piker/piker/data/marketstore.py

852 lines
24 KiB
Python

# piker: trading gear for hackers
# Copyright (C) Tyler Goodlet (in stewardship for piker0)
# This program is free software: you can redistribute it and/or modify
# it under the terms of the GNU Affero General Public License as published by
# the Free Software Foundation, either version 3 of the License, or
# (at your option) any later version.
# This program is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
# GNU Affero General Public License for more details.
# You should have received a copy of the GNU Affero General Public License
# along with this program. If not, see <https://www.gnu.org/licenses/>.
'''
``marketstore`` integration.
- client management routines
- ticK data ingest routines
- websocket client for subscribing to write triggers
- todo: tick sequence stream-cloning for testing
'''
from __future__ import annotations
from contextlib import asynccontextmanager as acm
from datetime import datetime
from pprint import pformat
from typing import (
Any,
Optional,
Union,
TYPE_CHECKING,
)
import time
from math import isnan
from bidict import bidict
import msgpack
import pyqtgraph as pg
import numpy as np
import tractor
from trio_websocket import open_websocket_url
from anyio_marketstore import (
open_marketstore_client,
MarketstoreClient,
Params,
)
import pendulum
import purerpc
if TYPE_CHECKING:
import docker
from ._ahab import DockerContainer
from .feed import maybe_open_feed
from ..log import get_logger, get_console_log
log = get_logger(__name__)
# container level config
_config = {
'grpc_listen_port': 5995,
'ws_listen_port': 5993,
'log_level': 'debug',
}
_yaml_config = '''
# piker's ``marketstore`` config.
# mount this config using:
# sudo docker run --mount \
# type=bind,source="$HOME/.config/piker/",target="/etc" -i -p \
# 5993:5993 alpacamarkets/marketstore:latest
root_directory: data
listen_port: {ws_listen_port}
grpc_listen_port: {grpc_listen_port}
log_level: {log_level}
queryable: true
stop_grace_period: 0
wal_rotate_interval: 5
stale_threshold: 5
enable_add: true
enable_remove: false
triggers:
- module: ondiskagg.so
on: "*/1Sec/OHLCV"
config:
# filter: "nasdaq"
destinations:
- 1Min
- 5Min
- 15Min
- 1H
- 1D
- module: stream.so
on: '*/*/*'
# config:
# filter: "nasdaq"
'''.format(**_config)
def start_marketstore(
client: docker.DockerClient,
**kwargs,
) -> tuple[DockerContainer, dict[str, Any]]:
'''
Start and supervise a marketstore instance with its config bind-mounted
in from the piker config directory on the system.
The equivalent cli cmd to this code is:
sudo docker run --mount \
type=bind,source="$HOME/.config/piker/",target="/etc" -i -p \
5993:5993 alpacamarkets/marketstore:latest
'''
import os
import docker
from .. import config
get_console_log('info', name=__name__)
mktsdir = os.path.join(config._config_dir, 'marketstore')
# create when dne
if not os.path.isdir(mktsdir):
os.mkdir(mktsdir)
yml_file = os.path.join(mktsdir, 'mkts.yml')
if not os.path.isfile(yml_file):
log.warning(
f'No `marketstore` config exists?: {yml_file}\n'
'Generating new file from template:\n'
f'{_yaml_config}\n'
)
with open(yml_file, 'w') as yf:
yf.write(_yaml_config)
# create a mount from user's local piker config dir into container
config_dir_mnt = docker.types.Mount(
target='/etc',
source=mktsdir,
type='bind',
)
# create a user config subdir where the marketstore
# backing filesystem database can be persisted.
persistent_data_dir = os.path.join(
mktsdir, 'data',
)
if not os.path.isdir(persistent_data_dir):
os.mkdir(persistent_data_dir)
data_dir_mnt = docker.types.Mount(
target='/data',
source=persistent_data_dir,
type='bind',
)
dcntr: DockerContainer = client.containers.run(
'alpacamarkets/marketstore:latest',
# do we need this for cmds?
# '-i',
# '-p 5993:5993',
ports={
'5993/tcp': 5993, # jsonrpc / ws?
