Statistics#

API documentation for tradeexecutor.state.statistics.Statistics Python class in Trading Strategy framework.

class Statistics[source]#

Bases: object

Statistics for a trade execution state.

We calculate various statistics on the server-side and make them part of the state, so that JS clients can easily display this information.

Statistics are collected over time and more often than trading ticks. We store historical statistics for each position as the part of the state.

__init__(portfolio=<factory>, positions=<factory>, closed_positions=<factory>, long_short_metrics_latest=None)#
Parameters:
Return type:

None

Methods

__init__([portfolio, positions, ...])

add_positions_stats(position_id, p_stats)

Add a new sample to position stats.

from_dict(kvs, *[, infer_missing])

from_json(s, *[, parse_float, parse_int, ...])

get_earliest_portfolio_stats()

get_equity_series()

Get the time series of portfolio equity.

get_latest_portfolio_stats()

get_latest_position_stats(position_id)

get_naive_rolling_pnl_pct()

Get the naive rolling PnL percentage.

get_portfolio_statistics_dataframe(attr_name)

Get any of position statistcs value as a columnar data.

get_position_statistics_as_dataframe(position_id)

Convert position statistics history to a Pandas dataframe.

schema(*[, infer_missing, only, exclude, ...])

to_dict([encode_json])

to_json(*[, skipkeys, ensure_ascii, ...])

Attributes

long_short_metrics_latest

Latest long short metrics

portfolio

Per portfolio statistics.

positions

Per position statistics.

closed_positions

Per position statistics for closed positions.

portfolio: List[PortfolioStatistics]#

Per portfolio statistics.

Contains list of statistics for the portfolio over time. The first timestamp is the first entry in the list. Note that now we have only one portfolio per state.

This is calculated in tradeexecutor.statistics.core.calculate_statistics().

positions: Dict[int, List[PositionStatistics]]#

Per position statistics. We look them up by position id. Each position contains list of statistics for the position over time. The first timestamp is the first entry in the list.

closed_positions: Dict[int, FinalPositionStatistics]#

Per position statistics for closed positions.

long_short_metrics_latest: Optional[str] = None#

Latest long short metrics

get_equity_series()[source]#

Get the time series of portfolio equity.

Returns:

Pandas Series with timestamps as index and equity as values.

Return type:

Series

add_positions_stats(position_id, p_stats)[source]#

Add a new sample to position stats.

We cannot use defaultdict() here because we lose defaultdict instance on state serialization.

Parameters:
get_portfolio_statistics_dataframe(attr_name, resampling_time='D', resampling_method='max')[source]#

Get any of position statistcs value as a columnar data.

Get the daily performance of the portfolio.

Example:

# Create time series of portfolio "total_equity" over its lifetime
s = stats.get_portfolio_statistics_dataframe("total_equity")
Parameters:
Returns:

DataFrame for the value with time as index.

Return type:

Series

get_position_statistics_as_dataframe(position_id)[source]#

Convert position statistics history to a Pandas dataframe.

Returns:

DataFrame object with DateTimeIndex

Parameters:

position_id (int) –

Return type:

DataFrame

get_naive_rolling_pnl_pct()[source]#

Get the naive rolling PnL percentage.

Used to display the PnL on the backtest progress bar.

Returns:

Profitability -1…inf

Return type:

float

__init__(portfolio=<factory>, positions=<factory>, closed_positions=<factory>, long_short_metrics_latest=None)#
Parameters:
Return type:

None