New York Tech Media
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital
No Result
View All Result
New York Tech Media
No Result
View All Result
Home AI & Robotics

Choosing Storage to Support AI/ML Initiatives

New York Tech Editorial Team by New York Tech Editorial Team
December 15, 2021
in AI & Robotics
0
Choosing Storage to Support AI/ML Initiatives
Share on FacebookShare on Twitter

By Candida Valois, Field CTO, Americas, Scality

Adoption of ML and AI continues to increase quickly, which isn’t surprising, given the business insights and industry transformation that its many use cases portend. PwC predicts that by 2030, AI could contribute almost $16 trillion to the global economy. That translates to a 26% increase in GDP for local economies.

These technologies require vast amounts of unstructured data to operate, and that data often comes in the form of videos, images, text and voice. Workloads of these types require a new approach to data storage; the old ways won’t suffice. With the advent of such workloads, applications need faster access to massive amounts of data – data that is created everywhere: in the cloud, at the edges and on-premises. These intensive workloads require low latency, the ability to support different types and sizes of payloads, and the ability to scale linearly.

What’s needed is a fresh approach to data delivery, one that is application-centric rather than location- or technology-centric. With the large-scale adoption of AI/ML and analytics, enterprise IT leaders need a significant shift in the way they think about data management and storage.

Handling all file sizes

In terms of AI/ML workloads and data storage, organizations need a solution that can handle different types of workloads, both small and large files. In some cases, you may need to deal with just a few tens of terabytes, while in others, there are many petabytes. Not all solutions are meant for huge files, just as not all can handle very small ones. The trick is finding one that can handle both in a flexible manner.

Scalability is essential

To ensure accuracy and speed, organizations require massive data sets because that’s what AI/ML algorithms need to properly train underlying models. Organizations want to grow in terms of capacity and performance but are often hampered by traditional storage solutions. When they try to scale linearly, they are unable to. AI/ML workloads require a storage solution that can scale infinitely as the data grows.

A few hundred terabytes maxes out standard file and block storage solutions; after that, they can’t scale. Object storage can scale limitlessly, elastically and seamlessly based on demand. And what’s important about object storage compared with traditional storage is that it’s a completely flat space in which there are no limitations. Users won’t encounter the limitations they’d find with traditional storage.

Meeting performance requirements

Capacity scaling is important, but it isn’t enough. Organizations also need the ability to scale linearly in terms of performance. Unfortunately, with many traditional storage solutions, scaling capacity comes at the expense of performance. So, when an organization needs to scale linearly in terms of capacity, performance tends to plateau or decline.

The standard storage paradigm consists of files organized into a hierarchy, with directories and sub-directories. This architecture works quite well when the data capacity is small, but as capacity grows, performance suffers at a certain point due to system bottlenecks and limitations with file lookup tables. However, object storage provides an unlimited flat namespace so that by simply adding additional nodes, you can scale to petabytes and beyond. For this reason, you can scale for performance as you scale for capacity.

Storage that can support AI/ML projects

Organizations must adopt a new way of looking at storage as AI and ML rise in popularity. This new approach must empower them to establish, run and scale their AI/ML initiatives in the proper manner. AI/ML training is a clear need, so some of the enterprise-grade object storage software available today is built to fulfill that need. Enterprises can begin their initiatives on a small scale, starting with one server, then scale out as needed for both capacity and performance. These projects also crucially need performance for their analytics applications, and fast object storage delivers it. In addition, object storage provides complete data lifecycle management across multiple clouds and enables flexibility from the edge to the core.

Enterprises need to process data efficiently, and object storage does this by letting applications easily access data on-premises, even in multiple clouds. Its low latency, scalability and flexibility make object storage a strong ally for AI/ML initiatives.

Credit: Source link

Previous Post

This new food truck coming to the South Bay is a robotic pizza-making machine – Daily Breeze

Next Post

DeciBio Consulting Announces Debut Venture Fund, DeciBio Ventures, to Support Ground-Breaking Precision Medicine Companies

New York Tech Editorial Team

New York Tech Editorial Team

New York Tech Media is a leading news publication that aims to provide the latest tech news, fintech, AI & robotics, cybersecurity, startups & leaders, venture capital, and much more!

