generated from dopt-python/py311
635 lines
22 KiB
Python
635 lines
22 KiB
Python
from __future__ import annotations
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import dataclasses as dc
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import datetime
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import json
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import warnings
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from typing import TYPE_CHECKING, Any, Final, TypeAlias, cast
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import polars as pl
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import sqlalchemy as sql
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from dopt_basics.datastructures import flatten
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from wattanalyse import db
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from wattanalyse.constants import QualityPsm
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from wattanalyse.types import SqlInsertStmts, SqlStatement
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if TYPE_CHECKING:
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from oracledb import Connection as OracleConnection
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from polars._typing import SchemaDict
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@dc.dataclass(slots=True, eq=False)
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class PreProcessResult:
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data: pl.LazyFrame
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filtered: pl.LazyFrame
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DROP_COLUMNS: Final[list[str]] = cast(
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list[str],
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list(flatten(((x.lower(), x.upper(), x.capitalize()) for x in ("id", "index", "idx")))), # type: ignore
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)
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PSM_SCORES: dict[QualityPsm, int] = {
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QualityPsm.FEHLEND: 1,
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QualityPsm.UNPLAUSIBEL: 0,
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QualityPsm.PLAUSIBEL: 2,
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}
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RENAMING_SCHEME_PSM: dict[str, str] = {
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"PA Pos": "PA_Pos",
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"PSM gemeldet am": "Meldezeitpunkt_Historie",
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"Import Ist": "Import-Ist_Historie",
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"1.bestät. Import Konfektionär": "Bestaetigter-Import_Historie",
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"Zuschnitt am": "Prod-Start_Historie",
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"Teile in Zuschnitt": "Prod-EP10_Historie",
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"Teile im Nähband": "Prod-EP20_Historie",
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"Fertigware aus Nähband": "Prod-EP30_Historie",
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"Teile kontrolliert": "Prod-EP40_Historie",
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"Teile verpackt in Karton": "Prod-EP50_Historie",
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"Konfektionär": "Konfektionaer",
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"Lieferantnr.": "Konfektionaer_ID",
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}
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PRIM_KEYS: Final[list[str]] = ["PA", "PA_Pos"]
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LOWER_BOUND_DATE_DEVIATION: Final[int] = 0
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UPPER_BOUND_DATE_DEVIATION: Final[int] = 0
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NUMBER_YEARS_UPPER_BOUND_DATES: Final[int] = 4
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TAB_NAME_PSM: Final[str] = "EXTERN_PSM"
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TAB_NAME_MIS: Final[str] = "EXTERN_MIS"
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USE_BOUNDARIES: Final[bool] = False
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filter_date_deviation_early: pl.Expr
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filter_date_deviation_late: pl.Expr
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if USE_BOUNDARIES:
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filter_date_deviation_early = pl.col("Terminunterschreitung")
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filter_date_deviation_late = pl.col("Terminüberschreitung")
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else:
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filter_date_deviation_early = pl.col("Terminabweichung_Anzahl_Tage") < 0
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filter_date_deviation_late = pl.col("Terminabweichung_Anzahl_Tage") > 0
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# // (0) load data
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def load_PSM_data(
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conn: OracleConnection,
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) -> pl.LazyFrame:
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stmt = f"""
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SELECT t1.* FROM "{TAB_NAME_PSM}" t1
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WHERE EXISTS(
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SELECT 1 FROM "{TAB_NAME_MIS}" t2
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WHERE t1."PA" = t2."PA" AND t1."PA Pos" = t2."PA Pos"
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)
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"""
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return oracle_load_table_as_polars(conn, db.extern_prod_order_t_schema, None, stmt)
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# // (1) preprocess
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def preprocess_psm(
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data: pl.LazyFrame,
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) -> PreProcessResult:
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data = data.rename(RENAMING_SCHEME_PSM)
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data = data.drop(DROP_COLUMNS, strict=False)
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REGEX_PATTERN = r"^[\s\-#+/$]+$"
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data = data.with_columns(
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pl.when(pl.col(pl.String).str.contains(REGEX_PATTERN))
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.then(None)
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.otherwise(pl.col(pl.String))
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.name.keep()
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)
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data = data.with_columns(pl.col("Konfektionaer").str.strip_chars(" \n\t"))
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filtered_data = pl.LazyFrame(schema=data.collect_schema())
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# drop duplicates
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# use null count as information measure, least amount of nulls should be contained
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data = data.with_columns(pl.sum_horizontal(pl.all().is_null()).alias("null_count"))
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data = data.sort(PRIM_KEYS + ["Meldezeitpunkt_Historie", "null_count"], descending=False)
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filtered_data = pl.concat(
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[
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filtered_data,
