Overview
Skills
Job Details
About The Role
Eclaro is searching for a Director, AI Engineering Operations & Data Engineering for our customer in Toronto Canada. This is a Full-time hybrid role
This role will be a critical leader within the Enterprise Data & AI Technologies and Architecture (EDATA) organization at Company. This role oversees the strategic direction and execution of both our core Data Engineering & Integrations function and a newly formed AI Engineering Operations function. You'll ensure the scalable, reliable, and efficient flow of data and the seamless deployment and operation of our AI models, serving as a key partner to our internal business stakeholders.
This role requires a leader with deep expertise in modern data architectures/frameworks, cloud-native platforms (AWS, Snowflake, Databricks, etc.), and the emerging field of MLOps/AIOps. You must be adept at building and managing high-performing engineering teams, driving complex technical roadmaps, and building both technical and business relationships across the organization.
Job Duties:
Leadership & Strategy
- Define and champion the vision, strategy, and roadmap for Data Engineering, Integrations, and AI Engineering Operations.
- Lead, mentor, and grow a diverse team of data engineers, integration specialists, and AI/MLOps engineers, fostering a culture of innovation, reliability, and ownership.
- Partner with the VP of EDATA and other EDATA Directors (Data Platforms, Data SRE, AI Strategy, etc.) to ensure a cohesive and well-governed enterprise data and AI ecosystem.
Data Engineering & Integrations
- Oversee the design, development, and maintenance of robust, scalable, and high-performance ETL/ELT data pipelines utilizing platforms like Snowflake and Databricks.
- Ensure data quality, integrity, and security standards are strictly enforced within all data pipelines and integrations.
- Manage the strategy and execution of all enterprise data integrations, connecting core business systems (e.g., Sales, Finance, HR) to the central data platforms.
AI Engineering Operations (AIOps/MLOps)
- Establish and lead the new AI Engineering Operations function, defining its processes, best practices, and technology stack.
- Implement and manage the MLOps lifecycle, including model training orchestration, continuous integration/continuous deployment (CI/CD) for models, and automated testing.
- Design and provision the production environment for AI models, ensuring scalability, low-latency inference, and seamless integration with end-user applications.
- Collaborate with Data Platforms, Data Science & Innovation and AI Architecture to industrialize experimental models into reliable, production-ready services.
Operational Excellence
- Work closely with Data SRE (Change Management, QA, Monitoring) to implement best practices for pipeline and model observability, alerting, and incident response.
- Ensure the team adheres to architectural standards (defined by the Data & Analytics Architecture team) and security policies (defined by the Data & Analytics Security Architecture team).
- Manage project portfolios, resource allocation, and budget for both Data Engineering and AI Engineering Operations.
Qualifications:
- 10+ years of experience in data engineering, software engineering, or a related technical field.
- 10+ years of expertise with major cloud platforms (AWS, Snowflake, Databricks) and their ecosystems.
- 7+ years of experience managing and leading high-performing engineering teams, including managers.
- Proven experience in designing and scaling complex, enterprise-level ETL/ELT pipelines.
- Experience building and leading an MLOps/AI Engineering Operations function.
- Deep familiarity with MLOps tools and methodologies (e.g., MLflow, Kubeflow, Sagemaker/Azure ML/Google Cloud Platform Vertex AI equivalents).
- Strong understanding of Data and AI Architecture principles and a commitment to secure, governed data practices.
- Proven track record of developing and implementing data engineering and AI Engineering Ops strategies and frameworks in a corporate environment.
Other Qualifications:
- Excellent communication and presentation skills, with the ability to articulate complex technical concepts to non-technical stakeholders.
- Leadership and team management experience, with the ability to inspire and develop talent.
- Experience working with cross-functional teams and managing complex projects.
- Deep understanding of AI technologies, machine learning models, and data analytics.
- Strong strategic thinking and problem-solving skills.
- Bachelor s or Master s degree in Computer Science, Data Science, Artificial Intelligence, Business Administration, or a related field. PhD is a plus.