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    Please advise on p settings. Thanks.

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    • S
      spancham @support last edited by spancham

      @support Hi again, thanks very much for your earlier response.
      I am now using the latest Quantiacs set up based on the links & direction you provided. So that is greatly appreciated!
      I tried some of the Quantiacs sample strategies to double check that things are running properly. Things look okay so far. I'll now turn to converting the strategy I'm working on to the new format.
      I do have a question however:
      I can run strategy.py from the command prompt but when I try to run it from my local Jupyter notebook it's not finding the qnt module:

      # run from Jupyter
      %run C:\Users\sheikh\anaconda3\envs\qntdev\Scripts\strategy.py
      
      ModuleNotFoundError                       
      Traceback (most recent call last)
      ~\anaconda3\envs\qntdev\Scripts\strategy.py in <module>
            1 # Multi-Pass implementation
      ----> 2 import qnt.ta as qnta
            3 import qnt.data as qndata
            4 import qnt.backtester as qnbk
      
      ModuleNotFoundError: No module named 'qnt'
      

      I even placed the strategy.py file in the qntdev\Scripts folder.
      Would you happen to know what I can try differently to get it to run from my local Jupyter notebook?
      Thanks again.

      support 1 Reply Last reply Reply Quote 0
      • support
        support @spancham last edited by support

        @spancham

        Hello.

        I guess your jupyter uses the wrong environment.

        I am starting my jupyter this way:

        C:\Users\User> conda activate qntdev
        
        (qntdev) C:\Users\User> where jupyter
        C:\Users\User\anaconda3\Scripts\jupyter.exe
        # it means that there is no jupyter in qntdev env
        # so I have to install it
        
        (qntdev) C:\Users\User>conda install -y notebook
        ...
        
        (qntdev) C:\Users\User> where jupyter
        C:\Users\User\anaconda3\envs\qntdev\Scripts\jupyter.exe
        C:\Users\User\anaconda3\Scripts\jupyter.exe
        
        (qntdev) C:\Users\User> C:\Users\User\anaconda3\envs\qntdev\Scripts\jupyter.exe notebook
        

        When the jupyter starts, the %run is working. Ensure that you activated the 'qntdev' env and started the jupyter from this environment.

        I hope this will help.

        Regards.

        S 1 Reply Last reply Reply Quote 0
        • S
          spancham @support last edited by spancham

          Hi again @support
          I read through everything and all the examples but to be honest the new format is not straightforward to me. I was wondering if there are Quantiacs developers available that you can recommend or put me in contact with to help convert my pairs strategy from the legacy toolbox format to the new format. I do not mind paying for their services.

          Once I see how it's done using my strategy, I think I can understand how to set up my other strategies from there on.
          Thanks for your help.
          Sheikh

          support 3 Replies Last reply Reply Quote 1
          • support
            support @spancham last edited by

            @spancham Hi, sure, you can simply send a mail with details to support@quantiacs.com and we will come back to you.

            1 Reply Last reply Reply Quote 0
            • support
              support @spancham last edited by support

              @spancham No payment needed.....

              1 Reply Last reply Reply Quote 0
              • support
                support @spancham last edited by

                @spancham sure, pls write the support@quantiacs.com for details

                1 Reply Last reply Reply Quote 0
                • S
                  spancham last edited by spancham

                  This post is deleted!
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                  • support
                    support last edited by support

                    This post is deleted!
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                    • S
                      spancham last edited by

                      @support
                      Thanks very much for your help.
                      Don't worry about me posting my strategy to a public forum.
                      I would never post my "secret sauce" 🙂
                      I'm just trying to understand the new format for the platform by setting up a pairs strategy.
                      I read through your documentation which is good, but none of your examples show how to set up a pairs trading strategy. I'm sure others would benefit from a pairs trading example.

                      I have a number of questions that I hope you'll illustrate in your example to come:

                      • How do I align the two series (dropna for both) to make sure I'm using good data for both series on the same dates?
                      • When I generate a buy signal, that is when the zscore < -zthreshold, how do I make the allocation to buy Contract1 and sell Contract2.
                      • How do I keep that allocation when the backtest runs for the next day and so on until the signal changes to sell or the algo sends an exit signal?
                        Thanks again.
                        Sheikh
                      support 1 Reply Last reply Reply Quote 0
                      • support
                        support last edited by support

                        Hello.

                        Ok, if it is just an example, I reveal it.

