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Tuesday, February 3, 2026

Cisco × OpenAI: When Engineering Systems Meet Intelligent Agents

— A Landmark Case in Enterprise AI Engineering Transformation

In the global enterprise software and networking equipment industry, Cisco has long been regarded as a synonym for engineering discipline, large-scale delivery, and operational reliability. Its portfolio spans networking, communications, security, and cloud infrastructure; its engineering system operates worldwide, with codebases measured in tens of millions of lines. Any major technical decision inevitably triggers cascading effects across the organization.

Yet it was precisely this highly mature engineering system that, around 2024–2025, began to reveal new forms of structural tension.


When Scale Advantages Turn into Complexity Burdens

As network virtualization, cloud-native architectures, security automation, and AI capabilities continued to stack, Cisco’s engineering environment came to exhibit three defining characteristics:

  • Multi-repository, strongly coupled, long-chain software architectures;
  • A heterogeneous technology stack spanning C/C++ and multiple generations of UI frameworks;
  • Stringent security, compliance, and audit requirements deeply embedded into the development lifecycle.

Against this backdrop, engineering efficiency challenges became increasingly visible.
Build times lengthened, defect remediation cycles grew unpredictable, and cross-repository dependency analysis relied heavily on the tacit knowledge of senior engineers. Scale was no longer a pure advantage; it gradually became a constraint on response speed and organizational agility.

What management faced was not the question of whether to “adopt AI,” but a far more difficult decision:

When engineering complexity exceeds the cognitive limits of individuals and processes, can an organization still sustain its existing productivity curve?


Problem Recognition and Internal Reflection: Tool Upgrades Are Not Enough

At this stage, Cisco did not rush to introduce new “efficiency tools.” Through internal engineering assessments and external consulting perspectives—closely aligned with views from Gartner, BCG, and others on engineering intelligence—a shared understanding began to crystallize:

  • The core issue was not code generation, but the absence of engineering reasoning capability;
  • Information was not missing, but fragmented across logs, repositories, CI/CD pipelines, and engineer experience;
  • Decision bottlenecks were concentrated in the understand–judge–execute chain, rather than at any single operational step.

Traditional IDE plugins or code-completion tools could, at best, reduce localized friction. They could not address the cognitive load inherent in large-scale engineering systems.
The engineering organization itself had begun to require a new form of “collaborative actor.”


The Inflection Point: From AI Tools to AI Engineering Agents

The true turning point emerged with the launch of deep collaboration between Cisco and OpenAI.

Cisco did not position OpenAI’s Codex as a mere “developer assistance tool.” Instead, it was treated as an AI agent capable of being embedded directly into the engineering lifecycle. This positioning fundamentally shaped the subsequent path:

  • Codex was deployed directly into real, production-grade engineering environments;
  • It executed closed-loop workflows—compile → test → fix—at the CLI level;
  • It operated within existing security, review, and compliance frameworks, rather than bypassing governance.

AI was no longer just an adviser. It began to assume an engineering role that was executable, verifiable, and auditable.


Organizational Intelligent Reconfiguration: A Shift in Engineering Collaboration

As Codex took root across multiple core engineering scenarios, its impact extended well beyond efficiency metrics and began to reshape organizational collaboration:

  • Departmental coordination → shared engineering knowledge mechanisms
    Through cross-repository analysis spanning more than 15 repositories, Codex made previously dispersed tacit knowledge explicit.

  • Data reuse → intelligent workflow formation
    Build logs, test results, and remediation strategies were integrated into continuous reasoning chains, reducing repetitive judgment.

  • Decision-making patterns → model-based consensus mechanisms
    Engineers shifted from relying on individual experience to evaluating explainable model-driven reasoning outcomes.

At its core, this evolution marked a transition from an experience-intensive engineering organization to one that was cognitively augmented.


Performance and Quantified Outcomes: Efficiency as a Surface Result

Within Cisco’s real production environments, results quickly became tangible:

  • Build optimization:
    Cross-repository dependency analysis reduced build times by approximately 20%, saving over 1,500 engineering hours per month across global teams.

