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Interactive learning

By : LunaGao
Date : October 18 2020, 06:10 AM
I think the issue was by ths following , You can do this but it will be a very intensive task if you plan on retraining the model on the whole data again and again if it is on a daily basis. Instead of retraining the model completely, you should try transfer learning. Save your model and then load it back and train it on the data corrected by the user. The model will be able to correct it mistakes without losing what it has already learned. The problem with transfer learning is that after some time, it will get fine tuned to the new data that you will have to retrain it from scratch. But this is far better then retraining the model every day.
You should have proper metrics in place to check if your models accuracy starts dropping in the old data after several iterations of "transfer learning". If the accuracy drops, just retrain the model on all of the data till date and you will be good to go.
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Interactive Tutorial for Learning Python

By : 52mobile
Date : March 29 2020, 07:55 AM
I hope this helps . You could give this a shot http://www.learnpython.org/

What are some interactive resources for learning django?

By : jiunnweng wong
Date : March 29 2020, 07:55 AM
I wish did fix the issue. Django is a Web framework, so yes, it is entirely focused on Web development. Ideally you should have spent some time learning Python first, yes. But no, it doesn't need to be web development experience. I would recommend starting with the official tutorial, and then move on to the 'Getting Started with Django' video tutorials.

Interactive SVG - Learning Resources?

By : user3736576
Date : March 29 2020, 07:55 AM
I think the issue was by ths following , I'm looking for a similar solution, and the two relevant questions here are Scripting SVG and Displaying vector graphics in a browser.
Neither of them give much hope, though, as each browser has different vector capabilities. Dojox.gfx appears to be a cross browser javascript graphics library which may do everything you need, but it won't necesarily do it in SVG. Canvas is gaining a lot of support and interest.

Learning Interactive 3D in Flash

By : prashanth
Date : March 29 2020, 07:55 AM
seems to work fine Good Points to start are:
Sandy3D (Demos) PaperVision (Demo / Demos) Alternativa (Demos)

Chatbot: Trying to understand Interactive Learning

By : vikkiimari
Date : March 29 2020, 07:55 AM
Hope this helps after you finished online training, type 0 to export dialogue and then enter filename (eg. story01.md). Now open trained story (story01.md) and copy/paste to data/stories.md or wherever you stored your stories.md training file.
Can you provide your train_online.py file maybe?
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