CIBC

Director, Enterprise Machine Learning Frameworks & Operations

CIBC$130K — $180K *
Information Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • 8+ years in software engineering or MLOps, with 2+ years in a leadership role
  • Experience delivering scalable ML platforms in regulated environments
  • Knowledge of cloud-native architectures (e.g., Azure ML, Databricks)
  • Expertise in CI/CD, model governance, and observability frameworks
  • Degree in Computer Science, Statistics, Engineering, or related field

Responsibilities

  • Lead design and development of enterprise-wide ML Operations capabilities
  • Establish MLOps strategy and oversee implementation of frameworks
  • Architect reusable platform capabilities for AI/ML and LLM solutions
  • Ensure compliance with regulatory and enterprise governance in workflows
  • Build strong relationships with stakeholders to align MLOps with business goals

Benefits

  • Flexible hybrid work arrangement
  • Career development opportunities with a focus on personal strengths
  • Competitive benefits program including banking benefits and pension plan
  • Employee share purchase plan and vacation offerings
  • Wellbeing support and social recognition program
Full Job Description
What you’ll be doing The Director, Enterprise Machine Learning Frameworks & Operations will lead the design, development, and scaling of enterprise-wide ML Operations (MLOps / LLMOps) capabilities. This role is pivotal in establishing AI at scale by driving operational efficiency, reliability, and compliance throughout the entire model development lifecycle (from experimentation to production deployment). You will shape the MLOps strategy and oversee the implementation of tooling, frameworks, and engineering standards that ensure secure, scalable, and repeatable delivery of AI/ML and LLM solutions across the bank. You will architect and build reusable platform capabilities, reference architectures, deployment patterns, and platform services that support both traditional machine learning and large language model use cases across multiple lines of business. Success will be measured by your ability to define and standardize technical activities, mature operational practices, and drive measurable business impact and stakeholder adoption. The ideal candidate possesses deep technical expertise in MLOps, hands-on engineering leadership, and strong stakeholder engagement skills to deliver on a strategic vision for enterprise-scale AI operations. At CIBC we enable the work environment most optimal for you to thrive in your role. You’ll have the flexibility to manage your work activities within a hybrid work arrangement where you’ll spend 1–3 days per week on-site, while other days will be remote. How you’ll succeed Technical Leadership and Contribution - Translate strategic capability roadmaps into actionable technical deliverables, including the design and implementation of CI/CD pipelines, end-to-end MLOps workflows, and automated ML pipelines for data ingestion, training, validation, and deployment. Ensure workflows are compliant with regulatory and enterprise governance requirements, including approval gates, automated monitoring and alerts, and audit-ready processes. Oversee the development of enterprise-grade, production-ready, and standardized MLOps capabilities to support scalable and reliable AI delivery across the organization. Set and communicate best practices and guidelines to ensure consistency and high-quality delivery. Drive the creation of reusable frameworks, platform services, engineering standards, and deployment patterns that accelerate AI delivery while reducing operational complexity and duplication across teams. Stakeholder Management and Collaboration - Build strong relationships and collaborate with business partners, technology teams, and cross-functional stakeholders to gather requirements, prioritize initiatives, and align MLOps solutions with business objectives. Partner with AI governance, Compliance, and technology teams to ensure all solutions adhere to regulatory and internal standards. Participate in code reviews, identify updates to and the need for new documentation, and share best practices. Stay current with emerging AI/ML tools and techniques, actively contributing to a culture of experimentation and continuous improvement. Advise on the MLOps strategy and capability roadmap based on stakeholder feedback and emerging needs. Act as the primary point of contact for business and technical stakeholders regarding MLOps delivery. MLOps/ LLMOps Development and Production Deployments– Lead the end to end model deployment pipeline management. Develop and sustain production-ready deployments (including support for APIs and open-source models). Oversee Retrieval-Augmented Generation (RAG) pipelines. Partner with AI and Enterprise technology teams to ensure alignment on reusable technology components across all use cases, incorporating compliance requirements early to avoid delays, and maintaining lineage and version tracking. Assess models to prevent