diff --git a/03_quant_report.py b/03_quant_report.py
index e3ed954..ddb91cc 100644
--- a/03_quant_report.py
+++ b/03_quant_report.py
@@ -400,165 +400,183 @@ def _():
return
-@app.cell(hide_code=True)
+# @app.cell(hide_code=True)
+# def _():
+# mo.md(r"""
+# # BC per Consumer
+# """)
+# return
+
+
+# @app.cell
+# def _():
+# split_group = 'Consumer'
+# return (split_group,)
+
+
+# @app.cell
+# def _(split_group):
+# mo.md(rf"""
+# ## Character Ranking Points (per {split_group} segment)
+# """)
+# return
+
+
+# @app.cell
+# def _(S, data):
+# _content = ""
+# for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
+
+# _char_rank = S.get_character_ranking(_consumer_df)[0]
+# _char_rank_weighted = calculate_weighted_ranking_scores(_char_rank)
+
+# _plot = S.plot_weighted_ranking_score(
+# _char_rank_weighted,
+# title=f'Most Popular Character - Weighted Popularity Score - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", 'Worth')}"
(1st=3pts, 2nd=2pts, 3rd=1pt)',
+# x_label='Voice'
+# )
+
+# _content += f"""
+# {mo.ui.altair_chart(_plot)}
+
+# """
+
+# mo.md(_content)
+# return
+
+
+# @app.cell
+# def _(split_group):
+# mo.md(rf"""
+# ## Character Ranking Place 1-2-3 in one (per {split_group})
+# """)
+# return
+
+
+# @app.cell
+# def _(S, data):
+# _content = ""
+# for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
+
+# _char_rank = S.get_character_ranking(_consumer_df)[0]
+
+
+# _plot = S.plot_top3_ranking_distribution(_char_rank, x_label='Character Personality', title='Character Personality: Rankings Top 3 - CONSUMER: "'+_consumer_group.replace("_", " ").replace("Woth", 'Worth')+'"')
+
+# _content += f"""
+# {mo.ui.altair_chart(_plot)}
+
+# """
+
+# mo.md(_content)
+# return
+
+
+# @app.cell
+# def _(split_group):
+# mo.md(rf"""
+# ## Character Ranking times 1st place (per {split_group})
+# """)
+# return
+
+
+# @app.cell
+# def _(S, data):
+# _content = ""
+# for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
+
+# _char_rank = S.get_character_ranking(_consumer_df)[0]
+
+# _plot = S.plot_most_ranked_1(_char_rank, title=f'Most Popular Character - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", 'Worth')}"
(Number of Times Ranked 1st)', x_label='Character Personality')
+
+# _content += f"""
+# {mo.ui.altair_chart(_plot)}
+
+# """
+
+# mo.md(_content)
+# return
+
+
+# @app.cell
+# def _(split_group):
+# mo.md(rf"""
+# ## Predefined personality traits WordClouds per {split_group}
+# """)
+# return
+
+
+# @app.cell
+# def _(S, data):
+# _content = ""
+# for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
+# _top8_traits = S.get_top_8_traits(_consumer_df)[0]
+
+# _plot = S.plot_traits_wordcloud(
+# data=_top8_traits,
+# column='Top_8_Traits',
+# title=f'Most Prominent Personality Traits - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", "Worth")}"',
+# )
+
+# _content += f"""
+# {_plot}
+
+# """
+
+# mo.md(_content)
+# return
+
+
+# @app.cell
+# def _(split_group):
+# mo.md(rf"""
+# ## Frequency traits chosen - per {split_group} segment
+# """)
+# return
+
+
+# @app.cell
+# def _(S, character_colors, consistent_sort_order, data):
+# top_char = "The Coach"
+
+# _content = ""
+# for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
+
+# _char_df = S.get_character_refine(_consumer_df)[0]
+
+# _freq_df, _ = S.transform_character_trait_frequency(_char_df, top_char)
+# _main_color, _highlight_color = character_colors[top_char]
+# _chart = S.plot_single_character_trait_frequency(
+# data=_freq_df,
+# character_name=top_char,
+# bar_color=_main_color,
+# highlight_color=_highlight_color,
+# trait_sort_order=consistent_sort_order,
+# title=f"""Top Personality Traits for '{top_char}' - CONSUMER: "{_consumer_group.replace('_', ' ').replace("Woth", "Worth")}"""
