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scikit-learn

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60 reviews
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4.8
Serving customers since
2018

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scikit-learn Reviews

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Verified User in Retail
GR
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04/30/2019
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Review source: G2 invite
Incentivized Review

Scikit learning - what a beauty!

What not to like, gives you the power to train machine learning models abstracting out how it is working underneath. It can be scary sometimes to know how ML algorithms work in theory and it gets scarier when you got to put into functioning code but with scikit learning you dont have to worry about the underlying implementation and just get started with Machine Learning
Verified User in Education Management
GE
Verified User in Education Management
04/30/2019
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Review source: G2 invite
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Scikit-learn review

Scikit-learn can be used for almost all the machine learning tasks as it consists of tools for most of the standard machine learning tasks like classification, clustering, regression and dimensionality reduction.
Verified User in Education Management
GE
Verified User in Education Management
02/12/2019
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Review source: G2 invite
Incentivized Review

Great tool for simple Machine Learning

Does offer a wide variety of traditional Machine Learning Algorithms.

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What is scikit-learn?

Scikit-learn is an open-source machine learning library for the Python programming language. It provides simple and efficient tools for data analysis and modeling, making it accessible to both beginners and experienced data scientists. Scikit-learn supports various supervised and unsupervised learning algorithms, including regression, classification, clustering, and dimensionality reduction. It is built on top of other scientific libraries such as NumPy, SciPy, and matplotlib, ensuring seamless integration into the broader Python data science ecosystem. The library emphasizes ease of use, performance, and interoperability, making it a popular choice for developing machine learning applications.

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Year Founded
2018