Adobe Illustrator Training Course
Participants will master the following skills during the training:
- Utilizing vector graphics software.
- Constructing basic shapes.
- Generating complex curves.
- Designing logos.
- Tracing artwork from paper sketches or photographs.
- Designing leaflets.
- Creating advertising posters.
- Opening and editing vector documents, including PDF, EPS, and other formats.
Course Outline
Introduction:
- Course topics
- File formats and extensions
- Distinctions between raster (bitmap) graphics and vector graphics
- Resolution
- Color models
- Color spaces
Interface:
- Working within the document window
- Navigating the workspace
- Tool panels and panel management
- Creating, opening, and saving files
- Using rulers, guides, and grids
- Document settings
Basic Shapes:
- Drawing shapes
- Creating shapes with precise numerical inputs
Selecting and Highlighting:
- Selecting objects
- Grouping objects
- Transformation and alignment
- Scaling and rotating
Colors:
- Color palette
- Color management and color libraries
- Custom color palettes
- Gradient colors
- Stroke properties
- Live preview
Layers:
- Layers panel and creating layers
- Organization and grouping
- Hiding, locking, and coloring layers
- Layer linking
Text:
- Text editing
- Converting text to outlines
- Placing text along paths or objects
- Text properties
Point Editing Tools:
- Creating curves using Bezier paths
- Addition and subtraction of paths
- Swapping node types
- Node types
- Connecting paths and nodes within objects
Pencil and Brush Tools:
- Drawing and editing
- Smoothing and erasing
- Brush types
- Creating custom brushes
Advanced Tools:
- Masks
- Symbols
- Filters and Effects
- Patterns
Requirements
Basic computer literacy.
Open Training Courses require 5+ participants.
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