No more typing reviews! Try our Samantha, our new voice AI agent.
Google Vertex AI Logo

Google Vertex AI Reviews

Vendor: Google
4.1 out of 5
Badge Ranked 1

What is Google Vertex AI?

Featured Google Vertex AI reviews

Google Vertex AI mindshare

Product category:
As of April 2026, the mindshare of Google Vertex AI in the AI Development Platforms category stands at 8.4%, down from 14.9% compared to the previous year, according to calculations based on PeerSpot user engagement data.
AI Development Platforms Mindshare Distribution
ProductMindshare (%)
Google Vertex AI8.4%
Hugging Face6.9%
Azure OpenAI6.5%
Other78.2%
AI Development Platforms

PeerResearch reports based on Google Vertex AI reviews

TypeTitleDate
CategoryAI Development PlatformsApr 1, 2026Download
ProductReviews, tips, and advice from real usersApr 1, 2026Download
ComparisonGoogle Vertex AI vs Azure OpenAIApr 1, 2026Download
ComparisonGoogle Vertex AI vs Hugging FaceApr 1, 2026Download
ComparisonGoogle Vertex AI vs Amazon SageMakerApr 1, 2026Download
Suggested products
TitleRatingMindshareRecommending
Hugging Face4.16.9%100%13 interviewsAdd to research
n8n4.1N/A100%15 interviewsAdd to research
 
 
Key learnings from peers
Last updated Feb 22, 2026

Valuable Features

Room for Improvement

Pricing

Popular Use Cases

Service and Support

Deployment

Scalability

Stability

 
Google Vertex AI Reviews Summary
Author infoRatingReview Summary
Technology Consultant at Beta Information Technology4.5We utilize Google Vertex AI for diverse use cases, leveraging its customization and easy integration. Despite needing user interface improvements, it's superior in deployment and integration compared to other platforms like Quantum AI, requiring minimal infrastructure setup.
Chief Architect at a energy/utilities company with 10,001+ employees4.5We've used Google Vertex AI for a year to build and deploy AI models, appreciating its simplicity and end-to-end capabilities, though we see room for improvement in automation, agentic AI support, and enterprise system integration.
Product Owner at a tech vendor with 11-50 employees2.5I use Google Vertex AI mainly for product analysis and internal workflows, appreciating its easy integration and affordability, though I believe it could improve in handling large prompts, accuracy, and offering better workflow SDK support.
Head Of Data Science at Mjunction Services4.0I use Vertex AI mainly for Vertex Pipelines and Gemini APIs; its LLMs and vision are strong and cost-effective, boosting my apps. However, setup and navigation are complex, metrics are hard, and I miss true multimodal image+text support.
Trainee Decision Scientist at a tech services company with 1,001-5,000 employees4.5In my research on Google Vertex AI, I found that it effectively supports Retrieval-Augmented Generation (RAG) use cases with integrated GCP data storage and ChromaDB support. Its features surpass Azure, and it offers a unified platform compared to H2O AI.
Principal Data Architect at a computer software company with 201-500 employees4.5I find Google Vertex AI easy to use with strong integration across Google tools, though AutoML processing times and the UI could improve. Its performance with Gemini and end-to-end capabilities give it an edge over other platforms.
IT Senior Manager at a tech services company with 10,001+ employees4.0We use Google Vertex AI for chatbots and AI projects, valuing its LLM and AutoML features. However, customer support needs improvement, and managing multiple indexes is challenging. We transitioned from Oracle to Azure and Google Cloud for AI solutions.
Senior Data Scientist at Breuninger4.5I use Google Vertex AI for testing and deploying machine learning models. Its valuable Feature Store simplifies collaboration, and its monitoring feature enhances reliability. Previously, I used Microsoft Azure, but I prefer the simplicity of Google’s offering.