Next Post
DeciBio Consulting Announces Debut Venture Fund, DeciBio Ventures, to Support Ground-Breaking Precision Medicine Companies

DeciBio Consulting Announces Debut Venture Fund, DeciBio Ventures, to Support Ground-Breaking Precision Medicine Companies

  • Trending
  • Comments
  • Latest
Meet the Top 10 K-Pop Artists Taking Over 2024

Meet the Top 10 K-Pop Artists Taking Over 2024

March 17, 2024
Panther for AWS allows security teams to monitor their AWS infrastructure in real-time

Many businesses lack a formal ransomware plan

March 29, 2022
Zach Mulcahey, 25 | Cover Story | Style Weekly

Zach Mulcahey, 25 | Cover Story | Style Weekly

March 29, 2022
How To Pitch The Investor: Ronen Menipaz, Founder of M51

How To Pitch The Investor: Ronen Menipaz, Founder of M51

March 29, 2022
10 Raunchy Movies on Netflix You Won’t Regret Watching

10 Raunchy Movies on Netflix You Won’t Regret Watching

May 20, 2024
Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

Japanese Space Industry Startup “Synspective” Raises US $100 Million in Funding

March 29, 2022
Startups On Demand: renovai is the Netflix of Online Shopping

Startups On Demand: renovai is the Netflix of Online Shopping

2
Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

Robot Company Offers $200K for Right to Use One Applicant’s Face and Voice ‘Forever’

1
Menashe Shani Accessibility High Tech on the low

Revolutionizing Accessibility: The Story of Purple Lens

1

Netgear announces a $1,500 Wi-Fi 6E mesh router

0
These apps let you customize Windows 11 to bring the taskbar back to life

These apps let you customize Windows 11 to bring the taskbar back to life

0
This bipedal robot uses propeller arms to slackline and skateboard

This bipedal robot uses propeller arms to slackline and skateboard

0
laptop on glass table

Automat-it Cuts Deployment Friction as Monce Scales AI Order Processing on AWS

April 13, 2026
Lee's Famous Recipe Chicken

Why Lee’s Famous Recipe Chicken Is Betting on Hi Auto to Quietly Rewire the Drive-Thru

April 9, 2026
computer generated image of letters

San Francisco Tribune Lists 11 HumanX Startups Moving AI Closer to the Operating Core

April 8, 2026
Impala CEO and Highrise AI CEO

The Industrialization of AI Infrastructure: What Impala and Highrise AI Reveal About the Next Scaling Frontier

April 7, 2026
Employee Time Tracking

What is an Employee Time Tracking Solution? A Definite Guide for 2026

March 31, 2026
Voltify founders

Voltify Raises $30 Million Seed Round as It Challenges $1 Trillion Rail Electrification Model

March 31, 2026

Recommended

laptop on glass table

Automat-it Cuts Deployment Friction as Monce Scales AI Order Processing on AWS

April 13, 2026
Lee's Famous Recipe Chicken

Why Lee’s Famous Recipe Chicken Is Betting on Hi Auto to Quietly Rewire the Drive-Thru

April 9, 2026
computer generated image of letters

San Francisco Tribune Lists 11 HumanX Startups Moving AI Closer to the Operating Core

April 8, 2026
Impala CEO and Highrise AI CEO

The Industrialization of AI Infrastructure: What Impala and Highrise AI Reveal About the Next Scaling Frontier

April 7, 2026

Categories

  • AI & Robotics
  • Benzinga
  • Cybersecurity
  • FinTech
  • New York Tech
  • News
  • Startups & Leaders
  • Venture Capital

Tags

AI AI QSRs Allseated Automat-it AWS B2B marketing Business CISO CISO Whisperer Collaborations Companies To Watch cryptocurrency Cybersecurity Entrepreneur Fetcherr Finance FINQ Fintech Funding Announcement hi-tech Hi Auto Impala Investing Investors investorsummit Israel israelitech Leaders LinkedIn Leaders Metaverse Mindset Minnesota omri hurwitz PointFive PR QSR Real Estate start- up startupnation Startups Startups On Demand Tech Tech leaders Unlimited Robotics VC
  • Contact Us
  • Privacy Policy
  • Terms and conditions

© 2024 All Rights Reserved - New York Tech Media

No Result
View All Result
  • News
  • FinTech
  • AI & Robotics
  • Cybersecurity
  • Startups & Leaders
  • Venture Capital

© 2024 All Rights Reserved - New York Tech Media