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#include <bits/stdc++.h>
using namespace std;
struct TestCase {
int n; long long k;
vector<vector<long long>> A; long long answer;
};
mt19937_64 rng_gen(42);
TestCase gen_matrix(int n, long long k, function<long long(int,int)> valfn) {
TestCase tc; tc.n = n; tc.k = k;
tc.A.assign(n+1, vector<long long>(n+1, 0));
vector<long long> all;
for (int i = 1; i <= n; i++) for (int j = 1; j <= n; j++) { tc.A[i][j] = valfn(i, j); all.push_back(tc.A[i][j]); }
sort(all.begin(), all.end()); tc.answer = all[k-1]; return tc;
}
TestCase gen_multiplicative(int n, long long k) { return gen_matrix(n, k, [](int i, int j) -> long long { return (long long)i * j; }); }
TestCase gen_shifted(int n, long long k) { return gen_matrix(n, k, [n](int i, int j) -> long long { return (long long)(i + n) * (j + n); }); }
TestCase gen_additive(int n, long long k) { return gen_matrix(n, k, [](int i, int j) -> long long { return i + j; }); }
TestCase gen_random_sorted(int n, long long k) {
TestCase tc; tc.n = n; tc.k = k;
tc.A.assign(n+1, vector<long long>(n+1, 0));
for (int i = 1; i <= n; i++) for (int j = 1; j <= n; j++) tc.A[i][j] = (long long)i * 1000000 + (long long)j * 1000 + (rng_gen() % 500);
for (int i = 1; i <= n; i++) for (int j = 2; j <= n; j++) tc.A[i][j] = max(tc.A[i][j], tc.A[i][j-1]);
for (int j = 1; j <= n; j++) for (int i = 2; i <= n; i++) tc.A[i][j] = max(tc.A[i][j], tc.A[i-1][j]);
vector<long long> all;
for (int i = 1; i <= n; i++) for (int j = 1; j <= n; j++) all.push_back(tc.A[i][j]);
sort(all.begin(), all.end()); tc.answer = all[k-1]; return tc;
}
struct Solver {
const TestCase& tc;
int query_count;
vector<long long> memo;
int n;
Solver(const TestCase& t) : tc(t), query_count(0), n(t.n) { memo.assign(2002 * 2002, -1); }
long long do_query(int r, int c) {
int key = r * 2001 + c;
if (memo[key] != -1) return memo[key];
query_count++;
memo[key] = tc.A[r][c];
return memo[key];
}
// Bounded staircase walk: count elements <= mid within jLo..jHi bounds
// jLo[i] = last column known to be <= lo_threshold (0 if none)
// jHi[i] = last column known to be <= hi_threshold
// Returns count and new cutoff positions
pair<long long, vector<int>> countLeq(long long mid, const vector<int>& jLo, const vector<int>& jHi) {
vector<int> cutoff(n + 1, 0);
long long cnt = 0;
int j = jHi[1]; // start from upper bound of row 1
if (j > n) j = n;
for (int i = 1; i <= n; i++) {
int lo = jLo[i];
int hi = jHi[i];
if (hi > n) hi = n;
if (lo < 0) lo = 0;
if (hi <= lo) {
cutoff[i] = lo;
cnt += lo;
continue;
}
if (j > hi) j = hi;
while (j > lo) {
if (do_query(i, j) <= mid) {
cutoff[i] = j;
cnt += j;
goto next_row;
}
j--;
}
cutoff[i] = lo;
cnt += lo;
next_row:;
}
return {cnt, cutoff};
}
long long solve() {
long long k = tc.k;
long long NLL = (long long)n * n;
if (n == 1) return do_query(1, 1);
if (k == 1) return do_query(1, 1);
if (k == NLL) return do_query(n, n);
// For small/extreme k, use heap
long long heap_k = min(k, NLL - k + 1);
if (heap_k + n <= 24000) {
if (k <= NLL - k + 1) {
priority_queue<tuple<long long, int, int>, vector<tuple<long long, int, int>>, greater<>> pq;
for (int i = 1; i <= n; i++) pq.emplace(do_query(i, 1), i, 1);
long long result = -1;
for (long long t = 0; t < k; t++) {
auto [v, r, c] = pq.top(); pq.pop(); result = v;
if (c + 1 <= n) pq.emplace(do_query(r, c + 1), r, c + 1);
}
return result;
} else {
long long kk = NLL - k + 1;
priority_queue<tuple<long long, int, int>> pq;
for (int i = 1; i <= n; i++) pq.emplace(do_query(i, n), i, n);
long long result = -1;
for (long long t = 0; t < kk; t++) {
auto [v, r, c] = pq.top(); pq.pop(); result = v;
if (c - 1 >= 1) pq.emplace(do_query(r, c - 1), r, c - 1);
}
return result;
}
}
// Value-based approach with cached staircase walks
vector<int> jLo(n + 1, 0), jHi(n + 1, n);
long long cLo = 0, cHi = NLL;
// Phase 1: Get initial value bounds
// Query a strategic row to get candidate pivot values
// Row ceil(k/n) is a good starting point
int pivot_row = max(1, min(n, (int)((k + n - 1) / n)));
// Query several strategic positions on this row for initial range
