aboutsummaryrefslogtreecommitdiffstats
diff options
context:
space:
mode:
-rw-r--r--src/dataframes.py230
-rw-r--r--tests/test_dataframes.py286
2 files changed, 368 insertions, 148 deletions
diff --git a/src/dataframes.py b/src/dataframes.py
index 1f445a4..da0b170 100644
--- a/src/dataframes.py
+++ b/src/dataframes.py
@@ -2,7 +2,7 @@ import pandas as pd
from bs4 import BeautifulSoup
import requests
-#Table names:
+# Table names:
# fact_sales_order
# fact_purchase_orders
# fact_payment
@@ -16,133 +16,207 @@ import requests
# dim_counterparty
-#no test, same as fact_payment
+# no test, same as fact_payment
def create_fact_sales_order(dict_of_df):
df_sales = dict_of_df["sales_order"]
df_sales.index.name = "sales_record_id"
- df_sales["created_date"] = pd.to_datetime(df_sales["created_at"].dt.date,format='%Y-%m-%d')
- df_sales["created_time"] = df_sales["created_at"].dt.floor('s').dt.time
- df_sales["last_updated_date"] = pd.to_datetime(df_sales["last_updated"].dt.date,format='%Y-%m-%d')
- df_sales["last_updated_time"] = df_sales["last_updated"].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")
- df_sales.drop(labels=['created_at','last_updated'],axis=1,inplace=True)
+ df_sales["created_date"] = pd.to_datetime(
+ df_sales["created_at"].dt.date, format="%Y-%m-%d"
+ )
+ df_sales["created_time"] = df_sales["created_at"].dt.floor("s").dt.time
+ df_sales["last_updated_date"] = pd.to_datetime(
+ df_sales["last_updated"].dt.date, format="%Y-%m-%d"
+ )
+ df_sales["last_updated_time"] = df_sales["last_updated"].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"
+ )
+ df_sales.drop(labels=["created_at", "last_updated"], axis=1, inplace=True)
df_sales.reset_index(inplace=True)
return df_sales
-#no test, same as fact_payment
+
+# no test, same as fact_payment
+
+
def create_fact_purchase_orders(dict_of_df):
- df_po = dict_of_df['purchase_order']
- df_po.index.name = 'purchase_record_id'
- df_po['created_date'] = pd.to_datetime(df_po['created_at'].dt.date,format='%Y-%m-%d')
- df_po['created_time'] = df_po['created_at'].dt.floor('s').dt.time
- df_po['last_updated_date'] = pd.to_datetime(df_po['last_updated'].dt.date,format='%Y-%m-%d')
- df_po['last_updated_time'] = df_po['last_updated'].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")
- df_po.drop(labels=['created_at','last_updated'],axis=1,inplace=True)
+ df_po = dict_of_df["purchase_order"]
+ df_po.index.name = "purchase_record_id"
+ df_po["created_date"] = pd.to_datetime(
+ df_po["created_at"].dt.date, format="%Y-%m-%d"
+ )
+ df_po["created_time"] = df_po["created_at"].dt.floor("s").dt.time
+ df_po["last_updated_date"] = pd.to_datetime(
+ df_po["last_updated"].dt.date, format="%Y-%m-%d"
+ )
+ df_po["last_updated_time"] = df_po["last_updated"].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"
+ )
+ df_po.drop(labels=["created_at", "last_updated"], axis=1, inplace=True)
df_po.reset_index(inplace=True)
return df_po
-#test passed
+
+# test passed
+
+
def create_fact_payment(dict_of_df):
df_payment = dict_of_df["payment"]
df_payment.index.name = "payment_record_id"
- df_payment["created_date"] = pd.to_datetime(df_payment["created_at"].dt.date,format='%Y-%m-%d')
- df_payment["created_time"] = df_payment["created_at"].dt.floor('s').dt.time
- df_payment["last_updated_date"] = pd.to_datetime(df_payment["last_updated"].dt.date,format='%Y-%m-%d')
- df_payment["last_updated_time"] = df_payment["last_updated"].dt.floor('s').dt.time
