上海天天彩选四计划:AI / ML from workstation to production

上海天天彩选四公式 www.uhh3o.cn Ubuntu is the platform to power your Artificial Intelligence ambitions — from developer workstations, to racks, to clouds and to the edge with smart connected IoT.

Canonical’s Kubeflow supports the most popular tools for machine learning — starting with JupyterHub and Tensorflow — in a standardised workflow running on Kubernetes.

Get started by installing Kubeflow Call the experts

Develop your AI Models on Ubuntu

Develop AI models on high-end Ubuntu workstations. Train on racks of bare-metal Kubernetes or public clouds with hardware acceleration. Deploy to edge and IoT. All on Ubuntu, delivered by Canonical.

Kubeflow — AI on Kubernetes — anywhere

Google and Canonical collaborate on Kubeflow, a standardised machine learning solution for on-premises and on-cloud training. Leveraging Ubuntu, you benefit from perfect multi-cloud portability of AI/ML workloads.

Workstation AI


Ubuntu-certified workstations from Dell, Lenovo and HP with NVIDIA, microk8s and Kubeflow

  • Accelerate data science
  • Lightest footprint
  • Laptop to workstation
  • GPGPU optional
  • Develop and test AI

Bare metal AI


Kubernetes on bare metal with NVIDIA GPGPU acceleration

  • Highest performance
  • On-premises with local data
  • Hardware recommendations
  • Fully managed options

Google Cloud AI


GKE on Ubuntu with NVIDIA GPGPU acceleration

  • Effectively infinite scale
  • Portable workloads
  • Fastest cloud ML

Canonical Cloud AI


Kubeflow on Kubernetes on Openstack with NVIDIA GPGPU acceleration

  • Maximize benefits of OpenStack
  • On-premises with local data
  • Hardware recommendations
  • Fully managed options

Kubeflow features

Kubeflow brings together all the most popular tools for machine learning, starting with JupyterHub and Tensorflow, in a standardised workflow running on Kubernetes. Optimised on a wide range of hardware and cloud infrastructure, Kubeflow lets your data scientists focus on the pieces that matter to the business.

It is an extensible framework, which allows you to leverage the tools of your choice. Start with Tensorflow and JupyterHub or bring your own frameworks and tools. Combined with Kubeflow’s automation, this will accelerate your machine learning activities — from model development to model training to model sharing.

Initiated by Google on Ubuntu for perfect portability of AI workloads from your workstation, to your data center rack on Canonical’s bare-metal k8s or Canonical’s OpenStack virtualization, to Google’s Cloud Kubernetes service GKE which also runs on Ubuntu. Simple.

Canonical’s Kubeflow and Kubernetes on bare-metal servers, with NVIDIA GPGPUs, provides an ultra high-performance machine learning cluster. Deployment, support, and optional remote management and remote operations make it the best way to accelerate your data science and machine learning.

Canonical has provided both a familiar and highly performant operating system that works everywhere. Whether on-premises or in the cloud, software engineers and data scientists can use tools they are already familiar with, such as Ubuntu, Kubernetes and Kubeflow, and greatly accelerate their ability to deliver value for their customers.

David Aronchick, Google Product Manager for Kubeflow

in partnership with

Consulting to get started, Managed Ops to keep you focused

Turn on the taps with a workshop to understand the full stack of machine learning. Build a full pipeline from developer stations to your data center, to the public cloud. Canonical works with the leading companies to ensure you have the widest range of choices. First, start with one of our standard bare-metal Kubernetes service packages (Discoverer or Discoverer Plus) and then select the AI Add-on to unlock the benefits of AI on Kubernetes.

Learn more about our Kubernetes packages ›

AI add-on for Kubernetes Discoverer and Discoverer Plus

AI/ML pipelines and workflows on Kubernetes

$40,000
Data science add-on to K8s Discoverer or Discoverer Plus. Workshop and readiness assessment covering machine learning using Kubeflow on Kubernetes for model training and analytics. Includes GPGPU and FPGA integration for hardware data science acceleration on k8s.

Workshop

One week workshop dedicated to Kubeflow, including JupyterHub covering everything your business needs for on-prem/off-prem AI/ML operations.

  • On-site or remote options
  • Hands-on Kubernetes and Kubeflow training
  • Framework of choice: TensorFlow, PyTorch, Pachyderm, Seldon Core
  • Full pipeline view

Assessment

Determine the readiness of your existing data science approach and capabilities.

  • Understand AI lifecycle
  • Preliminary data and process discovery
  • Development capacity assessment
  • Deploy and operate ML analysis
  • Finalise initial AI strategy

Get in touch

IoT and Edge AI

Train in the cloud. Act at the edge.

Cameras, music systems, cars, even firewalls and CPE are becoming smarter. From natural language processing to image recognition, from real-time high-speed autonomous navigation to network intrusion detection. Ubuntu gives you a seamless operational framework for development, training and inference all the way out to the edge.

Leaders in artificial intelligence choose Ubuntu

  • Amazon
  • Google
  • Microsoft
  • Tesla
  • OpenAI
  • IBM
  • Facebook

Organizations are increasingly looking to accelerate their deep learning and AI implementations. In addition to using Ubuntu on our DGX systems, we have been working with Canonical to offer Kubernetes on NVIDIA GPUs as a scalable and portable solution for multi-cloud deep learning training and inference workloads.

Duncan Poole, Director of Platform Alliances at NVIDIA

Partner with us

It takes an open ecosystem to solve the diverse challenges of AI infrastructure across every sector and in every region. Our partners ensure that you have the widest range of capabilities available for automated integration in your cloud, and that you can get insight and support locally.

To learn more about our partners or becoming a Canonical AI partner, please contact us today.

Get in touch or learn more about partnering with us

Get started with AI and Machine learning today.

Test drive Kubeflow now

Or contact our experts to get started with consulting, training or outsourced operations.

  • 生发“神药”乱象:广告造假多 一个批号多个名字 2019-05-25
  • 贡宝-热门标签-华商生活 2019-05-25
  • 不好意思了,忘记还有赌球一说。[哈哈] 2019-05-25
  • 申城公交上线扫码乘车 十月底覆盖全市 2019-05-24
  • 2018斐讯新品夏季发布会8日于海南三亚启幕 2019-05-24
  • 中文观潮:世间没有完美 2019-05-23
  • [微笑]所谓的卖地,表面上卖的是土地,实际上卖的是关联资源!这就是为什么同样面积的土地处于不同的城市不同的地段,价值可以有云泥之别的原因。 2019-05-23
  • 死人当被告被判偿还5万债务?原判决被中止执行 2019-05-23
  • 看来“无名小卒也”这样的网民在公有制企业里有一大批,那么公有制企业一定会发展的快,搞的好,呵呵。 2019-05-22
  • 最悲催的吃货:7年前花1万比特币买两个披萨现在值2亿 2019-05-22
  • 人民日报长篇述评:风雨兼程  与党和人民同行——写在人民日报创刊七十周年之际 2019-05-22
  • 奥迪汽车排放造假事件再度发酵 董事长在德国被捕 2019-05-21
  • 女性之声——全国妇联 2019-05-21
  • 数十年月球温度上升谜团解开:都是美国惹的祸 2019-05-21
  • 野猪成功"预测"特朗普当总统 现给出世界杯4强名单 2019-05-21
  • 420| 161| 158| 410| 358| 120| 495| 916| 316| 547|