OR-Tools  9.2
update_row.cc
Go to the documentation of this file.
1 // Copyright 2010-2021 Google LLC
2 // Licensed under the Apache License, Version 2.0 (the "License");
3 // you may not use this file except in compliance with the License.
4 // You may obtain a copy of the License at
5 //
6 // http://www.apache.org/licenses/LICENSE-2.0
7 //
8 // Unless required by applicable law or agreed to in writing, software
9 // distributed under the License is distributed on an "AS IS" BASIS,
10 // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
11 // See the License for the specific language governing permissions and
12 // limitations under the License.
13 
15 
17 
18 namespace operations_research {
19 namespace glop {
20 
22  const CompactSparseMatrix& transposed_matrix,
23  const VariablesInfo& variables_info,
24  const RowToColMapping& basis,
25  const BasisFactorization& basis_factorization)
26  : matrix_(matrix),
27  transposed_matrix_(transposed_matrix),
28  variables_info_(variables_info),
29  basis_(basis),
30  basis_factorization_(basis_factorization),
31  unit_row_left_inverse_(),
32  non_zero_position_list_(),
33  non_zero_position_set_(),
34  coefficient_(),
35  compute_update_row_(true),
36  num_operations_(0),
37  parameters_(),
38  stats_() {}
39 
41  SCOPED_TIME_STAT(&stats_);
42  compute_update_row_ = true;
43 }
44 
46  return unit_row_left_inverse_;
47 }
48 
50  RowIndex leaving_row) {
51  Invalidate();
52  basis_factorization_.TemporaryLeftSolveForUnitRow(RowToColIndex(leaving_row),
53  &unit_row_left_inverse_);
54  return unit_row_left_inverse_;
55 }
56 
57 void UpdateRow::ComputeUnitRowLeftInverse(RowIndex leaving_row) {
58  SCOPED_TIME_STAT(&stats_);
59  basis_factorization_.LeftSolveForUnitRow(RowToColIndex(leaving_row),
60  &unit_row_left_inverse_);
61 
62  // TODO(user): Refactorize if the estimated accuracy is above a threshold.
63  IF_STATS_ENABLED(stats_.unit_row_left_inverse_accuracy.Add(
64  matrix_.ColumnScalarProduct(basis_[leaving_row],
65  unit_row_left_inverse_.values) -
66  1.0));
67  IF_STATS_ENABLED(stats_.unit_row_left_inverse_density.Add(
68  Density(unit_row_left_inverse_.values)));
69 }
70 
71 void UpdateRow::ComputeUpdateRow(RowIndex leaving_row) {
72  if (!compute_update_row_ && update_row_computed_for_ == leaving_row) return;
73  compute_update_row_ = false;
74  update_row_computed_for_ = leaving_row;
75  ComputeUnitRowLeftInverse(leaving_row);
76  SCOPED_TIME_STAT(&stats_);
77 
78  if (parameters_.use_transposed_matrix()) {
79  // Number of entries that ComputeUpdatesRowWise() will need to look at.
80  EntryIndex num_row_wise_entries(0);
81 
82  // Because we are about to do an expensive matrix-vector product, we make
83  // sure we drop small entries in the vector for the row-wise algorithm. We
84  // also computes its non-zeros to simplify the code below.
85  //
86  // TODO(user): So far we didn't generalize the use of drop tolerances
87  // everywhere in the solver, so we make sure to not modify
88  // unit_row_left_inverse_ that is also used elsewhere. However, because of
89  // that, we will not get the exact same result depending on the algortihm
90  // used below because the ComputeUpdatesColumnWise() will still use these
91  // small entries (no complexity changes).
