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New York Fashion Tour: Start of Something New (Virtual)

Laptop displaying a virtual meeting with several people.

This program will be offered virtually (online) in Summer 2021.

What You Will Learn

By participating in this virtual event, students will still be able to experience real-world situations within the retail field, build upon future partnerships and mentoring opportunities, explore internships and learn from industry professionals.

New York is one of the top global fashion centers for the retail/fashion industry. Students will hear from industry professionals, complete projects, and get a taste of what New York has to offer in regards to a retail career.

Dates

Summer 2021 Term: July 5 - 30, 2021

8 Virtual Fashion Industry Visits (Live Online): July 4 - 9, 2021

Students will meet three times during the spring, for orientation meetings, and three times for course meetings during the summer semester.

Course Meetings: Dates TBD


Course Options

FM 4320 Fashion Merchandising in Domestic Markets CRN 52521

Students register for three (3) credit hours during this program.

Pre-program orientation meetings will take place online.

Online coursework throughout the program will also be required.


Tuition and Program Fee

3 Hours (1 Course) Undergraduate $922.02

The course tuition and program fee will be billed and paid through SBS Billing and Payment.

Additional Program Fee

The additional program fee covers the cost for virtual, live online meetings with New York fashion industry professionals: $550.00

Drops and Refunds

All university policies regarding installments, course drops, and refunds apply to all billed and paid tuition and program fees.


Registering for the Courses

Register for your courses and the virtual program through the Student Information System/CatsWeb during the regular university registration period.

For more information about future course/program offerings, please contact Kasia Romo.

For questions about applying/registering, please contact the Office of Distance and Extended Learning.