IBM SPSS Statistics vs. KNIME Analytics Platform vs. SAS Viya

Overview
ProductRatingMost Used ByProduct SummaryStarting Price
IBM SPSS Statistics
Score 8.2 out of 10
N/A
SPSS Statistics is a software package used for statistical analysis. It is now officially named "IBM SPSS Statistics". Companion products in the same family are used for survey authoring and deployment (IBM SPSS Data Collection), data mining (IBM SPSS Modeler), text analytics, and collaboration and deployment (batch and automated scoring services).
$105
per month per user
KNIME Analytics Platform
Score 7.8 out of 10
N/A
KNIME enables users to analyze, upskill, and scale data science without any coding. The platform that lets users blend, transform, model and visualize data, deploy and monitor analytical models, and share insights organization-wide with data apps and services.
$0
per month
SAS Viya
Score 10.0 out of 10
N/A
An end-to-end platform for AI, data science, and analytics, used for modeling, as well as management and deployment of AI models.N/A
Pricing
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Editions & Modules
Base
USD 3,830
one-time fee per user
Standard
USD 8,440
one-time fee per user
Professional
USD 16,900
one-time fee per user
Premium
USD 25,200
one-time fee per user
Monthly subscription
USD 105
per month per user
Annual subscription
USD 1,188.00
per year per user
KNIME Community Hub Personal Plan
$0
KNIME Analytics Platform
$0
KNIME Community Hub Team Plan
€99
per month 3 users
KNIME Business Hub
From €35,000
per year
No answers on this topic
Offerings
Pricing Offerings
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Free Trial
YesNoYes
Free/Freemium Version
NoYesNo
Premium Consulting/Integration Services
NoNoNo
Entry-level Setup FeeNo setup feeNo setup feeNo setup fee
Additional Details
More Pricing Information
Community Pulse
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Considered Multiple Products
IBM SPSS Statistics
Chose IBM SPSS Statistics
SAS is a very good product. SPSS provided our firm everythinbg we needed and was well within our budget. Also know that IBM is contunusely investing into SPSS. The roadmaps looks good.
Chose IBM SPSS Statistics
[IBM] SPSS is by far the best of the statistics software applications in terms of functionality and accessibility, but its biggest drawback is price. SPSS is prohibitively expensive in comparison to the other competing statistics applications such as R and SAS, making the …
Chose IBM SPSS Statistics
Stacks up pretty well, as this is the best geospatial analysis tool next only to ArcGIS, but does almost everything that other packages do almost as well. However, there is a considerable need to improve and include new techniques like the random forest, etc. which IBM SPSS …
Chose IBM SPSS Statistics
Overall, IBM SSPS outperforms competitors in almost every arena. It's ability to both perform statistical analysis and geospatial analysis is unrivaled. Additionally, it is superior in handling large or complex datasets over many of the other similar programs. The only program …
Chose IBM SPSS Statistics
SAS is more sophisticated and can be made more streamlined with SQL. SPSS has easier and user friendlier user experiences.
Chose IBM SPSS Statistics
SPSS is easier to navigate, more visually intuitive, and more user-friendly. It might not handle the volume of data that SAS can handle. But 99% of the projects I would be involved with, SPSS handles with flying colors.
Chose IBM SPSS Statistics
JMP is user-friendly like SPSS but is more limited in terms of data analyses.

SAS is better for managing and modifying large datasets. SAS also provides more customization for analyzing things like group differences. However, SAS does not handle modifying string responses well. …
Chose IBM SPSS Statistics
SAS has a greater number of functions than SPSS but most of the times they are not required. Also, the user interface is very complicated in SAS as compared to SPSS. The only advantage SAS has is more product recognition.
Chose IBM SPSS Statistics
MATLAB is far more powerful at modeling massive data sets and allows for further individualizations that are often needed at research. MATLAB can also analyze pictures and run analysis on them. However SPSS is very good for what it is meant for.
KNIME Analytics Platform
Chose KNIME Analytics Platform
There are two aspects which put KNIME Analytics Platform ahead of other products. Firstly the fact that KNIME Analytics Platform comes at no cost and no restrictions on its use is an instant winner for any organisation wanting to democratise their data. It means that a client …
Chose KNIME Analytics Platform
I selected KNIME mainly for two reasons: it does have a very good free version and it has the community contributions that expand its capabilities.
