McAfee Logo

McAfee

Senior Data Engineer

Posted 5 Hours Ago
Be an Early Applicant
In-Office
Waterloo, ON
Senior level
In-Office
Waterloo, ON
Senior level
As a Senior Data Engineer, you will design and maintain data architecture, develop ETL/ELT pipelines, collaborate with stakeholders, and drive data innovation through AI and machine learning initiatives.
The summary above was generated by AI

Role Overview:

As a Data Engineer at McAfee, you will be a key member of our data innovation team, responsible for designing, building, and overseeing the deployment and operation of technology architecture, solutions, and software that unlock the full potential of our data assets. This role combines hands-on technical implementation with strategic problem-solving to drive data-driven innovation across the organization. 
You will establish and build processes and structures to capture, manage, store, and utilize structured and unstructured data from diverse internal and external sources, creating scalable solutions that span from cloud-based architectures to traditional databases. Working at the intersection of data engineering, data science, and data quality, you will leverage artificial intelligence, machine learning, and big-data techniques to transform raw data into actionable insights that drive business value. 
This is a collaborative role where you will partner closely with business stakeholders, data scientists and product teams to solve complex problems, enable company-wide data solutions, and establish the foundation for data-driven decision making across McAfee.  
This is a Hybrid Position located in either Waterloo or Toronto, Canada. We are only considering candidates within a commutable distance to either location. You will be required to be onsite on an as-needed basis; when not working onsite, you will work from your home office.

About the Role:

  • Partner with business stakeholders to understand data requirements and translate them into scalable technical solutions that drive operational efficiency and strategic insights 

  • Lead data innovation initiatives by identifying opportunities to leverage data assets for new business capabilities and competitive advantages 

  • Review internal and external business and product requirements for data operations and recommend strategic changes and upgrades to systems and storage 

  • Collaborate with data scientists to enable advanced analytics, predictive modeling, and machine learning initiatives that solve complex business problems 

  • Work with Professional Services teams on client-focused data solutions, ensuring alignment with business objectives and customer needs 

  • Design and oversee the deployment of comprehensive data architecture that captures, manages, and stores structured and unstructured data from multiple internal and external sources 

  • Build resilient ETL/ELT pipelines that channel data from multiple inputs, route appropriately, and store using cloud structures, local databases, and other applicable storage forms 

  • Establish processes and structures based on business and technical requirements to ensure optimal data flow across systems 

  • Create and maintain well-documented data services and interfaces for efficient data access across the organization 

  • Develop company-wide, web-enabled solutions that democratize data access and empower self-service analytics 

  • Develop technical tools and programming leveraging artificial intelligence, machine learning, and big-data techniques to cleanse, organize, and transform data on an automated basis 

  • Implement comprehensive data quality frameworks including validation checks, monitoring, and automated recovery strategies to maintain data accuracy, completeness, and freshness 

  • Apply business logic to cleanse, enrich, and structure raw data, ensuring consistency and quality across domains 

  • Leverage Model Context Protocol (MCP) to connect with top enterprise applications, enabling seamless automation of data flows and improving operational efficiency 

  • Utilize Copilot and Anthropic models to accelerate development, automate documentation, and enhance code quality and review processes 

  • Create and establish design standards and assurance processes for software, systems, and applications development to ensure compatibility and operability of data connections, flows, and storage requirements 

  • Ensure secure, scalable, and auditable data ingestion processes, with appropriate handling of PII and compliance requirements 

  • Uphold SDLC best practices across development and delivery stages to ensure reliability, maintainability, and scalability 

  • Maintain and defend data structures and integrity on an automated basis, implementing proactive monitoring and alerting systems 

  • Troubleshoot pipeline issues and collaborate with platform teams to optimize performance and recovery strategies 

  • Participate in on-call rotations to ensure 24/7 reliability of critical data systems 

  • Continuously evaluate and implement new technologies and methodologies to improve data engineering capabilities 

  • Mentor junior team members and contribute to the growth of the data engineering practice 

About you:

  • 5+ years of hands-on experience in developing ETL/ELT pipelines across varied data sources, with demonstrated ability to work across the full spectrum of data engineering challenges 

  • Experience with Copilot and Claude Anthropic models to enhance development speed, code quality, and documentation 

  • Strong programming skills in languages such as Python, Scala, or Java, with ability to write production-quality code 

  • Experience with modern data platforms and tools (e.g., Snowflake, Databricks, Apache Spark, Kafka, Airflow) 

