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Hybrid computing system

A hybrid computing system is a computing structure that combines two or more types of computers to create a more powerful and versatile system. The main goal of hybrid computing systems is to use the strengths of each component to optimize performance, efficiency and flexibility.

The structure of hybrid computing systems
Hybrid computing systems combine different types of computing resources to solve complex tasks.

  • The central processing unit (CPU). CPU is the element that controls the system. It is responsible for performing common operating system tasks, memory management, I/O, and so on.
  • The graphics processor (GPU). The GPU is designed for graphics processing and parallel computing. It consists of many cores, each of which can simultaneously perform calculations on a large number of data.
  • Software accelerators. These are specialized devices or parts of a system designed to perform certain types of computing, such as artificial intelligence (AI), machine learning, cryptography, and so on. For example, FPGA (programmable gate arrays) or ASIC (specialized integrated circuits).
  • Memory. Hybrid systems use different types of memory, such as random access memory (RAM) and graphics memory (VRAM), to provide fast access to data for various types of computing.
  • Networks. Hybrid systems can use a distributed network architecture that allows you to combine various computing nodes to work together on tasks. This can be either a local area network (LAN) or a global network (Internet).
  • Parallel algorithms. The development of algorithms capable of parallelization on various computing resources (CPU, GPU, accelerators) plays an important role in hybrid systems. They allow efficient use of system resources to solve complex tasks.
  • Software. To manage hybrid systems, specialized software is required that can manage the distribution of tasks between computing components, optimize calculations and ensure effective interaction between them.

The structure of hybrid computing systems may vary depending on the specific task, performance requirements, and available resources.

Areas of application
Hybrid computing systems are widely used in the fields of artificial intelligence, scientific computing, finance, medicine, graphics, cryptography, oil and gas industry and logistics. They combine central processing units, GPUs, software accelerators, and networks to efficiently solve complex tasks such as machine learning, numerical modeling, data analysis, and visualization.

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