25#include <boost/archive/binary_iarchive.hpp>
26#include <boost/archive/binary_oarchive.hpp>
27#include <boost/iostreams/device/array.hpp>
28#include <boost/iostreams/stream.hpp>
29#include <boost/serialization/string.hpp>
30#include <boost/serialization/vector.hpp>
47 std::vector<double>
const &A2) {
48 assert(A1.size() == A2.size());
49 std::vector<double> A_compressed(A1.size());
51 std::ranges::transform(A1, A2, A_compressed.begin(),
52 [](
double a,
double b) { return 0.5 * (a + b); });
60 [[maybe_unused]] std::vector<double>
const &A2) {
61 assert(A1.size() == A2.size());
62 std::vector<double> A_compressed(A2);
69 [[maybe_unused]] std::vector<double>
const &A2) {
70 assert(A1.size() == A2.size());
71 std::vector<double> A_compressed(A1);
76 std::vector<double>
const &B,
78 if (A.size() != B.size()) {
79 throw std::runtime_error(
80 "Error in scalar product: The vector sizes do not match");
83 auto const result = std::inner_product(A.begin(), A.end(), B.begin(), 0.0);
88 std::vector<double>
const &B,
90 std::vector<double> C(A.size());
91 if (A.size() != B.size()) {
92 throw std::runtime_error(
93 "Error in componentwise product: The vector sizes do not match");
96 std::ranges::transform(A, B, C.begin(), std::multiplies<>());
102 std::vector<double>
const &B,
104 std::vector<double> C(A.size() * B.size());
105 auto C_it = C.begin();
117 std::vector<double>
const &B,
119 if (A.size() != B.size()) {
120 throw std::runtime_error(
121 "Error in square distance componentwise: The vector sizes do not "
125 std::vector<double> C(A.size());
127 std::ranges::transform(A, B, C.begin(), [](
double a,
double b) ->
double {
128 return Utils::sqr(a - b);
136std::vector<double>
fcs_acf(std::vector<double>
const &A,
137 std::vector<double>
const &B,
139 if (A.size() != B.size()) {
140 throw std::runtime_error(
141 "Error in fcs_acf: The vector sizes do not match.");
144 auto const C_size = A.size() / 3u;
145 assert(3u * C_size == A.size());
147 std::vector<double> C{};
150 for (std::size_t i = 0u; i < C_size; i++) {
152 for (std::size_t j = 0u; j < 3u; j++) {
153 auto const a = A[3u * i + j];
154 auto const b = B[3u * i + j];
157 C.emplace_back(std::exp(acc));
163void Correlator::initialize_operations() {
166 if (m_tau_lin == 1) {
167 m_tau_lin =
static_cast<int>(std::ceil(m_tau_max / m_dt));
168 m_tau_lin += m_tau_lin % 2;
172 throw std::runtime_error(
"tau_lin must be >= 2");
176 throw std::runtime_error(
"tau_lin must be divisible by 2");
179 if (m_tau_max <= m_dt) {
180 throw std::runtime_error(
"tau_max must be >= delta_t (delta_N too large)");
183 if ((m_tau_max / m_dt) < m_tau_lin) {
184 m_hierarchy_depth = 1;
186 auto const operand = (m_tau_max / m_dt) /
double(m_tau_lin - 1);
187 assert(operand > 0.);
188 m_hierarchy_depth =
static_cast<int>(std::ceil(1. + std::log2(operand)));
193 dim_A = A_obs->n_values();
194 dim_B = B_obs->n_values();
197 throw std::runtime_error(
"dimension of first observable has to be >= 1");
200 throw std::runtime_error(
"dimension of second observable has to be >= 1");
204 if (corr_operation_name ==
"componentwise_product") {
206 m_shape = A_obs->shape();
209 }
else if (corr_operation_name ==
"tensor_product") {
