惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

C
Comments on: Blog
S
Schneier on Security
Microsoft Azure Blog
Microsoft Azure Blog
T
Tor Project blog
V
Visual Studio Blog
C
CXSECURITY Database RSS Feed - CXSecurity.com
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Spread Privacy
Spread Privacy
月光博客
月光博客
罗磊的独立博客
Cisco Talos Blog
Cisco Talos Blog
P
Privacy International News Feed
T
Tenable Blog
阮一峰的网络日志
阮一峰的网络日志
AWS News Blog
AWS News Blog
T
ThreatConnect
博客园 - 三生石上(FineUI控件)
Recorded Future
Recorded Future
Hugging Face - Blog
Hugging Face - Blog
T
Tailwind CSS Blog
博客园 - 叶小钗
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
A
Arctic Wolf
L
LINUX DO - 最新话题
美团技术团队
大猫的无限游戏
大猫的无限游戏
I
Intezer
博客园 - 司徒正美
酷 壳 – CoolShell
酷 壳 – CoolShell
量子位
小众软件
小众软件
T
Threatpost
V
V2EX
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
宝玉的分享
宝玉的分享
The Register - Security
The Register - Security
Project Zero
Project Zero
J
Java Code Geeks
Cyberwarzone
Cyberwarzone
IT之家
IT之家
MyScale Blog
MyScale Blog
T
Threat Research - Cisco Blogs
T
The Blog of Author Tim Ferriss
腾讯CDC
S
SegmentFault 最新的问题
F
Fox-IT International blog
S
Security Archives - TechRepublic
Last Week in AI
Last Week in AI
G
GRAHAM CLULEY
M
MIT News - Artificial intelligence

MIT Technology Review

The Download: puncturing the AI jobs panic A reality check on the AI jobs hysteria It’s time to address the looming crisis in entry-level work. The Download: coding’s future, the ‘Steroid Olympics,’ and AI-driven science Google I/O showed how the path for AI-driven science is shifting The Enhanced Games fit right in with the rest of 2026’s longevity vibes Roundtables: Can AI Learn to Understand the World? Scaling creativity in the age of AI Anthropic’s Code with Claude showed off coding’s future—whether you like it or not The Download: online safety’s future and climate tech’s big pivot Climate tech companies are pivoting to critical minerals Tech researchers are suing the Trump administration over the future of online safety Green steel startup Boston Metal is doubling down on critical metals The Download: fully artificial chicken eggs and why Musk lost Roundtables: Inside the Musk v. Altman Trial Understanding the modern cybercrime landscape The Download: Musk v. Altman, smart glasses for warfare, and Google I/O Colossal Biosciences is growing chickens in a 3D-printed artificial eggshell Here’s why Elon Musk lost his suit against OpenAI What to expect from Google this week The Signals That Matter – MIT Insider’s Panel Inside Anduril and Meta’s quest to make smart glasses for warfare The Download: Musk v. Altman week 3, and Trump’s tech trading Musk v. Altman week 3: Musk and Altman traded blows over each other’s credibility. Now the jury will pick a side. The Download: China’s AI drama factory and the WHO’s missing health targets The world is on track to miss its health targets How Chinese short dramas became AI content machines Data readiness for agentic AI in financial services Establishing AI and data sovereignty in the age of autonomous systems The Download: deepfake porn’s stolen bodies and AI sharing private numbers The Tesla Semi could be a big deal for electric trucking The shock of seeing your body used in deepfake porn AI chatbots are giving out people’s real phone numbers The Download: making drugs in orbit and NASA’s nuclear-powered spacecraft A plan to make drugs in orbit is going commercial World Models: 10 Things That Matter in AI Right Now The Download: a Nobel winner on AI, and the case for fixing everything Three things in AI to watch, according to a Nobel-winning economist Fostering breakthrough AI innovation through customer-back engineering Innovation abounds in device charging Implementing advanced AI technologies in finance The Download: the hantavirus outbreak and Musk v. Altman week 2 Musk v. Altman week 2: OpenAI fires back, and Shivon Zilis reveals that Musk tried to poach Sam Altman Here’s what you need to know about the cruise ship hantavirus outbreak The Download: AI malaise and babymaking tech Here’s how technology transformed babymaking The Download: the tech reshaping IVF and the rise of balcony solar The balcony solar boom is coming to the US What’s next for IVF The Download: seafloor science and military chatbots The Download: inside the Musk v. Altman trial, and AI for democracy A blueprint for using AI to strengthen democracy Tailoring AI solutions for health care needs Week one of the Musk v. Altman trial: What it was like in the room Musk v. Altman week 1: Elon Musk says he was duped, warns AI could kill us all, and admits that xAI distills OpenAI’s models Operationalizing AI for Scale and Sovereignty Cyber-Insecurity in the AI Era The Download: a new Christian phone network, and debugging LLMs Inexpensive seafloor-hopping submersibles could stoke deep-sea science—and mining Trump’s mass firing just dealt another blow to American science A new US phone network for Christians aims to block porn and gender-related content Exclusive eBook: Inside the stealthy startup that pitched brainless human clones This startup’s new mechanistic interpretability tool lets you debug LLMs The Download: the North Pole’s future and humanoid data The Download: storing nuclear waste and orchestrating agents It’s time to make a plan for nuclear waste The Download: Musk and Altman’s legal showdown, and AI’s profit problem Elon Musk and Sam Altman are going to court over OpenAI’s future The missing step between hype and profit Rebuilding the data stack for AI The Download: DeepSeek’s latest AI breakthrough, and the race to build world models Three reasons why DeepSeek’s new model V4 matters The Download: supercharged scams and studying AI healthcare Health-care AI is here. We don’t know if it actually helps patients. The Download: introducing the Nature issue Will fusion power get cheap? Don’t count on it. The Download: introducing the 10 Things That Matter in AI Right Now AI needs a strong data fabric to deliver business value 3 things Michelle Kim is into right now One town’s scheme to get rid of its geese There is no nature anymore Los Angeles is finally going underground Roundtables: Unveiling The 10 Things That Matter in AI Right Now The new word in home construction could be “plastics” A natural protein may protect the GI tract from infection This tool could show how consciousness works Early life may have breathed oxygen earlier than believed Analog computing from waste heat Get ready for hotter, muggier, stormier summers Recent books from the MIT community AI at MIT Inventor recalls eye imaging breakthrough Colossal Biosciences said it cloned red wolves. Is it for real? Chinese tech workers are starting to train their AI doubles–and pushing back Pie Day 2026 The Download: bad news for inner Neanderthals, and AI warfare’s human illusion The case for fixing everything How robots learn: A brief, contemporary history Making AI operational in constrained public sector environments Treating enterprise AI as an operating layer
Rethinking organizational design in the age of agentic AI
MIT Technolo · 2026-05-26 · via MIT Technology Review

