Best AI Infrastructure Platforms in Germany - Page 2

Find and compare the best AI Infrastructure platforms in Germany in 2025

Use the comparison tool below to compare the top AI Infrastructure platforms in Germany on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Oblivus Reviews

    Oblivus

    Oblivus

    $0.29 per hour
    Our infrastructure is designed to fulfill all your computing needs, whether you require a single GPU or thousands, or just one vCPU to a vast array of tens of thousands of vCPUs; we have you fully covered. Our resources are always on standby to support your requirements, anytime you need them. With our platform, switching between GPU and CPU instances is incredibly simple. You can easily deploy, adjust, and scale your instances to fit your specific needs without any complications. Enjoy exceptional machine learning capabilities without overspending. We offer the most advanced technology at a much more affordable price. Our state-of-the-art GPUs are engineered to handle the demands of your workloads efficiently. Experience computational resources that are specifically designed to accommodate the complexities of your models. Utilize our infrastructure for large-scale inference and gain access to essential libraries through our OblivusAI OS. Furthermore, enhance your gaming experience by taking advantage of our powerful infrastructure, allowing you to play games in your preferred settings while optimizing performance. This flexibility ensures that you can adapt to changing requirements seamlessly.
  • 2
    Klu Reviews
    Klu.ai, a Generative AI Platform, simplifies the design, deployment, and optimization of AI applications. Klu integrates your Large Language Models and incorporates data from diverse sources to give your applications unique context. Klu accelerates the building of applications using language models such as Anthropic Claude (Azure OpenAI), GPT-4 (Google's GPT-4), and over 15 others. It allows rapid prompt/model experiments, data collection and user feedback and model fine tuning while cost-effectively optimising performance. Ship prompt generation, chat experiences and workflows in minutes. Klu offers SDKs for all capabilities and an API-first strategy to enable developer productivity. Klu automatically provides abstractions to common LLM/GenAI usage cases, such as: LLM connectors and vector storage, prompt templates, observability and evaluation/testing tools.
  • 3
    Deep Infra Reviews

    Deep Infra

    Deep Infra

    $0.70 per 1M input tokens
    Experience a robust, self-service machine learning platform that enables you to transform models into scalable APIs with just a few clicks. Create an account with Deep Infra through GitHub or log in using your GitHub credentials. Select from a vast array of popular ML models available at your fingertips. Access your model effortlessly via a straightforward REST API. Our serverless GPUs allow for quicker and more cost-effective production deployments than building your own infrastructure from scratch. We offer various pricing models tailored to the specific model utilized, with some language models available on a per-token basis. Most other models are charged based on the duration of inference execution, ensuring you only pay for what you consume. There are no long-term commitments or upfront fees, allowing for seamless scaling based on your evolving business requirements. All models leverage cutting-edge A100 GPUs, specifically optimized for high inference performance and minimal latency. Our system dynamically adjusts the model's capacity to meet your demands, ensuring optimal resource utilization at all times. This flexibility supports businesses in navigating their growth trajectories with ease.
  • 4
    Mystic Reviews
    With Mystic, you have the flexibility to implement machine learning within your own Azure, AWS, or GCP account, or alternatively, utilize our shared GPU cluster for deployment. All Mystic functionalities are seamlessly integrated into your cloud environment. This solution provides a straightforward and efficient method for executing ML inference in a manner that is both cost-effective and scalable. Our GPU cluster accommodates hundreds of users at once, offering an economical option; however, performance may fluctuate based on the real-time availability of GPUs. Effective AI applications rely on robust models and solid infrastructure, and we take care of the infrastructure aspect for you. Mystic features a fully managed Kubernetes platform that operates within your cloud, along with an open-source Python library and API designed to streamline your entire AI workflow. You will benefit from a high-performance environment tailored for serving your AI models effectively. Additionally, Mystic intelligently adjusts GPU resources by scaling them up or down according to the volume of API requests your models generate. From your Mystic dashboard, command-line interface, and APIs, you can effortlessly monitor, edit, and manage your infrastructure, ensuring optimal performance at all times. This comprehensive approach empowers you to focus on developing innovative AI solutions while we handle the underlying complexities.
  • 5
    VESSL AI Reviews

