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|
%global _empty_manifest_terminate_build 0
Name: python-Amplo
Version: 0.17.0
Release: 1
Summary: Fully automated end to end machine learning pipeline
License: GNU General Public License v3 (GPLv3)
URL: https://github.com/nielsuit227/AutoML
Source0: https://mirrors.nju.edu.cn/pypi/web/packages/4a/40/f178bed9ff3276ccb073ca265efd1672b8901bcb6a16dedd489f8ebf1e84/Amplo-0.17.0.tar.gz
BuildArch: noarch
Requires: python3-azure-core
Requires: python3-azure-storage-blob
Requires: python3-catboost
Requires: python3-cleanlab
Requires: python3-colorlog
Requires: python3-joblib
Requires: python3-lightgbm
Requires: python3-numba
Requires: python3-numpy
Requires: python3-optuna
Requires: python3-pandas
Requires: python3-polars
Requires: python3-pyarrow
Requires: python3-pytest
Requires: python3-pywavelets
Requires: python3-requests
Requires: python3-scikit-learn
Requires: python3-scipy
Requires: python3-setuptools
Requires: python3-shap
Requires: python3-tqdm
Requires: python3-xgboost
Requires: python3-flake8
Requires: python3-mypy
Requires: python3-types-chardet
Requires: python3-types-colorama
Requires: python3-types-decorator
Requires: python3-types-psycopg2
Requires: python3-types-Pygments
Requires: python3-types-PyMySQL
Requires: python3-types-python-dateutil
Requires: python3-types-pytz
Requires: python3-types-redis
Requires: python3-types-requests
Requires: python3-types-setuptools
Requires: python3-types-six
Requires: python3-types-urllib3
%description
# Amplo - AutoML (for Machine Data)
[](https://pypi.python.org/pypi/amplo)
[](https://opensource.org/licenses/MIT)



Welcome to the Automated Machine Learning package `amplo`. Amplo's AutoML is designed specifically for machine data and
works very well with tabular time series data (especially unbalanced classification!).
Though this is a standalone Python package, Amplo's AutoML is also available on Amplo's Smart Maintenance Platform.
With a graphical user interface and various data connectors, it is the ideal place for service engineers to get started
on Predictive.
Amplo's AutoML Pipeline contains the entire Machine Learning development cycle, including exploratory data analysis,
data cleaning, feature extraction, feature selection, model selection, hyperparameter optimization, stacking,
version control, production-ready models and documentation. It comes with additional tools such as interval analysers,
drift detectors, data quality checks, etc.
## 1. Downloading Amplo
The easiest way is to install our Python package through [PyPi](https://pypi.org/project/amplo/):
```bash
pip install amplo
```
## 2. Usage
Usage is very simple with Amplo's AutoML Pipeline.
```python
from amplo import Pipeline
from sklearn.datasets import make_classification
from sklearn.datasets import make_regression
x, y = make_classification()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict_proba(x)
x, y = make_regression()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict(x)
```
## 3. Amplo AutoML Features
### Interval Analyser
```python
from amplo.automl import IntervalAnalyser
```
Interval Analyser for Log file classification. When log files have to be classified, and there is not enough
data for time series methods (such as LSTMs, ROCKET or Weasel, Boss, etc.), one needs to fall back to classical
machine learning models which work better with lower samples. This raises the problem of which samples to
classify. You shouldn't just simply classify on every sample and accumulate, that may greatly disrupt
classification performance. Therefore, we introduce this interval analyser. By using an approximate K-Nearest
Neighbors algorithm, one can estimate the strength of correlation for every sample inside a log. Using this
allows for better interval selection for classical machine learning models.
