raptor allows to create algorithms using concatenation basics
raptor allows you to create algorithms using connected basic flowchart symbols, which can then be debugged and run directly within its environment, including single-step or continuous execution modes. The Raptor program is actually a flow chart that executes one graphical symbol at a time during runtime to help users track the instruction flow execution process of the Raptor program.
The operating environment of this tutorial: Windows 7 system, Dell G3 computer.
raptor allows creating algorithms using connected basic flowchart symbols.
Raptor (the Rapid Algorithmic Prototyping Tool for Ordered Reasoning) is a rapid algorithm prototyping tool for ordered reasoning. It is a visual programming environment that provides basic course teaching for program and algorithm design. Provide an experimental environment. Raptor is specifically designed to address the syntax difficulties and shortcomings of non-visual environments, with the goal of reducing the cognitive load on learning by shortening the distance between real-world actions and programming concepts.
#The Raptor program is actually a flow chart that executes one graphical symbol at a time during runtime to help users track the instruction flow execution process of the Raptor program. The development environment can help users write correct program instructions while minimizing syntax requirements. Programmers usually use flowcharts to design their algorithms before writing code in a high-level programming language. Raptor can now be used to run the flowchart of algorithm design to make abstract problems concrete.
Raptor creates algorithms by connecting basic flowchart symbols. You can then debug and run the algorithm directly in its environment, including single-step or continuous execution modes. This environment can visually display the location of the current execution symbol and the contents of all variables. In addition, Raptor provides a simple graphics library based on Ada Graph, so that not only can the algorithm be created visually, but the problem itself can also be visualized.
Raptor is a visual programming environment based on flowcharts, and a flowchart is a collection of interconnected graphical symbols, where each symbol represents a specific type of instruction to be executed, and between the symbols Connections determine the order in which instructions are executed, so once you start using Raptor to solve problems, these otherwise abstract ideas will become clear.
Raptor can help users write correct program instructions while minimizing grammatical requirements. It is visual, and is actually a directed graph that can execute one graphical symbol at a time to help users track the instruction flow execution process of the Raptor program. Compared with the complexity of any other programming development environment, Raptor's ease of use is obvious. The purpose of using Raptor is to carry out algorithm design and operation verification, thus avoiding the learning burden brought to beginners by the premature introduction of heavyweight programming languages (for example, C or Java). In addition, Raptor debugs and reports errors for the designed program. The message is easier to understand for beginners.
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