• Bhubaneswar India
  • Contact+ 91-9938772605
  • Mon - Sat : 10:00AM - 6:00PM

Tag: NetApp

New Market Research Finds Up to 20% of AI Initiatives Fail Without Intelligent Data Infrastructure

May 7, 2024 

San Jose, Calif., United States

NetApp® (NASDAQ: NTAP), the intelligent data infrastructure company, today unveiled insights from its latest report on the evolving landscape of AI in the enterprise. The IDC White Paper, sponsored by NetApp, “Scaling AI Initiatives Responsibly: The Critical Role of an Intelligent Data Infrastructure*,” reveals the various challenges and business benefits at different levels of AI maturity and provides insights into the successful strategies adopted by leading organizations in their efforts to responsibly scale AI and GenAI workloads. By spotlighting actionable approaches, the report aims to help organizations avoid common pitfalls, ensuring that their AI initiatives are not one of the 20% that are likely to fail. The report also introduces a detailed AI maturity model developed to assess organizational progress based on their approach to AI, from AI Emergents and AI Pioneers, to AI Leaders and AI Masters

Intelligent Data Infrastructure is the Foundation of AI Success

The IDC White Paper found that:

AI Masters optimize their data infrastructure for transformational AI initiatives by facilitating easy access to corporate datasets with minimal preparation and designing a unified, hybrid, multicloud environment that supports various data types and access methods.
AI Masters have more ambitious AI goals and yet experience data-related failures including infrastructure-based data access limitations (21%), compliance limitations (16%), and insufficient data (17%).
AI Emergents note similar challenges but also experience budget constraints (20% Emergents vs 9% AI Masters), insufficient data for model training (26% vs 17%) and business restrictions on data access (28% vs 20%).

According to the findings, organizations need an intelligent data infrastructure in order to scale AI initiatives responsibly. Where a company falls on the AI maturity scale is determined by the level of infrastructure they have in place that will not only drive the long-term success of AI projects, but also of their associated business outcomes. Those organizations that are just beginning or have recently begun their AI journey typically have disparate data architectures or plans for a more unified architecture, while AI Leaders and AI Masters are likely already executing on a unified vision. As a result, organizations with the most AI experience are failing less.

“This IDC White Paper further solidifies that companies need intelligent data infrastructure to scale AI responsibly and boost the rate of AI initiative success,” said Jonsi Stefansson, Senior Vice President and Chief Technology Officer at NetApp. “With intelligent data infrastructure in place, companies have the flexibility to access any data, anywhere with integrated data management to ensure data security, protection, and governance and adaptive operations that can optimize performance, cost and sustainability.”

Data Infrastructure Flexibility is Crucial for Data Access and AI Initiative Success

The IDC White Paper found that:

48% of AI Masters report they have instant availability of their structured data and 43% of their unstructured data, while AI Emergents have only 26% and 20% respectively.
AI Masters (65%) and AI Emergents (35%) reported their current data architectures can seamlessly integrate their organization’s private data with AI Cloud services.

According to the research, AI Masters know that their data architecture and infrastructure for transformational AI initiatives must offer ease of access to corporate data sets without any—or with only minor—preparation or preprocessing.

“Infrastructure decisions made during the design and planning process of AI Initiatives must factor in architecture flexibility,” said Ritu Jyoti Group Vice President, Worldwide Artificial Intelligence and Automation Research Practice, Global AI Research Lead, at IDC. “The dynamic nature of data inputs to AI and GenAI workstreams means easy access to distributed and diverse data—both structured and unstructured data sets with varying characteristics—is critical. This requires a flexible, unified approach to storage, a common control plane, and management tools that make it seamless for data scientists and developers to consume data with MLOps integrations.”

Effective Data Governance and Security Processes Drive AI Success

The IDC White Paper found that:

The inability for AI Emergents to progress is often due to a lack of standardized governance policies and procedures; only 8% of AI Emergents have completed and standardized these across all AI projects, compared to 38% of AI Masters.
While 51% of AI Masters reported they have standardized policies in place that are rigorously enforced by an independent group in their organization, only 3% of AI Emergents claim this.

The study found that effective data governance and security are crucial indicators of organizational maturity in AI initiatives. Managing data responsibly and securely remains a key issue for enterprises, because AI stakeholders often try to shortcut security processes to accelerate development. Feedback from organizations that have become more successful at delivering positive outcomes from their AI initiatives demonstrates that governance and security are not merely cost centers but vital enablers of innovation. By prioritizing security, data sovereignty, and regulatory compliance, organizations can mitigate risk in their AI and GenAI initiatives and ensure that their data engineers and scientists can focus on maximizing efficiency and productivity.