SAS Viya
Chose SAS Viya
SAS is faster then both SPSS and STATA. SAS also has better models and graphs when comparing the three softwares. However, STATA and SPSS are more user friendly. It is easy to use SPSS and STATA, because a lot of it is point-click. SAS requires some training to be able to use …
Features
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Platform Connectivity
Comparison of Platform Connectivity features of Product A and Product B
IBM SPSS Statistics
-
Ratings
KNIME Analytics Platform
9.2
19 Ratings
10% above category average
SAS Viya
-
Ratings
Connect to Multiple Data Sources00 Ratings9.619 Ratings00 Ratings
Extend Existing Data Sources00 Ratings10.010 Ratings00 Ratings
Automatic Data Format Detection00 Ratings9.119 Ratings00 Ratings
MDM Integration00 Ratings7.98 Ratings00 Ratings
Data Exploration
Comparison of Data Exploration features of Product A and Product B
IBM SPSS Statistics
-
Ratings
KNIME Analytics Platform
8.1
18 Ratings
4% below category average
SAS Viya
-
Ratings
Visualization00 Ratings8.018 Ratings00 Ratings
Interactive Data Analysis00 Ratings8.118 Ratings00 Ratings
Data Preparation
Comparison of Data Preparation features of Product A and Product B
IBM SPSS Statistics
-
Ratings
KNIME Analytics Platform
8.3
19 Ratings
2% above category average
SAS Viya
-
Ratings
Interactive Data Cleaning and Enrichment00 Ratings9.019 Ratings00 Ratings
Data Transformations00 Ratings9.519 Ratings00 Ratings
Data Encryption00 Ratings7.47 Ratings00 Ratings
Built-in Processors00 Ratings7.48 Ratings00 Ratings
Platform Data Modeling
Comparison of Platform Data Modeling features of Product A and Product B
IBM SPSS Statistics
-
Ratings
KNIME Analytics Platform
8.0
18 Ratings
5% below category average
SAS Viya
-
Ratings
Multiple Model Development Languages and Tools00 Ratings9.517 Ratings00 Ratings
Automated Machine Learning00 Ratings8.217 Ratings00 Ratings
Single platform for multiple model development00 Ratings9.318 Ratings00 Ratings
Self-Service Model Delivery00 Ratings5.08 Ratings00 Ratings
Model Deployment
Comparison of Model Deployment features of Product A and Product B
IBM SPSS Statistics
-
Ratings
KNIME Analytics Platform
7.3
11 Ratings
15% below category average
SAS Viya
-
Ratings
Flexible Model Publishing Options00 Ratings8.611 Ratings00 Ratings
Security, Governance, and Cost Controls00 Ratings5.94 Ratings00 Ratings
Best Alternatives
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Small Businesses

No answers on this topic

Jupyter Notebook
Jupyter Notebook
Score 8.5 out of 10
IBM SPSS Statistics
IBM SPSS Statistics
Score 8.2 out of 10
Medium-sized Companies
Alteryx Platform
Alteryx Platform
Score 9.1 out of 10
Posit
Posit
Score 10.0 out of 10
Alteryx Platform
Alteryx Platform
Score 9.1 out of 10
Enterprises
Alteryx Platform
Alteryx Platform
Score 9.1 out of 10
Posit
Posit
Score 10.0 out of 10
Alteryx Platform
Alteryx Platform
Score 9.1 out of 10
All AlternativesView all alternativesView all alternativesView all alternatives
User Ratings
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Likelihood to Recommend
5.4
(103 ratings)
9.6
(22 ratings)
8.0
(11 ratings)
Likelihood to Renew
8.6
(23 ratings)
9.5
(4 ratings)
4.5
(5 ratings)
Usability
8.0
(15 ratings)
9.0
(3 ratings)
6.1
(2 ratings)
Availability
6.0
(1 ratings)
-
(0 ratings)
10.0
(1 ratings)
Performance
6.0
(1 ratings)
-
(0 ratings)
9.0
(1 ratings)
Support Rating
6.4
(12 ratings)
9.3
(6 ratings)
10.0
(3 ratings)
In-Person Training
-
(0 ratings)
-
(0 ratings)
9.0
(1 ratings)
Online Training
-
(0 ratings)
-
(0 ratings)
8.0
(1 ratings)
Implementation Rating
8.7
(7 ratings)
7.0
(2 ratings)
9.0
(1 ratings)
Configurability
5.0
(1 ratings)
-
(0 ratings)
10.0
(1 ratings)
Ease of integration
5.0
(1 ratings)
10.0
(1 ratings)
8.0
(1 ratings)
Product Scalability
5.0
(1 ratings)
-
(0 ratings)
9.0
(1 ratings)
Vendor post-sale
5.0
(1 ratings)
-
(0 ratings)
10.0
(1 ratings)
Vendor pre-sale
5.0
(1 ratings)
-
(0 ratings)
10.0
(1 ratings)
User Testimonials
IBM SPSS StatisticsKNIME Analytics PlatformSAS Viya
Likelihood to Recommend
IBM
SPSS's ability to deal with things like survey verbatims is a significant competitive disadvantage. The ability to do most of what researchers do without having to learn to program (think R or Python) is the primary advantage SPSS brings to bear.
