• HOME
  • CATEGORIES

    • CATEGORIES

    • Browse All Categories
  • FOR VENDORS

    • FOR VENDORS

    • Log In to Vendor Portal
    • Get Started
  • REVIEWS

    • REVIEWS

    • Write a Review
    • Product Reviews
    • Vendor Directory
    • Product Comparisons
  • GARTNER PEER COMMUNITY™
  • GARTNER.COM
  • Community GuidelinesListing GuidelinesBrowse VendorsRules of EngagementFAQPrivacyTerms of Service
    ©2026 Gartner, Inc. and/or its affiliates.
    All rights reserved.
  • Categories

    • Loading categories...

      Browse All Categories

      Loading markets...

  • For Vendors

    • Log In to Vendor Portal 

    • Get Started 

  • Write a Review

Join / Sign In
  1. Home
  2. /
  3. Cloud GPU
Logo of Cloud GPU

Cloud GPU

byGoogle
in Machine Learning Infrastructure as a Service
4.1

Overview

Product Information on Cloud GPU

Updated 13th October 2025

What is Cloud GPU?

Cloud GPU is a software provided by Google that offers access to high-performance graphical processing units through a cloud-based infrastructure. The software enables users to leverage GPU acceleration for tasks such as machine learning model training and inference, scientific computing, rendering, and data processing. It supports a range of GPU types to accommodate different computational needs and integrates with other Google Cloud services for scalability and management. Cloud GPU addresses business challenges associated with acquiring and maintaining expensive GPU hardware by providing on-demand resources, flexible usage options, and secure access for handling intensive workloads in the cloud environment.

Cloud GPU Pricing

Cloud GPU is a service that offers access to GPU resources through a pay-as-you-go pricing model, where charges are based on the type and number of GPUs used and the duration of usage. The service also provides options for discounted rates through committed use contracts, allowing users to choose configurations and payment structures based on their workload requirements.

Overall experience with Cloud GPU

SENIOR SOFTWARE ENGINEER
50M - 250M USD, Energy and Utilities
FAVORABLE

“Google Cloud GPUs: Transforming AI Model Training and Deployment”

4.0
Jan 7, 2025
Google cloud GPU offer a robust and versatile platform for accelerating high-performance computing tasks, levaraging cutting-edge NVIDIA technologies, these GPU excel in range of application, including: Machine Learning: Training and deploying sophisticated AI models, including deep learning neural networks with unparalled speed and efficiency Data Analytics: Accelerating data-intensive workloads, such as large-scale data processing, analytics and visualization
There are no reviews in this category.
CRITICAL

About Company

Company Description

Updated 25th July 2024

Googlers is a company that creates products intended to create opportunities for an extensive audience, regardless of their location across the globe. The company values diverse perspectives, imaginations and non-conformity to predefined norms and impossibilities. The goal is to build products while incorporating uniqueness of each individual involved in this process, aiming to make their products accessible and useful to all.

Company Details

Updated 11th November 2024
Company type
Public
Year Founded
1998
Head office location
Mountain View, CA, United States
Annual Revenue
30B+ USD
Website
www.google.com

Do You Manage Peer Insights at Google?

Access Vendor Portal to update and manage your profile.

Key Insights

A Snapshot of What Matters - Based on Validated User Reviews

Reviewer Insights for: Cloud GPU
Performance of Cloud GPU Across Market Features

Cloud GPU Likes & Dislikes

Like

From my perspective as a large language model, what i find most compelling about google cloud GPU is their sheer power and scalability Here's why: Enabling Complex Tasks: The high computational power of these GPU makes it possible to train and run extremely complex AI models, like myself. This opens doors to more sophisticated and nuanced language understanding, generation and other AI capabilities. Driving Effieciency: The ability to quickly process massive amounts of data with google cloud GPU significantly reduces training times for AI models. This efficiency is crucial for rapid development and deployment of AI solutions

Like

Google Cloud GPU is really great product and here are the main reasons I like it: 1. It's cheap, really cheap compared to AWS or other alternatives. 2. Support Team is very helpful. 3. Google Cloud GPU has several variations oof GPUs and the users can choose one or several of them to work with. 4. It has all the great benefits and tools of Google Cloud. 5. It has all application frameworks like CUDA. OpenGL, OpenCL and etc.

Like

Offers some fantastic BI tools and interactive analytic visualisations! I love that all the tools are in one place, so I am able to do the full Data Analytics Lifecycle in one place with on platform!