'5995/tcp': 5995, # grpc
},
mounts=[
config_dir_mnt,
data_dir_mnt,
],
detach=True,
# stop_signal='SIGINT',
init=True,
# remove=True,
)
return (
dcntr,
_config,
# expected startup and stop msgs
"launching tcp listener for all services...",
"exiting...",
)
_tick_tbk_ids: tuple[str, str] = ('1Sec', 'TICK')
_tick_tbk: str = '{}/' + '/'.join(_tick_tbk_ids)
_tick_dt = [
# these two are required for as a "primary key"
('Epoch', 'i8'),
('Nanoseconds', 'i4'),
('IsTrade', 'i1'),
('IsBid', 'i1'),
('Price', 'f4'),
('Size', 'f4')
]
_quote_dt = [
# these two are required for as a "primary key"
('Epoch', 'i8'),
('Nanoseconds', 'i4'),
('Tick', 'i4'), # (-1, 0, 1) = (on bid, same, on ask)
# ('fill_time', 'f4'),
('Last', 'f4'),
('Bid', 'f4'),
('Bsize', 'i8'),
('Asize', 'i8'),
('Ask', 'f4'),
('Size', 'i8'),
('Volume', 'i8'),
# ('brokerd_ts', 'i64'),
# ('VWAP', 'f4')
]
_quote_tmp = {}.fromkeys(dict(_quote_dt).keys(), np.nan)
_tick_map = {
'Up': 1,
'Equal': 0,
'Down': -1,
None: np.nan,
}
_ohlcv_dt = [
# these two are required for as a "primary key"
('Epoch', 'i8'),
# ('Nanoseconds', 'i4'),
# ohlcv sampling
('Open', 'f4'),
('High', 'f4'),
('Low', 'f4'),
('Close', 'f4'),
('Volume', 'f4'),
]
ohlc_key_map = bidict({
'Epoch': 'time',
'Open': 'open',
'High': 'high',
'Low': 'low',
'Close': 'close',
'Volume': 'volume',
})
def mk_tbk(keys: tuple[str, str, str]) -> str:
'''
Generate a marketstore table key from a tuple.
Converts,
``('SPY', '1Sec', 'TICK')`` -> ``"SPY/1Sec/TICK"```
'''
return '/'.join(keys)
def quote_to_marketstore_structarray(
quote: dict[str, Any],
last_fill: Optional[float]
) -> np.array:
'''
Return marketstore writeable structarray from quote ``dict``.
'''
if last_fill:
# new fill bby
now = int(pendulum.parse(last_fill).timestamp)
else:
# this should get inserted upstream by the broker-client to
# subtract from IPC latency
now = time.time_ns()
secs, ns = now / 10**9, now % 10**9
# pack into list[tuple[str, Any]]
array_input = []
# insert 'Epoch' entry first and then 'Nanoseconds'.
array_input.append(int(secs))
array_input.append(int(ns))
# append remaining fields
for name, dt in _quote_dt[2:]:
if 'f' in dt:
none = np.nan
else:
# for ``np.int`` we use 0 as a null value
none = 0
# casefold? see https://github.com/alpacahq/marketstore/issues/324
val = quote.get(name.casefold(), none)
array_input.append(val)
return np.array([tuple(array_input)], dtype=_quote_dt)
@acm
async def get_client(
host: str = 'localhost',
port: int = 5995
) -> MarketstoreClient:
'''
Load a ``anyio_marketstore`` grpc client connected
to an existing ``marketstore`` server.
'''
async with open_marketstore_client(
host,
port
) as client:
yield client
class MarketStoreError(Exception):
"Generic marketstore client error"
# def err_on_resp(response: dict) -> None:
# """Raise any errors found in responses from client request.
# """
# responses = response['responses']
# if responses is not None:
# for r in responses:
# err = r['error']
# if err:
# raise MarketStoreError(err)
# map of seconds ints to "time frame" accepted keys
tf_in_1s = bidict({
1: '1Sec',
60: '1Min',
60*5: '5Min',
60*15: '15Min',
60*30: '30Min',
60*60: '1H',
60*60*24: '1D',
})
class Storage:
'''
High level storage api for both real-time and historical ingest.
