Compare Angoss KnowledgeSTUDIO vs. Lytics

Angoss KnowledgeSTUDIO is ranked 12th in Data Mining while Lytics is ranked 14th in Data Mining. Angoss KnowledgeSTUDIO is rated 0, while Lytics is rated 0. On the other hand, Angoss KnowledgeSTUDIO is most compared with SAS Enterprise Miner and KNIME, whereas Lytics is most compared with .
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Angoss KnowledgeSTUDIO Logo
292 views|205 comparisons
Lytics Logo
93 views|13 comparisons
Ranking
12th
out of 16 in Data Mining
Views
292
Comparisons
205
Reviews
0
Average Words per Review
0
Avg. Rating
N/A
14th
out of 16 in Data Mining
Views
93
Comparisons
13
Reviews
0
Average Words per Review
0
Avg. Rating
N/A
Find out what your peers are saying about Knime, IBM, SAS and others in Data Mining. Updated: January 2020.
391,045 professionals have used our research since 2012.
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Overview

Business intelligence and predictive analytics software suite from Angoss Software Corporation. KnowledgeSTUDIO is a market-leading business intelligence software product with data mining and predictive analytics capabilities including data profiling, advanced data visualization, advanced modeling, unsupervised learning, decision tree and strategy design functionality.

All Your Customer Data. Together.
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Sample Customers
HSBC, MBNA, US Ban Corp, MasterCard Worldwide, Invesco, Citi Bank, ATB Financial, PayPal, Bajaj FinservNestle, R/GA, DIRECTV, The Clymb, Cond_ Nast
Find out what your peers are saying about Knime, IBM, SAS and others in Data Mining. Updated: January 2020.
391,045 professionals have used our research since 2012.
We monitor all Data Mining reviews to prevent fraudulent reviews and keep review quality high. We do not post reviews by company employees or direct competitors. We validate each review for authenticity via cross-reference with LinkedIn, and personal follow-up with the reviewer when necessary.