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Lean
/
Algorithm.Python
/
ConsolidateRegressionAlgorithm.py
Lean
/
Algorithm.Python
/
ConsolidateRegressionAlgorithm.py
ConsolidateRegressionAlgorithm.py 7.19 KB
一键复制 编辑 原始数据 按行查看 历史
Jhonathan Abreu 提交于 2025年12月02日 00:44 +08:00 . Make DataDictionary ordered by key (symbol) (#9105)
# QUANTCONNECT.COM - Democratizing Finance, Empowering Individuals.
# Lean Algorithmic Trading Engine v2.0. Copyright 2014 QuantConnect Corporation.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from AlgorithmImports import *
from CustomDataRegressionAlgorithm import Bitcoin
### <summary>
### Regression algorithm reproducing data type bugs in the Consolidate API. Related to GH 4205.
### </summary>
class ConsolidateRegressionAlgorithm(QCAlgorithm):
# Initialise the data and resolution required, as well as the cash and start-end dates for your algorithm. All algorithms must initialized.
def initialize(self):
self.set_start_date(2020, 1, 5)
self.set_end_date(2020, 1, 20)
SP500 = Symbol.create(Futures.Indices.SP_500_E_MINI, SecurityType.FUTURE, Market.CME)
symbol = list(sorted(self.futures_chain(SP500).contracts.keys(), key=lambda symbol: symbol.id.date))[0]
self._future = self.add_future_contract(symbol)
tradable_dates_count = len(list(Time.each_tradeable_day_in_time_zone(self._future.exchange.hours,
self.start_date,
self.end_date,
self._future.exchange.time_zone,
False)))
self._expected_consolidation_counts = []
self.consolidate(symbol, Calendar.MONTHLY, lambda bar: self.update_monthly_consolidator(bar)) # shouldn't consolidate
self.consolidate(symbol, Calendar.WEEKLY, TickType.TRADE, lambda bar: self.update_weekly_consolidator(bar))
self.consolidate(symbol, Resolution.DAILY, lambda bar: self.update_trade_bar(bar, 0))
self._expected_consolidation_counts.append(tradable_dates_count)
self.consolidate(symbol, Resolution.DAILY, TickType.QUOTE, lambda bar: self.update_quote_bar(bar, 1))
self._expected_consolidation_counts.append(tradable_dates_count)
self.consolidate(symbol, timedelta(1), lambda bar: self.update_trade_bar(bar, 2))
self._expected_consolidation_counts.append(tradable_dates_count - 1)
self.consolidate(symbol, timedelta(1), TickType.QUOTE, lambda bar: self.update_quote_bar(bar, 3))
self._expected_consolidation_counts.append(tradable_dates_count - 1)
# sending None tick type
self.consolidate(symbol, timedelta(1), None, lambda bar: self.update_trade_bar(bar, 4))
self._expected_consolidation_counts.append(tradable_dates_count - 1)
self.consolidate(symbol, Resolution.DAILY, None, lambda bar: self.update_trade_bar(bar, 5))
self._expected_consolidation_counts.append(tradable_dates_count)
self._consolidation_counts = [0] * len(self._expected_consolidation_counts)
self._smas = [SimpleMovingAverage(10) for x in self._consolidation_counts]
self._last_sma_updates = [datetime.min for x in self._consolidation_counts]
self._monthly_consolidator_sma = SimpleMovingAverage(10)
self._monthly_consolidation_count = 0
self._weekly_consolidator_sma = SimpleMovingAverage(10)
self._weekly_consolidation_count = 0
self._last_weekly_sma_update = datetime.min
# custom data
self._custom_data_consolidator = 0
custom_symbol = self.add_data(Bitcoin, "BTC", Resolution.MINUTE).symbol
self.consolidate(custom_symbol, timedelta(1), lambda bar: self.increment_counter(1))
def increment_counter(self, id):
if id == 1:
self._custom_data_consolidator += 1
def update_trade_bar(self, bar, position):
self._smas[position].update(bar.end_time, bar.volume)
self._last_sma_updates[position] = bar.end_time
self._consolidation_counts[position] += 1
def update_quote_bar(self, bar, position):
self._smas[position].update(bar.end_time, bar.ask.high)
self._last_sma_updates[position] = bar.end_time
self._consolidation_counts[position] += 1
def update_monthly_consolidator(self, bar):
self._monthly_consolidator_sma.update(bar.end_time, bar.volume)
self._monthly_consolidation_count += 1
def update_weekly_consolidator(self, bar):
self._weekly_consolidator_sma.update(bar.end_time, bar.volume)
self._last_weekly_sma_update = bar.end_time
self._weekly_consolidation_count += 1
def on_end_of_algorithm(self):
for i, expected_consolidation_count in enumerate(self._expected_consolidation_counts):
consolidation_count = self._consolidation_counts[i]
if consolidation_count != expected_consolidation_count:
raise ValueError(f"Unexpected consolidation count for index {i}: expected {expected_consolidation_count} but was {consolidation_count}")
expected_weekly_consolidations = (self.end_date - self.start_date).days // 7
if self._weekly_consolidation_count != expected_weekly_consolidations:
raise ValueError(f"Expected {expected_weekly_consolidations} weekly consolidations but found {self._weekly_consolidation_count}")
if self._custom_data_consolidator == 0:
raise ValueError("Custom data consolidator did not consolidate any data")
for i, sma in enumerate(self._smas):
if sma.samples != self._expected_consolidation_counts[i]:
raise AssertionError(f"Expected {self._expected_consolidation_counts[i]} samples in each SMA but found {sma.samples} in SMA in index {i}")
last_update = self._last_sma_updates[i]
if sma.current.time != last_update:
raise AssertionError(f"Expected SMA in index {i} to have been last updated at {last_update} but was {sma.current.time}")
if self._monthly_consolidation_count != 0 or self._monthly_consolidator_sma.samples != 0:
raise AssertionError("Expected monthly consolidator to not have consolidated any data")
if self._weekly_consolidator_sma.samples != expected_weekly_consolidations:
raise AssertionError(f"Expected {expected_weekly_consolidations} samples in the weekly consolidator SMA but found {self._weekly_consolidator_sma.samples}")
if self._weekly_consolidator_sma.current.time != self._last_weekly_sma_update:
raise AssertionError(f"Expected weekly consolidator SMA to have been last updated at {self._last_weekly_sma_update} but was {self._weekly_consolidator_sma.current.time}")
# on_data event is the primary entry point for your algorithm. Each new data point will be pumped in here.
def on_data(self, data):
if not self.portfolio.invested and self._future.has_data:
self.set_holdings(self._future.symbol, 0.5)
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