Compare DataRobot and Vertex AI

At a Glance
DataRobot
DataRobot
Star Rating
(26)4.4 out of 5
Market Segments
Small-Business (54.2% of reviews)
Information
Pros & Cons
Not enough data
Entry-Level Pricing
No pricing available
Learn more about DataRobot
Vertex AI
Vertex AI
Star Rating
(652)4.3 out of 5
Market Segments
Small-Business (42.0% of reviews)
Information
Pros & Cons
Entry-Level Pricing
Pay As You Go Per Month
Learn more about Vertex AI
AI Generated Summary
AI-generated. Powered by real user reviews.
  • G2 reviewers report that Vertex AI excels in managing complex machine learning workflows, with users appreciating its ability to centralize the entire ML lifecycle. One user highlighted how it simplifies everything from data preparation to deployment, making it easier to handle intricate processes.
  • Users say that DataRobot offers robust automation features, particularly in data preprocessing and feature engineering. Reviewers noted that it saves time by automatically selecting the best models and tuning hyperparameters, which can be a significant advantage for teams looking to streamline their ML processes.
  • According to verified reviews, Vertex AI has a notably higher overall satisfaction score, reflecting its strong performance and user-friendly interface. Users have praised its seamless integration with Google Cloud, which enhances the experience of managing machine learning projects.
  • Reviewers mention that while DataRobot is effective in deploying and modeling ML models, it has fewer recent reviews, which may indicate less current user engagement or satisfaction. This could be a concern for potential buyers looking for a platform with active user feedback.
  • G2 reviewers highlight that Vertex AI's implementation process is quick and intuitive, with many users appreciating the onboarding experience. This contrasts with DataRobot, where some users have expressed challenges in setup, indicating that Vertex AI may be more accessible for new users.
  • Users report that both platforms are strong partners in business, but Vertex AI stands out with a higher score in product direction, suggesting that users feel more confident in its future development and enhancements. This could be a crucial factor for organizations looking for long-term solutions.
Pricing
Entry-Level Pricing
DataRobot
No pricing available
Vertex AI
Try Vertex AI Free
Pay As You Go
Per Month
Learn more about Vertex AI
Free Trial
DataRobot
No trial information available
Vertex AI
No trial information available
Ratings
Meets Requirements
8.8
23
8.6
389
Ease of Use
8.5
23
8.2
400
Ease of Setup
7.0
11
8.1
322
Ease of Admin
7.4
11
7.9
149
Quality of Support
7.9
22
8.1
364
Has the product been a good partner in doing business?
8.3
11
8.3
143
Product Direction (% positive)
8.4
22
9.2
383
Features by Category
Not enough data
8.4
87
Deployment
Not enough data
8.4
76
Not enough data
8.1
78
Not enough data
8.3
76
Not enough data
8.4
76
Not enough data
8.8
75
Deployment
Not enough data
8.5
75
Not enough data
8.3
73
Not enough data
8.4
72
Not enough data
8.6
74
Not enough data
8.7
71
Management
Not enough data
8.2
71
Not enough data
8.5
73
Not enough data
8.0
71
Not enough data
8.1
70
Operations
Not enough data
8.2
70
Not enough data
8.5
71
Not enough data
8.3
71
Management
Not enough data
8.1
69
Not enough data
8.4
72
Not enough data
8.3
70
Generative AI
Not enough data
8.4
37
Not enough data
8.6
37
Data Science and Machine Learning PlatformsHide 25 FeaturesShow 25 Features
Not enough data
8.2
246
System
Not enough data
8.2
173
Model Development
Not enough data
8.5
208
Not enough data
7.9
181
Not enough data
8.4
206
Not enough data
8.5
209
Model Development
Not enough data
8.2
167
Machine/Deep Learning Services
Not enough data
8.3
203
Not enough data
8.5
202
Not enough data
8.2
200
Not enough data
8.3
181
Machine/Deep Learning Services
Not enough data
8.5
167
Not enough data
8.5
166
Deployment
Not enough data
8.3
213
Not enough data
8.3
203
Not enough data
8.6
207
Generative AI
Not enough data
8.3
110
Not enough data
8.3
106
Not enough data
8.1
105
Agentic AI - Data Science and Machine Learning Platforms
Not enough data
8.1
38
Not enough data
7.8
37
Not enough data
7.7
38
Not enough data
7.9
35
Not enough data
8.5
37
Not enough data
7.5
36
Not enough data
7.7
36
Generative AI InfrastructureHide 14 FeaturesShow 14 Features
Not enough data
8.4
36
Scalability and Performance - Generative AI Infrastructure
Not enough data
9.0
31
Not enough data
8.7
32
Not enough data
8.6
31
Cost and Efficiency - Generative AI Infrastructure
Not enough data
8.0
34
Not enough data
7.7
31
Not enough data
8.1
30
Integration and Extensibility - Generative AI Infrastructure
Not enough data
8.5
30
Not enough data
8.3
32
Not enough data
8.5
31
Security and Compliance - Generative AI Infrastructure
Not enough data
8.7
30
Not enough data
8.3
32
Not enough data
8.9
30
Usability and Support - Generative AI Infrastructure
Not enough data
8.2
31
Not enough data
8.5
31