210 m_dim_corr = dim_A * dim_B;
212 m_shape.emplace_back(dim_A);
213 m_shape.emplace_back(dim_B);
216 }
else if (corr_operation_name ==
"square_distance_componentwise") {
218 m_shape = A_obs->shape();
221 }
else if (corr_operation_name ==
"fcs_acf") {
225 throw std::runtime_error(
"missing parameter for fcs_acf: w_x w_y w_z");
228 m_correlation_args_input);
230 throw std::runtime_error(
"dimA must be divisible by 3 for fcs_acf");
231 m_dim_corr = dim_A / 3u;
232 m_shape = A_obs->shape();
233 if (m_shape.back() != 3u)
234 throw std::runtime_error(
235 "the last dimension of dimA must be 3 for fcs_acf");
238 }
else if (corr_operation_name ==
"scalar_product") {
241 m_shape.emplace_back(1u);
245 throw std::invalid_argument(
"correlation operation '" +
246 corr_operation_name +
"' not implemented");
250 if (compressA_name ==
"discard2") {
252 }
else if (compressA_name ==
"discard1") {
254 }
else if (compressA_name ==
"linear") {
257 throw std::invalid_argument(
"unknown compression method '" +
258 compressA_name +
"' for first observable");
261 if (compressB_name ==
"discard2") {
263 }
else if (compressB_name ==
"discard1") {
265 }
else if (compressB_name ==
"linear") {
268 throw std::invalid_argument(
"unknown compression method '" +
269 compressB_name +
"' for second observable");
273void Correlator::initialize_buffers() {
274 using index_type =
decltype(result)::index;
276 A.resize(std::array<int, 2>{{m_hierarchy_depth, m_tau_lin + 1}});
277 std::fill_n(A.data(), A.num_elements(), std::vector<double>(dim_A, 0));
278 B.resize(std::array<int, 2>{{m_hierarchy_depth, m_tau_lin + 1}});
279 std::fill_n(B.data(), B.num_elements(), std::vector<double>(dim_B, 0));
282 A_accumulated_average = std::vector<double>(dim_A, 0);
283 B_accumulated_average = std::vector<double>(dim_B, 0);
286 n_sweeps = std::vector<std::size_t>(n_result, 0);
287 n_vals = std::vector<long>(m_hierarchy_depth, 0);
289 result.resize(std::array<std::size_t, 2>{{n_result, m_dim_corr}});
290 for (index_type i = 0; i < static_cast<index_type>(n_result); i++) {
291 for (index_type j = 0; j < static_cast<index_type>(m_dim_corr); j++) {
296 newest = std::vector<long>(m_hierarchy_depth, m_tau_lin);
298 tau.resize(n_result);
299 for (
int i = 0; i < m_tau_lin + 1; i++) {
303 for (
int j = 1; j < m_hierarchy_depth; j++) {
304 for (
int k = 0; k < m_tau_lin / 2; k++) {
305 tau[m_tau_lin + 1 + (j - 1) * m_tau_lin / 2 + k] =
306 (k + (m_tau_lin / 2) + 1) * (1 << j);
313 throw std::runtime_error(
314 "No data can be added after finalize() was called.");
317 if (comm.rank() != 0) {
319 A_obs->operator()(comm);
320 if (A_obs != B_obs) {
321 B_obs->operator()(comm);
330 int highest_level_to_compress = -1;
337 auto const max_depth = m_hierarchy_depth - 1;
340 if (i >= max_depth or n_vals[i] <= m_tau_lin) {
343 auto const modulo = 1 << (i + 1);
344 auto const remainder = (t - (m_tau_lin + 1) * (modulo - 1) - 1) % modulo;
345 if (remainder != 0) {
348 highest_level_to_compress += 1;
356 for (
int i = highest_level_to_compress; i >= 0; i--) {
359 newest[i + 1] = (newest[i + 1] + 1) % (m_tau_lin + 1);
361 A[i + 1][newest[i + 1]] =
362 (*compressA)(A[i][(newest[i] + 1) % (m_tau_lin + 1)],
