DatetimeArray#
-
class pandas::DatetimeArray#
Extension array type for specialized data storage.
Example#
#include <pandas/pandas.h>
using namespace pandas;
// Use DatetimeArray
DatetimeArray obj;
// ... operations ...
Constructors#
Signature |
Location |
Example |
|---|---|---|
|
pd_datetime_array.h:97 |
|
|
pd_datetime_array.h:123 |
|
|
pd_datetime_array.h:141 |
|
|
pd_datetime_array.h:189 |
|
|
pd_datetime_array.h:210 |
Construction#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
static DatetimeArray |
pd_datetime_array.h:486 |
|
|
DatetimeArray |
pd_datetime_array.h:256 |
Indexing / Selection#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
numpy::datetime64 |
pd_datetime_array.h:393 |
|
|
const numpy::NDArray<numpy::bool_>& |
pd_datetime_array.h:373 |
|
|
DatetimeArray |
pd_datetime_array.h:440 |
Data Manipulation#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
DatetimeArray |
pd_datetime_array.h:538 |
Missing Data#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
DatetimeArray |
pd_datetime_array.h:523 |
|
|
numpy::NDArray<numpy::bool_> |
pd_datetime_array.h:415 |
|
|
numpy::NDArray<numpy::bool_> |
pd_datetime_array.h:422 |
Statistics#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
size_t |
pd_datetime_array.h:586 |
|
|
std::optional<numpy::datetime64> |
pd_datetime_array.h:893 |
|
|
std::optional<numpy::datetime64> |
pd_datetime_array.h:884 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:982 |
Comparison#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
size_t |
pd_datetime_array.h:330 |
Sorting#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
numpy::NDArray<size_t> |
pd_datetime_array.h:810 |
Combining#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
static DatetimeArray |
pd_datetime_array.h:494 |
Time Series#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
DatetimeArray |
pd_datetime_array.h:1449 |
|
|
DatetimeArray |
pd_datetime_array.h:1463 |
|
|
DatetimeArray |
pd_datetime_array.h:1299 |
|
|
DatetimeArray |
pd_datetime_array.h:1421 |
I/O#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
std::string |
pd_datetime_array.h:1485 |
Conversion#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
DatetimeArray |
pd_datetime_array.h:433 |
Set Operations#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
DatetimeArray |
pd_datetime_array.h:748 |
Type Checking#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
BooleanArray |
pd_datetime_array.h:1208 |
|
|
BooleanArray |
pd_datetime_array.h:1103 |
|
|
BooleanArray |
pd_datetime_array.h:1084 |
|
|
bool |
pd_datetime_array.h:404 |
|
|
BooleanArray |
pd_datetime_array.h:1146 |
|
|
BooleanArray |
pd_datetime_array.h:1125 |
|
|
bool |
pd_datetime_array.h:351 |
|
|
BooleanArray |
pd_datetime_array.h:1189 |
|
|
BooleanArray |
pd_datetime_array.h:1170 |
Other Methods#
Signature |
Return Type |
Location |
Example |
|---|---|---|---|
|
std::optional<size_t> |
pd_datetime_array.h:862 |
|
|
std::optional<size_t> |
pd_datetime_array.h:842 |
|
|
const numpy::NDArray<int64_t>& |
pd_datetime_array.h:366 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:944 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:1020 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:1041 |
|
|
void |
pd_datetime_array.h:1535 |
|
|
numpy::datetime64 |
pd_datetime_array.h:224 |
|
|
dtype_type |
pd_datetime_array.h:288 |
|
|
bool |
pd_datetime_array.h:323 |
|
|
std::pair<numpy::NDArray<numpy::int64>, DatetimeArray> |
pd_datetime_array.h:774 |
|
|
bool |
pd_datetime_array.h:599 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:963 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:925 |
|
|
size_t |
pd_datetime_array.h:302 |
|
|
constexpr int |
pd_datetime_array.h:309 |
|
|
DatetimeArray |
pd_datetime_array.h:1272 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:1060 |
|
|
std::string |
pd_datetime_array.h:1502 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:1001 |
|
|
std::vector<size_t> |
pd_datetime_array.h:316 |
|
|
size_t |
pd_datetime_array.h:295 |
|
|
pd_datetime_array.h:1326 |
||
|
pd_datetime_array.h:1382 |
||
|
pd_datetime_array.h:1387 |
||
|
pd_datetime_array.h:1403 |
||
|
pd_datetime_array.h:1407 |
||
|
pd_datetime_array.h:1412 |
||
|
std::shared_ptr<numpy::TimezoneInfo> |
pd_datetime_array.h:344 |
|
|
numpy::DateTimeUnit |
pd_datetime_array.h:337 |
|
|
void |
pd_datetime_array.h:1515 |
|
|
IntegerArray<numpy::int32> |
pd_datetime_array.h:906 |
Internal Methods#
2 internal methods (prefixed with underscore)
Code Examples#
The following examples are extracted from the test suite.
from_timestamps (pd_test_extension_array.cpp:9)
1// pd_test_extension_array.cpp — L3 step L3.15 + Fix A storage-flip extensions
2//
3// Storage invariants and round-trip integrity for pandas::DatetimeArray and
4// pandas::TimedeltaArray after the Fix A storage flip
5// (do/plan_L3_fix_a_storage_flip.md, applied 2026-05-04).