92  const Fractional drop_tolerance = parameters_.drop_tolerance();
93  unit_row_left_inverse_filtered_non_zeros_.clear();
94  if (unit_row_left_inverse_.non_zeros.empty()) {
95  const ColIndex size = unit_row_left_inverse_.values.size();
96  for (ColIndex col(0); col < size; ++col) {
97  if (std::abs(unit_row_left_inverse_.values[col]) > drop_tolerance) {
98  unit_row_left_inverse_filtered_non_zeros_.push_back(col);
99  num_row_wise_entries += transposed_matrix_.ColumnNumEntries(col);
100  }
101  }
102  } else {
103  for (const auto e : unit_row_left_inverse_) {
104  if (std::abs(e.coefficient()) > drop_tolerance) {
105  unit_row_left_inverse_filtered_non_zeros_.push_back(e.column());
106  num_row_wise_entries +=
107  transposed_matrix_.ColumnNumEntries(e.column());
108  }
109  }
110  }
111 
112  // Number of entries that ComputeUpdatesColumnWise() will need to look at.
113  const EntryIndex num_col_wise_entries =
114  variables_info_.GetNumEntriesInRelevantColumns();
115 
116  // Note that the thresholds were chosen (more or less) from the result of
117  // the microbenchmark tests of this file in September 2013.
118  // TODO(user): automate the computation of these constants at run-time?
119  const double row_wise = static_cast<double>(num_row_wise_entries.value());
120  if (row_wise < 0.5 * static_cast<double>(num_col_wise_entries.value())) {
121  if (row_wise < 1.1 * static_cast<double>(matrix_.num_cols().value())) {
122  ComputeUpdatesRowWiseHypersparse();
123 
124  // We use a multiplicative factor because these entries are often widely
125  // spread in memory. There is also some overhead to each fp operations.
126  num_operations_ +=
127  5 * num_row_wise_entries.value() + matrix_.num_cols().value() / 64;
128  } else {
129  ComputeUpdatesRowWise();
130  num_operations_ +=
131  num_row_wise_entries.value() + matrix_.num_rows().value();
132  }
133  } else {
134  ComputeUpdatesColumnWise();
135  num_operations_ +=
136  num_col_wise_entries.value() + matrix_.num_cols().value();
137  }
138  } else {
139  ComputeUpdatesColumnWise();
140  num_operations_ +=
141  variables_info_.GetNumEntriesInRelevantColumns().value() +
142  matrix_.num_cols().value();
143  }
144  IF_STATS_ENABLED(stats_.update_row_density.Add(
145  static_cast<double>(non_zero_position_list_.size()) /
146  static_cast<double>(matrix_.num_cols().value())));
147 }
148 
150  const std::string& algorithm) {
151  unit_row_left_inverse_.values = lhs;
152  ComputeNonZeros(lhs, &unit_row_left_inverse_filtered_non_zeros_);
153  if (algorithm == "column") {
154  ComputeUpdatesColumnWise();
155  } else if (algorithm == "row") {
156  ComputeUpdatesRowWise();
157  } else if (algorithm == "row_hypersparse") {
158  ComputeUpdatesRowWiseHypersparse();
159  } else {
160  LOG(DFATAL) << "Unknown algorithm in ComputeUpdateRowForBenchmark(): '"
161  << algorithm << "'";
162  }
163 }
164 
165 const DenseRow& UpdateRow::GetCoefficients() const { return coefficient_; }
166 
168  return non_zero_position_list_;
169 }
170 
172  parameters_ = parameters;
173 }
174 
175 // This is optimized for the case when the total number of entries is about
176 // the same as, or greater than, the number of columns.