- df_payment['payment_date'] = pd.to_datetime(df_payment['payment_date'],format="%Y-%m-%d")
- df_payment.drop(labels=['created_at','last_updated'],axis=1,inplace=True)
+ df_payment["created_date"] = pd.to_datetime(
+ df_payment["created_at"].dt.date, format="%Y-%m-%d"
+ )
+ df_payment["created_time"] = df_payment["created_at"].dt.floor("s").dt.time
+ df_payment["last_updated_date"] = pd.to_datetime(
+ df_payment["last_updated"].dt.date, format="%Y-%m-%d"
+ )
+ df_payment["last_updated_time"] = df_payment["last_updated"].dt.floor("s").dt.time
+ df_payment["payment_date"] = pd.to_datetime(
+ df_payment["payment_date"], format="%Y-%m-%d"
+ )
+ df_payment.drop(labels=["created_at", "last_updated"], axis=1, inplace=True)
df_payment.reset_index(inplace=True)
return df_payment
-#test passed
+
+# test passed
+
+
def create_dim_transaction(dict_of_df):
- df_transaction = dict_of_df["transaction"].drop(labels=['created_at', 'last_updated'], axis=1)
+ df_transaction = dict_of_df["transaction"].drop(
+ labels=["created_at", "last_updated"], axis=1
+ )
return df_transaction
-#test passed
+
+# test passed
+
+
def create_dim_location(dict_of_df):
- df_loc = dict_of_df['address'].drop(labels=['created_at', 'last_updated'], axis=1).rename(columns={'address_id': 'location_id'})
+ df_loc = (
+ dict_of_df["address"]
+ .drop(labels=["created_at", "last_updated"], axis=1)
+ .rename(columns={"address_id": "location_id"})
+ )
return df_loc
def create_dim_counterparty(dict_of_df):
- df_prefixed_address = dict_of_df['address'].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="outer")
- df_cp.drop(columns=["legal_address_id","counterparty_legal_address_id"],inplace=True)
+ df_prefixed_address = dict_of_df["address"].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="outer",
+ )
+ df_cp.drop(
+ columns=["legal_address_id", "counterparty_legal_address_id"], inplace=True
+ )
return df_cp
-#test passed
+
+# 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)]
+ 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]
+ 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'])
+ 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['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
+ 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_cur = pd.merge(df_cur,names,left_on='currency_code',right_on='currency_code',how='inner')
- return dim_cur
-#tests passed
-def create_dim_payment_type(dict_of_df):
- df_payment_type = dict_of_df["payment_type"]
- dim_payment_type = df_payment_type.loc[:, ["payment_type_id", "payment_type_name"]]
- return dim_payment_type
+# tests passed
-#tests passed
-def create_dim_design(dict_of_df):
- df_design = dict_of_df["design"]
- dim_design = df_design.loc[:, ["design_id", "design_name", "file_name", "file_location"]]
- return dim_design
-#tests passed
-def create_dim_staff(dict_of_df):
- staff_department = pd.merge(dict_of_df["staff"], dict_of_df["department"], on='department_id', how="left")
- dim_staff = staff_department.loc[:, ['staff_id', 'first_name', 'last_name', 'department_name', 'location', 'email_address']]
- return dim_staff
+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_cur = pd.merge(
+ df_cur, names, left_on="currency_code", right_on="currency_code", how="inner"
+ )
+ return dim_cur
+# tests passed
+def create_dim_payment_type(dict_of_df):
+ df_payment_type = dict_of_df["payment_type"]
