Lead a team of machine learning engineers responsible for the productionalization and deployment of advanced AI and Machine Learning solutions for Corporate Services divisions, including IT, OGC, GR&S, and Finance. This role is crucial for driving innovation, ensuring the scalability and efficiency of AI/ML projects, and fostering a culture of engineering excellence and collaboration. The Head of AI/ML Engineering will work closely with AI/ML experts, product managers, and business stakeholders to translate AI/ML models into robust, scalable, and secure AI/ML systems.
Core Responsibilities:
-
Formulate and implement the AI/ML engineering strategy, ensuring it aligns with the corporate services' overall business goals and technological vision.
-
Build, lead, and mentor a high-performing team of AI/ML engineers, fostering a collaborative and innovative environment.
-
Supervise the design, development, and deployment of AI/ML models and systems, ensuring they meet performance, scalability, and security standards.
-
Maintain a deep understanding of the latest AI/ML technologies and best practices and guide the team in their adoption and integration.
-
Design and implement robust infrastructure to support AI/ML workflows, including data pipelines, model training, and deployment environments.
-
Continuously optimize AI/ML models and systems for performance, efficiency, and cost-effectiveness.
-
Drive innovation by exploring new AI/ML techniques and technologies and integrating them into the organization's processes and products.
-
Demonstrate thought leadership in the engineering space, with the ability to orchestration workstreams with cross-functional teams and stakeholders.
Qualifications:
-
Master’s or PhD in Computer Science, Statistics, Machine Learning, Data Science, Electrical Engineering, or related field.
-
10+ years of experience in the machine learning space, with a minimum of 5 years directly managing engineering functions.
-
Proven ability to lead and develop high-performing ML teams, fostering a culture of innovation and continuous improvement.
-
Strong strategic thinking and problem-solving skills, focused on delivering business-impactful solutions.
-
Deep expertise in AI/ML frameworks and tools such as TensorFlow, PyTorch, Scikit-learn, and Keras. Proficiency in programming languages like Python, Java, or C++.
-
Proficiency in using AWS machine learning services, such as Sagemaker, for model pipeline development, training, and deployment. Proven ability to develop and deploy machine learning models with robust data architectures.
-
Experience with CI/CD practices for both machine learning and data engineering workflows.
-
Knowledge of data engineering principles and tools. Experience with data processing technologies, such as Apache Spark, AWS Glue, and Hadoop.
-
Proficiency in AWS Cloud Formation for infrastructure. Relevant certifications in AI/ML or cloud technologies.
Special Factors
Sponsorship
Vanguard is offering visa sponsorship for this position.
About Vanguard
At Vanguard, we don't just have a mission—we're on a mission.
To work for the long-term financial wellbeing of our clients. To lead through product and services that transform our clients' lives. To learn and develop our skills as individuals and as a team. From Malvern to Melbourne, our mission drives us forward and inspires us to be our best.
How We Work
Vanguard has implemented a hybrid working model for the majority of our crew members, designed to capture the benefits of enhanced flexibility while enabling in-person learning, collaboration, and connection. We believe our mission-driven and highly collaborative culture is a critical enabler to support long-term client outcomes and enrich the employee experience.
Top Skills
Similar Jobs
What you need to know about the Montreal Tech Scene
Key Facts About Montreal Tech
- Number of Tech Workers: 255,000+ (2024, Tourisme Montréal)
- Major Tech Employers: SAP, Google, Microsoft, Cisco
- Key Industries: Artificial intelligence, machine learning, cybersecurity, cloud computing, web development
- Funding Landscape: $1.47 billion in venture capital funding in 2024 (BetaKit)
- Notable Investors: CIBC Innovation Banking, BDC Capital, Investissement Québec, Fonds de solidarité FTQ
- Research Centers and Universities: McGill University, Université de Montréal, Concordia University, Mila Quebec, ÉTS Montréal