Cloud GPUs: The Best Cloud GPU Providers

Maximize your AI & ML

The Best Cloud GPU Vendors

Powerful graphics processing units (GPUs) are required for a wide range of applications, including advanced machine learning and artificial intelligence (AI) development, as well as high-quality 3D rendering and scientific simulations.

Cloud GPU service providers have emerged as a cost-effective and flexible solution for meeting these computational demands without requiring costly hardware investments.

However, selecting the best cloud GPU rental provider can be difficult due to the market's abundance of options with varying specifications, pricing models, and performance capabilities.

It's critical to understand the key considerations and the diverse range of GPU models available to make an informed decision and ensure that your cloud GPU rental meets your specific needs.

We will walk you through the key factors to consider when choosing a cloud GPU rental service in this comprehensive guide. We'll go over different types of GPUs, including specific models like the NVIDIA A100, Tesla V100, and RTX 3090, to help you choose the best one for your workload.

Whether you're a data scientist, developer, or creative professional, this guide will provide you with the knowledge you need to maximize the power of cloud GPUs while staying within your budget.

Let's begin with the most popular cloud GPU providers.

The following is the table of contents:

  1. Latitude.sh

  2. OVH Cloud Services

  3. Paperspace

  4. Vultr

  5. Large AI

  6. Gcore

  7. Lambda Research

  8. The Genesis Cloud

  9. Tensor Docking

  10. Azure by Microsoft

  11. The IBM Cloud

  12. FluidStack

  13. GPU is the leader.

  14. DataCrunch

  15. RunPod

  16. Jarvis Laboratories

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OVH Cloud is a global cloud computing company that provides a variety of services such as dedicated servers, VPS, and cloud computing solutions with a focus on GPU-powered instances.

They cater to a wide range of needs, from web hosting to high-performance computing, and are known for their low-cost pricing and strict data privacy policies.

Their GPU instances are especially popular for tasks such as machine learning, 3D rendering, and large-scale simulations, as they provide high computational power as well as excellent data security.

The infrastructure of OVH Cloud spans multiple data centers around the world, ensuring reliability and low latency for international clients.

Pros

  • Competitive pricing.

  • Strong data privacy policies.

  • Suitable for a wide range of applications, including web hosting and high-performance computing.

  • Machine learning, 3D rendering, and simulations require a lot of computational power.

  • Global infrastructure with multiple data centers for increased reliability and latency reduction.

Cons

  • In comparison to other providers, there is a lack of specialization.

Paperspace distinguishes itself in the cloud GPU service market through its user-friendly approach, which makes advanced computing accessible to a wider audience.

Its simple setup and deployment of GPU-powered virtual machines makes it especially popular among developers, data scientists, and AI enthusiasts.

Their services are tailored to machine learning and artificial intelligence development, with pre-installed and configured environments for various ML frameworks.

Paperspace also caters to creative professionals, such as graphic designers and video editors, thanks to its high-performance GPUs and rendering capabilities. The platform is also praised for its flexible pricing models, which include per-minute billing, making it appealing to both small and large enterprises.

Pros

  • Simple to use and set up.

  • Developers, data scientists, and AI enthusiasts love it.

  • Environments for machine learning frameworks that have been pre-installed and configured.

  • Designed for creative professionals who require high-performance GPUs.

  • Pricing models that are flexible, including per-minute billing.

Cons

  • Some providers may not provide the same level of customization as others.

Vultr stands out in the cloud computing market by emphasizing simplicity and performance. They provide a comprehensive set of cloud services, including high-performance GPU instances.

Because of their ease of use, rapid deployment, and competitive pricing, these services are particularly appealing to small and medium-sized businesses. The GPU offerings from Vultr are well-suited for a wide range of applications, including AI and machine learning, video processing, and gaming servers.

Their global network of data centers enables them to provide low-latency and dependable services across multiple geographies. Vultr also provides a straightforward and transparent pricing model, allowing businesses to effectively predict and manage their cloud expenses.

Pros

  • Simple and quick setup.

  • Pricing is competitive.

  • It is appropriate for small and medium-sized businesses.

  • AI, machine learning, video processing, and gaming all benefit from it.

  • Global data center network for low-latency services.

Cons

  • Some advanced features offered by larger competitors may be lacking.

Vast AI is a unique and innovative cloud GPU market player, providing a decentralized cloud computing platform.

