SAS Viya vs H2O.ai

Last Updated:

Our analysts compared SAS Viya vs H2O.ai based on data from our 400+ point analysis of Big Data Analytics Tools, user reviews and our own crowdsourced data from our free software selection platform.

Product Basics

SAS Viya is a cloud-based in-memory analytics engine that provides data visualization, reporting and analytics to businesses for actionable data insights. Powered by AI, it brings together visual analytics, visual statistics and data science for enterprises to achieve end-to-end self-service analytics. It uses a standardized code base with support for programming in R, Python, SAS, Java and Lua.

Deployable in the cloud, on-premises and hybrid environments, it integrates with a wide range of business applications through an agile, scalable architecture. The vendor offers an introductory 30-day free trial.

Pros
  • Comprehensive features
  • Powerful analytics capabilities
  • User-friendly interface
  • Scalable architecture
  • Strong support from SAS
Cons
  • Steep learning curve
  • Limited customization options
  • High cost of ownership
  • Potential vendor lock-in
  • Resource-intensive
read more...
H2O.ai is a cutting-edge machine learning platform known for its advanced automation and scalability. It empowers organizations to harness the power of artificial intelligence and predictive analytics. Key features include AutoML, which streamlines the machine learning process, and a rich library of advanced algorithms. H2O.ai offers benefits such as enhanced predictive accuracy, model interpretability, and flexible deployment options, catering to a diverse range of industries. Its open-source foundation fosters collaboration, while its comprehensive ecosystem allows users to customize and extend its capabilities. While it's praised for its efficiency and support for large datasets, users may encounter a learning curve when navigating its sophisticated features.
read more...
$10,000 Annual
Get a free price quote
Tailored to your specific needs
$6,900 Annually
Get a free price quote
Tailored to your specific needs
Small 
i
Medium 
i
Large 
i
Small 
i
Medium 
i
Large 
i
Windows
Mac
Linux
Android
Chromebook
Windows
Mac
Linux
Android
Chromebook
Cloud
On-Premise
Mobile
Cloud
On-Premise
Mobile

Product Assistance

Documentation
In Person
Live Online
Videos
Webinars
Documentation
In Person
Live Online
Videos
Webinars
Email
Phone
Chat
FAQ
Forum
Knowledge Base
24/7 Live Support
Email
Phone
Chat
FAQ
Forum
Knowledge Base
24/7 Live Support

