Best AI Inference Platforms for Docker

Find and compare the best AI Inference platforms for Docker in 2025

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

  • 1
    Google AI Studio Reviews
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    In Google AI Studio, businesses can utilize AI inference to harness the power of pre-trained models for making instantaneous predictions or decisions based on fresh data. This capability is essential for implementing AI solutions in real-world settings, such as recommendation engines, fraud detection systems, or smart chatbots that engage with users effectively. Google AI Studio enhances the inference workflow, guaranteeing that predictions remain swift and precise, even when managing extensive datasets. Additionally, it provides integrated features for monitoring models and assessing performance, enabling users to maintain the consistency and reliability of their AI applications as data changes over time.
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    RunPod Reviews

    RunPod

    RunPod

    $0.40 per hour
    123 Ratings
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    RunPod provides a cloud infrastructure that enables seamless deployment and scaling of AI workloads with GPU-powered pods. By offering access to a wide array of NVIDIA GPUs, such as the A100 and H100, RunPod supports training and deploying machine learning models with minimal latency and high performance. The platform emphasizes ease of use, allowing users to spin up pods in seconds and scale them dynamically to meet demand. With features like autoscaling, real-time analytics, and serverless scaling, RunPod is an ideal solution for startups, academic institutions, and enterprises seeking a flexible, powerful, and affordable platform for AI development and inference.
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    GMI Cloud Reviews

    GMI Cloud

    GMI Cloud

    $2.50 per hour
    Create your generative AI solutions in just a few minutes with GMI GPU Cloud. GMI Cloud goes beyond simple bare metal offerings by enabling you to train, fine-tune, and run cutting-edge models seamlessly. Our clusters come fully prepared with scalable GPU containers and widely-used ML frameworks, allowing for immediate access to the most advanced GPUs tailored for your AI tasks. Whether you seek flexible on-demand GPUs or dedicated private cloud setups, we have the perfect solution for you. Optimize your GPU utility with our ready-to-use Kubernetes software, which simplifies the process of allocating, deploying, and monitoring GPUs or nodes through sophisticated orchestration tools. You can customize and deploy models tailored to your data, enabling rapid development of AI applications. GMI Cloud empowers you to deploy any GPU workload swiftly and efficiently, allowing you to concentrate on executing ML models instead of handling infrastructure concerns. Launching pre-configured environments saves you valuable time by eliminating the need to build container images, install software, download models, and configure environment variables manually. Alternatively, you can utilize your own Docker image to cater to specific requirements, ensuring flexibility in your development process. With GMI Cloud, you'll find that the path to innovative AI applications is smoother and faster than ever before.
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    KServe Reviews
    KServe is a robust model inference platform on Kubernetes that emphasizes high scalability and adherence to standards, making it ideal for trusted AI applications. This platform is tailored for scenarios requiring significant scalability and delivers a consistent and efficient inference protocol compatible with various machine learning frameworks. It supports contemporary serverless inference workloads, equipped with autoscaling features that can even scale to zero when utilizing GPU resources. Through the innovative ModelMesh architecture, KServe ensures exceptional scalability, optimized density packing, and smart routing capabilities. Moreover, it offers straightforward and modular deployment options for machine learning in production, encompassing prediction, pre/post-processing, monitoring, and explainability. Advanced deployment strategies, including canary rollouts, experimentation, ensembles, and transformers, can also be implemented. ModelMesh plays a crucial role by dynamically managing the loading and unloading of AI models in memory, achieving a balance between user responsiveness and the computational demands placed on resources. This flexibility allows organizations to adapt their ML serving strategies to meet changing needs efficiently.
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    Lamini Reviews

    Lamini

    Lamini

    $99 per month
    Lamini empowers organizations to transform their proprietary data into advanced LLM capabilities, providing a platform that allows internal software teams to elevate their skills to match those of leading AI teams like OpenAI, all while maintaining the security of their existing systems. It ensures structured outputs accompanied by optimized JSON decoding, features a photographic memory enabled by retrieval-augmented fine-tuning, and enhances accuracy while significantly minimizing hallucinations. Additionally, it offers highly parallelized inference for processing large batches efficiently and supports parameter-efficient fine-tuning that scales to millions of production adapters. Uniquely, Lamini stands out as the sole provider that allows enterprises to safely and swiftly create and manage their own LLMs in any environment. The company harnesses cutting-edge technologies and research that contributed to the development of ChatGPT from GPT-3 and GitHub Copilot from Codex. Among these advancements are fine-tuning, reinforcement learning from human feedback (RLHF), retrieval-augmented training, data augmentation, and GPU optimization, which collectively enhance the capabilities of AI solutions. Consequently, Lamini positions itself as a crucial partner for businesses looking to innovate and gain a competitive edge in the AI landscape.
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    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.
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    Pruna AI Reviews