They connect clients with underutilized GPU resources from a variety of sources, including commercial providers as well as private individuals. This approach may result in lower costs and a wider range of available hardware. However, it may result in increased variability in performance and reliability.

Vast AI is especially appealing to clients looking for low-cost solutions for intermittent or less critical GPU workloads, such as experimental AI projects, small-scale data processing, or individual research.

Pros

  • Lowering costs is a possibility.

  • A wide range of hardware is available.

  • For intermittent or less critical GPU workloads, this solution is cost-effective.

  • Suitable for AI experimentation and individual research.

Cons

  • Performance and reliability are more variable as a result of decentralized resources.

G Core

Gcore specializes in cloud and edge computing services, with a particular emphasis on gaming and streaming solutions.

Their GPU cloud services are intended for high-performance computing tasks, and they provide significant computational power for graphic-intensive applications. Gcore is known for its ability to provide scalable and reliable infrastructure, which is essential for MMO gaming, VR applications, and real-time video processing.

They also offer global content delivery network (CDN) services, which supplement their cloud offerings by ensuring high-speed data delivery and low latency for end users worldwide.

Pros

  • Graphics-intensive applications benefit from high-performance computing.

  • Infrastructure that is both scalable and robust.

  • Services provided by a global content delivery network (CDN).

  • MMO gaming, VR applications, and real-time video processing are all possible.

Cons

  • Non-gaming or non-streaming workloads may be less suitable.

Lambda Research

Lambda Labs is an AI and machine learning company that provides specialized GPU cloud instances for these purposes.

They are well-known in the AI research community for providing pre-configured environments with popular AI frameworks, saving data scientists and researchers valuable setup time. Lambda Labs' offerings are deep learning-optimized, with high-end GPUs and large memory capacities.

Academic institutions, AI startups, and large enterprises working on complex AI models and datasets are among their clients. In addition to cloud services, Lambda Labs offers dedicated hardware for AI research, demonstrating their dedication to the field.

Pros

  • Environments that have been pre-configured with popular AI frameworks.

  • High-end GPUs and large memory capacities are optimized for deep learning.

  • AI research, academic institutions, and startups will benefit from this.

Cons

  • AI research may have a specialized focus and pricing.

The Genesis Cloud

Genesis Cloud offers GPU cloud solutions that balance affordability and performance.

Their services are aimed specifically at startups, small to medium-sized businesses, and academic researchers working in the fields of AI, machine learning, and data processing.

Genesis Cloud has an easy-to-use interface that allows users to deploy and manage their GPU resources.

Their pricing model is transparent and competitive, making it a cost-effective option for those who require high-performance computing capabilities but do not want to invest heavily. They also emphasize environmental sustainability by powering their data centers with renewable energy sources.

Pros

  • Designed specifically for startups, small to medium-sized businesses, and academic researchers.

  • The interface is simple and easy to use.

  • Pricing that is both transparent and competitive.

  • Environmental sustainability is emphasized through the use of renewable energy sources.

Cons

  • Larger providers may not provide the same scale and range of services.

Tensor Docking

Tensor Dock offers a wide range of GPUs, from NVIDIA T4s to A100s, to meet a variety of needs such as machine learning, rendering, and other GPU-intensive tasks.

Performance Claims superior performance on the same GPU types as big clouds, with users such as ELBO.ai and researchers using their services for intensive AI tasks.

Pricing is known for being industry-leading, offering cost-effective solutions with a focus on cost-cutting through custom-built servers.

Pros

  • A wide range of GPU options are available.

  • Servers with high performance.

  • Pricing is competitive.

Cons

  • It is possible that smaller cloud providers do not have the same brand recognitionPricingger cloud providers.

Azure by Microsoft

Azure offers N-Series Virtual Machines that use NVIDIA GPUs for high-performance computing, making them ideal for deep learning and simulations.

The NDm A100 v4 Series, which includes NVIDIA A100 Tensor Core 80GB GPUs, has recently been added to their lineup, enhancing their AI supercomputing capabilities.

Pricing information is not provided, but as a major provider, it is possible that it offers competitive yet varied pricing options.

Pros

  • Excellent performance with the most recent NVIDIA GPUs.

  • Suitable for high-stress applications.

  • Cloud infrastructure that is vast.

Cons

  • For smaller users, pricing and cPricingation options may be complicated.

The IBM Cloud

IBM Cloud provides NVIDIA GPUs in order to train enterprise-class foundation models through WatsonX services.