363 A[i][(newest[i] + 2) % (m_tau_lin + 1)]);
364 B[i + 1][newest[i + 1]] =
365 (*compressB)(B[i][(newest[i] + 1) % (m_tau_lin + 1)],
366 B[i][(newest[i] + 2) % (m_tau_lin + 1)]);
369 newest[0] = (newest[0] + 1) % (m_tau_lin + 1);
372 A[0][newest[0]] = A_obs->operator()(comm);
373 if (A_obs != B_obs) {
374 B[0][newest[0]] = B_obs->operator()(comm);
376 B[0][newest[0]] = A[0][newest[0]];
381 for (std::size_t k = 0; k < dim_A; k++) {
382 A_accumulated_average[k] += A[0][newest[0]][k];
385 for (std::size_t k = 0; k < dim_B; k++) {
386 B_accumulated_average[k] += B[0][newest[0]][k];
389 using index_type =
decltype(result)::index;
390 auto const tau =
static_cast<long>(m_tau_lin);
392 for (
long j = 0l; j < std::min(tau + 1l, n_vals[0]); j++) {
393 auto const index_new = newest[0];
394 auto const index_old = (newest[0] - j + tau + 1l) % (tau + 1l);
396 (corr_operation)(A[0][index_old], B[0][index_new], m_correlation_args);
397 assert(temp.size() == m_dim_corr);
400 for (index_type k = 0; k < static_cast<index_type>(m_dim_corr); k++) {
401 result[j][k] += temp[k];
405 for (
int i = 1; i < highest_level_to_compress + 2; i++) {
406 for (
long j = (tau + 1l) / 2l + 1l; j < std::min(tau + 1l, n_vals[i]);
408 auto const index_new = newest[i];
409 auto const index_old = (newest[i] - j + tau + 1l) % (tau + 1l);
410 auto const index_res =
411 tau +
static_cast<long>(i - 1) * tau / 2l + (j - tau / 2l + 1l) - 1l;
412 auto const temp = (corr_operation)(A[i][index_old], B[i][index_new],
414 assert(temp.size() == m_dim_corr);
416 n_sweeps[index_res]++;
417 for (index_type k = 0; k < static_cast<index_type>(m_dim_corr); k++) {
418 result[index_res][k] += temp[k];
425 using index_type =
decltype(result)::index;
427 throw std::runtime_error(
"Correlator::finalize() can only be called once.");
437 if (comm.rank() != 0) {
441 for (
int ll = 0; ll < m_hierarchy_depth - 1; ll++) {
443 if (n_vals[ll] > m_tau_lin + 1)
444 vals_ll = m_tau_lin + n_vals[ll] % 2;
446 vals_ll = n_vals[ll];
450 auto highest_level_to_compress = (vals_ll % 2) ? ll : -1;
455 auto const max_depth = m_hierarchy_depth - 1;
457 while (highest_level_to_compress > -1) {
458 if (i >= max_depth or n_vals[i] % 2 == 0 or n_vals[i] <= m_tau_lin) {
461 highest_level_to_compress += 1;
471 for (
int i = highest_level_to_compress; i >= ll; i--) {
474 newest[i + 1] = (newest[i + 1] + 1) % (m_tau_lin + 1);
477 (*compressA)(A[i][(newest[i] + 1) % (m_tau_lin + 1)],
478 A[i][(newest[i] + 2) % (m_tau_lin + 1)]);
479 (*compressB)(B[i][(newest[i] + 1) % (m_tau_lin + 1)],
480 B[i][(newest[i] + 2) % (m_tau_lin + 1)]);
482 newest[ll] = (newest[ll] + 1) % (m_tau_lin + 1);
484 auto const tau =
static_cast<long>(m_tau_lin);
486 for (
int i = ll + 1; i < highest_level_to_compress + 2; i++) {
487 for (
long j = (tau + 1l) / 2l + 1l; j < std::min(tau + 1l, n_vals[i]);
489 auto const index_new = newest[i];
490 auto const index_old = (newest[i] - j + tau + 1l) % (tau + 1l);
491 auto const index_res = tau +
static_cast<long>(i - 1) * tau / 2l +
492 (j - tau / 2l + 1l) - 1l;
494 auto const temp = (corr_operation)(A[i][index_old], B[i][index_new],
496 assert(temp.size() == m_dim_corr);
498 n_sweeps[index_res]++;