    VESSL AI

    VESSL AI

    $100 + compute/month
    Accelerate the building, training, and deployment of models at scale through a fully managed infrastructure that provides essential tools and streamlined workflows. Launch personalized AI and LLMs on any infrastructure in mere seconds, effortlessly scaling inference as required. Tackle your most intensive tasks with batch job scheduling, ensuring you only pay for what you use on a per-second basis. Reduce costs effectively by utilizing GPU resources, spot instances, and a built-in automatic failover mechanism. Simplify complex infrastructure configurations by deploying with just a single command using YAML. Adjust to demand by automatically increasing worker capacity during peak traffic periods and reducing it to zero when not in use. Release advanced models via persistent endpoints within a serverless architecture, maximizing resource efficiency. Keep a close eye on system performance and inference metrics in real-time, tracking aspects like worker numbers, GPU usage, latency, and throughput. Additionally, carry out A/B testing with ease by distributing traffic across various models for thorough evaluation, ensuring your deployments are continually optimized for performance.
  • 6
    Toolhouse Reviews
    Toolhouse stands out as the pioneering cloud platform enabling developers to effortlessly create, oversee, and operate AI function calling. This innovative platform manages every detail necessary for linking AI to practical applications, including performance enhancements, prompt management, and seamless integration with all foundational models, all accomplished in a mere three lines of code. With Toolhouse, users benefit from a one-click deployment method that ensures swift actions and access to knowledge for AI applications via a cloud environment with minimal latency. Furthermore, it boasts a suite of high-quality, low-latency tools supported by a dependable and scalable infrastructure, which includes features like response caching and optimization to enhance tool performance. This comprehensive approach not only simplifies AI development but also guarantees efficiency and reliability for developers.
  • 7
    E2B Reviews
    E2B is an open-source runtime that provides a secure environment for executing AI-generated code within isolated cloud sandboxes. This platform allows developers to enhance their AI applications and agents with code interpretation features, enabling the safe execution of dynamic code snippets in a regulated setting. Supporting a variety of programming languages like Python and JavaScript, E2B offers software development kits (SDKs) for easy integration into existing projects. It employs Firecracker microVMs to guarantee strong security and isolation during code execution. Developers have the flexibility to implement E2B on their own infrastructure or take advantage of the available cloud service. The platform is crafted to be agnostic to large language models, ensuring compatibility with numerous options, including OpenAI, Llama, Anthropic, and Mistral. Among its key features are quick sandbox initialization, customizable execution environments, and the capability to manage long-running sessions lasting up to 24 hours. With E2B, developers can confidently run AI-generated code while maintaining high standards of security and efficiency.
  • 8
    Google Deep Learning Containers Reviews
    Accelerate the development of your deep learning project on Google Cloud: Utilize Deep Learning Containers to swiftly create prototypes within a reliable and uniform environment for your AI applications, encompassing development, testing, and deployment phases. These Docker images are pre-optimized for performance, thoroughly tested for compatibility, and designed for immediate deployment using popular frameworks. By employing Deep Learning Containers, you ensure a cohesive environment throughout the various services offered by Google Cloud, facilitating effortless scaling in the cloud or transitioning from on-premises setups. You also enjoy the versatility of deploying your applications on platforms such as Google Kubernetes Engine (GKE), AI Platform, Cloud Run, Compute Engine, Kubernetes, and Docker Swarm, giving you multiple options to best suit your project's needs. This flexibility not only enhances efficiency but also enables you to adapt quickly to changing project requirements.
  • 9
    Azure Data Science Virtual Machines Reviews