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data.filter(
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~pl.struct(PRIM_KEYS + ["Meldezeitpunkt_Historie"]).is_first_distinct()
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).drop("null_count"),
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]
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)
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data = data.filter(pl.struct(PRIM_KEYS + ["Meldezeitpunkt_Historie"]).is_first_distinct())
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data = data.drop("null_count")
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# any NULL values in critical columns
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NOT_NULL_COLS = ("PA", "PA_Pos", "Meldezeitpunkt_Historie")
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conds = [pl.col(col).is_null() for col in NOT_NULL_COLS]
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filtered_data = pl.concat([filtered_data, data.filter(pl.any_horizontal(*conds))])
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data = data.filter(~pl.any_horizontal(*conds))
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# implausible dates
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# dates not allowed to be in the future
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current_datetime = datetime.datetime.now()
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current_date = current_datetime.date()
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NOT_IN_FUTURE_COLS_DATETIME = ("Meldezeitpunkt_Historie",)
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NOT_IN_FUTURE_COLS_DATE = ("Wareneingang am", "Prod-Start_Historie")
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conds = [
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(pl.col(col) > current_datetime).fill_null(False)
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for col in NOT_IN_FUTURE_COLS_DATETIME
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]
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conds.extend(
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[(pl.col(col) > current_date).fill_null(False) for col in NOT_IN_FUTURE_COLS_DATE]
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)
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filtered_data = pl.concat([filtered_data, data.filter(pl.any_horizontal(*conds))])
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data = data.filter(~pl.any_horizontal(*conds))
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# too much in the future or the past
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# dates
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future_limit = current_date + datetime.timedelta(
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days=(365 * NUMBER_YEARS_UPPER_BOUND_DATES)
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)
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past_limit = datetime.date(1990, 1, 1)
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cond = (pl.col(pl.Date) > future_limit).fill_null(False) | (
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pl.col(pl.Date) < past_limit
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).fill_null(False)
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filtered_data = pl.concat([filtered_data, data.filter(pl.any_horizontal(cond))])
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data = data.filter(~pl.any_horizontal(cond))
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# datetimes
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future_limit = current_datetime + datetime.timedelta(
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days=(365 * NUMBER_YEARS_UPPER_BOUND_DATES)
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)
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past_limit = datetime.datetime(1990, 1, 1)
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cond = (pl.col(pl.Datetime) > future_limit).fill_null(False) | (
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pl.col(pl.Datetime) < past_limit
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).fill_null(False)
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filtered_data = pl.concat([filtered_data, data.filter(pl.any_horizontal(cond))])
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data = data.filter(~pl.any_horizontal(cond))
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return PreProcessResult(data=data, filtered=filtered_data)
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# // (2) process on order level
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def process_order_level(
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data: pl.LazyFrame,
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) -> pl.LazyFrame:
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# ** renaming
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data = data.sort(PRIM_KEYS + ["Meldezeitpunkt_Historie"], descending=False)
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# ** plausibility check of order quantities
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PLAUSI_FEATURES: list[str] = [
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"Prod-EP10_Historie",
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"Prod-EP20_Historie",
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"Prod-EP30_Historie",
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"Prod-EP40_Historie",
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"Prod-EP50_Historie",
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]
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data = data.with_columns(
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pl.all_horizontal(
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pl.col(PLAUSI_FEATURES).is_null() | (pl.col(PLAUSI_FEATURES) == 0)
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).alias("is_empty")
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)
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conditions = [
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pl.col(PLAUSI_FEATURES[i]) >= pl.col(PLAUSI_FEATURES[i + 1])
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for i in range(len(PLAUSI_FEATURES) - 1)
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]
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data = data.with_columns(
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pl.when(pl.all_horizontal(conditions) | pl.col("is_empty"))
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.then(pl.lit(True))
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.otherwise(pl.lit(False))
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.alias("Prod-Qty_is_valid")
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).with_columns(
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pl.when(pl.col("is_empty"))
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.then(pl.lit(PSM_SCORES[QualityPsm.FEHLEND]))
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.when(pl.col("Prod-Qty_is_valid"))
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.then(pl.lit(PSM_SCORES[QualityPsm.PLAUSIBEL]))
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.otherwise(pl.lit(PSM_SCORES[QualityPsm.UNPLAUSIBEL]))
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.alias("Prod-Qualitaet_Historie")
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)
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# aggregate hint for "Prod-Qualitaet_Durchschnitt": use "drop_nulls" "last"
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# aggregate "Prod-Qualitaet_Historie" and use "mean"
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# need additional "alias" on "Prod-Qualitaet_Historie"
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# ** planned or target delivery date
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current_date = datetime.datetime.now().date()