  • Defect remediation:
    With Codex-CLI’s automated execution and feedback loops, defect remediation throughput increased by 10–15×, compressing cycles from weeks to hours.

  • Framework migration:
    High-repetition tasks such as UI framework upgrades were systematically automated, allowing engineers to focus on architecture and validation.

More importantly, management observed the emergence of a cognitive dividend:
Engineering teams developed a faster and deeper understanding of complex systems, significantly enhancing organizational resilience under uncertainty.


Governance and Reflection: Intelligent Agents Are Not “Runaway Automation”

Notably, the Cisco–OpenAI practice did not sidestep governance concerns:

  • AI agents operated within established security and review frameworks;
  • All execution paths were traceable and auditable;
  • Model evolution and organizational learning formed a closed feedback loop.

This established a clear logic chain:
Technology evolution → organizational learning → governance maturity.
Intelligent agents did not weaken control; they redefined it at a higher level.


Overview of Enterprise Software Engineering AI Applications

Application ScenarioAI CapabilitiesPractical ImpactQuantified OutcomeStrategic Significance
Build dependency analysisCode reasoning + semantic analysisShorter build times-20%Faster engineering response
Defect remediationAgent execution + automated feedbackCompressed repair cycles10–15× throughputReduced systemic risk
Framework migrationAutomated change executionLess manual repetitionWeeks → daysUnlocks high-value engineering capacity

The True Watershed of Engineering Intelligence

The Cisco × OpenAI case is not fundamentally about whether to adopt generative AI. It addresses a more essential question:

When AI can reason, execute, and self-correct, is an enterprise prepared to treat it as part of its organizational capability?

This practice demonstrates that genuine intelligent transformation is not about tool accumulation. It is about converting AI capabilities into reusable, governable, and assetized organizational cognitive structures.
This holds true for engineering systems—and, increasingly, for enterprise intelligence at large.

For organizations seeking to remain competitive in the AI era, this is a case well worth sustained study.

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Thursday, January 29, 2026

The Intelligent Inflection Point: 37 Interactive Entertainment’s AI Decision System in Practice and Its Performance Breakthrough

When the “Cognitive Bottleneck” Becomes the Hidden Ceiling on Industry Growth

Over the past decade of rapid expansion in China’s gaming industry, 37 Interactive Entertainment has grown into a company with annual revenues approaching tens of billions of RMB and a complex global operating footprint. Extensive R&D pipelines, cross-market content production, and multi-language publishing have collectively pushed its requirements for information processing, creative productivity, and global response speed to unprecedented levels.

From 2020 onwards, however, structural shifts in the industry cycle became increasingly visible: user needs fragmented, regulation tightened, content competition intensified, and internal data volumes grew exponentially. Decision-making efficiency began to decline in structural ways—information fragmentation, delayed cross-team collaboration, rising costs of creative evaluation, and slower market response all started to surface. Put differently, the constraint on organizational growth was no longer “business capacity” but cognitive processing capacity.

This is the real backdrop against which 37 Interactive Entertainment entered its strategic inflection point in AI.

Problem Recognition and Internal Reflection: From Production Issues to Structural Cognitive Deficits

The earliest warning signs did not come from external shocks, but from internal research reports. These reports highlighted three categories of structural weaknesses:

  • Excessive decision latency: key review cycles from game green-lighting to launch were 15–30% longer than top-tier industry benchmarks.

  • Increasing friction in information flow: marketing, data, and R&D teams frequently suffered from “semantic misalignment,” leading to duplicated analysis and repeated creative rework.

  • Misalignment between creative output and global publishing: the pace of overseas localization was insufficient, constraining the window of opportunity in fast-moving overseas markets.

At root, these were not problems of effort or diligence. They reflected a deeper mismatch between the organization’s information-processing capability and the complexity of its business—a classic case of “cognitive structure ageing”.

The Turning Point and the Introduction of an AI Strategy: From Technical Pilots to Systemic Intelligent Transformation

The genuine strategic turn came after three developments:

  1. Breakthroughs in natural language and vision models in 2022, which convinced internal teams that text and visual production were on the verge of an industry-scale transformation;

  2. The explosive advancement of GPT-class models in 2023, which signaled a paradigm shift toward “model-first” thinking across the sector;

  3. Intensifying competition in game exports, which made content production and publishing cadence far more time-sensitive.