                        You sent me this strategy:

                        import numpy as np
                        import pandas as pd
                        
                        def  mySettings():
                            settings = {}
                            settings['markets'] = ['F_CL', 'F_BC']
                            settings['beginInSample'] = '20171115'
                            settings['endInSample'] = '20210201'
                            settings['lookback'] = 84
                            settings['budget'] = 10**6
                            settings['slippage'] = 0.05
                            settings['zthreshold'] = 1.75
                            settings['p'] = np.array([0., 0.])
                            settings['count'] = 0
                            return settings
                        
                        def myTradingSystem(DATE, CLOSE, exposure, equity, settings):
                            s1 = pd.Series(CLOSE[-settings['lookback']:,0])
                            s2 = pd.Series(CLOSE[-settings['lookback']:,1])
                        
                            # Compute mean of the spread up to now
                            mvavg = np.mean(np.log(s1/s2))
                        
                            # Compute stdev of the spread up to now
                            stdev = np.std(np.log(s1/s2))
                        
                            # Compute spread
                            current_spread = np.log(CLOSE[-1,0] / CLOSE[-1,1])
                        
                            # Compute z-score
                            zscore = (current_spread - mvavg) / stdev if stdev > 0 else 0
                        
                            p = settings['p']
                        
                            if zscore >= settings['zthreshold']:
                                p = np.array([-0.5,0.5])
                                settings['p'] = p
                            elif zscore <= -settings['zthreshold']:
                                p = np.array([0.5,-0.5])
                                settings['p'] = p
                            else:
                                p = settings['p']
                        
                            return p, settings
                        
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                        • support
                          support last edited by

                          At first, I rewrote it using the multi-pass approach:

                          import numpy as np
                          import pandas as pd
                          import xarray as xr
                          
                          import qnt.data as qndata
                          import qnt.ta as qnta
                          import qnt.backtester as qnbt
                          import qnt.stats as qns
                          
                          
                          zthreshold =  1.75
                          lookback_trading_days = 84
                          markets = ['F_CL', 'F_BC']
                          
                          
                          def load_data(period):
                              return qndata.futures_load_data(assets=markets, tail=period)
                          
                          
                          def strategy(data):
                              close = data.sel(field='close', asset=markets).transpose('time', 'asset')
                              s1 = close[-lookback_trading_days:, 0]
                              s2 = close[-lookback_trading_days:, 1]
                              
                              # Compute mean of the spread up to now
                              mvavg = np.mean(np.log(s1/s2))
                              
                              # Compute stdev of the spread up to now
                              stdev = np.std(np.log(s1/s2))
                              
                              # Compute spread
                              current_spread = np.log(close[-1, 0] / close[-1, 1])
                          
                              # Compute z-score
                              zscore = (current_spread - mvavg) / stdev if stdev > 0 else 0
                              
                              if zscore >= zthreshold:
                                  p = [-0.5,0.5]
                              elif zscore <= -zthreshold:
                                  p = [0.5,-0.5]
                              else:
                                  p = [0,0] # there is no way to use variable 'p' from previous pass
                                  # So, probably, the strategy is broken (*)
                              
                              return xr.DataArray(p, dims=['asset'], coords=dict(asset=markets))
                          
                          
                          weights = qnbt.backtest(
                              competition_type= "futures",
                              load_data= load_data,
                              lookback_period= 365,
                              start_date= "2006-01-01",
                              strategy= multi_pass_strategy
                          )
                          

                          Unfortunately, the backtester does not support passing variables between iterations (*). So this conversion is not fully correct.

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                          • support
                            support last edited by

                            Next, I modified this strategy using the single-pass approach.

                            import numpy as np
                            import pandas as pd
                            import xarray as xr
                            
                            import qnt.data as qndata
                            import qnt.ta as qnta
                            import qnt.backtester as qnbt
                            import qnt.output as qnout
                            import qnt.stats as qns
                            
                            
                            zthreshold =  1.75
                            lookback_trading_days = 84
                            markets = ['F_CL', 'F_BC']
                            
                            
                            def single_pass_strategy(data):
                                close = data.sel(field='close', asset=markets).transpose('time', 'asset')
                                s1 = close.sel(asset=markets[0])
                                s2 = close.sel(asset=markets[1])
                                   
                                # Compute mean of the spread up to now
                                mvavg = np.log(s1 / s2).rolling(time=lookback_trading_days, min_periods=2).mean()
                                
                                # Compute stdev of the spread up to now
                                stdev = np.log(s1 / s2).rolling(time=lookback_trading_days, min_periods=2).std()
                                   