177 void UpdateRow::ComputeUpdatesRowWise() {
178  SCOPED_TIME_STAT(&stats_);
179  const ColIndex num_cols = matrix_.num_cols();
180  coefficient_.AssignToZero(num_cols);
181  for (ColIndex col : unit_row_left_inverse_filtered_non_zeros_) {
182  const Fractional multiplier = unit_row_left_inverse_[col];
183  for (const EntryIndex i : transposed_matrix_.Column(col)) {
184  const ColIndex pos = RowToColIndex(transposed_matrix_.EntryRow(i));
185  coefficient_[pos] += multiplier * transposed_matrix_.EntryCoefficient(i);
186  }
187  }
188 
189  non_zero_position_list_.clear();
190  const Fractional drop_tolerance = parameters_.drop_tolerance();
191  for (const ColIndex col : variables_info_.GetIsRelevantBitRow()) {
192  if (std::abs(coefficient_[col]) > drop_tolerance) {
193  non_zero_position_list_.push_back(col);
194  }
195  }
196 }
197 
198 // This is optimized for the case when the total number of entries is smaller
199 // than the number of columns.
200 void UpdateRow::ComputeUpdatesRowWiseHypersparse() {
201  SCOPED_TIME_STAT(&stats_);
202  const ColIndex num_cols = matrix_.num_cols();
203  non_zero_position_set_.ClearAndResize(num_cols);
204  coefficient_.resize(num_cols, 0.0);
205  for (ColIndex col : unit_row_left_inverse_filtered_non_zeros_) {
206  const Fractional multiplier = unit_row_left_inverse_[col];
207  for (const EntryIndex i : transposed_matrix_.Column(col)) {
208  const ColIndex pos = RowToColIndex(transposed_matrix_.EntryRow(i));
209  const Fractional v = multiplier * transposed_matrix_.EntryCoefficient(i);
210  if (!non_zero_position_set_.IsSet(pos)) {
211  // Note that we could create the non_zero_position_list_ here, but we
212  // prefer to keep the non-zero positions sorted, so using the bitset is
213  // a good alernative. Of course if the solution is really really sparse,
214  // then sorting non_zero_position_list_ will be faster.
215  coefficient_[pos] = v;
216  non_zero_position_set_.Set(pos);
217  } else {
218  coefficient_[pos] += v;
219  }
220  }
221  }
222 
223  // Only keep in non_zero_position_set_ the relevant positions.
224  non_zero_position_set_.Intersection(variables_info_.GetIsRelevantBitRow());
225  non_zero_position_list_.clear();
226  const Fractional drop_tolerance = parameters_.drop_tolerance();
227  for (const ColIndex col : non_zero_position_set_) {
228  // TODO(user): Since the solution is really sparse, maybe storing the
229  // non-zero coefficients contiguously in a vector is better than keeping
230  // them as they are. Note however that we will iterate only twice on the
231  // update row coefficients during an iteration.
232  if (std::abs(coefficient_[col]) > drop_tolerance) {
233  non_zero_position_list_.push_back(col);
234  }
235  }
236 }
237 
238 // Note that we use the same algo as ComputeUpdatesColumnWise() here. The
239 // others version might be faster, but this is called only once per solve, so
240 // it shouldn't be too bad.
241 void UpdateRow::RecomputeFullUpdateRow(RowIndex leaving_row) {
242  CHECK(!compute_update_row_);
243  const ColIndex num_cols = matrix_.num_cols();
244  const Fractional drop_tolerance = parameters_.drop_tolerance();
245  coefficient_.resize(num_cols, 0.0);
246  non_zero_position_list_.clear();
247 
248  // Fills the only position at one in the basic columns.
249  coefficient_[basis_[leaving_row]] = 1.0;
250  non_zero_position_list_.push_back(basis_[leaving_row]);
251 
252  // Fills the non-basic column.
253  for (const ColIndex col : variables_info_.GetNotBasicBitRow()) {
254  const Fractional coeff =
255  matrix_.ColumnScalarProduct(col, unit_row_left_inverse_.values);
256  if (std::abs(coeff) > drop_tolerance) {
257  non_zero_position_list_.push_back(col);
258  coefficient_[col] = coeff;
259  }
260  }
261 }
262 
263 void UpdateRow::ComputeUpdatesColumnWise() {
264  SCOPED_TIME_STAT(&stats_);
265 
266  const ColIndex num_cols = matrix_.num_cols();
267  const Fractional drop_tolerance = parameters_.drop_tolerance();
268  coefficient_.resize(num_cols, 0.0);
269  non_zero_position_list_.clear();
270  for (const ColIndex col : variables_info_.GetIsRelevantBitRow()) {
271  // Coefficient of the column right inverse on the 'leaving_row'.