Read full review
KNIME
KNIME Analytics Platform is excellent for people who are finding Excel frustrating, this can be due to errors creeping in due to manual changes or simply that there are too many calculations which causes the system to slow down and crash. This is especially true for regular reporting where a KNIME Analytics Platform workflow can pull in the most recent data, process it and provide the necessary output in one click. I find KNIME Analytics Platform especially useful when talking with audiences who are intimidated by code. KNIME Analytics Platform allows us to discuss exactly how data is processed and an analysis takes place at an abstracted level where non-technical users are happy to think and communicate which is often essential when they are subject matter experts whom you need for guidance. For experienced programmers KNIME Analytics Platform is a double-edged sword. Often programmers wish to write their own code because they are more efficient working that way and are constrained by having to think and implement work in nodes. However, those constraints forcing development in a "KNIME way" are useful when working in teams and for maintenance compared to some programmers' idiosyncratic styles.
Read full review
SAS
SAS Advance Analytics is well suited for data that is visual. Data where you want to see multiple graphs and models are good for this software. However, if your data is more descriptive this may not be the best program. SAS is well suited for data where you need to make comparisons on the feasibility of two different programs. Data that can be compared is perfect for this software.
Read full review
Pros
IBM
  • SPSS has been around for quite a while and has amassed a large suite of functionality. One of its longest-running features is the ability to automate SPSS via scripting, AKA "syntax." There is a very large community of practice on the internet who can help newbies to quickly scale up their automation abilities with SPSS. And SPSS allows users to save syntax scripting directly from GUI wizards and configuration windows, which can be a real life-saver if one is not an experienced coder.
  • Many statistics package users are doing scientific research with an eye to publish reproducible results. SPSS allows you to save datasets and syntax scripting in a common format, facilitating attempts by peer reviewers and other researchers to quickly and easily attempt to reproduce your results. It's very portable!
  • SPSS has both legacy and modern visualization suites baked into the base software, giving users an easily mountable learning curve when it comes to outputting charts and graphs. It's very easy to start with a canned look and feel of an exported chart, and then you can tweak a saved copy to change just about everything, from colors, legends, and axis scaling, to orientation, labels, and grid lines. And when you've got a chart or graph set up the way you like, you can export it as an image file, or create a template syntax to apply to new visualizations going forward.
  • SPSS makes it easy for even beginner-level users to create statistical coding fields to support multidimensional analysis, ensuring that you never need to destructively modify your dataset.
  • In closing, SPSS's long and successful tenure ensures that just about any question a new user may have about it can be answered with a modicum of Google-fu. There are even several fully-fledged tutorial websites out there for newbie perusal.
Read full review
KNIME
  • Summarize instrument level financial data with relevant statistics
  • Map transactions from core extracts to groups of like transactions using rule engines
  • Machine learning using random forests and other techniques to analyze data and identify correlations for use in predictive models
  • Fill out sampling data from averages.
Read full review
SAS
  • SAS is can be used as query builder tool which can automate a lot of excel process.
  • There are variety of statistical options available that tie up good visual analytics.
  • There are inbuilt models available for different operations which doesn't require any coding and are easy to run.
Read full review
Cons
IBM
  • collaboration - SPSS lacks collaboration features which makes it near impossible to collaborate with my team on analysis. We have to send files back and forth, which is tedious.
  • integration - I wish SPSS had integration capabilities with some of the other tools that I use (e.g., Airtable, Figma, etc.)
  • user interface - this could definitely be modernized. In my experience, the UI is clunky and feels dated, which can negatively impact my experience using the tool.
Read full review
KNIME
  • It does not have proper visualization.
  • Some other BI tools (QlikView) have much easier functions for data interaction.
  • Some other BI tools (Tableau) can be set up much faster.
  • It is not an easy tool to use for non-tech savvy staff.
