def test_order_hold(self): """ Held orders act almost identically to open orders, except for the status indication. When a fill happens, the order should switch status to OPEN/FILLED as necessary """ blotter = Blotter(self.sim_params.data_frequency) # Nothing happens on held of a non-existent order blotter.hold(56) self.assertEqual(blotter.new_orders, []) open_id = blotter.order(self.asset_24, 100, MarketOrder()) open_order = blotter.open_orders[self.asset_24][0] self.assertEqual(open_order.id, open_id) blotter.hold(open_id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[self.asset_24]), 1) held_order = blotter.new_orders[0] self.assertEqual(held_order.status, ORDER_STATUS.HELD) self.assertEqual(held_order.reason, '') blotter.cancel(held_order.id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[self.asset_24]), 0) cancelled_order = blotter.new_orders[0] self.assertEqual(cancelled_order.id, held_order.id) self.assertEqual(cancelled_order.status, ORDER_STATUS.CANCELLED) for data in ([100, self.sim_params.sessions[0]], [400, self.sim_params.sessions[1]]): # Verify that incoming fills will change the order status. trade_amt = data[0] dt = data[1] order_size = 100 expected_filled = int(trade_amt * DEFAULT_EQUITY_VOLUME_SLIPPAGE_BAR_LIMIT) expected_open = order_size - expected_filled expected_status = ORDER_STATUS.OPEN if expected_open else \ ORDER_STATUS.FILLED blotter = Blotter(self.sim_params.data_frequency) open_id = blotter.order(self.asset_24, order_size, MarketOrder()) open_order = blotter.open_orders[self.asset_24][0] self.assertEqual(open_id, open_order.id) blotter.hold(open_id) held_order = blotter.new_orders[0] filled_order = None blotter.current_dt = dt bar_data = self.create_bardata(simulation_dt_func=lambda: dt, ) txns, _, _ = blotter.get_transactions(bar_data) for txn in txns: filled_order = blotter.orders[txn.order_id] self.assertEqual(filled_order.id, held_order.id) self.assertEqual(filled_order.status, expected_status) self.assertEqual(filled_order.filled, expected_filled) self.assertEqual(filled_order.open_amount, expected_open)
def test_order_rejection(self): blotter = Blotter() # Reject a nonexistent order -> no order appears in new_order, # no exceptions raised out blotter.reject(56) self.assertEqual(blotter.new_orders, []) # Basic tests of open order behavior open_order_id = blotter.order(24, 100, MarketOrder()) second_order_id = blotter.order(24, 50, MarketOrder()) self.assertEqual(len(blotter.open_orders[24]), 2) open_order = blotter.open_orders[24][0] self.assertEqual(open_order.status, ORDER_STATUS.OPEN) self.assertEqual(open_order.id, open_order_id) self.assertIn(open_order, blotter.new_orders) # Reject that order immediately (same bar, i.e. still in new_orders) blotter.reject(open_order_id) self.assertEqual(len(blotter.new_orders), 2) self.assertEqual(len(blotter.open_orders[24]), 1) still_open_order = blotter.new_orders[0] self.assertEqual(still_open_order.id, second_order_id) self.assertEqual(still_open_order.status, ORDER_STATUS.OPEN) rejected_order = blotter.new_orders[1] self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, '') # Do it again, but reject it at a later time (after tradesimulation # pulls it from new_orders) blotter = Blotter() new_open_id = blotter.order(24, 10, MarketOrder()) new_open_order = blotter.open_orders[24][0] self.assertEqual(new_open_id, new_open_order.id) # Pretend that the trade simulation did this. blotter.new_orders = [] rejection_reason = "Not enough cash on hand." blotter.reject(new_open_id, reason=rejection_reason) rejected_order = blotter.new_orders[0] self.assertEqual(rejected_order.id, new_open_id) self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, rejection_reason) # You can't reject a filled order. blotter = Blotter() # Reset for paranoia blotter.current_dt = datetime.datetime.now() filled_id = blotter.order(24, 100, MarketOrder()) aapl_trade = create_trade(24, 50.0, 400, datetime.datetime.now()) filled_order = None for txn, updated_order in blotter.process_trade(aapl_trade): filled_order = updated_order self.assertEqual(filled_order.id, filled_id) self.assertIn(filled_order, blotter.new_orders) self.assertEqual(filled_order.status, ORDER_STATUS.FILLED) self.assertNotIn(filled_order, blotter.open_orders[24]) blotter.reject(filled_id) updated_order = blotter.orders[filled_id] self.assertEqual(updated_order.status, ORDER_STATUS.FILLED)
