python-recsys Reviews (14)

Reviews

python-recsys Reviews (14)

4.5
14 reviews

What do users say?

Generated using AI from real user reviews
Users consistently praise the software for its ease of use and customization capabilities, making it suitable for various recommendation system implementations. Many appreciate its open-source nature and the ability to handle large datasets effectively. However, a common limitation noted is the lack of support for Python 3, which affects integration with newer projects.
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Verified User in Transportation/Trucking/Railroad
GT
Verified User in Transportation/Trucking/Railroad
Enterprise (> 1000 emp.)
"Great ability to customize"
5/5
What do you like best about python-recsys?

If you are comfortable with Python, using this for recommendation engines will be easy. Accommodates a variety of algorithm types including classification recommendations, popularity based and recall. Review collected by and hosted on G2.com.

What do you dislike about python-recsys?

Tedious to install updated systems . Some libraries don't work on certain systems Review collected by and hosted on G2.com.

Verified User in Accounting
GA
Verified User in Accounting
Mid-Market (51-1000 emp.)
"Has everything for your programming needs"
4.5/5
What do you like best about python-recsys?

Includes a big library in order for you to be able to implement what you need in your algorithm, makes good use for what you need to complete your task at hand. Techniques are very developed. Review collected by and hosted on G2.com.

What do you dislike about python-recsys?

This software is not available for one of the newer python. Review collected by and hosted on G2.com.

Anastasia A.
AA
Anastasia A.
Analista de sistema
Small-Business (50 or fewer emp.)
"python-recsys Library for Recommender Systems"
4.5/5
What do you like best about python-recsys?

the python-recsys Library (https://github.com/ocelma/python-recsys) offer us the opportunity to evaluate libraries in the field of machine learning for python, to test the technological bases for building recommendation systems. The solution makes use of the python libraries: python-scipy, python-numpy, csc-pysparse, networkx, divisi2. The solution offers recommendations and predictions to the users of a system, through the transformation of input data, based on reactions and transactions of the users and their relationship with the components of the products with which they interact. It makes use of the SVD (singular-value decomposition) functionality to apply a factorization process of the user's valuation data entry matrix. This solution can be used for the construction of systems that need to predict product recommendations, to its users, when there is a high number of products and users, efficiently taking advantage of the transactions and interactions of users and products. It is a good tool to learn about machine learning systems, making use of statistical algorithms and innovative development techniques, very well constructed, with some of the best programming languages that exist: python. Very good library. highly recommended its use and implementation Review collected by and hosted on G2.com.

What do you dislike about python-recsys?

the libraries are not available for python 3.* Review collected by and hosted on G2.com.

Verified User in Government Administration
GG
Verified User in Government Administration
Enterprise (> 1000 emp.)
"Great for data visualization"
5/5
What do you like best about python-recsys?

Like other object based languages Python offers an initiative User experience Review collected by and hosted on G2.com.

What do you dislike about python-recsys?

Lists can be confusing to create for those used to SAS Review collected by and hosted on G2.com.