Performance Provides a versatile server selection process as well as seamless integration with IPricingd architecture and applications.

Pricing is unknown, but it is likely to be competitive with other major providers.

Pros

  • GPU infrastructure that is cutting-edge.

  • Server selection is flexible.

  • IBM Cloud services are well integrated.

Cons

  • It is possible that they are not as specialized in GPU services as dedicated providers.

FluidStack

FluidStack is a cloud computing service known for providing GPU services that are both efficient and cost-effective. They serve businesses and individuals who require a high level of computational power.

FluidStack is ideal for small to medium-sized businesses or individuals looking for low-cost, dependable GPU services for moderate workloads.

Products

  • GPU Cloud Services GPUs with high performance that are suitable for machine learning, video processing, and other intensive tasks.

  • Cloud Rendering Provides specialized 3D rendering services.

Pros

  • In comparison to many competitors, it is less expensive.

  • Solutions that are adaptable and scalable.

  • User-friendly interface and simple installation.

Cons

  • In comparison to larger providers, it has a limited global reach.

  • High-end computational needs may not be met.

GPU is the leader.

Leader GPU is known for its cutting-edge technology and comprehensive portfolio of GPU services. They are aimed at professionals in data science, gaming, and artificial intelligence.

Leader GPU is appropriate for businesses and professionals who require high-end, customizable GPU solutions at a higher cost.

Products

  • A diverse GPU selection, including the most recent models from Nvidia and AMD.

  • Customizable Services Services tailored to specific client requirements.

Pros

  • Provides some of the most recent and powerful GPUs.

  • Customization options abound.

  • Excellent technical support.

Cons

  • It may be more expensive than competitors.

  • For new users, the learning curve may be steeper.

DataCrunch

DataCrunch is a rising star in cloud computing, specializing in low-cost, scalable GPU services for startups and developers.

DataCrunch is a great option for startups and individual developers who need affordable and scalable GPU services but don't need the most recent GPU models.

Products

  • GPU Instances GPU instances that are both affordable and scalable for a variety of computational needs.

  • Data Science Focus Services are designed specifically for machine learning and data analysis.

Pros

  • Very affordable, particularly for startups and individual developers.

  • Services can be easily scaled based on demand.

  • Excellent customer service.

Cons

  • There are few GPU model options.

  • Not as well-known, which may cause some users to lose trust.

GPU on Google Cloud

Google Cloud is a major cloud computing provider, and their GPU offerings are no exception.

They offer a diverse range of GPU types, including NVIDIA GPUs, for a variety of applications such as machine learning, scientific computing, and graphics rendering. Google Cloud GPU instances are well-known for their dependability, scalability, and compatibility with well-known machine learning frameworks such as TensorFlow.

However, pricing for intensive GPU workloads can be on the high side, so it's critical to carefully plan your usage and monitor costs to avoid surprises on your bill.

Product Specifications

  • For various use cases, Google Cloud provides a variety of GPU types, including NVIDIA GPUs.

  • Known for its dependability, scalability, and compatibility with machine learning frameworks.

Pricing

  • Google Cloud GPU pricing varies by type, region, and usage; more information is available on their website.

Pros

  • Global presence is extensive.

  • A wide range of GPU types and configurations are available.

  • Integration with Google's machine learning services is strong.

  • Excellent machine learning workload support.

Cons

  • Pricing for intensive GPU workloads can be on the high side.

  • A complicated pricing structure may necessitate careful cost management.

Amazon Web Services

Amazon Web Services (AWS) is one of the world's largest and most well-established cloud computing providers.

AWS provides a diverse range of GPU instances, including NVIDIA GPUs, AMD GPUs, and custom AWS Graviton2-based instances, to support a wide range of workloads.

AWS offers extensive global coverage, a diverse set of services, and first-rate documentation and support. However, AWS pricing, like Google Cloud, can be complex, and users should pay close attention to their resource consumption to effectively manage costs.

Product Specifications

  • AWS provides a wide range of GPU instances, including NVIDIA and AMD GPUs.

  • Known for its global reach, diverse service offering, and solid infrastructure.

Pricing

  • AWS GPU instance pricing varies depending on type, region, and usage; see the AWS website for more information.

Pros

  • Global coverage is extensive.

  • A wide range of GPU instances are available.

  • A robust ecosystem of resources and services.

  • Excellent documentation and customer service.