def test_order_hold(self): """ Held orders act almost identically to open orders, except for the status indication. When a fill happens, the order should switch status to OPEN/FILLED as necessary """ blotter = Blotter(self.sim_params.data_frequency, self.env.asset_finder) # Nothing happens on held of a non-existent order blotter.hold(56) self.assertEqual(blotter.new_orders, []) asset_24 = blotter.asset_finder.retrieve_asset(24) open_id = blotter.order(asset_24, 100, MarketOrder()) open_order = blotter.open_orders[asset_24][0] self.assertEqual(open_order.id, open_id) blotter.hold(open_id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[asset_24]), 1) held_order = blotter.new_orders[0] self.assertEqual(held_order.status, ORDER_STATUS.HELD) self.assertEqual(held_order.reason, "") blotter.cancel(held_order.id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[asset_24]), 0) cancelled_order = blotter.new_orders[0] self.assertEqual(cancelled_order.id, held_order.id) self.assertEqual(cancelled_order.status, ORDER_STATUS.CANCELLED) for data in ([100, self.sim_params.trading_days[0]], [400, self.sim_params.trading_days[1]]): # Verify that incoming fills will change the order status. trade_amt = data[0] dt = data[1] order_size = 100 expected_filled = int(trade_amt * DEFAULT_VOLUME_SLIPPAGE_BAR_LIMIT) expected_open = order_size - expected_filled expected_status = ORDER_STATUS.OPEN if expected_open else ORDER_STATUS.FILLED blotter = Blotter(self.sim_params.data_frequency, self.env.asset_finder) open_id = blotter.order(blotter.asset_finder.retrieve_asset(24), order_size, MarketOrder()) open_order = blotter.open_orders[asset_24][0] self.assertEqual(open_id, open_order.id) blotter.hold(open_id) held_order = blotter.new_orders[0] filled_order = None blotter.current_dt = dt bar_data = BarData(self.data_portal, lambda: dt, self.sim_params.data_frequency) txns, _, _ = blotter.get_transactions(bar_data) for txn in txns: filled_order = blotter.orders[txn.order_id] self.assertEqual(filled_order.id, held_order.id) self.assertEqual(filled_order.status, expected_status) self.assertEqual(filled_order.filled, expected_filled) self.assertEqual(filled_order.open_amount, expected_open)
def test_order_hold(self): """ Held orders act almost identically to open orders, except for the status indication. When a fill happens, the order should switch status to OPEN/FILLED as necessary """ blotter = Blotter() # Nothing happens on held of a non-existent order blotter.hold(56) self.assertEqual(blotter.new_orders, []) open_id = blotter.order(24, 100, MarketOrder()) open_order = blotter.open_orders[24][0] self.assertEqual(open_order.id, open_id) blotter.hold(open_id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[24]), 1) held_order = blotter.new_orders[0] self.assertEqual(held_order.status, ORDER_STATUS.HELD) self.assertEqual(held_order.reason, '') blotter.cancel(held_order.id) self.assertEqual(len(blotter.new_orders), 1) self.assertEqual(len(blotter.open_orders[24]), 0) cancelled_order = blotter.new_orders[0] self.assertEqual(cancelled_order.id, held_order.id) self.assertEqual(cancelled_order.status, ORDER_STATUS.CANCELLED) for trade_amt in (100, 400): # Verify that incoming fills will change the order status. order_size = 100 expected_filled = trade_amt * 0.25 expected_open = order_size - expected_filled expected_status = ORDER_STATUS.OPEN if expected_open else \ ORDER_STATUS.FILLED blotter = Blotter() blotter.current_dt = datetime.datetime.now() open_id = blotter.order(24, order_size, MarketOrder()) open_order = blotter.open_orders[24][0] self.assertEqual(open_id, open_order.id) blotter.hold(open_id) held_order = blotter.new_orders[0] aapl_trade = create_trade(24, 50.0, trade_amt, datetime.datetime.now()) filled_order = None for txn, updated_order in blotter.process_trade(aapl_trade): filled_order = updated_order self.assertEqual(filled_order.id, held_order.id) self.assertEqual(filled_order.status, expected_status) self.assertEqual(filled_order.filled, expected_filled) self.assertEqual(filled_order.open_amount, expected_open)