Read full review
SAS
  • SAS Analytics does not have very good graphic capabilities. Their advanced graphics packages are expensive, and still not very appealing or intuitive to customize.
  • SAS Analytics is not as up-to-date when it comes to advanced analytical techniques as R or other open-source analytics packages.
Read full review
Likelihood to Renew
IBM
Both
money and time are essential for success in terms of return on investment for any kind of research based project work. Using a Likert-scale questionnaire is very easy for data entry and analysis
using IBM SPSS. With the help of IBM SPSS, I found very fast and reliable data
entry and data analysis for my research. Output from SPSS is very easy to
interpret for data analysis and findings
Read full review
KNIME
We are happy with Knime product and their support. Knime AP is versatile product and even can execute Python scripts if needed. It also supports R execution as well; however, it is not being used at our end
Read full review
SAS
Not only does SAS become easier to use as the user gets more familiar with its capabilities, but the customer service is excellent. Any issues with SAS and their technical team is either contacting the user via email, chat, text, WebEx, or phone. They have power users that have years of experience with SAS there to help with any issue.
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Usability
IBM
Probably because I have been using it for so long that I have used all of the modules, or at least almost all of the modules, and the way SPSS works is second nature to me, like fish to swimming.
Read full review
KNIME
KNIME Analytics Platform offers a great tradeoff between intuitiveness and simplicity of the user interface and almost limitless flexibility. There are tools that are even easier to adopt by someone new to analytics, but none that would provide the scalability of KNIME when the user skills and application complexity grows
Read full review
SAS
If SAS Enterprise Guide is utilized any beginning user will be able to shorten the learning curve. This is allow the user a plethora of basic capabilities until they can utilize coding to expand their needs in manipulating and presenting data. SAS is also dedicated to expanding this environment so it is ever growing.
Read full review
Reliability and Availability
IBM
SPSS can tend to crash when I am trying to do a lot of data. This can slow me down when I need to do a lot of data
Read full review
KNIME
No answers on this topic
SAS
SAS probably has the most market saturation out of all of the analytics software worldwide. They are in every industry and they are knowledgable about every industry. They are always available to take questions, solve issues, and discuss a company's needs. A company that buys SAS software has a dedicated representative that is there for all of their needs.
Read full review
Performance
IBM
SPSS does the job, but it can be slow. I do have to plan a lot of time to get through a huge amount of data.
Read full review
KNIME
No answers on this topic
SAS
Although nothing is perfect, SAS is almost there. The software can handle billions of rows of data without a glitch and runs at a quick pace regardless of what the user wants to perform. SAS products are made to handle data so performance is of their utmost important. The software is created to run things as efficiently as SAS software can to maximize performance.
Read full review
Support Rating
IBM
I have not contacted IBM SPSS for support myself. However, our IT staff has for trying to get SPSS Text Analytics Module to work. The issue was never resolved, but I'm not sure if it was on the IT's end or on SPSS's end
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KNIME
KNIME's HQ is in Europe, which makes it hard for US companies to get customer service in time and on time. Their customer service also takes on average 1 to 2 weeks to follow up with your request. KNIME's documentation is also helpful but it does not provide you all the answers you need some of the time.
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SAS
SAS is generally known for good support that's one of the main reasons to justify the cost of having SAS licenses within our organization is knowing that customer support is just a quick phone call away. I've usually had good experiences with the SAS customer support team it's one of the ways in which the company stands out in my view.
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In-Person Training
IBM
No answers on this topic
KNIME
No answers on this topic
SAS
SAS has regional and national conferences that are dedicated to expanding users' knowledge of the software and showing them what changes and additions they are making to the software. There are user groups in most of the major cities that also provide multi-day seminars that focus on specific topics for education. If online training isn't the best way for the user, there is ample in-person training available.
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Online Training
IBM
No answers on this topic
KNIME
No answers on this topic
SAS
There are online videos, live classes, and resource material which makes training very easy to access. However, nothing is circumstantial so applying your training can get tricky if the user is performing complex tasks. When purchasing software, SAS will also allocate education credits so the user(s) can access classes and material online to help expand their knowledge.
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Implementation Rating
IBM
Have a plan for managing the yearly upgrade cycle. Most users work in the desktop version, so there needs to be a mechanism for either pushing out new versions of the software or a key manager to deal with updated licensing keys. If you have a lot of users this needs to be planned for in advance.
