Best AI Infrastructure Platforms in Germany

Find and compare the best AI Infrastructure platforms in Germany in 2024

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
    Amazon SageMaker Studio Lab Reviews
    Amazon SageMaker Studio Lab provides a free environment for machine learning (ML), which includes storage up to 15GB and security. Anyone can use it to learn and experiment with ML. You only need a valid email address to get started. You don't have to set up infrastructure, manage access or even sign-up for an AWS account. SageMaker Studio Lab enables model building via GitHub integration. It comes preconfigured and includes the most popular ML tools and frameworks to get you started right away. SageMaker Studio Lab automatically saves all your work, so you don’t have to restart between sessions. It's as simple as closing your computer and returning later. Machine learning development environment free of charge that offers computing, storage, security, and the ability to learn and experiment using ML. Integration with GitHub and preconfigured to work immediately with the most popular ML frameworks, tools, and libraries.
  • 2
    AWS Inferentia Reviews
    AWS Inferentia Accelerators are designed by AWS for high performance and low cost for deep learning (DL), inference applications. The first-generation AWS Inferentia accelerator powers Amazon Elastic Compute Cloud, Amazon EC2 Inf1 instances. These instances deliver up to 2.3x more throughput and up 70% lower cost per input than comparable GPU-based Amazon EC2 instances. Inf1 instances have been adopted by many customers including Snap, Sprinklr and Money Forward. They have seen the performance and cost savings. The first-generation Inferentia features 8 GB of DDR4 memory per accelerator, as well as a large amount on-chip memory. Inferentia2 has 32 GB of HBM2e, which increases the total memory by 4x and memory bandwidth 10x more than Inferentia.
  • 3
    AWS Deep Learning AMIs Reviews
    AWS Deep Learning AMIs are a secure and curated set of frameworks, dependencies and tools that ML practitioners and researchers can use to accelerate deep learning in cloud. Amazon Machine Images (AMIs), designed for Amazon Linux and Ubuntu, come preconfigured to include TensorFlow and PyTorch. To develop advanced ML models at scale, you can validate models with millions supported virtual tests. You can speed up the installation and configuration process of AWS instances and accelerate experimentation and evaluation by using up-to-date frameworks, libraries, and Hugging Face Transformers. Advanced analytics, ML and deep learning capabilities are used to identify trends and make forecasts from disparate health data.
  • 4
    Amazon SageMaker Edge Reviews
    SageMaker Edge Agent allows for you to capture metadata and data based on triggers you set. This allows you to retrain existing models with real-world data, or create new models. This data can also be used for your own analysis such as model drift analysis. There are three options available for deployment. GGv2 (size 100MB) is an integrated AWS IoT deployment method. SageMaker Edge has a smaller, built-in deployment option for customers with limited device capacities. Customers who prefer a third-party deployment mechanism can plug into our user flow. Amazon SageMaker Edge Manager offers a dashboard that allows you to see the performance of all models across your fleet. The dashboard allows you to visually assess your fleet health and identify problematic models using a dashboard within the console.
  • 5
    Amazon SageMaker Clarify Reviews