    Pruna AI

    Pruna AI

    $0.40 per runtime hour
    Pruna leverages generative AI technology to help businesses generate high-quality visual content swiftly and cost-effectively. It removes the conventional requirements for studios and manual editing processes, allowing brands to effortlessly create tailored and uniform images for advertising, product showcases, and online campaigns. This innovation significantly streamlines the content creation process, enhancing efficiency and creativity for various marketing needs.
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    Amazon EC2 G5 Instances Reviews
    The Amazon EC2 G5 instances represent the newest generation of NVIDIA GPU-powered instances, designed to cater to a variety of graphics-heavy and machine learning applications. They offer performance improvements of up to three times for graphics-intensive tasks and machine learning inference, while achieving a remarkable 3.3 times increase in performance for machine learning training when compared to the previous G4dn instances. Users can leverage G5 instances for demanding applications such as remote workstations, video rendering, and gaming, enabling them to create high-quality graphics in real time. Additionally, these instances provide machine learning professionals with an efficient and high-performing infrastructure to develop and implement larger, more advanced models in areas like natural language processing, computer vision, and recommendation systems. Notably, G5 instances provide up to three times the graphics performance and a 40% improvement in price-performance ratio relative to G4dn instances. Furthermore, they feature a greater number of ray tracing cores than any other GPU-equipped EC2 instance, making them an optimal choice for developers seeking to push the boundaries of graphical fidelity. With their cutting-edge capabilities, G5 instances are poised to redefine expectations in both gaming and machine learning sectors.
  • 9
    NVIDIA NIM Reviews
    Investigate the most recent advancements in optimized AI models, link AI agents to data using NVIDIA NeMo, and deploy solutions seamlessly with NVIDIA NIM microservices. NVIDIA NIM comprises user-friendly inference microservices that enable the implementation of foundation models across various cloud platforms or data centers, thereby maintaining data security while promoting efficient AI integration. Furthermore, NVIDIA AI offers access to the Deep Learning Institute (DLI), where individuals can receive technical training to develop valuable skills, gain practical experience, and acquire expert knowledge in AI, data science, and accelerated computing. AI models produce responses based on sophisticated algorithms and machine learning techniques; however, these outputs may sometimes be inaccurate, biased, harmful, or inappropriate. Engaging with this model comes with the understanding that you accept the associated risks of any potential harm stemming from its responses or outputs. As a precaution, refrain from uploading any sensitive information or personal data unless you have explicit permission, and be aware that your usage will be tracked for security monitoring. Remember, the evolving landscape of AI requires users to stay informed and vigilant about the implications of deploying such technologies.
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    Tenstorrent DevCloud Reviews
    We created Tenstorrent DevCloud to enable users to experiment with their models on our servers without the need to invest in our hardware. By developing Tenstorrent AI in the cloud, we allow developers to explore our AI offerings easily. The initial login is complimentary, after which users can connect with our dedicated team to better understand their specific requirements. Our team at Tenstorrent consists of highly skilled and enthusiastic individuals united in their goal to create the ultimate computing platform for AI and software 2.0. As a forward-thinking computing company, Tenstorrent is committed to meeting the increasing computational needs of software 2.0. Based in Toronto, Canada, Tenstorrent gathers specialists in computer architecture, foundational design, advanced systems, and neural network compilers. Our processors are specifically designed for efficient neural network training and inference while also capable of handling various types of parallel computations. These processors feature a network of cores referred to as Tensix cores, which enhance performance and scalability. With a focus on innovation and cutting-edge technology, Tenstorrent aims to set new standards in the computing landscape.
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    EdgeCortix Reviews