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KNIME
KNIME Analytics Platform is easy to install on any Windows, Mac or Linux machine. The KNIME Server product that is currently being replaced by the KNIME Business Hub comes as multiple layers of software and it took us some time to set up the system right for stability. This was made harder by KNIME staff's deeper expertise in setting up the Server in Linux rather than Windows environment. The KNIME Business Hub promises to have a simpler architecture, although currently there is no visibility of a Windows version of the product.
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SAS
Ask as many questions you can before the install to understand the process. Since a third party does the installation your company is sort of a passanger and it is easy to get lost in the process. It also helps to have all users and IT support involved in the install to help increase the knowledge as to how SAS runs and what it needs to perform correctly.
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Alternatives Considered
IBM
If you have made it this far, you should have a very good idea of how SPSS stacks up the competition (data processing and analytics tools). Even the free ones, such as r Studio or Stata, are leaps and bounds ahead of SPSS. IBM is resting on a reputation developed nearly 30 years ago and has shown no desire to improve.
Read full review
KNIME
Having used both the Alteryx and [KNIME Analytics] I can definitely feel the ease of using the software of Alteryx. The [KNIME Analytics] on the other hand isn't that great but is 90% of what Alteryx can do along with how much ease it can do. Having said that, the 90% functionality and UI at no cost would be enough for me to quit using Alteryx and move towards [KNIME Analytics].
Read full review
SAS
SAS was the incumbent tool, and what the team knew. We did look into using Revolution Analytics enterprise version of R, but the learning curve on that caused us to stick with SAS. In my current position, I've opted for WPS over SAS. I can still leverage my SAS experience, but the price is about 15% of what SAS charges, with extra functionality, such as direct database access. I can supplement WPS with free software, such R for anything that it might be missing.
Read full review
Scalability
IBM
IBM Cognos Analytics may have been designed to scale up to a very large number of users however we are a small business with small number of users and the program worked equally well for us. We would highly recommend the product for any business no matter the size, small to large.
Read full review
KNIME
No answers on this topic
SAS
It all depends on the type of SAS product the user has. Scaleability differs from product to product, and if the user has SAS Office Analytics the scaleability is quite robust. This software will satisfy the majority of the company's analytic needs for years to come. In addition, if SAS is not meeting the users needs the company can easily find SAS solutions that will.
Read full review
Return on Investment
IBM
  • I found SPSS easier to use than SAS as it's more intuitive to me.
  • The learning curve to use SPSS is less compared to SAS.
  • I used SAS, to a much lesser extent than SPSS. However, it seems that SAS may be more suitable for users who understand programming. With SPSS, users can perform many statistical tests without the need to know programming.
Read full review
KNIME
  • It is suited for data mining or machine learning work but If we're looking for advanced stat methods such as mixed effects linear/logistics models, that needs to be run through an R node.
  • Thinking of our peers with an advanced visualization techniques requirement, it is a lagging product.
Read full review
SAS
  • SAS is pretty expensive, so a company would need to take that into consideration before purchasing a license.
  • A lot of companies are now starting to use SAS Advance Analytics, it is great for sharing data between departments.
  • Presentations come out better when using SAS, and estimates are more precise to the confidence interval.
Read full review
ScreenShots

IBM SPSS Statistics Screenshots

Screenshot of SPSS Statistics Forecasting. This enables users to build time-series forecasts regardless of their skill level.Screenshot of SPSS Statistics Regression. These predict categorical outcomes and apply nonlinear regression procedures.Screenshot of IBM SPSS Statistics Neural Networks. These can discover complex relationships and improve predictive models.Screenshot of IBM SPSS Statistics Curated Help. These can interpret correlation output.Screenshot of IBM SPSS Statistics AI Output Assistant interprets statistical output in easy to consume language

KNIME Analytics Platform Screenshots

Screenshot of the KNIME Modern UI. This is the the new user interface for the KNIME Analytics Platform that is available with improved look and feel as the default interface, from KNIME Analytics Platform version 5.1.0 release.Screenshot of the KNIME Analytics Platform user interface - the KNIME Workbench - displays the current, open workflow(s). Here is the general user interface layout — application tabs, side panel, workflow editor and node monitor.Screenshot of the KNIME user interface elements — workflow toolbar, node action bar, rename components and metanodes.Screenshot of the entry page, which is displayed by clicking the Home tab. From here users can; check out example workflows to get started, access a local workspace, or even start a new workflow by clicking the yellow plus button.Screenshot of the status of a KNIME node, which shows whether it's configured, not configured, executed, or has an error.Screenshot of the KNIME node action bar, which can be used to configure, execute, cancel, reset, and - when available - open the view.