+ dim_payment_type = df_payment_type.loc[:, ["payment_type_id", "payment_type_name"]]
+ return dim_payment_type
+# tests passed
+def create_dim_design(dict_of_df):
+ df_design = dict_of_df["design"]
+ dim_design = df_design.loc[
+ :, ["design_id", "design_name", "file_name", "file_location"]
+ ]
+ return dim_design
+# tests passed
+def create_dim_staff(dict_of_df):
+ staff_department = pd.merge(
+ dict_of_df["staff"], dict_of_df["department"], on="department_id", how="left"
+ )
+ dim_staff = staff_department.loc[
+ :,
+ [
+ "staff_id",
+ "first_name",
+ "last_name",
+ "department_name",
+ "location",
+ "email_address",
+ ],
+ ]
+ return dim_staff
diff --git a/tests/test_dataframes.py b/tests/test_dataframes.py
index 70aefe8..bd81f73 100644
--- a/tests/test_dataframes.py
+++ b/tests/test_dataframes.py
@@ -3,42 +3,88 @@ import pandas as pd
from unittest.mock import patch
from datetime import datetime as dt
+
class TestCreateDimDesign:
def test_dim_design_returns_dataframe(self):
- d = {"test": ["Hello", "Bye"], "design_id": ["Hello", "Bye"], "design_name": ["Hello", "Bye"],
- "file_name": ["Hello", "Bye"], "file_location": ["Hello", "Bye"], "Hello": ["Hello", "Bye"]}
+ d = {
+ "test": ["Hello", "Bye"],
+ "design_id": ["Hello", "Bye"],
+ "design_name": ["Hello", "Bye"],
+ "file_name": ["Hello", "Bye"],
+ "file_location": ["Hello", "Bye"],
+ "Hello": ["Hello", "Bye"],
+ }
test_df = {"design": pd.DataFrame(data=d)}
result = create_dim_design(test_df)
assert isinstance(result, pd.DataFrame)
def test_dim_design_returns_correct_columns_and_values(self):
- d = {"test": ["Hello", "Bye"], "design_id": ["Hello", "Bye"], "design_name": ["Hello", "Bye"],
- "file_name": ["Hello", "Bye"], "file_location": ["Hello", "Bye"], "Hello": ["Hello", "Bye"]}
+ d = {
+ "test": ["Hello", "Bye"],
+ "design_id": ["Hello", "Bye"],
+ "design_name": ["Hello", "Bye"],
+ "file_name": ["Hello", "Bye"],
+ "file_location": ["Hello", "Bye"],
+ "Hello": ["Hello", "Bye"],
+ }
test_df = {"design": pd.DataFrame(data=d)}
result = create_dim_design(test_df)
- d2 = {"design_id": ["Hello", "Bye"], "design_name": ["Hello", "Bye"], "file_name": ["Hello", "Bye"],
- "file_location": ["Hello", "Bye"]}
+ d2 = {
+ "design_id": ["Hello", "Bye"],
+ "design_name": ["Hello", "Bye"],
+ "file_name": ["Hello", "Bye"],
+ "file_location": ["Hello", "Bye"],
+ }
expected_df = pd.DataFrame(data=d2)
expected_result = expected_df.copy()
assert result.equals(expected_result)
+
class TestCreateDimStaff:
def test_dim_staff_returns_dataframe(self):
- d = {"staff_id": ["Hello", "Bye"], "first_name": ["Hello", "Bye"], "last_name": ["Hello", "Bye"], "department_id": ["Hello", "Bye"]}
- d2 = {"department_name": ["Hello", "Bye"], "location": ["Hello", "Bye"], "email_address": ["Hello", "Bye"], "department_id": ["Hello", "Bye"]}
+ d = {
+ "staff_id": ["Hello", "Bye"],
+ "first_name": ["Hello", "Bye"],
+ "last_name": ["Hello", "Bye"],
+ "department_id": ["Hello", "Bye"],
+ }
+ d2 = {
+ "department_name": ["Hello", "Bye"],
+ "location": ["Hello", "Bye"],
+ "email_address": ["Hello", "Bye"],
+ "department_id": ["Hello", "Bye"],
+ }
test_df = {"staff": pd.DataFrame(data=d), "department": pd.DataFrame(data=d2)}
result = create_dim_staff(test_df)
- assert isinstance(result, pd.DataFrame)
+ assert isinstance(result, pd.DataFrame)
def test_dim_staff_returns_correct_columns_and_values(self):