+# )
+# _content += f"""
+# {mo.ui.altair_chart(_chart)}
+
+# """
+# mo.md(_content)
+# return
+
+
+# @app.cell
+# def _():
+# mo.md(r"""
+# # BC per Gender
+# """)
+# return
+
+
+@app.cell
def _():
- mo.md(r"""
- # BC per Consumer
- """)
return
@app.cell
def _():
- split_group = 'Consumer'
- return (split_group,)
-
-
-@app.cell
-def _(split_group):
- mo.md(rf"""
- ## Character Ranking Points (per {split_group} segment)
- """)
- return
-
-
-@app.cell
-def _(S, data):
- _content = ""
- for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
-
- _char_rank = S.get_character_ranking(_consumer_df)[0]
- _char_rank_weighted = calculate_weighted_ranking_scores(_char_rank)
-
- _plot = S.plot_weighted_ranking_score(
- _char_rank_weighted,
- title=f'Most Popular Character - Weighted Popularity Score - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", 'Worth')}"
(1st=3pts, 2nd=2pts, 3rd=1pt)',
- x_label='Voice'
- )
-
- _content += f"""
- {mo.ui.altair_chart(_plot)}
-
- """
-
- mo.md(_content)
- return
-
-
-@app.cell
-def _(split_group):
- mo.md(rf"""
- ## Character Ranking Place 1-2-3 in one (per {split_group})
- """)
- return
-
-
-@app.cell
-def _(S, data):
- _content = ""
- for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
-
- _char_rank = S.get_character_ranking(_consumer_df)[0]
-
-
- _plot = S.plot_top3_ranking_distribution(_char_rank, x_label='Character Personality', title='Character Personality: Rankings Top 3 - CONSUMER: "'+_consumer_group.replace("_", " ").replace("Woth", 'Worth')+'"')
-
- _content += f"""
- {mo.ui.altair_chart(_plot)}
-
- """
-
- mo.md(_content)
- return
-
-
-@app.cell
-def _(split_group):
- mo.md(rf"""
- ## Character Ranking times 1st place (per {split_group})
- """)
- return
-
-
-@app.cell
-def _(S, data):
- _content = ""
- for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
-
- _char_rank = S.get_character_ranking(_consumer_df)[0]
-
- _plot = S.plot_most_ranked_1(_char_rank, title=f'Most Popular Character - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", 'Worth')}"
(Number of Times Ranked 1st)', x_label='Character Personality')
-
- _content += f"""
- {mo.ui.altair_chart(_plot)}
-
- """
-
- mo.md(_content)
- return
-
-
-@app.cell
-def _(split_group):
- mo.md(rf"""
- ## Predefined personality traits WordClouds per {split_group}
- """)
- return
-
-
-@app.cell
-def _(S, data):
- _content = ""
- for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
- _top8_traits = S.get_top_8_traits(_consumer_df)[0]
-
- _plot = S.plot_traits_wordcloud(
- data=_top8_traits,
- column='Top_8_Traits',
- title=f'Most Prominent Personality Traits - CONSUMER: "{_consumer_group.replace("_", " ").replace("Woth", "Worth")}"',
- )
-
- _content += f"""
- {_plot}
-
- """
-
- mo.md(_content)
- return
-
-
-@app.cell
-def _(split_group):
- mo.md(rf"""
- ## Frequency traits chosen - per {split_group} segment
- """)
- return
-
-
-@app.cell
-def _(S, character_colors, consistent_sort_order, data):
- top_char = "The Coach"
-
- _content = ""
- for _consumer_group, _consumer_df in utils.split_consumer_groups(data).items():
-
- _char_df = S.get_character_refine(_consumer_df)[0]
-
- _freq_df, _ = S.transform_character_trait_frequency(_char_df, top_char)
- _main_color, _highlight_color = character_colors[top_char]
- _chart = S.plot_single_character_trait_frequency(
- data=_freq_df,
- character_name=top_char,
- bar_color=_main_color,
- highlight_color=_highlight_color,
- trait_sort_order=consistent_sort_order,
- title=f"""Top Personality Traits for '{top_char}' - CONSUMER: "{_consumer_group.replace('_', ' ').replace("Woth", "Worth")}"""
- )
- _content += f"""
- {mo.ui.altair_chart(_chart)}
-
- """
- mo.md(_content)
return