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print(f"{current_date=}")
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data = data.with_columns(
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pl.coalesce(["Bestaetigter-Import_Historie", "Import-Ist_Historie"]).alias(
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"Liefertermin_Soll"
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)
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)
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# aggregate hint for "Liefertermin_Soll": use "drop_nulls" "first"
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# first filled field for "Liefertermin Soll" is the relevant target date
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# should be first confirmed date, but if this field is not filled we use the first
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# filled import by the supplier
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# ** actual delivery date
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# logic of Wattana: set date is before current date --> becomes actual value
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data = data.with_columns(
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pl.when(pl.col("Import-Ist_Historie") < current_date)
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.then(pl.col("Import-Ist_Historie"))
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.otherwise(None)
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.alias("Liefertermin_Ist")
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)
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# aggregate hint for "Liefertermin_Ist": use "drop_nulls" "last"
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# keep last because that is the latest value set by the supplier
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# if all values are NULL then NULL is returned (no actual date available)
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# ** duration since last report in days
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data = data.sort(PRIM_KEYS + ["Meldezeitpunkt_Historie"], descending=False).with_columns(
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(
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pl.col("Meldezeitpunkt_Historie")
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- pl.col("Meldezeitpunkt_Historie").shift(1).over(PRIM_KEYS)
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)
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.dt.total_days()
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.alias("Tage_zu_letzter_PSM_Historie")
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)
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# aggregate hint for "Tage_zu_letzter_PSM_Durchschnitt"
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# aggregate "Tage_zu_letzter_PSM_Historie" and use "mean" (NULL is ignored automatically)
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# need additional "alias" on "Tage_zu_letzter_PSM_Historie"
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data = data.sort(PRIM_KEYS + ["Meldezeitpunkt_Historie"], descending=False).with_columns(
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# Prüfen: Ist das aktuelle Datum ungleich dem vorherigen Datum derselben Position?
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(
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pl.col("Import-Ist_Historie")
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!= pl.col("Import-Ist_Historie").shift(1).over(PRIM_KEYS)
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)
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.fill_null(False) # Der allererste Eintrag hat keinen Vorgänger -> Ist keine Änderung
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.alias("Import-Ist_geaendert")
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)
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# aggregate hint for "Import-Ist_geaendert"
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# aggregate "Import-Ist_geaendert" and use "last"
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# aggregate hint for "Import-Ist_letzter_Wert"
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# aggregate "Import-Ist_Historie" and use "drop_nulls" "last"
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# need additional "alias" on "Import-Ist_Historie"
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# aggregate hint for "Import-Ist_Anzahl_Aenderungen"
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# aggregate "Import-Ist_geaendert" and use "sum"
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# need additional "alias" on "Import-Ist_geaendert"
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# aggregate hint for "Prod-Start"
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# aggregate "Prod-Start_Historie" and use "drop_nulls" "first"
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# first entry should be treated as the truth value, changing later does not make sense
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# need additional "alias" on "Prod-Start_Historie"
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# whole aggregates see DB schema
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data = (
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data.sort(PRIM_KEYS + ["Meldezeitpunkt_Historie"], descending=False)
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.group_by(PRIM_KEYS + ["Konfektionaer", "Konfektionaer_ID"])
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.agg(
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pl.col("Meldezeitpunkt_Historie"),
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pl.col("Liefertermin_Soll").drop_nulls().first(),
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pl.col("Bestaetigter-Import_Historie"),
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pl.col("Liefertermin_Ist").drop_nulls().last(),
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pl.col("Import-Ist_Historie"),
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pl.col("Import-Ist_Historie")
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.drop_nulls()
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.last()
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.alias("Import-Ist_letzter_Wert"),
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pl.col("Import-Ist_geaendert").last(),
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pl.col("Import-Ist_geaendert").sum().alias("Import-Ist_Anzahl_Aenderungen"),
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pl.col("Tage_zu_letzter_PSM_Historie"),
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pl.col("Tage_zu_letzter_PSM_Historie")
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.mean()
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.alias("Tage_zu_letzter_PSM_Durchschnitt"),
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pl.col("Prod-EP10_Historie"),
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pl.col("Prod-EP20_Historie"),
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pl.col("Prod-EP30_Historie"),
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pl.col("Prod-EP40_Historie"),
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pl.col("Prod-EP50_Historie"),
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pl.col("Prod-Qualitaet_Historie"),
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pl.col("Prod-Qualitaet_Historie").mean().alias("Prod-Qualitaet_Durchschnitt"),
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pl.col("Prod-Start_Historie"),
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pl.col("Prod-Start_Historie").drop_nulls().first().alias("Prod-Start"),
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)
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)