Dislike

While google cloud GPU offer immense potential, these are some aspects that could be improved, particularly frm the perspective of a large language model dealing with complex training processes: Availability and Access: High demand for cutting-edge GPU, especially during peak times for newer models, can sometimes lead to limited availability. This can create bottlenecks and delays in training and development cycles. Cost Management Complexity: While google offers various pricing models and discounts navigating the cost structure and optimizing spending can be complex. Configuration and Optimization: Effectively configuring and optimizing GPOU usage for maximmum performance often reqires specialized expertise. This can present a barrier for some users anbd necesstitate additional effort in fine-tuning settings for optimal efficiency.

Dislike

I can't think of any.

Dislike

I would say there is a lot of work and preparation needed for the deployment, and can come with complications when integrating with APIs.

Top Cloud GPU Alternatives

Logo of Amazon EC2 P3 Instances
1. Amazon EC2 P3 Instances
4.6
(71 Ratings)
Logo of IBM bare-metal GPU (x86 based servers)
2. IBM bare-metal GPU (x86 based servers)
5
(1 Ratings)
View All Alternatives

Peer Discussions

Cloud GPU Reviews and Ratings

4.1

(13 Ratings)

Rating Distribution

5 Star
46%
4 Star
54%
3 Star
0%
2 Star
0%
1 Star
0%
Why ratings and reviews count differ?

Customer Experience

Evaluation & Contracting

4.7

Planning & Transition

4.5

Delivery & Execution

4.6

Integration & Deployment

4.0

Service & Support

4.0

Service Capabilities

4.9

Filter Reviews
Sort By:
Most helpful
Last 12 Months
Star Rating
Reviewer Type
Reviewer's Company Size
Reviewer's Industry
Reviewer's Region
Reviewer's Job Function
  • SENIOR SOFTWARE ENGINEER
    50M-1B USD
    Energy and Utilities
    Review Source

    Google Cloud GPUs: Transforming AI Model Training and Deployment

    4.0
    Jan 7, 2025
    Google cloud GPU offer a robust and versatile platform for accelerating high-performance computing tasks, levaraging cutting-edge NVIDIA technologies, these GPU excel in range of application, including: Machine Learning: Training and deploying sophisticated AI models, including deep learning neural networks with unparalled speed and efficiency Data Analytics: Accelerating data-intensive workloads, such as large-scale data processing, analytics and visualization
  • BPA/RPA Developer & Data Analyst
    50M-1B USD
    IT Services
    Review Source

    Google Cloud GPU - cheap and fast solution for ML

    5.0
    Jan 16, 2020
    Google Cloud GPU is a great tool to process data that require GPUs for faster processing like images, videos and etc. In our company, we create and improve datasets with ML and with help of Googe Cloud GPU and we choose this one because it's very cost-effective and blazing fast. For example, we use several Nvidia Tesla v100 from Google Cloud GPU for just $X per GPU per hour which is very cheap compared owing one which costs about $Y plus electricity and maintenance costs. Also, Tensorflow and Keras work seamlessly with Google which is GREAT!
  • Apprentice BI Developer
    1B-10B USD
    Retail
    Review Source

    Brilliant cloud platform solution!

    4.0
    Jan 14, 2020
    GCP is great as they offer everything within the one platform! We have recently implemented GCP within our business, as you can imagine this has been a very long process as there is a lot involved. Google have offered a lot of training and resource materials to help each member of our team be fully competent. I mainly use the BI tools, and have found this very simple and easy to learn. This provides top dashboards with easy access to all users.
  • Trainee
    10B+ USD
    Manufacturing
    Review Source

    Great tool for AI and Big data

    4.0
    Dec 2, 2019
    Great tool provided by a company that you can trust. Allows you to process large amounts of data with good performance
  • Coordinator
    50M-1B USD
    Media
    Review Source

    Scale up your projects with Cloud GPU

    5.0
    Oct 6, 2019
    Scale up your projects with cloud GPU service, it's from Google, so it has the best support there is, also, there is documentation for everything we need.
Showing Result 1-5 of 14

Recommended Gartner Research

  • Market Guide for Machine Learning Infrastructure as a Service

Gartner Peer Insights content consists of the opinions of individual end users based on their own experiences, and should not be construed as statements of fact, nor do they represent the views of Gartner or its affiliates. Gartner does not endorse any vendor, product or service depicted in this content nor makes any warranties, expressed or implied, with respect to this content, about its accuracy or completeness, including any warranties of merchantability or fitness for a particular purpose.

This site is protected by hCaptcha and its Privacy Policy and Terms of Use apply.


Software reviews and ratings for EMMS, BI, CRM, MDM, analytics, security and other platforms - Peer Insights by Gartner
Community GuidelinesListing GuidelinesBrowse VendorsRules of EngagementFAQsPrivacyTerms of Use

©2026 Gartner, Inc. and/or its affiliates.

All rights reserved.