Cons

  • Pricing can be complex, necessitating cost tracking.

  • Costs for resource-intensive workloads can quickly escalate.

RunPod

In comparison to industry titans like Google Cloud and Amazon AWS, RunPod is a lesser-known cloud GPU provider.

It may, however, offer competitive pricing and GPU configuration flexibility, making it suitable for smaller businesses or individuals looking for cost-effective GPU solutions.

For the most up-to-date information on RunPod's current offerings and performance, I recommend visiting their website or contacting their sales team.

Product Specifications

  • RunPod is a cloud GPU provider that provides GPU instances for a variety of computing needs.

  • In comparison to larger providers, global presence may be limited.

Pricing

  • Pricing for RunPod's GPU instances varies; see their website for more information.

Pros

  • Pricing could be competitive.

  • GPU configuration flexibility.

  • Ideal for small businesses and individuals on a tight budget.

Cons

  • Global availability is limited.

  • Major providers may not have the same level of services and ecosystem.

Buyers Guide for Cloud GPU Rental

Here's what you should know to begin your research.

1. Establish Your Requirements

Examine your specific needs before deciding on a cloud GPU provider:

  • Workload: Determine the nature of your tasks (for example, machine learning, rendering, gaming) and their resource requirements.

  • Budget: Determine your financial constraints, including ongoing expenses and potential overage fees.

  • Consider the performance and scalability requirements for your workloads.

2. GPU Specifications and Types

Various cloud GPU providers provide various GPU types and configurations:

  • GPU Models: Determine whether the provider offers specific GPU models that meet the requirements of your workload. Among the most common GPU models are:

  • NVIDIA A100 (40GB) — This model is ideal for AI training and high-performance computing.

  • NVIDIA A100 (80GB) — Provides more memory capacity for demanding workloads.

  • NVIDIA H100 — AI and deep learning tasks are catered to.

  • NVIDIA RTX 4090 — Designed for high-end graphics and gaming.

  • NVIDIA GTX 1080 Ti — This graphics card is well-known for its use in gaming and multimedia applications.

  • NVIDIA Tesla K80 — This GPU is intended for scientific simulations and data processing.

  • NVIDIA Tesla V100 — A high-performance GPU for AI, deep learning, and high-performance computing.

  • NVIDIA A6000 — Excellent for design and content creation.

  • NVIDIA Tesla P100 — Provides high memory bandwidth for AI and HPC applications.

  • NVIDIA Tesla T4 — AI inference and machine learning workloads optimized.

  • NVIDIA Tesla P4 — Specifically designed for video transcoding and AI inference.

  • NVIDIA RTX 2080 — Designed for graphics-intensive applications and gaming.

  • NVIDIA RTX 3090 — A powerful GPU designed for gaming and content creation.

  • NVIDIA A5000 — A professional visualization and AI development platform.

  • NVIDIA RTX 6000 — Provides exceptional performance for professional workloads.

  • NVIDIA A40 — Specifically designed for data center and AI workloads.

  • GPU Quantity: Ensure that the provider provides the necessary number of GPUs for parallel processing.

  • Memory and Storage: Examine the GPU's memory and storage capacity to ensure that it can handle data-intensive tasks.

3. Models of Pricing and Billing

Contrast pricing and billing structures:

  • Pay-As-You-Go: Look for providers with flexible pricing models that let you pay only for the resources you use, usually on an hourly or per-minute basis.

  • Subscription Plans: For predictable workloads, some providers offer cost-effective subscription plans.

  • Consider data transfer costs, both inbound and outbound, as they can have a significant impact on your expenses.

4. Reliability and performance

Examine the cloud GPU service's performance and dependability:

  • GPU Performance: Take into account the provider's GPU benchmarking and performance testing data to ensure it meets your needs.

  • Check the provider's network infrastructure to see if it has a global network of data centers to reduce latency and ensure reliable connectivity.

  • Uptime and service level agreements (SLAs): Examine the provider's uptime guarantees and service level agreements (SLAs).

  • Customer Support: Evaluate the quality and availability of customer support in case of problems.

5. Environments that have been pre-configured

Consider providers that provide pre-configured environments with popular ML frameworks and libraries for AI and machine learning projects. This can help you save time during setup.

6. Data Protection and Privacy

Check that the cloud GPU provider has strict data security and privacy policies in place to protect your sensitive information and ensure compliance with data regulations.

Additional information: