A great article with lots of novel ideas. I liked the way you are integrating python for MT5. This article is a fundemntal reference to demonstare data manipulation, charting and modelling in python.
A great article with lots of novel ideas. I liked the way you are integrating python for MT5. This article is a fundemntal reference to demonstare data manipulation, charting and modelling in python.
Thank you so much for your kind words, I'm happy you enjoyed reading the article. And I look forward to sharing more novel insights with you in the future.
Awesome thank you , Well explained and clear instructions , Going to see if I can follow your comprehensive instruction, thanks for the ideas .
Great stuff was able to connect to demo acct (only a subset of symbols there expect that is the demo account ) tried one that was there AUDHKD but stuck in disagreement problem line 204 ,
ValueError: at least one array or dtype is required
tried with NZDCNH it seems to work through some iterations but fails in the sklern\multiclass on line 167 with a datahandling
debug tells me valueerror in line 204 one array or dtype is required - in may be I need to check my demo environment as I only created it today :)
on the default Boom1000 Index the problem is line 100 with date and time. raise KeyError(key)
KeyError: 'time' . Possibly an issue as my timezone is New Zealand
Out of time today for testing , will try again tomorrow.Awesome thank you , Well explained and clear instructions , Going to see if I can follow your comprehensive instruction, thanks for the ideas .
Great stuff was able to connect to demo acct (only a subset of symbols there expect that is the demo account ) tried one that was there AUDHKD but stuck in disagreement problem line 204 ,
ValueError: at least one array or dtype is required
tried with NZDCNH it seems to work through some iterations but fails in the sklern\multiclass on line 167 with a datahandling
debug tells me valueerror in line 204 one array or dtype is required - in may be I need to check my demo environment as I only created it today :)
on the default Boom1000 Index the problem is line 100 with date and time. raise KeyError(key)
KeyError: 'time' . Possibly an issue as my timezone is New Zealand
Out of time today for testing , will try again tomorrow.Hi Linfo, I hope this helps:
1) The 'time' column was the name my broker gave to a UNIX timestamp that marks each of the rows in the data I fetched. Maybe your broker uses a different name instead, like 'date' is common. Check the dataframe that you get after calling copy_rates_range. The fact that you're getting a "KeyError" thrown, might mean either the dataframe is totally empty or there's no column named 'time' it probably has a different name on your side.
2) Validate the output from copy_rates_range,from what you've described I think that's where things may be falling apart. Check the column names of the data that's being returned to you after making the call.
If these steps don't work let me know.
Thank you for the prompt feedback and advice .
Updating here as it may be useful to others . My issues ;
1) I set up a new demo account to test this and not all currencies where available to This is resolved by opening the acct and ensuring the currencies you want are active (gold colored)
2)There was no Boom1000 Index (data) provided to me by the server , it was in the list but I not against my account (ensure you change the default to be something you have access to and that can give a result) .
3) For me the interpret results would not show in std python , I could only get working with anaconda installed (It would have been easier if I had installed that first).
After this hiccup the documentation was clear and helpful,I am still digesting the results so far so have not yet moved on to the mql5 side
Thank you again for publishing and I look forward to actually understanding the process better . Regards Neil
Thank you for the prompt feedback and advice .
Updating here as it may be useful to others . My issues ;
1) I set up a new demo account to test this and not all currencies where available to This is resolved by opening the acct and ensuring the currencies you want are active (gold colored)
2)There was no Boom1000 Index (data) provided to me by the server , it was in the list but I not against my account (ensure you change the default to be something you have access to and that can give a result) .
3) For me the interpret results would not show in std python , I could only get working with anaconda installed (It would have been easier if I had installed that first).
After this hiccup the documentation was clear and helpful,I am still digesting the results so far so have not yet moved on to the mql5 side
Thank you again for publishing and I look forward to actually understanding the process better . Regards Neil
I'm glad to see that you're making material progress Neil.
Surprisingly: the most important phrase for understanding the material is at the very end of the article:
текущие реализации моделей стеклянного ящика основаны на деревьях решений

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