Friday, February 26, 2021
  • Setup menu at Appearance » Menus and assign menu to Top Bar Navigation
Advertisement
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News
No Result
View All Result
NikolaNews
No Result
View All Result
Home Machine Learning

Deploying Machine Learning Has Never Been This Easy

June 19, 2020
in Machine Learning
Deploying Machine Learning Has Never Been This Easy
586
SHARES
3.3k
VIEWS
Share on FacebookShare on Twitter

According to PwC, AI’s potential global economic impact will reach USD 15.7 trillion by 2030. However, the enterprises who look to deploy AI are often hampered by the lack of time, trust and talent. Especially, with the highly regulated sectors such as healthcare and finance, convincing the customers to imbibe AI methodologies is an uphill task.

Of late, the AI community has seen a sporadic shift in AI adoption with the advent of AutoML tools and introduction of customised hardware to cater to the needs of the algorithms. One of the most widely used AutoML tools in the industry is H2O Driverless AI. And, when it comes to hardware Intel has been consistently updating its tool stack to meet the high computational demands of the AI workflows.

You might also like

New machine learning tool facilitates analysis of health information, clinical forecasting

Supercomputer-Powered Machine Learning Supports Fusion Energy Reactor Design

Something’s Fishy — New Funding To Tackle Illegal Activities At Sea Using Machine Learning And Data Analytics

To download the complete case study, click here.

Now H2O.ai and Intel, two companies who have been spearheading the democratisation of the AI movement, join hands to develop solutions that leverage software and hardware capabilities respectively.


How AutoML and Customised Hardware Can Accelerate AI Adoption

AI and machine-learning workflows are complex and enterprises need more confidence in the validity of their AI models than a typical black-box environment can provide. The inexplicability and the complexity of feature engineering can be daunting to the non-experts. So far AutoML has proven to be the one stop solution to all these problems. These tools have alleviated the  challenges by providing automated workflows, code ready deployable models and many more.

H2O.ai especially, has pioneered in the AutoML segment. They have developed an open source, distributed in-memory machine learning platform with linear scalability that includes a module called H2OAutoML, which can be used for automating the machine learning workflow,  that includes automatic training and tuning of many models within a user-specified time-limit.

Whereas, H2O.ai’s flagship product Driverless AI can be used to fully automate some of the most challenging and productive tasks in applied data science such as feature engineering, model tuning, model ensembling and model deployment.

But, for these AI based tools to work seamlessly, they need the backing of hardware that is dedicated to handle the computational intensity of machine learning operations.

Intel has been at the forefront of digital revolution for over half a century. Today, Intel® flaunts a wide range of technologies, including its Xeon® Scalable processors, Optane™ Solid State Drives and optimized Intel® software libraries that bring in a much needed mix of enhanced performance, AI inference, network functions, persistent memory bandwidth, and security.

Integrating H2O.ai’s software portfolio with hardware and software technologies from Intel has resulted in solutions that can handle almost all the woes of an AI enterprise from automated workflows to explainability to production ready code that can be deployed anywhere.

For example, H2O Driverless AI, an automatic machine-learning platform enables data science experts and beginners to streamline their AI tasks within minutes that usually take months. Today, more than 18,000 companies use open source H2O in mission-critical use cases for finance, insurance, healthcare, retail, telco, sales, and marketing.

The software capabilities of H2O.ai combined with hardware infrastructure of Intel, that includes 2nd Generation Xeon® Scalable processors, Optane™ Solid State Drives and Ethernet Network Adapters, can empower enterprises to optimize performance and accelerate deployment.

Enterprises that are looking for increasing productivity while increasing the business value of to enjoy the competitive advantages of AI innovation no longer have to wait thanks to hardware backed AutoML solutions.

To download the complete case study, click here.


Provide your comments below

comments


Credit: Google News

Previous Post

Lion faces further 'setbacks' as it recovers from ransomware attack

Next Post

Oil & Gas Industry Transforming Itself with the Help of AI

Related Posts

Basic laws of physics spruce up machine learning
Machine Learning

New machine learning tool facilitates analysis of health information, clinical forecasting

February 26, 2021
Supercomputer-Powered Machine Learning Supports Fusion Energy Reactor Design
Machine Learning

Supercomputer-Powered Machine Learning Supports Fusion Energy Reactor Design

February 26, 2021
Something’s Fishy — New Funding To Tackle Illegal Activities At Sea Using Machine Learning And Data Analytics
Machine Learning

Something’s Fishy — New Funding To Tackle Illegal Activities At Sea Using Machine Learning And Data Analytics

February 26, 2021
Cloudera aims to fast track enterprise machine learning use cases with Applied ML Prototypes
Machine Learning

Cloudera aims to fast track enterprise machine learning use cases with Applied ML Prototypes

February 25, 2021
Machine learning‐based analysis of alveolar and vascular injury in SARS‐CoV‐2 acute respiratory failure – Calabrese – – The Journal of Pathology
Machine Learning

Machine learning‐based analysis of alveolar and vascular injury in SARS‐CoV‐2 acute respiratory failure – Calabrese – – The Journal of Pathology

February 25, 2021
Next Post
Oil & Gas Industry Transforming Itself with the Help of AI

Oil & Gas Industry Transforming Itself with the Help of AI

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Recommended

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

Plasticity in Deep Learning: Dynamic Adaptations for AI Self-Driving Cars

January 6, 2019
Microsoft, Google Use Artificial Intelligence to Fight Hackers

Microsoft, Google Use Artificial Intelligence to Fight Hackers

January 6, 2019

Categories

  • Artificial Intelligence
  • Big Data
  • Blockchain
  • Crypto News
  • Data Science
  • Digital Marketing
  • Internet Privacy
  • Internet Security
  • Learn to Code
  • Machine Learning
  • Marketing Technology
  • Neural Networks
  • Technology Companies

Don't miss it

This chart shows the connections between cybercrime groups
Internet Security

This chart shows the connections between cybercrime groups

February 26, 2021
Basic laws of physics spruce up machine learning
Machine Learning

New machine learning tool facilitates analysis of health information, clinical forecasting

February 26, 2021
Creative Destruction and Godlike Technology in the 21st Century | by Madhav Kunal
Neural Networks

Creative Destruction and Godlike Technology in the 21st Century | by Madhav Kunal

February 26, 2021
Spy agency: Artificial intelligence is already a vital part of our missions
Internet Security

Spy agency: Artificial intelligence is already a vital part of our missions

February 26, 2021
Blockchain lags behind other technologies in finance adoption for now, says Broadridge
Blockchain

Blockchain lags behind other technologies in finance adoption for now, says Broadridge

February 26, 2021
Supercomputer-Powered Machine Learning Supports Fusion Energy Reactor Design
Machine Learning

Supercomputer-Powered Machine Learning Supports Fusion Energy Reactor Design

February 26, 2021
NikolaNews

NikolaNews.com is an online News Portal which aims to share news about blockchain, AI, Big Data, and Data Privacy and more!

What’s New Here?

  • This chart shows the connections between cybercrime groups February 26, 2021
  • New machine learning tool facilitates analysis of health information, clinical forecasting February 26, 2021
  • Creative Destruction and Godlike Technology in the 21st Century | by Madhav Kunal February 26, 2021
  • Spy agency: Artificial intelligence is already a vital part of our missions February 26, 2021

Subscribe to get more!

© 2019 NikolaNews.com - Global Tech Updates

No Result
View All Result
  • AI Development
    • Artificial Intelligence
    • Machine Learning
    • Neural Networks
    • Learn to Code
  • Data
    • Blockchain
    • Big Data
    • Data Science
  • IT Security
    • Internet Privacy
    • Internet Security
  • Marketing
    • Digital Marketing
    • Marketing Technology
  • Technology Companies
  • Crypto News

© 2019 NikolaNews.com - Global Tech Updates