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# ** order specific aggregates
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data = (
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data.with_columns(
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(pl.col("Liefertermin_Ist") - pl.col("Liefertermin_Soll"))
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.dt.total_days()
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.alias("Terminabweichung_Anzahl_Tage")
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)
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.with_columns(
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(pl.col("Terminabweichung_Anzahl_Tage") < LOWER_BOUND_DATE_DEVIATION).alias(
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"Terminunterschreitung"
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),
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(pl.col("Terminabweichung_Anzahl_Tage") > UPPER_BOUND_DATE_DEVIATION).alias(
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"Terminüberschreitung"
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),
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(pl.col("Liefertermin_Ist") - pl.col("Prod-Start"))
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.dt.total_days()
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.alias("Durchlaufzeit_Anzahl_Tage"),
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)
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.with_columns(
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pl.when(pl.col("Durchlaufzeit_Anzahl_Tage") < 0)
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.then(None)
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.otherwise(pl.col("Durchlaufzeit_Anzahl_Tage"))
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.alias("Durchlaufzeit_Anzahl_Tage")
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)
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)
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return data
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# // (3) dump order level to internal database
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def _json_default(
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value: Any,
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) -> str:
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if isinstance(value, (datetime.date, datetime.datetime)):
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return value.isoformat()
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raise TypeError
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def _parse_to_json(
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x: pl.Series | None,
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) -> str | None:
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if x is None:
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return None
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return json.dumps(x.to_list(), default=_json_default)
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def dump_order_level_to_internal_database_staging(
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data: pl.LazyFrame,
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) -> None:
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staging_data = data.with_columns(
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pl.col(pl.List)
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.map_elements(
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_parse_to_json,
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return_dtype=pl.String,
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)
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.name.keep()
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)
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staging_data = staging_data.collect()
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rows_inserted = staging_data.write_database(
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"Produktionsauftrag-Einzelsicht_Staging",
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connection=db.DB_URI,
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engine="adbc",
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if_table_exists="replace",
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)
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if rows_inserted != staging_data.height:
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raise RuntimeError("Number of inserted rows and length of staging data do not match.")
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all_columns = staging_data.columns
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update_columns = [col for col in all_columns if col not in PRIM_KEYS]
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sql_column_list_str = ", ".join([f'"{c}"' for c in all_columns])
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sql_pk_list_str = ", ".join([f'"{c}"' for c in PRIM_KEYS])
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sql_update_rules_str = ", ".join([f'"{c}" = EXCLUDED."{c}"' for c in update_columns])
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upsert_sql = f"""
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INSERT INTO "Produktionsauftrag-Einzelsicht" ({sql_column_list_str})
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SELECT {sql_column_list_str} FROM "Produktionsauftrag-Einzelsicht_Staging" WHERE 1=1
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ON CONFLICT({sql_pk_list_str}) DO UPDATE SET
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{sql_update_rules_str};
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"""
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with db.ENGINE_INTERNAL.begin() as conn:
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conn.execute(sql.text(upsert_sql))
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conn.execute(
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sql.text('DROP TABLE IF EXISTS "Produktionsauftrag-Einzelsicht_Staging";')
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)
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def dump_order_level_to_internal_database_wipe(
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data: pl.LazyFrame,
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) -> None:
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staging_data = data.with_columns(
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pl.col(pl.List)
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.map_elements(
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_parse_to_json,
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return_dtype=pl.String,
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)
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.name.keep()
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)
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# empty table
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with db.ENGINE_INTERNAL.begin() as conn:
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conn.execute(sql.text('DELETE FROM "Produktionsauftrag-Einzelsicht";'))
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staging_data = staging_data.collect()
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rows_inserted = staging_data.write_database(
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"Produktionsauftrag-Einzelsicht",
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connection=db.DB_URI,
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engine="adbc",
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if_table_exists="append",
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)
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if rows_inserted != staging_data.height:
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raise RuntimeError("Number of inserted rows and length of staging data do not match.")