Product Insights

  • Improve Decision-Making: Make informed business decisions by using historical and current proprietary information to derive analytical insights. Compute vast amounts of data faster and resolve complexities through parallel processing. Boost workflow efficiencies by deploying operational decisions that define real-time best actions at scale. 
  • Self-Service Analytics: Easily perform automated forecasting, goal-seeking and scenario analysis — no technical skills needed. Identify user sentiment through text analytics and incorporate geographical data for a complete picture of business metrics. 
  • Maximize ROI: Save time through built-in automation for data prep, feature engineering, algorithm selection and AI-powered data discovery. Innovate, rather than spending time on tedious data management and analytics tasks. 
  • Data Security: Ensure data encryption at rest and while moving across systems, in addition to auditing protocols. Connect to external data management systems like Oracle, Teradata, Facebook, Amazon and Esri seamlessly through Kerberos, SAML, OAuth and OpenID. 
  • Data Management: Import data by using an IDE or through REST APIs, and visualize and analyze it through self-service data prep. Join tables, apply functions and perform calculations, or drag-and-drop, pivot, and slice and dice to view desired metrics. 
  • Augmented Analytics: Identify relationships in data through automatically generated suggestions and guided analysis, and track anomalies and outliers. Tell data stories by generating easy-to-understand visuals and dashboard summaries in natural language. Derive meaningful insights for the future by creating what-if scenarios for forecasting and predictive analytics. 
  • Mobility: Access business reports on the go through a native mobile app that supports a variety of charts, graphs and tables. Configure app functionality per device for specific users to add and view reports, share links, add and view comments and view alerts. 
  • Scalable Architecture: Leverage its modular microservices architecture to scale as per business needs. Monitor and manage the health and configuration of individual microservices instances through the SAS Environment Manager. Deploys seamlessly to any type of environment, including the cloud, and runs on Cloud Foundry as a platform-as-a-service (PaaS). 
read more...
  • Enhanced Predictive Accuracy: H2O.ai's advanced algorithms and machine learning capabilities enable organizations to achieve higher predictive accuracy in various applications. This leads to more informed decision-making and improved outcomes.
  • Scalability: One of the standout benefits of H2O.ai is its scalability. It can seamlessly handle both small and large datasets, making it suitable for businesses of all sizes. This scalability ensures that the system remains efficient as data volumes grow.
  • Automated Machine Learning (AutoML): H2O.ai simplifies the machine learning process with AutoML. This feature automates tasks such as feature engineering, model selection, and hyperparameter tuning, allowing data scientists to focus on higher-level tasks and reducing the barrier to entry for those new to machine learning.
  • Interpretability: Understanding machine learning models is crucial for trust and compliance. H2O.ai provides tools and methods for model interpretability, making it easier to explain model predictions and meet regulatory requirements in industries like finance and healthcare.
  • Efficiency: With H2O.ai, organizations can significantly reduce the time and resources required to develop and deploy machine learning models. This increased efficiency accelerates time-to-value for data-driven initiatives.
  • Open Source: H2O.ai embraces open source principles, making it accessible to a wide community of users and developers. This fosters innovation and collaboration, leading to continuous improvements in the platform.
  • Flexible Deployment Options: H2O.ai offers flexibility in deploying models. Users can choose to deploy models in cloud environments, on-premises, or even at the edge, ensuring that the solution aligns with their specific infrastructure and security requirements.
  • Support for Diverse Data Sources: H2O.ai supports data integration from a variety of sources, including structured and unstructured data, ensuring that organizations can leverage their entire data ecosystem for predictive analytics.
  • Comprehensive Ecosystem: H2O.ai provides a comprehensive ecosystem with various tools and integrations, allowing users to extend its functionality and integrate it seamlessly into their existing workflows and technologies.
read more...
  • Visualization and Reporting: Dig into data for in-depth analysis and view key business metrics through autonomous data exploration and manipulation. Create and customize interactive reports and charts to share with others across the organization for collaborative insight. Get suggestions on graphics best suited to display pertinent data through auto charting. 
  • Data Modeling: Analyze data with predictive models through regression, clustering and neural networks. Ensure version control by tracking data models from creation through usage by registering, validating and monitoring each version. Creates snapshots of model properties and files and retains them for the future. 
  • Visual Statistics: Build diverse scenarios simultaneously and refine them with what-if analyses to uncover insights through experimentation. Unifies all business tools, irrespective of the language they support, into a common visual analytics solution. 
  • Cloud Integrations: Develop low-code technologies by porting SAS open-source models into mobile and business applications through its cloud-native capability. Optimize analytics workloads on clouds like Microsoft Azure and ensure cost-efficient migration of analytics to the cloud through a workload management tool. 
  • ML-Based Insights: Get valuable insights from new data types by combining structured and unstructured data in integrated machine learning programs. Choose the desired ML algorithm from a range of options and easily find the optimal parameter settings. Use Python within Jupyter notebooks for deep learning functions like computer vision, natural language processing, forecasting and speech processing. 
read more...
  • AutoML: H2O.ai's AutoML functionality automates the end-to-end machine learning process. It handles everything from data preprocessing to model selection and hyperparameter tuning, making machine learning accessible to a broader range of users.
  • Scalability: H2O.ai's platform is highly scalable, capable of handling both small and large datasets with ease. This ensures that organizations can work with data of varying sizes, accommodating growth and evolving needs.
  • Interpretability: Model interpretability is crucial for understanding how and why a model makes predictions. H2O.ai provides tools and techniques for explaining complex machine learning models, enhancing transparency and trust.
  • Efficiency: H2O.ai streamlines the machine learning workflow, reducing the time and resources required to develop and deploy models. This efficiency accelerates the delivery of data-driven insights and solutions.
  • Open Source: H2O.ai embraces an open-source philosophy, fostering collaboration and innovation. The platform is built on open-source technologies, allowing users to contribute to its development and benefit from a thriving community.
  • Flexible Deployment: Users can deploy models generated with H2O.ai in a variety of environments, including cloud, on-premises, and edge computing. This flexibility ensures that the solution aligns with an organization's specific infrastructure and security requirements.
  • Data Source Compatibility: H2O.ai supports diverse data sources, including structured and unstructured data, enabling organizations to leverage their entire data ecosystem for machine learning projects.
  • Comprehensive Ecosystem: H2O.ai offers a comprehensive ecosystem of tools and integrations that enhance its functionality. Users can extend and customize the platform to integrate seamlessly into their existing workflows and technology stack.
  • Advanced Algorithms: The platform includes a rich set of advanced machine learning algorithms, empowering data scientists and analysts to tackle complex problems and extract valuable insights from their data.
  • Model Management: H2O.ai provides robust model management capabilities, allowing users to monitor, update, and deploy models effectively. This feature ensures that models remain relevant and accurate over time.
read more...

