Finish off the links between frontend and backend #10
@@ -6,7 +6,9 @@ from server.analysis.cultural import CulturalAnalysis
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from server.analysis.emotional import EmotionalAnalysis
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from server.analysis.interactional import InteractionAnalysis
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from server.analysis.linguistic import LinguisticAnalysis
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from server.analysis.summary import SummaryAnalysis
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from server.analysis.temporal import TemporalAnalysis
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from server.analysis.user import UserAnalysis
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DOMAIN_STOPWORDS = {
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"www",
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@@ -36,12 +38,11 @@ class StatGen:
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self.interaction_analysis = InteractionAnalysis(EXCLUDE_WORDS)
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self.linguistic_analysis = LinguisticAnalysis(EXCLUDE_WORDS)
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self.cultural_analysis = CulturalAnalysis()
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self.summary_analysis = SummaryAnalysis()
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self.user_analysis = UserAnalysis(self.interaction_analysis)
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## Private Methods
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def _prepare_filtered_df(self,
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df: pd.DataFrame,
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filters: dict | None = None
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) -> pd.DataFrame:
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def _prepare_filtered_df(self, df: pd.DataFrame, filters: dict | None = None) -> pd.DataFrame:
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filters = filters or {}
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filtered_df = df.copy()
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@@ -51,10 +52,9 @@ class StatGen:
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data_source_filter = filters.get("data_sources", None)
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if search_query:
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mask = (
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filtered_df["content"].str.contains(search_query, case=False, na=False)
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| filtered_df["author"].str.contains(search_query, case=False, na=False)
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)
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mask = filtered_df["content"].str.contains(
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search_query, case=False, na=False
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) | filtered_df["author"].str.contains(search_query, case=False, na=False)
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# Only include title if the column exists
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if "title" in filtered_df.columns:
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@@ -76,10 +76,10 @@ class StatGen:
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return filtered_df
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## Public Methods
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def filter_dataset(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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def filter_dataset(self, df: pd.DataFrame, filters: dict | None = None) -> list[dict]:
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return self._prepare_filtered_df(df, filters).to_dict(orient="records")
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def get_time_analysis(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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def temporal(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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@@ -87,40 +87,43 @@ class StatGen:
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"weekday_hour_heatmap": self.temporal_analysis.heatmap(filtered_df),
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}
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def get_content_analysis(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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def linguistic(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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"word_frequencies": self.linguistic_analysis.word_frequencies(filtered_df),
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"common_two_phrases": self.linguistic_analysis.ngrams(filtered_df),
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"common_three_phrases": self.linguistic_analysis.ngrams(filtered_df, n=3),
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"average_emotion_by_topic": self.emotional_analysis.avg_emotion_by_topic(
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filtered_df
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)
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}
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def get_user_analysis(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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def emotional(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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"top_users": self.interaction_analysis.top_users(filtered_df),
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"users": self.interaction_analysis.per_user_analysis(filtered_df),
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"average_emotion_by_topic": self.emotional_analysis.avg_emotion_by_topic(filtered_df),
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"overall_emotion_average": self.emotional_analysis.overall_emotion_average(filtered_df),
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"dominant_emotion_distribution": self.emotional_analysis.dominant_emotion_distribution(filtered_df),
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"emotion_by_source": self.emotional_analysis.emotion_by_source(filtered_df)
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}
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def user(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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"top_users": self.user_analysis.top_users(filtered_df),
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"users": self.user_analysis.users(filtered_df)
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}
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def interactional(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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"average_thread_depth": self.interaction_analysis.average_thread_depth(filtered_df),
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"average_thread_length_by_emotion": self.interaction_analysis.average_thread_length_by_emotion(filtered_df),
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"interaction_graph": self.interaction_analysis.interaction_graph(filtered_df)
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}
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def get_interactional_analysis(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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"average_thread_depth": self.interaction_analysis.average_thread_depth(
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filtered_df
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),
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"average_thread_length_by_emotion": self.interaction_analysis.average_thread_length_by_emotion(
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filtered_df
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),
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}
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def get_cultural_analysis(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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def cultural(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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return {
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@@ -136,35 +139,4 @@ class StatGen:
