gauravlochab
feat: filter out non-positive APR values and update graph handling for positive values only
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import requests
import pandas as pd
import gradio as gr
import plotly.graph_objects as go
import plotly.express as px
from plotly.subplots import make_subplots
from datetime import datetime, timedelta
import json
# Commenting out blockchain-related imports that cause loading issues
# from web3 import Web3
import os
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.dates as mdates
import random
import logging
from typing import List, Dict, Any
# Comment out the import for now and replace with dummy functions
# from app_trans_new import create_transcation_visualizations,create_active_agents_visualizations
# APR visualization functions integrated directly
# Set up more detailed logging
logging.basicConfig(
level=logging.DEBUG, # Change to DEBUG for more detailed logs
format="%(asctime)s - %(levelname)s - %(message)s",
handlers=[
logging.FileHandler("app_debug.log"), # Log to file for persistence
logging.StreamHandler() # Also log to console
]
)
logger = logging.getLogger(__name__)
# Log the startup information
logger.info("============= APPLICATION STARTING =============")
logger.info(f"Running from directory: {os.getcwd()}")
# Global variable to store the data for reuse
global_df = None
# Configuration
API_BASE_URL = "https://afmdb.autonolas.tech"
logger.info(f"Using API endpoint: {API_BASE_URL}")
def get_agent_type_by_name(type_name: str) -> Dict[str, Any]:
"""Get agent type by name"""
url = f"{API_BASE_URL}/api/agent-types/name/{type_name}"
logger.debug(f"Calling API: {url}")
try:
response = requests.get(url)
logger.debug(f"Response status: {response.status_code}")
if response.status_code == 404:
logger.error(f"Agent type '{type_name}' not found")
return None
response.raise_for_status()
result = response.json()
logger.debug(f"Agent type response: {result}")
return result
except Exception as e:
logger.error(f"Error in get_agent_type_by_name: {e}")
return None
def get_attribute_definition_by_name(attr_name: str) -> Dict[str, Any]:
"""Get attribute definition by name"""
url = f"{API_BASE_URL}/api/attributes/name/{attr_name}"
logger.debug(f"Calling API: {url}")
try:
response = requests.get(url)
logger.debug(f"Response status: {response.status_code}")
if response.status_code == 404:
logger.error(f"Attribute definition '{attr_name}' not found")
return None
response.raise_for_status()
result = response.json()
logger.debug(f"Attribute definition response: {result}")
return result
except Exception as e:
logger.error(f"Error in get_attribute_definition_by_name: {e}")
return None
def get_agents_by_type(type_id: int) -> List[Dict[str, Any]]:
"""Get all agents of a specific type"""
url = f"{API_BASE_URL}/api/agent-types/{type_id}/agents/"
logger.debug(f"Calling API: {url}")
try:
response = requests.get(url)
logger.debug(f"Response status: {response.status_code}")
if response.status_code == 404:
logger.error(f"No agents found for type ID {type_id}")
return []
response.raise_for_status()
result = response.json()
logger.debug(f"Agents count: {len(result)}")
logger.debug(f"First few agents: {result[:2] if result else []}")
return result
except Exception as e:
logger.error(f"Error in get_agents_by_type: {e}")
return []
def get_attribute_values_by_type_and_attr(agents: List[Dict[str, Any]], attr_def_id: int) -> List[Dict[str, Any]]:
"""Get all attribute values for a specific attribute definition across all agents of a given list"""
all_attributes = []
logger.debug(f"Getting attributes for {len(agents)} agents with attr_def_id: {attr_def_id}")
# For each agent, get their attributes and filter for the one we want
for agent in agents:
agent_id = agent["agent_id"]
# Call the /api/agents/{agent_id}/attributes/ endpoint
url = f"{API_BASE_URL}/api/agents/{agent_id}/attributes/"
logger.debug(f"Calling API for agent {agent_id}: {url}")
try:
response = requests.get(url, params={"limit": 1000})
if response.status_code == 404:
logger.error(f"No attributes found for agent ID {agent_id}")
continue
response.raise_for_status()
agent_attrs = response.json()
logger.debug(f"Agent {agent_id} has {len(agent_attrs)} attributes")
# Filter for the specific attribute definition ID
filtered_attrs = [attr for attr in agent_attrs if attr.get("attr_def_id") == attr_def_id]
logger.debug(f"Agent {agent_id} has {len(filtered_attrs)} APR attributes")
if filtered_attrs:
logger.debug(f"Sample attribute for agent {agent_id}: {filtered_attrs[0]}")
all_attributes.extend(filtered_attrs)
except requests.exceptions.RequestException as e:
logger.error(f"Error fetching attributes for agent ID {agent_id}: {e}")
logger.info(f"Total APR attributes found across all agents: {len(all_attributes)}")
return all_attributes
def get_agent_name(agent_id: int, agents: List[Dict[str, Any]]) -> str:
"""Get agent name from agent ID"""
for agent in agents:
if agent["agent_id"] == agent_id:
return agent["agent_name"]
return "Unknown"
def extract_apr_value(attr: Dict[str, Any]) -> Dict[str, Any]:
"""Extract APR value and timestamp from JSON value"""
try:
agent_id = attr.get("agent_id", "unknown")
logger.debug(f"Extracting APR value for agent {agent_id}")