    Amazon SageMaker Clarify is a machine learning (ML), development tool that provides purpose-built tools to help them gain more insight into their ML training data. SageMaker Clarify measures and detects potential bias using a variety metrics so that ML developers can address bias and explain model predictions. SageMaker Clarify detects potential bias in data preparation, model training, and in your model. You can, for example, check for bias due to age in your data or in your model. A detailed report will quantify the different types of possible bias. SageMaker Clarify also offers feature importance scores that allow you to explain how SageMaker Clarify makes predictions and generates explainability reports in bulk. These reports can be used to support internal or customer presentations and to identify potential problems with your model.
  • 6
    Amazon SageMaker JumpStart Reviews
    Amazon SageMaker JumpStart can help you speed up your machine learning (ML). SageMaker JumpStart gives you access to pre-trained foundation models, pre-trained algorithms, and built-in algorithms to help you with tasks like article summarization or image generation. You can also access prebuilt solutions to common problems. You can also share ML artifacts within your organization, including notebooks and ML models, to speed up ML model building. SageMaker JumpStart offers hundreds of pre-trained models from model hubs such as TensorFlow Hub and PyTorch Hub. SageMaker Python SDK allows you to access the built-in algorithms. The built-in algorithms can be used to perform common ML tasks such as data classifications (images, text, tabular), and sentiment analysis.
  • 7
    Amazon SageMaker Autopilot Reviews
    Amazon SageMaker Autopilot takes out the tedious work of building ML models. SageMaker Autopilot simply needs a tabular data set and the target column to predict. It will then automatically search for the best model by using different solutions. The model can then be directly deployed to production in one click. You can also iterate on the suggested solutions to further improve its quality. Even if you don't have the correct data, Amazon SageMaker Autopilot can still be used. SageMaker Autopilot fills in missing data, provides statistical insights on columns in your dataset, extracts information from non-numeric column, such as date/time information from timestamps, and automatically fills in any gaps.
  • 8
    Amazon SageMaker Model Deployment Reviews
    Amazon SageMaker makes it easy for you to deploy ML models to make predictions (also called inference) at the best price and performance for your use case. It offers a wide range of ML infrastructure options and model deployment options to meet your ML inference requirements. It integrates with MLOps tools to allow you to scale your model deployment, reduce costs, manage models more efficiently in production, and reduce operational load. Amazon SageMaker can handle all your inference requirements, including low latency (a few seconds) and high throughput (hundreds upon thousands of requests per hour).
  • 9
    MosaicML Reviews
    With a single command, you can train and serve large AI models in scale. You can simply point to your S3 bucket. We take care of the rest: orchestration, efficiency and node failures. Simple and scalable. MosaicML allows you to train and deploy large AI model on your data in a secure environment. Keep up with the latest techniques, recipes, and foundation models. Our research team has developed and rigorously tested these recipes. In just a few easy steps, you can deploy your private cloud. Your data and models will never leave the firewalls. You can start in one cloud and continue in another without missing a beat. Own the model trained on your data. Model decisions can be better explained by examining them. Filter content and data according to your business needs. Integrate seamlessly with your existing data pipelines and experiment trackers. We are cloud-agnostic and enterprise-proven.
  • 10
    AWS Neuron Reviews

