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    Acess previous weights

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    • M
      magenta.kabuto @magenta.kabuto last edited by

      Hey @support,
      can you maybe help?
      Is there a way to download or access weights like its done for data? (which is updated for each time step)
      Thank you.
      Regards

      support 1 Reply Last reply Reply Quote 0
      • support
        support @magenta.kabuto last edited by

        @magenta-kabuto Hi, I am not sure I understand you correctly, maybe you can use the stateful version of the backtester as we described here:

        https://quantiacs.com/documentation/en/reference/evaluation.html#stateful-multi-pass-backtesting

        which will preserve in memory previous state.

        M 2 Replies Last reply Reply Quote 0
        • M
          magenta.kabuto @support last edited by

          @support thx for your reply.
          I also saw some discussion related to a similar topic in the general discussion.
          I will try to explain what I mean, if it doesnt make sense just ignore it and if I get something wrong, pls let me know.
          The point i am making is lets imagine the evaluation period starts on 01.06.2024 and my Deep Learning model meets the criteria for evaluation.
          Now since 01.06.2024 is the first day, the model will predict for this day and assign the weights for assets traded on 01.06.2024, one day before, where it is trained.
          Now to my understanding, the model is retrained everyday for the single-pass submission of the DL-Model, which therefore will have different weights (model weights, not allocation weights) for the next day training (01.06.2024) and will predict one step ahead, the allocations for 02.06.2024, and so on.
          So my question is, that under this framework I do not have access to the previous weights, right ? (For 01.06.2024 model training, I do not know what allocation weights I assigned on 31.05.2024)(I dont know whether with the stateful model I can have access to lets say up to 60 days of previous allocations)
          The weights assigned however, are saved somewhere with quantiacs ,as these allocation were made in the past but are not accessible to me ,lets say on 03.06.2024.
          SO if I want to reduce slippage, so that I on 03.06.2024 want to change allocations only if the predictions are larger since the beginning of the evaluation, how can I do that.
          I hope it makes sense what I am trying to say.
          Regards

          V 1 Reply Last reply Reply Quote 0
          • M
            magenta.kabuto @support last edited by

            Hi @support,
            just wanted to thank for the suggestion of the stateful backtester, as this solves the issue.
            I incorporated the DL model into the stateful backtester, which seems to work (backtesting right-now).
            And the get_lower slippage function in the ML- templates is subject to forward looking, overfitting the holding period.
            Regards

            1 Reply Last reply Reply Quote 0
            • V
              Vyacheslav_B @magenta.kabuto last edited by Vyacheslav_B

              @magenta-kabuto Hello. Use the following example.
              Note that the backtest parameters are set for daily prediction of values.
              The prediction function is designed to return a value for one day. Later, I will show how to create a single-pass version.

              import xarray as xr
              import qnt.data as qndata
              import qnt.backtester as qnbt
              import qnt.ta as qnta
              import qnt.stats as qns
              import qnt.graph as qngraph
              import qnt.output as qnout
              import numpy as np
              import pandas as pd
              import torch
              from torch import nn, optim
              import random
              
              asset_name_all = ['NAS:AAPL', 'NAS:GOOGL']
              lookback_period = 155
              train_period = 100
              
              
              class LSTM(nn.Module):
                  """
                  Class to define our LSTM network.
                  """
              
                  def __init__(self, input_dim=3, hidden_layers=64):
                      super(LSTM, self).__init__()
                      self.hidden_layers = hidden_layers
                      self.lstm1 = nn.LSTMCell(input_dim, self.hidden_layers)
                      self.lstm2 = nn.LSTMCell(self.hidden_layers, self.hidden_layers)
                      self.linear = nn.Linear(self.hidden_layers, 1)
              
                  def forward(self, y):
                      outputs = []
                      n_samples = y.size(0)
                      h_t = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                      c_t = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                      h_t2 = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                      c_t2 = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
              
                      for time_step in range(y.size(1)):
                          x_t = y[:, time_step, :]  # Ensure x_t is [batch, input_dim]
              
                          h_t, c_t = self.lstm1(x_t, (h_t, c_t))
                          h_t2, c_t2 = self.lstm2(h_t, (h_t2, c_t2))
                          output = self.linear(h_t2)
                          outputs.append(output.unsqueeze(1))
              
                      outputs = torch.cat(outputs, dim=1).squeeze(-1)
                      return outputs
              
