CSP-S 2022 江苏迷惑行为大赏

· · 闲话

今年文件输入输出被注释掉了33次:

邪教团体:

逆行者:

神奇的define(注意第11、12行):

#include <bits/stdc++.h>
#define rep(i,n) for(int i=0,i##_end_##i##_func=(n);i<i##_end_##i##_func;++i)
#define rep1(i,n) for(int i=1,i##_end_##i##_func=(n);i<=i##_end_##i##_func;++i)
#define per(i,n) for(int i=(n)-1;i>=0;--i)
#define per1(i,n) for(int i=(n);i>=1;--i)
#define fi first
#define se second
#define pb push_back
#define mp make_pair
#define y1 yaxies13319
#define dfs dffffffffffffffffffffffffffffffffunctions
#define index iddddddddddddddddddddddddddddddfsx
typedef long long ll;
typedef long double ldb;
const ll mod1=998244353;
const ll mod2=1000000007;
using namespace std;
mt19937 rng(chrono::high_resolution_clock::now().time_since_epoch().count());
int rnd(int L,int R)
{
    ...
}
int read()
{
    ...
}
ll readl()
{
    ...
}
void write(ll x)
{
    ...
}
int n,m,k,l,r,u,w;
ll a[2505];
vector<int> v[2505];
int dis[2505];
bool vis[2505];
bool E[2505][2505];
pair<ll,int> q[2505][3];
pair<ll,int> P1[3],P2[3];
int Q[5005];
ll ans;
void chk(pair<ll,int> P[3],pair<ll,int> Pair)
{
    ...
}
int main()
{
    #ifndef DEBUG
    freopen("holiday.in","r",stdin);
    freopen("holiday.out","w",stdout);
    #endif
    ...
    write(ans);
    return 0;
}
/*
1. int overflow long long memory
2. bound & precision & corner case
3. i,j <,<=,>,>= ++ --
4. rp++
5. way back home
------ by yours, since rely.
*/

加 州 旅 馆:

#include<bits/stdc++.h>
#define ll long long
using namespace std;
const int MAXN=100005,MAXM=100005;
ll n,m,q,a[MAXN],b[MAXM];
int main()
{
    freopen("game.inn","r",stdin);
    freopen("game.out","w",stdout);
    ...
    return 0;
}
/*
3 2 2
0 1 -2
-3 4
1 3 1 2
2 3 2 2
*/

迷 信 活 动:

#include<iostream>
// it is said to be impossible to be done
using namespace std;
// bless me, give me 10 pts!!!
int main () {
// maybe using ifstream and ofstream will be better
freopen("galaxy.in", "r", stdin); 
// note is a good place to tell other something but not telling the computer
freopen("galaxy.out", "w", stdout);
// ccf is great!
int n, m;
// help me get as much as points as possible
cin >> n >> m;
// is random really random?
srand(114514 - 1919810 + n * m + n % m - n ^ m + (n * m) | (n - m) - (n & m) ^ (n / m));
// I hope this can run on Linux
for (int i = 0; i < m; ++i)
// the for loop for you
{ int a, b; cin >> a >> b; }
// oh, all the codes above are useless, but all the notes are great and useful
int q;
// why i have to use cin but not scanf???
cin >> q;
// times for randoms
while (q--)
// great!
cout << (rand() & 1 ? "YES" : "NO") << endl;
// return 0!
return 0;
// bye bye! never 0!
} 

继承fuck CCF先辈的光荣传统:

#include<bits/stdc++.h>
using namespace std;
#define INF 0x3f3f3f3f3f3f3f3f
#define ll long long
// fuck CCF fuck �߶��� 
struct node
{
    ll l, r, maxn = -INF, maxp = -INF, minn = INF, minp = INF;
    bool ifzero = 0, ifn = 0, ifp = 0;
}treea[400010], treeb[400010];
ll n, m, q, a[200010], b[200010], l1, l2, r1, r2;
void builda(int l, int r, int pos)
{
    ...
}
void buildb(int l, int r, int pos)
{
    ...
}
ll queryamaxn(int l, int r, int pos)
{
    ...
}
ll queryamaxp(int l, int r, int pos)
{
    ...
}
ll queryaminn(int l, int r, int pos)
{
    ...
}
bool queryaifzero(int l, int r, int pos)
{
    ...
}
bool queryaifn(int l, int r, int pos)
{
    ...
}
bool queryaifp(int l, int r, int pos)
{
    ...
}
ll querybmaxn(int l, int r, int pos)
{
    ...
}
ll querybmaxp(int l, int r, int pos)
{
    ...
}
ll querybminn(int l, int r, int pos)
{
    ...
}
ll querybminp(int l, int r, int pos)
{
    ...
}
bool querybifzero(int l, int r, int pos)
{
    ...
}
bool querybifn(int l, int r, int pos)
{
    ...
}
bool querybifp(int l, int r, int pos)
{
    ...
}
int main ()
{
    freopen("game.in", "r", stdin);
    freopen("game.out", "w", stdout);
   ...
    return 0;
}

群 魔 乱 舞:

/*
t3ʵ�ڲ������ˣ�t4Ҳû��������Ŀ�
 ���ꣿ�����������������
Ҫ��NOIP�����ˣ��Ǿ�������
���Ǹ�����OI���Ļ���һ����̫�����ľ�ţ������fw������
�����ף������λ������Ҹ�
���У��Ұ�CMQ

�ؼ���¼��114514 1919810 �� �ߣ��ߺ� NEver gonna give you up 
*/

可惜他们做不到:

#include<bits/stdc++.h>
using namespace std;

int main(){
    freopen("galaxy.in","r",stdin);
    freopen("galaxy.out","w",stdout);
    cout<<"I love u CCF"<<endl;
    cout<<"Please Make The Problem Easier Next Time";
    return 0;
}

这个JS-S00298我们认为需要全洛谷通报表扬一下:

/*
server.zip

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*/
main() { }

AK CSP并为CCF提供样例的第一步就是把freopen注释掉:

#include<bits/stdc++.h>
using namespace std;
/*
��һ���������ˣ�sjr
IAKCSP����CCF
��Ȼû�����ܣ�����������������
���ӽ��㣬��ôAKCSP�أ�
��To be continued
*/
//Ŀǰ˼·���ڽӱ���ͼ���� n300 k0����ɽ� 
long long a[2505],ans;
bool vis[2505][6];
bool totvis[2505];
vector<int> nxt[2505];
int t[2505];
int n,m,k;
void violent(int dep,long long sc,int viss,int pos){
    ...
}
int main(){
//  freopen("holiday3.in.txt","w",stdin);
//  freopen("holiday.ans","r",stdout);
    ...
    return 0;
}

有 氧 运 行:

#pragma GCC optimize("-Ofast")
#include<bits/stdc++.h>
#define int long long
#define max(a,b) (a>b?a:b)
#define min(a,b) (a<b?a:b)
using namespace std;
int n,m,q,a[100005],b[100005];
int l1[100005],r1[100005],l2[100005],r2[100005];
void P_25(int l1,int r1,int l2,int r2){
    ...
}
int s,t,c[1005],d[1005];
void construct(){
    ...
}
int query(char cc,int l,int r){
    ...
}
signed main(){
    freopen("game.in","r",stdin);
    freopen("game.out","w",stdout);
    ...
    return 0;
}