Files
catalyst/zipline/data/_adjustments.pyx
T
Eddie Hebert e33f6dcdcd MAINT: Move equity data formats out of loader.
Put the logic for reading and writing the equity price and adjustment
data into a module located in data, making it distinct from the pipeline
loader usage of the formats.

This prepares for both incoming changes of how adjustments are written,
(which includes using the bcolz daily reader as an input), as well as
eventually providing the readers to a DataPortal object.
2015-10-09 17:20:19 -04:00

285 lines
8.9 KiB
Cython

#
# Copyright 2015 Quantopian, Inc.
#
# 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 cpython cimport (
PyDict_Contains,
PySet_Add,
)
from numpy import (
uint32,
zeros,
)
from pandas import Timestamp
ctypedef object Timestamp_t
ctypedef object DatetimeIndex_t
ctypedef object Int64Index_t
from zipline.lib.adjustment import Float64Multiply
from zipline.assets.asset_writer import (
SQLITE_MAX_VARIABLE_NUMBER as SQLITE_MAX_IN_STATEMENT,
)
_SID_QUERY_TEMPLATE = """
SELECT DISTINCT sid FROM {0}
WHERE effective_date >= ? AND effective_date <= ?
"""
cdef dict SID_QUERIES = {
tablename: _SID_QUERY_TEMPLATE.format(tablename)
for tablename in ('splits', 'dividends', 'mergers')
}
ADJ_QUERY_TEMPLATE = """
SELECT sid, ratio, effective_date
FROM {0}
WHERE sid IN ({1}) AND effective_date >= {2} AND effective_date <= {3}
"""
EPOCH = Timestamp(0, tz='UTC')
cdef set _get_sids_from_table(object db,
str tablename,
int start_date,
int end_date):
"""
Get the unique sids for all adjustments between start_date and end_date
from table `tablename`.
Parameters
----------
db : sqlite3.connection
tablename : str
start_date : int (seconds since epoch)
end_date : int (seconds since epoch)
Returns
-------
sids : set
Set of sets
"""
cdef object cursor = db.execute(
SID_QUERIES[tablename],
(start_date, end_date),
)
cdef set out = set()
cdef tuple result
for result in cursor.fetchall():
PySet_Add(out, result[0])
return out
cdef set _get_split_sids(object db, int start_date, int end_date):
return _get_sids_from_table(db, 'splits', start_date, end_date)
cdef set _get_merger_sids(object db, int start_date, int end_date):
return _get_sids_from_table(db, 'mergers', start_date, end_date)
cdef set _get_dividend_sids(object db, int start_date, int end_date):
return _get_sids_from_table(db, 'dividends', start_date, end_date)
cdef _adjustments(object adjustments_db,
set split_sids,
set merger_sids,
set dividends_sids,
int start_date,
int end_date,
Int64Index_t assets):
c = adjustments_db.cursor()
splits_to_query = [str(a) for a in assets if a in split_sids]
splits_results = []
while splits_to_query:
query_len = min(len(splits_to_query), SQLITE_MAX_IN_STATEMENT)
query_assets = splits_to_query[:query_len]
t= [str(a) for a in query_assets]
statement = ADJ_QUERY_TEMPLATE.format('splits',
",".join(['?' for _ in query_assets]), start_date, end_date)
c.execute(statement, t)
splits_to_query = splits_to_query[query_len:]
splits_results.extend(c.fetchall())
mergers_to_query = [str(a) for a in assets if a in merger_sids]
mergers_results = []
while mergers_to_query:
query_len = min(len(mergers_to_query), SQLITE_MAX_IN_STATEMENT)
query_assets = mergers_to_query[:query_len]
t= [str(a) for a in query_assets]
statement = ADJ_QUERY_TEMPLATE.format('mergers',
",".join(['?' for _ in query_assets]), start_date, end_date)
c.execute(statement, t)
mergers_to_query = mergers_to_query[query_len:]
mergers_results.extend(c.fetchall())
dividends_to_query = [str(a) for a in assets if a in dividends_sids]
dividends_results = []
while dividends_to_query:
query_len = min(len(dividends_to_query), SQLITE_MAX_IN_STATEMENT)
