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Principal Cloud Security Engineer

bmo

Toronto, CAonsite$103k-$192k/yrPosted May 22, 2026

At a glance

Highlights

  • Shape security strategy of major Canadian bank
  • Work with cutting‑edge AI/ML security technologies
  • Comprehensive health and retirement benefits

Heads up

  • Onsite location Toronto

Why this role might suit you

A candidate with deep cloud, AI/ML and data security expertise can lead BMO’s security strategy, influence senior leadership, and work on advanced threat mitigation across AWS, Azure and emerging AI platforms.

Skills

awsazureaws-security-hubaws-guarddutymicrosoft-defender-for-cloudazure-sentinelterraformcheckovtfsecprisma-cloudpythonpowershellbashnode.jssagemakerazure-mltensorflowpytorchsnowflakedatabricksaws-redshiftazure-synapsedspmdlpwiresharkburp-suitenmapnessusmetasploitiam

About the role

Application Deadline:

07/30/2026

Address: 33 Dundas Street West

Job Family Group:

Technology

Description

We are seeking an enthusiastic and passionate professional for a Senior Cloud, AI & Data Security Engineer role who wants to design and implement security solutions for systems and services across AWS, Azure, and AI/ML platforms. We need someone who can establish the highest standards that meet and exceed security governance solutions and practices, provide assurance to management and auditors, and ensure sustained protection by embedding controls in operational and DevOps (CI/CD) practices with a focus on automation.

We are looking for someone who has a high level of technical security expertise and who takes seriously the responsibility of monitoring, detecting, protecting, and maintaining the security of data, AI/ML systems, cloud platforms, and networks.

You are a leader with a strong technical background. You have demonstrated strength in:

Developing and implementing secure cloud and AI/ML architectures using a risk-based cybersecurity and data privacy strategy

Defining security patterns, roadmaps, and operating models that leverage collaboration

Facilitating industry-standard information security governance

Advising senior leadership on cybersecurity, AI risk, and privacy risks, threats, and investment strategies

Documenting appropriate policies and procedures to manage information security risks, including those unique to AI/ML systems and sensitive data assets

As a qualified candidate, you will be part of the team driving BMO's Cloud, AI, and Data Security implementation. As a member of this team, you should possess the ability to inspire yourself and all of our team. Based on your previous experiences, you will inject new knowledge and skills into an already high-performing team, thus elevating our efforts to new heights.

Your Responsibilities

Cloud Security

Assess, design, implement, automate, and document security solutions, controls, and processes for Amazon Web Services (AWS) and Microsoft Azure cloud platforms

Develop and maintain security patterns for cloud platforms and services; assess all cloud patterns to ensure adherence to best security practices and controls

Design and implement security baseline controls for Cloud Services for integration into the CI/CD process

Build and deliver policies as code, automating security controls and best practices

Review and approve code and changes with security implications (e.g., IAM Roles and Policies, Security Groups, etc.)

Be the cloud security subject matter expert for the Cloud Engineering group and its partners in any IaaS, PaaS, and SaaS implementations

AI & Machine Learning Security

Define and implement a security framework for AI/ML systems, covering the full model lifecycle from data ingestion and training to deployment and monitoring

Assess and mitigate AI-specific threats including adversarial attacks, model inversion, data poisoning, prompt injection, and model theft

Evaluate and secure AI/ML platforms and tools (e.g., Amazon SageMaker, Azure Machine Learning, Hugging Face, OpenAI APIs) against organizational risk standards

Collaborate with data science and AI engineering teams to integrate security controls into MLOps pipelines, ensuring model integrity, access controls, and auditability

Monitor emerging AI threat landscapes and regulatory developments (e.g., EU AI Act, NIST AI RMF) and translate these into actionable organizational controls

Data Security

Implement and manage data security posture management (DSPM) tools to continuously monitor sensitive data exposure across cloud environments

Establish controls for structured and unstructured data stores, including databases, data lakes, data warehouses (e.g., Snowflake, AWS S3, Azure Data Lake), and file sharing platforms

Drive the adoption of data-centric security practices within application development and analytics teams

General Security Leadership

Provide subject matter expertise on architecture, authentication, and systems security based on a clear understanding of the engineering stack, services, and data flow

Lead focused and continuous cybersecurity risk assessments of new and existing technologies - including AI/ML systems and data platforms - to identify risks and appropriate controls that balance security and operability

Provide effective and pragmatic cybersecurity guidance upfront in major technology projects to enable the business to innovate securely

Assist in the investigation and remediation of security incidents and issues, including those involving AI model compromise or data breaches