- d = {"staff_id": ["Hello", "Bye"], "first_name": ["Hello", "Bye"], "last_name": ["Hello", "Bye"], "department_id": ["Hello", "Bye"]}
- d2 = {"department_name": ["Hello", "Bye"], "location": ["Hello", "Bye"], "email_address": ["Hello", "Bye"], "department_id": ["Hello", "Bye"]}
+ d = {
+ "staff_id": ["Hello", "Bye"],
+ "first_name": ["Hello", "Bye"],
+ "last_name": ["Hello", "Bye"],
+ "department_id": ["Hello", "Bye"],
+ }
+ d2 = {
+ "department_name": ["Hello", "Bye"],
+ "location": ["Hello", "Bye"],
+ "email_address": ["Hello", "Bye"],
+ "department_id": ["Hello", "Bye"],
+ }
test_df = {"staff": pd.DataFrame(data=d), "department": pd.DataFrame(data=d2)}
result = create_dim_staff(test_df)
- expected_d = {"staff_id": ["Hello", "Bye"], "first_name": ["Hello", "Bye"], "last_name": ["Hello", "Bye"], "department_name": ["Hello", "Bye"], "location": ["Hello", "Bye"], "email_address": ["Hello", "Bye"]}
+ expected_d = {
+ "staff_id": ["Hello", "Bye"],
+ "first_name": ["Hello", "Bye"],
+ "last_name": ["Hello", "Bye"],
+ "department_name": ["Hello", "Bye"],
+ "location": ["Hello", "Bye"],
+ "email_address": ["Hello", "Bye"],
+ }
expected_df = pd.DataFrame(data=expected_d)
expected_result = expected_df.copy()
- assert result.equals(expected_result)
+ assert result.equals(expected_result)
+
class TestCreatePaymentType:
def test_create_dim_payment_type_returns_correct_columns_and_values(self):
@@ -46,104 +92,204 @@ class TestCreatePaymentType:
test_df = {"payment_type": pd.DataFrame(data=d)}
result = create_dim_payment_type(test_df)
expected_columns = ["payment_type_id", "payment_type_name"]
- expected_d = {"payment_type_id": ["Hello", "Bye"], "payment_type_name": ["Hello", "Bye"]}
+ expected_d = {
+ "payment_type_id": ["Hello", "Bye"],
+ "payment_type_name": ["Hello", "Bye"],
+ }
expected_df = pd.DataFrame(data=expected_d)
assert isinstance(result, pd.DataFrame)
assert list(result.columns) == expected_columns
assert result.equals(expected_df)
+
class TestCreateDimCounterparty:
-
def test_create_dim_counterparty_type_returns_correct_columns_and_object(self):
- data_l = pd.DataFrame(data={"counterparty_id": ["Hello", "Bye"],
- "counterparty_legal_name": ["Hello", "Bye"],
- "commercial_contact": ["Hello", "Bye"],
- "legal_address_id": ["bond street", "regent street"]})
- data_a = pd.DataFrame(data={"address_id":["bond street", "regent street"],
- "postcode":[98365,93753]})
- test_df = {"address": data_a,"counterparty":data_l}
+ data_l = pd.DataFrame(
+ data={
+ "counterparty_id": ["Hello", "Bye"],
+ "counterparty_legal_name": ["Hello", "Bye"],
+ "commercial_contact": ["Hello", "Bye"],
+ "legal_address_id": ["bond street", "regent street"],
+ }
+ )
+ data_a = pd.DataFrame(
+ data={
+ "address_id": ["bond street", "regent street"],
+ "postcode": [98365, 93753],
+ }
+ )
+ test_df = {"address": data_a, "counterparty": data_l}
result = create_dim_counterparty(test_df)
- expected_columns = ["counterparty_id", "counterparty_legal_name",
- "commercial_contact", "counterparty_legal_postcode"]
+ expected_columns = [
+ "counterparty_id",
+ "counterparty_legal_name",
+ "commercial_contact",
+ "counterparty_legal_postcode",
+ ]
print(data_l)
print(data_a)
assert isinstance(result, pd.DataFrame)
assert list(result.columns) == expected_columns
+
class TestCreateDimCurrency:
-
def test_dim_currency_returns_columns_and_values(self):
- nones = [None,None,None]
- d = {"currency_id": [1, 2, 3], "currency_code": ["USD", "EUR", "GBP"],"created_at":nones,"last_updated":nones}