# The APR value is stored in the json_value field
if attr["json_value"] is None:
logger.debug(f"Agent {agent_id}: json_value is None")
return {"apr": None, "timestamp": None, "agent_id": agent_id, "is_dummy": False}
# If json_value is a string, parse it
if isinstance(attr["json_value"], str):
logger.debug(f"Agent {agent_id}: json_value is string, parsing")
json_data = json.loads(attr["json_value"])
else:
json_data = attr["json_value"]
apr = json_data.get("apr")
timestamp = json_data.get("timestamp")
logger.debug(f"Agent {agent_id}: Raw APR value: {apr}, timestamp: {timestamp}")
# Convert timestamp to datetime if it exists
timestamp_dt = None
if timestamp:
timestamp_dt = datetime.fromtimestamp(timestamp)
result = {"apr": apr, "timestamp": timestamp_dt, "agent_id": agent_id, "is_dummy": False}
logger.debug(f"Agent {agent_id}: Extracted result: {result}")
return result
except (json.JSONDecodeError, KeyError, TypeError) as e:
logger.error(f"Error parsing JSON value: {e} for agent_id: {attr.get('agent_id')}")
logger.error(f"Problematic json_value: {attr.get('json_value')}")
return {"apr": None, "timestamp": None, "agent_id": attr.get('agent_id'), "is_dummy": False}
def fetch_apr_data_from_db():
"""
Fetch APR data from database using the API.
"""
global global_df
logger.info("==== Starting APR data fetch ====")
try:
# Step 1: Find the Modius agent type
logger.info("Finding Modius agent type")
modius_type = get_agent_type_by_name("Modius")
if not modius_type:
logger.error("Modius agent type not found, using placeholder data")
global_df = pd.DataFrame([])
return global_df
type_id = modius_type["type_id"]
logger.info(f"Found Modius agent type with ID: {type_id}")
# Step 2: Find the APR attribute definition
logger.info("Finding APR attribute definition")
apr_attr_def = get_attribute_definition_by_name("APR")
if not apr_attr_def:
logger.error("APR attribute definition not found, using placeholder data")
global_df = pd.DataFrame([])
return global_df
attr_def_id = apr_attr_def["attr_def_id"]
logger.info(f"Found APR attribute definition with ID: {attr_def_id}")
# Step 3: Get all agents of type Modius
logger.info(f"Getting all agents of type Modius (type_id: {type_id})")
modius_agents = get_agents_by_type(type_id)
if not modius_agents:
logger.error("No agents of type 'Modius' found")
global_df = pd.DataFrame([])
return global_df
logger.info(f"Found {len(modius_agents)} Modius agents")
logger.debug(f"Modius agents: {[{'agent_id': a['agent_id'], 'agent_name': a['agent_name']} for a in modius_agents]}")
# Step 4: Fetch all APR values for Modius agents
logger.info(f"Fetching APR values for all Modius agents (attr_def_id: {attr_def_id})")
apr_attributes = get_attribute_values_by_type_and_attr(modius_agents, attr_def_id)
if not apr_attributes:
logger.error("No APR values found for 'Modius' agents")
global_df = pd.DataFrame([])
return global_df
logger.info(f"Found {len(apr_attributes)} APR attributes total")
# Step 5: Extract APR data
logger.info("Extracting APR data from attributes")
apr_data_list = []
for attr in apr_attributes:
apr_data = extract_apr_value(attr)
if apr_data["apr"] is not None and apr_data["timestamp"] is not None:
# Get agent name
agent_name = get_agent_name(attr["agent_id"], modius_agents)
# Add agent name to the data
apr_data["agent_name"] = agent_name
# Add is_dummy flag (all real data)
apr_data["is_dummy"] = False
# CHANGE: Only include positive APR values (greater than 0)
if apr_data["apr"] > 0:
apr_data["metric_type"] = "APR"
logger.debug(f"Agent {agent_name} ({attr['agent_id']}): APR value: {apr_data['apr']}")
# Add to the data list only if value is positive
apr_data_list.append(apr_data)
else:
# Log that we're skipping non-positive values
logger.debug(f"Skipping non-positive value for agent {agent_name} ({attr['agent_id']}): {apr_data['apr']}")
# Convert list of dictionaries to DataFrame
if not apr_data_list:
logger.error("No valid APR data extracted")
global_df = pd.DataFrame([])
return global_df
global_df = pd.DataFrame(apr_data_list)
# Log the resulting dataframe
logger.info(f"Created DataFrame with {len(global_df)} rows")
logger.info(f"DataFrame columns: {global_df.columns.tolist()}")
logger.info(f"APR statistics: min={global_df['apr'].min()}, max={global_df['apr'].max()}, mean={global_df['apr'].mean()}")
# After filtering, all values are APR type
logger.info("All values are APR type (positive values only)")
logger.info(f"Agents count: {global_df['agent_name'].value_counts().to_dict()}")
# Log the entire dataframe for debugging
logger.debug("Final DataFrame contents:")
for idx, row in global_df.iterrows():
logger.debug(f"Row {idx}: {row.to_dict()}")
return global_df
except requests.exceptions.RequestException as e:
logger.error(f"API request error: {e}")
global_df = pd.DataFrame([])
return global_df
except Exception as e:
logger.error(f"Error fetching APR data: {e}")
logger.exception("Exception details:")
global_df = pd.DataFrame([])
return global_df
def generate_apr_visualizations():
"""Generate APR visualizations with real data only (no dummy data)"""
global global_df
# Fetch data from database
df = fetch_apr_data_from_db()
# If we got no data at all, return placeholder figures
if df.empty:
logger.info("No APR data available. Using fallback visualization.")
