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Machine learning • canada

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Senior Machine Learning Engineer

BramblesMississauga, Ontario, Canada
Temps plein

CHEP helps move more goods to more people, in more places than any other organization on earth via our 347 million pallets, crates and containers.We employ approximately 13,000 people and operate i... Voir plus

Senior Machine Learning Engineer

Canada Workday ULCVancouver, BC, Canada
156 000,00 $CA par an
Temps plein

Architect & Build: Design, develop, and deploy scalable machine learning models and AI systems (ranging from predictive models to Generative AI and LLM-powered agents) that directly impact Workday'... Voir plus

Machine Learning Engineer (Canada)

Two95 International Inc.Montreal, QC, CA
Temps plein
Quick Apply

Title : Machine Learning Engineer.Location : 100% Remote (Canada).BSc/MSc in computer science, mathematics or related technical discipline.Deep knowledge and proven experience with optimizing machi... Voir plus

Lead Machine Learning Developer

Royal Bank of Canada>TORONTO, Canada
Temps plein

As a Lead Machine Learning Developer, you will drive the development of advanced Python-based solutions to extract actionable insights from RBC’s infrastructure data, enabling faster incident resol... Voir plus

Adversarial Machine Learning Engineer

C-ServVancouver, BC, CA
Temps plein
Quick Apply

We are building a dedicated AI Red Team to rigorously test and harden enterprise-scale AI products.We are looking for an adversarial machine learning specialist who thinks like an attacker.This rol... Voir plus

AI/Machine Learning Engineer

Rocky MountaineerVancouver, BC VZC, CAN
125 000,00 $CA par an
Temps plein

Reporting to Director, Data, the AI and Machine Learning Engineer is responsible for designing, building, and operating production grade machine learning systems that deliver measurable business ou... Voir plus

Machine Learning Scientist

DarkVisionNorth Vancouver, British Columbia
100 000,00 $CA par an
Temps plein

DarkVision is seeking a Machine Learning Scientist to join our Imaging & AI team.You will research, design, and prototype the deep learning architectures that power our automated analysis tools.You... Voir plus

Freelance Machine Learning Engineer

MindriftMB, CA
Télétravail
Temps partiel +1
Quick Apply

Please submit your CV in English and indicate your level of English proficiency.Mindrift connects specialists with project-based AI opportunities for leading tech companies, focused on testing, eva... Voir plus

AI / Machine Learning Engineer

Thri5 Inc.Toronto, Ontario, Canada
Temps plein

Despite massive investments in planning, forecasting, and analytics, retailers still face the same operational issues—out-of-stocks, bad master data, margin leakage, and inconsistent execution acro... Voir plus

Machine Learning Engineer

Huawei Technologies Canada Co., Ltd.Burnaby, British Columbia, CA
Temps plein +1

Huawei Canada has an immediate permanent opening for a Machine Learning Engineer.The Human-Machine Interaction Lab unites global talents to redefine the relationship between humans and technology.F... Voir plus

Machine Learning Engineer

ThemisMississauga, ON, CA
85 000,00 $CA par an
Temps plein +1

Themis Intelligence builds the Utility Knowledge Base (UKB) and Human-Guided Intelligence (HGI) platforms, redefining how utilities operate.Our systems transform complex operational data into clear... Voir plus

Machine Learning Engineer (Canada)

Tiger Analytics Inc.Toronto, ON, CA
Temps plein
Quick Apply

Tiger Analytics is an advanced analytics consulting firm.We are the trusted analytics partner for several Fortune 100 companies, enabling them to generate business value from data.Our consultants b... Voir plus

Senior Machine Learning Researcher

0000050007 Royal Bank of Canada777 BAY ST, TH 27:TORONTO
Temps plein

RBC Borealis is looking for an enthusiastic Senior Machine Learning Researcher who's excited by the opportunity of being at the forefront of machine learning technology and working on extremely cha... Voir plus

