import pandas as pd from bs4 import BeautifulSoup import requests # Table names: # fact_sales_order # fact_purchase_orders # fact_payment # dim_transaction # dim_staff # dim_payment_type # dim_location # dim_design # dim_date # dim_currency # dim_counterparty # no test, same as fact_payment def create_fact_sales_order(dict_of_df): df_sales = dict_of_df["sales_order"].rename(columns={"staff_id": "sales_staff_id"}) df_sales["created_date"] = df_sales["created_at"].astype("datetime64[ns]").dt.date df_sales["created_time"] = ( df_sales["created_at"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_sales["last_updated_date"] = ( df_sales["last_updated"].astype("datetime64[ns]").dt.date ) df_sales["last_updated_time"] = ( df_sales["last_updated"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_sales["agreed_delivery_date"] = pd.to_datetime( df_sales["agreed_delivery_date"], format="%Y-%m-%d" ) df_sales["agreed_payment_date"] = pd.to_datetime( df_sales["agreed_payment_date"], format="%Y-%m-%d" ) fact_sales = df_sales.loc[ :, [ "sales_order_id", "created_date", "created_time", "last_updated_date", "last_updated_time", "sales_staff_id", "counterparty_id", "units_sold", "unit_price", "currency_id", "design_id", "agreed_payment_date", "agreed_delivery_date", "agreed_delivery_location_id", ], ] fact_sales.convert_dtypes() fact_sales.index = pd.RangeIndex(1, len(fact_sales.index) + 1) fact_sales.index.name = "sales_record_id" fact_sales.reset_index(inplace=True) fact_sales.dropna(inplace=True) return fact_sales # no test, same as fact_payment def create_fact_purchase_orders(dict_of_df): df_po = dict_of_df["purchase_order"] df_po["created_date"] = df_po["created_at"].astype("datetime64[ns]").dt.date df_po["created_time"] = ( df_po["created_at"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_po["last_updated_date"] = df_po["last_updated"].astype("datetime64[ns]").dt.date df_po["last_updated_time"] = ( df_po["last_updated"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_po["agreed_delivery_date"] = pd.to_datetime( df_po["agreed_delivery_date"], format="%Y-%m-%d" ) df_po["agreed_payment_date"] = pd.to_datetime( df_po["agreed_payment_date"], format="%Y-%m-%d" ) fact_purchase_order = df_po.loc[ :, [ "purchase_order_id", "created_date", "created_time", "last_updated_date", "last_updated_time", "staff_id", "counterparty_id", "item_code", "item_quantity", "item_unit_price", "currency_id", "agreed_delivery_date", "agreed_payment_date", "agreed_delivery_location_id", ], ] fact_purchase_order.convert_dtypes() fact_purchase_order.index = pd.RangeIndex(1, len(fact_purchase_order.index) + 1) fact_purchase_order.index.name = "purchase_record_id" fact_purchase_order.reset_index(inplace=True) fact_purchase_order.dropna(inplace=True) return fact_purchase_order # test passed def create_fact_payment(dict_of_df): df_payment = dict_of_df["payment"] df_payment["created_date"] = ( df_payment["created_at"].astype("datetime64[ns]").dt.date ) df_payment["created_time"] = ( df_payment["created_at"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_payment["last_updated_date"] = ( df_payment["last_updated"].astype("datetime64[ns]").dt.date ) df_payment["last_updated_time"] = ( df_payment["last_updated"].astype("datetime64[ns]").dt.floor("s").dt.time ) df_payment["payment_date"] = pd.to_datetime( df_payment["payment_date"], format="%Y-%m-%d" ) fact_payment = df_payment.loc[ :, [ "payment_id", "created_date", "created_time", "last_updated_date", "last_updated_time", "transaction_id", "counterparty_id", "payment_amount", "currency_id", "payment_type_id", "paid", "payment_date", ], ] fact_payment.convert_dtypes() fact_payment.index = pd.RangeIndex(1, len(fact_payment.index) + 1) fact_payment.index.name = "payment_record_id" fact_payment.reset_index(inplace=True) fact_payment.dropna(inplace=True) fact_payment = fact_payment.astype({"currency_id": "int", "payment_id": "int"}) return fact_payment # test passed def create_dim_transaction(dict_of_df): dim_transaction = dict_of_df["transaction"].loc[ :, ["transaction_id", "transaction_type", "sales_order_id", "purchase_order_id"] ] # dim_transaction = dim_transaction.astype({"sales_order_id":"Int64","purchase_order_id":"Int64"}) return dim_transaction # test passed def create_dim_location(dict_of_df): dim_location = ( dict_of_df["address"] .drop(labels=["created_at", "last_updated"], axis=1) .rename(columns={"address_id": "location_id"}) ) return dim_location def create_dim_counterparty(dict_of_df): df_prefixed_address = ( dict_of_df["address"] .drop(labels=["created_at", "last_updated"], axis=1) .rename(columns={"phone": "phone_number"}) .add_prefix("counterparty_legal_", axis=1) ) df_cp = pd.merge( dict_of_df["counterparty"], df_prefixed_address, left_on="legal_address_id", right_on="counterparty_legal_address_id", how="inner", ) # .dropna(inplace=True) dim_counterparty = df_cp.drop( labels=[ "legal_address_id", "counterparty_legal_address_id", "created_at", "last_updated", "commercial_contact", "delivery_contact", ], axis=1, ) return dim_counterparty # test passed def create_dim_date(dict_of_df): fact_dfs = [ create_fact_payment(dict_of_df), create_fact_purchase_orders(dict_of_df), create_fact_sales_order(dict_of_df), ] list_of_date_columns = [] for df in fact_dfs: date_col_names = [ col_name for col_name in list(df.columns) if "_date" in col_name ] for col in date_col_names: list_of_date_columns.append(df[col]) sr_date = pd.array(pd.concat(list_of_date_columns), dtype="datetime64[ns]") df_date = pd.DataFrame(data=sr_date, columns=["date_id"]) df_date.drop_duplicates(inplace=True) # df_date.dropna(inplace=True) df_date["year"] = df_date["date_id"].dt.year df_date["month"] = df_date["date_id"].dt.month df_date["day"] = df_date["date_id"].dt.day df_date["day_of_week"] = df_date["date_id"].dt.dayofweek df_date["day_name"] = df_date["date_id"].dt.day_name() df_date["month_name"] = df_date["date_id"].dt.month_name() df_date["quarter"] = df_date["date_id"].dt.quarter return df_date # tests passed def scrape_currency_names(): response = requests.get("https://www.xe.com/currency/").content soup = BeautifulSoup(response, "html.parser") currency = [ item.text for item in soup.findAll("a", attrs={"class": "sc-299dec64-6 fZPTSw"}) ] sr = pd.Series(currency) df_cur = sr.str.split(pat=" - ", expand=True).rename( {0: "currency_code", 1: "currency_name"}, axis=1 ) return df_cur # tests passed def create_dim_currency(dict_of_df, names=scrape_currency_names()): df_cur = dict_of_df["currency"].drop(labels=["created_at", "last_updated"], axis=1) dim_currency = pd.merge( df_cur, names, left_on="currency_code", right_on="currency_code", how="left" ) dim_currency.drop_duplicates(inplace=True) dim_currency.astype({"currency_name": "string", "currency_code": "string"}) print(dim_currency.dtypes, "<<<<<<<<