Hybrid cloud is to AI, what broadband was to the internet

Hybrid cloud is to AI, what broadband was to the internet

Looking back on Think a few weeks ago, there was so much excitement around watsonx and generative AI. It helped me realize something: Hybrid cloud is the accelerant to AI adoption. It will do for AI adoption what broadband did for the internet.

Companies that build enterprise software solutions with hybrid cloud and AI as the foundation will be the ones that succeed. They will be better positioned to use their data effectively, efficiently and ethically. They will be better able to extend AI deep into their businesses and create unique competitive advantages. They will most likely beat those that do not.

There are three ways hybrid cloud is accelerating AI adoption:?

1. Unlocking the value of the data powering AI

?AI is only as good as the data that fuels it. But it’s not just about having the right data. Before it can be used effectively, that data must first be secure and accessible.

The challenge is that for most organizations, data is spread across multiple clouds, on prem, in private datacenters and at the edge. And data complexity is only getting worse. According to IDC, stored data will grow 250% by 2025 (1). Without better data management, finding the right data and putting it to use will only get more difficult.

Leaders must rethink ineffective and monolithic data architectures in favor of infrastructure that allows them to leverage data, wherever it resides. To do that, companies across industries are adopting hybrid cloud for the accessibility and flexibility it enables. Hybrid cloud strategies provide the data foundation needed to scale and operationalize AI, meaning the models the data feeds will be more accurate and enable more informed decision-making.

?2. Making better use of IT spend

A major constraint to AI adoption has been price. A common issue is that the costs of training and running models are hidden from the business, meaning there can be a disconnect between the value generated from a model and the engineering and compute resources needed to train and deploy it. That lack of visibility can prevent IT leaders from understanding and optimizing their spend, which is why many are taking advantage of hybrid cloud to support their AI investments.

We have worked with many organizations to use data to solve complex problems, including a marketing platform that helps retailers and nonprofits predict which consumers will be most receptive to different marketing campaigns. Moving to the cloud increased the platform’s ability to manage its data and leverage all its data assets, both offline and online. In addition to improving the performance of the models by 30%, the new infrastructure gave leaders visibility of training costs, which dramatically reduced from $1,500 per training run to hundreds of dollars per training run (2).

Think about what delivering better insights at a lower cost can do for an organization. That’s the impact that the combination of AI and hybrid cloud creates.?

3. Building trust into AI models

The mass adoption of AI hinges on trust. AI must be explainable, fair, robust and transparent. It also must prioritize and safeguard consumers’ privacy and data. ?

Building AI solutions on a hybrid cloud architecture can enable the ongoing AI and data lifecycle management needed to engender that trust by ensuring proper governance and data security.

Compliance and security controls need to be built into a hybrid cloud architecture, so companies can determine who gets access to what and when and automate their compliance controls with the ever-expanding set of regulations. Hybrid cloud can also enable the real-time visibility needed to monitor model performance, detect security threats and mitigate bias -- all situations where system failure can result in the loss of your customers’ trust.?

***

Hybrid cloud has accelerated AI adoption because of the visibility, scalability and security it provides. And it’s only going to become more important as more companies adopt AI-first mindsets and build their businesses around a technology with the potential to radically transform business and society forever.

Because of this, infrastructure is an essential consideration of any enterprise AI strategy. In order for AI to fully deliver its value, how the data is stored, shared and protected can’t be overlooked in favor of what you want your application to do. Your first step must be deciding how to do all that in ways that are fit to your organization, customers and industry: from the integration and cataloging of data to model building and deployment to evaluating performance and finding ways to improve.??????????????????????????????????????????????????

1.???Worldwide IDC Global DataSphere Forecast, 2022-2026, IDC, May 2022.

2.???How to create business value with AI https://www.ibm.com/thought-leadership/institute-business-value/en-us/report/ai-examples

Subhrendu Sinha

Sr Manager Civil/Expert at RVNL

1 年

Love this

回复
Thanos Paraschos

Impactechpreneur, Angel Investor. We're investing ??

1 年

Very interesting! Thank you for sharing this Daniel X.!

回复
Ramesh Kumar Jha

Spl Director General, RDSO, Lucknow - Ministry of Railways

1 年

??

回复
Sanjay Krishna Saxena

Sanjay K Saxena Director (WW IBM SW Licensing & Sales) IBM-Kyndryl Project Office IBM S&A Partial Renewals Project Office IBM Team SAM & Licensing Microsite

1 年

??

回复
Mary Beth Henderson

Retired from IBM Corporation

1 年

Dinesh ??

回复

要查看或添加评论,请登录

Dinesh Nirmal的更多文章

  • Keeping up with AI and Data Science Trends

    Keeping up with AI and Data Science Trends

    Not surprisingly, the topics and tools around deep learning (DL) still top the list of big trends, and top-notch…

  • Db2 turns 35.

    Db2 turns 35.

    Db2 for z/OS is one the most business critical products in the IBM portfolio remaining core to many transaction…

  • The Five Pillars of Fluid ML

    The Five Pillars of Fluid ML

    We need to embrace the fact that machine learning will only work over the long term if it’s "fluid". In this case…

  • Introducing the Data Science Elite Team.

    Introducing the Data Science Elite Team.

    IBM’s newest commitment to helping #datascience flourish towards the path to #AI: the Data Science Elite Team, a…

    3 条评论
  • IBM Cloud Private for Data

    IBM Cloud Private for Data

    Establish the building blocks of #AI with no assembly required. Announcing IBM Cloud Private for Data, an engineered…

  • Operationalizing Machine Learning.

    Operationalizing Machine Learning.

    Listen to my 5 minute talk at the Strata 2018 conference on Operationalizing Machine Learning. Let me introduce you to…

  • Enabling Faster, more effective Data Science. Preconfigured, ready-to-go!

    Enabling Faster, more effective Data Science. Preconfigured, ready-to-go!

    I meet business and technology leaders across many organizations and one of the recurring themes I hear is the need for…

  • A.I. - helping to solve some of humanity's greatest challenges.

    A.I. - helping to solve some of humanity's greatest challenges.

    I talk with Mihai Nicolae about his work on machine learning and Artificial Intelligence and how it is leveraging the…

  • Data Science Experience Comes to a Powerful, Open, Big Data Platform

    Data Science Experience Comes to a Powerful, Open, Big Data Platform

    I have just finished presenting at the DataWorks Summit in San Jose. CA.

  • Machine Learning needs governance.

    Machine Learning needs governance.

    Machine Learning and Governance - a necessary discussion for any Chief Data Officer. Click the link to read the full…

社区洞察

其他会员也浏览了