    DSVMs, or Data Science Virtual Machines, are specialized Azure Virtual Machine images that come equipped with a variety of essential tools tailored for data analytics, machine learning, and artificial intelligence training. They ensure a uniform setup across teams, fostering both sharing and collaboration while leveraging Azure's scalable management features. With a nearly instant setup process, they provide a fully cloud-based desktop environment specifically designed for data science tasks. This allows for rapid and low-friction initiation of both classroom settings and online courses. Users can perform analytics across all Azure hardware configurations, benefiting from vertical and horizontal scaling options. You only pay for the resources you utilize when you need them, making it a cost-effective solution. Additionally, readily accessible GPU clusters are available, already configured with deep learning tools. To facilitate easy onboarding, the VMs come with examples, templates, and sample notebooks that have been built or tested by Microsoft, covering a wide range of capabilities including neural networks using frameworks like PyTorch and TensorFlow, as well as data wrangling with R, Python, Julia, and SQL Server. Furthermore, these resources support a variety of use cases, empowering users to dive into advanced data science projects with minimal setup time.
  • 10
    Intel Tiber AI Studio Reviews
    Intel® Tiber™ AI Studio serves as an all-encompassing machine learning operating system designed to streamline and unify the development of artificial intelligence. This robust platform accommodates a diverse array of AI workloads and features a hybrid multi-cloud infrastructure that enhances the speed of ML pipeline creation, model training, and deployment processes. By incorporating native Kubernetes orchestration and a meta-scheduler, Tiber™ AI Studio delivers unparalleled flexibility for managing both on-premises and cloud resources. Furthermore, its scalable MLOps framework empowers data scientists to seamlessly experiment, collaborate, and automate their machine learning workflows, all while promoting efficient and cost-effective resource utilization. This innovative approach not only boosts productivity but also fosters a collaborative environment for teams working on AI projects.
  • 11
    NVIDIA GPU-Optimized AMI Reviews
    The NVIDIA GPU-Optimized AMI serves as a virtual machine image designed to enhance your GPU-accelerated workloads in Machine Learning, Deep Learning, Data Science, and High-Performance Computing (HPC). By utilizing this AMI, you can quickly launch a GPU-accelerated EC2 virtual machine instance, complete with a pre-installed Ubuntu operating system, GPU driver, Docker, and the NVIDIA container toolkit, all within a matter of minutes. This AMI simplifies access to NVIDIA's NGC Catalog, which acts as a central hub for GPU-optimized software, enabling users to easily pull and run performance-tuned, thoroughly tested, and NVIDIA-certified Docker containers. The NGC catalog offers complimentary access to a variety of containerized applications for AI, Data Science, and HPC, along with pre-trained models, AI SDKs, and additional resources, allowing data scientists, developers, and researchers to concentrate on creating and deploying innovative solutions. Additionally, this GPU-optimized AMI is available at no charge, with an option for users to purchase enterprise support through NVIDIA AI Enterprise. For further details on obtaining support for this AMI, please refer to the section labeled 'Support Information' below. Moreover, leveraging this AMI can significantly streamline the development process for projects requiring intensive computational resources.
  • 12
    NetApp AIPod Reviews
    NetApp AIPod presents a holistic AI infrastructure solution aimed at simplifying the deployment and oversight of artificial intelligence workloads. By incorporating NVIDIA-validated turnkey solutions like the NVIDIA DGX BasePOD™ alongside NetApp's cloud-integrated all-flash storage, AIPod brings together analytics, training, and inference into one unified and scalable system. This integration allows organizations to efficiently execute AI workflows, encompassing everything from model training to fine-tuning and inference, while also prioritizing data management and security. With a preconfigured infrastructure tailored for AI operations, NetApp AIPod minimizes complexity, speeds up the path to insights, and ensures smooth integration in hybrid cloud settings. Furthermore, its design empowers businesses to leverage AI capabilities more effectively, ultimately enhancing their competitive edge in the market.
  • 13
    BentoML Reviews
