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Describe the issue:
During computing Channel Dependencies reshape_break_channel_dependency does following code to ensure that the number of input channels equals the number of output channels:
in_shape = op_node.auxiliary['in_shape']
out_shape = op_node.auxiliary['out_shape']
in_channel = in_shape[1]
out_channel = out_shape[1]
return in_channel != out_channel
This is correct
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May 19, 2022 - Python
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May 20, 2022 - Python
Feature Description
We want to enable the users to specify the value ranges for any argument in the blocks.
The following code example shows a typical use case.
The users can specify the number of units in a DenseBlock to be either 10 or 20.
Code Example
import auIn the CREATE DATABASE docs we have multiple entries of the ScylaDB example, so one should be removed.
Steps 🕵️♂️ 🕵️♀️
- Head over to https://github.com/mindsdb/mindsdb/blob/staging/docs/mindsdb-docs/docs/sql/create/databases.md#scylladb
- Remove one of the Scylladb examples.
Scikit-learn provides multi-class options for area under curve: https://scikit-learn.org/stable/modules/generated/sklearn.metrics.roc_auc_score.html
We should provide the most common ones, such as the OVO Macro averaging used by Auto-Gluon.
- As a user, I wish featuretools
dfswould take a string as cutoff_time aswell as a datetime object
Code Example
fm, features = ft.dfs(entityset=es,
target_dataframe_name='customers',
cutoff_time="2014-1-1 05:00",
instance_ids=[1],
cutoff_time_in_index=True)as well as
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May 22, 2022 - Jupyter Notebook
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May 3, 2022 - Jupyter Notebook
Related: awslabs/autogluon#1479
Add a scikit-learn compatible API wrapper of TabularPredictor:
- TabularClassifier
- TabularRegressor
Required functionality (may need more than listed):
- init API
- fit API
- predict API
- works in sklearn pipelines
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Jan 3, 2021 - Python
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Jan 3, 2022
We would like to forward a particular 'key' column which is part of the features to appear alongside the predictions - this is to be able to identify to which set of features a particular prediction belongs to. Here is an example of predictions output using the tensorflow.contrib.estimator.multi_class_head:
{"classes": ["0", "1", "2", "3", "4", "5", "6", "7", "8", "9"],
"scores": [0.068196
Hello everyone,
First of all, I want to take a moment to thank all contributors and people who supported this project in any way ;) you are awesome!
If you like the project and have any interest in contributing/maintaining it, you can contact me here or send me a msg privately:
- Email: nidhalbacc@gmail.com
PS: You need to be familiar with python and machine learning
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Jan 15, 2021 - Python
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May 2, 2022 - Python
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Feb 10, 2022 - Python
Contact Details [Optional]
Describe the feature you'd like
ZenML currently implements a way to detect drift using Evidently. We created a standard step that can be used to generate and access Evidently's core visualisations here: zenml/src/zenml/integrations/evidently/steps/evidently_profile.py. (Learn more about Evidently and drift d
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May 19, 2022 - Python
I trained models on Windows, then I tried to use them on Linux, however, I could not load them due to an incorrect path joining. During model loading, I got learner_path in the following format experiments_dir/model_1/100_LightGBM\\learner_fold_0.lightgbm. The last two slashes were incorrectly concatenated with the rest part of the path. In this regard, I would suggest adding something like `l
Discussed in microsoft/FLAML#543
Originally posted by scvail195 May 9, 2022
Call to resource.setrlimit(resource.RLIMIT_AS, (memory_limit, hard)) causes error
<img width="1399" alt="Screen Shot 2022-05-05 flaml crash" src="https://user-images.githubusercontent.com/90455225/167453259-0e30f323-0ae6-46ae-ab4d-2
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Oct 22, 2019 - Python
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Jun 16, 2021 - Python
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Nov 11, 2019 - Jupyter Notebook
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Apr 24, 2022 - Python
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