272  const Fractional coeff =
273  matrix_.ColumnScalarProduct(col, unit_row_left_inverse_.values);
274  // Nothing to do if 'coeff' is (almost) zero which does happen due to
275  // sparsity. Note that it shouldn't be too bad to use a non-zero drop
276  // tolerance here because even if we introduce some precision issues, the
277  // quantities updated by this update row will eventually be recomputed.
278  if (std::abs(coeff) > drop_tolerance) {
279  non_zero_position_list_.push_back(col);
280  coefficient_[col] = coeff;
281  }
282  }
283 }
284 
285 } // namespace glop
286 } // namespace operations_research
#define CHECK(condition)
Definition: base/logging.h:495
ColIndex RowToColIndex(RowIndex row)
Definition: lp_types.h:49
::util::IntegerRange< EntryIndex > Column(ColIndex col) const
Definition: sparse.h:363
const DenseRow & GetCoefficients() const
Definition: update_row.cc:165
RowIndex EntryRow(EntryIndex i) const
Definition: sparse.h:367
void Intersection(const Bitset64< IndexType > &other)
Definition: bitset.h:543
const DenseBitRow & GetNotBasicBitRow() const
void LeftSolveForUnitRow(ColIndex j, ScatteredRow *y) const
#define LOG(severity)
Definition: base/logging.h:420
ColIndex col
Definition: markowitz.cc:183
#define SCOPED_TIME_STAT(stats)
Definition: stats.h:438
EntryIndex ColumnNumEntries(ColIndex col) const
Definition: sparse.h:340
void ComputeNonZeros(const StrictITIVector< IndexType, Fractional > &input, std::vector< IndexType > *non_zeros)
void TemporaryLeftSolveForUnitRow(ColIndex j, ScatteredRow *y) const
void ComputeUpdateRow(RowIndex leaving_row)
Definition: update_row.cc:71
void ClearAndResize(IndexType size)
Definition: bitset.h:440
StrictITIVector< Index, Fractional > values
std::vector< ColIndex > ColIndexVector
Definition: lp_types.h:312
Fractional EntryCoefficient(EntryIndex i) const
Definition: sparse.h:366
Fractional ColumnScalarProduct(ColIndex col, const DenseRow &vector) const
Definition: sparse.h:387
const ColIndexVector & GetNonZeroPositions() const
Definition: update_row.cc:167
double Density(const DenseRow &row)
const ScatteredRow & ComputeAndGetUnitRowLeftInverse(RowIndex leaving_row)
Definition: update_row.cc:49
void ComputeUnitRowLeftInverse(RowIndex leaving_row)
Definition: update_row.cc:57
bool IsSet(IndexType i) const
Definition: bitset.h:485
Collection of objects used to extend the Constraint Solver library.
SatParameters parameters
void ComputeUpdateRowForBenchmark(const DenseRow &lhs, const std::string &algorithm)
Definition: update_row.cc:149
const ScatteredRow & GetUnitRowLeftInverse() const
Definition: update_row.cc:45
void RecomputeFullUpdateRow(RowIndex leaving_row)
Definition: update_row.cc:241
UpdateRow(const CompactSparseMatrix &matrix, const CompactSparseMatrix &transposed_matrix, const VariablesInfo &variables_info, const RowToColMapping &basis, const BasisFactorization &basis_factorization)
Definition: update_row.cc:21
void Set(IndexType i)
Definition: bitset.h:495
void SetParameters(const GlopParameters &parameters)
Definition: update_row.cc:171
const DenseBitRow & GetIsRelevantBitRow() const
#define IF_STATS_ENABLED(instructions)
Definition: stats.h:437