'''
def __init__(
self,
client: MarketstoreClient,
) -> None:
# TODO: eventually this should be an api/interface type that
# ensures we can support multiple tsdb backends.
self.client = client
# series' cache from tsdb reads
self._arrays: dict[str, np.ndarray] = {}
async def list_keys(self) -> list[str]:
return await self.client.list_symbols()
async def search_keys(self, pattern: str) -> list[str]:
'''
Search for time series key in the storage backend.
'''
...
async def write_ticks(self, ticks: list) -> None:
...
async def load(
self,
fqsn: str,
) -> tuple[
dict[int, np.ndarray], # timeframe (in secs) to series
Optional[datetime], # first dt
Optional[datetime], # last dt
]:
first_tsdb_dt, last_tsdb_dt = None, None
tsdb_arrays = await self.read_ohlcv(
fqsn,
# on first load we don't need to pull the max
# history per request size worth.
limit=3000,
)
log.info(f'Loaded tsdb history {tsdb_arrays}')
if tsdb_arrays:
fastest = list(tsdb_arrays.values())[0]
times = fastest['Epoch']
first, last = times[0], times[-1]
first_tsdb_dt, last_tsdb_dt = map(
pendulum.from_timestamp, [first, last]
)
return tsdb_arrays, first_tsdb_dt, last_tsdb_dt
async def read_ohlcv(
self,
fqsn: str,
timeframe: Optional[Union[int, str]] = None,
end: Optional[int] = None,
limit: int = int(800e3),
) -> tuple[
MarketstoreClient,
Union[dict, np.ndarray]
]:
client = self.client
syms = await client.list_symbols()
if fqsn not in syms:
return {}
tfstr = tf_in_1s[1]
params = Params(
symbols=fqsn,
timeframe=tfstr,
attrgroup='OHLCV',
end=end,
# limit_from_start=True,
# TODO: figure the max limit here given the
# ``purepc`` msg size limit of purerpc: 33554432
limit=limit,
)
if timeframe is None:
log.info(f'starting {fqsn} tsdb granularity scan..')
# loop through and try to find highest granularity
for tfstr in tf_in_1s.values():
try:
log.info(f'querying for {tfstr}@{fqsn}')
params.set('timeframe', tfstr)
result = await client.query(params)
break
except purerpc.grpclib.exceptions.UnknownError:
# XXX: this is already logged by the container and
# thus shows up through `marketstored` logs relay.
# log.warning(f'{tfstr}@{fqsn} not found')
continue
else:
return {}
else:
result = await client.query(params)
# TODO: it turns out column access on recarrays is actually slower:
# https://jakevdp.github.io/PythonDataScienceHandbook/02.09-structured-data-numpy.html#RecordArrays:-Structured-Arrays-with-a-Twist
# it might make sense to make these structured arrays?
# Fill out a `numpy` array-results map
arrays = {}
for fqsn, data_set in result.by_symbols().items():
arrays.setdefault(fqsn, {})[
tf_in_1s.inverse[data_set.timeframe]
] = data_set.array
return arrays[fqsn][timeframe] if timeframe else arrays[fqsn]
async def delete_ts(
self,
key: str,
timeframe: Optional[Union[int, str]] = None,
) -> bool:
client = self.client
syms = await client.list_symbols()
print(syms)
# if key not in syms:
# raise KeyError(f'`{fqsn}` table key not found?')
return await client.destroy(tbk=key)
async def write_ohlcv(
self,
fqsn: str,
ohlcv: np.ndarray,
append_and_duplicate: bool = True,
limit: int = int(800e3),
) -> None:
# build mkts schema compat array for writing
mkts_dt = np.dtype(_ohlcv_dt)
mkts_array = np.zeros(
len(ohlcv),
dtype=mkts_dt,
)
# copy from shm array (yes it's this easy):
# https://numpy.org/doc/stable/user/basics.rec.html#assignment-from-other-structured-arrays
mkts_array[:] = ohlcv[[
'time',
'open',
'high',
'low',
'close',
'volume',
]]
m, r = divmod(len(mkts_array), limit)
for i in range(m, 1):
to_push = mkts_array[i-1:i*limit]
