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Saulo Martiello Mastelini
Hi everyone, as stated in the github page, skmultiflow merged with creme to become https://riverml.xyz/latest/

So, there's no active development in skmultiflow anymore. We invite all the users to check river :D

It's more than the sum of the two projects

We are waiting for the name river be made available in pip, so that we can make an official release and statement
but since now I see a lot of messages in this community channel, I think is worth making an unofficial announcement here
for new users, the interface of river might change a little bit, but we got a lot of improvements regarding API consistency, model speedups and so on
besides that, river has a lot of extra tools and methods that are not available in the legacy skmultiflow
for instance, pre processing techniques (e.g., incremental StandardScaler)
Saulo Martiello Mastelini

sorry for my absence on this channel :/

@jacobmontiel and I have been focusing all our time in preparing the merge and polishing things

Welcome to river! If you have any questions, you can use Github's discussions to make questions and get feedbacks
Saulo Martiello Mastelini
We understand that some ongoing projects rely on skmultiflow for their functioning. For that reason, we will keep skmultiflow in its current state (stable release) and might apply eventual bug fixes
Nasrin Eshraghi Ivari
Hi All, Can anyone help me please? I have implemented data stream clustering. to simulate the stream, I used scikitmultiflow. But I want a sliding time window model to capture my last data. I do not know how can I implement or use sliding ?Does scikitmultiflow support windowing? I could not find anything related!
Michael Forde
Hey Everyone, I have been wanting to do some multivariate forecasting using the HoeffdingTreeRegressor for streamed data, Scikitmultiflow seems to suit what I want to do very well, but I noticed there isn't built-in forecasting support, I'm curious if there is any workaround I could try to do to achieve multiple step forecasting with this library?
Wannabe Maker
Hi all, Is there any way to install scikit multiflow on new M1 Macs ? I Use Pycharm as IDE and when i tried to install scikit multiflow everytime i got a Error because it try to install multiflow for X64 architecture. Is here someone with similar problem?
Hi @jacobmontiel , how to use concept drift detectors in regression problems (example: ADWIN, DDM,KSWIN)? obs: I don't want to use the error
from skmultiflow.data import AnomalySineGenerator
from skmultiflow.anomaly_detection import HalfSpaceTrees
import numpy as np
import pandas as pd

stream = AnomalySineGenerator(random_state=42, n_samples=10000, n_anomalies=250)
hs_tree = HalfSpaceTrees(n_estimators=10, depth=8)
true_positive = 0
anomalies = 0
predictions = []
y_test = []
max_samples = 10000
n_samples = 0

while n_samples < max_samples and stream.has_more_samples():
    X, y = stream.next_sample()
    y_pred = hs_tree.predict(X)
    if y[0] == 1.0:
        true_positive += 1
        if y_pred[0] == 1.0:
            anomalies += 1

    hs_tree.partial_fit(X, y)
    n_samples += 1

print('The data has {} anomalies'.format(true_positive))
print('Half Space Trees predicted {} anomalies'.format(anomalies))
This code on running it produces some interesting output. It predicts 0's for some time and predicts 1's later on.
Below is the classification report output which is quite poor.
from sklearn.metrics import classification_report
print(classification_report(y_test, predictions))
Hassan Mehmood
@Marilia-Nayara please open up your problem little bit.
@jacobmontiel @all Anyone, please tell me how to use EvaluatePrequentialDelayed with extremely fast decision tree. I want to use the incremental learn part from extremely fast decision tree, while doing delayed evaluation. Please help me!!!!!
Saulo Martiello Mastelini
Hi everyone, just as a reminder, there is not active development in skmultiflow anymore. Skmultiflow and Creme have merged to become River. Now, users can also install River via pip
We encourage the skmultiflow users to make the leap to River. Feel free to open a discussion with your question, or asking for any assistance
Jacob Montiel and I are both maintainers of River too
Saulo Martiello Mastelini
I'll talk with Jacob about the possibility of creating a quick guide, maybe something like: "from skmultiflow to river"
How do I save the results after the test as a file. Instead of saving the assessment as a file
@smastelini @jacobmontiel@all
I am a multi-label classification. I have a total of 14 labels. Where do I set it?
Hello @jacobmontiel @smastelini , i'm new to scikitmultiflow. I would like to train my classification model on one data stream (train data), and make predictions on another datastream(test stream). Could you please help me with a short piece of code that demonstrates this. Thank you.
why my line graph doesnt show any value for the evaluation
Hi, is there any way of getting a concept drift's detectors accuracy, or you have to use it with a clasification method? Thankyu

Hi! We have a requirement to train the model using historical data as well as real time data. I am trying to use AdaptiveRandomForestRegressor model but getting error. Firstly, I am training model using data from csv and then will be training model based on real data. I am using the code below where
X and y are my features and labels
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=0)

sc = StandardScaler()
X_train = sc.fit_transform(X_train)
X_test = sc.transform(X_test)

regressor = AdaptiveRandomForestRegressor()
regressor.fit(X_train, y_train)

I am getting below error. Can someone please help. Traceback (most recent call last):
File "C:/Users/Neha.Goyal/PycharmProjects/pythonProject/PredictionDataML_Scikit_AdaptiveRandomForest.py", line 43, in <module>
regressor.partial_fit(X_train, y_train)
File "C:\Users\Neha.Goyal\PycharmProjects\pythonProject\venv\lib\site-packages\skmultiflow\meta\adaptive_random_forest_regressor.py", line 296, in partial_fit
X[i].reshape(1, -1), [y[i]], sample_weight=[k],
File "C:\Users\Neha.Goyal\PycharmProjects\pythonProject\venv\lib\site-packages\pandas\core\series.py", line 824, in getitem
return self._get_value(key)
File "C:\Users\Neha.Goyal\PycharmProjects\pythonProject\venv\lib\site-packages\pandas\core\series.py", line 932, in _get_value
loc = self.index.get_loc(label)
File "C:\Users\Neha.Goyal\PycharmProjects\pythonProject\venv\lib\site-packages\pandas\core\indexes\base.py", line 3082, in get_loc
raise KeyError(key) from err
KeyError: 0

Hello everyone. I am trying to create a dataset using SEAGenerator with 100 features but as default, it creates with 3 features. How can I create with 100 features??. What I am trying to get is like 0.6987, 0.2568, 0.570, 0.949, 0.1970, … , 0.3285, 0.4474, 0.3355, 0.585, 0.5411, 0 where the last number is the class and others are features.
Hi all, I want to develop an online LSTM anomaly detector. Is there any way to do it on scikit-multiflow? Thanks for any help