To use this interval analyser, make sure that your logs are located in a folder of their class, with one parent folder with all classes, e.g.:
```text
+-- Parent Folder
| +-- Class_1
| +-- Log_1.*
| +-- Log_2.*
| +-- Class_2
| +-- Log_3.*
```
### Data Processing
```python
from amplo.automl import DataProcessor
```
Automated Data Cleaning:
- Infers & converts data types (integer, floats, categorical, datetime)
- Reformats column names
- Removes duplicates columns and rows
- Handles missing values by:
- Removing columns
- Removing rows
- Interpolating
- Filling with zero's
- Removes outliers using:
- Clipping
- Z-score
- Quantiles
- Removes constant columns
### Feature Processing
```python
from amplo.automl import FeatureProcessor
```
Automatically extracts and selects features. Removes Co-Linear Features.
Included Feature Extraction algorithms:
- Multiplicative Features
- Dividing Features
- Additive Features
- Subtractive Features
- Trigonometric Features
- K-Means Features
- Lagged Features
- Differencing Features
- Inverse Features
- Datetime Features
Included Feature Selection algorithms:
- Random Forest Feature Importance (Threshold and Increment)
- Predictive Power Score
### Sequencing
```python
from amplo.automl import Sequencer
```
For time series regression problems, it is often useful to include multiple previous samples instead of just the latest.
This class sequences the data, based on which time steps you want included in the in- and output.
This is also very useful when working with tensors, as a tensor can be returned which directly fits into a Recurrent Neural Network.
### Modelling
```python
from amplo.automl import Modeller
```
Runs various regression or classification models.
Includes:
- Scikit's Linear Model
- Scikit's Random Forest
- Scikit's Bagging
- Scikit's GradientBoosting
- Scikit's HistGradientBoosting
- DMLC's XGBoost
- Catboost's Catboost
- Microsoft's LightGBM
- Stacking Models
### Grid Search
```python
from amplo.grid_search import OptunaGridSearch
```
Contains three hyperparameter optimizers with extended predefined model parameters:
- Optuna's Tree-Parzen-Estimator
%package -n python3-Amplo
Summary: Fully automated end to end machine learning pipeline
Provides: python-Amplo
BuildRequires: python3-devel
BuildRequires: python3-setuptools
BuildRequires: python3-pip
%description -n python3-Amplo
# Amplo - AutoML (for Machine Data)
[](https://pypi.python.org/pypi/amplo)
[](https://opensource.org/licenses/MIT)



Welcome to the Automated Machine Learning package `amplo`. Amplo's AutoML is designed specifically for machine data and
works very well with tabular time series data (especially unbalanced classification!).
Though this is a standalone Python package, Amplo's AutoML is also available on Amplo's Smart Maintenance Platform.
With a graphical user interface and various data connectors, it is the ideal place for service engineers to get started
on Predictive.
Amplo's AutoML Pipeline contains the entire Machine Learning development cycle, including exploratory data analysis,
data cleaning, feature extraction, feature selection, model selection, hyperparameter optimization, stacking,
version control, production-ready models and documentation. It comes with additional tools such as interval analysers,
drift detectors, data quality checks, etc.
## 1. Downloading Amplo
The easiest way is to install our Python package through [PyPi](https://pypi.org/project/amplo/):
```bash
pip install amplo
```
## 2. Usage
Usage is very simple with Amplo's AutoML Pipeline.
```python
from amplo import Pipeline
from sklearn.datasets import make_classification
from sklearn.datasets import make_regression
x, y = make_classification()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict_proba(x)
x, y = make_regression()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict(x)
```
## 3. Amplo AutoML Features
### Interval Analyser
```python
from amplo.automl import IntervalAnalyser
```
Interval Analyser for Log file classification. When log files have to be classified, and there is not enough
data for time series methods (such as LSTMs, ROCKET or Weasel, Boss, etc.), one needs to fall back to classical
machine learning models which work better with lower samples. This raises the problem of which samples to
classify. You shouldn't just simply classify on every sample and accumulate, that may greatly disrupt
classification performance. Therefore, we introduce this interval analyser. By using an approximate K-Nearest
Neighbors algorithm, one can estimate the strength of correlation for every sample inside a log. Using this
allows for better interval selection for classical machine learning models.