Machine Learning Engineer

Red Hat Canada Limited (f.k.a Cygnus Solutions Canada Limited)MSO,Toronto
Temps plein

At Red Hat we believe the future of AI is open and we are on a mission to bring the power of open-source LLMs and vLLM to every enterprise.Inference team accelerates AI for the enterprise and bring... Voir plus

Machine Learning Engineer - Evisort

Workday, Inc.Vancouver, BC, Canada
128 000,00 $CA par an
Temps plein

As a Machine Learning Engineer, you will help develop tailored user experiences using advanced LLMs, Knowledge Graphs, personalization, and predictive analysis.You will collaborate with other engin... Voir plus

Senior Machine Learning Engineer

Randstad CanadaMarkham, Ontario, CA
Temps plein +2
Quick Apply

As a Senior Machine Learning Engineer, you will be the bridge between data science theory and production-grade reality.You will design, develop, and deploy robust ML pipelines and services across a... Voir plus

Senior Machine Learning Engineer

Senior Machine Learning Engineer

BramblesMississauga, Ontario, Canada
Il y a plus de 30 jours
Type de contrat
  • Temps plein
Description de poste

CHEP helps move more goods to more people, in more places than any other organization on earth via our 347 million pallets, crates and containers. We employ approximately 13,000 people and operate in 60 countries. Through our pioneering and sustainable share-and-reuse business model, the world’s biggest brands trust us to help them transport their goods more efficiently, safely and with less environmental impact.

What does that mean for you? You’ll join an international organization big enough to take you anywhere, and small enough to get you there sooner. You’ll help change how goods get to market and contribute to global sustainability. You’ll be empowered to bring your authentic self to work and be surrounded by diverse and driven professionals. And you can maximize your work-life balance and flexibility through our .

Job Description

Key Responsibilities May Include:

  • Collaborate with key stakeholders to identify business challenges, translating ambiguous problems into structured analyses using statistical modelling and machine learning algorithms.
  • Lead the selection, validation, and optimization of models to discover meaningful patterns and insights, ensuring models remain relevant, reliable, and scalable.
  • Drive continuous integration and deployment of data science solutions, optimizing performance through advanced machine learning techniques, code reviews, and best practices.
  • 'Develop and deliver sophisticated visualizations, dashboards, and reports translate complex data into clear, actionable insights for business stakeholders.
  • Present technical solutions to business stakeholders, using creative methods to explain complex concepts, increase understanding, and encourage solution adoption.
  • Mentor and develop junior data scientists, fostering a culture of continuous learning, knowledge sharing, and skills development within the organization.
  • Write clean, high-quality code, ensuring all outputs pass quality assurance checks, and contribute to the development of novel solutions to solve complex business problems.
  • Stay informed on industry trends, emerging tools, and techniques, applying them to improve data science practices and encourage innovation within the team.
  • Lead strategy development for one or more data products, managing roadmaps, identifying requirements, and collaborating with business stakeholders to ensure alignment with business goals.

POSITION PURPOSE

We are seeking a Senior Machine Learning Engineer to design, build, deploy, and operate scalable machine learning and AI solutions in production. This role sits at the intersection of MLOps, traditional data science modeling, and software engineering, with opportunities to work on AI/GenAI engineering use cases.

You will work closely with Data Scientists and Engineers to productionize ML and emerging GenAI solutions, owning the full lifecycle from model development through deployment, monitoring, and iteration.

SCOPE

• Machine Learning models for Advanced D&A Americas.

• Data products initiatives for Advanced D&A Americas.

• GenAI initiatives for Advanced D&A Americas.

MAJOR / KEY ACCOUNTABILITIES

• Build, maintain, and optimize end to end ML pipelines covering data ingestion, feature engineering, training, evaluation, deployment, inference and monitoring using Databricks and related tooling.

• Collaborate closely with Data Scientists to translate experimental and research grade models into reliable, scalable, and secure production services that meet business and technical requirements.

• Apply MLOps best practices including model versioning, experiment tracking, monitoring, and automated deployments.

