青青草a国产免费观看|91麻豆精品国产福利|国产av五无码一级毛片|亚洲爆乳精品无码一区二区|久久亚洲AV成人无码国产|91无码人妻一区二区三区|色婷婷av一区二区三区性色|国产制服91一区二区三区制服,女人书籍排行榜,盗墓笔记小说txt下载,玄幻小说排行榜完本

position: EnglishChannel  > IUSTC> Leaders across every industry cite democratizing data and AI as the number one challenge to achieving their generative AI goals: report

Leaders across every industry cite democratizing data and AI as the number one challenge to achieving their generative AI goals: report

Source: PRNewswire | 2024-01-10 08:05:56 | Author: PRNewswire

A new report by?MIT Technology Review Insights explores the breakthroughs in data intelligence that will enable CIOs to reach their data and generative AI priorities across seven industries, namely retail and consumer packaged goods, healthcare and life sciences, manufacturing, financial services, telecommunications, media and entertainment, and the public sector.

The report, "Bringing breakthrough data intelligence to industries," is produced in partnership with Databricks, the data and AI company, and is based on a global survey of 600 CIOs, CTOs, CDOs, and technology leaders for large enterprises and public-sector organizations and features in-depth interviews with C-level executives. Among the organizations represented are AT&T, AXA, Condé Nast, Databricks, Dell Technologies, General Motors, Morgan Stanley, Regeneron Genetic Center, the United States Postal Service, and Walmart.

"While it's early in the race to AI, leaders across diverse industries recognize the profound potential and impact of AI," says Arsalan Tavakoli, co-founder and senior vice president of field engineering at Databricks. "Organizations investing in unified data and governance platforms to fuel their AI and empower their workforces are positioned to lap the competition in realizing AI-based results."

The findings are as follows:

Real-time analytics and secure sharing are priorities in every industry to unleash the power of data truly. Sixty-four percent of CIOs say the ability to securely share live data and AI assets across platforms is "very important." Across industries, executives see promise in technology-agnostic data sharing across an industry ecosystem supporting AI models and core operations that will drive more accurate, relevant, and profitable outcomes. An even larger share (72%) say that the ability to stream data for real-time analytics will be key to delight customers and gain competitive advantages.

All industries aim to unify their data and AI governance models to protect and enable innovation. 60% of CIOs say a single built-in governance model for data and AI is "very important," suggesting that many organizations struggle with a fragmented or siloed data architecture. Every industry will have to achieve this unified governance in the context of its own unique systems of record, data pipelines, and requirements for security and compliance.

Industry-specific requirements will drive the prioritization and pace of generative AI use case adoption. Supply chain optimization is the highest-value generative AI use case in manufacturing. At the same time, it is real-time data analysis and insights for the public sector, personalization and customer experience for M&E, and quality control for telecommunications. Generative AI adoption will not be one-size-fits-all, with each industry taking its own path. Still, in every case, value creation will depend on access to data and AI across roles within the organization.

Preserving data and AI flexibility by leveraging multicloud and open source is critical for managing risks and accelerating innovation. Sixty-three percent of CIOs believe that leveraging multiple cloud providers is at least somewhat important, while 70% feel the same about open source standards and technology. Given the fast-moving AI landscape and uncertain regulatory environment, executives firmly believe in the value of strategic flexibility.

"Today's technology leaders are making it clear: a unified governance model for data and AI is not just a priority; it's a necessity," says Laurel Ruma, global director of custom content for MIT Technology Review. "As we move forward, it's evident that real-time analytics, secure data sharing, and technology-agnostic ecosystems will play pivotal roles in shaping the future of innovation across all industries."

Editor:

抱歉,您使用的瀏覽器版本過(guò)低或開(kāi)啟了瀏覽器兼容模式,這會(huì)影響您正常瀏覽本網(wǎng)頁(yè)

您可以進(jìn)行以下操作:

1.將瀏覽器切換回極速模式

2.點(diǎn)擊下面圖標(biāo)升級(jí)或更換您的瀏覽器

3.暫不升級(jí),繼續(xù)瀏覽

繼續(xù)瀏覽
龙门县| 南宁市| 玛沁县| 兰西县| 泰和县| 枣强县| 盐边县| 芜湖县| 玉田县| 衡东县| 万载县| 惠来县| 新郑市| 成都市| 青浦区| 肥乡县| 江孜县| 乐清市| 长宁县| 诏安县| 霍林郭勒市| 太仆寺旗| 读书| 汶上县| 乌苏市| 广汉市| 鸡东县| 东城区| 广西| 南投市| 边坝县| 乐昌市| 吉水县| 庆阳市| 灌阳县| 临夏县| 武鸣县| 凤阳县| 同心县| 绥棱县| 云阳县|