long long min_val = do_query(1, 1);
long long max_val = do_query(n, n);
// Quick initial bound: use row pivot_row
long long init_hi = do_query(pivot_row, n);
auto [ch, cutH] = countLeq(init_hi, jLo, jHi);
if (ch >= k) {
jHi = cutH;
cHi = ch;
max_val = init_hi;
}
// Phase 2: Sample candidate pivot values for binary search
// Query along the anti-diagonal and rows to get diverse values
set<long long> cand_set;
// Sample the diagonal
for (int i = 1; i <= n; i += max(1, n / 50)) {
cand_set.insert(do_query(i, i));
}
// Sample the pivot_row
for (int j = 1; j <= n; j += max(1, n / 50)) {
cand_set.insert(do_query(pivot_row, j));
}
// Sample a second row
int row2 = max(1, min(n, pivot_row / 2));
for (int j = 1; j <= n; j += max(1, n / 30)) {
cand_set.insert(do_query(row2, j));
}
int row3 = min(n, pivot_row * 3 / 2);
for (int j = 1; j <= n; j += max(1, n / 30)) {
cand_set.insert(do_query(row3, j));
}
vector<long long> candidates(cand_set.begin(), cand_set.end());
sort(candidates.begin(), candidates.end());
// Phase 3: Binary search over candidate values
int lo_idx = -1, hi_idx = (int)candidates.size();
int max_walks = max(1, min(20, 40000 / (2 * n)));
for (int w = 0; w < max_walks && hi_idx - lo_idx > 1; w++) {
int mid_idx = lo_idx + (hi_idx - lo_idx) / 2;
long long pivot = candidates[mid_idx];
auto [cnt, cut] = countLeq(pivot, jLo, jHi);
if (cnt >= k) {
hi_idx = mid_idx;
jHi = cut;
cHi = cnt;
max_val = pivot;
} else {
lo_idx = mid_idx;
jLo = cut;
cLo = cnt;
min_val = pivot;
}
long long W = cHi - cLo;
long long budget = 49500 - query_count;
if (W <= budget) break;
}
// Phase 4: Numeric binary search if candidate values weren't fine-grained enough
int extra_walks = max(1, min(15, (49000 - query_count) / (2 * n)));
for (int w = 0; w < extra_walks; w++) {
long long W = cHi - cLo;
long long budget = 49500 - query_count;
if (W <= budget) break;
if (min_val >= max_val) break;
long long mid_val = min_val + (max_val - min_val) / 2;
if (mid_val <= min_val) mid_val = min_val + 1;
if (mid_val >= max_val) break;
auto [cnt, cut] = countLeq(mid_val, jLo, jHi);
if (cnt >= k) {
jHi = cut;
cHi = cnt;
max_val = mid_val;
} else {
jLo = cut;
cLo = cnt;
min_val = mid_val;
}
}
// Phase 5: Enumerate
long long W = cHi - cLo;
long long rank = k - cLo;
if (W <= 0 || rank <= 0) return min_val;
vector<long long> cand;
cand.reserve(min((long long)50000, W));
for (int i = 1; i <= n; i++) {
for (int j = jLo[i] + 1; j <= jHi[i]; j++) {
cand.push_back(do_query(i, j));
}
}
if (rank > (long long)cand.size()) return max_val;
nth_element(cand.begin(), cand.begin() + (rank - 1), cand.end());
return cand[rank - 1];
}
};
int main() {
struct TestDef { string name; function<TestCase()> gen; };
vector<TestDef> tests;
tests.push_back({"additive n=100 k=5000", []{ return gen_additive(100, 5000); }});
tests.push_back({"mult n=100 k=5000", []{ return gen_multiplicative(100, 5000); }});
tests.push_back({"additive n=500 k=125000", []{ return gen_additive(500, 125000); }});
tests.push_back({"mult n=500 k=125000", []{ return gen_multiplicative(500, 125000); }});
tests.push_back({"random n=500 k=125000", []{ return gen_random_sorted(500, 125000); }});
tests.push_back({"additive n=2000 k=2000000", []{ return gen_additive(2000, 2000000); }});
tests.push_back({"mult n=2000 k=2000000", []{ return gen_multiplicative(2000, 2000000); }});
tests.push_back({"shifted n=2000 k=2000000", []{ return gen_shifted(2000, 2000000); }});
tests.push_back({"random n=2000 k=2000000", []{ return gen_random_sorted(2000, 2000000); }});
tests.push_back({"mult n=2000 k=100000", []{ return gen_multiplicative(2000, 100000); }});
tests.push_back({"mult n=2000 k=3900000", []{ return gen_multiplicative(2000, 3900000); }});
for (auto& t : tests) {
auto tc = t.gen();
Solver s(tc);
long long result = s.solve();
bool correct = (result == tc.answer);
int used = s.query_count;
double score = !correct ? 0.0 : (used <= tc.n ? 1.0 : (used >= 50000 ? 0.0 : (50000.0 - used) / (50000.0 - tc.n)));
printf("%-45s q=%6d %s score=%.4f\n", t.name.c_str(), used, correct ? "OK" : "WRONG", score);
}
}