AI News 10月21日 23:15
企业仍面临AI数据挑战
index_new5.html
../../../zaker_core/zaker_tpl_static/wap/tpl_guoji1.html

 

企业利用大数据和AI时仍面临数据整合难题。数据来源多样,格式不一,存在不一致、不准确、偏差等问题,难以满足AI需求。解决数据问题对AI成功至关重要,企业需借助数据处理平台,从小项目开始测试,平衡机会、风险与成本。

📊 企业日常运营中数据来源多样,包括电子表格、CRM平台、电子邮件、文档、消息应用等,还有企业资源规划系统、实时数据流、数据湖等,数据整合难度大。

⚖️ AI实施的核心问题与大数据相同,即数据形式多样、标准不一、可能存在不准确或偏差,且部分数据高度敏感或已过时,难以直接用于AI分析。

🔧 为了让数据适用于AI,需要通过数据预处理平台进行转换,确保数据合规、安全,并建立实时更新的数据资源,这需要持续投入和不断优化。

⚙️ 数据准备和汇编系统为AI创造价值提供了保障,通过设置编码屏障保护用户免受偏差或敏感信息的影响,但生成连贯、安全、结构良好的数据资源仍是一大挑战。

💰 数据处理与AI应用之间需要平衡机会、风险和成本,选择合适的供应商或平台至关重要,尤其对于中小企业而言,这直接关系到AI项目的成败。

A few years ago, the business technology world’s favourite buzzword was ‘Big Data’ – a reference to organisations’ mass collection of information that could be used to suggest previously unexplored ways of operating, and float ideas about what strategies they may best pursue.

What’s becoming increasingly apparent is that the problems companies faced in using Big Data to their advantage still remain, and it’s a new technology – AI – that’s making those problems rise once again to the surface. Without tackling the problems that beset Big Data, AI implementations will continue to fail.

So what are the issues stopping AI deliver on its promises?

The vast majority of problems stem from the data resources themselves. To understand the issue, consider the following sources of information used in a very average working day.

In a small-to-medium sized business:

In an enterprise business:

It’s worth noting that the simple list above isn’t comprehensive, and nor is it intended to be. What it demonstrates is that in just five lines, there are around a dozen places where information can be found. What Big Data needed (perhaps still needs) and what AI projects also rest on, is somehow bringing all those elements together in such a way that a computer algorithm can make sense of it.

Marketing behemoth Gartner’s hype cycle for artificial intelligence, 2024, placed AI-Ready Data on the upward curve of the hype cycle, estimating it would be 2-5 years before it reached the ‘plateau of productivity’. Given that AI systems mine and extract data, most organisations – save those of the very largest size – don’t have the foundations on which to build, and may not have AI assistance in the endeavour for another 1-4 years.

The underlying problem for AI implementation is the same as dogged Big Data innovations as they, in the past, made their way through the hype cycle – from innovation trigger, peak of inflated expectations, trough of disillusionment, slope of enlightenment, to plateau of productivity – data comes in many forms; it can be inconsistent; perhaps it adheres to different standards; it may be inaccurate or biased; it could be highly sensitive information, or old and therefore irrelevant.

Transforming data so it’s AI-ready remains a process that’s as relevant today (perhaps more so) than it’s ever been. Those companies wanting to get a jump start could experiment with the many data treatment platforms currently available, and as is becoming the common advice, might begin with discrete projects as test-beds to assess the effectiveness of emerging technologies.

The advantage of the latest data preparation and assembly systems is that they are designed to prepare an organisation’s information resources in ways that are designed for the data to be used by AI value-creation platforms. They can offer, for example, carefully-coded guardrails that will help ensure data compliance, and protect users from accessing biased or commercially-sensitive information.

But the challenge of producing coherent, safe, and well-formulated data resources remains an ongoing issue. As organisations gain more data in their everyday operations, compiling up-to-date data resources on which to draw is a constant process. Where big data could be considered a static asset, data for AI ingestion has to be prepared and treated in as close to real-time as possible.

The situation therefore remains a three-way balance between opportunity, risk, and cost. Never before has the choice of vendor or platform been so crucial to the modern business.

(Source: “Inside the business school” by Darien and Neil is licensed under CC BY-NC 2.0.)

Want to learn more about AI and big data from industry leaders? Check out AI & Big Data Expo taking place in Amsterdam, California, and London. The comprehensive event is part of TechEx and co-located with other leading technology events. Click here for more information.

AI News is powered by TechForge Media. Explore other upcoming enterprise technology events and webinars here.

The post Businesses still face the AI data challenge appeared first on AI News.

Fish AI Reader

Fish AI Reader

AI辅助创作,多种专业模板,深度分析,高质量内容生成。从观点提取到深度思考,FishAI为您提供全方位的创作支持。新版本引入自定义参数,让您的创作更加个性化和精准。

FishAI

FishAI

鱼阅,AI 时代的下一个智能信息助手,助你摆脱信息焦虑

联系邮箱 441953276@qq.com

相关标签

AI数据挑战 大数据 企业数据管理 数据预处理 AI应用
相关文章