionable insights that drive business decisions.
Drive initiatives to enhance data security, stability, and governance, establishing frameworks that uphold quality, consistency, and regulatory compliance across ATPCO’s data ecosystem.
Mentor and lead multiple teams of data engineers and analytics professionals, fostering technical growth and a shared commitment to data quality. Encourage innovative approaches to data automation and performance tuning.
Continuously refine data engineering practices for efficiency and resilience, optimizing workflows and monitoring costs within the AWS environment, with a focus on scalable, automated data solutions.
Foster a culture that values innovation and experimentation, empowering teams to explore new techniques in data, analytics, and AI, including generative AI models.
Ensure the operational health and performance of data products in cloud environments, maintaining high availability, fault tolerance, and performance optimization across all services.
Establish a data lake, data mesh, and advanced data modeling-first approach, creating well-structured data practices with an API-driven methodology that improves usability and governance.
Own and lead internal data analytics platforms, collaborating with finance and operations to identify cost optimization opportunities, manage data product P&L, and establish benchmarks for data-driven outcomes.
Qualification
Find out how your skills align with this job's requirements. If anything seems off, you can easily click on the tags to select or unselect skills to reflect your actual expertise.
Required
7+ years of experience in data engineering roles focused on high-volume, complex data applications, with 5+ years in people leadership.
Proven ability to build and manage high-quality data products and infrastructure, with experience leading cross-functional teams in complex data environments.
Technical expertise in a wide range of AWS services, including Redshift, Glue, S3, Lambda, EMR, Kinesis, EC2, API Gateway, serverless technologies, and container services such as ECS and EKS, integrated with data orchestration tools.
Proficiency in Python, SQL, or Scala, plus experience with ML frameworks.
Experience with database management (RDBMS, NoSQL, graph databases) and big data frameworks, including Apache Spark and Hadoop, showcasing your ability to design and optimize complex data architectures and process large-scale data efficiently.
Strong communication skills to align cross-functional teams and convey technical concepts to technical and non-technical stakeholders.
Track record of fostering inclusive environments that encourage innovation, teamwork, and diverse perspectives.
Preferred
Familiarity with airline or travel industry data needs is advantageous.
Proficiency in cloud-native data services (AWS, Azure, GCP) and container tools (Docker, Kubernetes) for scalable data infrastructure.
Familiarity with cloud security best practices, ensuring the secure deployment and maintenance of data solutions.
Commitment to advancing data engineering and analytics practices, ensuring cutting-edge solutions.