


The world's first image editor powered entirely by artificial intelligence!
What I want to share with you today is Luminar AI, which is known as the world’s first image processing software completely implemented by AI artificial intelligence.
Luminar AI is designed for all creative levels – from complete beginner photographers to seasoned professionals, although the latter may use it more as a plug-in in conjunction with other image editing software. It works by automating the most common manual image editing tasks and simplifying the complexities of post-production, and despite its power, it's simple enough for even those with zero image editing experience to get started quickly.
Luminar AI does away with many complex image management features and includes 4 main workspaces: Catalog, Templates, Editing and Export:
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Directory: Shows all photos, individual image edits, recently added, recent edits (very convenient) and trash. It also displays folders that have been added manually and photo albums that you can create and manage.
- Powerful Templates: Like the "Super" presets, it uses artificial intelligence to analyze the content of each photo to suggest the best edits. The templates fall into eight categories: basic functions, scenery, nature, portraits, macro photography, movies, lifestyle, and antennas.
- Editing: Editing gives you access to a range of regular and AI-powered image editing tools, divided into 4 separate tool panels: Basic, Portrait, Creative, and Professional.
- Export: Allows you to save to disk, Mail, Messages, SmugMug and 500px
Renderings show
As a non-professional, this software is very simple for me to use. I believe that after installing it and using it a few times, you can become a master of picture editing!
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