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Merge pull request #6147 from freqtrade/plot_parallel
Plot parallel and underwater
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@ -283,6 +283,8 @@ The `plot-profit` subcommand shows an interactive graph with three plots:
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* The summarized profit made by backtesting.
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* The summarized profit made by backtesting.
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Note that this is not the real-world profit, but more of an estimate.
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Note that this is not the real-world profit, but more of an estimate.
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* Profit for each individual pair.
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* Profit for each individual pair.
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* Parallelism of trades.
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* Underwater (Periods of drawdown).
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The first graph is good to get a grip of how the overall market progresses.
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The first graph is good to get a grip of how the overall market progresses.
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@ -292,6 +294,8 @@ This graph will also highlight the start (and end) of the Max drawdown period.
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The third graph can be useful to spot outliers, events in pairs that cause profit spikes.
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The third graph can be useful to spot outliers, events in pairs that cause profit spikes.
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The forth graph can help you analyze trade parallelism, showing how often max_open_trades have been maxed out.
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Possible options for the `freqtrade plot-profit` subcommand:
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Possible options for the `freqtrade plot-profit` subcommand:
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```
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```
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@ -361,6 +361,36 @@ def create_cum_profit(df: pd.DataFrame, trades: pd.DataFrame, col_name: str,
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return df
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return df
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def _calc_drawdown_series(profit_results: pd.DataFrame, *, date_col: str, value_col: str
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) -> pd.DataFrame:
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max_drawdown_df = pd.DataFrame()
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max_drawdown_df['cumulative'] = profit_results[value_col].cumsum()
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max_drawdown_df['high_value'] = max_drawdown_df['cumulative'].cummax()
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max_drawdown_df['drawdown'] = max_drawdown_df['cumulative'] - max_drawdown_df['high_value']
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max_drawdown_df['date'] = profit_results.loc[:, date_col]
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return max_drawdown_df
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def calculate_underwater(trades: pd.DataFrame, *, date_col: str = 'close_date',
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value_col: str = 'profit_ratio'
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):
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"""
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Calculate max drawdown and the corresponding close dates
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:param trades: DataFrame containing trades (requires columns close_date and profit_ratio)
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:param date_col: Column in DataFrame to use for dates (defaults to 'close_date')
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:param value_col: Column in DataFrame to use for values (defaults to 'profit_ratio')
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:return: Tuple (float, highdate, lowdate, highvalue, lowvalue) with absolute max drawdown,
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high and low time and high and low value.
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:raise: ValueError if trade-dataframe was found empty.
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"""
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if len(trades) == 0:
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raise ValueError("Trade dataframe empty.")
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profit_results = trades.sort_values(date_col).reset_index(drop=True)
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max_drawdown_df = _calc_drawdown_series(profit_results, date_col=date_col, value_col=value_col)
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return max_drawdown_df
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def calculate_max_drawdown(trades: pd.DataFrame, *, date_col: str = 'close_date',
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def calculate_max_drawdown(trades: pd.DataFrame, *, date_col: str = 'close_date',
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value_col: str = 'profit_ratio'
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value_col: str = 'profit_ratio'
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) -> Tuple[float, pd.Timestamp, pd.Timestamp, float, float]:
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) -> Tuple[float, pd.Timestamp, pd.Timestamp, float, float]:
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@ -376,10 +406,7 @@ def calculate_max_drawdown(trades: pd.DataFrame, *, date_col: str = 'close_date'
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if len(trades) == 0:
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if len(trades) == 0:
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raise ValueError("Trade dataframe empty.")
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raise ValueError("Trade dataframe empty.")