To use this interval analyser, make sure that your logs are located in a folder of their class, with one parent folder with all classes, e.g.:
```text
+-- Parent Folder
| +-- Class_1
| +-- Log_1.*
| +-- Log_2.*
| +-- Class_2
| +-- Log_3.*
```
### Data Processing
```python
from amplo.automl import DataProcessor
```
Automated Data Cleaning:
- Infers & converts data types (integer, floats, categorical, datetime)
- Reformats column names
- Removes duplicates columns and rows
- Handles missing values by:
- Removing columns
- Removing rows
- Interpolating
- Filling with zero's
- Removes outliers using:
- Clipping
- Z-score
- Quantiles
- Removes constant columns
### Feature Processing
```python
from amplo.automl import FeatureProcessor
```
Automatically extracts and selects features. Removes Co-Linear Features.
Included Feature Extraction algorithms:
- Multiplicative Features
- Dividing Features
- Additive Features
- Subtractive Features
- Trigonometric Features
- K-Means Features
- Lagged Features
- Differencing Features
- Inverse Features
- Datetime Features
Included Feature Selection algorithms:
- Random Forest Feature Importance (Threshold and Increment)
- Predictive Power Score
### Sequencing
```python
from amplo.automl import Sequencer
```
For time series regression problems, it is often useful to include multiple previous samples instead of just the latest.
This class sequences the data, based on which time steps you want included in the in- and output.
This is also very useful when working with tensors, as a tensor can be returned which directly fits into a Recurrent Neural Network.
### Modelling
```python
from amplo.automl import Modeller
```
Runs various regression or classification models.
Includes:
- Scikit's Linear Model
- Scikit's Random Forest
- Scikit's Bagging
- Scikit's GradientBoosting
- Scikit's HistGradientBoosting
- DMLC's XGBoost
- Catboost's Catboost
- Microsoft's LightGBM
- Stacking Models
### Grid Search
```python
from amplo.grid_search import OptunaGridSearch
```
Contains three hyperparameter optimizers with extended predefined model parameters:
- Optuna's Tree-Parzen-Estimator
%package help
Summary: Development documents and examples for Amplo
Provides: python3-Amplo-doc
%description help
# Amplo - AutoML (for Machine Data)
[](https://pypi.python.org/pypi/amplo)
[](https://opensource.org/licenses/MIT)



Welcome to the Automated Machine Learning package `amplo`. Amplo's AutoML is designed specifically for machine data and
works very well with tabular time series data (especially unbalanced classification!).
Though this is a standalone Python package, Amplo's AutoML is also available on Amplo's Smart Maintenance Platform.
With a graphical user interface and various data connectors, it is the ideal place for service engineers to get started
on Predictive.
Amplo's AutoML Pipeline contains the entire Machine Learning development cycle, including exploratory data analysis,
data cleaning, feature extraction, feature selection, model selection, hyperparameter optimization, stacking,
version control, production-ready models and documentation. It comes with additional tools such as interval analysers,
drift detectors, data quality checks, etc.
## 1. Downloading Amplo
The easiest way is to install our Python package through [PyPi](https://pypi.org/project/amplo/):
```bash
pip install amplo
```
## 2. Usage
Usage is very simple with Amplo's AutoML Pipeline.
```python
from amplo import Pipeline
from sklearn.datasets import make_classification
from sklearn.datasets import make_regression
x, y = make_classification()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict_proba(x)
x, y = make_regression()
pipeline = Pipeline()
pipeline.fit(x, y)
yp = pipeline.predict(x)
```
## 3. Amplo AutoML Features
### Interval Analyser
```python
from amplo.automl import IntervalAnalyser
```
Interval Analyser for Log file classification. When log files have to be classified, and there is not enough
data for time series methods (such as LSTMs, ROCKET or Weasel, Boss, etc.), one needs to fall back to classical
machine learning models which work better with lower samples. This raises the problem of which samples to
classify. You shouldn't just simply classify on every sample and accumulate, that may greatly disrupt
classification performance. Therefore, we introduce this interval analyser. By using an approximate K-Nearest
Neighbors algorithm, one can estimate the strength of correlation for every sample inside a log. Using this
allows for better interval selection for classical machine learning models.