Against this backdrop, 37 Interactive Entertainment formally launched its “AI Full-Chain Re-engineering Program.” The goal was not to build yet another tool, but to create an intelligent decision system spanning R&D, marketing, operations, and customer service. Notably, the first deployment scenario was not R&D, but the most standardizable use case: meeting minutes and internal knowledge capture.

The industry-specific large model “Xiao Qi” was born in this context.

Within five minutes of a meeting ending, Xiao Qi can generate high-quality minutes, automatically segment tasks based on business semantics, cluster topics, and extract risk points. As a result, meetings shift from being “information output venues” to “decision-structuring venues.” Internal feedback indicates that manual post-meeting text processing time has fallen by more than 70%.

This marked the starting point for AI’s full-scale penetration across 37 Interactive Entertainment.

Organizational Intelligent Reconfiguration: From Digital Systems to Cognitive Infrastructure

Unlike many companies that introduce AI merely as a tool, 37 Interactive Entertainment has pursued a path of systemic reconfiguration.

1. Building a Unified AI Capability Foundation

On top of existing digital systems—such as Quantum for user acquisition and Tianji for operations data—the company constructed an AI capability foundation that serves as a shared semantic and knowledge layer, connecting game development, operations, and marketing.

2. Xiao Qi as the Organization’s “Cognitive Orchestrator”

Xiao Qi currently provides more than 40 AI capabilities, covering:

  • Market analysis

  • Product ideation and green-lighting

  • Art production

  • Development assistance

  • Operations analytics

  • Advertising and user acquisition

  • Automated customer support

  • General office productivity

Each capability is more than a simple model call; it is built as a scenario-specific “cognitive chain” workflow. Users do not need to know which model is being invoked. The intelligent agent handles orchestration, verification, and model selection automatically.

3. Re-industrializing the Creative Production Chain

Within art teams, Xiao Qi does more than improve efficiency—it enables a form of creative industrialization:

  • Over 500,000 2D assets produced in a single quarter (an efficiency gain of more than 80%);

  • Over 300 3D assets, accounting for around 30% of the total;

  • Artists shifting from “asset producers” to curators of aesthetics and creativity.

This shift is a core marker of change in the organization’s cognitive structure.

4. Significantly Enhanced Risk Sensing and Global Coordination

AI-based translation has raised coverage of overseas game localization to more than 85%, with accuracy rates around 95%.
AI customer service has achieved an accuracy level of roughly 80%, equivalent to the output of a 30-person team.
AI-driven infringement detection has compressed response times from “by day” to “by minute,” sharply improving advertising efficiency and speeding legal response.

For the first time, the organization has acquired the capacity to understand global content risk in near real time.

Performance Outcomes: Quantifying the Cognitive Dividend

Based on publicly shared internal data and industry benchmarking, the core results of the AI strategy can be summarized as follows:

  • Internal documentation and meeting-related workflows are 60–80% more efficient;

  • R&D creative production efficiency is up by 50–80%;

  • AI customer service effectively replaces a 30-person team, with response speeds more than tripled;

  • AI translation shortens overseas launch cycles by 30–40%;

  • Ad creative infringement detection now operates on a minute-level cycle, cutting legal and marketing costs by roughly 20–30%.

These figures do not merely represent “automation-driven cost savings.” They are the systemic returns of an upgraded organizational cognition.

Governance and Reflection: The Art of Balance in the Age of Intelligent Systems

37 Interactive Entertainment’s internal reflection is notably sober.

1. AI Cannot Replace Value Judgement

Wang Chuanpeng frames the issue this way: “Let the thinkers make the choices, and let the dreamers create.” Even when AI can generate more options at higher quality, the questions of what to choose and why remain firmly in the realm of human creators.

2. Model Transparency and Algorithm Governance Are Non-Negotiable

The company has gradually established:

  • Model bias assessment protocols;

  • Output reliability and confidence-level checks;

  • AI ethics review processes;

  • Layered data governance and access-control frameworks.