              
              def get_model():
                  def set_seed(seed_value=42):
                      """Set seed for reproducibility."""
                      random.seed(seed_value)
                      np.random.seed(seed_value)
                      torch.manual_seed(seed_value)
                      torch.cuda.manual_seed(seed_value)
                      torch.cuda.manual_seed_all(seed_value)  # if you are using multi-GPU.
                      torch.backends.cudnn.deterministic = True
                      torch.backends.cudnn.benchmark = False
              
                  set_seed(42)
                  model = LSTM(input_dim=3)
                  return model
              
              
              def get_features(data):
                  close_price = data.sel(field="close").ffill('time').bfill('time').fillna(1)
                  open_price = data.sel(field="open").ffill('time').bfill('time').fillna(1)
                  high_price = data.sel(field="high").ffill('time').bfill('time').fillna(1)
                  log_close = np.log(close_price)
                  log_open = np.log(open_price)
                  features = xr.concat([log_close, log_open, high_price], "feature")
                  return features
              
              
              def get_target_classes(data):
                  price_current = data.sel(field='open')
                  price_future = qnta.shift(price_current, -1)
              
                  class_positive = 1  # prices goes up
                  class_negative = 0  # price goes down
              
                  target_price_up = xr.where(price_future > price_current, class_positive, class_negative)
                  return target_price_up
              
              
              def load_data(period):
                  return qndata.stocks.load_ndx_data(tail=period, assets=asset_name_all)
              
              
              def train_model(data):
                  features_all = get_features(data)
                  target_all = get_target_classes(data)
                  models = dict()
              
                  for asset_name in asset_name_all:
                      model = get_model()
                      target_cur = target_all.sel(asset=asset_name).dropna('time', 'any')
                      features_cur = features_all.sel(asset=asset_name).dropna('time', 'any')
                      target_for_learn_df, feature_for_learn_df = xr.align(target_cur, features_cur, join='inner')
                      criterion = nn.MSELoss()
                      optimiser = optim.LBFGS(model.parameters(), lr=0.08)
                      epochs = 1
                      for i in range(epochs):
                          def closure():
                              optimiser.zero_grad()
                              feature_data = feature_for_learn_df.transpose('time', 'feature').values
                              in_ = torch.tensor(feature_data, dtype=torch.float32).unsqueeze(0)
                              out = model(in_)
                              target = torch.zeros(1, len(target_for_learn_df.values))
                              target[0, :] = torch.tensor(np.array(target_for_learn_df.values))
                              loss = criterion(out, target)
                              loss.backward()
                              return loss
              
                          optimiser.step(closure)
                      models[asset_name] = model
                  return models
              
              
              def predict(models, data, state):
                  last_time = data.time.values[-1]
                  data_last = data.sel(time=slice(last_time, None)) 
                  
                  weights = xr.zeros_like(data_last.sel(field='close'))
                  for asset_name in asset_name_all:
                      features_all = get_features(data_last)
                      features_cur = features_all.sel(asset=asset_name).dropna('time', 'any')
                      if len(features_cur.time) < 1:
                          continue
                      feature_data = features_cur.transpose('time', 'feature').values
                      in_ = torch.tensor(feature_data, dtype=torch.float32).unsqueeze(0)
                      out = models[asset_name](in_)
                      prediction = out.detach()[0]
                      weights.loc[dict(asset=asset_name, time=features_cur.time.values)] = prediction
                      
                      
                  weights = weights * data_last.sel(field="is_liquid")
                  
                  # state may be null, so define a default value
                  if state is None:
                      default = xr.zeros_like(data_last.sel(field='close')).isel(time=-1)
                      state = {
                          "previus_weights": default,
                      }
                      
                  previus_weights = state['previus_weights']
                  
                  
                  # align the arrays to prevent problems in case the asset list changes
                  previus_weights, weights = xr.align(previus_weights, weights, join='right') 
                  
              
                  weights_avg = (previus_weights + weights) / 2
                  
                  
                  next_state = {
                      "previus_weights": weights_avg.isel(time=-1),
                  }
                  
