Ejemplo n.º 1
0
    def test_compare_order_metrics(self):
        sim_root = self.config.sim_root + self.sim_st.date().isoformat(
        ) + "/" + self.sim_st.time().isoformat() + "/"
        all_sims = DataLoader().load_sim_data(sim_root)
        all_sim_limit_orders = list(
            map(lambda sim: DataSplitter.get_limit_orders(sim[0].compute()),
                all_sims))
        all_sim_market_orders = list(
            map(lambda sim: DataSplitter.get_market_orders(sim[0].compute()),
                all_sims))
        all_sim_trades = list(map(lambda sim: sim[1].compute(), all_sims))
        all_sim_cancels = list(map(lambda sim: sim[2].compute(), all_sims))

        feed_df = DataLoader().load_feed(
            self.config.real_root, self.sim_st,
            self.sim_st + timedelta(seconds=self.config.simulation_window),
            self.config.product)
        real_orders = DataSplitter.get_orders(feed_df)
        real_limit_orders = DataSplitter.get_limit_orders(real_orders)
        real_market_orders = DataSplitter.get_market_orders(real_orders)
        real_trades = DataSplitter.get_trades(feed_df)
        real_trades['size'] = pd.to_numeric(real_trades['remaining_size'])
        real_cancels = DataSplitter.get_cancellations(feed_df)
        real_cancels['size'] = pd.to_numeric(real_cancels['remaining_size'])

        print("Order Buy/Sell limit metrics")
        Evaluation.compare_order_metrics(real_limit_orders,
                                         all_sim_limit_orders)
        print("Order Buy/Sell market metrics")
        Evaluation.compare_order_metrics(real_market_orders,
                                         all_sim_market_orders)
        print("Cancel metrics")
        Evaluation.compare_order_metrics(real_cancels, all_sim_cancels)
        print("Trade metrics")
        Evaluation.compare_metrics(real_trades, all_sim_trades)
Ejemplo n.º 2
0
    def load_split_data(real_root, start_time, end_time, product):
        feed_df = DataLoader().load_feed(real_root, start_time, end_time,
                                         product)
        feed_df = DataSplitter.get_product(product, feed_df)

        orders_df = DataSplitter.get_orders(feed_df)
        trades_df = DataSplitter.get_trades(feed_df)
        cancels_df = DataSplitter.get_cancellations(feed_df)

        return orders_df, trades_df, cancels_df
Ejemplo n.º 3
0
    def test_get_orders_per_minute(self):
        product = "LTC-USD"
        root = "/Users/jamesprince/project-data/data/consolidated-feed/"

        st = datetime.datetime(2018, 5, 17, 0, 0, 0)
        et = datetime.datetime(2018, 5, 17, 23, 59, 59)

        feed_df = DataLoader.load_feed(root + product + "/", st, et, product)

        orders = DataSplitter.get_orders(feed_df)
        limit_orders = DataSplitter.get_limit_orders(orders)

        print(
            str(len(limit_orders)) + " total limit orders per day for " +
            product)
        print(
            str(len(limit_orders) / (24 * 60)) +
            " limit orders per minute (on average) for " + product)
Ejemplo n.º 4
0
    def test_orders_per_minute_windowed(self):
        product = "LTC-USD"
        root = "/Users/jamesprince/project-data/data/consolidated-feed/"

        st = datetime.datetime(2018, 5, 17, 0, 0, 0)
        et = datetime.datetime(2018, 5, 17, 23, 59, 59)

        feed_df = DataLoader.load_feed(root + product + "/", st, et, product)

        orders = DataSplitter.get_orders(feed_df)
        limit_orders = DataSplitter.get_limit_orders(orders)
        market_orders = DataSplitter.get_market_orders(orders)

        trades = DataSplitter.get_trades(feed_df)
        cancels = DataSplitter.get_cancellations(feed_df)

        print("Total limit orders: " + str(len(limit_orders)))
        print("Total market orders: " + str(len(market_orders)))
        print("Total trades: " + str(len(trades)))
        print("Total cancels: " + str(len(cancels)))

        # total_vol = trades['remaining_size'].sum()
        # print("Total traded volume: " + str(total_vol))

        window_minutes = 60
        step_minutes = 5

        times = []
        num_limit_orders = []
        num_market_orders = []
        num_trades = []
        num_cancels = []

        traded_vols = []

        for i in range(0, int((24 * 60) / step_minutes - 1)):
            window_st = st + datetime.timedelta(seconds=i * step_minutes * 60)
            window_et = window_st + datetime.timedelta(seconds=window_minutes *
                                                       60)

            limit_orders_this_window = DataSplitter.get_between(
                limit_orders, window_st, window_et)
            market_orders_this_window = DataSplitter.get_between(
                market_orders, window_st, window_et)
            trades_this_window = DataSplitter.get_between(
                trades, window_st, window_et)
            cancels_this_window = DataSplitter.get_between(
                cancels, window_st, window_et)

            times.append(window_st)
            num_limit_orders.append(len(limit_orders_this_window))
            num_market_orders.append(len(market_orders_this_window))
            num_trades.append(len(trades_this_window))
            num_cancels.append(len(cancels_this_window))

            # vol_this_window = trades_this_window['remaining_size'].sum()
            # traded_vols.append(vol_this_window)

        Statistics.plot_metric_daily_comparison(times, num_limit_orders,
                                                num_cancels, "LTC-USD", st,
                                                step_minutes, window_minutes,
                                                "Limit Orders", "Cancels")

        Statistics.plot_metric_daily(times, num_limit_orders, "LTC-USD", st,
                                     step_minutes, window_minutes,
                                     "Limit Orders")
        Statistics.plot_metric_daily(times, num_market_orders, "LTC-USD", st,
                                     step_minutes, window_minutes,
                                     "Market Orders")
        Statistics.plot_metric_daily(times, num_trades, "LTC-USD", st,
                                     step_minutes, window_minutes, "Trades")
        Statistics.plot_metric_daily(times, num_cancels, "LTC-USD", st,
                                     step_minutes, window_minutes, "Cancels")
        Statistics.plot_metric_daily(times, traded_vols, "LTC-USD", st,
                                     step_minutes, window_minutes,
                                     "Traded Volume")