Senior Data Integration Operations Engineerr
Listed on 2026-07-16
-
IT/Tech
Data Engineering, Cloud Computing: Infrastructure & Operations
Sr. Data Integration & Operations Engineer
Northeastern University is seeking an experienced and technically skilled Sr. Data Integration & Operations Engineer to join our team. This role is responsible for the day-to-day management, monitoring, operational support, and optimization of the university's data integration pipelines and processes. The role will oversee ETL/ELT workflows built on enterprise integration platforms, ensuring reliable data flow from a broad spectrum of university source systems into the data lakehouse and downstream point solutions used across the university.
The position requires hands-on expertise in data integration platform administration, pipeline operations, data observability, incident management, and continuous improvement of integration processes in production environments.
24/7 business continuity:
This role requires availability outside of traditional working hours on a rotating basis to ensure continuous operation of critical AI systems and data pipelines. Responsibilities include monitoring system health, responding to alerts, troubleshooting performance issues, and implementing emergency fixes as needed. The ideal candidate must be able to quickly diagnose and resolve AI system and data pipeline incidents, prioritize issues based on business impact, and coordinate with technical teams to restore service.
A strong commitment to system reliability and service continuity is essential for success in this position.
Other duties as required:
This role requires flexibility in performing duties outside of the primary responsibilities to support the evolving AI ecosystem at the university. The ideal candidate must be adaptable and willing to take on additional tasks or projects as required, ensuring consistent and reliable AI and data pipeline operations. This may include assisting with knowledge management, documentation updates, user training, data preparation, or special projects related to AI system improvements.
A problem-solving mindset and willingness to tackle emerging challenges are essential for thriving in this dynamic environment.
Hybrid work schedule:
This role is hybrid and in the office a minimum of three days a week to facilitate collaboration with both technical teams and operations staff. In-office presence enables effective coordination with support teams, direct access to infrastructure, and hands-on troubleshooting of AI systems and data pipelines. Physical presence is particularly important for incident response, change management activities, and cross-functional problem-solving sessions that benefit from in-person collaboration and real-time communication.
Minimum Qualifications- Data Integration Platform
Experience:
Hands-on experience administering and operating enterprise data integration platforms, with Informatica Power Center or IDMC (Intelligent Data Management Cloud) strongly preferred. Experience with SaaS-based ELT tools such as Fivetran is a plus. Candidates should demonstrate the ability to manage complex integration workflows, configure connectors, and troubleshoot pipeline failures end-to-end. - Data Pipeline Operations:
Extensive experience maintaining, scheduling, and troubleshooting data integration pipelines that extract from enterprise source systems (ERP, SIS, CRM, HR, finance) and load into data lakehouse and downstream operational applications. Strong SQL/Python skills are required for data validation, troubleshooting, and ad hoc investigation of pipeline issues. Familiarity with lakehouse architecture concepts (medallion architecture, incremental loads, schema management) is expected. - Data Observability and Pipeline Monitoring:
Experience with data observability platforms (such as Monte Carlo, Acceldata, Anomalo, or Datafold) or equivalent pipeline monitoring tools that track data freshness, volume, quality, and schema changes strongly preferred. Proficiency in designing alerting frameworks that surface meaningful signals without generating excessive noise. - Incident Management:
Strong experience in troubleshooting, diagnosing, and resolving AI system and data infrastructure issues, with the ability to prioritize incidents based on business impact. - Performance Optimization:
Knowledge of techniques to optimize AI system and data pipeline performance, including resource allocation, scaling strategies, and performance tuning. - Change Management:
Experience implementing changes to production AI systems and data pipelines with minimal disruption, including testing, validation, and rollback procedures. - Data Quality Management:
Strong understanding of data quality principles as they apply to integration pipelines, including detection and remediation of issues such as missing records, null rates, duplicate data, schema drift, and late-arriving data. Ability to identify data quality failures before they affect downstream analytics consumers or operational applications. - Documentation and Knowledge Management:
Excellence in creating and maintaining operational…
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).