def transaction_sim(self, **params): """ This is a utility method that asserts expected results for conversion of orders to transactions given a trade history""" tempdir = TempDirectory() try: trade_count = params['trade_count'] trade_interval = params['trade_interval'] order_count = params['order_count'] order_amount = params['order_amount'] order_interval = params['order_interval'] expected_txn_count = params['expected_txn_count'] expected_txn_volume = params['expected_txn_volume'] # optional parameters # --------------------- # if present, alternate between long and short sales alternate = params.get('alternate') # if present, expect transaction amounts to match orders exactly. complete_fill = params.get('complete_fill') env = TradingEnvironment() sid = 1 if trade_interval < timedelta(days=1): sim_params = factory.create_simulation_parameters( data_frequency="minute") minutes = env.market_minute_window( sim_params.first_open, int((trade_interval.total_seconds() / 60) * trade_count) + 100) price_data = np.array([10.1] * len(minutes)) assets = { sid: pd.DataFrame({ "open": price_data, "high": price_data, "low": price_data, "close": price_data, "volume": np.array([100] * len(minutes)), "dt": minutes }).set_index("dt") } write_bcolz_minute_data( env, env.days_in_range(minutes[0], minutes[-1]), tempdir.path, assets) equity_minute_reader = BcolzMinuteBarReader(tempdir.path) data_portal = DataPortal( env, equity_minute_reader=equity_minute_reader, ) else: sim_params = factory.create_simulation_parameters( data_frequency="daily") days = sim_params.trading_days assets = { 1: pd.DataFrame( { "open": [10.1] * len(days), "high": [10.1] * len(days), "low": [10.1] * len(days), "close": [10.1] * len(days), "volume": [100] * len(days), "day": [day.value for day in days] }, index=days) } path = os.path.join(tempdir.path, "testdata.bcolz") DailyBarWriterFromDataFrames(assets).write(path, days, assets) equity_daily_reader = BcolzDailyBarReader(path) data_portal = DataPortal( env, equity_daily_reader=equity_daily_reader, ) if "default_slippage" not in params or \ not params["default_slippage"]: slippage_func = FixedSlippage() else: slippage_func = None blotter = Blotter(sim_params.data_frequency, self.env.asset_finder, slippage_func) env.write_data( equities_data={ sid: { "start_date": sim_params.trading_days[0], "end_date": sim_params.trading_days[-1] } }) start_date = sim_params.first_open if alternate: alternator = -1 else: alternator = 1 tracker = PerformanceTracker(sim_params, self.env) # replicate what tradesim does by going through every minute or day # of the simulation and processing open orders each time if sim_params.data_frequency == "minute": ticks = minutes else: ticks = days transactions = [] order_list = [] order_date = start_date for tick in ticks: blotter.current_dt = tick if tick >= order_date and len(order_list) < order_count: # place an order direction = alternator**len(order_list) order_id = blotter.order( blotter.asset_finder.retrieve_asset(sid), order_amount * direction, MarketOrder()) order_list.append(blotter.orders[order_id]) order_date = order_date + order_interval # move after market orders to just after market next # market open. if order_date.hour >= 21: if order_date.minute >= 00: order_date = order_date + timedelta(days=1) order_date = order_date.replace(hour=14, minute=30) else: bar_data = BarData(data_portal, lambda: tick, sim_params.data_frequency) txns, _ = blotter.get_transactions(bar_data) for txn in txns: tracker.process_transaction(txn) transactions.append(txn) for i