Machine Learning on iOS Training Course
Course Outline
To request a tailored course outline for this training for government use, please contact us.
Requirements
- Experience programming in Swift for government applications and systems.
Runs with a minimum of 4 + people. For 1-to-1 or private group training, request a quote.
Machine Learning on iOS Training Course - Booking
Machine Learning on iOS Training Course - Enquiry
Testimonials (1)
The way of transferring knowledge and the knowledge of the trainer.
Jakub Rekas - Bitcomp Sp. z o.o.
Course - Machine Learning on iOS
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