6//
7// Verifies:
8// - sizeof(int64_t) == 8 (storage element size invariant)
9// - DatetimeArray::from_timestamps() round-trips a vector<optional<Timestamp>>
10// - NaT slots are preserved through the round-trip (mask stays consistent)
11// - tz-aware uniform-tz construction produces a non-null tz_ field
12// - Boxing reconstruction via getElementAt() recovers the input ns values
13// - Fix A storage shape: data() returns NDArray<int64_t> (8 B/elem, ns count)
14// - NaT sentinel: INT64_MIN round-trips through the boxing layer
15// - All 4 linear units (s/ms/us/ns) round-trip through ns-canonical storage
16// - Tz-aware boxing reconstruction (UTC, US/Eastern, +05:30) preserves tz
17
18#include "../pandas/pd_datetime_array.h"
19#include "../pandas/pd_timedelta_array.h"
at (pd_test_1_all.cpp:6581)
6571 // Test isna/notna with float data
6572 {
6573 std::map<std::string, std::vector<numpy::float64>> float_data;
6574 float_data["X"] = {1.0, std::nan(""), 3.0};
6575 float_data["Y"] = {4.0, 5.0, std::nan("")};
6576 pandas::DataFrame df_na(float_data);
6577
6578 auto na_mask = df_na.isna();
6579 // Row 1, col 0 (X) should be NA
6580 if (!na_mask.getElementAt({1, 0})) {
6581 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : isna at (1,0) should be true" << std::endl;
6582 throw std::runtime_error("pd_test_dataframe_manipulation failed: isna at (1,0)");
6583 }
6584 // Row 2, col 1 (Y) should be NA
6585 if (!na_mask.getElementAt({2, 1})) {
6586 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : isna at (2,1) should be true" << std::endl;
6587 throw std::runtime_error("pd_test_dataframe_manipulation failed: isna at (2,1)");
6588 }
6589 // Row 0, col 0 should NOT be NA
6590 if (na_mask.getElementAt({0, 0})) {
6591 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : isna at (0,0) should be false" << std::endl;
mask (pd_test_1_all.cpp:9119)
9109void pd_test_datetime_mixin_array_constructor() {
9110 std::cout << "========= DatetimeTDMixin array constructor =========================";
9111
9112 // Create DatetimeArray with some values
9113 numpy::NDArray<numpy::datetime64> data(std::vector<size_t>{3});
9114 data.setElementAt({0}, numpy::datetime64(1000000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2001
9115 data.setElementAt({1}, numpy::datetime64(1500000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2017
9116 data.setElementAt({2}, numpy::datetime64(1600000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2020
9117
9118 numpy::NDArray<numpy::bool_> mask(std::vector<size_t>{3});
9119 mask.setElementAt({0}, numpy::bool_(false));
9120 mask.setElementAt({1}, numpy::bool_(false));
9121 mask.setElementAt({2}, numpy::bool_(false));
9122
9123 pandas::DatetimeArray arr(data, mask);
9124 pandas::DatetimeTDMixin idx(arr, "timestamps");
9125
9126 bool passed = (idx.size() == 3 && !idx.empty() &&
9127 idx.name().has_value() && *idx.name() == "timestamps" &&
9128 idx.inferred_type() == "datetime");
take (pd_test_1_all.cpp:5903)
5893// Inherited Operations Tests
5894// ============================================================================
5895
5896void pd_test_categorical_index_take() {
5897 std::cout << "========= inherited take ==============================";
5898
5899 pandas::CategoricalArray arr({"a", "b", "c", "d"});
5900 pandas::CategoricalIndex idx(arr);
5901
5902 std::vector<size_t> indices = {0, 2, 3};
5903 pandas::ExtensionIndex<pandas::CategoricalArray> taken = idx.take(indices);
5904
5905 bool passed = (taken.size() == 3);
5906 if (!passed) {
5907 std::cout << " [FAIL] : in pd_test_categorical_index_take()" << std::endl;
5908 throw std::runtime_error("pd_test_categorical_index_take failed");
5909 }
5910
5911 std::cout << " -> tests passed" << std::endl;
5912}
dropna (pd_test_1_all.cpp:531)
521 }
522
523 // Test isna array
524 numpy::NDArray<numpy::bool_> na_mask = arr.isna();
525 if (na_mask.getSize() != 4) {
526 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : isna size != 4" << std::endl;
527 throw std::runtime_error("pd_test_categorical_array_na_handling failed: isna size != 4");
528 }
529
530 // Test dropna
531 pandas::CategoricalArray dropped = arr.dropna();
532 if (dropped.size() != 2) {
533 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : dropna size != 2" << std::endl;
534 throw std::runtime_error("pd_test_categorical_array_na_handling failed: dropna size != 2");
535 }
536
537 // Test fillna (fill with existing category)
538 pandas::CategoricalArray filled = arr.fillna("a"); // 'a' is in categories
539 if (filled.has_na()) {
540 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : fillna should have no NA" << std::endl;
541 throw std::runtime_error("pd_test_categorical_array_na_handling failed: fillna should have no NA");
fillna (pd_test_1_all.cpp:537)
527 throw std::runtime_error("pd_test_categorical_array_na_handling failed: isna size != 4");
528 }
529
530 // Test dropna
531 pandas::CategoricalArray dropped = arr.dropna();
532 if (dropped.size() != 2) {
533 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : dropna size != 2" << std::endl;
534 throw std::runtime_error("pd_test_categorical_array_na_handling failed: dropna size != 2");
535 }
536
537 // Test fillna (fill with existing category)
538 pandas::CategoricalArray filled = arr.fillna("a"); // 'a' is in categories
539 if (filled.has_na()) {
540 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : fillna should have no NA" << std::endl;
541 throw std::runtime_error("pd_test_categorical_array_na_handling failed: fillna should have no NA");
542 }
543
544 std::cout << " -> tests passed" << std::endl;
545 }
546
547 void pd_test_categorical_array_add_categories() {
isna (pd_test_1_all.cpp:524)
514 throw std::runtime_error("pd_test_categorical_array_na_handling failed: has_na() should be true");
515 }
516
517 // Test count (non-NA)
518 if (arr.count() != 2) {
519 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : count() != 2" << std::endl;
520 throw std::runtime_error("pd_test_categorical_array_na_handling failed: count() != 2");
521 }
522
523 // Test isna array
524 numpy::NDArray<numpy::bool_> na_mask = arr.isna();
525 if (na_mask.getSize() != 4) {
526 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : isna size != 4" << std::endl;
527 throw std::runtime_error("pd_test_categorical_array_na_handling failed: isna size != 4");
528 }
529
530 // Test dropna
531 pandas::CategoricalArray dropped = arr.dropna();
532 if (dropped.size() != 2) {
533 std::cout << " [FAIL] : in pd_test_categorical_array_na_handling() : dropna size != 2" << std::endl;
534 throw std::runtime_error("pd_test_categorical_array_na_handling failed: dropna size != 2");
notna (pd_test_1_all.cpp:6595)
6585 if (!na_mask.getElementAt({2, 1})) {
6586 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : isna at (2,1) should be true" << std::endl;
6587 throw std::runtime_error("pd_test_dataframe_manipulation failed: isna at (2,1)");
6588 }
6589 // Row 0, col 0 should NOT be NA
6590 if (na_mask.getElementAt({0, 0})) {
6591 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : isna at (0,0) should be false" << std::endl;
6592 throw std::runtime_error("pd_test_dataframe_manipulation failed: isna at (0,0)");
6593 }
6594
6595 auto notna_mask = df_na.notna();
6596 if (notna_mask.getElementAt({1, 0})) {
6597 std::cout << " [FAIL] : in pd_test_dataframe_manipulation() : notna at (1,0) should be false" << std::endl;
6598 throw std::runtime_error("pd_test_dataframe_manipulation failed: notna at (1,0)");
6599 }
6600 }
6601
6602 // Test fillna
6603 {
6604 std::map<std::string, std::vector<numpy::float64>> float_data;
6605 float_data["X"] = {1.0, std::nan(""), 3.0};
count (pd_test_1_all.cpp:66)
56 if (arr.is_na(0)) {
57 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : is_na(0) should be false" << std::endl;
58 throw std::runtime_error("pd_test_boolean_array_na_handling failed: is_na(0) should be false");
59 }
60
61 if (!arr.has_na()) {
62 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : has_na() should be true" << std::endl;
63 throw std::runtime_error("pd_test_boolean_array_na_handling failed: has_na() should be true");
64 }
65
66 if (arr.count() != 2) {
67 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : count() should be 2" << std::endl;
68 throw std::runtime_error("pd_test_boolean_array_na_handling failed: count() should be 2");
69 }
70
71 std::cout << " -> tests passed" << std::endl;
72 }
73
74 void pd_test_boolean_array_kleene_and() {
75 std::cout << "========= BooleanArray: Kleene AND ======================= ";
max (pd_test_1_all.cpp:771)
761 pandas::CategoricalArray arr = pandas::CategoricalArray::from_codes(codes, cats, true); // ordered
762
763 // Test min
764 std::optional<std::string> min_val = arr.min();
765 if (!min_val.has_value() || *min_val != "low") {
766 std::cout << " [FAIL] : in pd_test_categorical_array_ordered_operations() : min != 'low'" << std::endl;
767 throw std::runtime_error("pd_test_categorical_array_ordered_operations failed: min != 'low'");
768 }
769
770 // Test max
771 std::optional<std::string> max_val = arr.max();
772 if (!max_val.has_value() || *max_val != "high") {
773 std::cout << " [FAIL] : in pd_test_categorical_array_ordered_operations() : max != 'high'" << std::endl;
774 throw std::runtime_error("pd_test_categorical_array_ordered_operations failed: max != 'high'");
775 }
776
777 // Test unordered throws for min/max
778 pandas::CategoricalArray unordered = arr.as_unordered();
779 bool threw = false;
780 try {
781 unordered.min();
min (pd_test_1_all.cpp:764)
754 }
755
756 void pd_test_categorical_array_ordered_operations() {
757 std::cout << "========= CategoricalArray: ordered operations (min/max) ======================= ";
758
759 std::vector<std::string> cats = {"low", "medium", "high"};
760 std::vector<numpy::int32> codes = {0, 2, 1, 0, -1}; // low, high, medium, low, NA
761 pandas::CategoricalArray arr = pandas::CategoricalArray::from_codes(codes, cats, true); // ordered
762
763 // Test min
764 std::optional<std::string> min_val = arr.min();
765 if (!min_val.has_value() || *min_val != "low") {
766 std::cout << " [FAIL] : in pd_test_categorical_array_ordered_operations() : min != 'low'" << std::endl;
767 throw std::runtime_error("pd_test_categorical_array_ordered_operations failed: min != 'low'");
768 }
769
770 // Test max
771 std::optional<std::string> max_val = arr.max();
772 if (!max_val.has_value() || *max_val != "high") {
773 std::cout << " [FAIL] : in pd_test_categorical_array_ordered_operations() : max != 'high'" << std::endl;
774 throw std::runtime_error("pd_test_categorical_array_ordered_operations failed: max != 'high'");
minute (pd_test_1_all.cpp:7505)
7495 std::cout << "========= minute property =============================";
7496
7497 std::vector<std::optional<numpy::datetime64>> values = {
7498 make_dt(0), // Minute 0
7499 make_dt(30 * NS_PER_MIN), // Minute 30
7500 make_dt(59 * NS_PER_MIN) // Minute 59
7501 };
7502 pandas::DatetimeArray arr(values);
7503 pandas::DatetimeIndex idx(arr);
7504
7505 auto minutes = idx.minute();
7506
7507 bool passed = (minutes.size() == 3);
7508 auto m0 = minutes[0];
7509 auto m1 = minutes[1];
7510 auto m2 = minutes[2];
7511 passed = passed && m0.has_value() && *m0 == 0;
7512 passed = passed && m1.has_value() && *m1 == 30;
7513 passed = passed && m2.has_value() && *m2 == 59;
7514
7515 if (!passed) {
len (pd_test_3_all.cpp:20867)
20857 auto title_result = s.str().title();
20858 if (title_result[0] != "Hello World" || title_result[1] != "Hello World" || title_result[2] != "Hello World") {
20859 std::cout << " [FAIL] : title() failed" << std::endl;
20860 throw std::runtime_error("pd_test_str_capitalize_title: title() failed");
20861 }
20862
20863 std::cout << " -> tests passed" << std::endl;
20864}
20865
20866// ============================================================================
20867// Test str().len()
20868// ============================================================================
20869
20870void pd_test_str_len() {
20871 std::cout << "========= Series.str().len() ============================";
20872
20873 pandas::Series<std::string> s({"a", "bb", "ccc", ""});
20874
20875 auto lens = s.str().len();
20876 if (lens[0] != 1 || lens[1] != 2 || lens[2] != 3 || lens[3] != 0) {
20877 std::cout << " [FAIL] : len() failed" << std::endl;
argsort (pd_test_1_all.cpp:1304)
1294 std::cout << "========= DatetimeArray: sorting ======================= ";
1295
1296 pandas::DatetimeArray arr(std::vector<std::string>{
1297 "2023-06-15",
1298 "NaT",
1299 "2023-01-01",
1300 "2023-12-31"
1301 });
1302
1303 // argsort ascending
1304 auto indices = arr.argsort(true, "last");
1305 // Expected order: 2023-01-01(2), 2023-06-15(0), 2023-12-31(3), NaT(1)
1306 if (indices.getElementAt({0}) != 2) {
1307 std::cout << " [FAIL] : argsort: first should be index 2 (2023-01-01)" << std::endl;
1308 throw std::runtime_error("pd_test_datetime_array_sorting failed: argsort first");
1309 }
1310 if (indices.getElementAt({3}) != 1) {
1311 std::cout << " [FAIL] : argsort: last should be index 1 (NaT)" << std::endl;
1312 throw std::runtime_error("pd_test_datetime_array_sorting failed: NaT position");
1313 }
concat (pd_test_1_all.cpp:17717)
17707}
17708
17709void pd_test_period_index_concat() {
17710 std::cout << "========= concat factory ==============================";
17711
17712 std::vector<int64_t> ordinals1 = {0, 1};
17713 std::vector<int64_t> ordinals2 = {2, 3};
17714 pandas::PeriodIndex idx1(ordinals1, "D");
17715 pandas::PeriodIndex idx2(ordinals2, "D");
17716
17717 pandas::PeriodIndex concatenated = pandas::PeriodIndex::concat({idx1, idx2});
17718
17719 bool passed = (concatenated.size() == 4);
17720 if (!passed) {
17721 std::cout << " [FAIL] : in pd_test_period_index_concat()" << std::endl;
17722 throw std::runtime_error("pd_test_period_index_concat failed");
17723 }
17724
17725 std::cout << " -> tests passed" << std::endl;
17726}
tz_convert (pd_test_2_all.cpp:17874)
17864 std::cout << "====================================== [OK] pd_test_transform test suite ========================== " << std::endl;
17865 return 0;
17866 }
17867
17868} // namespace dataframe_tests
17869// ------------------- pd_test_transform.cpp (end) -----------------------------
17870
17871// ------------------- pd_test_tz_convert.cpp (start) -----------------------------
17872// dataframe_tests/pd_test_tz_convert.cpp
17873// Test for DataFrame.tz_convert() method
17874
17875#include <iostream>
17876#include <stdexcept>
17877#include <cmath>
17878#include "../pandas/pd_dataframe.h"
17879
17880namespace dataframe_tests {
17881 namespace dataframe_tests_tz_convert {
17882
17883 void pd_test_tz_convert_basic() {
tz_convert (pd_test_2_all.cpp:17874)
17864 std::cout << "====================================== [OK] pd_test_transform test suite ========================== " << std::endl;
17865 return 0;
17866 }
17867
17868} // namespace dataframe_tests
17869// ------------------- pd_test_transform.cpp (end) -----------------------------
17870
17871// ------------------- pd_test_tz_convert.cpp (start) -----------------------------
17872// dataframe_tests/pd_test_tz_convert.cpp
17873// Test for DataFrame.tz_convert() method
17874
17875#include <iostream>
17876#include <stdexcept>
17877#include <cmath>
17878#include "../pandas/pd_dataframe.h"
17879
17880namespace dataframe_tests {
17881 namespace dataframe_tests_tz_convert {
17882
17883 void pd_test_tz_convert_basic() {
tz_localize (pd_test_1_all.cpp:1431)
1421 "2023-06-15"
1422 });
1423
1424 // Initially should be timezone-naive
1425 if (arr.is_tz_aware()) {
1426 std::cout << " [FAIL] : array should be timezone-naive initially" << std::endl;
1427 throw std::runtime_error("pd_test_datetime_array_timezone failed: naive");
1428 }
1429
1430 // Localize to UTC
1431 auto localized = arr.tz_localize("UTC");
1432 if (!localized.is_tz_aware()) {
1433 std::cout << " [FAIL] : localized array should be timezone-aware" << std::endl;
1434 throw std::runtime_error("pd_test_datetime_array_timezone failed: localize");
1435 }
1436
1437 // Verify timezone name in dtype
1438 auto dt = localized.dtype();
1439 if (!dt.is_tz_aware()) {
1440 std::cout << " [FAIL] : dtype should be timezone-aware" << std::endl;
1441 throw std::runtime_error("pd_test_datetime_array_timezone failed: dtype tz");
tz_localize (pd_test_1_all.cpp:1431)
1421 "2023-06-15"
1422 });
1423
1424 // Initially should be timezone-naive
1425 if (arr.is_tz_aware()) {
1426 std::cout << " [FAIL] : array should be timezone-naive initially" << std::endl;
1427 throw std::runtime_error("pd_test_datetime_array_timezone failed: naive");
1428 }
1429
1430 // Localize to UTC
1431 auto localized = arr.tz_localize("UTC");
1432 if (!localized.is_tz_aware()) {
1433 std::cout << " [FAIL] : localized array should be timezone-aware" << std::endl;
1434 throw std::runtime_error("pd_test_datetime_array_timezone failed: localize");
1435 }
1436
1437 // Verify timezone name in dtype
1438 auto dt = localized.dtype();
1439 if (!dt.is_tz_aware()) {
1440 std::cout << " [FAIL] : dtype should be timezone-aware" << std::endl;
1441 throw std::runtime_error("pd_test_datetime_array_timezone failed: dtype tz");
to_string (pd_test_1_all.cpp:2693)
2683 pandas::PeriodArray arr_m(std::vector<std::string>{
2684 "2020-01",
2685 "NaT",
2686 "2025-06"
2687 }, "M");
2688
2689 // Year
2690 auto years = arr_m.year();
2691 auto y0 = years[0];
2692 if (!y0.has_value() || y0.value() != 2020) {
2693 std::cout << " [FAIL] : year[0] should be 2020, got " << (y0.has_value() ? std::to_string(y0.value()) : "NA") << std::endl;
2694 throw std::runtime_error("pd_test_period_array_year_month_quarter failed: year[0]");
2695 }
2696
2697 auto y1 = years[1];
2698 if (y1.has_value()) {
2699 std::cout << " [FAIL] : year[1] should be NA (NaT)" << std::endl;
2700 throw std::runtime_error("pd_test_period_array_year_month_quarter failed: year[1] should be NA");
2701 }
2702
2703 auto y2 = years[2];
copy (pd_test_1_all.cpp:5798)
5788// ============================================================================
5789// Copy/Rename Tests
5790// ============================================================================
5791
5792void pd_test_categorical_index_copy() {
5793 std::cout << "========= copy ========================================";
5794
5795 pandas::CategoricalArray arr({"a", "b", "c"});
5796 pandas::CategoricalIndex idx(arr, "original");
5797
5798 pandas::CategoricalIndex copied = idx.copy();
5799
5800 bool passed = (copied.size() == idx.size() && copied.name() == idx.name() &&
5801 copied.categories() == idx.categories() && copied.ordered() == idx.ordered());
5802 if (!passed) {
5803 std::cout << " [FAIL] : in pd_test_categorical_index_copy()" << std::endl;
5804 throw std::runtime_error("pd_test_categorical_index_copy failed");
5805 }
5806
5807 std::cout << " -> tests passed" << std::endl;
5808}
unique (pd_test_1_all.cpp:1345)
1335 pandas::DatetimeArray arr(std::vector<std::string>{
1336 "2023-01-01",
1337 "2023-06-15",
1338 "2023-01-01",
1339 "NaT",
1340 "2023-06-15",
1341 "NaT"
1342 });
1343
1344 // unique
1345 auto uniq = arr.unique();
1346 // Should have: NaT, 2023-01-01, 2023-06-15 (3 unique values)
1347 if (uniq.size() != 3) {
1348 std::cout << " [FAIL] : unique size should be 3, got " << uniq.size() << std::endl;
1349 throw std::runtime_error("pd_test_datetime_array_unique failed: size");
1350 }
1351
1352 // factorize
1353 auto [codes, uniques] = arr.factorize();
1354 // Codes for NaT should be -1
1355 if (codes.getElementAt({3}) != -1) {
is_leap_year (pd_test_1_all.cpp:1280)
1270 }
1271
1272 // is_month_end
1273 auto me = arr.is_month_end();
1274 if (!me[1].has_value() || !me[1].value()) {
1275 std::cout << " [FAIL] : 2023-03-31 should be month end" << std::endl;
1276 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: month end");
1277 }
1278
1279 // is_leap_year
1280 auto ly = arr.is_leap_year();
1281 if (!ly[2].has_value() || !ly[2].value()) {
1282 std::cout << " [FAIL] : 2024 should be leap year" << std::endl;
1283 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: leap year");
1284 }
1285 if (!ly[0].has_value() || ly[0].value()) {
1286 std::cout << " [FAIL] : 2023 should not be leap year" << std::endl;
1287 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: not leap year");
1288 }
1289
1290 std::cout << " -> tests passed" << std::endl;
is_month_end (pd_test_1_all.cpp:1273)
1263 }
1264
1265 // is_month_start
1266 auto ms = arr.is_month_start();
1267 if (!ms[0].has_value() || !ms[0].value()) {
1268 std::cout << " [FAIL] : 2023-01-01 should be month start" << std::endl;
1269 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: month start");
1270 }
1271
1272 // is_month_end
1273 auto me = arr.is_month_end();
1274 if (!me[1].has_value() || !me[1].value()) {
1275 std::cout << " [FAIL] : 2023-03-31 should be month end" << std::endl;
1276 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: month end");
1277 }
1278
1279 // is_leap_year
1280 auto ly = arr.is_leap_year();
1281 if (!ly[2].has_value() || !ly[2].value()) {
1282 std::cout << " [FAIL] : 2024 should be leap year" << std::endl;
1283 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: leap year");
is_month_start (pd_test_1_all.cpp:1266)
1256 if (!ys[0].has_value() || !ys[0].value()) {
1257 std::cout << " [FAIL] : 2023-01-01 should be year start" << std::endl;
1258 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: year start");
1259 }
1260 if (!ys[1].has_value() || ys[1].value()) {
1261 std::cout << " [FAIL] : 2023-03-31 should not be year start" << std::endl;
1262 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: not year start");
1263 }
1264
1265 // is_month_start
1266 auto ms = arr.is_month_start();
1267 if (!ms[0].has_value() || !ms[0].value()) {
1268 std::cout << " [FAIL] : 2023-01-01 should be month start" << std::endl;
1269 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: month start");
1270 }
1271
1272 // is_month_end
1273 auto me = arr.is_month_end();
1274 if (!me[1].has_value() || !me[1].value()) {
1275 std::cout << " [FAIL] : 2023-03-31 should be month end" << std::endl;
1276 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: month end");
is_na (pd_test_1_all.cpp:51)
41 void pd_test_boolean_array_na_handling() {
42 std::cout << "========= BooleanArray: NA handling ======================= ";
43
44 pandas::BooleanArray arr({
45 std::optional<bool>(true),
46 std::nullopt, // NA at index 1
47 std::optional<bool>(false)
48 });
49
50 if (!arr.is_na(1)) {
51 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : is_na(1) should be true" << std::endl;
52 throw std::runtime_error("pd_test_boolean_array_na_handling failed: is_na(1) should be true");
53 }
54
55 if (arr.is_na(0)) {
56 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : is_na(0) should be false" << std::endl;
57 throw std::runtime_error("pd_test_boolean_array_na_handling failed: is_na(0) should be false");
58 }
59
60 if (!arr.has_na()) {
is_quarter_end (pd_test_3_all.cpp:25056)
25046 };
25047 pandas::Series<numpy::datetime64> s(dates);
25048 pandas::DatetimeProperties<pandas::Series<numpy::datetime64>> dt(s);
25049 if (dt.has_nat()) throw std::runtime_error("has_nat should be false for clean series");
25050 auto ms = dt.is_month_start();
25051 if (ms[0] != true || ms[1] != false) throw std::runtime_error("is_month_start failed");
25052 auto me = dt.is_month_end();
25053 if (me[1] != true || me[0] != false) throw std::runtime_error("is_month_end failed");
25054 auto qs = dt.is_quarter_start();
25055 if (qs[0] != true || qs[1] != false) throw std::runtime_error("is_quarter_start failed");
25056 auto qe = dt.is_quarter_end();
25057 if (qe[2] != true || qe[0] != false) throw std::runtime_error("is_quarter_end failed");
25058 auto ys = dt.is_year_start();
25059 if (ys[0] != true || ys[1] != false) throw std::runtime_error("is_year_start failed");
25060 auto ye = dt.is_year_end();
25061 if (ye[3] != true || ye[0] != false) throw std::runtime_error("is_year_end failed");
25062 std::cout << " -> tests passed" << std::endl;
25063}
25064
25065void pd_test_dt_bool_na_with_nat() {
25066 std::cout << "========= pd_test_dt_bool_na: series with NaT ==========";
is_quarter_start (pd_test_3_all.cpp:25054)
25044 numpy::datetime64("2024-03-31"),
25045 numpy::datetime64("2024-12-31")
25046 };
25047 pandas::Series<numpy::datetime64> s(dates);
25048 pandas::DatetimeProperties<pandas::Series<numpy::datetime64>> dt(s);
25049 if (dt.has_nat()) throw std::runtime_error("has_nat should be false for clean series");
25050 auto ms = dt.is_month_start();
25051 if (ms[0] != true || ms[1] != false) throw std::runtime_error("is_month_start failed");
25052 auto me = dt.is_month_end();
25053 if (me[1] != true || me[0] != false) throw std::runtime_error("is_month_end failed");
25054 auto qs = dt.is_quarter_start();
25055 if (qs[0] != true || qs[1] != false) throw std::runtime_error("is_quarter_start failed");
25056 auto qe = dt.is_quarter_end();
25057 if (qe[2] != true || qe[0] != false) throw std::runtime_error("is_quarter_end failed");
25058 auto ys = dt.is_year_start();
25059 if (ys[0] != true || ys[1] != false) throw std::runtime_error("is_year_start failed");
25060 auto ye = dt.is_year_end();
25061 if (ye[3] != true || ye[0] != false) throw std::runtime_error("is_year_end failed");
25062 std::cout << " -> tests passed" << std::endl;
25063}
is_tz_aware (pd_test_1_all.cpp:1425)
1415 void pd_test_datetime_array_timezone() {
1416 std::cout << "========= DatetimeArray: timezone ======================= ";
1417
1418 pandas::DatetimeArray arr(std::vector<std::string>{
1419 "2023-01-01",
1420 "2023-06-15"
1421 });
1422
1423 // Initially should be timezone-naive
1424 if (arr.is_tz_aware()) {
1425 std::cout << " [FAIL] : array should be timezone-naive initially" << std::endl;
1426 throw std::runtime_error("pd_test_datetime_array_timezone failed: naive");
1427 }
1428
1429 // Localize to UTC
1430 auto localized = arr.tz_localize("UTC");
1431 if (!localized.is_tz_aware()) {
1432 std::cout << " [FAIL] : localized array should be timezone-aware" << std::endl;
1433 throw std::runtime_error("pd_test_datetime_array_timezone failed: localize");
1434 }
is_year_end (pd_test_3_all.cpp:25060)
25050 auto ms = dt.is_month_start();
25051 if (ms[0] != true || ms[1] != false) throw std::runtime_error("is_month_start failed");
25052 auto me = dt.is_month_end();
25053 if (me[1] != true || me[0] != false) throw std::runtime_error("is_month_end failed");
25054 auto qs = dt.is_quarter_start();
25055 if (qs[0] != true || qs[1] != false) throw std::runtime_error("is_quarter_start failed");
25056 auto qe = dt.is_quarter_end();
25057 if (qe[2] != true || qe[0] != false) throw std::runtime_error("is_quarter_end failed");
25058 auto ys = dt.is_year_start();
25059 if (ys[0] != true || ys[1] != false) throw std::runtime_error("is_year_start failed");
25060 auto ye = dt.is_year_end();
25061 if (ye[3] != true || ye[0] != false) throw std::runtime_error("is_year_end failed");
25062 std::cout << " -> tests passed" << std::endl;
25063}
25064
25065void pd_test_dt_bool_na_with_nat() {
25066 std::cout << "========= pd_test_dt_bool_na: series with NaT ==========";
25067 std::vector<numpy::datetime64> dates = {
25068 numpy::datetime64("2024-01-01"),
25069 numpy::datetime64(), // NaT
25070 numpy::datetime64("2024-12-31")
is_year_start (pd_test_1_all.cpp:1255)
1245 std::cout << "========= DatetimeArray: boolean properties ======================= ";
1246
1247 pandas::DatetimeArray arr(std::vector<std::string>{
1248 "2023-01-01", // year start, month start
1249 "2023-03-31", // quarter end, month end
1250 "2024-02-29", // leap year (2024 is leap year)
1251 "2023-12-31" // year end, month end
1252 });
1253
1254 // is_year_start
1255 auto ys = arr.is_year_start();
1256 if (!ys[0].has_value() || !ys[0].value()) {
1257 std::cout << " [FAIL] : 2023-01-01 should be year start" << std::endl;
1258 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: year start");
1259 }
1260 if (!ys[1].has_value() || ys[1].value()) {
1261 std::cout << " [FAIL] : 2023-03-31 should not be year start" << std::endl;
1262 throw std::runtime_error("pd_test_datetime_array_boolean_props failed: not year start");
1263 }
1264
1265 // is_month_start
argmax (pd_test_1_all.cpp:1323)
1313 }
1314
1315 // argmin
1316 auto min_idx = arr.argmin();
1317 if (!min_idx.has_value() || min_idx.value() != 2) {
1318 std::cout << " [FAIL] : argmin should be 2 (2023-01-01)" << std::endl;
1319 throw std::runtime_error("pd_test_datetime_array_sorting failed: argmin");
1320 }
1321
1322 // argmax
1323 auto max_idx = arr.argmax();
1324 if (!max_idx.has_value() || max_idx.value() != 3) {
1325 std::cout << " [FAIL] : argmax should be 3 (2023-12-31)" << std::endl;
1326 throw std::runtime_error("pd_test_datetime_array_sorting failed: argmax");
1327 }
1328
1329 std::cout << " -> tests passed" << std::endl;
1330 }
1331
1332 void pd_test_datetime_array_unique() {
1333 std::cout << "========= DatetimeArray: unique/factorize ======================= ";
argmin (pd_test_1_all.cpp:1316)
1306 if (indices.getElementAt({0}) != 2) {
1307 std::cout << " [FAIL] : argsort: first should be index 2 (2023-01-01)" << std::endl;
1308 throw std::runtime_error("pd_test_datetime_array_sorting failed: argsort first");
1309 }
1310 if (indices.getElementAt({3}) != 1) {
1311 std::cout << " [FAIL] : argsort: last should be index 1 (NaT)" << std::endl;
1312 throw std::runtime_error("pd_test_datetime_array_sorting failed: NaT position");
1313 }
1314
1315 // argmin
1316 auto min_idx = arr.argmin();
1317 if (!min_idx.has_value() || min_idx.value() != 2) {
1318 std::cout << " [FAIL] : argmin should be 2 (2023-01-01)" << std::endl;
1319 throw std::runtime_error("pd_test_datetime_array_sorting failed: argmin");
1320 }
1321
1322 // argmax
1323 auto max_idx = arr.argmax();
1324 if (!max_idx.has_value() || max_idx.value() != 3) {
1325 std::cout << " [FAIL] : argmax should be 3 (2023-12-31)" << std::endl;
1326 throw std::runtime_error("pd_test_datetime_array_sorting failed: argmax");
data (pd_test_1_all.cpp:9114)
9104 throw std::runtime_error("pd_test_datetime_mixin_default_constructor failed");
9105 }
9106
9107 std::cout << " -> tests passed" << std::endl;
9108}
9109
9110void pd_test_datetime_mixin_array_constructor() {
9111 std::cout << "========= DatetimeTDMixin array constructor =========================";
9112
9113 // Create DatetimeArray with some values
9114 numpy::NDArray<numpy::datetime64> data(std::vector<size_t>{3});
9115 data.setElementAt({0}, numpy::datetime64(1000000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2001
9116 data.setElementAt({1}, numpy::datetime64(1500000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2017
9117 data.setElementAt({2}, numpy::datetime64(1600000000000000000LL, numpy::DateTimeUnit::Nanosecond)); // ~2020
9118
9119 numpy::NDArray<numpy::bool_> mask(std::vector<size_t>{3});
9120 mask.setElementAt({0}, numpy::bool_(false));
9121 mask.setElementAt({1}, numpy::bool_(false));
9122 mask.setElementAt({2}, numpy::bool_(false));
9123
9124 pandas::DatetimeArray arr(data, mask);
day (pd_test_1_all.cpp:1193)
1183 std::cout << " [FAIL] : month[0] should be 3" << std::endl;
1184 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: month[0]");
1185 }
1186 auto m1 = months[1];
1187 if (!m1.has_value() || m1.value() != 12) {
1188 std::cout << " [FAIL] : month[1] should be 12" << std::endl;
1189 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: month[1]");
1190 }
1191
1192 // Day
1193 auto days = arr.day();
1194 auto d0 = days[0];
1195 if (!d0.has_value() || d0.value() != 15) {
1196 std::cout << " [FAIL] : day[0] should be 15" << std::endl;
1197 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: day[0]");
1198 }
1199 auto d1 = days[1];
1200 if (!d1.has_value() || d1.value() != 25) {
1201 std::cout << " [FAIL] : day[1] should be 25" << std::endl;
1202 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: day[1]");
1203 }
dayofweek (pd_test_1_all.cpp:7565)
7555 // 1970-01-01 was a Thursday (day 3)
7556 std::vector<std::optional<numpy::datetime64>> values = {
7557 make_dt(0), // Thursday (3)
7558 make_dt(NS_PER_DAY), // Friday (4)
7559 make_dt(2 * NS_PER_DAY), // Saturday (5)
7560 make_dt(3 * NS_PER_DAY) // Sunday (6)
7561 };
7562 pandas::DatetimeArray arr(values);
7563 pandas::DatetimeIndex idx(arr);
7564
7565 auto dow = idx.dayofweek();
7566
7567 bool passed = (dow.size() == 4);
7568 if (!passed) {
7569 std::cout << " [FAIL] : in pd_test_datetime_index_dayofweek()" << std::endl;
7570 throw std::runtime_error("pd_test_datetime_index_dayofweek failed");
7571 }
7572
7573 std::cout << " -> tests passed" << std::endl;
7574}
dayofyear (pd_test_3_all.cpp:18582)
18572 auto seconds = s.dt().second();
18573 if (seconds[0] != 45 || seconds[1] != 30 || seconds[2] != 59) {
18574 std::cout << " [FAIL] : second() failed" << std::endl;
18575 throw std::runtime_error("pd_test_dt_time_components: second() failed");
18576 }
18577
18578 std::cout << " -> tests passed" << std::endl;
18579}
18580
18581// ============================================================================
18582// Test dt().dayofweek(), dt().dayofyear(), dt().quarter()
18583// ============================================================================
18584
18585void pd_test_dt_derived_properties() {
18586 std::cout << "========= Series.dt().dayofweek/dayofyear/quarter() ======";
18587
18588 // 2020-01-01 is a Wednesday (dayofweek=2), dayofyear=1, Q1
18589 // 2020-07-04 is a Saturday (dayofweek=5), dayofyear=186, Q3
18590 pandas::Series<std::string> s({"2020-01-01", "2020-07-04"});
18591
18592 auto dow = s.dt().dayofweek();
dt (pd_test_3_all.cpp:18239)
18229 if (offset.freqstr() != "D") {
18230 std::cout << " [FAIL] : Day freqstr() failed" << std::endl;
18231 throw std::runtime_error("pd_test_day_offset: freqstr() failed");
18232 }
18233 if (offset.name() != "Day") {
18234 std::cout << " [FAIL] : Day name() failed" << std::endl;
18235 throw std::runtime_error("pd_test_day_offset: name() failed");
18236 }
18237
18238 // Test apply
18239 numpy::datetime64 dt("2020-01-15");
18240 auto result = offset.apply(dt);
18241 std::tm tm = result.toTm();
18242 if (tm.tm_mday != 20) {
18243 std::cout << " [FAIL] : Day apply() failed, got day " << tm.tm_mday << std::endl;
18244 throw std::runtime_error("pd_test_day_offset: apply() failed");
18245 }
18246
18247 std::cout << " -> tests passed" << std::endl;
18248}
dtype (pd_test_1_all.cpp:295)
285 throw std::runtime_error("pd_test_boolean_array_reductions failed: mean");
286 }
287
288 std::cout << " -> tests passed" << std::endl;
289 }
290
291 void pd_test_boolean_array_dtype() {
292 std::cout << "========= BooleanArray: dtype ======================= ";
293
294 pandas::BooleanArray arr;
295 if (arr.dtype().name() != "boolean") {
296 std::cout << " [FAIL] : in pd_test_boolean_array_dtype() : dtype name should be 'boolean'" << std::endl;
297 throw std::runtime_error("pd_test_boolean_array_dtype failed: dtype name");
298 }
299
300 if (arr.dtype().kind() != "b") {
301 std::cout << " [FAIL] : in pd_test_boolean_array_dtype() : dtype kind should be 'b'" << std::endl;
302 throw std::runtime_error("pd_test_boolean_array_dtype failed: dtype kind");
303 }
304
305 std::cout << " -> tests passed" << std::endl;
empty (pd_test_1_all.cpp:941)
931#include "../pandas/pd_config.h"
932
933namespace dataframe_tests {
934
935namespace dataframe_tests_config {
936
937 void pd_test_config_version() {
938 std::cout << "========= df_config: version info ======================= ";
939 const char* version = pandas::DataFrameInfo::version();
940 if (version == nullptr || std::string(version).empty()) {
941 std::cout << "[FAIL] : in pd_test_config_version() : version is null or empty" << std::endl;
942 throw std::runtime_error("pd_test_config_version failed: version is null or empty");
943 }
944 std::cout << "-> tests passed" << std::endl;
945 }
946
947 void pd_test_config_na_repr() {
948 std::cout << "========= df_config: NA representation ======================= ";
949 const char* na_repr = pandas::DataFrameConfig::get_na_repr();
950 if (na_repr == nullptr) {
factorize (pd_test_1_all.cpp:1353)
1343 // unique
1344 auto uniq = arr.unique();
1345 // Should have: NaT, 2023-01-01, 2023-06-15 (3 unique values)
1346 if (uniq.size() != 3) {
1347 std::cout << " [FAIL] : unique size should be 3, got " << uniq.size() << std::endl;
1348 throw std::runtime_error("pd_test_datetime_array_unique failed: size");
1349 }
1350
1351 // factorize
1352 auto [codes, uniques] = arr.factorize();
1353 // Codes for NaT should be -1
1354 if (codes.getElementAt({3}) != -1) {
1355 std::cout << " [FAIL] : factorize: NaT code should be -1" << std::endl;
1356 throw std::runtime_error("pd_test_datetime_array_unique failed: NaT code");
1357 }
1358 // Same values should have same codes
1359 if (codes.getElementAt({0}) != codes.getElementAt({2})) {
1360 std::cout << " [FAIL] : factorize: 2023-01-01 values should have same code" << std::endl;
1361 throw std::runtime_error("pd_test_datetime_array_unique failed: same code");
1362 }
has_na (pd_test_1_all.cpp:61)
51 if (!arr.is_na(1)) {
52 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : is_na(1) should be true" << std::endl;
53 throw std::runtime_error("pd_test_boolean_array_na_handling failed: is_na(1) should be true");
54 }
55
56 if (arr.is_na(0)) {
57 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : is_na(0) should be false" << std::endl;
58 throw std::runtime_error("pd_test_boolean_array_na_handling failed: is_na(0) should be false");
59 }
60
61 if (!arr.has_na()) {
62 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : has_na() should be true" << std::endl;
63 throw std::runtime_error("pd_test_boolean_array_na_handling failed: has_na() should be true");
64 }
65
66 if (arr.count() != 2) {
67 std::cout << " [FAIL] : in pd_test_boolean_array_na_handling() : count() should be 2" << std::endl;
68 throw std::runtime_error("pd_test_boolean_array_na_handling failed: count() should be 2");
69 }
70
71 std::cout << " -> tests passed" << std::endl;
hour (pd_test_1_all.cpp:7476)
7466 std::cout << "========= hour property ===============================";
7467
7468 std::vector<std::optional<numpy::datetime64>> values = {
7469 make_dt(0), // Hour 0
7470 make_dt(6 * NS_PER_HOUR), // Hour 6
7471 make_dt(23 * NS_PER_HOUR) // Hour 23
7472 };
7473 pandas::DatetimeArray arr(values);
7474 pandas::DatetimeIndex idx(arr);
7475
7476 auto hours = idx.hour();
7477
7478 bool passed = (hours.size() == 3);
7479 auto h0 = hours[0];
7480 auto h1 = hours[1];
7481 auto h2 = hours[2];
7482 passed = passed && h0.has_value() && *h0 == 0;
7483 passed = passed && h1.has_value() && *h1 == 6;
7484 passed = passed && h2.has_value() && *h2 == 23;
7485
7486 if (!passed) {
month (pd_test_1_all.cpp:1180)
1170 void pd_test_datetime_array_component_month_day() {
1171 std::cout << "========= DatetimeArray: month/day components ======================= ";
1172
1173 pandas::DatetimeArray arr(std::vector<std::string>{
1174 "2023-03-15",
1175 "2023-12-25",
1176 "NaT"
1177 });
1178
1179 // Month
1180 auto months = arr.month();
1181 auto m0 = months[0];
1182 if (!m0.has_value() || m0.value() != 3) {
1183 std::cout << " [FAIL] : month[0] should be 3" << std::endl;
1184 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: month[0]");
1185 }
1186 auto m1 = months[1];
1187 if (!m1.has_value() || m1.value() != 12) {
1188 std::cout << " [FAIL] : month[1] should be 12" << std::endl;
1189 throw std::runtime_error("pd_test_datetime_array_component_month_day failed: month[1]");
1190 }
nbytes (pd_test_1_all.cpp:6214)
6204 }
6205
6206 // Test empty DataFrame
6207 pandas::DataFrame empty_df;
6208 if (!empty_df.empty()) {
6209 std::cout << " [FAIL] : in pd_test_dataframe_properties() : should be empty" << std::endl;
6210 throw std::runtime_error("pd_test_dataframe_properties failed: should be empty");
6211 }
6212
6213 // Test nbytes > 0 for non-empty
6214 if (df.nbytes() == 0) {
6215 std::cout << " [FAIL] : in pd_test_dataframe_properties() : nbytes should be > 0" << std::endl;
6216 throw std::runtime_error("pd_test_dataframe_properties failed: nbytes should be > 0");
6217 }
6218
6219 // Test columns index
6220 if (df.columns().size() != 3) {
6221 std::cout << " [FAIL] : in pd_test_dataframe_properties() : columns size != 3" << std::endl;
6222 throw std::runtime_error("pd_test_dataframe_properties failed: columns size != 3");
6223 }
ndim (pd_test_1_all.cpp:6195)
6185 pandas::DataFrame df(data);
6186
6187 // Test shape
6188 auto shape = df.shape();
6189 if (shape.size() != 2 || shape[0] != 4 || shape[1] != 3) {
6190 std::cout << " [FAIL] : in pd_test_dataframe_properties() : shape mismatch" << std::endl;
6191 throw std::runtime_error("pd_test_dataframe_properties failed: shape mismatch");
6192 }
6193
6194 // Test ndim
6195 if (df.ndim() != 2) {
6196 std::cout << " [FAIL] : in pd_test_dataframe_properties() : ndim != 2" << std::endl;
6197 throw std::runtime_error("pd_test_dataframe_properties failed: ndim != 2");
6198 }
6199
6200 // Test empty
6201 if (df.empty()) {
6202 std::cout << " [FAIL] : in pd_test_dataframe_properties() : should not be empty" << std::endl;
6203 throw std::runtime_error("pd_test_dataframe_properties failed: should not be empty");
6204 }
normalize (pd_test_1_all.cpp:8723)
8713void pd_test_datetime_mixin_normalize() {
8714 std::cout << "========= normalize ===================================";
8715
8716 // Create datetime with time component
8717 std::vector<std::optional<numpy::datetime64>> values = {
8718 numpy::datetime64(86400000000000LL + 3600000000000LL, numpy::DateTimeUnit::Nanosecond) // 1 day + 1 hour
8719 };
8720 pandas::DatetimeArray arr(values);
8721 pandas::DatetimeMixinIndex idx(arr);
8722
8723 pandas::DatetimeMixinIndex normalized = idx.normalize();
