Graphic techniques (Adobe Photoshop, Adobe Illustrator) Training Course
You will learn:
- To create computer graphics for government use
- Techniques to enhance the quality of photographs
- The principles of retouching and creating photomontages
- How to prepare logos, charts, tables, and illustrations for official documents
- Methods for designing business cards, simple advertisements, billboards, and leaflets suitable for government publications
- The fundamentals of preparing graphics for print and web applications in a public sector context
Sample Topics:
- Government poster design
- Professional portrait retouching
- Space-themed visual communications
- Catalog creation for government projects
- Enhancing official portraits and images
- Designing effective billboards for public information campaigns
- Creating logos for government agencies and programs
Course Outline
Photoshop for Government
- Basics of Constructing Images and Color Models for Government Use
- Scanning Techniques for Government Documents and Images
- Adjusting Color in Digital Images for Enhanced Clarity and Accuracy for Government Applications
- Retouching and Modifying Images to Meet Government Standards
- Creating Photomontages for Government Projects
- File Formats, Recording, and Optimization of Graphics for Government Use
Illustrator for Government
- Creating Illustrations and Logos for Government Materials
- Execution and Printing of Business Cards for Government Agencies
- Preparing Simple Leaflets for Government Communications
- Graphs and Tables: Attractive Presentation of Data for Government Reports and Publications
Requirements
Runs with a minimum of 4 + people. For 1-to-1 or private group training, request a quote.
Graphic techniques (Adobe Photoshop, Adobe Illustrator) Training Course - Booking
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