+ nones = [None, None, None]
+ d = {
+ "currency_id": [1, 2, 3],
+ "currency_code": ["USD", "EUR", "GBP"],
+ "created_at": nones,
+ "last_updated": nones,
+ }
test_df = {"currency": pd.DataFrame(data=d)}
- scraper_output = pd.DataFrame({"currency_code":["RUS","USD","PHP","GBP","EUR"],"currency_name":["Rubble","US Dollar","Peso","Pound","Euro"]})
- result = create_dim_currency(test_df,names=scraper_output).sort_values(by="currency_code",axis=0)
- expected_d = {"currency_id": [1, 2, 3], "currency_code": ["USD", "EUR", "GBP"], "currency_name": ["US Dollar", "Euro", "Pound"]}
- expected_df = pd.DataFrame(data=expected_d).sort_values(by="currency_code",axis=0)
- assert isinstance(result, pd.DataFrame)
- assert result.equals(expected_df)
+ scraper_output = pd.DataFrame(
+ {
+ "currency_code": ["RUS", "USD", "PHP", "GBP", "EUR"],
+ "currency_name": ["Rubble", "US Dollar", "Peso", "Pound", "Euro"],
+ }
+ )
+ result = create_dim_currency(test_df, names=scraper_output).sort_values(
+ by="currency_code", axis=0
+ )
+ expected_d = {
+ "currency_id": [1, 2, 3],
+ "currency_code": ["USD", "EUR", "GBP"],
+ "currency_name": ["US Dollar", "Euro", "Pound"],
+ }
+ expected_df = pd.DataFrame(data=expected_d).sort_values(
+ by="currency_code", axis=0
+ )
+ assert isinstance(result, pd.DataFrame)
+ assert result.equals(expected_df)
def test_scrape_currency_names_returns_dataframe_with_correct_collumns(self):
result = scrape_currency_names()
- assert isinstance(result,pd.DataFrame)
- assert list(result.columns) == ['currency_code', 'currency_name']
+ assert isinstance(result, pd.DataFrame)
+ assert list(result.columns) == ["currency_code", "currency_name"]
-class TestCreateDimDate:
+class TestCreateDimDate:
def test_returns_required_columns(self):
- df_one = pd.DataFrame(data={'updated_date':dt(2020, 5, 17),'created_date':dt(2021, 5, 13),'not_dat':None},index=[0])
- df_two = pd.DataFrame(data={'updated_date':dt(2020, 5, 17),'created_date':dt(2021, 9, 13)},index=[0])
- df_three = pd.DataFrame(data={'updated_date':dt(2022, 5, 17),'created_date':dt(2023, 5, 13)},index=[0])
- expected_df = pd.DataFrame(data=
- [[dt(2020,5,17),2020,5,17,6,'Sunday','May',2],
- [dt(2021,5,13),2021,5,13,3,'Thursday','May',2],
- [dt(2021,9,13),2021,9,13,0,'Monday','September',3],
- [dt(2022,5,17),2022,5,17,1,'Tuesday','May',2],
- [dt(2023,5,13),2023,5,13,5,'Saturday','May',2]],
- columns=['date_id','year','month','day','day_of_week','day_name','month_name','quarter'])
+ df_one = pd.DataFrame(
+ data={
+ "updated_date": dt(2020, 5, 17),
+ "created_date": dt(2021, 5, 13),
+ "not_dat": None,
+ },
+ index=[0],
+ )
+ df_two = pd.DataFrame(
+ data={"updated_date": dt(2020, 5, 17), "created_date": dt(2021, 9, 13)},
+ index=[0],
+ )
+ df_three = pd.DataFrame(
+ data={"updated_date": dt(2022, 5, 17), "created_date": dt(2023, 5, 13)},
+ index=[0],
+ )
+ expected_df = pd.DataFrame(
+ data=[
+ [dt(2020, 5, 17), 2020, 5, 17, 6, "Sunday", "May", 2],
+ [dt(2021, 5, 13), 2021, 5, 13, 3, "Thursday", "May", 2],
+ [dt(2021, 9, 13), 2021, 9, 13, 0, "Monday", "September", 3],
+ [dt(2022, 5, 17), 2022, 5, 17, 1, "Tuesday", "May", 2],
+ [dt(2023, 5, 13), 2023, 5, 13, 5, "Saturday", "May", 2],
+ ],
+ columns=[
+ "date_id",
+ "year",
+ "month",
+ "day",
+ "day_of_week",
+ "day_name",
+ "month_name",
+ "quarter",
+ ],
+ )
with patch("src.dataframes.create_fact_payment") as mock_fp:
