Senior Data Engineer Consultant (Databricks)

Keyrus Canada

β€’ $105K β€” $110K *
Information Technology
8 - 10 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's degree in Computer Science, IT, Engineering, or equivalent experience
  • 8+ years in Data Engineering or Cloud Data Platforms
  • Proven experience with end-to-end enterprise data solutions in Databricks
  • Databricks or cloud architecture certifications preferred
  • Fluent in English; French is a plus

Responsibilities

  • Lead design and development of Databricks-based data platforms
  • Architect scalable lakehouse solutions using medallion architecture
  • Implement parameterized ingestion frameworks for data processing
  • Optimize CI/CD pipelines for seamless deployments
  • Define Databricks engineering standards and best practices
  • Mentor engineering teams and promote technical excellence
  • Assess and improve existing data platforms

Benefits

  • Stimulating work environment with opportunities for growth
  • Strong culture of innovation and entrepreneurship
  • Team celebrations and social events
  • Comprehensive group insurance for employees and families
  • RRSP and DPSP participation plans
  • Monthly wellness allowance
  • Telecommunication reimbursement
  • Flexible work-from-home policy
  • Four weeks of paid vacation
  • Language courses available
  • Access to continuous learning opportunities
Full Job Description
What You'll Architect

As a Senior Data Engineer - Databricks, you will architect modern data platforms that power enterprise analytics, machine learning, and AI initiatives. You will combine deep hands-on engineering expertise with consulting leadership, designing scalable lakehouse solutions while mentoring teams and driving engineering excellence across complex client engagements.
  • Lead the design, development, and optimization of Databricks-based data platforms supporting analytics, data science, and machine learning workloads
  • Architect scalable lakehouse solutions using medallion architecture principles to ensure governance, performance, quality, and long-term maintainability
  • Design and implement parameterized ingestion frameworks supporting batch and near real-time data processing
  • Build, operate, and optimize CI/CD pipelines that enable reliable and automated deployments across environments
  • Define and promote Databricks engineering standards, leveraging Feature Store, MLflow, Model Registry, Unity Catalog, and Databricks Asset Bundles (DAB)
  • Lead technical discussions and mentor engineering teams, promoting best practices and high-quality implementations
  • Assess existing data platforms and identify opportunities to improve performance, cost efficiency, security, scalability, and maintainability
  • Collaborate closely with Solution Architects, Data Scientists, Engineers, and business stakeholders to deliver enterprise-grade solutions
  • Communicate architectural decisions and technical recommendations confidently to both technical and executive audiences
  • Continuously evaluate emerging Databricks capabilities and modern data engineering practices to strengthen client solutions and delivery standards

🧠 Who You Are
  • You see data engineering as the foundation for scalable analytics and intelligent organizations
  • You combine deep technical expertise with a consultative mindset and collaborative leadership style
  • You naturally mentor others while maintaining a strong hands-on engineering approach
  • You enjoy solving complex technical challenges and designing reusable, scalable architectures
  • You are comfortable engaging directly with clients and influencing technical decisions with confidence
  • You continuously explore new technologies and proactively improve engineering practices
  • You thrive in fast-paced consulting environments where innovation and business impact go hand in hand

πŸ›  What You Bring

Qualifications / Certifications
  • Bachelor's degree in Computer Science, Information Technology, Engineering, or a related field-or equivalent professional experience
  • 8+ years of experience in Data Engineering, Cloud Data Platforms, or Modern Analytics environments
  • Proven experience delivering end-to-end enterprise data solutions using Databricks
  • Databricks, Azure, AWS, or cloud architecture certifications are considered an asset
  • Native-level or fully fluent English is required; French is a strong advantage

Technical Skills
  • Advanced hands-on expertise with Databricks, including Feature Store, MLflow, Unity Catalog, Model Registry, and Databricks Asset Bundles (DAB)
  • Strong experience designing and implementing medallion lakehouse architectures
  • Experience building parameterized ingestion frameworks for batch and near real-time data pipelines
  • Proven ability to design, implement, and maintain CI/CD pipelines for Data Engineering and Machine Learning solutions
  • Experience deploying Machine Learning workflows into production environments
  • Deep understanding of modern data engineering patterns, cloud-native architectures, and enterprise analytics platforms
  • Strong technical leadership capabilities with experience mentoring Data Engineers and ML Engineering teams
  • Excellent communication skills with the ability to explain complex technical concepts to both technical and business stakeholders

Nice-to-haves
  • Experience working within technology consulting or enterprise client-facing environments
  • Advanced expertise with Apache Spark and PySpark performance optimization
  • Experience with cloud ecosystems such as Azure, AWS, or GCP and their associated data services
  • Familiarity with orchestration and transformation tools such as dbt, Airflow, or equivalent
  • Experience with MLOps, Data Governance, security, and distributed data platforms
  • Proactive mindset focused on innovation, continuous improvement, and adoption of evolving Databricks capabilities

What Makes You Successful
  • Exceptional communication skills, with the ability to influence technical teams and business stakeholders alike
  • Comfortable leading architecture discussions, mentoring engineers, and driving technical excellence
  • Brings a consultative mindset that balances engineering quality with measurable business outcomes
  • Demonstrates ownership, structured thinking, and strong technical judgment across the full data lifecycle
  • Builds trust through collaboration, mentorship, and delivery of scalable enterprise solutions
  • Thrives in environments where continuous learning and innovation are part of everyday work


Role Details

πŸ“ Location: Hybrid - Toronto or Montreal, Canada
πŸ’Ό Contract: Full-time
🌐 Work Model: Hybrid (2 days per week on site)
Level: Senior

The expected base compensation for this position ranges from $105,000 to $110,000 CAD, depending on experience, skills, location, and internal equity. This salary range is provided as a guideline and may be adjusted for the selected candidate.

Rewards - What We Offer at Keyrus
  • A stimulating environment where you will be able to surpass yourself and discover new horizons
  • A strong culture of innovation and entrepreneurship
  • Team celebrations, social events, birthdays, breakfasts, and special activities
  • Group insurance for you and your family members
  • RRSP and DPSP participation plans
  • Monthly Wellness Allowance
  • Telecommunication reimbursement
  • Flexible work-from-home policy
  • 4 weeks of paid vacation
  • Language courses (French & English)
  • Access to continuous learning through conferences, certifications, training programs, and industry events

Similar Jobs

More Jobs at Keyrus Canada

More Information Technology Jobs

Find similar Senior Data Engineer Consultant (Databricks) jobs: