PeriodDtype#

class pandas::PeriodDtype#

Data type class for pandas extension types.

Example#

#include <pandas/pandas.h>
using namespace pandas;

// Use PeriodDtype
PeriodDtype obj;
// ... operations ...

Constructors#

Signature

Location

Example

explicit PeriodDtype(PeriodFrequency freq)

pd_period_dtype.h:54

explicit PeriodDtype(const std::string& freq_str)

pd_period_dtype.h:62

Iteration#

Signature

Return Type

Location

Example

size_t itemsize() const override

size_t

pd_period_dtype.h:87

Other Methods#

Signature

Return Type

Location

Example

PeriodFrequency freq() const

PeriodFrequency

pd_period_dtype.h:109

View

std::string freq_string() const

std::string

pd_period_dtype.h:116

View

std::string kind() const override

std::string

pd_period_dtype.h:95

View

bool matches(const std::string& dtype_name) const

bool

pd_period_dtype.h:125

View

std::string name() const override

std::string

pd_period_dtype.h:72

View

numpy::DType numpy_dtype() const override

numpy::DType

pd_period_dtype.h:80

std::string repr() const override

std::string

pd_period_dtype.h:136

View

const std::type_info& type() const override

const std::type_info&

pd_period_dtype.h:102

View

PeriodDtype with_freq(PeriodFrequency new_freq) const

PeriodDtype

pd_period_dtype.h:143

PeriodDtype with_freq(const std::string& new_freq) const

PeriodDtype

pd_period_dtype.h:150

Code Examples#

The following examples are extracted from the test suite.

freq (pd_test_1_all.cpp:8233)
8223    std::cout << "========= freq property ===============================";
8224
8225    std::vector<std::optional<numpy::datetime64>> values = {
8226        numpy::datetime64(0LL, numpy::DateTimeUnit::Nanosecond),
8227        numpy::datetime64(86400000000000LL, numpy::DateTimeUnit::Nanosecond)  // 1 day
8228    };
8229    pandas::DatetimeArray arr(values);
8230    pandas::DatetimeMixinIndex idx(arr);
8231
8232    // Default freq is nullopt or inferred
8233    auto f = idx.freq();
8234    std::string fs = idx.freqstr();
8235
8236    bool passed = true;  // freq may or may not be set
8237    if (!passed) {
8238        std::cout << "  [FAIL] : in pd_test_datetime_mixin_freq()" << std::endl;
8239        throw std::runtime_error("pd_test_datetime_mixin_freq failed");
8240    }
8241
8242    std::cout << " -> tests passed" << std::endl;
8243}
freq_string (pd_test_1_all.cpp:15733)
15723    bool passed = (isnan_mask.size() == 2);
15724    if (!passed) {
15725        std::cout << "  [FAIL] : in pd_test_period_index_isnan() : _isnan check failed" << std::endl;
15726        throw std::runtime_error("pd_test_period_index_isnan failed");
15727    }
15728
15729    std::cout << " -> tests passed" << std::endl;
15730}
15731
15732// ============================================================================
15733// unit() and freq_string() Tests
15734// ============================================================================
15735
15736void pd_test_unit_freq_string() {
15737    std::cout << "========= unit() / freq_string() =========================";
15738
15739    // PeriodIndex with monthly frequency
15740    numpy::NDArray<numpy::int64> data(std::vector<size_t>{1});
15741    data.setElementAt({0}, numpy::int64(0));
15742
15743    numpy::NDArray<numpy::bool_> mask(std::vector<size_t>{1});
kind (pd_test_1_all.cpp:300)
290    void pd_test_boolean_array_dtype() {
291        std::cout << "========= BooleanArray: dtype ======================= ";
292
293        pandas::BooleanArray arr;
294        if (arr.dtype().name() != "boolean") {
295            std::cout << "  [FAIL] : in pd_test_boolean_array_dtype() : dtype name should be 'boolean'" << std::endl;
296            throw std::runtime_error("pd_test_boolean_array_dtype failed: dtype name");
297        }
298
299        if (arr.dtype().kind() != "b") {
300            std::cout << "  [FAIL] : in pd_test_boolean_array_dtype() : dtype kind should be 'b'" << std::endl;
301            throw std::runtime_error("pd_test_boolean_array_dtype failed: dtype kind");
302        }
303
304        std::cout << " -> tests passed" << std::endl;
305    }
306}
307
308int pd_test_boolean_array_main() {
309    std::cout << "====================================== running pd_test_boolean_array ==================================== " << std::endl;
matches (pd_test_5_all.cpp:15741)
15731    for (size_t i = 0; i < 5; ++i) {
15732        // DatetimeIndex serializes individual entries via get_value_str()
15733        bdate_first5.push_back(idx.get_value_str(i));
15734    }
15735    std::cout << "  case_4 bdate_range first 5: ";
15736    for (auto& s : bdate_first5) std::cout << s << " ";
15737    std::cout << "\n  case_4 expected first 5:    ";
15738    for (auto& s : expected_visible_head) std::cout << s << " ";
15739    std::cout << "\n";
15740
15741    // First date matches (both start at 2023-01-04)
15742    pandas_tests::check(contains(bdate_first5[0], "2023-01-04"),
15743          "case_4.first_bdate_is_2023-01-04", local_fail);
15744
15745    // Second date should differ: bdate gives 2023-01-05, fixture wants 2023-01-20
15746    bool second_matches_expected = contains(bdate_first5[1], "2023-01-20");
15747    pandas_tests::check(!second_matches_expected,
15748          "case_4.bdate_NOT_matching_filtered_fixture", local_fail);
15749    // The bdate second is the next business day:
15750    pandas_tests::check(contains(bdate_first5[1], "2023-01-05"),
15751          "case_4.bdate_second_is_2023-01-05_sequential", local_fail);
name (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;
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}
type (pd_test_3_all.cpp:15450)
15440/**
15441 * Test Series.convert_dtypes() parameter flags
15442 */
15443void pd_test_series_convert_dtypes_flags() {
15444    std::cout << "========= Series.convert_dtypes() flags =================";
15445
15446    // Test convert_integer=false - with floats disabled too, so it becomes string/object
15447    pandas::Series<std::string> s({"1", "2", "3"}, "numbers");
15448    auto converted = s.convert_dtypes(true, true, false, true, false);  // convert_integer=false, convert_floating=false
15449
15450    // Should remain object type (Series<std::string> has dtype_name()="object")
15451    // When integer and floating are both disabled for integer-like strings, it falls back to string type
15452    if (converted->dtype_name() != "object") {
15453        std::cout << "  [FAIL] : dtype should be object when convert_integer=false and convert_floating=false, got " << converted->dtype_name() << std::endl;
15454        throw std::runtime_error("pd_test_series_convert_dtypes_flags failed: convert_integer");
15455    }
15456
15457    // Test convert_boolean=false - strings stay as object/string type
15458    pandas::Series<std::string> s_bool({"true", "false"}, "bools");
15459    auto converted_bool = s_bool.convert_dtypes(true, true, true, false, true);  // convert_boolean=false