communication complexity - ترجمة إلى الروسية
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communication complexity - ترجمة إلى الروسية

COMPLEXITY OF SENDING INFORMATION IN A DISTRIBUTED ALGORITHM
Quantum communication complexity

communication complexity         
коммуникационная сложность
asymptotic complexity         
MEASURE OF THE AMOUNT OF RESOURCES NEEDED TO RUN AN ALGORITHM OR SOLVE A COMPUTATIONAL PROBLEM
Asymptotic complexity; Computational Complexity; Bit complexity; Context of computational complexity; Complexity of computation (bit); Computational complexities

математика

асимптотическая сложность

تعريف

complexity
<algorithm> The level in difficulty in solving mathematically posed problems as measured by the time, number of steps or arithmetic operations, or memory space required (called time complexity, computational complexity, and space complexity, respectively). The interesting aspect is usually how complexity scales with the size of the input (the "scalability"), where the size of the input is described by some number N. Thus an algorithm may have computational complexity O(N^2) (of the order of the square of the size of the input), in which case if the input doubles in size, the computation will take four times as many steps. The ideal is a constant time algorithm (O(1)) or failing that, O(N). See also NP-complete. (1994-10-20)

ويكيبيديا

Communication complexity

In theoretical computer science, communication complexity studies the amount of communication required to solve a problem when the input to the problem is distributed among two or more parties. The study of communication complexity was first introduced by Andrew Yao in 1979, while studying the problem of computation distributed among several machines. The problem is usually stated as follows: two parties (traditionally called Alice and Bob) each receive a (potentially different) n {\displaystyle n} -bit string x {\displaystyle x} and y {\displaystyle y} . The goal is for Alice to compute the value of a certain function, f ( x , y ) {\displaystyle f(x,y)} , that depends on both x {\displaystyle x} and y {\displaystyle y} , with the least amount of communication between them.

While Alice and Bob can always succeed by having Bob send his whole n {\displaystyle n} -bit string to Alice (who then computes the function f {\displaystyle f} ), the idea here is to find clever ways of calculating f {\displaystyle f} with fewer than n {\displaystyle n} bits of communication. Note that, unlike in computational complexity theory, communication complexity is not concerned with the amount of computation performed by Alice or Bob, or the size of the memory used, as we generally assume nothing about the computational power of either Alice or Bob.

This abstract problem with two parties (called two-party communication complexity), and its general form with more than two parties, is relevant in many contexts. In VLSI circuit design, for example, one seeks to minimize energy used by decreasing the amount of electric signals passed between the different components during a distributed computation. The problem is also relevant in the study of data structures and in the optimization of computer networks. For surveys of the field, see the textbooks by Rao & Yehudayoff (2020) and Kushilevitz & Nisan (2006).

What is the الروسية for communication complexity? Translation of &#39communication complexity&#39 to