    Quickly deploy your machine learning model to any cloud environment within minutes. Our standardized model packaging format allows for seamless online and offline serving across various platforms. Experience an impressive 100 times the throughput compared to traditional flask-based servers, made possible by our innovative micro-batching solution. Provide exceptional prediction services that align with DevOps practices and integrate effortlessly with popular infrastructure tools. The deployment is simplified with a unified format that ensures high-performance model serving while incorporating best practices from DevOps. This service utilizes the BERT model, which has been trained using TensorFlow, to analyze and predict the sentiment of movie reviews. Benefit from an efficient BentoML workflow that eliminates the need for DevOps involvement, encompassing everything from prediction service registration and deployment automation to endpoint monitoring, all set up automatically for your team. This framework establishes a robust foundation for executing substantial machine learning workloads in production. Maintain transparency across your team's models, deployments, and modifications while managing access through single sign-on (SSO), role-based access control (RBAC), client authentication, and detailed auditing logs. With this comprehensive system, you can ensure that your machine learning models are managed effectively and efficiently, resulting in streamlined operations.
  • 14
    Anyscale Reviews
    Anyscale is a comprehensive, fully-managed platform developed by the creators of Ray, designed to streamline the development, scaling, and deployment of AI applications using Ray. This platform simplifies the process of building and launching AI solutions at any scale, while alleviating the burdens of DevOps. With Anyscale, you can concentrate on your core competencies and deliver outstanding products, as we handle the Ray infrastructure hosted on our cloud services. Our platform intelligently adjusts your infrastructure and clusters in real-time to adapt to the varying needs of your workloads. Whether you need to run a scheduled production workflow, like retraining a model with new data weekly, or maintain a responsive and scalable production service, Anyscale simplifies the creation, deployment, and monitoring of machine learning workflows in a production environment. Additionally, Anyscale will automatically establish a cluster, execute your tasks, and ensure continuous monitoring until your job is successfully completed. By removing the complexities of infrastructure management, Anyscale empowers developers to focus on innovation and efficiency.
  • 15
    Google Cloud AI Infrastructure Reviews
    Businesses now have numerous options to efficiently train their deep learning and machine learning models without breaking the bank. AI accelerators cater to various scenarios, providing solutions that range from economical inference to robust training capabilities. Getting started is straightforward, thanks to an array of services designed for both development and deployment purposes. Custom-built ASICs known as Tensor Processing Units (TPUs) are specifically designed to train and run deep neural networks with enhanced efficiency. With these tools, organizations can develop and implement more powerful and precise models at a lower cost, achieving faster speeds and greater scalability. A diverse selection of NVIDIA GPUs is available to facilitate cost-effective inference or to enhance training capabilities, whether by scaling up or by expanding out. Furthermore, by utilizing RAPIDS and Spark alongside GPUs, users can execute deep learning tasks with remarkable efficiency. Google Cloud allows users to run GPU workloads while benefiting from top-tier storage, networking, and data analytics technologies that improve overall performance. Additionally, when initiating a VM instance on Compute Engine, users can leverage CPU platforms, which offer a variety of Intel and AMD processors to suit different computational needs. This comprehensive approach empowers businesses to harness the full potential of AI while managing costs effectively.
  • 16
    Google Cloud Deep Learning VM Image Reviews
    Quickly set up a virtual machine on Google Cloud for your deep learning project using the Deep Learning VM Image, which simplifies the process of launching a VM with essential AI frameworks on Google Compute Engine. This solution allows you to initiate Compute Engine instances that come equipped with popular libraries such as TensorFlow, PyTorch, and scikit-learn, eliminating concerns over software compatibility. Additionally, you have the flexibility to incorporate Cloud GPU and Cloud TPU support effortlessly. The Deep Learning VM Image is designed to support both the latest and most widely used machine learning frameworks, ensuring you have access to cutting-edge tools like TensorFlow and PyTorch. To enhance the speed of your model training and deployment, these images are optimized with the latest NVIDIA® CUDA-X AI libraries and drivers, as well as the Intel® Math Kernel Library. By using this service, you can hit the ground running with all necessary frameworks, libraries, and drivers pre-installed and validated for compatibility. Furthermore, the Deep Learning VM Image provides a smooth notebook experience through its integrated support for JupyterLab, facilitating an efficient workflow for your data science tasks. This combination of features makes it an ideal solution for both beginners and experienced practitioners in the field of machine learning.
  • 17
    Azure OpenAI Service Reviews