in range(order_count): order = order_list[i] self.assertEqual(order.sid, sid) self.assertEqual(order.amount, order_amount * alternator**i) if complete_fill: self.assertEqual(len(transactions), len(order_list)) total_volume = 0 for i in range(len(transactions)): txn = transactions[i] total_volume += txn.amount if complete_fill: order = order_list[i] self.assertEqual(order.amount, txn.amount) self.assertEqual(total_volume, expected_txn_volume) self.assertEqual(len(transactions), expected_txn_count) cumulative_pos = tracker.position_tracker.positions[sid] if total_volume == 0: self.assertIsNone(cumulative_pos) else: self.assertEqual(total_volume, cumulative_pos.amount) # the open orders should not contain sid. oo = blotter.open_orders self.assertNotIn(sid, oo, "Entry is removed when no open orders") finally: tempdir.cleanup()
def test_order_rejection(self): blotter = Blotter(self.sim_params.data_frequency, self.env.asset_finder) asset_24 = blotter.asset_finder.retrieve_asset(24) # Reject a nonexistent order -> no order appears in new_order, # no exceptions raised out blotter.reject(56) self.assertEqual(blotter.new_orders, []) # Basic tests of open order behavior open_order_id = blotter.order(asset_24, 100, MarketOrder()) second_order_id = blotter.order(asset_24, 50, MarketOrder()) self.assertEqual(len(blotter.open_orders[asset_24]), 2) open_order = blotter.open_orders[asset_24][0] self.assertEqual(open_order.status, ORDER_STATUS.OPEN) self.assertEqual(open_order.id, open_order_id) self.assertIn(open_order, blotter.new_orders) # Reject that order immediately (same bar, i.e. still in new_orders) blotter.reject(open_order_id) self.assertEqual(len(blotter.new_orders), 2) self.assertEqual(len(blotter.open_orders[asset_24]), 1) still_open_order = blotter.new_orders[0] self.assertEqual(still_open_order.id, second_order_id) self.assertEqual(still_open_order.status, ORDER_STATUS.OPEN) rejected_order = blotter.new_orders[1] self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, '') # Do it again, but reject it at a later time (after tradesimulation # pulls it from new_orders) blotter = Blotter(self.sim_params.data_frequency, self.env.asset_finder) new_open_id = blotter.order(asset_24, 10, MarketOrder()) new_open_order = blotter.open_orders[asset_24][0] self.assertEqual(new_open_id, new_open_order.id) # Pretend that the trade simulation did this. blotter.new_orders = [] rejection_reason = "Not enough cash on hand." blotter.reject(new_open_id, reason=rejection_reason) rejected_order = blotter.new_orders[0] self.assertEqual(rejected_order.id, new_open_id) self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, rejection_reason) # You can't reject a filled order. # Reset for paranoia blotter = Blotter(self.sim_params.data_frequency, self.env.asset_finder) blotter.slippage_func = FixedSlippage() filled_id = blotter.order(asset_24, 100, MarketOrder()) filled_order = None blotter.current_dt = self.sim_params.trading_days[-1] bar_data = BarData( self.data_portal, lambda: self.sim_params.trading_days[-1], self.sim_params.data_frequency, ) txns, _ = blotter.get_transactions(bar_data) for txn in txns: filled_order = blotter.orders[txn.order_id] self.assertEqual(filled_order.id, filled_id) self.assertIn(filled_order, blotter.new_orders) self.assertEqual(filled_order.status, ORDER_STATUS.FILLED) self.assertNotIn(filled_order, blotter.open_orders[asset_24]) blotter.reject(filled_id) updated_order = blotter.orders[filled_id] self.assertEqual(updated_order.status, ORDER_STATUS.FILLED)