Product Ranking

#41

among all
Big Data Analytics Tools

#65

among all
Big Data Analytics Tools

Find out who the leaders are

Analyst Rating Summary

94
89
96
83
100
88
98
86
Show More Show More
Availability and Scalability
Computer Vision and Internet of Things (IoT)
Platform Security
Dashboarding and Data Visualization
Augmented Analytics
Availability and Scalability
Data Management
Machine Learning
Platform Security
Integrations and Extensibility

Analyst Ratings for Functional Requirements Customize This Data Customize This Data

SAS Viya
H2O.ai
+ Add Product + Add Product
Augmented Analytics Computer Vision And Internet Of Things (IoT) Dashboarding And Data Visualization Data Management Data Preparation Geospatial Visualizations And Analysis Machine Learning Mobile Capabilities Platform Capabilities Reporting 96 100 98 96 86 93 70 96 83 88 86 100 65 100 0 57 0 25 50 75 100
96%
0%
4%
83%
0%
17%
100%
0%
0%
75%
0%
25%
100%
0%
0%
88%
0%
12%
86%
14%
0%
100%
0%
0%
100%
0%
0%
90%
10%
0%
86%
0%
14%
71%
0%
29%
93%
0%
7%
100%
0%
0%
63%
0%
37%
0%
0%
100%
100%
0%
0%
100%
0%
0%
86%
14%
0%
57%
0%
43%

Analyst Ratings for Technical Requirements Customize This Data Customize This Data

100%
0%
0%
100%
0%
0%
82%
0%
18%
96%
0%
4%
100%
0%
0%
100%
0%
0%

User Sentiment Summary

Great User Sentiment 203 reviews
we're gathering data
85%
of users recommend this product

SAS Viya has a 'great' User Satisfaction Rating of 85% when considering 203 user reviews from 3 recognized software review sites.

we're gathering data
4.2 (157)
n/a
4.3 (33)
n/a
4.7 (13)
n/a

Awards

SelectHub research analysts have evaluated SAS Viya and concluded it deserves the award for the Best Overall Big Data Analytics Tools available today and earns best-in-class honors for Augmented Analytics and Computer Vision and Internet of Things (IoT).

Analysts' Pick Award
Augmented Analytics Award
Computer Vision and Internet of Things (IoT) Award

SelectHub research analysts have evaluated H2O.ai and concluded it earns best-in-class honors for Machine Learning.

Machine Learning Award

Synopsis of User Ratings and Reviews

Ease of Use: All users who mention its interface say that it makes autonomous analysis and data modeling accessible to users of all skill levels.
Support: All users who review support say that representatives are responsive and helpful in resolving issues and queries.
Functionality: Around 71% of the users who comment on its feature set say that the software helps discover data insights through powerful visualizations and on-the-fly calculations.
Show more
Efficient AutoML: Users appreciate H2O.ai's AutoML capabilities, which streamline the machine learning process, making it accessible to a broader audience and saving time on model development.
Scalability: Many users highlight H2O.ai's ability to handle large datasets and scale seamlessly, accommodating the needs of businesses with varying data volumes.
Model Interpretability: H2O.ai's interpretability tools are praised for helping users understand and trust complex machine learning models, particularly in regulated industries.
Open Source Foundation: Users appreciate the open-source nature of H2O.ai, which fosters collaboration, transparency, and a thriving community of users and developers.
Comprehensive Ecosystem: The platform's extensive ecosystem of tools and integrations is a pro, as it allows users to extend and customize their workflows to suit their specific needs.
Advanced Algorithms: H2O.ai's rich library of advanced machine learning algorithms is well-received by users, enabling them to tackle complex problems effectively.
Model Management: Users find the model management capabilities of H2O.ai robust, making it easier to monitor, update, and deploy models for ongoing success.
Flexible Deployment Options: The flexibility to deploy models in various environments, including cloud and on-premises, is seen as a significant advantage by users, aligning with their infrastructure needs.
Support for Diverse Data Sources: Users value H2O.ai's support for a wide range of data sources, enabling them to leverage their entire data ecosystem for machine learning projects.
Time-to-Value: Many users report that H2O.ai accelerates their time-to-value for data-driven initiatives, allowing them to derive insights and achieve results more quickly.
Show more
Cost: All users who discuss its pricing say that the cost of acquisition is high.
Show more
Steep Learning Curve: Some users find H2O.ai challenging to learn, particularly for those new to machine learning, due to its advanced features and concepts.
Resource Intensive: Users with limited computational resources may encounter challenges when working with large datasets or complex models, as it can demand substantial computing power.
Data Quality Dependencies: H2O.ai's effectiveness relies heavily on high-quality, clean data, and users report that poor data quality can impact model performance and accuracy.
Complexity of Interpretation: While the platform offers interpretability tools, users mention that fully understanding highly complex machine learning models can still be challenging.
Integration Efforts: Integrating H2O.ai into existing IT environments can require significant effort and technical expertise, which may be a drawback for some organizations.
Customization Complexity: Extensive customization can be complex, and users with specific use cases may need advanced knowledge of the platform to tailor solutions effectively.
Scalability Management: While H2O.ai is highly scalable, effectively managing scaling processes, particularly for large enterprises, can be complex and may require specialized expertise.
Documentation Gaps: Some users have noted occasional gaps in documentation and support resources, which can hinder troubleshooting and development efforts.
Model Deployment Challenges: Deploying models in production environments, especially in highly regulated industries, can require additional considerations and expertise, which users find challenging.
Algorithm Selection: Choosing the right algorithm for specific use cases can be a hurdle, as it demands a deep understanding of the platform and the nuances of different algorithms.
Show more