                                
                                # Compute spread
                                current_spread = np.log(s1/s2)
                                
                                # Compute z-score
                                zscore = xr.where(stdev > 0, (current_spread - mvavg) / stdev, 0)
                                
                                p1 = xr.where(zscore >= zthreshold, -0.5, xr.where(zscore <= -zthreshold, 0.5, np.nan))
                                p2 = xr.where(zscore >= zthreshold, 0.5, xr.where(zscore <= -zthreshold, -0.5, np.nan))
                                
                                p = xr.concat([p1, p2], pd.Index(markets, name='asset'))
                                
                                p = p.ffill('time') # (*)
                                
                                return p
                            
                            
                            data = qndata.futures_load_data(assets=markets, min_date='2005-01-01')
                            output = single_pass_strategy(data)
                            output = qnout.clean(output, data)
                            qnout.write(output)
                            stat = qns.calc_stat(data, output)
                            display(stat.to_pandas().tail())
                            
                            
                            # Or you can use the backtester to check looking forward.
                            #
                            # def load_data(period):
                            #     return qndata.futures_load_data(assets=markets, tail=period)
                            
                            # weights = qnbt.backtest(
                            #     competition_type= "futures",
                            #     load_data= load_data,
                            #     lookback_period= 2*365,
                            #     start_date= "2006-01-01",
                            #     strategy= single_pass_strategy
                            # )
                            

                            As you see, this strategy calculates the whole output series in one pass using vector operations. It calculates p, when it is possible and uses ffill to fill missed values (*).

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                            • support
                              support @spancham last edited by support

                              How do I align the two series (dropna for both) to make sure I'm using good data for both series on the same dates?

                              • When you use the backtester or data load functions, you receive one xarray.DataArray as an argument. All data is already aligned. When the data is not available for some assets on some days, you will see the NaN value there.

                              • You can use dropna or ffill

                              When I generate a buy signal, that is when the zscore < -zthreshold, how do I make the allocation to buy Contract1 and sell Contract2.

                              In the same way as it was in the previous backtester. But use xarray instead of np.array.

                              How do I keep that allocation when the backtest runs for the next day and so on until the signal changes to sell or the algo sends an exit signal?

                              There is no way to do that yet. We already created a feature request for this. Share the state between iterations

                              I wrote an example of how to bypass this in your strategy. But I understand that it is not the easiest way... Well, we will inform you when we add this feature to the new backtester.

                              Regards.

                              S 1 Reply Last reply Reply Quote 0
                              • S
                                spancham @support last edited by

                                Hi @support,
                                Fantastico! Thank you very much, you are very helpful!!
                                I'll try these out.
                                Much appreciated!

                                S 1 Reply Last reply Reply Quote 0
                                • S
                                  spancham @spancham last edited by spancham

                                  Hi @support,
                                  I seem to be getting this error:

                                  Wrong output dimensions.  ('time', 'asset') is not ('asset',)
                                  100% (1289 of 1289) |####################| Elapsed Time: 0:00:00 ETA:  00:00:00
                                  

                                  Please advise.

                                  Also, for a different strategy can you help me with the line of code that will tell me how many assets (the count) are up today:

                                  today = data.sel(field="close")
                                  yesterday = data.sel(field="close").shift(time=1)
                                  uptoday = today.isel(-1) > yesterday.isel[-1]
                                  
                                  How do I count how many are uptoday?
                                  

                                  Thanks for your help, greatly appreciated as always.

                                  support 2 Replies Last reply Reply Quote 0
                                  • support
                                    support @spancham last edited by

                                    @spancham

                                    Wrong output dimensions.

                                    I guess you see this error when you try to run the second example using qnbt.backtest

                                    There was a requirement to return 1d array from the strategy function, so you can modify the code this way:

                                    weights = qnbt.backtest(
                                        competition_type= "futures",
                                        lookback_period= 2*365,
                                        start_date= "2006-01-01",
                                        strategy= lambda d: single_pass_strategy(d).isel(time=-1)
                                    )
                                    

                                    Recently, we updated the library: added the optimizer, and slightly improved the backtest function. Now it extracts the last day automatically. So you can just update the library, run this in your env:

                                     conda install 'quantiacs-source::qnt>=0.0.228'
                                    
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                                    • support
                                      support @spancham last edited by

                                      @spancham said in Please advise on p settings. Thanks.:

                                      Also, for a different strategy can you help me with the line of code that will tell me how many assets (the count) are up today:

                                      print(len(uptoday.isel(time=-1).dropna('asset').asset))
                                      

                                      Does it suit?

                                      Regards.

                                      S 1 Reply Last reply Reply Quote 0
                                      • S
                                        spancham @support last edited by

                                        Hi @support
                                        Thank you, I'll try that.

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                                        • A
                                          albertjohn6126553 last edited by

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