  • Practical knowledge of Model Context Protocol (MCP) to connect enterprise applications and automate data workflows 

  • Experience with cloud platforms (AWS, Azure, GCP) and their native data services 

  • Knowledge of containerization and orchestration technologies (Docker, Kubernetes) 

  • Strong expertise in data integration, transformation, and curation with a focus on quality and consistency 

  • Experience with real-time data processing and streaming architectures 

  • Background in data science or analytics, with ability to collaborate effectively with data scientists 

  • Experience in client-facing or Professional Services roles 

  • Familiarity with DataOps and MLOps practices 

  • A mindset focused on operational efficiency, automation, and continuous improvement 

  • Strong business acumen with ability to translate technical capabilities into business value 

  • Commitment to SDLC best practices and structured development processes 

  • Excellent communication and collaboration skills, with ability to work effectively with both technical and non-technical stakeholders 

  • Proactive approach to problem-solving with strong analytical and critical thinking skills 

  • Passion for innovation and staying current with emerging technologies and industry trends 

  • Proven experience with both structured and unstructured data, including design and implementation of solutions that leverage both traditional databases and modern cloud architectures 

  • Experience managing sensitive data, including PII, with attention to compliance and governance requirements 

  • Demonstrated ability to work with artificial intelligence, machine learning, and big-data techniques 

  • Solid understanding of data modeling, data warehousing concepts, and dimensional modeling 

#LI-Hybrid


Company Overview

McAfee is a leader in personal security for consumers. Focused on protecting people, not just devices, McAfee consumer solutions adapt to users’ needs in an always online world, empowering them to live securely through integrated, intuitive solutions that protects their families and communities with the right security at the right moment.

Company Benefits and Perks:

We work hard to embrace diversity and inclusion and encourage everyone at McAfee to bring their authentic selves to work every day. We’re proud to be Great Place to Work® Certified in 10 countries, a reflection of the supportive, empowering environment we’ve built where people feel seen, valued, and energized to reach their full potential and thrive.

We offer a variety of social programs, flexible work hours and family-friendly benefits to all of our employees.

  • Bonus Program
  • Pension and Retirement Plans
  • Medical, Dental and Vision Coverage
  • Paid Time Off
  • Paid Parental Leave
  • Support for Community Involvement

We're serious about our commitment to diversity which is why McAfee prohibits discrimination based on race, color, religion, gender, national origin, age, disability, veteran status, marital status, pregnancy, gender expression or identity, sexual orientation or any other legally protected status.

Top Skills

Airflow
Spark
Artificial Intelligence
AWS
Azure
Big-Data
Databricks
Docker
GCP
Java
Kafka
Kubernetes
Machine Learning
Model Context Protocol
Python
Scala
Snowflake

McAfee Ottawa, Ontario, CAN Office

Ottawa, ON, Canada

Similar Jobs

3 Days Ago
Easy Apply
Remote or Hybrid
6 Locations
Easy Apply
Senior level
Senior level
Fintech • HR Tech
The Senior Data Engineer will build scalable data systems, optimize data workflows, and collaborate with teams to enhance data-driven decisions.
Top Skills: BigQueryDatabricksDbtPythonRedshiftSnowflakeSQL
3 Hours Ago
In-Office
Toronto, ON, CAN
Senior level
Senior level
Artificial Intelligence • Software • Analytics
The Senior Data Engineer will design and implement scalable data solutions, manage data onboarding, develop automation tools, and serve as a data integration expert while collaborating with internal teams.
Top Skills: AirflowAWSDagsterDbtPythonSalesforceSnowflakeSQLVeeva
Yesterday
In-Office
Waterloo, ON, CAN
Senior level
Senior level
Fintech • Payments • Financial Services
As a Senior Data Engineer, develop and maintain data models, ensure data quality, collaborate with stakeholders, and automate cloud infrastructure using AWS tools.
Top Skills: AWSCloudwatchGlueLambdaPysparkPythonSnsSQLSqs

What you need to know about the Ottawa Tech Scene

The capital city of Canada and the nation's fourth-largest urban area, Ottawa has proven a rapidly growing global tech hub. With over 1,800 tech companies, many of which are leaders in their sectors, the city's tech talent now makes up more than 13 percent of its total workforce. This growth is driven not only by the big players like UL Solutions and Dropbox, but also by a thriving startup ecosystem, as new businesses emerge to follow in the footsteps of those that came before them.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account