with patch("src.dataframes.create_fact_purchase_orders") as mock_fpo:
with patch("src.dataframes.create_fact_sales_order") as mock_fso:
mock_fp.return_value = df_one
mock_fpo.return_value = df_two
mock_fso.return_value = df_three
- result = create_dim_date({'dum':0})
- result.reset_index(inplace=True,drop=True)
+ result = create_dim_date({"dum": 0})
+ result.reset_index(inplace=True, drop=True)
assert result.eq(expected_df, axis="columns").all(axis=None)
-
-class TestCreateDimLocation:
+
+class TestCreateDimLocation:
def test_returns_correct_columns_lo(self):
- dict_df = {'address':pd.DataFrame(data=[['some_time','some_other_time',1,'SE18 9QO']],
- columns=['created_at','last_updated','address_id','postal_code'])}
+ dict_df = {
+ "address": pd.DataFrame(
+ data=[["some_time", "some_other_time", 1, "SE18 9QO"]],
+ columns=["created_at", "last_updated", "address_id", "postal_code"],
+ )
+ }
result = create_dim_location(dict_df)
- assert list(result.columns) == ['location_id','postal_code']
-
+ assert list(result.columns) == ["location_id", "postal_code"]
+
+
class TestCreateDimTransaction:
- def test_returns_correct_columns_tr(self):
- dict_df = {'transaction':pd.DataFrame(data=[['some_time','some_other_time',1,'SE18 9QO']],
- columns=['created_at','last_updated','transaction_id','some_other_id'])}
+ def test_returns_correct_columns_tr(self):
+ dict_df = {
+ "transaction": pd.DataFrame(
+ data=[["some_time", "some_other_time", 1, "SE18 9QO"]],
+ columns=[
+ "created_at",
+ "last_updated",
+ "transaction_id",
+ "some_other_id",
+ ],
+ )
+ }
result = create_dim_transaction(dict_df)
- assert list(result.columns) == ['transaction_id','some_other_id']
+ assert list(result.columns) == ["transaction_id", "some_other_id"]
+
class TestCreateFactPayment:
def test_returns_correct_columns_payment(self):
- dict_df = {'payment':pd.DataFrame(data=[[dt.strptime('2022-11-03 14:20:49.962846','%Y-%m-%d %H:%M:%S.%f'),
- dt.strptime('2022-12-14 16:20:49.962194','%Y-%m-%d %H:%M:%S.%f'),1,'SE18 9QO','2020-07-16']],
- columns=['created_at','last_updated','payment_id','some_other_id','payment_date'])}
- expected_cols = ['payment_record_id','created_date','created_time','last_updated_date',
- 'last_updated_time','payment_date','payment_id','some_other_id']
+ dict_df = {
+ "payment": pd.DataFrame(
+ data=[
+ [
+ dt.strptime(
+ "2022-11-03 14:20:49.962846", "%Y-%m-%d %H:%M:%S.%f"
+ ),
+ dt.strptime(
+ "2022-12-14 16:20:49.962194", "%Y-%m-%d %H:%M:%S.%f"
+ ),
+ 1,
+ "SE18 9QO",
+ "2020-07-16",
+ ]
+ ],
+ columns=[
+ "created_at",
+ "last_updated",
+ "payment_id",
+ "some_other_id",
+ "payment_date",
+ ],
+ )
+ }
+ expected_cols = [
+ "payment_record_id",
+ "created_date",
+ "created_time",
+ "last_updated_date",
+ "last_updated_time",
+ "payment_date",
+ "payment_id",
+ "some_other_id",
+ ]
result = create_fact_payment(dict_df)
- assert isinstance(result,pd.DataFrame)
+ assert isinstance(result, pd.DataFrame)
for col in list(result.columns):
assert col in expected_cols
for col in expected_cols:
- if '_date' in col:
+ if "_date" in col:
print(col)
- assert result[col].dtype == 'datetime64[ns]'
- if '_time' in col:
+ assert result[col].dtype == "datetime64[ns]"
+ if "_time" in col:
print(col)
- assert result[col].dtype == 'O' #<< O for object
-
- \ No newline at end of file
+ assert result[col].dtype == "O" # << O for object
git.ajschof.me — hosted by ajschofield — powered by cgit