              #     print(last_time)
              #     print("previus_weights")
              #     print(previus_weights)
              #     print(weights)
              #     print("weights_avg")
              #     print(weights_avg.isel(time=-1))
              
                  return weights_avg, next_state
              
              
              weights = qnbt.backtest_ml(
                  load_data=load_data,
                  train=train_model,
                  predict=predict,
                  train_period=train_period,
                  retrain_interval=360,
                  retrain_interval_after_submit=1,
                  predict_each_day=True,
                  competition_type='stocks_nasdaq100',
                  lookback_period=lookback_period,
                  start_date='2006-01-01',
                  build_plots=True
              )
              

              I recommend not using state at all, but rather using the approach I mentioned above.
              Because it's faster.
              If you need to use a single-pass version, it's better to load more data and calculate the weight values for previous days, then combine them. You will have calculated weights for the previous days.

              M M 4 Replies Last reply Reply Quote 0
              • M
                machesterdragon @Vyacheslav_B last edited by

                @vyacheslav_b Hi. I would like to ask how to switch from ml_backtest to single backtest to submit? And will this move lead to forward looking risks?

                If so, is there no way to satisfy submission without exceeding time while eliminating forward looking? Looking forward to your answers and support. Thank you.

                1 Reply Last reply Reply Quote 0
                • M
                  magenta.kabuto @Vyacheslav_B last edited by

                  Hi @vyacheslav_b ,
                  thank you very much for the solution.
                  I did not know that the ML_backtester is capable of handling two outputs (weights and state) but I will from now on use it.
                  Regards

                  1 Reply Last reply Reply Quote 0
                  • M
                    magenta.kabuto @Vyacheslav_B last edited by

                    @vyacheslav_b the problem with not using states as I understand is the following: lets say the model estimated in t (single pass) gives an estimate for NAS:AAPL = 0.04 (weight allocation). So thats the position assigned to the stock in t for t+1.
                    In t+1 the model is reestimated but with the information of NAS:AAPL in t and assigns weights 0.03 for t+1 and 0.035 for t+2 in t+1. When I do not use states, and apply get_lower_slippage function , I will have weight allocation 0.035 for t+2 in t+1 whereas with the states I will have 0.04 for t+2 in t+1 and I will not have impact of the transaction costs.
                    Thank you.
                    Regards

                    1 Reply Last reply Reply Quote 0
                    • M
                      machesterdragon @Vyacheslav_B last edited by

                      @vyacheslav_b I tried your way but when prechecking there was an error: some dates are missed in the portfolio_history and the sharpness was very low.
                      Screenshot 2024-05-09 101653.png

                      I went to precheck result html file and this is the error result and sharpe is nan
                      Screenshot 2024-05-09 104520.png

                      We look forward to receiving your support. Thank you
                      @support @Vyacheslav_B

                      V 1 Reply Last reply Reply Quote 0
                      • V
                        Vyacheslav_B @machesterdragon last edited by Vyacheslav_B

                        @machesterdragon Hello.

                        If you use a state and a function that returns the prediction for one day, you will not get correct results with precheck.

                        Theoretically, you can specify the number of partitions as all available days. or you can return all predictions

                        I have not checked how the precheck works.

                        If it works in parallel, you will not see the correct result even more so.

                        State in strategy limits you. I recommend not using it.

                        Here is an example of a version for one pass; I couldn't test it because my submission did not calculate even one day.

                        init.ipynb

                        ! pip install torch==2.2.1
                        

                        strategy.ipynb

                        import gzip
                        import pickle
                        
                        from qnt.data import get_env
                        from qnt.log import log_err, log_info
                        
                        
                        def state_write(state, path=None):
                            if path is None:
                                path = get_env("OUT_STATE_PATH", "state.out.pickle.gz")
                            try:
                                with gzip.open(path, 'wb') as gz:
                                    pickle.dump(state, gz)
                                log_info("State saved: " + str(state))
                            except Exception as e:
                                log_err(f"Error saving state: {e}")
                        
                        
                        def state_read(path=None):
                            if path is None:
                                path = get_env("OUT_STATE_PATH", "state.out.pickle.gz")
                            try:
                                with gzip.open(path, 'rb') as gz:
                                    state = pickle.load(gz)
                                log_info("State loaded.")
                                return state
                            except Exception as e:
                                log_err(f"Can't load state: {e}")
                                return None
                        