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profit_results = trades.sort_values(date_col).reset_index(drop=True)
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profit_results = trades.sort_values(date_col).reset_index(drop=True)
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max_drawdown_df = pd.DataFrame()
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max_drawdown_df = _calc_drawdown_series(profit_results, date_col=date_col, value_col=value_col)
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max_drawdown_df['cumulative'] = profit_results[value_col].cumsum()
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max_drawdown_df['high_value'] = max_drawdown_df['cumulative'].cummax()
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max_drawdown_df['drawdown'] = max_drawdown_df['cumulative'] - max_drawdown_df['high_value']
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idxmin = max_drawdown_df['drawdown'].idxmin()
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idxmin = max_drawdown_df['drawdown'].idxmin()
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if idxmin == 0:
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if idxmin == 0:
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@ -5,7 +5,8 @@ from typing import Any, Dict, List
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import pandas as pd
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import pandas as pd
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from freqtrade.configuration import TimeRange
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from freqtrade.configuration import TimeRange
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from freqtrade.data.btanalysis import (calculate_max_drawdown, combine_dataframes_with_mean,
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from freqtrade.data.btanalysis import (analyze_trade_parallelism, calculate_max_drawdown,
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calculate_underwater, combine_dataframes_with_mean,
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create_cum_profit, extract_trades_of_period, load_trades)
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create_cum_profit, extract_trades_of_period, load_trades)
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from freqtrade.data.converter import trim_dataframe
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from freqtrade.data.converter import trim_dataframe
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from freqtrade.data.dataprovider import DataProvider
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from freqtrade.data.dataprovider import DataProvider
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@ -185,6 +186,48 @@ def add_max_drawdown(fig, row, trades: pd.DataFrame, df_comb: pd.DataFrame,
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return fig
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return fig
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def add_underwater(fig, row, trades: pd.DataFrame) -> make_subplots:
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"""
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Add underwater plot
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"""
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try:
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underwater = calculate_underwater(trades, value_col="profit_abs")
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underwater = go.Scatter(
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x=underwater['date'],
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y=underwater['drawdown'],
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name="Underwater Plot",
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fill='tozeroy',
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fillcolor='#cc362b',
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line={'color': '#cc362b'},
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)
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fig.add_trace(underwater, row, 1)
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except ValueError:
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logger.warning("No trades found - not plotting underwater plot")
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return fig
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def add_parallelism(fig, row, trades: pd.DataFrame, timeframe: str) -> make_subplots:
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"""
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Add Chart showing trade parallelism
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"""
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try:
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result = analyze_trade_parallelism(trades, timeframe)
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drawdown = go.Scatter(
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x=result.index,
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y=result['open_trades'],
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name="Parallel trades",
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fill='tozeroy',
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fillcolor='#242222',
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line={'color': '#242222'},
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)
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fig.add_trace(drawdown, row, 1)
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except ValueError:
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logger.warning("No trades found - not plotting Parallelism.")
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return fig
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def plot_trades(fig, trades: pd.DataFrame) -> make_subplots:
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def plot_trades(fig, trades: pd.DataFrame) -> make_subplots:
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"""
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"""
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Add trades to "fig"
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Add trades to "fig"
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@ -482,20 +525,30 @@ def generate_profit_graph(pairs: str, data: Dict[str, pd.DataFrame],
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name='Avg close price',
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name='Avg close price',
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)
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)
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fig = make_subplots(rows=3, cols=1, shared_xaxes=True,
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fig = make_subplots(rows=5, cols=1, shared_xaxes=True,
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row_width=[1, 1, 1],
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row_heights=[1, 1, 1, 0.5, 1],
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vertical_spacing=0.05,
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vertical_spacing=0.05,
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subplot_titles=["AVG Close Price", "Combined Profit", "Profit per pair"])
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subplot_titles=[
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"AVG Close Price",
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"Combined Profit",
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"Profit per pair",
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"Parallelism",
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"Underwater",
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])
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fig['layout'].update(title="Freqtrade Profit plot")
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fig['layout'].update(title="Freqtrade Profit plot")
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fig['layout']['yaxis1'].update(title='Price')
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fig['layout']['yaxis1'].update(title='Price')
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fig['layout']['yaxis2'].update(title=f'Profit {stake_currency}')
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fig['layout']['yaxis2'].update(title=f'Profit {stake_currency}')
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fig['layout']['yaxis3'].update(title=f'Profit {stake_currency}')
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fig['layout']['yaxis3'].update(title=f'Profit {stake_currency}')
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fig['layout']['yaxis4'].update(title='Trade count')