    Pushing the boundaries of AI processors and accelerating edge AI inference is essential in today’s technological landscape. In scenarios where rapid AI inference is crucial, demands for increased TOPS, reduced latency, enhanced area and power efficiency, and scalability are paramount, and EdgeCortix AI processor cores deliver precisely that. While general-purpose processing units like CPUs and GPUs offer a degree of flexibility for various applications, they often fall short when faced with the specific demands of deep neural network workloads. EdgeCortix was founded with a vision: to completely transform edge AI processing from its foundations. By offering a comprehensive AI inference software development environment, adaptable edge AI inference IP, and specialized edge AI chips for hardware integration, EdgeCortix empowers designers to achieve cloud-level AI performance directly at the edge. Consider the profound implications this advancement has for a myriad of applications, including threat detection, enhanced situational awareness, and the creation of more intelligent vehicles, ultimately leading to smarter and safer environments.
  • 12
    Second State Reviews
    Lightweight, fast, portable, and powered by Rust, our solution is designed to be compatible with OpenAI. We collaborate with cloud providers, particularly those specializing in edge cloud and CDN compute, to facilitate microservices tailored for web applications. Our solutions cater to a wide array of use cases, ranging from AI inference and database interactions to CRM systems, ecommerce, workflow management, and server-side rendering. Additionally, we integrate with streaming frameworks and databases to enable embedded serverless functions aimed at data filtering and analytics. These serverless functions can serve as database user-defined functions (UDFs) or be integrated into data ingestion processes and query result streams. With a focus on maximizing GPU utilization, our platform allows you to write once and deploy anywhere. In just five minutes, you can start utilizing the Llama 2 series of models directly on your device. One of the prominent methodologies for constructing AI agents with access to external knowledge bases is retrieval-augmented generation (RAG). Furthermore, you can easily create an HTTP microservice dedicated to image classification that operates YOLO and Mediapipe models at optimal GPU performance, showcasing our commitment to delivering efficient and powerful computing solutions. This capability opens the door for innovative applications in fields such as security, healthcare, and automatic content moderation.
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    Open WebUI Reviews
    Open WebUI is a robust, user-friendly, and customizable AI platform that is self-hosted and capable of functioning entirely without an internet connection. It is compatible with various LLM runners, such as Ollama, alongside APIs that align with OpenAI standards, and features an integrated inference engine that supports Retrieval Augmented Generation (RAG), positioning it as a formidable choice for AI deployment. Notable aspects include an easy installation process through Docker or Kubernetes, smooth integration with OpenAI-compatible APIs, detailed permissions, and user group management to bolster security, as well as a design that adapts well to different devices and comprehensive support for Markdown and LaTeX. Furthermore, Open WebUI presents a Progressive Web App (PWA) option for mobile usage, granting users offline access and an experience akin to native applications. The platform also incorporates a Model Builder, empowering users to develop tailored models from base Ollama models directly within the system. With a community of over 156,000 users, Open WebUI serves as a flexible and secure solution for the deployment and administration of AI models, making it an excellent choice for both individuals and organizations seeking offline capabilities. Its continuous updates and feature enhancements only add to its appeal in the ever-evolving landscape of AI technology.
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    VLLM Reviews
    VLLM is an advanced library tailored for the efficient inference and deployment of Large Language Models (LLMs). Initially created at the Sky Computing Lab at UC Berkeley, it has grown into a collaborative initiative enriched by contributions from both academic and industry sectors. The library excels in providing exceptional serving throughput by effectively handling attention key and value memory through its innovative PagedAttention mechanism. It accommodates continuous batching of incoming requests and employs optimized CUDA kernels, integrating technologies like FlashAttention and FlashInfer to significantly improve the speed of model execution. Furthermore, VLLM supports various quantization methods, including GPTQ, AWQ, INT4, INT8, and FP8, and incorporates speculative decoding features. Users enjoy a seamless experience by integrating easily with popular Hugging Face models and benefit from a variety of decoding algorithms, such as parallel sampling and beam search. Additionally, VLLM is designed to be compatible with a wide range of hardware, including NVIDIA GPUs, AMD CPUs and GPUs, and Intel CPUs, ensuring flexibility and accessibility for developers across different platforms. This broad compatibility makes VLLM a versatile choice for those looking to implement LLMs efficiently in diverse environments.
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