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diagrams.net (previously draw.io [2] [3]) is a cross-platform graph drawing software application developed in HTML5 and JavaScript. [4] Its interface can be used to create diagrams such as flowcharts , wireframes , UML diagrams, organizational charts , and network diagrams .
Quick, Draw! is an online guessing game developed and published by Google LLC that challenges players to draw a picture of an object or idea and then uses a neural network artificial intelligence to guess what the drawings represent. [2] [3] [4] The AI learns from each drawing, improving its ability to guess correctly in the future. [3]
SaviDraw, by Silicon Beach Software, is a modern vector drawing program for Windows 10. It is available only from the Microsoft app store. It is designed to work well with touch screens - no functions require keyboard modifiers. It features a new way to draw vector curves (very different from the traditional Pen tool) and has voice-command ...
Sketch Developer(s) Sketch B.V. Initial release 7 September 2010 ; 14 years ago (2010-09-07) Stable release 100.3 / 25 July 2024 Operating system macOS Type Vector graphics editor Licence Proprietary Website www.sketch.com Sketch is a vector graphics editor for macOS developed by the Dutch company Sketch B.V. (formerly named Bohemian Coding). It was first released on 7 September 2010 and won ...
In general, sketching is a quick way to record an idea for later use. Architect's sketches primarily serve as a way to try out different ideas and establish a composition before a more finished work, especially when the finished work is expensive and time-consuming. Architectural sketches, for example, are a kind of diagram. [2]
The GAN uses a "generator" to create new images and a "discriminator" to decide which created images are considered successful. [32] Unlike previous algorithmic art that followed hand-coded rules, generative adversarial networks could learn a specific aesthetic by analyzing a dataset of example images. [12]