Graphic techniques (Adobe Photoshop, Corel Draw) Training Course
What you will learn during the training:
- principles of creating computer graphics and desktop publishing
- methods for defining and working with color
- differences between vector and bitmap graphics
- ways to customize color photos and graphics
- principles of retouching and creating photomontages
- creating your own illustrations and graphics
- adapting to the needs of graphic material composition and printing
- how to design logos
- creating interesting charts and tables
- designing business cards and letterheads
- creating labels, diplomas, and invitations
- preparing leaflets
- formatting text
- using spot colors
- principles of preparing content for print
- digital printing, offset printing, and screen printing
Sample topics of classes:
- designing my poster
- portrait graphics
- panoramic images
- designing my catalog
- portrait photography techniques
- billboard design
- creating my logo
Course Outline
Photoshop:
- Basics of building a computer image
- Photoshop Tools
- document size
- selection and selection
- Path - Create and edit paths
- retouching
- History Palette
- Working with Layers
- Transformations
- Adjust photos - color and tonal correction
- Color correction - examples
- The text and work with text
CorelDRAW:
- The rules for creating vector graphics
- Vector shapes, paths
- Transformations
- Working with Color
- Working with Text
- Creating tables and charts
- Filters and Effects
- Working with bitmap graphics
- Prepare simple documents
- Preparation for Exposure
Acrobat:
- PostScript Preview
- Edit PDF files
Requirements
Good computer skills.
Open Training Courses require 5+ participants.
Graphic techniques (Adobe Photoshop, Corel Draw) Training Course - Booking
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