Try our new research platform with insights from 80,000+ expert users

What is H2O.ai?

Featured H2O.ai reviews

H2O.ai mindshare

Product category:
As of August 2025, the mindshare of H2O.ai in the Data Science Platforms category stands at 1.8%, up from 1.4% compared to the previous year, according to calculations based on PeerSpot user engagement data.
Data Science Platforms Market Share Distribution
ProductMarket Share (%)
H2O.ai1.8%
Databricks15.3%
Dataiku12.9%
Other70.0%
Data Science Platforms
 
 
Key learnings from peers

Valuable Features

Room for Improvement

Pricing

Popular Use Cases

Service and Support

Deployment

Scalability

Stability

Review data by company size

By reviewers
Company SizeCount
Small Business1
Midsize Enterprise2
Large Enterprise5
By reviewers
By visitors reading reviews
Company SizeCount
Small Business38
Midsize Enterprise27
Large Enterprise95
By visitors reading reviews

Top industries

By visitors reading reviews
Computer Software Company
16%
Financial Services Firm
16%
Manufacturing Company
9%
Educational Organization
6%
Energy/Utilities Company
4%
Real Estate/Law Firm
4%
Recreational Facilities/Services Company
4%
Insurance Company
4%
Healthcare Company
4%
Legal Firm
3%
University
3%
Comms Service Provider
2%
Government
2%
Hospitality Company
2%
Construction Company
2%
Non Profit
2%
Transportation Company
2%
Engineering Company
2%
Recruiting/Hr Firm
2%
Logistics Company
1%
Wholesaler/Distributor
1%
Media Company
1%
Performing Arts
1%
Non Tech Company
1%
Retailer
1%
Mining And Metals Company
1%
Consumer Goods Company
1%
Agriculture
1%
Outsourcing Company
1%
Security Firm
1%
Sports Company
1%
Wellness & Fitness Company
1%
 
H2O.ai Reviews Summary
Author infoRatingReview Summary
Senior Manager - AI at Shamal Holding4.5I use H2O.ai for machine learning tasks like forecasting and anomaly detection, valuing its AutoML and Driverless AI features. It's flexible, efficient, and easy to set up, though integration and real-time data support could improve.
Technical Architect Data Engineering at a tech vendor with 201-500 employees3.5I used H2O.ai for several POCs and found it flexible and time-saving with strong AutoML capabilities, though it lacks support for fusion models and better documentation would help; overall, it's a cost-effective and stable solution.
Trainee Decision Scientist at a tech services company with 1,001-5,000 employees3.5We primarily use H2O.ai for chatbots and conversational BI due to its plug-and-play ease. While it needs improvement in multimodal support and prompt engineering, we are considering Azure or Google for better scalability with our growing AI demands.
Associate Principal at a consultancy with 501-1,000 employees3.5No summary available
Supervisor in Research and Development Area with 1,001-5,000 employees4.0No summary available
Managing VP of Machine Learning at a financial services firm with 10,001+ employees3.5No summary available
Data Scientist with 51-200 employees3.5No summary available
Director of Data Engineering at Transamerica4.5No summary available