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scikit-learn
scikit-learn is a widely-used Python module for classic machine learning. It is built on top of SciPy.
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New Operator
Describe the operator
Why is this operator necessary? What does it accomplish?
This is a frequently used operator in tensorflow/keras
Can this operator be constructed using existing onnx operators?
If so, why not add it as a function?
I don't know.
Is this operator used by any model currently? Which one?
Are you willing to contribute it?
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I noticed our release version anchor links in the changelog don't actually reference a specific released version. If I go to the changelog and click on the 2021.12.0 link, I'm redirected to https://docs.dask.org/en/stable/changelog.html#id1 when, naively, I would have expected this link to look like https://docs.dask.org/en/stable/changelog.html#2021.12.0 (or something similar). As you move down
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From issue #1302, it appears autosklearn is a bit unstable when run many times in the same script, i.e. in a for loop.
for i in range(400):
automodel = AutoSklearn(full_resources)
automodel.fit(x, y)We currently have no test for this and it would be good to see if we can reproduce the same connection refused error.
- With Featuretools 1.0.0 we add a dataframe to an EntitySet with the following:
es = ft.EntitySet('new_es')
es.add_dataframe(dataframe=orders_df,
dataframe_name='orders',
index='order_id',
time_index='order_date')
Improvement
- However, you could also change the EntitySet setter to add it with this approach:
es = ft.Ent
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The extension templates (here: https://github.com/alan-turing-institute/sktime/tree/main/extension_templates) should be extended with a preamble that treats soft dependencies.
The challenge is to keep it very brief, and to make clear that adding soft dependencies is only necessary for the case of extending sktime itself. If the template is used in a project/package that has sktime as a depe
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Interpret
Yes
The current History class has some limitations: (ver 0.10.0)
- Currently the history is saved as JSON, as a result, those recorded values are limited to simple numbers and strings. Other objects can not be saved in history files directly.
- Saving as JSON takes lots of time and space because numbers are stored in decimal. It's getting worse when the training epoch is increasing.
- In some
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When running TabularPredictor.fit(), I encounter a BrokenPipeError for some reason.
What is causing this?
Could it be due to OOM error?
Fitting model: XGBoost ...
-34.1179 = Validation root_mean_squared_error score
10.58s = Training runtime
0.03s = Validation runtime
Fitting model: NeuralNetMXNet ...
-34.2849 = Validation root_mean_squared_error score
43.63s =
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Can we have an example of REST API calls in the documentation?
Examples with CURL, HTTPie or another client and the results would be better for newbies.
Thanks again for your good work.
Created by David Cournapeau
Released January 05, 2010
Latest release about 2 months ago
- Repository
- scikit-learn/scikit-learn
- Website
- scikit-learn.org
- Wikipedia
- Wikipedia

