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Data Engineer - Local to Pittsburgh/Dallas/Birmingham/Phoenix/Cleveland

CGI
Birmingham
3 weeks ago
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Position Description:

Data Engineer - Local to Pittsburgh/Dallas/Birmingham/Phoenix/Cleveland

Position Description
We’re growing rapidly and are looking for a Data Engineer to join our team and help us develop and deploy enterprise-grade platforms that enable data-driven solutions. This role is more than automating and maintaining scalable infrastructure, though. At CGI, you’ll make an impact for some of the largest organizations and brands in the world while enjoying unparalleled career growth in the process.

We’re a close-knit team that has access to global resources. You’ll have the opportunity to explore a wide range of industries, technologies, and geographies, all while enjoying the personal touch that our local operating approach offers.

Growth at CGI is driven by your goals, so if you’re looking for an inclusive place where you’re empowered to chart your own path, then we’d love to meet you.

Your future duties and responsibilities:

• Design various enterprise information and data and analytics strategies, including defining visions, conducting assessments of people, processes, and technology; and developing dynamic business value roadmaps.
• Design and implement modern industry best practices in governance, management, and quality of information/data.
• Design and implementation of data quality scorecards and metrics.
• Evaluation, selection and implementation of tools and technology for data catalogs, data governance, data quality and data management.
• Collaborate with business and technical teams to provide direction for and contribute to development, implementation and rollout of solutions and consulting services.
• Facilitate design and solution workshops with clients

Required qualifications to be successful in this role:

5-7 years experience in:
• ML & Data Engineering pipelines
• Hadoop
• Python with Django and Flask, Spark, Big-Data stack - Hive, Kafka & NoSQL's
• Analytical Skill set
• Machine Learning ready dataset
• Design, implementation of applications using GraphQL and No SQL
• Feature Engineering

CGI is required by law in some jurisdictions to include a reasonable estimate of the compensation range for this role. The determination of this range includes various factors not limited to skill set, level, experience, relevant training, and licensure and certifications. To support the ability to reward for merit-based performance, CGI typically does not hire individuals at or near the top of the range for their role. Compensation decisions are dependent on the facts and circumstances of each case. A reasonable estimate of the current range for this role in the U.S. is 57, - $,.

Benefits
CGI's benefits are offered to eligible professionals on their first day of employment to include:
Competitive compensation
Comprehensive insurance options
Matching contributions through the (k) plan and the share purchase plan
Paid time off for vacation, holidays, and sick time
Paid parental leave
Learning opportunities and tuition assistance
Wellness and Well-being programs

#LI-GA1

Skills:

GraphQL NoSQL Python Banking

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National AI Awards 2025

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