SAS Viya is an AI-powered data management and visual analytics platform with a robust, scalable architecture. All users who reviewed data source connectivity said that it connects to multiple sources and integrates easily with business applications, giving a seamless user experience. With fast in-memory processing of big data sets, it leverages the power of R to enable visual statistics. All users who mentioned predictive analysis said that it enables automated forecasting through what-if scenarios, goal-seeking, text mining and decision trees. Citing ease of use, all users say that the platform is intuitive and enables easy data modeling and self-service visual analytics. All users who mentioned support said that they are responsive and knowledgeable. Around 71% of the users who comment on its functionality say that it is a robust, scalable and flexible platform that enables visualization and analysis of business data, though some users say visual statistics need improvement. On the flip side, all users who review its cost say that the tool is expensive. In summary, SAS Viya is an analytics tool that provides data management, visualization and AI-powered analytics to enterprises for improved decision making, though small organizations and startups might find it cost-prohibitive.

Show more

User reviews for H2O.ai offer insights into both its strengths and weaknesses. Many users praise its efficient AutoML capabilities, making machine learning more accessible and saving time in model development. The scalability of H2O.ai is also widely appreciated, accommodating various data volumes for businesses. Users find its model interpretability tools valuable, particularly in regulated industries, for understanding complex models. The platform's open-source foundation fosters collaboration and transparency, drawing positive remarks. Its comprehensive ecosystem and support for advanced algorithms are additional strengths, enabling users to extend and customize their workflows effectively. On the downside, some users highlight a steep learning curve, particularly for newcomers to machine learning. The resource-intensive nature of H2O.ai, especially when dealing with large datasets, can be a limitation for those with limited computational resources. Data quality dependencies impact model performance, and complex model interpretation remains a challenge. Integrating H2O.ai into existing IT environments can be labor-intensive, and extensive customization may demand advanced knowledge. Effective scalability management can also pose complexities. Occasional gaps in documentation and support resources have been noted, affecting troubleshooting and development efforts. Compared to similar products, users see H2O.ai as a robust contender, offering a rich set of features and a vibrant open-source community. However, its learning curve and resource requirements may be factors for consideration. Ultimately, user reviews reflect a mix of praise for H2O.ai's capabilities and challenges faced in mastering its advanced functionalities.

Show more

Screenshots

we're gathering data

Top Alternatives in Big Data Analytics Tools


Alteryx

Azure Synapse Analytics

Dataiku

H2O.ai

IBM Watson Studio

KNIME

Looker Studio

Oracle Analytics Cloud

Qlik Sense

RapidMiner

SageMaker

SAP Analytics Cloud

Spotfire

Tableau

WE DISTILL IT INTO REAL REQUIREMENTS, COMPARISON REPORTS, PRICE GUIDES and more...

Compare products
Comparison Report
Just drag this link to the bookmark bar.
?
Table settings