                        
                        state = state_read()
                        print(state)
                        
                        
                        # separate cell
                        
                        def print_stats(data, weights):
                            stats = qns.calc_stat(data, weights)
                            display(stats.to_pandas().tail())
                            performance = stats.to_pandas()["equity"]
                            qngraph.make_plot_filled(performance.index, performance, name="PnL (Equity)", type="log")
                        
                        
                        data_train = load_data(train_period)
                        models = train_model(data_train)
                        
                        data_predict = load_data(lookback_period)
                        
                        last_time = data_predict.time.values[-1]
                        
                        if last_time < np.datetime64('2006-01-02'):
                            print("The first state should be None")
                            state_write(None)
                            state = state_read()
                            print(state)
                        
                        weights_predict, state_new = predict(models, data_predict, state)
                        
                        print_stats(data_predict, weights_predict)
                        state_write(state_new)
                        print(state_new)
                        qnout.write(weights_predict)  # To participate in the competition, save this code in a separate cell.
                        
                        

                        But I hope it will work correctly.

                        Do not expect any responses from me during this week.

                        M 1 Reply Last reply Reply Quote 0
                        • M
                          machesterdragon @Vyacheslav_B last edited by machesterdragon

                          @vyacheslav_b said in Acess previous weights:

                          If you use a state and a function that returns the prediction for one day, you will not get correct results with precheck.
                          Theoretically, you can specify the number of partitions as all available days. or you can return all predictions
                          I have not checked how the precheck works.
                          If it works in parallel, you will not see the correct result even more so.
                          State in strategy limits you. I recommend not using it.

                          Thank you so much @Vyacheslav_B.
                          I just tried applying the single pass you suggested but the results were nan. Looking forward to your help when you have time. thank you very much
                          Screenshot 2024-05-09 221907.png

                          Screenshot 2024-05-09 222002.png

                          Screenshot 2024-05-09 222009.png

                          V 1 Reply Last reply Reply Quote 0
                          • V
                            Vyacheslav_B @machesterdragon last edited by

                            @machesterdragon
                            That's how it should be. This code is needed so that submissions are processed faster when sent to the contest. The backtest system will calculate the weights for each day. The function I provided calculates weights for only one day.

                            illustrious.felice 1 Reply Last reply Reply Quote 0
                            • illustrious.felice
                              illustrious.felice @Vyacheslav_B last edited by illustrious.felice

                              @vyacheslav_b Hello, I was trying the code you gave and realized that using state for train ml_backtest only works when the get feature function is a feature like ohlc or log of ohlc (open, high, low, close).

                              I added some other features (eg: trend = qnta.roc(qnta.lwma(data.sel(field='close'), 40), 1),...) and noticed that after passing ml_backtest, every The indexes are all nan. Looking forward to your help. Thank you.

                              @Vyacheslav_B

                              V 1 Reply Last reply Reply Quote 1
                              • V
                                Vyacheslav_B @illustrious.felice last edited by

                                @illustrious-felice Hello.

                                Show me an example of the code.

                                I don't quite understand what you are trying to do.

                                Maybe you just don't have enough data in the functions to get the value.

                                Please note that in the lines I intentionally reduce the data size to 1 day to predict only the last day.

                                last_time = data.time.values[-1]
                                data_last = data.sel(time=slice(last_time, None))
                                

                                Calculate your indicators before this code, and then slice the values.

                                illustrious.felice 1 Reply Last reply Reply Quote 0
                                • illustrious.felice
                                  illustrious.felice @Vyacheslav_B last edited by illustrious.felice

                                  @vyacheslav_b Thank you for your response
                                  Here is the code I used from your example. I added some other features (eg: trend = qnta.roc(qnta.lwma(data.sel(field='close'), 40), 1),...) and noticed that after passing ml_backtest, every indexes are all nan. Pnl is a straight line. I have tried changing many other features but the result is still the same, all indicators are nan

                                  import xarray as xr
                                  import qnt.data as qndata
                                  import qnt.backtester as qnbt
                                  import qnt.ta as qnta
                                  import qnt.stats as qns
                                  import qnt.graph as qngraph
                                  import qnt.output as qnout
                                  import numpy as np
                                  import pandas as pd
                                  import torch
                                  from torch import nn, optim
                                  import random
                                  
                                  asset_name_all = ['NAS:AAPL', 'NAS:GOOGL']
                                  lookback_period = 155
                                  train_period = 100
                                  
                                  
                                  class LSTM(nn.Module):
                                      """
                                      Class to define our LSTM network.
                                      """
                                  
                                      def __init__(self, input_dim=3, hidden_layers=64):
                                          super(LSTM, self).__init__()
                                          self.hidden_layers = hidden_layers
                                          self.lstm1 = nn.LSTMCell(input_dim, self.hidden_layers)
                                          self.lstm2 = nn.LSTMCell(self.hidden_layers, self.hidden_layers)
                                          self.linear = nn.Linear(self.hidden_layers, 1)
                                  
                                      def forward(self, y):
                                          outputs = []
                                          n_samples = y.size(0)
                                          h_t = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                                          c_t = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                                          h_t2 = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                                          c_t2 = torch.zeros(n_samples, self.hidden_layers, dtype=torch.float32)
                                  
                                          for time_step in range(y.size(1)):
                                              x_t = y[:, time_step, :]  # Ensure x_t is [batch, input_dim]
                                  
                                              h_t, c_t = self.lstm1(x_t, (h_t, c_t))
                                              h_t2, c_t2 = self.lstm2(h_t, (h_t2, c_t2))
                                              output = self.linear(h_t2)
                                              outputs.append(output.unsqueeze(1))
                                  
                                          outputs = torch.cat(outputs, dim=1).squeeze(-1)
                                          return outputs
                                  
                                  
                                  def get_model():
                                      def set_seed(seed_value=42):
                                          """Set seed for reproducibility."""
                                          random.seed(seed_value)
                                          np.random.seed(seed_value)
                                          torch.manual_seed(seed_value)
                                          torch.cuda.manual_seed(seed_value)
                                          torch.cuda.manual_seed_all(seed_value)  # if you are using multi-GPU.
                                          torch.backends.cudnn.deterministic = True
                                          torch.backends.cudnn.benchmark = False
                                  
                                      set_seed(42)
                                      model = LSTM(input_dim=3)
                                      return model
                                  
                                  
                                  def get_features(data):
                                      close_price = data.sel(field="close").ffill('time').bfill('time').fillna(1)
                                      open_price = data.sel(field="open").ffill('time').bfill('time').fillna(1)
                                      high_price = data.sel(field="high").ffill('time').bfill('time').fillna(1)
                                      log_close = np.log(close_price)
                                      log_open = np.log(open_price)
                                      trend = qnta.roc(qnta.lwma(close_price ), 40), 1)
                                      features = xr.concat([log_close, log_open, high_price, trend], "feature")
                                      return features
                                  
                                  
                                  def get_target_classes(data):
                                      price_current = data.sel(field='open')
                                      price_future = qnta.shift(price_current, -1)
                                  
                                      class_positive = 1  # prices goes up
                                      class_negative = 0  # price goes down
                                  
                                      target_price_up = xr.where(price_future > price_current, class_positive, class_negative)
                                      return target_price_up
                                  
                                  
                                  def load_data(period):
                                      return qndata.stocks.load_ndx_data(tail=period, assets=asset_name_all)
                                  
                                  
                                  def train_model(data):
                                      features_all = get_features(data)
                                      target_all = get_target_classes(data)
                                      models = dict()
                                  
                                      for asset_name in asset_name_all:
                                          model = get_model()
                                          target_cur = target_all.sel(asset=asset_name).dropna('time', 'any')
                                          features_cur = features_all.sel(asset=asset_name).dropna('time', 'any')
                                          target_for_learn_df, feature_for_learn_df = xr.align(target_cur, features_cur, join='inner')
                                          criterion = nn.MSELoss()
                                          optimiser = optim.LBFGS(model.parameters(), lr=0.08)
                                          epochs = 1
                                          for i in range(epochs):
                                              def closure():
                                                  optimiser.zero_grad()
                                                  feature_data = feature_for_learn_df.transpose('time', 'feature').values
                                                  in_ = torch.tensor(feature_data, dtype=torch.float32).unsqueeze(0)
                                                  out = model(in_)
                                                  target = torch.zeros(1, len(target_for_learn_df.values))
                                                  target[0, :] = torch.tensor(np.array(target_for_learn_df.values))
                                                  loss = criterion(out, target)
                                                  loss.backward()
                                                  return loss
                                  