    Azure OpenAI Service

    Microsoft

    $0.0004 per 1000 tokens
    Utilize sophisticated coding and linguistic models across numerous applications. Harness the power of expansive generative AI models that possess an in-depth grasp of both language and programming to unlock innovative reasoning and understanding capabilities essential for developing state-of-the-art applications. These models can be utilized in various contexts, including writing support, code generation, and data analysis, while also ensuring responsible AI practices are in place to identify and address any potential misuse, all backed by enterprise-level Azure security protocols. Access generative models that have been trained on vast amounts of text, allowing for their implementation in diverse scenarios such as language processing, coding tasks, logical reasoning, inferencing, and comprehension. Tailor these generative models to fit your particular needs by using labeled datasets through a straightforward REST API. Enhance the precision of your outputs by fine-tuning the model’s hyperparameters, and leverage few-shot learning techniques to provide the API with examples to generate more pertinent results, ultimately improving application efficacy. With the right configurations and optimizations, you can significantly elevate the performance of your applications while maintaining a focus on ethical considerations in AI deployment.
  • 18
    FluidStack Reviews

    FluidStack

    FluidStack

    $1.49 per month
    Achieve prices that are 3-5 times more competitive than conventional cloud services. FluidStack combines underutilized GPUs from data centers globally to provide unmatched economic advantages in the industry. With just one platform and API, you can deploy over 50,000 high-performance servers in mere seconds. Gain access to extensive A100 and H100 clusters equipped with InfiniBand in just a few days. Utilize FluidStack to train, fine-tune, and launch large language models on thousands of cost-effective GPUs in a matter of minutes. By connecting multiple data centers, FluidStack effectively disrupts monopolistic GPU pricing in the cloud. Experience computing speeds that are five times faster while enhancing cloud efficiency. Instantly tap into more than 47,000 idle servers, all with tier 4 uptime and security, through a user-friendly interface. You can train larger models, set up Kubernetes clusters, render tasks more quickly, and stream content without delays. The setup process requires only one click, allowing for custom image and API deployment in seconds. Additionally, our engineers are available around the clock through Slack, email, or phone, acting as a seamless extension of your team to ensure you receive the support you need. This level of accessibility and assistance can significantly streamline your operations.
  • 19
    JarvisLabs.ai Reviews

    JarvisLabs.ai

    JarvisLabs.ai

    $1,440 per month
    All necessary infrastructure, computing resources, and software tools (such as Cuda and various frameworks) have been established for you to train and implement your preferred deep-learning models seamlessly. You can easily launch GPU or CPU instances right from your web browser or automate the process using our Python API for greater efficiency. This flexibility ensures that you can focus on model development without worrying about the underlying setup.
  • 20
    Hyperstack Reviews

    Hyperstack

    Hyperstack

    $0.18 per GPU per hour
    Hyperstack, the ultimate self-service GPUaaS Platform, offers the H100 and A100 as well as the L40, and delivers its services to the most promising AI start ups in the world. Hyperstack was built for enterprise-grade GPU acceleration and optimised for AI workloads. NexGen Cloud offers enterprise-grade infrastructure for a wide range of users from SMEs, Blue-Chip corporations to Managed Service Providers and tech enthusiasts. Hyperstack, powered by NVIDIA architecture and running on 100% renewable energy, offers its services up to 75% cheaper than Legacy Cloud Providers. The platform supports diverse high-intensity workloads such as Generative AI and Large Language Modeling, machine learning and rendering.
  • 21
    Brev.dev Reviews

    Brev.dev

    NVIDIA

    $0.04 per hour
    Locate, provision, and set up cloud instances that are optimized for AI use across development, training, and deployment phases. Ensure that CUDA and Python are installed automatically, load your desired model, and establish an SSH connection. Utilize Brev.dev to identify a GPU and configure it for model fine-tuning or training purposes. This platform offers a unified interface compatible with AWS, GCP, and Lambda GPU cloud services. Take advantage of available credits while selecting instances based on cost and availability metrics. A command-line interface (CLI) is available to seamlessly update your SSH configuration with a focus on security. Accelerate your development process with an improved environment; Brev integrates with cloud providers to secure the best GPU prices, automates the configuration, and simplifies SSH connections to link your code editor with remote systems. You can easily modify your instance by adding or removing GPUs or increasing hard drive capacity. Ensure your environment is set up for consistent code execution while facilitating easy sharing or cloning of your setup. Choose between creating a new instance from scratch or utilizing one of the template options provided in the console, which should include multiple templates for ease of use. Furthermore, this flexibility allows users to customize their cloud environments to their specific needs, fostering a more efficient development workflow.
  • 22
    fal.ai Reviews