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# ** load order level data from internal database
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def load_order_level_from_internal_database() -> pl.DataFrame:
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data = pl.read_database_uri(
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'SELECT * FROM "Produktionsauftrag-Einzelsicht"',
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uri=db.DB_URI,
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engine="adbc",
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schema_overrides=db.intern_prod_order_t_schema,
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)
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list_cols_to_type: dict[str, type[pl.DataType]] = {
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"Meldezeitpunkt_Historie": pl.Datetime,
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"Bestaetigter-Import_Historie": pl.Date,
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"Import-Ist_Historie": pl.Date,
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"Tage_zu_letzter_PSM_Historie": pl.Int64,
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"Prod-EP10_Historie": pl.UInt64,
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"Prod-EP20_Historie": pl.UInt64,
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"Prod-EP30_Historie": pl.UInt64,
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|
"Prod-EP40_Historie": pl.UInt64,
|
|
"Prod-EP50_Historie": pl.UInt64,
|
|
"Prod-Qualitaet_Historie": pl.Int32,
|
|
"Prod-Start_Historie": pl.Date,
|
|
}
|
|
|
|
list_col_parse_conds = {
|
|
col: pl.col(col).str.json_decode(pl.List(list_type))
|
|
for col, list_type in list_cols_to_type.items()
|
|
}
|
|
|
|
return data.with_columns(**list_col_parse_conds)
|
|
|
|
|
|
# // (4) post-process results
|
|
def aggregate_production_orders(
|
|
data: pl.LazyFrame,
|
|
) -> pl.LazyFrame:
|
|
data = data.select(
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.filter(filter_date_deviation_early)
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_TAGE_LIEFERTERMINUNTERSCHREITUNG"),
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.filter(filter_date_deviation_late)
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_TAGE_LIEFERTERMINUEBERSCHREITUNG"),
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.std(ddof=1)
|
|
.alias("STANDARDABWEICHUNG_TAGE_LIEFERTERMINABWEICHUNG"),
|
|
pl.col("Import-Ist_Anzahl_Aenderungen")
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_ANPASSUNGEN_LIEFERTERMIN"),
|
|
pl.col("Tage_zu_letzter_PSM_Historie")
|
|
.list.explode()
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ABSTAENDE_ZWISCHEN_MELDUNGEN"),
|
|
pl.col("Durchlaufzeit_Anzahl_Tage")
|
|
.mean()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_DURCHLAUFZEIT_ANZAHL_TAGE"),
|
|
)
|
|
|
|
return data
|
|
|
|
|
|
def aggregate_suppliers(
|
|
data: pl.LazyFrame,
|
|
) -> pl.LazyFrame:
|
|
data = data.group_by(["Konfektionaer", "Konfektionaer_ID"]).agg(
|
|
(
|
|
(
|
|
~(filter_date_deviation_early | filter_date_deviation_late)
|
|
& (pl.col("Import-Ist_Anzahl_Aenderungen") == 0)
|
|
).mean()
|
|
* 100
|
|
)
|
|
.round(4, mode="half_away_from_zero")
|
|
.alias("QUOTE_ERSTBESTAETIGUNG"),
|
|
((~(filter_date_deviation_early | filter_date_deviation_late)).mean() * 100)
|
|
.round(4, mode="half_away_from_zero")
|
|
.alias("PROZENT_LIEFERTREUE"),
|
|
(filter_date_deviation_early.mean() * 100)
|
|
