mirror of
https://github.com/wassname/catalyst.git
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59bcd097d5
This creates a data source for csv and hdf5 files, a generator to create a sample csv, and a pytables generator to go from a list of dated gzipped csv's in a directory to a pytables data source. This does not add a unittest yet which we should write for the future.
173 lines
6.3 KiB
Python
173 lines
6.3 KiB
Python
# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""
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leverage work of briancappello and quantopian team
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(especcially twiecki, eddie, and fawce)
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michaelws
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"""
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import pandas as pd
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from zipline.gens.utils import hash_args
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from zipline.sources.data_source import DataSource
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import datetime
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import csv
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import numpy as np
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import dateutil.parser
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def gen_ts(date, time):
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return pd.Timestamp(datetime.datetime.combine(date, time))
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class DatasourceCSVohlc(DataSource):
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""" expects dictReader for a csv file
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with the following columns in the header
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dt, sid, open, high, low, close, volume
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dt expected in ISO format and order does not matter"""
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def __init__(self, data, **kwargs):
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isinstance(data, csv.DictReader)
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self.data = data
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# Unpack config dictionary with default values.
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self.tz_in = kwargs.get('tz_in', "US/Eastern")
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self.start = pd.Timestamp(np.datetime64(kwargs.get('start')))
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self.start = self.start.tz_localize('utc')
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self.end = pd.Timestamp(np.datetime64(kwargs.get('end')))
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self.end = self.end.tz_localize('utc')
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start_time_str = kwargs.get("start_time", "9:30")
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end_time_str = kwargs.get("end_time", "16:00")
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self.sid_filter = kwargs.get('sid_filter', None)
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self.source_id = kwargs.get("source_id", None)
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self.sids = kwargs.get('sidsF', None)
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self.start_time = dateutil.parser.parse(start_time_str).time()
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self.end_time = dateutil.parser.parse(end_time_str).time()
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self._raw_data = None
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self.arg_string = hash_args(data, **kwargs)
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@property
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def instance_hash(self):
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return self.arg_string
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def raw_data_gen(self):
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previous_ts = None
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cols = np.array(["open", "high", "low"])
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for row in self.data:
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dt64 = pd.Timestamp(np.datetime64(row["dt"]))
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ts = pd.Timestamp(dt64).tz_localize(self.tz_in).tz_convert('utc')
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if ts < self.start or ts > self.end:
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continue
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if previous_ts is None or ts.date() != previous_ts.date():
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start_ts = datetime.date(ts.date(), self.start_time)
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end_ts = gen_ts(ts.date(), self.end_time)
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volumes = {}
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price_volumes = {}
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sid = row["sid"]
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if self.sid_filter and sid in self.sid_filter:
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continue
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elif self.sids is None or sid in self.sids:
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if sid not in volumes:
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volumes[sid] = 0
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price_volumes[sid] = 0
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if ts < start_ts or ts > end_ts:
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continue
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event = {"sid": sid, "type": "TRADE", "symbol": sid}
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event["dt"] = ts
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event["price"] = float(row["close"])
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event["close"] = event["price"]
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event["volume"] = int(row["volume"])
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volumes[sid] += float(event["volume"])
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price_volumes[sid] += event["price"] * event["volume"]
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event["vwap"] = price_volumes[sid] / volumes[sid]
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for field in cols:
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event[field] = float(row[field])
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yield event
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previous_ts = ts
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@property
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def raw_data(self):
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if not self._raw_data:
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self._raw_data = self.raw_data_gen()
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return self._raw_data
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@property
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def mapping(self):
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return {
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'sid': (lambda x: x, 'sid'),
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'dt': (lambda x: x, 'dt'),
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'open': (float, 'open'),
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'high': (float, 'high'),
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'low': (float, 'low'),
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'close': (float, 'close'),
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'price': (float, 'price'),
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'volume': (int, 'volume'),
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'vwap': (lambda x: x, 'vwap')
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}
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class DataSourceCSVSignal(DataSource):
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""" expects dictReader for a csv file in form with header
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dt, sid, signal
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dt expected in ISO format"""
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def __init__(self, data, **kwargs):
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assert isinstance(data, csv.DictReader)
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self.data = data
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self.source_id = kwargs.get("source_id", None)
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# Unpack config dictionary with default values.
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self.start = kwargs.get('start')
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self.end = kwargs.get('end')
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self.sids = kwargs.get('sids', None)
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self.sid_filter = kwargs.get('sid_filter', None)
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self.arg_string = hash_args(data, **kwargs)
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self._raw_data = None
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@property
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def instance_hash(self):
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return self.arg_string
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def raw_data_gen(self):
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previous_ts = None
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for row in self.data:
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dt64 = pd.Timestamp(np.datetime64(row["dt"]))
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ts = pd.Timestamp(dt64).tz_localize(self.tz_in).tz_convert('utc')
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if ts < self.start or ts > self.end:
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continue
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if previous_ts is None or ts.date() != previous_ts.date():
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start_ts = gen_ts(ts.date(), self.start_time)
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end_ts = gen_ts(ts.date(), self.end_time)
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volumes = {}
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price_volumes = {}
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sid = row["sid"]
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if self.sid_filter and sid in self.sid_filter:
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continue
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elif self.sids is None or sid in self.sids:
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if sid not in volumes:
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volumes[sid] = 0
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price_volumes[sid] = 0
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if ts < start_ts or ts > end_ts:
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continue
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event = {"sid": sid, "type": "CUSTOM", "dt": ts,
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"signal": row["signal"]}
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yield event
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previous_ts = ts
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@property
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def raw_data(self):
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if not self._raw_data:
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self._raw_data = self.raw_data_gen()
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return self._raw_data
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@property
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def mapping(self):
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return {
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'sid': (lambda x: x, 'symbol'),
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'dt': (lambda x: x, 'dt'),
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'signal': (lambda x: x, 'signal'),
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}
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