    fal.ai

    fal.ai

    $0.00111 per second
    Fal represents a serverless Python environment enabling effortless cloud scaling of your code without the need for infrastructure management. It allows developers to create real-time AI applications with incredibly fast inference times, typically around 120 milliseconds. Explore a variety of pre-built models that offer straightforward API endpoints, making it easy to launch your own AI-driven applications. You can also deploy custom model endpoints, allowing for precise control over factors such as idle timeout, maximum concurrency, and automatic scaling. Utilize widely-used models like Stable Diffusion and Background Removal through accessible APIs, all kept warm at no cost to you—meaning you won’t have to worry about the expense of cold starts. Engage in conversations about our product and contribute to the evolution of AI technology. The platform can automatically expand to utilize hundreds of GPUs and retract back to zero when not in use, ensuring you only pay for compute resources when your code is actively running. To get started with fal, simply import it into any Python project and wrap your existing functions with its convenient decorator, streamlining the development process for AI applications. This flexibility makes fal an excellent choice for both novice and experienced developers looking to harness the power of AI.
  • 23
    Nebius Reviews

    Nebius

    Nebius

    $2.66/hour
    A robust platform optimized for training is equipped with NVIDIA® H100 Tensor Core GPUs, offering competitive pricing and personalized support. Designed to handle extensive machine learning workloads, it allows for efficient multihost training across thousands of H100 GPUs interconnected via the latest InfiniBand network, achieving speeds of up to 3.2Tb/s per host. Users benefit from significant cost savings, with at least a 50% reduction in GPU compute expenses compared to leading public cloud services*, and additional savings are available through GPU reservations and bulk purchases. To facilitate a smooth transition, we promise dedicated engineering support that guarantees effective platform integration while optimizing your infrastructure and deploying Kubernetes. Our fully managed Kubernetes service streamlines the deployment, scaling, and management of machine learning frameworks, enabling multi-node GPU training with ease. Additionally, our Marketplace features a variety of machine learning libraries, applications, frameworks, and tools designed to enhance your model training experience. New users can take advantage of a complimentary one-month trial period, ensuring they can explore the platform's capabilities effortlessly. This combination of performance and support makes it an ideal choice for organizations looking to elevate their machine learning initiatives.
  • 24
    Modal Reviews

    Modal

    Modal Labs

    $0.192 per core per hour
    We developed a containerization platform entirely in Rust, aiming to achieve the quickest cold-start times possible. It allows you to scale seamlessly from hundreds of GPUs down to zero within seconds, ensuring that you only pay for the resources you utilize. You can deploy functions to the cloud in mere seconds while accommodating custom container images and specific hardware needs. Forget about writing YAML; our system simplifies the process. Startups and researchers in academia are eligible for free compute credits up to $25,000 on Modal, which can be applied to GPU compute and access to sought-after GPU types. Modal continuously monitors CPU utilization based on the number of fractional physical cores, with each physical core corresponding to two vCPUs. Memory usage is also tracked in real-time. For both CPU and memory, you are billed only for the actual resources consumed, without any extra charges. This innovative approach not only streamlines deployment but also optimizes costs for users.
  • 25
    Ori GPU Cloud Reviews

    Ori GPU Cloud

    Ori

    $3.24 per month
    Deploy GPU-accelerated instances that can be finely tuned to suit your AI requirements and financial plan. Secure access to thousands of GPUs within a cutting-edge AI data center, ideal for extensive training and inference operations. The trend in the AI landscape is clearly leaning towards GPU cloud solutions, allowing for the creation and deployment of innovative models while alleviating the challenges associated with infrastructure management and resource limitations. AI-focused cloud providers significantly surpass conventional hyperscalers in terms of availability, cost efficiency, and the ability to scale GPU usage for intricate AI tasks. Ori boasts a diverse array of GPU types, each designed to meet specific processing demands, which leads to a greater availability of high-performance GPUs compared to standard cloud services. This competitive edge enables Ori to deliver increasingly attractive pricing each year, whether for pay-as-you-go instances or dedicated servers. In comparison to the hourly or usage-based rates of traditional cloud providers, our GPU computing expenses are demonstrably lower for running extensive AI operations. Additionally, this cost-effectiveness makes Ori a compelling choice for businesses seeking to optimize their AI initiatives.