Learn Adobe Dreamweaver CC for Web Authoring: Adobe Certified Associate Exam Preparation (Adobe Certified Associate (ACA))
Authors: Kim Cavanaugh – Rob Schwartz
ISBN-10: 0134396421
ISBN-13: 9780134396422
Edition 版次: 1
Publication Date 出版日期: 2016-01-30
Print Length 页数: 288 pages
Dreamweaver CC is the industry-leading web design and development application from Adobe. With Dreamweaver you can build standards-based web pages using code and design techniques that translate directly into careers in web and user experience design. Learn Dreamweaver by creating an entire website from scratch as you:
Use HTML to structure the content of web pages
Design web pages that will look great on desktop,tablet,and mobile devices
Use images,color,and typography,in the web design process
Make the most of the great editing and visualization tools
Prepare to be a web design professional by understanding the theory and practice behind modern web design.
This study guide uses more than 10 hours of video integrated with text to help you gain real-world skills that will get you started in your career designing and building web pages using Adobe Dreamweaver CC 2018. It lays the foundation for taking the Adobe Certified Associate certification exam and helps prepare you for an entry-level position in a competitive job market.
Learn Adobe Dreamweaver CC for Web Authoring Adobe Certified Associate Exam Preparation,2nd Edition
未经允许不得转载:finelybook » Learn Adobe Dreamweaver CC for Web Authoring Adobe Certified Associate Exam Preparation,2nd Edition
相关推荐
- Mastering Unity Game Development with C#: Harness the full potential of Unity 2022 game development using C#
- Autodesk Civil 3D 2025 Unleashed: Elevate your civil engineering designs and advance your career with Autodesk Civil 3D
- Unlock Your Creativity with Photopea: Edit and retouch images, and create striking text and designs with the free online software
- Federated Learning for Future Intelligent Wireless Networks
- Facilitating Software Architecture: Empowering Teams to Make Architectural Decisions
- Explainable Machine Learning for Geospatial Data Analysis: A Data-Centric Approach