query_assets = dividends_to_query[:query_len]
t= [str(a) for a in query_assets]
statement = ADJ_QUERY_TEMPLATE.format('dividends',
",".join(['?' for _ in query_assets]), start_date, end_date)
c.execute(statement, t)
dividends_to_query = dividends_to_query[query_len:]
dividends_results.extend(c.fetchall())
return splits_results, mergers_results, dividends_results
cpdef load_adjustments_from_sqlite(object adjustments_db, # sqlite3.Connection
list columns,
DatetimeIndex_t dates,
Int64Index_t assets):
"""
Load a dictionary of Adjustment objects from adjustments_db
Parameters
----------
adjustments_db : sqlite3.Connection
Connection to a sqlite3 table in the format written by
SQLiteAdjustmentWriter.
columns : list[str]
List of column names for which adjustments are needed.
dates : pd.DatetimeIndex
Dates for which adjustments are needed
assets : pd.Int64Index
Assets for which adjustments are needed.
"""
cdef int start_date = int((dates[0] - EPOCH).total_seconds())
cdef int end_date = int((dates[-1] - EPOCH).total_seconds())
cdef set split_sids = _get_split_sids(
adjustments_db,
start_date,
end_date,
)
cdef set merger_sids = _get_merger_sids(
adjustments_db,
start_date,
end_date,
)
cdef set dividend_sids = _get_dividend_sids(
adjustments_db,
start_date,
end_date,
)
cdef:
list splits, mergers, dividends
splits, mergers, dividends = _adjustments(
adjustments_db,
split_sids,
merger_sids,
dividend_sids,
start_date,
end_date,
assets,
)
cdef list results = [{} for column in columns]
cdef dict asset_ixs = {} # Cache sid lookups here.
cdef:
int sid
double ratio
int eff_date
int date_loc
Py_ssize_t asset_ix
int i
dict col_adjustments
# splits affect prices and volumes, volumes is the inverse
for sid, ratio, eff_date in splits:
if eff_date < start_date:
continue
date_loc = dates.get_loc(
Timestamp(eff_date, unit='s', tz='UTC'),
# Get the first date **on or after** the effective date.
method='bfill',
)
if not PyDict_Contains(asset_ixs, sid):
asset_ixs[sid] = assets.get_loc(sid)
asset_ix = asset_ixs[sid]
price_adj = Float64Multiply(0, date_loc, asset_ix, ratio)
for i, column in enumerate(columns):
col_adjustments = results[i]
if column != 'volume':
try:
col_adjustments[date_loc].append(price_adj)
except KeyError:
col_adjustments[date_loc] = [price_adj]
else:
volume_adj = Float64Multiply(
0, date_loc, asset_ix, 1.0 / ratio
)
try:
col_adjustments[date_loc].append(volume_adj)
except KeyError:
col_adjustments[date_loc] = [volume_adj]
# mergers affect prices only
for sid, ratio, eff_date in mergers:
if eff_date < start_date:
continue
date_loc = dates.get_loc(
Timestamp(eff_date, unit='s', tz='UTC'),
# Get the first date **on or after** the effective date.
method='bfill',
)
if not PyDict_Contains(asset_ixs, sid):
asset_ixs[sid] = assets.get_loc(sid)
asset_ix = asset_ixs[sid]
adj = Float64Multiply(0, date_loc, asset_ix, ratio)
for i, column in enumerate(columns):
col_adjustments = results[i]
if column != 'volume':
try:
col_adjustments[date_loc].append(adj)
except KeyError:
col_adjustments[date_loc] = [adj]
# dividends affect prices only
for sid, ratio, eff_date in dividends:
if eff_date < start_date:
continue
date_loc = dates.get_loc(
Timestamp(eff_date, unit='s', tz='UTC'),
# Get the first date **on or after** the effective date.
method='bfill',
)
if not PyDict_Contains(asset_ixs, sid):
asset_ixs[sid] = assets.get_loc(sid)
asset_ix = asset_ixs[sid]
adj = Float64Multiply(0, date_loc, asset_ix, ratio)
for i, column in enumerate(columns):
col_adjustments = results[i]
if column != 'volume':
try:
col_adjustments[date_loc].append(adj)
except KeyError:
col_adjustments[date_loc] = [adj]
return results