.round(4, mode="half_away_from_zero")
|
|
.alias("ANTEIL_PROZENT_LIEFERTERMINUNTERSCHREITUNG"),
|
|
(filter_date_deviation_late.mean() * 100)
|
|
.round(4, mode="half_away_from_zero")
|
|
.alias("ANTEIL_PROZENT_LIEFERTERMINUEBERSCHREITUNG"),
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.filter(filter_date_deviation_early)
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_TAGE_LIEFERTERMINUNTERSCHREITUNG"),
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.filter(filter_date_deviation_late)
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_TAGE_LIEFERTERMINUEBERSCHREITUNG"),
|
|
pl.col("Terminabweichung_Anzahl_Tage")
|
|
.std(ddof=1)
|
|
.alias("STANDARDABWEICHUNG_TAGE_LIEFERTERMINABWEICHUNG"),
|
|
pl.col("Import-Ist_Anzahl_Aenderungen")
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ANZAHL_ANPASSUNGEN_LIEFERTERMIN"),
|
|
pl.col("Tage_zu_letzter_PSM_Historie")
|
|
.list.explode()
|
|
.mean()
|
|
.abs()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_ABSTAENDE_ZWISCHEN_MELDUNGEN"),
|
|
pl.col("Durchlaufzeit_Anzahl_Tage")
|
|
.mean()
|
|
.round(mode="half_away_from_zero")
|
|
.cast(pl.Int64)
|
|
.alias("MITTLERE_DURCHLAUFZEIT_ANZAHL_TAGE"),
|
|
pl.col("Prod-Qualitaet_Historie")
|
|
.list.explode()
|
|
.mean()
|
|
.round(4, mode="half_away_from_zero")
|
|
.alias("MITTLERER_QUALITAETSSCORE_PSM"),
|
|
)
|
|
|
|
return data
|
|
|
|
|
|
# // (5) external database
|
|
def oracle_prepare_KPI_aggregate(
|
|
data: pl.LazyFrame,
|
|
rename_schema: dict[str, str] | None = None,
|
|
sort_by: str = "",
|
|
sort_descending: bool = False,
|
|
) -> pl.LazyFrame:
|
|
if rename_schema is not None:
|
|
data = data.rename(rename_schema)
|
|
|
|
cols_sorted = ["ID", "AKTUALISIERT_AM"] + [c for c in data.collect_schema().names()]
|
|
|
|
if sort_by:
|
|
data = data.sort(sort_by, descending=sort_descending)
|
|
|
|
data = data.with_row_index("ID", 1)
|
|
data = (
|
|
data.with_columns(
|
|
pl.lit(datetime.datetime.now()).alias("AKTUALISIERT_AM"),
|
|
)
|
|
.select(
|
|
pl.col(pl.Boolean).cast(pl.Int8),
|
|
pl.all().exclude(pl.Boolean),
|
|
)
|
|
.select(cols_sorted)
|
|
.select(pl.all().name.to_uppercase())
|
|
)
|
|
|
|
return data
|
|
|
|
|
|
def oracle_generate_sql_insert(
|
|
table_name: str,
|
|
columns: list,
|
|
) -> SqlInsertStmts:
|
|
spalten_str = ", ".join([f'"{c}"' for c in columns])
|
|
platzhalter_str = ", ".join([f":{i}" for i in range(1, len(columns) + 1)])
|
|
|
|
sql_delete = f'DELETE FROM "{table_name}"'
|
|
sql_insert = f'INSERT INTO "{table_name}" ({spalten_str}) VALUES ({platzhalter_str})'
|
|
|
|
return SqlInsertStmts(delete=sql_delete, insert=sql_insert)
|
|
|
|
|
|
def oracle_load_table_as_polars(
|
|
conn: OracleConnection,
|
|
schema: SchemaDict | None,
|
|
table_name: str | None = None,
|
|
stmt: SqlStatement | None = None,
|
|
) -> pl.LazyFrame:
|
|
if not any((table_name, stmt)):
|
|
raise ValueError("Table name or SQL statement must be provided")
|
|
if all((table_name, stmt)):
|
|
warnings.warn(
|
|
"Table name and SQL statement provided. In this case, the statement is used."
|
|
)
|
|
if not stmt:
|
|
stmt = f"SELECT * FROM {table_name}"
|
|
|
|
odf = conn.fetch_df_all(statement=stmt)
|
|
df = cast(pl.DataFrame, pl.from_arrow(odf, schema_overrides=schema))
|
|
|
|
return df.lazy()
|
|
|
|
|
|
def oracle_save_polars(
|
|
conn: OracleConnection,
|
|
stmts: SqlInsertStmts,
|
|
data: pl.DataFrame,
|
|
) -> None:
|
|
with conn.cursor() as cursor:
|
|
cursor.execute(stmts.delete)
|
|
cursor.executemany(stmts.insert, data)
|
|
conn.commit()
|