Graphic techniques (Adobe Photoshop, Adobe Illustrator) Training Course
What you will learn during the training:
- principles of creating computer graphics
- ways to adjust the color of photos
- principles of retouching and creating photomontages
- ways of preparing logos, charts, tables and illustrations
- preparation of business cards, simple advertisements, billboards and leaflets
- basics of preparing graphics for printing and Internet applications
Examples of lesson topics:
- my poster
- portrait
- space
- my catalogue
- my face
- billboard
- my logo
Course Outline
Photoshop
- Basics of image construction and color models
- Scanning
- Adjusting the color of photos
- Retouching and modifications
- Photomontages
- Recording formats, graphics recording and optimization
Illustrator
- Creating illustrations, logos
- Making and printing business cards
- Preparing a simple advertising leaflet
- Charts and tables - attractive presentation of data
Requirements
Good computer skills.
Open Training Courses require 5+ participants.
Graphic techniques (Adobe Photoshop, Adobe Illustrator) Training Course - Booking
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Graphic techniques (Adobe Photoshop, Adobe Illustrator) - Consultancy Enquiry
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Testimonials (2)
Very interactive with various examples, with a good progression in complexity between the start and the end of the training.
Jenny - Andheo
Course - GPU Programming with CUDA and Python
Trainers energy and humor.
Tadeusz Kaluba - Nokia Solutions and Networks Sp. z o.o.
Course - NVIDIA GPU Programming - Extended
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