    AWS Neuron

    Amazon Web Services

    It supports high-performance learning on AWS Trainium based Amazon Elastic Compute Cloud Trn1 instances. It supports low-latency and high-performance inference for model deployment on AWS Inferentia based Amazon EC2 Inf1 and AWS Inferentia2-based Amazon EC2 Inf2 instance. Neuron allows you to use popular frameworks such as TensorFlow or PyTorch and train and deploy machine-learning (ML) models using Amazon EC2 Trn1, inf1, and inf2 instances without requiring vendor-specific solutions. AWS Neuron SDK is natively integrated into PyTorch and TensorFlow, and supports Inferentia, Trainium, and other accelerators. This integration allows you to continue using your existing workflows within these popular frameworks, and get started by changing only a few lines. The Neuron SDK provides libraries for distributed model training such as Megatron LM and PyTorch Fully Sharded Data Parallel (FSDP).
  • 11
    HPE InfoSight Reviews

    HPE InfoSight

    Hewlett Packard Enterprise

    You won't have to spend days searching for the root cause of your hybrid environment. HPE InfoSight collects data every second from more than 100,000 systems around the world and uses this intelligence to make each system smarter and self-sufficient. HPE InfoSight automatically predicts and resolves 86% customer issues. To achieve always-on, fast apps, infrastructure must provide greater visibility, intelligent performance suggestions, and more autonomous autonomous operations. HPE InfoSight app insights is the answer. AI can help you go beyond traditional performance monitoring and quickly diagnose and predict problems across all apps and workloads. HPE InfoSight uses AI to create autonomous infrastructure.
  • 12
    SynapseAI Reviews
    SynapseAI, like our accelerator hardware, is designed to optimize deep learning performance and efficiency, but most importantly, for developers, it is also easy to use. SynapseAI's goal is to make it easier and faster for developers by supporting popular frameworks and model. SynapseAI, with its tools and support, is designed to meet deep-learning developers where they are -- allowing them to develop what and in the way they want. Habana-based processors for deep learning preserve software investments and make it simple to build new models. This is true both for training and deployment.
  • 13
    aiXplain Reviews
    We offer a set of world-class tools and assets to convert ideas into production ready AI solutions. Build and deploy custom Generative AI end-to-end solutions on our unified Platform, and avoid the hassle of tool fragmentation or platform switching. Launch your next AI-based solution using a single API endpoint. It has never been easier to create, maintain, and improve AI systems. Subscribe to models and datasets on aiXplain’s marketplace. Subscribe to models and data sets to use with aiXplain's no-code/low code tools or the SDK.
  • 14
    Azure AI Studio Reviews
    Your platform for developing generative AI and custom copilots. Use pre-built and customizable AI model on your data to build solutions faster. Explore a growing collection of models, both open-source and frontier-built, that are pre-built and customizable. Create AI models using a code first experience and an accessible UI validated for accessibility by developers with disabilities. Integrate all your OneLake data into Microsoft Fabric. Integrate with GitHub codespaces, Semantic Kernel and LangChain. Build apps quickly with prebuilt capabilities. Reduce wait times by personalizing content and interactions. Reduce the risk for your organization and help them discover new things. Reduce the risk of human error by using data and tools. Automate operations so that employees can focus on more important tasks.
  • 15
    Together AI Reviews

    Together AI

    Together AI

    $0.0001 per 1k tokens
    We are ready to meet all your business needs, whether it is quick engineering, fine-tuning or training. The Together Inference API makes it easy to integrate your new model in your production application. Together AI's elastic scaling and fastest performance allows it to grow with you. To increase accuracy and reduce risks, you can examine how models are created and what data was used. You are the owner of the model that you fine-tune and not your cloud provider. Change providers for any reason, even if the price changes. Store data locally or on our secure cloud to maintain complete data privacy.
  • 16
    Neysa Nebula Reviews

    Neysa Nebula

    Neysa

    $0.12 per hour
    Nebula enables you to scale and deploy your AI projects quickly and easily2 on a highly robust GPU infrastructure. Nebula Cloud powered by Nvidia GPUs on demand allows you to train and infer models easily and securely. You can also create and manage containerized workloads using Nebula's easy-to-use orchestration layer. Access Nebula’s MLOps, low-code/no code engines and AI-powered applications to quickly and seamlessly deploy AI-powered apps for business teams. Choose from the Nebula containerized AI Cloud, your on-prem or any cloud. The Nebula Unify platform allows you to build and scale AI-enabled use cases for business in a matter weeks, not months.
  • 17
    Motific.ai Reviews

