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Merge pull request #983 from Hestia-Homes/feature/match-on-lmk
Feature/match on lmk
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commit
c88b387e01
2 changed files with 5 additions and 35 deletions
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@ -77,14 +77,8 @@ class KwhData:
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'Cheapest tariff (Large legacy suppliers)', 'Cheapest tariff (All suppliers)',
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'Cheapest tariff (Basket)', 'Default tariff cap level']
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# Extract data rows
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data_rows = []
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for row in data[1:]:
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date = row['\ufeff"']
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values = row[None]
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data_rows.append([date] + values)
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self.retail_price_comparison = pd.DataFrame(data_rows, columns=header)
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self.retail_price_comparison = pd.DataFrame(data)
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self.retail_price_comparison.columns = header
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self.retail_price_comparison['Date'] = pd.to_datetime(self.retail_price_comparison['Date'], errors='coerce')
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@staticmethod
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@ -230,7 +230,7 @@ for scenario_id in SCENARIOS:
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# Get recs for this scenario
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recommended_measures_df = recommendations_df[
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recommendations_df["scenario_id"] == scenario_id
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][["property_id", "measure_type", "estimated_cost", "default"]]
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][["property_id", "measure_type", "estimated_cost", "default"]]
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recommended_measures_df = recommended_measures_df[
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recommended_measures_df["default"]
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]
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@ -238,7 +238,7 @@ for scenario_id in SCENARIOS:
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post_install_sap = recommendations_df[
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recommendations_df["scenario_id"] == scenario_id
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][["property_id", "default", "sap_points"]]
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][["property_id", "default", "sap_points"]]
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post_install_sap = post_install_sap[post_install_sap["default"]]
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# Sum up the sap points by property id
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post_install_sap = (
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@ -282,6 +282,7 @@ for scenario_id in SCENARIOS:
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"windows",
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"current_epc_rating",
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"current_sap_points",
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"original_sap_points",
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"total_floor_area",
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"number_of_rooms",
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"lodgement_date",
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@ -303,31 +304,6 @@ for scenario_id in SCENARIOS:
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)
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df["uprn"] = df["uprn"].astype(str)
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relevant_plans = plans_df[plans_df["scenario_id"] == scenario_id]
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df2 = df.merge(
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relevant_plans[["property_id", "post_sap_points", "post_epc_rating"]],
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how="left",
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on="property_id",
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suffixes=("", "_plan"),
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)
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print(df2["predicted_post_works_epc"].value_counts())
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print(df2["post_epc_rating"].value_counts())
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z = df2[
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(df2["predicted_post_works_epc"] != "D")
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& (df2["post_epc_rating"].astype(str) == "Epc.D")
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]
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df2["predicted_post_works_epc"].value_counts()
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df2["post_epc_rating"].astype(str).value_counts()
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df2[df2["total_retrofit_cost"] > 0].shape
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getting_works = df[df["total_retrofit_cost"] > 0]
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getting_works["predicted_post_works_epc"].value_counts()
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df[df["predicted_post_works_sap"] == ""]
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# Expected columns list
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expected_columns = [
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"suspended_floor_insulation",
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