performance degradation and establishing monitoring frameworks to analyze inference latency, optimize token usage, and detect potential hallucinations in real time People & Culture - Champion a culture of innovation, collaboration, and continuous learning within the MLOps team and across the enterprise. Upskill and mentor cross-functional teams on MLOps tools, frameworks, and best practices. Exhibit strong influencing, negotiation, and conflict resolution skills, with the ability to align diverse stakeholders around common goals. Who you are You can demonstrate 8+ years of experience in software engineering, platform engineering, data platforms, AI/ML engineering, or MLOps, with at least 2 years in a leadership role. Proven track record delivering scalable ML platforms in a highly regulated environment. It’s an asset if you have experience in financial services or other regulated industries. You have relevant knowledge and deep expertise with cloud-native architectures and technologies (e.g., Azure ML, Databricks, Kubernetes). Expertise with CI/CD, monitoring, model governance, and observability frameworks. You have a degree in. Computer Science, Statistics, Engineering, or a related field. You have a strong software engineering and platform engineering foundation with experience building production-grade platforms, distributed systems, AI/ML services, developer platforms, or enterprise-scale automation frameworks. Your influence makes a difference. You are comfortable operating as a hands-on technical leader who can balance strategic direction with deep technical discussions, architectural design, engineering trade-offs, and implementation guidance. You’re driven by collective success. You have experience partnering with model risk, audit, and data governance teams. Values matter to you. You bring your real self to work and you live our values – trust, teamwork, and accountability. #LI-TA What CIBC Offers At CIBC, your goals are a priority. We start with your strengths and ambitions as an employee and strive to create opportunities to tap into your potential. We aspire to give you a career, rather than just a paycheck. We work to recognize you in meaningful, personalized ways including a competitive salary, incentive pay, banking benefits, a benefits program*, defined benefit pension plan*, an employee share purchase plan, a vacation offering, wellbeing support, and MomentMakers, our social, points-based recognition program. Our spaces and technological toolkit will make it simple to bring together great minds to create innovative solutions that make a difference for our clients. We cultivate a culture where you can express your ambition through initiatives like Purpose Day; a paid day off dedicated for you to use to invest in your growth and development. *Subject to plan and program terms and conditions What you need to know CIBC is committed to clarity in our hiring process. All roles posted are opportunities we’re actively recruiting for, unless stated otherwise. You need to be legally eligible to work at the location(s) specified above and, where applicable, must have a valid work or study permit. We may ask you to complete an attribute-based assessment and other skills test (such as simulation, coding, French proficiency). We use artificial intelligence tools during the recruitment process. Our goal for the application process is to get to know more about you, all that you have to offer, and give you the opportunity to learn more about us. Job Location Toronto-81 Bay, 16th Floor Employment Type Regular Weekly Hours 37.5 Skills Artificial Intelligence (AI), Artificial Intelligence Algorithms, Artificial Intelligence Technologies, Cloud Applications, Cloud Computing, Cloud DevOps, Cloud Infrastructure, Data Quality, Data Security, Infrastructure As Code (IaC), Infrastructure Engineering, Microsoft Azure Cloud Services

About CIBC

The Canadian Imperial Bank of Commerce is a Canadian multinational banking and financial services corporation headquartered in Toronto, Ontario. The bank is headquartered at Commerce Court in the city's Financial District. CIBC's Institution Number is 010, and its SWIFT code is CIBCCATT. It is one of two Big Five banks founded in Toronto, the other being the Toronto-Dominion Bank. The Canadian Imperial Bank of Commerce was formed through the June 1, 1961, merger of the Canadian Bank of Commerce and the Imperial Bank of Canada, the largest merger between chartered banks in Canadian history. The bank has four strategic business units: Canadian Personal and Business Banking, Canadian Commercial Banking and Wealth Management, U.S. Commercial Banking and Wealth Management, and Capital Markets. It has international operations in the United States, the Caribbean, Asia, and United Kingdom; Globally. CIBC serves more than eleven million clients, and has over 40,000 employees. The company ranks at number 172 on the Forbes Global 2000 listing.
Learn more about CIBC
Market Cap
$43.5 billion
Industry
Founded
1867
5 Year Trend
+8.8%

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