コード例 #1
0
 def _get_dataset_column_median(self,
                                column_profile: DatasetFieldProfileClass,
                                column: str) -> None:
     if self.config.include_field_median_value:
         column_profile.median = str(self.dataset.get_column_median(column))
コード例 #2
0
    def _handle_convert_column_evrs(  # noqa: C901 (complexity)
        self,
        profile: DatasetProfileClass,
        column: str,
        col_evrs: Iterable[ExpectationValidationResult],
        pretty_name: str,
        send_sample_values: bool,
    ) -> None:
        # TRICKY: This method mutates the profile directly.

        column_profile = DatasetFieldProfileClass(fieldPath=column)

        profile.fieldProfiles = profile.fieldProfiles or []
        profile.fieldProfiles.append(column_profile)

        for evr in col_evrs:
            exp: str = evr.expectation_config.expectation_type
            res: dict = evr.result
            if not res:
                self.report.report_warning(f"profile of {pretty_name}",
                                           f"{exp} did not yield any results")
                continue

            if exp == "expect_column_unique_value_count_to_be_between":
                column_profile.uniqueCount = res["observed_value"]
            elif exp == "expect_column_proportion_of_unique_values_to_be_between":
                column_profile.uniqueProportion = res["observed_value"]
            elif exp == "expect_column_values_to_not_be_null":
                column_profile.nullCount = res["unexpected_count"]
                if ("unexpected_percent" in res
                        and res["unexpected_percent"] is not None):
                    column_profile.nullProportion = res[
                        "unexpected_percent"] / 100
            elif exp == "expect_column_values_to_not_match_regex":
                # ignore; generally used for whitespace checks using regex r"^\s+|\s+$"
                pass
            elif exp == "expect_column_mean_to_be_between":
                column_profile.mean = str(res["observed_value"])
            elif exp == "expect_column_min_to_be_between":
                column_profile.min = str(res["observed_value"])
            elif exp == "expect_column_max_to_be_between":
                column_profile.max = str(res["observed_value"])
            elif exp == "expect_column_median_to_be_between":
                column_profile.median = str(res["observed_value"])
            elif exp == "expect_column_stdev_to_be_between":
                column_profile.stdev = str(res["observed_value"])
            elif exp == "expect_column_quantile_values_to_be_between":
                if "observed_value" in res:
                    column_profile.quantiles = [
                        QuantileClass(quantile=str(quantile), value=str(value))
                        for quantile, value in zip(
                            res["observed_value"]["quantiles"],
                            res["observed_value"]["values"],
                        )
                    ]
            elif exp == "expect_column_values_to_be_in_set":
                column_profile.sampleValues = [
                    str(v) for v in res["partial_unexpected_list"]
                ]
                if not send_sample_values:
                    column_profile.sampleValues = []
            elif exp == "expect_column_kl_divergence_to_be_less_than":
                if "details" in res and "observed_partition" in res["details"]:
                    partition = res["details"]["observed_partition"]
                    column_profile.histogram = HistogramClass(
                        [str(v) for v in partition["bins"]],
                        [
                            partition["tail_weights"][0],
                            *partition["weights"],
                            partition["tail_weights"][1],
                        ],
                    )
            elif exp == "expect_column_distinct_values_to_be_in_set":
                if "details" in res and "value_counts" in res["details"]:
                    # This can be used to produce a bar chart since it includes values and frequencies.
                    # As such, it is handled differently from expect_column_values_to_be_in_set, which
                    # is nonexhaustive.
                    column_profile.distinctValueFrequencies = [
                        ValueFrequencyClass(value=str(value), frequency=count)
                        for value, count in res["details"]
                        ["value_counts"].items()
                    ]
                    if not send_sample_values:
                        column_profile.distinctValueFrequencies = []
            elif exp == "expect_column_values_to_be_in_type_list":
                # ignore; we already know the types for each column via ingestion
                pass
            elif exp == "expect_column_values_to_be_unique":
                # ignore; this is generally covered by the unique value count test
                pass
            else:
                self.report.report_warning(
                    f"profile of {pretty_name}",
                    f"warning: unknown column mapper {exp} in col {column}",
                )