• Develop and deploy traditional ML models (e.g., regression, classification, forecasting, NLP) to solve business problems.

• Implement runtime monitoring dashboards and alerting mechanisms to detect performance degradation, data anomalies, and system failures in near real time.

• Support AI / GenAI initiatives, including LLM based prototypes and production workflows where applicable.

• Collaborate with product owners, data scientists, engineers, and business stakeholders to define model requirements, SLAs, success metrics, and deployment constraints.

• Integrate ML solutions into downstream systems via APIs, batch pipelines, or event driven processes.

• Write high quality, maintainable code following engineering best practices, with version control and CI/CD in Bitbucket.

• Troubleshoot and optimize model performance, scalability, latency, and cost in production environments.

• Provide guidance and best practices to data scientists and engineers on production ready ML development and MLOps workflows.

• Evaluate emerging tools, frameworks, and practices to enhance the organization’s ML and GenAI operational maturity.

MEASURES

• ML models are reliable, scalable, and observable in production environments

• Reduced time and friction moving from experimentation to production ML systems

• High availability and reliability of ML pipelines and inference services

• Strong collaboration with Data and cross functional teams resulting in business impacting ML solutions

• Clear observability into model performance, data quality, and system health

• Adoption of standardized patterns for ML development and deployment across the team

KEY CONTACTS

Internal: Data & Analytics Americas, Processes Digitalization, Supply Chain, Commercial, Serialization+, Finance, Digital

QUALIFICATIONS

• Bachelor’s or master’s degree in computer science, Engineering, Data Science, Mathematics, or a related field, or 3+ years of equivalent professional experience in a related role

• Strong foundation in machine learning algorithms and applied modeling techniques

• Demonstrated ability to build and operate production grade software systems is a plus

• Proven ability to work in ambiguous problem spaces and evolving AI landscapes

EXPERIENCE

• 3+ years of experience in Machine Learning Engineering, Applied Machine Learning, or a closely related role

• Hands on experience deploying and supporting ML models in production

• Proven experience using ML lifecycle management tools such as MLflow (preferred) or similar platforms

• Experience using Databricks or similar platforms for data processing and ML workloads

• Proven collaboration with Data Scientists and Engineers in cross functional teams

• Experience supporting both early stage experimentation and production systems

SKILLS AND KNOWLEDGE

• Strong understanding of supervised and unsupervised learning techniques

• Feature engineering, model evaluation, and performance optimization

• Experience operationalizing models beyond notebooks

• Building and maintaining ML pipelines (training, inference, retraining)

• Model versioning, experiment tracking, and reproducibility

• Monitoring for model performance, data drift, and pipeline failures

• CI/CD practices for ML workflows

• Strong proficiency in Python

• Writing testable, maintainable, production quality code

• Git based version control workflows

• Experience integrating ML into applications or services

• Exposure to LLMs, embeddings, prompt engineering, or retrieval augmented generation (RAG)

• Experience moving GenAI use cases from prototype to production

• Familiarity with evaluating GenAI outputs and monitoring cost, latency, and quality

• Experience building or consuming REST APIs for model inference

• Understanding of distributed systems and data pipelines

Remote Type

Hybrid Remote

Skills to succeed in the role

Adaptability, Bitbucket, Cloud Infrastructure (Aws), Code Reviews, Databricks Platform, Data Science, Data Storytelling, Empathy, Experimentation, Git, Machine Learning (ML), Python (Programming Language), SQL Tools, Taking Ownership, Teamwork, Understand Customers

We are an Equal Opportunity Employer, and we are committed to developing a diverse workforce in which everyone is treated fairly, with respect, and has the opportunity to contribute to business success while realizing his or her potential. This means harnessing the unique skills and experience that each individual brings and we do not discriminate against any employee or applicant for employment because of race, color, sex, age, national origin, religion, sexual orientation, gender identity, status as a veteran, and basis of disability or any other federal, state, or local protected class.