cyberosa
cleaning, new notebooks and two months data logic
99c38a1
raw
history blame
10.2 kB
from datetime import datetime, timedelta
import gradio as gr
import pandas as pd
import duckdb
import logging
from tabs.trades import (
prepare_trades,
get_overall_trades,
get_overall_winning_trades,
plot_trades_by_week,
plot_winning_trades_by_week,
plot_trade_details,
)
from tabs.tool_win import (
get_tool_winning_rate,
get_overall_winning_rate,
plot_tool_winnings_overall,
plot_tool_winnings_by_tool,
)
from tabs.error import (
get_error_data,
get_error_data_overall,
plot_error_data,
plot_tool_error_data,
plot_week_error_data,
)
from tabs.about import about_olas_predict
def get_logger():
logger = logging.getLogger(__name__)
logger.setLevel(logging.DEBUG)
# stream handler and formatter
stream_handler = logging.StreamHandler()
stream_handler.setLevel(logging.DEBUG)
formatter = logging.Formatter(
"%(asctime)s - %(name)s - %(levelname)s - %(message)s"
)
stream_handler.setFormatter(formatter)
logger.addHandler(stream_handler)
return logger
logger = get_logger()
def get_last_one_month_data():
"""
Get the last one month data from the tools.parquet file
"""
logger.info("Getting last one month data")
con = duckdb.connect(":memory:")
one_months_ago = (datetime.now() - timedelta(days=60)).strftime("%Y-%m-%d")
# Query to fetch data from all_trades_profitability.parquet
query2 = f"""
SELECT *
FROM read_parquet('./data/all_trades_profitability.parquet')
WHERE creation_timestamp >= '{one_months_ago}'
"""
df2 = con.execute(query2).fetchdf()
logger.info("Got last one month data from all_trades_profitability.parquet")
query1 = f"""
SELECT *
FROM read_parquet('./data/tools.parquet')
WHERE request_time >= '{one_months_ago}'
"""
df1 = con.execute(query1).fetchdf()
logger.info("Got last one month data from tools.parquet")
con.close()
return df1, df2
def get_all_data():
"""
Get all data from the tools.parquet and all_trades_profitability.parquet files
"""
logger.info("Getting all data")
con = duckdb.connect(":memory:")
# Query to fetch data from all_trades_profitability.parquet
query2 = f"""
SELECT *
FROM read_parquet('./data/all_trades_profitability.parquet')
"""
df2 = con.execute(query2).fetchdf()
logger.info("Got all data from all_trades_profitability.parquet")
query1 = f"""
SELECT *
FROM read_parquet('./data/tools.parquet')
"""
df1 = con.execute(query1).fetchdf()
logger.info("Got all data from tools.parquet")
con.close()
return df1, df2
def prepare_data():
"""
Prepare the data for the dashboard
"""
tools_df, trades_df = get_all_data()
tools_df["request_time"] = pd.to_datetime(tools_df["request_time"])
trades_df["creation_timestamp"] = pd.to_datetime(trades_df["creation_timestamp"])
trades_df = prepare_trades(trades_df)
return tools_df, trades_df
tools_df, trades_df = prepare_data()
demo = gr.Blocks()
INC_TOOLS = [
"prediction-online",
"prediction-offline",
"claude-prediction-online",
"claude-prediction-offline",
"prediction-offline-sme",
"prediction-online-sme",
"prediction-request-rag",
"prediction-request-reasoning",
"prediction-url-cot-claude",
"prediction-request-rag-claude",
"prediction-request-reasoning-claude",
]
error_df = get_error_data(tools_df=tools_df, inc_tools=INC_TOOLS)
error_overall_df = get_error_data_overall(error_df=error_df)
winning_rate_df = get_tool_winning_rate(tools_df=tools_df, inc_tools=INC_TOOLS)
winning_rate_overall_df = get_overall_winning_rate(wins_df=winning_rate_df)
trades_count_df = get_overall_trades(trades_df=trades_df)
trades_winning_rate_df = get_overall_winning_trades(trades_df=trades_df)
with demo:
gr.HTML("<h1>Olas Predict Actual Performance</h1>")
gr.Markdown(
"This app shows the actual performance of Olas Predict tools on the live market."