# Create empty visualizations with a message using Plotly
fig = go.Figure()
fig.add_annotation(
x=0.5, y=0.5,
text="No APR data available",
font=dict(size=20),
showarrow=False
)
fig.update_layout(
xaxis=dict(showgrid=False, zeroline=False, showticklabels=False),
yaxis=dict(showgrid=False, zeroline=False, showticklabels=False)
)
# Save as static file for reference
fig.write_html("modius_apr_combined_graph.html")
fig.write_image("modius_apr_combined_graph.png")
csv_file = None
return fig, csv_file
# No longer generating dummy data
# Set global_df for access by other functions
global_df = df
# Save to CSV before creating visualizations
csv_file = save_to_csv(df)
# Only create combined time series graph
combined_fig = create_combined_time_series_graph(df)
return combined_fig, csv_file
def create_time_series_graph_per_agent(df):
"""Create a time series graph for each agent using Plotly"""
# Get unique agents
unique_agents = df['agent_id'].unique()
if len(unique_agents) == 0:
logger.error("No agent data to plot")
fig = go.Figure()
fig.add_annotation(
text="No agent data available",
x=0.5, y=0.5,
showarrow=False, font=dict(size=20)
)
return fig
# Create a subplot figure for each agent
fig = make_subplots(rows=len(unique_agents), cols=1,
subplot_titles=[f"Agent: {df[df['agent_id'] == agent_id]['agent_name'].iloc[0]}"
for agent_id in unique_agents],
vertical_spacing=0.1)
# Plot data for each agent
for i, agent_id in enumerate(unique_agents):
agent_data = df[df['agent_id'] == agent_id].copy()
agent_name = agent_data['agent_name'].iloc[0]
row = i + 1
# Add zero line to separate APR and Performance
fig.add_shape(
type="line", line=dict(dash="solid", width=1.5, color="black"),
y0=0, y1=0, x0=agent_data['timestamp'].min(), x1=agent_data['timestamp'].max(),
row=row, col=1
)
# Add background colors
fig.add_shape(
type="rect", fillcolor="rgba(230, 243, 255, 0.3)", line=dict(width=0),
y0=0, y1=1000, x0=agent_data['timestamp'].min(), x1=agent_data['timestamp'].max(),
row=row, col=1, layer="below"
)
fig.add_shape(
type="rect", fillcolor="rgba(255, 230, 230, 0.3)", line=dict(width=0),
y0=-1000, y1=0, x0=agent_data['timestamp'].min(), x1=agent_data['timestamp'].max(),
row=row, col=1, layer="below"
)
# Create separate dataframes for different data types
apr_data = agent_data[agent_data['metric_type'] == 'APR']
perf_data = agent_data[agent_data['metric_type'] == 'Performance']
# Sort all data by timestamp for the line plots
combined_agent_data = agent_data.sort_values('timestamp')
# Add main line connecting all points
fig.add_trace(
go.Scatter(
x=combined_agent_data['timestamp'],
y=combined_agent_data['apr'],
mode='lines',
line=dict(color='purple', width=2),
name=f'{agent_name}',
legendgroup=agent_name,
showlegend=(i == 0), # Only show in legend once
hovertemplate='Time: %{x}<br>Value: %{y:.2f}<extra></extra>'
),
row=row, col=1
)
# Add scatter points for APR values
if not apr_data.empty:
fig.add_trace(
go.Scatter(
x=apr_data['timestamp'],
y=apr_data['apr'],
mode='markers',
marker=dict(color='blue', size=10, symbol='circle'),
name='APR',
legendgroup='APR',
showlegend=(i == 0),
hovertemplate='Time: %{x}<br>APR: %{y:.2f}<extra></extra>'
),
row=row, col=1
)
# Add scatter points for Performance values
if not perf_data.empty:
fig.add_trace(
go.Scatter(
x=perf_data['timestamp'],
y=perf_data['apr'],
mode='markers',
marker=dict(color='red', size=10, symbol='square'),
name='Performance',
legendgroup='Performance',
showlegend=(i == 0),
hovertemplate='Time: %{x}<br>Performance: %{y:.2f}<extra></extra>'
),
row=row, col=1
)
# Update axes
fig.update_xaxes(title_text="Time", row=row, col=1)
fig.update_yaxes(title_text="Value", row=row, col=1, gridcolor='rgba(0,0,0,0.1)')
# Update layout
fig.update_layout(
height=400 * len(unique_agents),
width=1000,
title_text="APR and Performance Values per Agent",
template="plotly_white",
legend=dict(
orientation="h",
yanchor="bottom",
y=1.02,
xanchor="right",
x=1
),
margin=dict(r=20, l=20, t=30, b=20),