499 for (index_type k = 0; k < static_cast<index_type>(m_dim_corr); k++) {
500 result[index_res][k] += temp[k];
510 using index_type =
decltype(result)::index;
512 std::vector<double> res(n_result * m_dim_corr);
514 for (std::size_t i = 0; i < n_result; i++) {
515 auto const index =
static_cast<index_type
>(m_dim_corr * i);
516 for (index_type k = 0; k < static_cast<index_type>(m_dim_corr); k++) {
518 res[index + k] = result[
static_cast<index_type
>(i)][k] /
519 static_cast<double>(n_sweeps[i]);
527 std::vector<double> res(
n_values());
528 std::ranges::transform(tau, res.begin(),
529 [
dt = m_dt](
auto const &a) { return a * dt; });
534 std::stringstream ss;
535 boost::archive::binary_oarchive oa(ss);
540 oa << m_correlation_args_input;
547 oa << A_accumulated_average;
548 oa << B_accumulated_average;
555 namespace iostreams = boost::iostreams;
556 iostreams::array_source src(state.data(), state.size());
557 iostreams::stream<iostreams::array_source> ss(src);
558 boost::archive::binary_iarchive ia(ss);
563 ia >> m_correlation_args_input;
570 ia >> A_accumulated_average;
571 ia >> B_accumulated_average;
573 initialize_operations();
Vector implementation and trait types for boost qvm interoperability.
void const * m_system
for bookkeeping purposes
std::size_t n_values() const
std::string get_internal_state() const final
void set_internal_state(std::string const &) final
std::vector< double > get_lag_times() const
int finalize(boost::mpi::communicator const &comm)
At the end of data collection, go through the whole hierarchy and correlate data left there.
std::vector< double > get_correlation()
Return correlation result.
void update(boost::mpi::communicator const &comm) override
The function to process a new datapoint of A and B.
static DEVICE_QUALIFIER constexpr Vector< T, N > broadcast(typename Base::value_type const &value) noexcept
Create a vector that has all entries set to the same value.
std::vector< double > componentwise_product(std::vector< double > const &A, std::vector< double > const &B, Utils::Vector3d const &)
std::vector< double > tensor_product(std::vector< double > const &A, std::vector< double > const &B, Utils::Vector3d const &)
std::vector< double > compress_linear(std::vector< double > const &A1, std::vector< double > const &A2)
Compress computing arithmetic mean: A_compressed=(A1+A2)/2.
std::vector< double > scalar_product(std::vector< double > const &A, std::vector< double > const &B, Utils::Vector3d const &)
std::vector< double > compress_discard1(std::vector< double > const &A1, std::vector< double > const &A2)
Compress discarding the 1st argument and return the 2nd.
std::vector< double > compress_discard2(std::vector< double > const &A1, std::vector< double > const &A2)
Compress discarding the 2nd argument and return the 1st.
std::vector< double > fcs_acf(std::vector< double > const &A, std::vector< double > const &B, Utils::Vector3d const &wsquare)
std::vector< double > square_distance_componentwise(std::vector< double > const &A, std::vector< double > const &B, Utils::Vector3d const &)
DEVICE_QUALIFIER constexpr T sqr(T x)
Calculates the SQuaRe of x.
auto hadamard_product(Vector< T, N > const &a, Vector< U, N > const &b)