)
with gr.Tabs():
with gr.TabItem("🔥Trades Dashboard"):
with gr.Row():
gr.Markdown("# Plot of number of trades by week")
with gr.Row():
trades_by_week_plot = plot_trades_by_week(trades_df=trades_count_df)
with gr.Row():
gr.Markdown("# Plot of winning trades by week")
with gr.Row():
winning_trades_by_week_plot = plot_winning_trades_by_week(
trades_df=trades_winning_rate_df
)
with gr.Row():
gr.Markdown("# Plot of trade details")
with gr.Row():
trade_details_selector = gr.Dropdown(
label="Select a trade",
choices=[
"mech calls",
"collateral amount",
"earnings",
"net earnings",
"ROI",
],
value="mech calls",
)
with gr.Row():
trade_details_plot = plot_trade_details(
trade_detail="mech calls", trades_df=trades_df
)
def update_trade_details(trade_detail):
return plot_trade_details(
trade_detail=trade_detail, trades_df=trades_df
)
trade_details_selector.change(
update_trade_details,
inputs=trade_details_selector,
outputs=trade_details_plot,
)
with gr.Row():
trade_details_selector
with gr.Row():
trade_details_plot
with gr.TabItem("🚀 Tool Winning Dashboard"):
with gr.Row():
gr.Markdown("# Plot showing overall winning rate")
with gr.Row():
winning_selector = gr.Dropdown(
label="Select Metric",
choices=["losses", "wins", "total_request", "win_perc"],
value="win_perc",
)
with gr.Row():
winning_plot = plot_tool_winnings_overall(
wins_df=winning_rate_overall_df, winning_selector="win_perc"
)
def update_tool_winnings_overall_plot(winning_selector):
return plot_tool_winnings_overall(
wins_df=winning_rate_overall_df, winning_selector=winning_selector
)
winning_selector.change(
update_tool_winnings_overall_plot,
inputs=winning_selector,
outputs=winning_plot,
)
with gr.Row():
winning_selector
with gr.Row():
winning_plot
with gr.Row():
gr.Markdown("# Plot showing winning rate by tool")
with gr.Row():
sel_tool = gr.Dropdown(
label="Select a tool", choices=INC_TOOLS, value=INC_TOOLS[0]
)
with gr.Row():
tool_winnings_by_tool_plot = plot_tool_winnings_by_tool(
wins_df=winning_rate_df, tool=INC_TOOLS[0]
)
def update_tool_winnings_by_tool_plot(tool):
return plot_tool_winnings_by_tool(wins_df=winning_rate_df, tool=tool)
sel_tool.change(
update_tool_winnings_by_tool_plot,
inputs=sel_tool,
outputs=tool_winnings_by_tool_plot,
)
with gr.Row():
sel_tool
with gr.Row():
tool_winnings_by_tool_plot
with gr.TabItem("🏥 Tool Error Dashboard"):
with gr.Row():
gr.Markdown("# Plot showing overall error")
with gr.Row():
error_overall_plot = plot_error_data(error_all_df=error_overall_df)
with gr.Row():
gr.Markdown("# Plot showing error by tool")
with gr.Row():
sel_tool = gr.Dropdown(
label="Select a tool", choices=INC_TOOLS, value=INC_TOOLS[0]
)
with gr.Row():
tool_error_plot = plot_tool_error_data(
error_df=error_df, tool=INC_TOOLS[0]
)
def update_tool_error_plot(tool):
return plot_tool_error_data(error_df=error_df, tool=tool)
sel_tool.change(
update_tool_error_plot, inputs=sel_tool, outputs=tool_error_plot
)
with gr.Row():
sel_tool
with gr.Row():
tool_error_plot
with gr.Row():
gr.Markdown("# Plot showing error by week")
with gr.Row():
choices = error_overall_df["request_month_year_week"].unique().tolist()
# sort the choices by the latest week to be on the top
choices = sorted(choices)
sel_week = gr.Dropdown(
label="Select a week", choices=choices, value=choices[-1]
)
with gr.Row():
week_error_plot = plot_week_error_data(
error_df=error_df, week=choices[-1]
)
def update_week_error_plot(selected_week):
return plot_week_error_data(error_df=error_df, week=selected_week)
sel_tool.change(
update_tool_error_plot, inputs=sel_tool, outputs=tool_error_plot
)
sel_week.change(
update_week_error_plot, inputs=sel_week, outputs=week_error_plot
)
with gr.Row():
sel_tool
with gr.Row():
tool_error_plot
with gr.Row():
sel_week
with gr.Row():
week_error_plot
with gr.TabItem("ℹ️ About"):
with gr.Accordion("About Olas Predict"):
gr.Markdown(about_olas_predict)
demo.queue(default_concurrency_limit=40).launch()