# write to db
resp = await self.client.write(
to_push,
tbk=f'{fqsn}/1Sec/OHLCV',
# NOTE: will will append duplicates
# for the same timestamp-index.
# TODO: pre deduplicate?
isvariablelength=append_and_duplicate,
)
log.info(
f'Wrote {mkts_array.size} datums to tsdb\n'
)
for resp in resp.responses:
err = resp.error
if err:
raise MarketStoreError(err)
if r:
to_push = mkts_array[m*limit:]
# write to db
resp = await self.client.write(
to_push,
tbk=f'{fqsn}/1Sec/OHLCV',
# NOTE: will will append duplicates
# for the same timestamp-index.
# TODO: pre deduplicate?
isvariablelength=append_and_duplicate,
)
log.info(
f'Wrote {mkts_array.size} datums to tsdb\n'
)
for resp in resp.responses:
err = resp.error
if err:
raise MarketStoreError(err)
# XXX: currently the only way to do this is through the CLI:
# sudo ./marketstore connect --dir ~/.config/piker/data
# >> \show mnq.globex.20220617.ib/1Sec/OHLCV 2022-05-15
# and this seems to block and use up mem..
# >> \trim mnq.globex.20220617.ib/1Sec/OHLCV 2022-05-15
# relevant source code for this is here:
# https://github.com/alpacahq/marketstore/blob/master/cmd/connect/session/trim.go#L14
# def delete_range(self, start_dt, end_dt) -> None:
# ...
@acm
async def open_storage_client(
fqsn: str,
period: Optional[Union[int, str]] = None, # in seconds
) -> tuple[Storage, dict[str, np.ndarray]]:
'''
Load a series by key and deliver in ``numpy`` struct array format.
'''
async with (
# eventually a storage backend endpoint
get_client() as client,
):
# slap on our wrapper api
yield Storage(client)
async def tsdb_history_update(
fqsn: Optional[str] = None,
) -> list[str]:
# TODO: real-time dedicated task for ensuring
# history consistency between the tsdb, shm and real-time feed..
# update sequence design notes:
# - load existing highest frequency data from mkts
# * how do we want to offer this to the UI?
# - lazy loading?
# - try to load it all and expect graphics caching/diffing
# to hide extra bits that aren't in view?
# - compute the diff between latest data from broker and shm
# * use sql api in mkts to determine where the backend should
# start querying for data?
# * append any diff with new shm length
# * determine missing (gapped) history by scanning
# * how far back do we look?
# - begin rt update ingest and aggregation
# * could start by always writing ticks to mkts instead of
# worrying about a shm queue for now.
# * we have a short list of shm queues worth groking:
# - https://github.com/pikers/piker/issues/107
# * the original data feed arch blurb:
# - https://github.com/pikers/piker/issues/98
#
profiler = pg.debug.Profiler(
disabled=False, # not pg_profile_enabled(),
delayed=False,
)
async with (
open_storage_client(fqsn) as storage,
maybe_open_feed(
[fqsn],
start_stream=False,
) as (feed, stream),
):
profiler(f'opened feed for {fqsn}')
to_append = feed.shm.array
to_prepend = None
if fqsn:
symbol = feed.symbols.get(fqsn)
if symbol:
fqsn = symbol.front_fqsn()
# diff db history with shm and only write the missing portions
ohlcv = feed.shm.array
# TODO: use pg profiler
tsdb_arrays = await storage.read_ohlcv(fqsn)
# hist diffing
if tsdb_arrays:
for secs in (1, 60):
ts = tsdb_arrays.get(secs)
if ts is not None and len(ts):
# these aren't currently used but can be referenced from
# within the embedded ipython shell below.
to_append = ohlcv[ohlcv['time'] > ts['Epoch'][-1]]
to_prepend = ohlcv[ohlcv['time'] < ts['Epoch'][0]]
profiler('Finished db arrays diffs')
syms = await storage.client.list_symbols()
log.info(f'Existing tsdb symbol set:\n{pformat(syms)}')
profiler(f'listed symbols {syms}')
# TODO: ask if user wants to write history for detected
# available shm buffers?
from tractor.trionics import ipython_embed
await ipython_embed()
# for array in [to_append, to_prepend]:
# if array is None:
# continue
# log.info(
# f'Writing datums {array.size} -> to tsdb from shm\n'
# )
# await storage.write_ohlcv(fqsn, array)
# profiler('Finished db writes')
async def ingest_quote_stream(
symbols: list[str],
brokername: str,
tries: int = 1,
loglevel: str = None,
) -> None:
'''
Ingest a broker quote stream into a ``marketstore`` tsdb.
