Angoss KnowledgeENTERPRISE [EOL] vs Domino Data Science Platform comparison

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Executive Summary

We performed a comparison between Angoss KnowledgeENTERPRISE [EOL] and Domino Data Science Platform based on real PeerSpot user reviews.

Find out what your peers are saying about Databricks, Microsoft, Alteryx and others in Data Science Platforms.
To learn more, read our detailed Data Science Platforms Report (Updated: March 2024).
765,386 professionals have used our research since 2012.
Featured Review
Use Angoss KnowledgeENTERPRISE [EOL]?
Syed-Hussain
Ranking
Unranked
In Data Science Platforms
17th
Views
2,768
Comparisons
2,376
Reviews
0
Average Words per Review
0
Rating
N/A
Buyer's Guide
Data Science Platforms
March 2024
Find out what your peers are saying about Databricks, Microsoft, Alteryx and others in Data Science Platforms. Updated: March 2024.
765,386 professionals have used our research since 2012.
Comparisons
Also Known As
KnowledgeENTERPRISE, Datawatch Angoss, Angoss KnowledgeENTERPRISE
Domino Data Lab Platform
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Domino Data Lab
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Overview

KnowledgeENTERPRISE is a comprehensive data science platform that is integrated with Spark technology to provide unprecedented analytics and data processing capabilities. Its in-place analysis capability on distributed data eliminates data movement and allows users to stay within their Big Data environments.

This single, fully-integrated software solution enables access to open source machine-learning libraries, Big Data technologies, collaboration and governance features, comprehensive advanced analytics functionality, and numerous deployment options allowing users to overcome challenges in Big Data ingestion, access, and results interpretation. 

Domino provides a central system of record that keeps track of all data science activity across an organization. Domino helps data scientists seamlessly orchestrate AWS hardware and software toolkits, increase flexibility and innovation, and maintain required IT controls and standards. Organizations can automatically keep track of all data, tools, experiments, results, discussion, and models, as well as dramatically scale data science investments and impact decision-making across divisions. The platform helps organizations work faster, deploy results sooner, scale rapidly, and reduce regulatory and operational risk.

Sample Customers
Barclays, ANZ, Fidelity, Comcast, Rogers, T-Mobile, DirecTV
Allstate, Tesla, Dell, Moody's Analytics, SurveyMonkey, Eventbrite, Carnival
Top Industries
No Data Available
VISITORS READING REVIEWS
Financial Services Firm28%
Insurance Company11%
Manufacturing Company10%
Computer Software Company7%
Company Size
No Data Available
VISITORS READING REVIEWS
Small Business8%
Midsize Enterprise7%
Large Enterprise84%
Buyer's Guide
Data Science Platforms
March 2024
Find out what your peers are saying about Databricks, Microsoft, Alteryx and others in Data Science Platforms. Updated: March 2024.
765,386 professionals have used our research since 2012.

Angoss KnowledgeENTERPRISE [EOL] doesn't meet the minimum requirements to be ranked in Data Science Platforms while Domino Data Science Platform is ranked 17th in Data Science Platforms. Angoss KnowledgeENTERPRISE [EOL] is rated 0.0, while Domino Data Science Platform is rated 7.0. On the other hand, the top reviewer of Domino Data Science Platform writes "Good scalability and stability but the predictive analysis feature needs improvement". Angoss KnowledgeENTERPRISE [EOL] is most compared with Analance, whereas Domino Data Science Platform is most compared with Databricks, Amazon SageMaker, Microsoft Azure Machine Learning Studio, Dataiku Data Science Studio and Alteryx.

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