結果

問題 No.3024 等式
ユーザー rsk0315rsk0315
提出日時 2023-09-13 22:38:31
言語 Rust
(1.77.0)
結果
TLE  
実行時間 -
コード長 36,361 bytes
コンパイル時間 864 ms
コンパイル使用メモリ 149,100 KB
実行使用メモリ 6,512 KB
最終ジャッジ日時 2023-09-13 22:38:40
合計ジャッジ時間 8,048 ms
ジャッジサーバーID
(参考情報)
judge11 / judge13
このコードへのチャレンジ
(要ログイン)

テストケース

テストケース表示
入力 結果 実行時間
実行使用メモリ
testcase_00 AC 5 ms
6,380 KB
testcase_01 AC 4 ms
4,376 KB
testcase_02 AC 7 ms
4,376 KB
testcase_03 AC 6 ms
4,380 KB
testcase_04 AC 4 ms
4,376 KB
testcase_05 AC 4 ms
4,380 KB
testcase_06 AC 93 ms
4,376 KB
testcase_07 AC 105 ms
4,380 KB
testcase_08 AC 143 ms
4,380 KB
testcase_09 AC 5 ms
4,380 KB
testcase_10 AC 8 ms
4,380 KB
testcase_11 AC 8 ms
4,376 KB
testcase_12 TLE -
testcase_13 -- -
testcase_14 -- -
testcase_15 -- -
testcase_16 -- -
testcase_17 -- -
testcase_18 -- -
testcase_19 -- -
testcase_20 -- -
testcase_21 -- -
testcase_22 -- -
権限があれば一括ダウンロードができます

ソースコード

diff #

// This code is generated by [rsk0315/cargo-atcoder](https://github.com/rsk0315/cargo-atcoder) forked from [tanakh/cargo-atcoder](https://github.com/tanakh/cargo-atcoder).
// Original source code:
const _: &str = r#"
use std::collections::BTreeSet;

use itertools::Itertools;
use num_rational::Rational64;
use proconio::input;

fn main() {
    input! {
        n: usize,
        a: [i64; n],
    }

    let res = a.iter().permutations(n).any(|p| {
        let a: Vec<_> = p.iter().map(|&&ai| ai).collect();
        solve(&a)
    });
    println!("{}", if res { "YES" } else { "NO" });
}

fn solve(a: &[i64]) -> bool {
    let n = a.len();

    let mut dp = vec![vec![BTreeSet::<Rational64>::new(); n + 1]; n + 1];

    for i in 0..n {
        dp[i][i + 1].insert(Rational64::new(a[i], 1));
    }

    for w in 2..=n {
        for l in 0..=n - w {
            let r = l + w;
            let mut tmp = BTreeSet::new();
            for m in l + 1..r {
                for &kl in &dp[l][m] {
                    for &kr in &dp[m][r] {
                        if kl == kr {
                            return true;
                        }

                        tmp.insert(kl + kr);
                        tmp.insert(kl - kr);
                        tmp.insert(kl * kr);
                        if *kr.numer() != 0 {
                            tmp.insert(kl / kr);
                        }
                    }
                }
            }
            dp[l][r] = tmp;
        }
    }

    false
}
"#;

fn main() {
    let exe = std::env::temp_dir().join("bin691DAA19");
    std::io::Write::write_all(&mut std::fs::File::create(&exe).unwrap(), &decode(BIN)).unwrap();
    #[cfg(unix)]
    fn executable(exe: &std::path::Path) {
        std::fs::set_permissions(exe, std::os::unix::fs::PermissionsExt::from_mode(0o755)).unwrap();
    }
    #[cfg(not(unix))]
    fn executable(_: &std::path::Path) {}
    executable(&exe);
    std::process::exit(std::process::Command::new(&exe).status().unwrap().code().unwrap())
}

fn decode(v: &str) -> Vec<u8> {
    let mut ret = vec![];
    let mut buf = 0;
    let mut tbl = vec![64; 256];
    for i in 0..64 { tbl[TBL[i] as usize] = i as u8; }
    for (i, c) in v.bytes().filter_map(|c| { let c = tbl[c as usize]; if c < 64 { Some(c) } else { None } }).enumerate() {
        match i % 4 {
            0 => buf = c << 2,
            1 => { ret.push(buf | c >> 4); buf = c << 4; }
            2 => { ret.push(buf | c >> 2); buf = c << 6; }
            3 => ret.push(buf | c),
            _ => unreachable!(),
        }
    }
    ret
}

const TBL: &[u8] = b"ABCDEFGHIJKLMNOPQRSTUVWXYZabcdefghijklmnopqrstuvwxyz0123456789+/";
const BIN: &str = "
f0VMRgIBAQAAAAAAAAAAAAMAPgABAAAA8CoBAAAAAABAAAAAAAAAAAAAAAAAAAAAAAAAAEAAOAADAAAA
AAAAAAEAAAAGAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAABAAAAAAAABY0QAAAAAAAAAQAAAAAAAA
AQAAAAUAAAAAAAAAAAAAAADgAAAAAAAAAOAAAAAAAADXXgAAAAAAANdeAAAAAAAAABAAAAAAAABR5XRk
BgAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAQAAAAAAAAAJDLkU9VUFgh
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