'''
async with (
maybe_open_feed(brokername, symbols, loglevel=loglevel) as feed,
get_client() as ms_client,
):
async for quotes in feed.stream:
log.info(quotes)
for symbol, quote in quotes.items():
for tick in quote.get('ticks', ()):
ticktype = tick.get('type', 'n/a')
# techtonic tick write
array = quote_to_marketstore_structarray({
'IsTrade': 1 if ticktype == 'trade' else 0,
'IsBid': 1 if ticktype in ('bid', 'bsize') else 0,
'Price': tick.get('price'),
'Size': tick.get('size')
}, last_fill=quote.get('broker_ts', None))
await ms_client.write(array, _tick_tbk)
# LEGACY WRITE LOOP (using old tick dt)
# quote_cache = {
# 'size': 0,
# 'tick': 0
# }
# async for quotes in qstream:
# log.info(quotes)
# for symbol, quote in quotes.items():
# # remap tick strs to ints
# quote['tick'] = _tick_map[quote.get('tick', 'Equal')]
# # check for volume update (i.e. did trades happen
# # since last quote)
# new_vol = quote.get('volume', None)
# if new_vol is None:
# log.debug(f"No fills for {symbol}")
# if new_vol == quote_cache.get('volume'):
# # should never happen due to field diffing
# # on sender side
# log.error(
# f"{symbol}: got same volume as last quote?")
# quote_cache.update(quote)
# a = quote_to_marketstore_structarray(
# quote,
# # TODO: check this closer to the broker query api
# last_fill=quote.get('fill_time', '')
# )
# await ms_client.write(symbol, a)
async def stream_quotes(
symbols: list[str],
host: str = 'localhost',
port: int = 5993,
diff_cached: bool = True,
loglevel: str = None,
) -> None:
'''
Open a symbol stream from a running instance of marketstore and
log to console.
'''
# XXX: required to propagate ``tractor`` loglevel to piker logging
get_console_log(loglevel or tractor.current_actor().loglevel)
tbks: dict[str, str] = {sym: f"{sym}/*/*" for sym in symbols}
async with open_websocket_url(f'ws://{host}:{port}/ws') as ws:
# send subs topics to server
resp = await ws.send_message(
msgpack.dumps({'streams': list(tbks.values())})
)
log.info(resp)
async def recv() -> dict[str, Any]:
return msgpack.loads((await ws.get_message()), encoding='utf-8')
streams = (await recv())['streams']
log.info(f"Subscribed to {streams}")
_cache = {}
while True:
msg = await recv()
# unpack symbol and quote data
# key is in format ``<SYMBOL>/<TIMEFRAME>/<ID>``
symbol = msg['key'].split('/')[0]
data = msg['data']
# calc time stamp(s)
s, ns = data.pop('Epoch'), data.pop('Nanoseconds')
ts = s * 10**9 + ns
data['broker_fill_time_ns'] = ts
quote = {}
for k, v in data.items():
if isnan(v):
continue
quote[k.lower()] = v
quote['symbol'] = symbol
quotes = {}
if diff_cached:
last = _cache.setdefault(symbol, {})
new = set(quote.items()) - set(last.items())
if new:
log.info(f"New quote {quote['symbol']}:\n{new}")
# only ship diff updates and other required fields
payload = {k: quote[k] for k, v in new}
payload['symbol'] = symbol
# if there was volume likely the last size of
# shares traded is useful info and it's possible
# that the set difference from above will disregard
# a "size" value since the same # of shares were traded
size = quote.get('size')
volume = quote.get('volume')
if size and volume:
new_volume_since_last = max(
volume - last.get('volume', 0), 0)
log.warning(
f"NEW VOLUME {symbol}:{new_volume_since_last}")
payload['size'] = size
payload['last'] = quote.get('last')
# XXX: we append to a list for the options case where the
# subscription topic (key) is the same for all
# expiries even though this is uncessary for the
# stock case (different topic [i.e. symbol] for each
# quote).
quotes.setdefault(symbol, []).append(payload)
# update cache
_cache[symbol].update(quote)
else:
quotes = {
symbol: [{key.lower(): val for key, val in quote.items()}]}
if quotes:
yield quotes