hovermode="closest"
)
# Save the figure (still useful for reference)
graph_file = "modius_apr_per_agent_graph.html"
fig.write_html(graph_file, include_plotlyjs='cdn', full_html=False)
# Also save as image for compatibility
img_file = "modius_apr_per_agent_graph.png"
fig.write_image(img_file)
logger.info(f"Per-agent graph saved to {graph_file} and {img_file}")
# Return the figure object for direct use in Gradio
return fig
def create_combined_time_series_graph(df):
"""Create a combined time series graph for all agents using Plotly"""
if len(df) == 0:
logger.error("No data to plot combined graph")
fig = go.Figure()
fig.add_annotation(
text="No data available",
x=0.5, y=0.5,
showarrow=False, font=dict(size=20)
)
return fig
# IMPORTANT: Force data types to ensure consistency
df['apr'] = df['apr'].astype(float) # Ensure APR is float
df['metric_type'] = df['metric_type'].astype(str) # Ensure metric_type is string
# CRITICAL: Log the exact dataframe we're using for plotting to help debug
logger.info(f"Graph data - shape: {df.shape}, columns: {df.columns}")
logger.info(f"Graph data - unique agents: {df['agent_name'].unique().tolist()}")
logger.info("Graph data - all positive APR values only")
logger.info(f"Graph data - min APR: {df['apr'].min()}, max APR: {df['apr'].max()}")
# Export full dataframe to CSV for debugging
debug_csv = "debug_graph_data.csv"
df.to_csv(debug_csv)
logger.info(f"Exported graph data to {debug_csv} for debugging")
# Write detailed data report
with open("debug_graph_data_report.txt", "w") as f:
f.write("==== GRAPH DATA REPORT ====\n\n")
f.write(f"Total data points: {len(df)}\n")
f.write(f"Timestamp range: {df['timestamp'].min()} to {df['timestamp'].max()}\n\n")
# Output per-agent details
unique_agents = df['agent_id'].unique()
f.write(f"Number of agents: {len(unique_agents)}\n\n")
for agent_id in unique_agents:
agent_data = df[df['agent_id'] == agent_id]
agent_name = agent_data['agent_name'].iloc[0]
f.write(f"== Agent: {agent_name} (ID: {agent_id}) ==\n")
f.write(f" Total data points: {len(agent_data)}\n")
apr_data = agent_data[agent_data['metric_type'] == 'APR']
f.write(f" APR data points: {len(apr_data)}\n")
if not apr_data.empty:
f.write(f" APR values: {apr_data['apr'].tolist()}\n")
f.write(f" APR timestamps: {[ts.strftime('%Y-%m-%d %H:%M:%S') if ts is not None else 'None' for ts in apr_data['timestamp']]}\n")
f.write("\n")
logger.info("Generated detailed graph data report")
# ENSURE THERE ARE NO CONFLICTING AXES OR TRACES
# Create Plotly figure in a clean state
fig = go.Figure()
# Get unique agents
unique_agents = df['agent_id'].unique()
colors = px.colors.qualitative.Plotly[:len(unique_agents)]
# IMPORTANT: Fixed y-axis range that always includes -100
# Since we're only showing positive values, adjust the range
min_apr = 0 # Start at 0
max_apr = max(df['apr'].max() * 1.1, 10) # Add 10% padding, minimum of 10
# Add background shapes for APR and Performance regions
min_time = df['timestamp'].min()
max_time = df['timestamp'].max()
# Add shape for APR region (above zero)
fig.add_shape(
type="rect",
fillcolor="rgba(230, 243, 255, 0.3)",
line=dict(width=0),
y0=0, y1=max_apr,
x0=min_time, x1=max_time,
layer="below"
)
# Add zero line
fig.add_shape(
type="line",
line=dict(dash="solid", width=1.5, color="black"),
y0=0, y1=0,
x0=min_time, x1=max_time
)
# MODIFIED: Changed order of trace addition - only need APR values now
# Add data for each agent
for i, agent_id in enumerate(unique_agents):
agent_data = df[df['agent_id'] == agent_id].copy()
agent_name = agent_data['agent_name'].iloc[0]
color = colors[i % len(colors)]
# Sort the data by timestamp
agent_data = agent_data.sort_values('timestamp')
# Log actual points being plotted for this agent
logger.info(f"Plotting agent: {agent_name} (ID: {agent_id}) with {len(agent_data)} points")
for idx, row in agent_data.iterrows():
logger.info(f" Point {idx}: timestamp={row['timestamp']}, apr={row['apr']}, type={row['metric_type']}")