8724
8725 bool passed = (normalized.size() == 1);
8726 if (!passed) {
8727 std::cout << " [FAIL] : in pd_test_datetime_mixin_normalize()" << std::endl;
8728 throw std::runtime_error("pd_test_datetime_mixin_normalize failed");
8729 }
8730
8731 std::cout << " -> tests passed" << std::endl;
8732}
quarter (pd_test_1_all.cpp:1218)
1208 void pd_test_datetime_array_quarter() {
1209 std::cout << "========= DatetimeArray: quarter ======================= ";
1210
1211 pandas::DatetimeArray arr(std::vector<std::string>{
1212 "2023-01-15", // Q1
1213 "2023-05-20", // Q2
1214 "2023-09-10", // Q3
1215 "2023-11-25" // Q4
1216 });
1217
1218 auto quarters = arr.quarter();
1219
1220 auto q0 = quarters[0];
1221 if (!q0.has_value() || q0.value() != 1) {
1222 std::cout << " [FAIL] : quarter[0] should be 1" << std::endl;
1223 throw std::runtime_error("pd_test_datetime_array_quarter failed: quarter[0]");
1224 }
1225 auto q1 = quarters[1];
1226 if (!q1.has_value() || q1.value() != 2) {
1227 std::cout << " [FAIL] : quarter[1] should be 2" << std::endl;
1228 throw std::runtime_error("pd_test_datetime_array_quarter failed: quarter[1]");
repr (pd_test_1_all.cpp:10906)
10896 std::cout << " -> tests passed" << std::endl;
10897}
10898
10899void pd_test_extension_index_repr() {
10900 std::cout << "========= repr =========================";
10901
10902 pandas::CategoricalArray arr({"a", "b", "c"});
10903 // Use ExtensionIndex<CategoricalArray> directly to test base class repr
10904 pandas::ExtensionIndex<pandas::CategoricalArray> idx(arr, "test");
10905
10906 std::string repr_str = idx.repr();
10907
10908 bool passed = (!repr_str.empty() && repr_str.find("ExtensionIndex") != std::string::npos);
10909 if (!passed) {
10910 std::cout << " [FAIL] : in pd_test_extension_index_repr() : repr check failed" << std::endl;
10911 throw std::runtime_error("pd_test_extension_index_repr failed");
10912 }
10913
10914 std::cout << " -> tests passed" << std::endl;
10915}
second (pd_test_1_all.cpp:7534)
7524 std::cout << "========= second property =============================";
7525
7526 std::vector<std::optional<numpy::datetime64>> values = {
7527 make_dt(0), // Second 0
7528 make_dt(30 * NS_PER_SEC), // Second 30
7529 make_dt(59 * NS_PER_SEC) // Second 59
7530 };
7531 pandas::DatetimeArray arr(values);
7532 pandas::DatetimeIndex idx(arr);
7533
7534 auto seconds = idx.second();
7535
7536 bool passed = (seconds.size() == 3);
7537 auto s0 = seconds[0];
7538 auto s1 = seconds[1];
7539 auto s2 = seconds[2];
7540 passed = passed && s0.has_value() && *s0 == 0;
7541 passed = passed && s1.has_value() && *s1 == 30;
7542 passed = passed && s2.has_value() && *s2 == 59;
7543
7544 if (!passed) {
shape (pd_test_1_all.cpp:6188)
6178 std::cout << "========= properties =======================";
6179
6180 std::map<std::string, std::vector<numpy::float64>> data;
6181 data["A"] = {1.0, 2.0, 3.0, 4.0};
6182 data["B"] = {5.0, 6.0, 7.0, 8.0};
6183 data["C"] = {9.0, 10.0, 11.0, 12.0};
6184
6185 pandas::DataFrame df(data);
6186
6187 // Test shape
6188 auto shape = df.shape();
6189 if (shape.size() != 2 || shape[0] != 4 || shape[1] != 3) {
6190 std::cout << " [FAIL] : in pd_test_dataframe_properties() : shape mismatch" << std::endl;
6191 throw std::runtime_error("pd_test_dataframe_properties failed: shape mismatch");
6192 }
6193
6194 // Test ndim
6195 if (df.ndim() != 2) {
6196 std::cout << " [FAIL] : in pd_test_dataframe_properties() : ndim != 2" << std::endl;
6197 throw std::runtime_error("pd_test_dataframe_properties failed: ndim != 2");
6198 }
size (pd_test_1_all.cpp:22)
12#include "../pandas/pd_boolean_array.h"
13
14namespace dataframe_tests {
15
16namespace dataframe_tests_boolean_array {
17 void pd_test_boolean_array_constructors() {
18 std::cout << "========= BooleanArray: constructors ======================= ";
19
20 // Default constructor
21 pandas::BooleanArray arr1;
22 if (arr1.size() != 0) {
23 std::cout << " [FAIL] : in pd_test_boolean_array_constructors() : default constructor size != 0" << std::endl;
24 throw std::runtime_error("pd_test_boolean_array_constructors failed: default constructor size != 0");
25 }
26
27 // Initializer list constructor
28 pandas::BooleanArray arr2({
29 std::optional<bool>(true),
30 std::optional<bool>(false),
31 std::nullopt,
32 std::optional<bool>(true)
tz (pd_test_2_all.cpp:17914)
17904 pandas::DataFrame df(data);
17905 df.set_index(std::make_unique<pandas::DatetimeIndex>(tz_aware_idx));
17906
17907 // Verify the index is timezone-aware
17908 const pandas::DatetimeIndex* original_idx = dynamic_cast<const pandas::DatetimeIndex*>(&df.index());
17909 if (!original_idx) {
17910 std::cout << " [FAIL] : in pd_test_tz_convert_basic() : index is not DatetimeIndex" << std::endl;
17911 throw std::runtime_error("pd_test_tz_convert_basic failed: index is not DatetimeIndex");
17912 }
17913
17914 std::string original_tz = original_idx->tz();
17915 if (original_tz.empty()) {
17916 std::cout << " [FAIL] : in pd_test_tz_convert_basic() : original index is not timezone-aware" << std::endl;
17917 throw std::runtime_error("pd_test_tz_convert_basic failed: original index is not timezone-aware");
17918 }
17919
17920 // Convert to Asia/Shanghai timezone
17921 pandas::DataFrame df_shanghai = df.tz_convert("Asia/Shanghai");
17922
17923 // Verify result has a DatetimeIndex
17924 const pandas::DatetimeIndex* converted_idx = dynamic_cast<const pandas::DatetimeIndex*>(&df_shanghai.index());
unit (pd_test_1_all.cpp:9284)
9274 data.setElementAt({0}, numpy::datetime64(1000LL, numpy::DateTimeUnit::Nanosecond));
9275 data.setElementAt({1}, numpy::datetime64(2000LL, numpy::DateTimeUnit::Nanosecond));
9276
9277 numpy::NDArray<numpy::bool_> mask(std::vector<size_t>{2});
9278 mask.setElementAt({0}, numpy::bool_(false));
9279 mask.setElementAt({1}, numpy::bool_(false));
9280
9281 pandas::DatetimeArray arr(data, mask);
9282 pandas::DatetimeTDMixin idx(arr);
9283
9284 std::string unit = idx.unit();
9285
9286 bool passed = (unit == "ns"); // nanosecond
9287 if (!passed) {
9288 std::cout << " [FAIL] : in pd_test_datetime_unit_property() : unit property check failed, got '" << unit << "'" << std::endl;
9289 throw std::runtime_error("pd_test_datetime_unit_property failed");
9290 }
9291
9292 std::cout << " -> tests passed" << std::endl;
9293}
year (pd_test_1_all.cpp:1147)
1137 void pd_test_datetime_array_component_year() {
1138 std::cout << "========= DatetimeArray: year component ======================= ";
1139
1140 pandas::DatetimeArray arr(std::vector<std::string>{
1141 "2020-01-15",
1142 "NaT",
1143 "2025-06-20"
1144 });
1145
1146 auto years = arr.year();
1147
1148 auto y0 = years[0];
1149 if (!y0.has_value() || y0.value() != 2020) {
1150 std::cout << " [FAIL] : year[0] should be 2020" << std::endl;
1151 throw std::runtime_error("pd_test_datetime_array_component_year failed: year[0]");
1152 }
1153
1154 auto y1 = years[1];
1155 if (y1.has_value()) {
1156 std::cout << " [FAIL] : year[1] should be NA (NaT)" << std::endl;