代码搜索:Problem

找到约 10,000 项符合「Problem」的源代码

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cpp 1731.cpp

/* This Code is Submitted by wywcgs for Problem 1731 on 2006-05-26 at 09:25:51 */ #include #include #include using namespace std; const int FN = 1024; class F
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cpp 1782.cpp

/* This Code is Submitted by wywcgs for Problem 1782 on 2006-10-01 at 10:12:07 */ #include #include using namespace std; const int N = 51200; class Cistern { public: i
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cpp 2235.cpp

/* This Code is Submitted by wywcgs for Problem 2235 on 2006-05-17 at 08:07:10 */ #include #include using namespace std; const int PN = 1024; class Point { public: i
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cpp 2209.cpp

/* This Code is Submitted by wywcgs for Problem 2209 on 2006-04-18 at 12:03:15 */ #include #include #include using namespace std; const int SIZE = 61; const int
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cpp 1097.cpp

/* This Code is Submitted by wywcgs for Problem 1097 on 2006-02-02 at 17:24:14 */ #include #include #include using namespace std; const int MAX = 64; const char
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cpp 2273.cpp

/* This Code is Submitted by wywcgs for Problem 2273 on 2006-11-09 at 20:14:32 */ #include #include #include using namespace std; const int N = 64; class Graph {
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cpp 2206.cpp

/* This Code is Submitted by wywcgs for Problem 2206 on 2006-04-18 at 12:01:21 */ #include #include #include using namespace std; const int L = 128; void exp
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cpp 1790.cpp

/* This Code is Submitted by wywcgs for Problem 1790 on 2006-09-10 at 17:55:08 */ #include #include using namespace std; const int N = 128, MOD = 10000; void powMatrix(
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m demse2.m

% DEMSE2 Demonstrate state estimation on a simple scalar nonlinear (time variant) problem % % See also % GSSM_N1 % Copyright (c) Rudolph van der Merwe (2002) % % This file is part of
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m demmdn1.m

%DEMMDN1 Demonstrate fitting a multi-valued function using a Mixture Density Network. % % Description % The problem consists of one input variable X and one target variable % T with data generated by