Efficient Use of Resources Important for Scaling AI Responsibly

The IDC White Paper found that:

43% of AI Masters have clearly defined metrics for assessing resource efficiency when developing AI models that were completed and standardized across all AI projects compared to 9% of AI Emergents.
63% of all respondents reported the need for major improvements or a complete overhaul to ensure their storage is optimized for AI and only 14% indicated they needed no improvements.

As AI workflows become increasingly integral to almost every industry, it’s critical to acknowledge the impact on compute and storage infrastructure, data and energy resources, and their associated costs. A key measure of AI maturity is the definition and implementation of metrics to assess the efficiency of resource use in the creation of AI models.

Methodology

In December of 2023 and January of 2024, IDC conducted 24 in-depth interviews and 1,220 quantitative interviews by web survey with global decision makers involved in IT operations, data science, data engineering and software development related to AI initiatives. These interviews revealed in-depth information about the state of AI initiatives today including the array of challenges, numerous business benefits, and best practices that leading organizations have taken to achieve success.

In conducting this analysis IDC has developed an AI maturity model where organizations fall into one of four maturity levels based on their current approach to AI in terms of data and storage infrastructure, data policy and governance, resource efficiency focus, and stakeholder enablement and collaboration. These maturity levels are AI Emergents, AI Pioneers, AI Leaders, and AI Masters.

NetApp Partners with Google Cloud to Maximize Flexibility for Cloud Data Storage

NetApp® (NASDAQ: NTAP), the intelligent data infrastructure company, today announced an expansion of its partnership with Google Cloud to make it easier for organizations to leverage their data for generative AI (GenAI) and other hybrid cloud workloads. NetApp and Google Cloud are announcing the Flex service level for Google Cloud NetApp Volumes which supports storage volumes of nearly any size. NetApp is also releasing a preview of its GenAI toolkit reference architecture for retrieval-augmented generation (RAG) operations using Google Cloud Vertex AI platform.

More Flexible Data Storage Options for Google Cloud NetApp Volumes

Google Cloud and NetApp are announcing a new service level for NetApp Volumes called Flex that gives customers more granular control to adapt their storage and performance to match the exact needs of their cloud workloads.

“Increasing demand for data-intensive applications and insights has reinforced the need for a new approach to unified data storage that gives organizations the agility to move and store data wherever it is needed at any point in time,” said Pravjit Tiwana, Senior Vice President and General Manager, Cloud Storage at NetApp. “By extending our collaboration with Google Cloud, we’re delivering a flexible form factor that can be run on existing infrastructure across Google Cloud system without any tradeoffs to enterprise data management capabilities.”

With the addition of Flex, NetApp Volumes customers can choose from four service levels to leverage a fully managed file service built on NetApp ONTAPTM and operated by Google Cloud, including:

Standard: highly available, general-purpose storage with advanced data management capabilities and 16MiB/sec per TiB of performance, which is recommended to support workloads such as file shares, virtual machines (VMs), and DevTest environments.
Premium: highly available, high-performance storage with advanced data management capabilities and 64MiB/sec per TiB of performance, which is recommended for file shares, VMs, and databases.
Extreme: highly available, low-latency, high-throughput storage with advanced data management capabilities and 128MiB/sec per TiB of performance, which is recommended for Online Transaction Processing (OLTP) high-performance databases and low-latency applications.
Flex: highly available storage volumes with scalability from one GiB to 100TiB and up to one GiB/s of performance depending on the size of the underlying storage pool. This adaptable service level can support a wide variety of use cases, including AI.

“Google Cloud NetApp Volumes remains a critical component of every enterprise’s digital transformation strategy,” said Sameet Agarwal, GM/VP, Google Cloud Storage at Google Cloud. “Utilizing Google Cloud technologies, NetApp Volumes will power new capabilities that can improve how businesses operate and create real-world value for their organizations.”

The Flex service level will be generally available by Q2 2024 across 15 Google Cloud regions, expanding to the other Google Cloud regions by the end of 2024.

Unlocking Enterprise Data for Generative AI in Google Cloud

NetApp is also releasing a preview of its GenAI toolkit with support for NetApp Volumes. This offering, along with the accompanying reference architecture, speeds the implementation of RAG operations while enabling secure, consistent, and automated workflows that securely connect data stored in NetApp Volumes with Google Cloud Vertex AI platform. The result is a greater ability to generate unique, high-quality, and ultra-relevant insights and automations.

“As the intelligent data infrastructure company, we have unmatched capabilities to support data classification, tagging, mobility, and cloning for data wherever it lives so our customers can run efficient and secure AI data pipelines,” said Pravjit Tiwana, Senior Vice President and General Manager, Cloud Storage at NetApp. “Building on our partnership with Google Cloud to streamline RAG enables customers to tap into market-leading AI services and models to generate a unique competitive advantage.”