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def summary(self, df: pd.DataFrame, filters: dict | None = None) -> dict:
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filtered_df = self._prepare_filtered_df(df, filters)
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total_posts = (filtered_df["type"] == "post").sum()
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total_comments = (filtered_df["type"] == "comment").sum()
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events_per_user = filtered_df.groupby("author").size()
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if filtered_df.empty:
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return {
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"total_events": 0,
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"total_posts": 0,
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"total_comments": 0,
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"unique_users": 0,
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"comments_per_post": 0,
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"lurker_ratio": 0,
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"time_range": {
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"start": None,
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"end": None,
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},
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"sources": [],
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}
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return {
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"total_events": int(len(filtered_df)),
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"total_posts": int(total_posts),
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"total_comments": int(total_comments),
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"unique_users": int(events_per_user.count()),
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"comments_per_post": round(total_comments / max(total_posts, 1), 2),
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"lurker_ratio": round((events_per_user == 1).mean(), 2),
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"time_range": {
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"start": int(filtered_df["dt"].min().timestamp()),
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"end": int(filtered_df["dt"].max().timestamp()),
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},
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"sources": filtered_df["source"].dropna().unique().tolist(),
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}
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return self.summary_analysis.summary(filtered_df)
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64
server/analysis/summary.py
Normal file
64
server/analysis/summary.py
Normal file
@@ -0,0 +1,64 @@
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import pandas as pd
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class SummaryAnalysis:
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def total_events(self, df: pd.DataFrame) -> int:
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return int(len(df))
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def total_posts(self, df: pd.DataFrame) -> int:
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return int(len(df[df["type"] == "post"]))
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def total_comments(self, df: pd.DataFrame) -> int:
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return int(len(df[df["type"] == "comment"]))
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def unique_users(self, df: pd.DataFrame) -> int:
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return int(len(df["author"].dropna().unique()))
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def comments_per_post(self, total_comments: int, total_posts: int) -> float:
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return round(total_comments / max(total_posts, 1), 2)
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def lurker_ratio(self, df: pd.DataFrame) -> float:
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events_per_user = df.groupby("author").size()
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return round((events_per_user == 1).mean(), 2)
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def time_range(self, df: pd.DataFrame) -> dict:
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return {
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"start": int(df["dt"].min().timestamp()),
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"end": int(df["dt"].max().timestamp()),
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}
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def sources(self, df: pd.DataFrame) -> list:
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return df["source"].dropna().unique().tolist()
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def empty_summary(self) -> dict:
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return {
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"total_events": 0,
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"total_posts": 0,
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"total_comments": 0,
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"unique_users": 0,
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"comments_per_post": 0,
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"lurker_ratio": 0,
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"time_range": {
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"start": None,
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"end": None,
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},
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"sources": [],
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}
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def summary(self, df: pd.DataFrame) -> dict:
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if df.empty:
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return self.empty_summary()
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total_posts = self.total_posts(df)
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total_comments = self.total_comments(df)
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return {
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"total_events": self.total_events(df),
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"total_posts": total_posts,
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"total_comments": total_comments,
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"unique_users": self.unique_users(df),
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"comments_per_post": self.comments_per_post(total_comments, total_posts),
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"lurker_ratio": self.lurker_ratio(df),
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"time_range": self.time_range(df),
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"sources": self.sources(df),
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}
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20
server/analysis/user.py
Normal file
20
server/analysis/user.py
Normal file
@@ -0,0 +1,20 @@
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import pandas as pd
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from server.analysis.interactional import InteractionAnalysis
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class UserAnalysis:
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def __init__(self, interaction_analysis: InteractionAnalysis):
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self.interaction_analysis = interaction_analysis
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def top_users(self, df: pd.DataFrame) -> list:
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return self.interaction_analysis.top_users(df)
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def users(self, df: pd.DataFrame) -> dict | list:
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return self.interaction_analysis.per_user_analysis(df)
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def user(self, df: pd.DataFrame) -> dict:
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return {
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"top_users": self.top_users(df),
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"users": self.users(df),
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}
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