AI Data Engineer
At a glance
Highlights
- Hybrid work model (2 days onsite)
- Enterprise‑grade AI solutions on Azure
- Competitive salary range
- Comprehensive health and retirement benefits
Heads up
- 5+ years required
- Hybrid (2 days onsite per week)
Why this role might suit you
The role suits engineers with solid Python and Azure experience who want to build scalable, cloud‑native AI data pipelines. Candidates who enjoy shaping enterprise AI platforms and collaborating across finance‑focused teams will find the environment supportive and impactful.
Skills
About the role
Application Deadline:
05/30/2026
Address: 100 King Street West
Job Family Group:
Technology
Hybrid role (2 days/week in the office)
#ARCisHiring
Team Overview
We accelerate BMO’s AI journey by building enterprise-grade, cloud-native AI solutions. Our team combines engineering excellence with cutting-edge AI to deliver scalable, secure, and responsible solutions that power business innovation across the bank. We enable and accelerate our partners on their AI journeys across the enterprise, helping teams across BMO unlock value at scale. We are engineers, AI practitioners, platform builders, thought leaders, multipliers, and coders. Above all, we are a global team of diverse individuals who enjoy working together to create smart, secure, and scalable solutions that make an impact across the enterprise.
Our ambition is bold: deploy our capital and resources to their highest and most profitable use through a digital-first operating model, powered by data and AI-driven decisions.
Key Responsibilities
Design and implement reliable, scalable data ingestion and integration pipelines for structured, semi-structured, unstructured data (e.g., databases, files, documents, APIs, events), and multi-modal data, ensuring data is AI ready, governed, secure, and observable.
Experience applying data quality, validation, monitoring and testing frameworks in production pipelines. Ensure pipelines follow enterprise governance, access control, and security standards, including role-based access and lineage considerations. Monitor pipeline performance, troubleshoot failures, and optimize cost and throughput.
Integrate AI services (e.g., document understanding, content understanding, embeddings, search, LLM APIs) into production data workflows.
Build and maintain ETL/ELT pipelines using cloud‑native services and distributed processing frameworks
Develop production‑grade services using Python and REST APIs to expose data and AI capabilities.
Partner with leadership to clarify expected outcomes/vision and translate them into an executable build plan, architecture decisions, and delivery milestones.
Develop feature engineering pipelines to support ML and GenAI use cases, including retrieval‑augmented generation (RAG).
Own the development of AI data engineering standards, best practices, and reusable frameworks, driving consistency and quality across teams and platforms.
Lead collaboration with cross‑functional teams to ensure clear, consistent definition and alignment of data input and output requirements.
Required Qualifications
5-7 years of AI software engineering experience, with 3+ recent years in AI/ML engineering, AI agent development, multi-agent systems.
Hands-on experience across Microsoft Azure services (designing, deploying, and operating cloud-native systems). Certifications in Azure AI Engineer, python is a plus.
Strong background in AI agent ecosystems;
Experience designing and maintaining CI/CD pipelines using GitHub Actions and CDK for Terraform.
Demonstrated ability to implement monitoring/observability for AI/agent solutions (logging, tracing, metrics, and operational alerting).
Proven delivery on multiple AI initiatives—comfortable shaping ambiguity into “the right questions,” crisp requirements, and practical design.
Preferred / “Nice to Have”
Experience with Azure AI Foundry / Microsoft “Foundry” tooling in AI solution enablement and governance/tuning workflows.
Familiarity with agent taxonomy/labeling approaches and how to apply them to scale standardized development across teams.
Background in designing enterprise-grade platform layers (identity, access controls, registry/source-of-truth patterns) for agents.
Knowledge of Financial Services industry.
Salary:
$75,900.00 - $141,900.00
Pay Type:
Salaried
The above represents BMO Financial Group’s pay range and type.
Salaries will vary based on factors such as location, skills, experience, education, and qualifications for the role, and may include a commission structure. Salaries for part-time roles will be pro-rated based on number of hours regularly worked. For commission roles, the salary listed above represents BMO Financial Group’s expected target for the first year in this position.
BMO Financial Group’s total compensation package will vary based on the pay type of the position and may include performance-based incentives, discretionary bonuses, as well as other perks and rewards. BMO also offers health insurance, tuition reimbursement, accident and life insurance, and retirement savings plans. To details of our benefits, please visit: https://jobs.bmo.com/global/en/Total-Rewards
Compensation
This Data Engineer role pays $76k-$142k/yr. Within typical range for data engineer roles in Canada.
Questions about this role
How do I apply to this AI Data Engineer role at bmo?
Click "Apply with AI Applyd" above. We auto-fill the application from your resume and answer screening questions in seconds. No copy and paste, no juggling tabs.
What's the typical salary for Data Engineer in Canada?
Compensation for Data Engineer roles in Canada varies widely by seniority, employer size, and remote vs onsite arrangement. Check the salary range on this listing when published, or browse our Data Engineer hub for Canada medians across recent openings.
How fast does AI Applyd auto-apply?
Most applications complete in under 90 seconds. You can track the status in your dashboard and watch the screenshot proof land the moment the application submits.
What ATS does bmo use?
AI Applyd supports Greenhouse, Lever, Ashby, Workday, iCIMS, SmartRecruiters, LinkedIn Easy Apply, and most other ATS platforms. If we can submit through the platform, we do.
Want AI Applyd to auto-apply to roles like this?
We tailor your resume per posting, fill the forms, and track replies for you.