The NetApp GenAI toolkit helps optimize RAG processes with unique capabilities, including:

Common data footprint everywhere: NetApp ONTAP allows customers to easily include data from any environment to power their RAG efforts with common operational processes while reducing risk, cost, and time to results.
Automated classification and tagging: NetApp’sBlueXP classification service automatically tags data to support streamlined data cleansing for both the ingest and inferencing phases of the data pipeline, ensuring that the right data is used for queries and that sensitive data is not exposed to the model out of policy.
Fast, scalable snapshots: ONTAP Snapshot delivers near-instant creation of space-efficient, in-place copies of vector stores and databases, allowing immediate roll back to a previous version if data is corrupted or forward if point-in-time analysis is needed.
Real-time cloning at scale: ONTAP FlexClone technology can create instant clones of vector index stores to safely make uniquely relevant data instantly available for different queries for different users, without impacting the core production data.

“GenAI is a tidal wave of opportunity for the companies that can effectively apply their data to their industry,” said Miles Ward, CTO at SADA, An Insight Company. “At SADA we are fired up about pairing our extensive expertise with NetApp and Vertex AI to help customers accelerate their AI journeys. Why generate uninformed chats when you could generate unique, specific, relevant insights?”

The GenAI toolkit will be available as a public preview within the second half of 2024.

To learn more about the Flex service level for NetApp Volumes or the GenAI toolkit reference architecture for Vertex AI, visit the NetApp booth #1231 at the Google Cloud Next 2024 conference running from April 9-11 at Mandalay Bay in Las Vegas.

Additional Resources

All Your Datasets are Welcome on Google Cloud NetApp Volumes. Did We Say No Trade-Offs?
Introducing Google Cloud NetApp Volumes Flex Service Level
Google Cloud NetApp Volumes

NetApp Wins Google Cloud Technology Partner of the Year Award for Infrastructure – Storage

NetApp® (NASDAQ: NTAP), the intelligent data infrastructure company, announced it has received the 2024 Google Cloud Technology Partner of the Year Award in the Infrastructure – Storage category for Google Cloud NetApp Volumes. For the second year in a row, NetApp is recognized for its achievements in the Google Cloud ecosystem, helping joint customers deploy solutions that enable them to easily migrate, deploy, and manage data and workloads in Google Cloud without rearchitecting applications.

“Google Cloud’s Partner Awards celebrate the transformative impact and value that partners have delivered for customers,” said Kevin Ichhpurani, Corporate Vice President, Global Ecosystem and Channels at Google Cloud. “We’re proud to announce NetApp as a 2024 Google Cloud Partner Award winner and recognize their achievements enabling customer success from the past year.”

The Google Cloud Technology Partner of the Year Award for Infrastructure – Storage highlights how NetApp’s industry-leading, enterprise-grade storage technologies, including Google Cloud NetApp Volumes, help customers navigate the cloud landscape with simplified data management, unparalleled performance, and reliable data protection. Based on NetApp® ONTAP®, Google Cloud NetApp Volumes lets users securely automate and scale demanding workloads, such as AI, databases, and cloud-native applications, with just a few clicks, optimizing cloud costs without overprovisioning.

“Together with Google Cloud, NetApp continues to build on its industry-leading storage portfolio, with Google Cloud NetApp Volumes, which delivers seamless integration as a jointly developed Google service that supports critical use cases from migrating workloads to Google Cloud platform to running cloud-native applications and powering transformations like AI,” said Eric Han, Vice President, Product Management, Cloud at NetApp. “The fact that we’re a Google Cloud Technology Partner of the Year for the second consecutive year in the Storage category underscores the confidence Google Cloud has in NetApp as a partner equally committed to providing customers with an intelligent data infrastructure that helps them move quickly and adapt in our ever-changing technology and threat landscape.”

Launched in August 2023 as a managed storage service, Google Cloud NetApp Volumes was enhanced in October 2023 with a Standard service layer, delivering a significant reduction in cost/GB, while still delivering the same multi-protocol file services with fully integrated data protection. This service joins the complete NetApp storage and data services portfolio found in Google Cloud which spans cyber resilience, data protection, and capacity management. It enables enterprise customers to seamlessly extend the most demanding workloads into Google Cloud with the types of services that have been hallmarks of datacenter technologies for years.

Additional Resources

Google Cloud NetApp Volumes
NetApp And Google Cloud Introduce Managed Storage Service to Revolutionize Enterprise Workloads in the Cloud
NetApp Extends Its Storage Leadership and Innovation at Insight 2023 with the Only Unified Data Storage Across On-Premises and Public Cloud
Cloud Volumes ONTAP