hardware$33813$ - перевод на греческий
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hardware$33813$ - перевод на греческий

USE OF SPECIALIZED COMPUTER HARDWARE TO PERFORM SOME FUNCTIONS MORE EFFICIENTLY THAN IS POSSIBLE IN SOFTWARE RUNNING ON A MORE GENERAL-PURPOSE CPU
Hardware accelerator; Accelerator board; Hardware mixing; Acceleration hardware; Hardware-accelerated; Hardware Acceleration; Hardware accelerators; Hardware accelerated; Hardware acceleration (computing)
  • A [[cryptographic accelerator]] card allows cryptographic operations to be performed at a faster rate.

hardware      
n. σιδηρά εργαλεία, σκεύη, μηχανήματα υπολογιστών
data bus         
  • conventional PCI]] bus card slot (very bottom)
SYSTEM THAT TRANSFERS DATA BETWEEN COMPONENTS WITHIN A COMPUTER
Data bus; Address bus; Computer buses; Memory bus; Bus (computer); I/O bus; Internal bus; 100MHz bus; 133MHz bus; Asynchronous bus; Synchronous bus; PC bus; Hardware bus; External data bus; Computer bus; RAM bus; External bus; Cache bus; Digital bus; Computer/bus; Interconnect (computing); Data buses; Draft:Data Bus; Data highway; Address line; Motherboard bus; Processor bus
μεταφορέας δεδομένων
parallel processor         
  • A graphical representation of [[Amdahl's law]]. The speedup of a program from parallelization is limited by how much of the program can be parallelized. For example, if 90% of the program can be parallelized, the theoretical maximum speedup using parallel computing would be 10 times no matter how many processors are used.
  • Beowulf cluster]]
  • Blue Gene/L]] massively parallel [[supercomputer]]
  • The [[Cray-1]] is a vector processor
  • 1=IPC = 1}}).
  • A graphical representation of [[Gustafson's law]]
  • [[ILLIAC IV]], "the most infamous of supercomputers"<ref name="infamous"/>
  • 1=IPC = 0.2 < 1}}).
  • A logical view of a [[non-uniform memory access]] (NUMA) architecture. Processors in one directory can access that directory's memory with less latency than they can access memory in the other directory's memory.
  • Tesla GPGPU card]]
  • 1=IPC = 2 > 1}}).
  • Taiwania 3 of [[Taiwan]], a parallel supercomputing device that joined [[COVID-19]] research.
PROGRAMMING PARADIGM IN WHICH MANY CALCULATIONS OR THE EXECUTION OF PROCESSES ARE CARRIED OUT SIMULTANEOUSLY
Parallel computer; Parallel processor; Parallel computation; Parallel programming; Parallel Programming; Parallel computers; Concurrent language; Concurrent event; Computer Parallelism; Parallel machine; Concurrent (programming); Parallel architecture; Parallel Computing; Parallelisation; Parallelization; Parallelized; Multicomputer; Parallelism (computing); Parellel computing; Superword Level Parallelism; Parallel programming language; Message-driven parallel programming; Parallel computer hardware; Parallel program; Parallel code; Parallel language; Parallel processing (computing); Multiple processing elements; Parallel execution units; History of parallel computing; Parallel hardware; Parallel processing computer
παράλληλος επεξεργαστής

Определение

hardware
1.
In computer systems, hardware refers to the machines themselves as opposed to the programs which tell the machines what to do. Compare software
.
N-UNCOUNT
2.
Military hardware is the machinery and equipment that is used by the armed forces, such as tanks, aircraft, and missiles.
N-UNCOUNT: usu adj N
3.
Hardware refers to tools and equipment that are used in the home and garden, for example saucepans, screwdrivers, and lawnmowers.
N-UNCOUNT

Википедия

Hardware acceleration

Hardware acceleration is the use of computer hardware designed to perform specific functions more efficiently when compared to software running on a general-purpose central processing unit (CPU). Any transformation of data that can be calculated in software running on a generic CPU can also be calculated in custom-made hardware, or in some mix of both.

To perform computing tasks more quickly (or better in some other way), generally one can invest time and money in improving the software, improving the hardware, or both. There are various approaches with advantages and disadvantages in terms of decreased latency, increased throughput and reduced energy consumption. Typical advantages of focusing on software may include more rapid development, lower non-recurring engineering costs, heightened portability, and ease of updating features or patching bugs, at the cost of overhead to compute general operations. Advantages of focusing on hardware may include speedup, reduced power consumption, lower latency, increased parallelism and bandwidth, and better utilization of area and functional components available on an integrated circuit; at the cost of lower ability to update designs once etched onto silicon and higher costs of functional verification, and times to market. In the hierarchy of digital computing systems ranging from general-purpose processors to fully customized hardware, there is a tradeoff between flexibility and efficiency, with efficiency increasing by orders of magnitude when any given application is implemented higher up that hierarchy. This hierarchy includes general-purpose processors such as CPUs, more specialized processors such as GPUs, fixed-function implemented on field-programmable gate arrays (FPGAs), and fixed-function implemented on application-specific integrated circuits (ASICs).

Hardware acceleration is advantageous for performance, and practical when the functions are fixed so updates are not as needed as in software solutions. With the advent of reprogrammable logic devices such as FPGAs, the restriction of hardware acceleration to fully fixed algorithms has eased since 2010, allowing hardware acceleration to be applied to problem domains requiring modification to algorithms and processing control flow. The disadvantage however, is that in many open source projects, it requires proprietary libraries that not all vendors are keen to distribute or expose, making it difficult to integrate in such projects.