Amid rapidly growing adoption of enterprise-level AI agents, there’s a disconnect emerging between ambition and execution. 

Although 85% of organizations say they want to be agentic within the next three years, 76% say their current operations and infrastructure can’t support that change. They cite a lack of readiness across people, processes, and workflows. 

The sticky tape problem

The challenge is that many organisations are often layering AI agents onto existing operations, rather than reimagine the operating model and how work will need to be rewired, explains Prasun Shah, global CTO for workforce consulting and chief AI officer at PwC UK Consulting. “They’re embedding AI employees into what is a human operating model,” layering on AI agents to existing workplace structures when “this is like adding sticky tapes to parts of an operating model that is breaking.”

Doing so may be preventing organizations from unlocking the full value agentic AI offers, creating circumstances where disillusionment can quickly creep in. That full value lies in agents’ capacity to execute entire workflows with limited human input. They can coordinate complex tasks, make independent decisions, adjust to changing conditions, and iterate performance. 

In early proving grounds that span customer service, HR, and sales, it’s already estimated that AI agents could accelerate business processes by as much as 30% to 50% and low-value work time by 25% to 40% when deployed at scale. But with this capability comes greater complexity and the need for an enterprise-wide change.

Growing the AI vocabulary 

Enterprise agentic AI platform Ema describes this change as agentic business transformation (ABT), a term it coined last year in partnership with HFS Research, in an attempt to plug what it sees as a gap in the existing lexicon about AI agents, and to provide enterprises with a new framework with which to think about their own adoption of the technology. 

“None of the existing vocabulary captures the full scope of the change,” explains Ema CEO and founder Surojit Chatterjee. “Digital transformation was about moving from paper to software. AI transformation was about adding artificial intelligence to existing processes. Co-pilot is about AI assisting in various human tasks. But ABT is something categorically different: It's the integration of AI agents into the fabric of the organization.” 

For Shah, the dedicated term (ABT) “helps drive the need to redesign an organization in its entirety: its operating model, its workflows, decision rights, and performance management systems.” He emphasizes that “everything that’s needed to ensure those agents are actually active participants in value creation, rather than just point tools or productivity aids.”

According to Ema, ABT encompasses three core pillars: an organization’s technology stack, its workforce, and the metrics used for success. 