# Now add scatter points for APR values
apr_data = agent_data[agent_data['metric_type'] == 'APR']
if not apr_data.empty:
logger.info(f" Adding {len(apr_data)} APR markers for {agent_name}")
for idx, row in apr_data.iterrows():
logger.info(f" APR marker: timestamp={row['timestamp']}, apr={row['apr']}")
# Use explicit Python boolean for showlegend
is_first_point = bool(idx == apr_data.index[0])
fig.add_trace(
go.Scatter(
x=[row['timestamp']],
y=[row['apr']],
mode='markers',
marker=dict(
color='blue', # Force consistent color
symbol='circle',
size=14, # Make markers larger
line=dict(
width=2,
color='black'
)
),
name=f'{agent_name} APR',
legendgroup=agent_name,
showlegend=is_first_point, # Use native Python boolean
hovertemplate='Time: %{x}<br>APR: %{y:.2f}<br>Agent: ' + agent_name + '<extra></extra>'
)
)
# Add the combined line AFTER markers for both APR and Performance
fig.add_trace(
go.Scatter(
x=agent_data['timestamp'],
y=agent_data['apr'],
mode='lines',
line=dict(color=color, width=2),
name=f'{agent_name}',
legendgroup=agent_name,
hovertemplate='Time: %{x}<br>Value: %{y:.2f}<br>Agent: ' + agent_name + '<extra></extra>'
)
)
# Update layout - use simple boolean values everywhere
fig.update_layout(
title="APR Values for All Agents (Positive Values Only)",
xaxis_title="Time",
yaxis_title="Value",
template="plotly_white",
height=600,
width=1000,
legend=dict(
orientation="h",
yanchor="bottom",
y=1.02,
xanchor="right",
x=1,
groupclick="toggleitem"
),
margin=dict(r=20, l=20, t=30, b=20),
hovermode="closest"
)
# FORCE FIXED Y-AXIS RANGE
fig.update_yaxes(
showgrid=True,
gridwidth=1,
gridcolor='rgba(0,0,0,0.1)',
range=[min_apr, max_apr], # Fixed range
tickmode='linear',
tick0=0,
dtick=10 # Adjusted for positive values
)
# Update x-axis
fig.update_xaxes(
showgrid=True,
gridwidth=1,
gridcolor='rgba(0,0,0,0.1)'
)
# SIMPLIFIED APPROACH: Do a direct plot without markers for comparison
# This creates a simple, reliable fallback plot if the advanced one fails
try:
# Save the figure (still useful for reference)
graph_file = "modius_apr_combined_graph.html"
fig.write_html(graph_file, include_plotlyjs='cdn', full_html=False)
# Also save as image for compatibility
img_file = "modius_apr_combined_graph.png"
try:
fig.write_image(img_file)
logger.info(f"Combined graph saved to {graph_file} and {img_file}")
except Exception as e:
logger.error(f"Error saving image: {e}")
logger.info(f"Combined graph saved to {graph_file} only")
# Return the figure object for direct use in Gradio
return fig
except Exception as e:
# If the complex graph approach fails, create a simpler one
logger.error(f"Error creating advanced graph: {e}")
logger.info("Falling back to simpler graph")
# Create a simpler graph as fallback
simple_fig = go.Figure()
# Add zero line
simple_fig.add_shape(
type="line",
line=dict(dash="solid", width=1.5, color="black"),
y0=0, y1=0,
x0=min_time, x1=max_time
)
# Simply plot each agent's data as a line with markers
for i, agent_id in enumerate(unique_agents):
agent_data = df[df['agent_id'] == agent_id].copy()
agent_name = agent_data['agent_name'].iloc[0]
color = colors[i % len(colors)]
# Sort by timestamp
agent_data = agent_data.sort_values('timestamp')
# Add a single trace with markers+lines
simple_fig.add_trace(
go.Scatter(
x=agent_data['timestamp'],
y=agent_data['apr'],
mode='lines+markers',
name=agent_name,
marker=dict(size=10),
line=dict(width=2)
)
)
# Simplified layout
simple_fig.update_layout(
title="APR Values (Simplified View - Positive Values Only)",
xaxis_title="Time",
yaxis_title="Value",
yaxis=dict(range=[0, max_apr]),
height=600,
width=1000
)
# Return the simple figure
return simple_fig
def save_to_csv(df):
"""Save the APR data DataFrame to a CSV file and return the file path"""
if df.empty:
logger.error("No APR data to save to CSV")
return None
# Define the CSV file path
csv_file = "modius_apr_values.csv"
# Save to CSV
df.to_csv(csv_file, index=False)
logger.info(f"APR data saved to {csv_file}")
