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AlphaLens — an event-driven backtesting & walk-forward engine for systematic strategies

Project description

alphalens-core

An event-driven backtesting & walk-forward engine for systematic trading strategies.

Write a strategy as a Python class, run a single forward pass over an in-memory OHLCV feed, and get back an equity curve, a trade log, and a rich set of performance statistics — plus walk-forward analysis, parameter sweeps, and an HTML dashboard. alphalens-core is the open engine behind AlphaLens.

Install

pip install alphalens-core              # core engine (pandas + numpy only)
pip install "alphalens-core[viz]"       # + matplotlib / quantstats dashboard & reports
pip install "alphalens-core[polygon]"   # + Polygon market-data fetching
pip install "alphalens-core[live]"      # + Alpaca execution and Polygon history
pip install "alphalens-core[fast]"      # + pyarrow parquet cache

Quickstart

from alphalens_core import Algorithm, Backtester

class GoldenCross(Algorithm):
    start = "2020-01-01"
    end = "2024-12-31"
    universe = ["SPY"]

    def initialize(self):
        self.set_warmup(50)

    def on_data(self, slice):
        hist = self.history("SPY", 50)["close"]
        if len(hist) < 50:
            return
        self.set_holdings("SPY", 1.0 if hist.tail(10).mean() > hist.mean() else 0.0)

result = Backtester().run(GoldenCross)
print(result.stats)     # Sharpe, Sortino, CAGR, max drawdown, win rate, …
result.dashboard        # inline HTML report in Jupyter, or opens in your browser

Live data needs a POLYGON_API_KEY (a .env / .env.local file is loaded automatically). To run fully offline, inject your own DataFeed.

Live / Alpaca Paper Trading

The live runner uses the same Algorithm class and history API as the backtester. LiveSession.from_cache seeds a bounded rolling history, then each completed Slice is appended before on_data runs:

from alphalens_core import AlpacaBrokerage, LiveSession, NO_BAR
from my_data import next_completed_slice
from my_strategy import MyStrategy

broker = AlpacaBrokerage(paper=True)
session = LiveSession.from_cache(
    MyStrategy,
    brokerage=broker,
    next_bar_fn=next_completed_slice,  # Slice, NO_BAR while idle, None to stop
    history_bars=500,
    state_path=".alphalens/live/my_strategy.json",
)
session.run()

from_cache uses UniverseCache and Polygon by default; inject an existing cache to use another DataSource. The runner:

  • exposes seeded and appended bars through history(), history_array(), and history_arrays();
  • keeps history bounded and suppresses duplicate timestamps;
  • rejects out-of-order bars and unreconciled broker orders;
  • synchronizes Alpaca cash/positions and FIFO lots at startup;
  • respects strategy resolution and warmup settings;
  • checkpoints the last processed bar to avoid replay after restart.

Market-data transport is intentionally separate from execution. A callback must emit completed, consolidated slices for the strategy universe. See alphalens_core.examples.paper_trade for an Alpaca polling example. Live membership changes are not yet supported: the session fails explicitly for dynamic universes until removal orders can be reconciled with broker fills.

Features

  • Event-driven lifecycleinitialize, on_data, on_order_event, on_securities_changed, on_end_of_day, on_warmup_finished.
  • Realistic fills — next-bar execution with pluggable slippage / fee / fill models, and a one-bar look-ahead guard so decisions on bar t can't peek at bar t's close.
  • Walk-forward analysis with per-fold parameter search.
  • Parameter sweeps + PBO (probability of backtest overfitting).
  • Live execution through Alpaca paper/live brokerage with buffered rolling history and restart-safe bar processing.
  • Reportingresult.stats, an HTML result.dashboard, and quantstats reports.

CLI

alphalens run --strategy mymod:MyStrategy
alphalens wfa --strategy mymod:MyStrategy --train 504 --test 63 --step 63
alphalens cache --info

License

Apache-2.0 © AlphaLens LLC

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