def transaction_sim(self, **params): """This is a utility method that asserts expected results for conversion of orders to transactions given a trade history """ trade_count = params["trade_count"] trade_interval = params["trade_interval"] order_count = params["order_count"] order_amount = params["order_amount"] order_interval = params["order_interval"] expected_txn_count = params["expected_txn_count"] expected_txn_volume = params["expected_txn_volume"] # optional parameters # --------------------- # if present, alternate between long and short sales alternate = params.get("alternate") # if present, expect transaction amounts to match orders exactly. complete_fill = params.get("complete_fill") sid = 1 metadata = make_simple_equity_info([sid], self.start, self.end) with TempDirectory() as tempdir, tmp_trading_env(equities=metadata) as env: if trade_interval < timedelta(days=1): sim_params = factory.create_simulation_parameters( start=self.start, end=self.end, data_frequency="minute" ) minutes = env.market_minute_window( sim_params.first_open, int((trade_interval.total_seconds() / 60) * trade_count) + 100 ) price_data = np.array([10.1] * len(minutes)) assets = { sid: pd.DataFrame( { "open": price_data, "high": price_data, "low": price_data, "close": price_data, "volume": np.array([100] * len(minutes)), "dt": minutes, } ).set_index("dt") } write_bcolz_minute_data( env, env.days_in_range(minutes[0], minutes[-1]), tempdir.path, iteritems(assets) ) equity_minute_reader = BcolzMinuteBarReader(tempdir.path) data_portal = DataPortal( env, first_trading_day=equity_minute_reader.first_trading_day, equity_minute_reader=equity_minute_reader, ) else: sim_params = factory.create_simulation_parameters(data_frequency="daily") days = sim_params.trading_days assets = { 1: pd.DataFrame( { "open": [10.1] * len(days), "high": [10.1] * len(days), "low": [10.1] * len(days), "close": [10.1] * len(days), "volume": [100] * len(days), "day": [day.value for day in days], }, index=days, ) } path = os.path.join(tempdir.path, "testdata.bcolz") BcolzDailyBarWriter(path, days).write(assets.items()) equity_daily_reader = BcolzDailyBarReader(path) data_portal = DataPortal( env, first_trading_day=equity_daily_reader.first_trading_day, equity_daily_reader=equity_daily_reader, ) if "default_slippage" not in params or not params["default_slippage"]: slippage_func = FixedSlippage() else: slippage_func = None blotter = Blotter(sim_params.data_frequency, self.env.asset_finder, slippage_func) start_date = sim_params.first_open if alternate: alternator = -1 else: alternator = 1 tracker = PerformanceTracker(sim_params, self.env) # replicate what tradesim does by going through every minute or day # of the simulation and processing open orders each time if sim_params.data_frequency == "minute": ticks = minutes else: ticks = days transactions = [] order_list = [] order_date = start_date for tick in ticks: blotter.current_dt = tick if tick >= order_date and len(order_list) < order_count: # place an order direction = alternator ** len(order_list) order_id = blotter.order( blotter.asset_finder.retrieve_asset(sid), order_amount * direction, MarketOrder() ) order_list.append(blotter.orders[order_id]) order_date = order_date + order_interval # move after market orders to just after market next # market open. if order_date.hour >= 21: if order_date.minute >= 00: order_date = order_date + timedelta(days=1) order_date = order_date.replace(hour=14, minute=30) else: bar_data = BarData(data_portal, lambda: tick, sim_params.data_frequency) txns, _, closed_orders = blotter.get_transactions(bar_data) for txn in txns: tracker.process_transaction(txn) transactions.append(txn) blotter.prune_orders(closed_orders) for i in range(order_count): order = order_list[i] self.assertEqual(order.sid, sid) self.assertEqual(order.amount, order_amount * alternator ** i) if complete_fill: self.assertEqual(len(transactions), len(order_list)) total_volume = 0 for i in range(len(transactions)): txn = transactions[i] total_volume += txn.amount if complete_fill: order = order_list[i] self.assertEqual(order.amount, txn.amount) self.assertEqual(total_volume, expected_txn_volume) self.assertEqual(len(transactions), expected_txn_count) cumulative_pos = tracker.position_tracker.positions[sid] if total_volume == 0: self.assertIsNone(cumulative_pos) else: self.assertEqual(total_volume, cumulative_pos.amount) # the open orders should not contain sid. oo = blotter.open_orders self.assertNotIn(sid, oo, "Entry is removed when no open orders")
