Below is a list of Cloud GPU providers that integrates with Visual Studio Code. Use the filters above to refine your search for Cloud GPU providers that is compatible with Visual Studio Code. The list below displays Cloud GPU providers products that have a native integration with Visual Studio Code.
-
1
Thunder Compute
Thunder Compute
Cheap Cloud GPUs for AI, Inference, and Training
Thunder Compute is a modern GPU cloud platform for businesses and developers that need cheap cloud GPUs for AI, machine learning, and high-performance computing. The platform provides access to H100, A100, and RTX A6000 GPU instances for a wide range of workloads including LLM inference, model training, fine-tuning, PyTorch, CUDA, ComfyUI, Stable Diffusion, data processing, deep learning experimentation, batch jobs, and production AI serving. Thunder Compute is built to help teams get the compute they need without overpaying for traditional cloud infrastructure.
Companies use Thunder Compute when they want affordable cloud GPUs, GPU hosting for AI workloads, and a faster, simpler path to deploying GPU servers in the cloud. With transparent pricing, fast provisioning, persistent storage, scalable GPU capacity, and an easy-to-use platform, Thunder Compute supports both experimentation and production use cases. It is especially valuable for startups, AI product teams, research groups, and engineering organizations searching for low-cost GPU instances, cheap H100 and A100 cloud access, or an affordable alternative to legacy GPU cloud providers. For organizations focused on lowering infrastructure spend while maintaining speed and flexibility, Thunder Compute offers reliable cloud GPU infrastructure optimized for modern AI development and deployment.
Businesses choose Thunder Compute when they need cheap cloud GPUs that can support rapid development, production inference, and cost-conscious scaling. By combining high-performance GPU access with simple deployment and predictable pricing, Thunder Compute helps teams move faster on AI initiatives while keeping infrastructure spend under control.
-
2
JarvisLabs.ai
JarvisLabs.ai
Effortless deep-learning model deployment with streamlined infrastructure.
The complete infrastructure, computational resources, and essential software tools, including Cuda and multiple frameworks, have been set up to allow you to train and deploy your chosen deep-learning models effortlessly. You have the convenience of launching GPU or CPU instances straight from your web browser, or you can enhance your efficiency by automating the process using our Python API. This level of flexibility guarantees that your attention can remain on developing your models, free from concerns about the foundational setup. Additionally, the streamlined experience is designed to enhance productivity and innovation in your deep-learning projects.
-
3
Apolo
Apolo
Unleash innovation with powerful AI tools and seamless solutions.
Gain seamless access to advanced machines outfitted with cutting-edge AI development tools, hosted in secure data centers at competitive prices. Apolo delivers an extensive suite of solutions, ranging from powerful computing capabilities to a comprehensive AI platform that includes a built-in machine learning development toolkit. This platform can be deployed in a distributed manner, set up as a dedicated enterprise cluster, or used as a multi-tenant white-label solution to support both dedicated instances and self-service cloud options. With Apolo, you can swiftly create a strong AI-centric development environment that comes equipped with all necessary tools from the outset. The system not only oversees but also streamlines the infrastructure and workflows required for scalable AI development. In addition, Apolo’s services enhance connectivity between your on-premises and cloud-based resources, simplify pipeline deployment, and integrate a variety of both open-source and commercial development tools. By leveraging Apolo, organizations have the vital resources and tools at their disposal to propel significant progress in AI, thereby promoting innovation and improving operational efficiency. Ultimately, Apolo empowers users to stay ahead in the rapidly evolving landscape of artificial intelligence.
-
4
Packet.ai
Packet.ai
Revolutionize AI development with efficient, on-demand GPU computing.
Packet.ai is a cutting-edge cloud platform tailored for GPU computing, providing developers and AI teams with rapid access to high-performance resources while avoiding the limitations of traditional cloud environments. The platform features on-demand GPU instances powered by advanced NVIDIA technology, which can be launched in mere seconds and accessed through various interfaces such as SSH, Jupyter, or VS Code, enabling users to seamlessly initiate model training, perform inference, or test AI applications. By implementing a unique approach to GPU resource management, Packet.ai adapts resource allocation based on real-time workload demands, allowing multiple compatible tasks to share the same hardware efficiently while maintaining stable performance. This forward-thinking strategy enhances resource utilization and eliminates the need to pay for idle capacity, focusing instead on the actual compute resources consumed. Furthermore, Packet.ai offers an OpenAI-compatible API that facilitates language model inference, embeddings, fine-tuning, and additional capabilities, broadening the scope for AI development and experimentation. The adaptability and efficiency of Packet.ai not only streamline AI workflows but also empower teams to push the boundaries of what is possible in their projects. Overall, this platform represents a significant advancement in how GPU resources can be harnessed for innovative AI solutions.