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Manulife

Machine Learning Engineer

Reposted 4 Days Ago
In-Office
2 Locations
76K-141K Annually
Mid level
In-Office
2 Locations
76K-141K Annually
Mid level
As a Machine Learning Engineer, you'll design and implement ML pipelines, optimize models, collaborate with various teams, and document processes, all focused on delivering innovative analytics solutions.
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Machine Learning Engineer

Are you enthusiastic about machine learning and keen to demonstrate your skills in an innovative environment? Join Manulife as a Machine Learning Engineer and become an integral part of our U.S. Advanced Analytics team! This is a groundbreaking opportunity to work on pioneering projects that generate significant business value for our insurance division. You'll collaborate closely with a variety of teams, including Underwriting, Pricing, IT, Data Office, Operations, Sales, and Distribution, to successfully implement world-class analytics solutions!

Position Responsibilities:

  • Design and implement scalable machine learning pipelines in collaboration with data teams.
  • Optimize, deploy, and monitor ML models in production environments.
  • Build and maintain data science infrastructure using Azure cloud services.
  • Develop Generative AI applications, including Retrieval-Augmented Generation (RAG) systems and fine-tuned Large Language Models (LLMs).
  • Select appropriate technical tools and frameworks for project implementation.
  • Collaborate with multi-functional teams to integrate ML solutions into existing systems.
  • Document ML architecture designs, model integration procedures, and deployment workflows in a clear, comprehensive manner.
  • Develop automation scripts and tools to ease the deployment, scaling, and management of ML systems within the cloud environment.

Required Qualifications:

  • 3+ years of experience in ML engineering, DevOps, or data science roles.
  • 3+ years of hands-on experience with Azure/Cloud technologies (Databricks, MLFlow, Azure AI Studio).
  • Strong Python programming skills and advanced SQL knowledge.
  • Experience deploying models as REST APIs.
  • Proficiency with Docker, Kubernetes, and cloud infrastructure.
  • Working knowledge of LLMs (GPT models, BERT, Llama) and timely engineering.
  • Experience with DevOps practices (Git, CI/CD pipelines).
  • Ability to deliver pragmatic solutions under tight deadlines.
  • Degree or equivalent experience in Computer Science, Data Science, Engineering, or related field.

Preferred Qualifications:

  • Experience in the insurance industry, particularly in underwriting and product development.

When you join our team:  

  • We’ll empower you to learn and grow the career you want.   
  • We’ll recognize and support you in a flexible environment where well-being and inclusion are more than just words.   
  • As part of our global team, we’ll support you in shaping the future you want to see.   

About Manulife and John Hancock

Manulife Financial Corporation is a leading international financial services provider, helping people make their decisions easier and lives better. To learn more about us, visit https://www.manulife.com/en/about/our-story.html.

Manulife is an Equal Opportunity Employer

At Manulife/John Hancock, we embrace our diversity. We strive to attract, develop and retain a workforce that is as diverse as the customers we serve and to foster an inclusive work environment that embraces the strength of cultures and individuals. We are committed to fair recruitment, retention, advancement and compensation, and we administer all of our practices and programs without discrimination on the basis of race, ancestry, place of origin, colour, ethnic origin, citizenship, religion or religious beliefs, creed, sex (including pregnancy and pregnancy-related conditions), sexual orientation, genetic characteristics, veteran status, gender identity, gender expression, age, marital status, family status, disability, or any other ground protected by applicable law.

It is our priority to remove barriers to provide equal access to employment. A Human Resources representative will work with applicants who request a reasonable accommodation during the application process. All information shared during the accommodation request process will be stored and used in a manner that is consistent with applicable laws and Manulife/John Hancock policies. To request a reasonable accommodation in the application process, contact [email protected].

Referenced Salary Location

Toronto, Ontario

Working Arrangement

Hybrid

Salary range is expected to be between

$75,880.00 CAD - $140,920.00 CAD

If you are applying for this role outside of the primary location, please contact [email protected] for the salary range for your location. The actual salary will vary depending on local market conditions, geography and relevant job-related factors such as knowledge, skills, qualifications, experience, and education/training. Employees also have the opportunity to participate in incentive programs and earn incentive compensation tied to business and individual performance.

Manulife offers eligible employees a wide array of customizable benefits, including health, dental, mental health, vision, short- and long-term disability, life and AD&D insurance coverage, adoption/surrogacy and wellness benefits, and employee/family assistance plans. We also offer eligible employees various retirement savings plans (including pension and a global share ownership plan with employer matching contributions) and financial education and counseling resources. Our generous paid time off program in Canada includes holidays, vacation, personal, and sick days, and we offer the full range of statutory leaves of absence. If you are applying for this role in the U.S., please contact [email protected] for more information about U.S.-specific paid time off provisions.

Top Skills

Azure
Azure Ai Studio
Databricks
Docker
Kubernetes
Machine Learning
Mlflow
Python
Rest Apis
SQL

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