# Also generate a statistics CSV file
stats_df = generate_statistics_from_data(df)
stats_csv = "modius_apr_statistics.csv"
stats_df.to_csv(stats_csv, index=False)
logger.info(f"Statistics saved to {stats_csv}")
return csv_file
def generate_statistics_from_data(df):
"""Generate statistics from the APR data"""
if df.empty:
return pd.DataFrame()
# Get unique agents
unique_agents = df['agent_id'].unique()
stats_list = []
# Generate per-agent statistics
for agent_id in unique_agents:
agent_data = df[df['agent_id'] == agent_id]
agent_name = agent_data['agent_name'].iloc[0]
# APR statistics
apr_data = agent_data[agent_data['metric_type'] == 'APR']
real_apr = apr_data[apr_data['is_dummy'] == False]
# Performance statistics
perf_data = agent_data[agent_data['metric_type'] == 'Performance']
real_perf = perf_data[perf_data['is_dummy'] == False]
stats = {
'agent_id': agent_id,
'agent_name': agent_name,
'total_points': len(agent_data),
'apr_points': len(apr_data),
'performance_points': len(perf_data),
'real_apr_points': len(real_apr),
'real_performance_points': len(real_perf),
'avg_apr': apr_data['apr'].mean() if not apr_data.empty else None,
'avg_performance': perf_data['apr'].mean() if not perf_data.empty else None,
'max_apr': apr_data['apr'].max() if not apr_data.empty else None,
'min_apr': apr_data['apr'].min() if not apr_data.empty else None,
'latest_timestamp': agent_data['timestamp'].max().strftime('%Y-%m-%d %H:%M:%S') if not agent_data.empty else None
}
stats_list.append(stats)
# Generate overall statistics
apr_only = df[df['metric_type'] == 'APR']
perf_only = df[df['metric_type'] == 'Performance']
overall_stats = {
'agent_id': 'ALL',
'agent_name': 'All Agents',
'total_points': len(df),
'apr_points': len(apr_only),
'performance_points': len(perf_only),
'real_apr_points': len(apr_only[apr_only['is_dummy'] == False]),
'real_performance_points': len(perf_only[perf_only['is_dummy'] == False]),
'avg_apr': apr_only['apr'].mean() if not apr_only.empty else None,
'avg_performance': perf_only['apr'].mean() if not perf_only.empty else None,
'max_apr': apr_only['apr'].max() if not apr_only.empty else None,
'min_apr': apr_only['apr'].min() if not apr_only.empty else None,
'latest_timestamp': df['timestamp'].max().strftime('%Y-%m-%d %H:%M:%S') if not df.empty else None
}
stats_list.append(overall_stats)
return pd.DataFrame(stats_list)
# Create dummy functions for the commented out imports
def create_transcation_visualizations():
"""Dummy implementation that returns a placeholder graph"""
fig = go.Figure()
fig.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
return fig
def create_active_agents_visualizations():
"""Dummy implementation that returns a placeholder graph"""
fig = go.Figure()
fig.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
return fig
# Comment out the blockchain connection code
"""
# Load environment variables from .env file
# RPC URLs
OPTIMISM_RPC_URL = os.getenv('OPTIMISM_RPC_URL')
MODE_RPC_URL = os.getenv('MODE_RPC_URL')
# Initialize Web3 instances
web3_instances = {
'optimism': Web3(Web3.HTTPProvider(OPTIMISM_RPC_URL)),
'mode': Web3(Web3.HTTPProvider(MODE_RPC_URL))
}
# Contract addresses for service registries
contract_addresses = {
'optimism': '0x3d77596beb0f130a4415df3D2D8232B3d3D31e44',
'mode': '0x3C1fF68f5aa342D296d4DEe4Bb1cACCA912D95fE'
}
# Load the ABI from the provided JSON file
with open('./contracts/service_registry_abi.json', 'r') as abi_file:
contract_abi = json.load(abi_file)
# Create the contract instances
service_registries = {
chain_name: web3.eth.contract(address=contract_addresses[chain_name], abi=contract_abi)
for chain_name, web3 in web3_instances.items()
}
# Check if connections are successful
for chain_name, web3_instance in web3_instances.items():
if not web3_instance.is_connected():
raise Exception(f"Failed to connect to the {chain_name.capitalize()} network.")
else:
print(f"Successfully connected to the {chain_name.capitalize()} network.")