Not enough data
8.5
71
Integration - Machine Learning
Not enough data
8.5
68
Learning - Machine Learning
Not enough data
8.5
66
Not enough data
8.3
65
Not enough data
8.8
66
Large Language Model Operationalization (LLMOps)Hide 15 FeaturesShow 15 Features
Not enough data
9.0
26
Prompt Engineering - Large Language Model Operationalization (LLMOps)
Not enough data
8.8
24
Not enough data
9.0
24
Inference Optimization - Large Language Model Operationalization (LLMOps)
Not enough data
8.8
22
Model Garden - Large Language Model Operationalization (LLMOps)
Not enough data
9.3
25
Custom Training - Large Language Model Operationalization (LLMOps)
Not enough data
9.1
24
Application Development - Large Language Model Operationalization (LLMOps)
Not enough data
9.2
23
Model Deployment - Large Language Model Operationalization (LLMOps)
Not enough data
9.0
23
Not enough data
8.7
22
Guardrails - Large Language Model Operationalization (LLMOps)
Not enough data
8.7
23
Not enough data
8.9
22
Model Monitoring - Large Language Model Operationalization (LLMOps)
Not enough data
8.7
21
Not enough data
9.1
22
Security - Large Language Model Operationalization (LLMOps)
Not enough data
9.1
22
Not enough data
9.0
23
Gateways & Routers - Large Language Model Operationalization (LLMOps)
Not enough data
8.9
22
Not enough data
8.0
30
Customization - AI Agent Builders
Not enough data
8.6
28
Not enough data
7.6
27
Not enough data
8.3
26
Functionality - AI Agent Builders
Not enough data
8.1
27
Not enough data
7.3
27
Not enough data
8.2
26
Not enough data
7.2
27
Data and Analytics - AI Agent Builders
Not enough data
7.8
26
Not enough data
7.9
27
Not enough data
8.1
28
Integration - AI Agent Builders
Not enough data
8.8
28
Not enough data
8.2
30
Not enough data
8.1
28
Not enough data
7.5
27
Low-Code Machine Learning PlatformsHide 6 FeaturesShow 6 Features
Not enough data
Not enough data
Data Ingestion & Preparation - Low-Code Machine Learning Platforms
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Model Construction & Automation - Low-Code Machine Learning Platforms
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Statistical Tool
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Data Analysis
Not enough data
Not enough data
Not enough data
Not enough data
Decision Making
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Not enough data
Generative AI
Not enough data
Not enough data
Not enough data
Not enough data
Categories
Categories
Shared Categories
DataRobot
DataRobot
Vertex AI
Vertex AI
Reviews
Reviewers' Company Size
DataRobot
DataRobot
Small-Business(50 or fewer emp.)
54.2%
Mid-Market(51-1000 emp.)
16.7%
Enterprise(> 1000 emp.)
29.2%
Vertex AI
Vertex AI
Small-Business(50 or fewer emp.)
42.0%
Mid-Market(51-1000 emp.)
25.9%
Enterprise(> 1000 emp.)
32.0%
Reviewers' Industry
DataRobot
DataRobot
Computer Software
20.8%
Information Technology and Services
12.5%
Telecommunications
8.3%
Architecture & Planning
4.2%
Biotechnology
4.2%
Other
50.0%
Vertex AI
Vertex AI
Computer Software
17.9%
Information Technology and Services
14.3%
Financial Services
6.8%
Retail
3.6%
Hospital & Health Care
3.3%
Other
54.1%
Alternatives
DataRobot
DataRobot Alternatives
Alteryx
Alteryx
Add Alteryx
Dataiku
Dataiku
Add Dataiku
Altair AI Studio
Altair AI Studio
Add Altair AI Studio
Azure Machine Learning
Azure Machine Learning Studio
Add Azure Machine Learning
Vertex AI
Vertex AI Alternatives
Dataiku
Dataiku
Add Dataiku
Azure Machine Learning
Azure Machine Learning Studio
Add Azure Machine Learning
Databricks
Databricks
Add Databricks
Amazon SageMaker
Amazon SageMaker
Add Amazon SageMaker
Discussions
DataRobot
DataRobot Discussions
Can I use external libraries with my algorithms?
1 Comment
Craig P.
CP
Yes, you can. Algorithmia has complete package management capabilities built in to the platform. Read more
How much does using Algorithmia cost?
1 Comment
Craig P.
CP
You can get started on Algorithmia Teams for as little as $299/month. Go to teams.algorithmia.com and sign up now!Read more
I found a bug in an algorithm or it's not producing the expected results, what can I do?
1 Comment
Craig P.
CP
If you are an Algorithmia Enterprise user, contact your account team for an immediate response. For Teams, while you are logged in to the platform, you...Read more
Vertex AI
Vertex AI Discussions
What is Google Cloud AI Platform used for?
3 Comments
Arnes O.
AO
Vertex AI is Google Cloud’s managed machine learning platform. It’s used to build, train, and deploy ML models at scale. It unifies data, AutoML, and custom...Read more
What software libraries does cloud ML engine support?
3 Comments
Arnes O.
AO
Cloud ML Engine (now part of Vertex AI) supports popular ML frameworks and libraries such as TensorFlow, PyTorch, Scikit‑learn, and XGBoost. This flexibility...Read more
What is Google AI platform?
2 Comments
ZM
The Google AI Platform is a comprehensive set of tools and services provided by Google Cloud to develop, deploy, and manage artificial intelligence. It...Read more