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fig['layout']['yaxis5'].update(title='Underwater Plot')
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fig['layout']['xaxis']['rangeslider'].update(visible=False)
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fig['layout']['xaxis']['rangeslider'].update(visible=False)
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fig.update_layout(modebar_add=["v1hovermode", "toggleSpikeLines"])
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fig.update_layout(modebar_add=["v1hovermode", "toggleSpikeLines"])
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fig.add_trace(avgclose, 1, 1)
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fig.add_trace(avgclose, 1, 1)
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fig = add_profit(fig, 2, df_comb, 'cum_profit', 'Profit')
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fig = add_profit(fig, 2, df_comb, 'cum_profit', 'Profit')
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fig = add_max_drawdown(fig, 2, trades, df_comb, timeframe)
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fig = add_max_drawdown(fig, 2, trades, df_comb, timeframe)
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fig = add_parallelism(fig, 4, trades, timeframe)
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fig = add_underwater(fig, 5, trades)
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for pair in pairs:
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for pair in pairs:
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profit_col = f'cum_profit_{pair}'
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profit_col = f'cum_profit_{pair}'
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@ -11,10 +11,10 @@ from freqtrade.constants import LAST_BT_RESULT_FN
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from freqtrade.data.btanalysis import (BT_DATA_COLUMNS, BT_DATA_COLUMNS_MID, BT_DATA_COLUMNS_OLD,
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from freqtrade.data.btanalysis import (BT_DATA_COLUMNS, BT_DATA_COLUMNS_MID, BT_DATA_COLUMNS_OLD,
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analyze_trade_parallelism, calculate_csum,
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analyze_trade_parallelism, calculate_csum,
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calculate_market_change, calculate_max_drawdown,
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calculate_market_change, calculate_max_drawdown,
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combine_dataframes_with_mean, create_cum_profit,
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calculate_underwater, combine_dataframes_with_mean,
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extract_trades_of_period, get_latest_backtest_filename,
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create_cum_profit, extract_trades_of_period,
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get_latest_hyperopt_file, load_backtest_data, load_trades,
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get_latest_backtest_filename, get_latest_hyperopt_file,
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load_trades_from_db)
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load_backtest_data, load_trades, load_trades_from_db)
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from freqtrade.data.history import load_data, load_pair_history
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from freqtrade.data.history import load_data, load_pair_history
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from tests.conftest import create_mock_trades
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from tests.conftest import create_mock_trades
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from tests.conftest_trades import MOCK_TRADE_COUNT
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from tests.conftest_trades import MOCK_TRADE_COUNT
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@ -291,9 +291,16 @@ def test_calculate_max_drawdown(testdatadir):
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assert isinstance(lval, float)
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assert isinstance(lval, float)
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assert hdate == Timestamp('2018-01-24 14:25:00', tz='UTC')
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assert hdate == Timestamp('2018-01-24 14:25:00', tz='UTC')
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assert lowdate == Timestamp('2018-01-30 04:45:00', tz='UTC')
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assert lowdate == Timestamp('2018-01-30 04:45:00', tz='UTC')
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underwater = calculate_underwater(bt_data)
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assert isinstance(underwater, DataFrame)
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with pytest.raises(ValueError, match='Trade dataframe empty.'):
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with pytest.raises(ValueError, match='Trade dataframe empty.'):
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drawdown, hdate, lowdate, hval, lval = calculate_max_drawdown(DataFrame())
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drawdown, hdate, lowdate, hval, lval = calculate_max_drawdown(DataFrame())
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with pytest.raises(ValueError, match='Trade dataframe empty.'):
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calculate_underwater(DataFrame())
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def test_calculate_csum(testdatadir):
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def test_calculate_csum(testdatadir):
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filename = testdatadir / "backtest-result_test.json"
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filename = testdatadir / "backtest-result_test.json"
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@ -336,15 +336,20 @@ def test_generate_profit_graph(testdatadir):
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assert fig.layout.yaxis3.title.text == "Profit BTC"
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assert fig.layout.yaxis3.title.text == "Profit BTC"
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figure = fig.layout.figure
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figure = fig.layout.figure
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assert len(figure.data) == 5
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assert len(figure.data) == 7
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avgclose = find_trace_in_fig_data(figure.data, "Avg close price")
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avgclose = find_trace_in_fig_data(figure.data, "Avg close price")
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assert isinstance(avgclose, go.Scatter)
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assert isinstance(avgclose, go.Scatter)
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profit = find_trace_in_fig_data(figure.data, "Profit")
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profit = find_trace_in_fig_data(figure.data, "Profit")
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assert isinstance(profit, go.Scatter)
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assert isinstance(profit, go.Scatter)
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profit = find_trace_in_fig_data(figure.data, "Max drawdown 10.45%")
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drawdown = find_trace_in_fig_data(figure.data, "Max drawdown 10.45%")
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assert isinstance(profit, go.Scatter)
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assert isinstance(drawdown, go.Scatter)
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parallel = find_trace_in_fig_data(figure.data, "Parallel trades")
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assert isinstance(parallel, go.Scatter)
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underwater = find_trace_in_fig_data(figure.data, "Underwater Plot")
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assert isinstance(underwater, go.Scatter)
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for pair in pairs:
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for pair in pairs:
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profit_pair = find_trace_in_fig_data(figure.data, f"Profit {pair}")
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profit_pair = find_trace_in_fig_data(figure.data, f"Profit {pair}")
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