"""
# Dummy blockchain functions to replace the commented ones
def get_transfers(integrator: str, wallet: str) -> str:
"""Dummy function that returns an empty result"""
return {"transfers": []}
def fetch_and_aggregate_transactions():
"""Dummy function that returns empty data"""
return [], {}
# Function to parse the transaction data and prepare it for visualization
def process_transactions_and_agents(data):
"""Dummy function that returns empty dataframes"""
df_transactions = pd.DataFrame()
df_agents = pd.DataFrame(columns=['date', 'agent_count'])
df_agents_weekly = pd.DataFrame()
return df_transactions, df_agents, df_agents_weekly
# Function to create visualizations based on the metrics
def create_visualizations():
"""
# Commenting out the original visualization code temporarily for debugging
transactions_data = fetch_and_aggregate_transactions()
df_transactions, df_agents, df_agents_weekly = process_transactions_and_agents(transactions_data)
# Fetch daily value locked data
df_tvl = pd.read_csv('daily_value_locked.csv')
# Calculate total value locked per chain per day
df_tvl["total_value_locked_usd"] = df_tvl["amount0_usd"] + df_tvl["amount1_usd"]
df_tvl_daily = df_tvl.groupby(["date", "chain_name"])["total_value_locked_usd"].sum().reset_index()
df_tvl_daily['date'] = pd.to_datetime(df_tvl_daily['date'])
# Filter out dates with zero total value locked
df_tvl_daily = df_tvl_daily[df_tvl_daily["total_value_locked_usd"] > 0]
chain_name_map = {
"mode": "Mode",
"base": "Base",
"ethereum": "Ethereum",
"optimism": "Optimism"
}
df_tvl_daily["chain_name"] = df_tvl_daily["chain_name"].map(chain_name_map)
# Plot total value locked
fig_tvl = px.bar(
df_tvl_daily,
x="date",
y="total_value_locked_usd",
color="chain_name",
opacity=0.7,
title="Total Volume Invested in Pools in Different Chains Daily",
labels={"date": "Date","chain_name": "Transaction Chain", "total_value_locked_usd": "Total Volume Invested (USD)"},
barmode='stack',
color_discrete_map={
"Mode": "orange",
"Base": "purple",
"Ethereum": "darkgreen",
"Optimism": "blue"
}
)
fig_tvl.update_layout(
xaxis_title="Date",
yaxis=dict(tickmode='linear', tick0=0, dtick=4),
xaxis=dict(
tickmode='array',
tickvals=df_tvl_daily['date'],
ticktext=df_tvl_daily['date'].dt.strftime('%b %d'),
tickangle=-45,
),
bargap=0.6, # Increase gap between bar groups (0-1)
bargroupgap=0.1, # Decrease gap between bars in a group (0-1)
height=600,
width=1200, # Specify width to prevent bars from being too wide
showlegend=True,
template='plotly_white'
)
fig_tvl.update_xaxes(tickformat="%b %d")
chain_name_map = {
10: "Optimism",
8453: "Base",
1: "Ethereum",
34443: "Mode"
}
df_transactions["sending_chain"] = df_transactions["sending_chain"].map(chain_name_map)
df_transactions["receiving_chain"] = df_transactions["receiving_chain"].map(chain_name_map)
df_transactions["sending_chain"] = df_transactions["sending_chain"].astype(str)
df_transactions["receiving_chain"] = df_transactions["receiving_chain"].astype(str)
df_transactions['date'] = pd.to_datetime(df_transactions['date'])
df_transactions["is_swap"] = df_transactions.apply(lambda x: x["sending_chain"] == x["receiving_chain"], axis=1)
swaps_per_chain = df_transactions[df_transactions["is_swap"]].groupby(["date", "sending_chain"]).size().reset_index(name="swap_count")
fig_swaps_chain = px.bar(
swaps_per_chain,
x="date",
y="swap_count",
color="sending_chain",
title="Chain Daily Activity: Swaps",
labels={"sending_chain": "Transaction Chain", "swap_count": "Daily Swap Nr"},
barmode="stack",
opacity=0.7,
color_discrete_map={
"Optimism": "blue",
"Ethereum": "darkgreen",
"Base": "purple",
"Mode": "orange"
}
)
fig_swaps_chain.update_layout(
xaxis_title="Date",
yaxis_title="Daily Swap Count",
yaxis=dict(tickmode='linear', tick0=0, dtick=1),
xaxis=dict(
tickmode='array',
tickvals=[d for d in swaps_per_chain['date']],
ticktext=[d.strftime('%m-%d') for d in swaps_per_chain['date']],
tickangle=-45,
),
bargap=0.6,
bargroupgap=0.1,
height=600,
width=1200,
margin=dict(l=50, r=50, t=50, b=50),
showlegend=True,
legend=dict(
yanchor="top",
y=0.99,
xanchor="right",
x=0.99
),
template='plotly_white'
)
fig_swaps_chain.update_xaxes(tickformat="%m-%d")
df_transactions["is_bridge"] = df_transactions.apply(lambda x: x["sending_chain"] != x["receiving_chain"], axis=1)
bridges_per_chain = df_transactions[df_transactions["is_bridge"]].groupby(["date", "sending_chain"]).size().reset_index(name="bridge_count")
fig_bridges_chain = px.bar(
bridges_per_chain,
x="date",
y="bridge_count",
color="sending_chain",
title="Chain Daily Activity: Bridges",
labels={"sending_chain": "Transaction Chain", "bridge_count": "Daily Bridge Nr"},
