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Machine Learning Work Integrated Project II - CMPT 3835

This course is a continuation of CMPT 3830 (Machine Learning Work Integrated Project I). In this course, students work in groups on machine learning projects based on real-world business cases and solutions. Students will learn the project lifecycle and acquire the multidisciplinary teamwork and strategy skills required for employment. Students will work in domain-specific cohorts on applied machine learning business cases using problems and datasets developed by local companies while also exploring the business case for employing machine learning solutions. By working through applied machine learning projects, students will begin to develop a portfolio of work and learn the practical skills of conceptualizing and progressing through a basic project workflow as a team. This course is taught by local experts and industry guest lecturers, so students will have the opportunity to engage industry experts and network with potential employers. Examples of domain-specific cohorts may include health, fintech, social enterprise, and environmental science and natural resources. Students must complete this course in a term directly after CMPT 3830 . Note for international learners: This is not work-integrated learning, and there are no practicum hours assigned to this course. International learners do not require a co-op work study permit for this course.

Note: Prerequisite A minimum grade of C in CMPT 3830, CMPT 2150 Restricted to Machine Learning Analyst


Term Duration Schedule Class Section Open Studies

Edmonton

Fall Sep 3 - Dec 20, 2024 Mon: 02:00 - 05:00 pm
40430 A01 No
Winter Jan 6 - Apr 25, 2025 Tue: 09:30 am - 12:30 pm
10402 A01 No
Winter Jan 6 - Apr 25, 2025 Thu: 02:00 - 05:00 pm
10406 A02 No
Term Duration Schedule Class Section Open Studies

Edmonton

Fall Sep 3 - Dec 20, 2024 Mon: 02:00 - 05:00 pm
40432 H01 No
Winter Jan 6 - Apr 25, 2025 Tue: 09:30 am - 12:30 pm
10404 H01 No
Winter Jan 6 - Apr 25, 2025 Thu: 02:00 - 05:00 pm
10408 H04 No

To take this course, you must be enrolled in one of the related programs:

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