AI agents as connective tissue

The first pillar of ABT is the technology stack. “Your existing tech stack was designed for human-operated, application-centric workflows,” says Chatterjee. “It needs to be reconsidered when the actor is an AI agent operating at machine speed across multiple systems simultaneously.”

 As AI agents are integrated into an organization, enterprises will need to pivot from a set of linear processes and steps, to rewiring work in a very different way, explains Shah. That’s because the value in AI agents isn’t as another layer in an existing technology stack but as a connective tissue, he explains, moving between or across layers to coordinate a high-level task or retrieve and interpret data from multiple discrete applications. AI agents can create “a true competitive differentiation for an enterprise” by making decisions based on this capacity to contextualize, he says. “That is where the next battleground will be.”

To build this connective tissue, leaders need to adapt their technology stack to surface higher quality decisions from AI agents, prioritizing access to multiple datasets and applications simultaneously to develop tacit knowledge. “Organizations that make this architectural shift become genuinely more adaptive,” says Chatterjee. “When a new business requirement emerges, you don't wait six months for a software vendor to build a feature. You configure an AI employee using natural language and connect it to the systems it needs. The time from business to production workflow drops from months to days.”

The workforce, redesigned

As AI agents are deployed for more use cases, enterprise leaders must consider what this means for dynamics across their workforce, the second pillar of ABT.

Workforce structures today deviate little from the hierarchical model of the early days of industrialization. To maximize efficiency and scale, processes are standardized, tasks are clearly delineated between strategic business units (SBUs), and employees progress up through an organization based on their capacity to optimize output from teams below them. But with AI agents that can execute, coordinate, and optimize tasks—often without managerial coordination—the lines of that established hierarchy become blurred.

In a workforce that blends AI agents and human employees, managers will be freed up from many execution-based tasks but take on new responsibilities associated with managing hybrid teams. Managers “will need to be able to manage issues around trust, explainability, psychological safety, and even status dynamics” to navigate new tensions that could arise in a hybrid workforce, says Shah.

The impact of agentic AI on existing workforce structures goes far beyond the management layer, too. McKinsey predicts that by 2030, three-quarters of current jobs will require redesign, upskilling, or redeployment, and organizations will need to act swiftly to amend recruitment, retention, and remuneration. 

From output to outcome

Success metrics are the third and final pillar of ABT. 

As AI agents assume greater ownership of core enterprise processes, taking on collaborative roles alongside human employees, traditional workforce metrics that focus on activity or output—such as calls handled or reports filed—no longer make sense. 

“When you add AI employees into the workforce, activity metrics become meaningless or actively misleading,” says Chatterjee. “An AI employee can handle a thousand customer interactions in the time it takes a human to handle ten. If you measure success by interactions handled, you'll conclude the AI is working brilliantly while missing whether any of those interactions actually drove customer satisfaction, retention, or revenue.” To correct this, enterprises must develop a new set of metrics that focus on outcome rather than output. That is, metrics on the broader benefits or changes achieved, rather than individual deliverables. 

For example, when one of Ema’s large enterprise customers overhauled its own metrics, switching from tool metrics like cost per query and AI accuracy, to outcomes like the percentage of contracts reviewed without human escalation, the measured ROI from agentic AI tripled within two quarters. The changes meant “this customer stopped building point solutions in high-volume, low-complexity workflows and started deploying AI employees where the outcome value was highest,” says Chatterjee.

Integrating new metrics may also require a complete reconfiguration of reward and talent management processes, as well as accountability and ownership within organizations, points out Shah. In human-AI teams, for example, although ethical and fiduciary responsibilities will likely remain with human employees, operational accountability will become significantly more diffused to reflect the systemic role of AI agents.

This change will raise new questions that senior leadership teams will need to wrestle with, Shah adds. They’ll need to consider: Who is accountable when an AI employee makes a mistake? What happens when AI and humans disagree? What guardrails should be erected to safeguard customers? 

Laying the groundwork for systems-level change

Systems-level change is gradual. These are complex lines of inquiry that experts continue to grapple with. But in kickstarting internal dialogue about the core pillars of ABT—the workforce, the technology stack, and the metrics by which success can be gauged—leaders can lay the groundwork for an enterprise better poised to embrace AI agents at a systems level and start to close the gap between their ambition and execution. 

This content was produced by Insights, the custom content arm of MIT Technology Review. It was not written by MIT Technology Review’s editorial staff. It was researched, designed, and written by human writers, editors, analysts, and illustrators. This includes the writing of surveys and collection of data for surveys. AI tools that may have been used were limited to secondary production processes that passed thorough human review.