barmode="stack",
opacity=0.7,
color_discrete_map={
"Optimism": "blue",
"Ethereum": "darkgreen",
"Base": "purple",
"Mode": "orange"
}
)
fig_bridges_chain.update_layout(
xaxis_title="Date",
yaxis_title="Daily Bridge Count",
yaxis=dict(tickmode='linear', tick0=0, dtick=1),
xaxis=dict(
tickmode='array',
tickvals=[d for d in bridges_per_chain['date']],
ticktext=[d.strftime('%m-%d') for d in bridges_per_chain['date']],
tickangle=-45,
),
bargap=0.6,
bargroupgap=0.1,
height=600,
width=1200,
margin=dict(l=50, r=50, t=50, b=50),
showlegend=True,
legend=dict(
yanchor="top",
y=0.99,
xanchor="right",
x=0.99
),
template='plotly_white'
)
fig_bridges_chain.update_xaxes(tickformat="%m-%d")
df_agents['date'] = pd.to_datetime(df_agents['date'])
daily_agents_df = df_agents.groupby('date').agg({'agent_count': 'sum'}).reset_index()
daily_agents_df.rename(columns={'agent_count': 'daily_agent_count'}, inplace=True)
# Sort by date to ensure proper running total calculation
daily_agents_df = daily_agents_df.sort_values('date')
# Create week column
daily_agents_df['week'] = daily_agents_df['date'].dt.to_period('W').apply(lambda r: r.start_time)
# Calculate running total within each week
daily_agents_df['running_weekly_total'] = daily_agents_df.groupby('week')['daily_agent_count'].cumsum()
# Create final merged dataframe
weekly_merged_df = daily_agents_df.copy()
adjustment_date = pd.to_datetime('2024-11-15')
weekly_merged_df.loc[weekly_merged_df['date'] == adjustment_date, 'daily_agent_count'] -= 1
weekly_merged_df.loc[weekly_merged_df['date'] == adjustment_date, 'running_weekly_total'] -= 1
fig_agents_registered = go.Figure(data=[
go.Bar(
name='Daily nr of Registered Agents',
x=weekly_merged_df['date'].dt.strftime("%b %d"),
y=weekly_merged_df['daily_agent_count'],
opacity=0.7,
marker_color='blue'
),
go.Bar(
name='Weekly Nr of Registered Agents',
x=weekly_merged_df['date'].dt.strftime("%b %d"),
y=weekly_merged_df['running_weekly_total'],
opacity=0.7,
marker_color='purple'
)
])
fig_agents_registered.update_layout(
xaxis_title='Date',
yaxis_title='Number of Agents',
title="Nr of Agents Registered",
barmode='group',
yaxis=dict(tickmode='linear', tick0=0, dtick=1),
xaxis=dict(
categoryorder='array',
categoryarray=weekly_merged_df['date'].dt.strftime("%b %d"),
tickangle=-45
),
bargap=0.3,
height=600,
width=1200,
showlegend=True,
legend=dict(
yanchor="top",
xanchor="right",
),
template='plotly_white',
)
return fig_swaps_chain, fig_bridges_chain, fig_agents_registered,fig_tvl
"""
# Placeholder figures for testing
fig_swaps_chain = go.Figure()
fig_swaps_chain.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
fig_bridges_chain = go.Figure()
fig_bridges_chain.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
fig_agents_registered = go.Figure()
fig_agents_registered.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
fig_tvl = go.Figure()
fig_tvl.add_annotation(
text="Blockchain data loading disabled - placeholder visualization",
x=0.5, y=0.5, xref="paper", yref="paper",
showarrow=False, font=dict(size=20)
)
return fig_swaps_chain, fig_bridges_chain, fig_agents_registered, fig_tvl
# Modify dashboard function to remove the diagnostics section
def dashboard():
with gr.Blocks() as demo:
gr.Markdown("# Valory APR Metrics")
# APR Metrics tab - the only tab
with gr.Tab("APR Metrics"):
with gr.Column():
refresh_btn = gr.Button("Refresh APR Data")
# Create container for plotly figure (combined graph only)
combined_graph = gr.Plot(label="APR for All Agents")
# Function to update the graph
def update_apr_graph():
# Generate visualization and get figure object directly
try:
combined_fig, _ = generate_apr_visualizations()
return combined_fig
except Exception as e:
logger.exception("Error generating APR visualization")
# Create error figure
error_fig = go.Figure()
error_fig.add_annotation(
text=f"Error: {str(e)}",
x=0.5, y=0.5,
showarrow=False,
font=dict(size=15, color="red")
)
return error_fig
# Set up the button click event with error handling
try:
# Try newer Gradio API first
refresh_btn.click(
fn=update_apr_graph,
inputs=None,
outputs=combined_graph
)
except TypeError:
# Fall back to original method
refresh_btn.click(
fn=update_apr_graph,
inputs=[],
outputs=[combined_graph]
)
# Initialize the graph on load
# We'll use placeholder figure initially
import plotly.graph_objects as go
placeholder_fig = go.Figure()
placeholder_fig.add_annotation(
text="Click 'Refresh APR Data' to load APR graph",
x=0.5, y=0.5,
showarrow=False,
font=dict(size=15)
)
combined_graph.value = placeholder_fig
return demo
# Launch the dashboard
if __name__ == "__main__":
dashboard().launch()