def test_order_rejection(self): blotter = Blotter(self.sim_params.data_frequency, self.asset_finder) # Reject a nonexistent order -> no order appears in new_order, # no exceptions raised out blotter.reject(56) self.assertEqual(blotter.new_orders, []) # Basic tests of open order behavior open_order_id = blotter.order(self.asset_24, 100, MarketOrder()) second_order_id = blotter.order(self.asset_24, 50, MarketOrder()) self.assertEqual(len(blotter.open_orders[self.asset_24]), 2) open_order = blotter.open_orders[self.asset_24][0] self.assertEqual(open_order.status, ORDER_STATUS.OPEN) self.assertEqual(open_order.id, open_order_id) self.assertIn(open_order, blotter.new_orders) # Reject that order immediately (same bar, i.e. still in new_orders) blotter.reject(open_order_id) self.assertEqual(len(blotter.new_orders), 2) self.assertEqual(len(blotter.open_orders[self.asset_24]), 1) still_open_order = blotter.new_orders[0] self.assertEqual(still_open_order.id, second_order_id) self.assertEqual(still_open_order.status, ORDER_STATUS.OPEN) rejected_order = blotter.new_orders[1] self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, '') # Do it again, but reject it at a later time (after tradesimulation # pulls it from new_orders) blotter = Blotter(self.sim_params.data_frequency, self.asset_finder) new_open_id = blotter.order(self.asset_24, 10, MarketOrder()) new_open_order = blotter.open_orders[self.asset_24][0] self.assertEqual(new_open_id, new_open_order.id) # Pretend that the trade simulation did this. blotter.new_orders = [] rejection_reason = "Not enough cash on hand." blotter.reject(new_open_id, reason=rejection_reason) rejected_order = blotter.new_orders[0] self.assertEqual(rejected_order.id, new_open_id) self.assertEqual(rejected_order.status, ORDER_STATUS.REJECTED) self.assertEqual(rejected_order.reason, rejection_reason) # You can't reject a filled order. # Reset for paranoia blotter = Blotter(self.sim_params.data_frequency, self.asset_finder) blotter.slippage_func = FixedSlippage() filled_id = blotter.order(self.asset_24, 100, MarketOrder()) filled_order = None blotter.current_dt = self.sim_params.sessions[-1] bar_data = self.create_bardata( simulation_dt_func=lambda: self.sim_params.sessions[-1], ) txns, _, closed_orders = blotter.get_transactions(bar_data) for txn in txns: filled_order = blotter.orders[txn.order_id] blotter.prune_orders(closed_orders) self.assertEqual(filled_order.id, filled_id) self.assertIn(filled_order, blotter.new_orders) self.assertEqual(filled_order.status, ORDER_STATUS.FILLED) self.assertNotIn(filled_order, blotter.open_orders[self.asset_24]) blotter.reject(filled_id) updated_order = blotter.orders[filled_id] self.assertEqual(updated_order.status, ORDER_STATUS.FILLED)
def transaction_sim(self, **params): """This is a utility method that asserts expected results for conversion of orders to transactions given a trade history """ trade_count = params['trade_count'] trade_interval = params['trade_interval'] order_count = params['order_count'] order_amount = params['order_amount'] order_interval = params['order_interval'] expected_txn_count = params['expected_txn_count'] expected_txn_volume = params['expected_txn_volume'] # optional parameters # --------------------- # if present, alternate between long and short sales alternate = params.get('alternate') # if present, expect transaction amounts to match orders exactly. complete_fill = params.get('complete_fill') asset1 = self.asset_finder.retrieve_asset(1) metadata = make_simple_equity_info([asset1.sid], self.start, self.end) with TempDirectory() as tempdir, \ tmp_trading_env(equities=metadata, load=self.make_load_function()) as env: if trade_interval < timedelta(days=1): sim_params = factory.create_simulation_parameters( start=self.start, end=self.end, data_frequency="minute") minutes = self.trading_calendar.minutes_window( sim_params.first_open, int((trade_interval.total_seconds() / 60) * trade_count) + 100) price_data = np.array([10.1] * len(minutes)) assets = { asset1.sid: pd.DataFrame({ "open": price_data, "high": price_data, "low": price_data, "close": price_data, "volume": np.array([100] * len(minutes)), "dt": minutes }).set_index("dt") } write_bcolz_minute_data( self.trading_calendar, self.trading_calendar.sessions_in_range( self.trading_calendar.minute_to_session_label( minutes[0]), self.trading_calendar.minute_to_session_label( minutes[-1])), tempdir.path, iteritems(assets), ) equity_minute_reader = BcolzMinuteBarReader(tempdir.path) data_portal = DataPortal( env.asset_finder, self.trading_calendar, first_trading_day=equity_minute_reader.first_trading_day, equity_minute_reader=equity_minute_reader, ) else: sim_params = factory.create_simulation_parameters( data_frequency="daily") days = sim_params.sessions assets = { 1: pd.DataFrame( { "open": [10.1] * len(days), "high": [10.1] * len(days), "low": [10.1] * len(days), "close": [10.1] * len(days), "volume": [100] * len(days), "day": [day.value for day in days] }, index=days) } path = os.path.join(tempdir.path, "testdata.bcolz") BcolzDailyBarWriter(path, self.trading_calendar, days[0], days[-1]).write(assets.items()) equity_daily_reader = BcolzDailyBarReader(path) data_portal = DataPortal( env.asset_finder, self.trading_calendar, first_trading_day=equity_daily_reader.first_trading_day, equity_daily_reader=equity_daily_reader, ) if "default_slippage" not in params or \ not params["default_slippage"]: slippage_func = FixedBasisPointsSlippage() else: slippage_func = None blotter = Blotter(sim_params.data_frequency, slippage_func) start_date = sim_params.first_open if alternate: alternator = -1 else: alternator = 1 tracker = MetricsTracker( trading_calendar=self.trading_calendar, first_session=sim_params.start_session, last_session=sim_params.end_session, capital_base=sim_params.capital_base, emission_rate=sim_params.emission_rate, data_frequency=sim_params.data_frequency, asset_finder=self.asset_finder, metrics=load_metrics_set('none'), ) # replicate what tradesim does by going through every minute or day # of the simulation and processing open orders each time if sim_params.data_frequency == "minute": ticks = minutes else: ticks = days transactions = [] order_list = [] order_date = start_date for tick in ticks: blotter.current_dt = tick if tick >= order_date and len(order_list) < order_count: # place an order direction = alternator**len(order_list) order_id = blotter.order( asset1, order_amount * direction, MarketOrder(), ) order_list.append(blotter.orders[order_id]) order_date = order_date + order_interval # move after market orders to just after market next # market open. if order_date.hour >= 21: if order_date.minute >= 00: order_date = order_date + timedelta(days=1) order_date = order_date.replace(hour=14, minute=30) else: bar_data = BarData( data_portal=data_portal, simulation_dt_func=lambda: tick, data_frequency=sim_params.data_frequency, trading_calendar=self.trading_calendar, restrictions=NoRestrictions(), ) txns, _, closed_orders = blotter.get_transactions(bar_data) for txn in txns: tracker.process_transaction(txn) transactions.append(txn) blotter.prune_orders(closed_orders) for i in range(order_count): order = order_list[i] self.assertEqual(order.asset, asset1) self.assertEqual(order.amount, order_amount * alternator**i) if complete_fill: self.assertEqual(len(transactions), len(order_list)) total_volume = 0 for i in range(len(transactions)): txn = transactions[i] total_volume += txn.amount if complete_fill: order = order_list[i] self.assertEqual(order.amount, txn.amount) self.assertEqual(total_volume, expected_txn_volume) self.assertEqual(len(transactions), expected_txn_count) if total_volume == 0: self.assertRaises(KeyError, lambda: tracker.positions[asset1]) else: cumulative_pos = tracker.positions[asset1] self.assertEqual(total_volume, cumulative_pos.amount) # the open orders should not contain the asset. oo = blotter.open_orders self.assertNotIn(asset1, oo, "Entry is removed when no open orders")