    Motific.ai

    Outshift by Cisco

    Accelerate the adoption of GenAI. Configure GenAI Assistants powered by data from your organization in just a few simple clicks. GenAI assistants can be deployed with guardrails to ensure security, compliance, trust and cost management. Discover how your teams use AI assistants to gain data-driven insights. Discover opportunities to maximize value. Large Language Models (LLMs) are the best way to power your GenAI apps. Connect with top GenAI models providers like Google, Amazon Mistral and Azure. Use safe GenAI to answer questions from customers, analysts, and the press on your marcom website. GenAI assistants can be quickly created and deployed on web portals to provide rapid, precise and policy-controlled answers to questions using information from your public content. Use safe GenAI to provide quick, correct answers to your employees' legal policy questions.
  • 18
    Runyour AI Reviews
    Runyour AI offers the best environment for artificial intelligence. From renting machines to research AI to specialized templates, Runyour AI has it all. Runyour AI provides GPU resources and research environments to artificial intelligence researchers. Renting high-performance GPU machines is possible at a reasonable cost. You can also register your own GPUs in order to generate revenue. Transparent billing policy, where you only pay for the charging points that are used. We offer specialized GPUs that are suitable for a wide range of users, from casual hobbyists to researchers. Even first-time users can easily and conveniently work on AI projects. Runyour AI GPU machines allow you to start your AI research quickly and with minimal setup. It is designed for quick access to GPUs and provides a seamless environment for machine learning, AI development, and research.
  • 19
    Lemma Reviews
    Distributed workflows for production and prototype that are event-driven and span AI models, databases, APIs, ETL systems and applications. All on one platform. Reduce operational overheads and infrastructure complexity to enable a faster time-to-value for your organization. Focus on investing in proprietary logical and accelerating feature deliveries without wasting time with platform and architecture choices that slow down development and execution. Revolutionize emergency response through real-time transcription, keyword identification and keyphrase recognition, and integrated connectivity with external systems. Connect the physical and digital realms and optimize maintenance by monitoring sensors, creating a triage for operator review after an alert and creating service tickets on your work order platform. By generating responses based on data from various platforms, you can apply past experience to current problems in new ways.
  • 20
    OORT DataHub Reviews
    OORT DataHub, a blockchain-powered platform, allows people to contribute to AI development around the world by collecting and preprocessing AI data using smartphones and PCs. AI data transparency and safety built for an "OpenAI". All AI data will be automatically stored on OORT Cloud Storage - a global, decentralized storage network - and verified on the blockchain. DataHub allows users to submit data such as images, audio or video. These data are then used to improve AI models and machine learning models. Users can complete daily challenges, earn $OORT tokens and accumulate points to receive additional benefits. The more tasks you accomplish, the better your chances are of receiving one of our Profit Sharing Certificates. You can easily join and get started with just a few easy steps!
  • 21
    Amazon EC2 Trn2 Instances Reviews
    Amazon EC2 Trn2 instances powered by AWS Trainium2 are designed for high-performance deep-learning training of generative AI model, including large language models, diffusion models, and diffusion models. They can save up to 50% on the cost of training compared to comparable Amazon EC2 Instances. Trn2 instances can support up to 16 Trainium2 accelerations, delivering up to 3 petaflops FP16/BF16 computing power and 512GB of high bandwidth memory. Trn2 instances support up to 1600 Gbps second-generation Elastic Fabric Adapter network bandwidth. NeuronLink is a high-speed nonblocking interconnect that facilitates efficient data and models parallelism. They are deployed as EC2 UltraClusters and can scale up to 30,000 Trainium2 processors interconnected by a nonblocking, petabit-scale, network, delivering six exaflops in compute performance. The AWS neuron SDK integrates with popular machine-learning frameworks such as PyTorch or TensorFlow.
  • 22
    AWS Deep Learning Containers Reviews
    Deep Learning Containers are Docker images pre-installed with the most popular deep learning frameworks. Deep Learning Containers allow you to quickly deploy custom ML environments without the need to build and optimize them from scratch. You can quickly deploy deep learning environments using prepackaged, fully tested Docker images. Integrate Amazon SageMaker, Amazon EKS and Amazon ECS to create custom ML workflows that can be used for validation, training, and deployment.
  • 23
    Foundry Reviews
    Foundry is the next generation of public cloud powered by an orchestration system that makes it as simple as flicking a switch to access AI computing. Discover the features of our GPU cloud service designed for maximum performance. You can use our GPU cloud services to manage training runs, serve clients, or meet research deadlines. For years, industry giants have invested in infra-teams that build sophisticated tools for cluster management and workload orchestration to abstract the hardware. Foundry makes it possible for everyone to benefit from the compute leverage of a twenty-person team. The current GPU ecosystem operates on a first-come-first-served basis and is fixed-price. The availability of GPUs during peak periods is a problem, as are the wide differences in pricing across vendors. Foundry's price performance is superior to anyone else on the market thanks to a sophisticated mechanism.
  • 24
    Lumino Reviews
    The first hardware and software computing protocol that integrates both to train and fine tune your AI models. Reduce your training costs up to 80%. Deploy your model in seconds using open-source template models or bring your model. Debug containers easily with GPU, CPU and Memory metrics. You can monitor logs live. You can track all models and training set with cryptographic proofs to ensure complete accountability. You can control the entire training process with just a few commands. You can earn block rewards by adding your computer to the networking. Track key metrics like connectivity and uptime.