Work closely with Information Security, product, and software development teams to assess cybersecurity risk and recommend solutions in cloud, AI, and data environments

Your Mindset

You are a self-starter, driven, and can handle multiple projects and priorities

You are passionate about driving the DevSecOps and MLSecOps mindset and culture in a fast-paced, challenging environment where you get the opportunity to work with the latest tools and technologies

You understand the intersection of security, AI, and data, and actively seek to build bridges between these disciplines

You are actively looking to improve the solutions you implement, understand the efficacy of collaboration, and are keen to work in a team of CI/CD, infrastructure, AI, and data specialists

You are energized by the rapidly evolving AI threat landscape and bring intellectual curiosity and practical judgment to navigating ambiguity

As a member of this team, you will inject new knowledge and skills into an already high-performing team, elevating our collective efforts to new heights

Required Core Skills

Foundational

A university degree in Engineering, Computer Science, Information Technology, or a related field

7-10 years of experience developing and implementing security architectures and/or engineering, with demonstrated breadth across cloud, data, and/or AI security domains

Security certifications such as CISSP, CCSP, CCSK, or any Cloud Security Specialty certification (e.g., AWS Certified Security Specialty, Microsoft Certified: Azure Security Engineer Associate)

Emerging/preferred: Certifications or demonstrated knowledge in AI security (e.g., CDAI, CompTIA AI+, or equivalent vendor-specific AI security training) or data security (e.g., CDPSE, CIPP)

Cloud Security

Demonstrated knowledge of cloud architecture, cloud operations, cloud-based identity and access management, security automation, and orchestration

Extensive experience with cloud-native security solutions and tools (e.g., AWS Security Hub, AWS GuardDuty, Microsoft Defender for Cloud, Azure Sentinel)

Knowledge of technical security control environments and compliance frameworks including CSA CCM, ISO 27001, ISO 27017, and NIST CSF

AI & ML Security

Working knowledge of AI/ML development frameworks and platforms (e.g., TensorFlow, PyTorch, SageMaker, Azure ML) and associated security risks

Familiarity with the OWASP Top 10 for LLMs, MITRE ATLAS, and NIST AI Risk Management Framework (AI RMF)

Understanding of MLOps pipeline security, including securing model registries, feature stores, training environments, and inference endpoints

Knowledge of Generative AI security risks, including prompt injection, jailbreaking, data leakage via LLMs, and supply chain risks in AI model dependencies

Data Security

Experience implementing data loss prevention (DLP), data classification, and data access governance solutions in enterprise environments

Knowledge of DSPM tools and practices

Understanding of data encryption at rest and in transit, tokenization, and key management for large-scale data environments

Familiarity with data privacy regulations (e.g., PIPEDA, GDPR, CCPA) and their technical implementation requirements

Experience securing cloud-based data platforms such as Snowflake, Databricks, AWS Redshift, Azure Synapse, or equivalent

Technical Skills

Firm grasp of networking protocols and operations; comfortable with packet analysis tools such as Wireshark, Burp Suite, nmap, Nessus, and Metasploit

Knowledge of theoretical and applied cryptography, key management, and cryptographic algorithms (RSA, AES, TLS, PKI, etc.)

Knowledge of Identity and Access Management (IAM) concepts including SSO, SAML, federated identity, RBAC, and OAuth/OIDC

Strong scripting and programming skills with experience in Python, PowerShell, Bash, Node.js, and API/webhook development

Experience with Infrastructure as Code (IaC) security scanning tools (e.g., Checkov, tfsec, Prisma Cloud)

Interpersonal & Leadership

Demonstrable internal and external relationship-building skills with the ability to clearly articulate complex security concepts across a diverse corporate culture

Ability to lead in-depth workshops across a broad range of topics including cloud compliance, AI risk, and data governance

Strong ability to influence decision-making at senior leadership levels

Other Skills

Strong interpersonal, communication, and leadership skills

A critical thinker with strong research, analytical, and problem-solving skills

Self-motivated with a positive attitude and an ability to work independently and within a team

Ability to communicate complex technical concepts to a broad range of internal and external stakeholders, including business, legal, compliance, and technology leaders

Strong time management skills with the ability to manage multiple workstreams and mentor less experienced team members

Why Join Us?

This is a rare opportunity to shape the cloud, AI, and data security strategy of one of Canada's largest financial institutions at a time when these domains are converging and rapidly evolving. You will work at the forefront of emerging threats, influence enterprise-wide security standards, and collaborate with world-class teams across technology, risk, and innovation.

Job Type: Full-time

Salary:

$103,200.00 - $192,000.00

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 Security Engineer role pays $103k-$192k/yr. Within typical range for security engineer roles in Canada.

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