To use this interval analyser, make sure that your logs are located in a folder of their class, with one parent folder with all classes, e.g.:
```text
+-- Parent Folder
| +-- Class_1
| +-- Log_1.*
| +-- Log_2.*
| +-- Class_2
| +-- Log_3.*
```
### Data Processing
```python
from amplo.automl import DataProcessor
```
Automated Data Cleaning:
- Infers & converts data types (integer, floats, categorical, datetime)
- Reformats column names
- Removes duplicates columns and rows
- Handles missing values by:
- Removing columns
- Removing rows
- Interpolating
- Filling with zero's
- Removes outliers using:
- Clipping
- Z-score
- Quantiles
- Removes constant columns
### Feature Processing
```python
from amplo.automl import FeatureProcessor
```
Automatically extracts and selects features. Removes Co-Linear Features.
Included Feature Extraction algorithms:
- Multiplicative Features
- Dividing Features
- Additive Features
- Subtractive Features
- Trigonometric Features
- K-Means Features
- Lagged Features
- Differencing Features
- Inverse Features
- Datetime Features
Included Feature Selection algorithms:
- Random Forest Feature Importance (Threshold and Increment)
- Predictive Power Score
### Sequencing
```python
from amplo.automl import Sequencer
```
For time series regression problems, it is often useful to include multiple previous samples instead of just the latest.
This class sequences the data, based on which time steps you want included in the in- and output.
This is also very useful when working with tensors, as a tensor can be returned which directly fits into a Recurrent Neural Network.
### Modelling
```python
from amplo.automl import Modeller
```
Runs various regression or classification models.
Includes:
- Scikit's Linear Model
- Scikit's Random Forest
- Scikit's Bagging
- Scikit's GradientBoosting
- Scikit's HistGradientBoosting
- DMLC's XGBoost
- Catboost's Catboost
- Microsoft's LightGBM
- Stacking Models
### Grid Search
```python
from amplo.grid_search import OptunaGridSearch
```
Contains three hyperparameter optimizers with extended predefined model parameters:
- Optuna's Tree-Parzen-Estimator
%prep
%autosetup -n Amplo-0.17.0
%build
%py3_build
%install
%py3_install
install -d -m755 %{buildroot}/%{_pkgdocdir}
if [ -d doc ]; then cp -arf doc %{buildroot}/%{_pkgdocdir}; fi
if [ -d docs ]; then cp -arf docs %{buildroot}/%{_pkgdocdir}; fi
if [ -d example ]; then cp -arf example %{buildroot}/%{_pkgdocdir}; fi
if [ -d examples ]; then cp -arf examples %{buildroot}/%{_pkgdocdir}; fi
pushd %{buildroot}
if [ -d usr/lib ]; then
find usr/lib -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/lib64 ]; then
find usr/lib64 -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/bin ]; then
find usr/bin -type f -printf "/%h/%f\n" >> filelist.lst
fi
if [ -d usr/sbin ]; then
find usr/sbin -type f -printf "/%h/%f\n" >> filelist.lst
fi
touch doclist.lst
if [ -d usr/share/man ]; then
find usr/share/man -type f -printf "/%h/%f.gz\n" >> doclist.lst
fi
popd
mv %{buildroot}/filelist.lst .
mv %{buildroot}/doclist.lst .
%files -n python3-Amplo -f filelist.lst
%dir %{python3_sitelib}/*
%files help -f doclist.lst
%{_docdir}/*
%changelog
* Sun Apr 23 2023 Python_Bot <Python_Bot@openeuler.org> - 0.17.0-1
- Package Spec generated
|