                                              optimiser.step(closure)
                                          models[asset_name] = model
                                      return models
                                  
                                  
                                  def predict(models, data, state):
                                      last_time = data.time.values[-1]
                                      data_last = data.sel(time=slice(last_time, None)) 
                                      
                                      weights = xr.zeros_like(data_last.sel(field='close'))
                                      for asset_name in asset_name_all:
                                          features_all = get_features(data_last)
                                          features_cur = features_all.sel(asset=asset_name).dropna('time', 'any')
                                          if len(features_cur.time) < 1:
                                              continue
                                          feature_data = features_cur.transpose('time', 'feature').values
                                          in_ = torch.tensor(feature_data, dtype=torch.float32).unsqueeze(0)
                                          out = models[asset_name](in_)
                                          prediction = out.detach()[0]
                                          weights.loc[dict(asset=asset_name, time=features_cur.time.values)] = prediction
                                          
                                          
                                      weights = weights * data_last.sel(field="is_liquid")
                                      
                                      # state may be null, so define a default value
                                      if state is None:
                                          default = xr.zeros_like(data_last.sel(field='close')).isel(time=-1)
                                          state = {
                                              "previus_weights": default,
                                          }
                                          
                                      previus_weights = state['previus_weights']
                                      
                                      
                                      # align the arrays to prevent problems in case the asset list changes
                                      previus_weights, weights = xr.align(previus_weights, weights, join='right') 
                                      
                                  
                                      weights_avg = (previus_weights + weights) / 2
                                      
                                      
                                      next_state = {
                                          "previus_weights": weights_avg.isel(time=-1),
                                      }
                                      
                                  #     print(last_time)
                                  #     print("previus_weights")
                                  #     print(previus_weights)
                                  #     print(weights)
                                  #     print("weights_avg")
                                  #     print(weights_avg.isel(time=-1))
                                  
                                      return weights_avg, next_state
                                  
                                  
                                  weights = qnbt.backtest_ml(
                                      load_data=load_data,
                                      train=train_model,
                                      predict=predict,
                                      train_period=train_period,
                                      retrain_interval=360,
                                      retrain_interval_after_submit=1,
                                      predict_each_day=True,
                                      competition_type='stocks_nasdaq100',
                                      lookback_period=lookback_period,
                                      start_date='2006-01-01',
                                      build_plots=True
                                  )
                                  

                                  Screenshot 2024-05-16 085531.png
                                  Screenshot 2024-05-16 085555.png
                                  Screenshot 2024-05-16 085716.png

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                                    magenta.kabuto @illustrious.felice last edited by

                                    hello again to all,
                                    I hope everyone is fine.
                                    I again came across a question, which should have occurred to me earlier, namely when we use a stateful machine learning strategy for submission, how can we pass on the states without using the ml_backtester, assuming the notebook is rerun at each point in time.
                                    Thank you.
                                    Regards

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                                      Vyacheslav_B last edited by

                                      @illustrious-felice Hi,

                                      https://github.com/quantiacs/strategy-ml_lstm_state/blob/master/strategy.ipynb

                                      This repository provides an example of using state, calculating complex indicators, dynamically selecting stocks for trading, and implementing basic risk management measures, such as normalizing and reducing large positions. It also includes recommendations for submitting strategies to the competition.

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                                        magenta.kabuto @Vyacheslav_B last edited by

                                        Hi @vyacheslav_b,
                                        I just quickly checked the template and it seems to be very helpful.
                                        Thx a lot for the update!
                                        Regards

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                                        • illustrious.felice
                                          illustrious.felice @Vyacheslav_B last edited by

                                          This post is deleted!
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                                            machesterdragon @magenta.kabuto last edited by

                                            @Vyacheslav_B Hi, I just tried both ml backtest and single backtest. This is the ml_backtest result
                                            Screenshot 2024-05-23 151636.png

                                            However, when adding the single cell backtest after ml_backtest, the result is Nan, so how can I submit the strategy according to the single backtest? Looking forward to your answer. Thank you.
                                            Screenshot 2024-05-23 151409.png

                                            @support @Vyacheslav_B

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