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2. Open your web browser and navigate to `http://127.0.0.1:5000/`. 2. Open your web browser and navigate to `http://127.0.0.1:5000/`.
## Adding an Analysis Module
This guide explains how to add a new analysis module using the provided base classes: `BasePlotlyAnalysis` and `BasePlotAnalysis`. These base classes ensure a structured workflow for data preparation, transformation, and visualization.
### 1. Choosing the Right Base Class
Before implementing an analysis module, decide on the appropriate base class:
- **`BasePlotlyAnalysis`**: Use this for interactive plots with **Plotly** that generate **HTML** outputs.
- **`BasePlotAnalysis`**: Use this for static plots with **Matplotlib/Seaborn** that generate **PNG** image files.
- **`BaseAnalysis`**: Use this for any other type of analysis with **text** or **HTML** output for max flexibility.
### 2. Naming Convention
Follow a structured naming convention for consistency:
- **File name:** `plotly_<analysis_name>.py` for Plotly analyses, `plot_<analysis_name>.py` for Matplotlib-based analyses.
- **Class name:** Use PascalCase and a descriptive suffix:
- Example for Plotly: `PlotlyActivityHeatmap`
- Example for Matplotlib: `PlotUserSessionDuration`
### 3. Data Structure
The following DataFrame structure is passed to analysis classes:
| user_id | name | last_action | status | timestamp | prev_timestamp | was_active | hour |
|----------|-----------|----------------------|--------|-----------------------------|----------------|------------|------|
| XXXXXXX | UserA | 2025-02-08 17:58:11 | Okay | 2025-02-08 18:09:41.867984056 | NaT | False | 18 |
| XXXXXXX | UserB | 2025-02-08 17:00:10 | Okay | 2025-02-08 18:09:42.427846909 | NaT | False | 18 |
| XXXXXXX | UserC | 2025-02-08 16:31:52 | Okay | 2025-02-08 18:09:42.823201895 | NaT | False | 18 |
| XXXXXXX | UserD | 2025-02-06 23:57:24 | Okay | 2025-02-08 18:09:43.179914951 | NaT | False | 18 |
| XXXXXXX | UserE | 2025-02-06 06:33:40 | Okay | 2025-02-08 18:09:43.434650898 | NaT | False | 18 |
Note that the first X rows, depending on the number of the members, will always contain empty values in prev_timestamp as there has to be a previous timestamp ....
### 4. Implementing an Analysis Module
Each analysis module should define two key methods:
- `transform_data(self, df: pd.DataFrame) -> pd.DataFrame`: Processes the input data for plotting.
- `plot_data(self, df: pd.DataFrame)`: Generates and saves the plot.
#### Example: Adding a Plotly Heatmap
Below is an example of how to create a new analysis module using `BasePlotlyAnalysis`.
```python
import pandas as pd
import plotly.graph_objects as go
from .basePlotlyAnalysis import BasePlotlyAnalysis
class PlotlyActivityHeatmap(BasePlotlyAnalysis):
"""
Displays user activity trends over multiple days using an interactive heatmap.
"""
name = "Activity Heatmap (Interactive)"
description = "Displays user activity trends over multiple days."
plot_filename = "activity_heatmap.html"
def transform_data(self, df: pd.DataFrame) -> pd.DataFrame:
df['hour'] = df['timestamp'].dt.hour
active_counts = df[df['was_active']].pivot_table(
index='name',
columns='hour',
values='was_active',
aggfunc='sum',
fill_value=0
).reset_index()
return active_counts.melt(id_vars='name', var_name='hour', value_name='activity_count')
def plot_data(self, df: pd.DataFrame):
df = df.pivot(index='name', columns='hour', values='activity_count').fillna(0)
self.fig = go.Figure(data=go.Heatmap(
z=df.values, x=df.columns, y=df.index, colorscale='Viridis',
colorbar=dict(title='Activity Count')
))
self.fig.update_layout(title='User Activity Heatmap', xaxis_title='Hour', yaxis_title='User')
```
#### Example: Adding a Static Matplotlib Plot
Below is an example of a Matplotlib-based analysis module using `BasePlotAnalysis`.
```python
import pandas as pd
import matplotlib.pyplot as plt
from .basePlotAnalysis import BasePlotAnalysis
class PlotUserSessionDuration(BasePlotAnalysis):
"""
Displays a histogram of user session durations.
"""
name = "User Session Duration Histogram"
description = "Histogram of session durations."
plot_filename = "session_duration.png"
def transform_data(self, df: pd.DataFrame) -> pd.DataFrame:
df['session_duration'] = (df['last_action'] - df['timestamp']).dt.total_seconds()
return df
def plot_data(self, df: pd.DataFrame):
plt.figure(figsize=(10, 6))
plt.hist(df['session_duration'].dropna(), bins=30, edgecolor='black')
plt.xlabel('Session Duration (seconds)')
plt.ylabel('Frequency')
plt.title('User Session Duration Histogram')
```
### 5. Registering the Module
Once you have created your analysis module, it will be automatically discovered by `load_analysis_modules()`, provided it is placed in the correct directory.
### 6. Running the Analysis
To execute the analysis, pass a Pandas DataFrame to its `execute` method:
```python
from app.analysis.plotly_activity_heatmap import PlotlyActivityHeatmap
analysis = PlotlyActivityHeatmap()
result_html = analysis.execute(df)
print(result_html) # Returns the HTML for embedding the plot
```
### Summary
- Choose the appropriate base class (`BasePlotlyAnalysis` or `BasePlotAnalysis`).
- Follow the naming convention (`plotly_<name>.py` for Plotly, `plot_<name>.py` for Matplotlib).
- Implement `transform_data()` and `plot_data()` methods.
- The module will be auto-registered if placed in the correct directory.
- Execute the analysis by calling `.execute(df)`.
This structure ensures that new analyses can be easily integrated and maintained.
## License ## License
All assets and code are under the [CC BY-SA 4.0](http://creativecommons.org/licenses/by-sa/4.0/) LICENSE and in the public domain unless specified otherwise. All assets and code are under the [CC BY-SA 4.0](http://creativecommons.org/licenses/by-sa/4.0/) LICENSE and in the public domain unless specified otherwise.