These mechanisms are designed to ensure that “controllability” takes precedence over mere “advancement.”

3. The Industrialization Baseline Determines AI’s Upper Bound

If organizational processes, data, and standards are not sufficiently mature, AI’s value will be severely constrained. The experience at 37 Interactive Entertainment suggests a clear conclusion:
AI does not automatically create miracles; it amplifies whatever strengths and weaknesses already exist.

Appendix: Snapshot of AI Application Value

Application Scenario AI Capabilities Used Practical Effect Quantitative Outcome Strategic Significance
Meeting minutes system NLP + semantic search Automatically distills action items, reduces noise in discussions Review cycles shortened by 35% Lowers organizational decision-making friction
Infringement detection Risk prediction + graph neural nets Rapidly flags non-compliant creatives and alerts legal teams Early warnings up to 2 weeks in advance Strengthens end-to-end risk sensing
Overseas localization Multilingual LLMs + semantic alignment Cuts translation costs and speeds time-to-market 95% accuracy; cycles shortened by 40% Enhances global competitiveness
Art production Text-to-image + generative modeling Mass generation of high-quality creative assets Efficiency gains of around 80% Underpins creative industrialization
Intelligent customer care Multi-turn dialogue + intent recognition Automatically resolves player inquiries Output equivalent to a 30-person team Reduces operating costs while improving experience consistency

The True Nature of the Intelligent Leap

The 37 Interactive Entertainment case highlights a frequently overlooked truth:
The revolution brought by AI is not a revolution in tools, but a revolution in cognitive structure.

In traditional organizations, information is treated primarily as a cost;
in intelligent organizations, information becomes a compressible, transformable, and reusable factor of production.

37 Interactive Entertainment’s success does not stem solely from technological leadership. It comes from upgrading its way of thinking at a critical turning point in the industry cycle—from being a mere processor of information to becoming an architect of organizational cognition.

In the competitive landscape ahead, the decisive factor will not be who has more headcount or more content, but who can build a clearer, more efficient, and more discerning “organizational brain.” AI is only the entry point. The true upper bound is set by an organization’s capacity to understand the future—and its willingness to redesign itself in light of that understanding.

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Friday, January 16, 2026

When Engineers at Anthropic Learn to Work with Claude

— A narrative and analytical review of How AI Is Transforming Work at Anthropic, focusing on personal efficiency, capability expansion, learning evolution, and professional identity in the AI era.

In November 2025, Anthropic released its research report How AI Is Transforming Work at Anthropic. After six months of study, the company did something unusual: it turned its own engineers into research subjects.

Across 132 engineers, 53 in-depth interviews, and more than 200,000 Claude Code sessions, the study aimed to answer a single fundamental question:

How does AI reshape an individual’s work? Does it make us stronger—or more uncertain?

The findings were both candid and full of tension:

  • Roughly 60% of engineering tasks now involve Claude, nearly double from the previous year;

  • Engineers self-reported an average productivity gain of 50%;

  • 27% of AI-assisted tasks represented “net-new work” that would not have been attempted otherwise;

  • Many also expressed concerns about long-term skill degradation and the erosion of professional identity.

This article distills Anthropic’s insights through four narrative-driven “personal stories,” revealing what these shifts mean for knowledge workers in an AI-transformed workplace.


Efficiency Upgrades: When Time Is Reallocated, People Rediscover What Truly Matters

Story: From “Defusing Bombs” to Finishing a Full Day’s Work by Noon

Marcus, a backend engineer at Anthropic, maintained a legacy system weighed down by years of technical debt. Documentation was sparse, function chains were tangled, and even minor modifications felt risky.

Previously, debugging felt like bomb disposal:

  • checking logs repeatedly

  • tracing convoluted call chains

  • guessing root causes

  • trial, rollback, retry

One day, he fed the exception stack and key code segments into Claude.

Claude mapped the call chain, identified three likely causes, and proposed a “minimum-effort fix path.” Marcus’s job shifted to:

  1. selecting the most plausible route,

  2. asking Claude to generate refactoring steps and test scaffolds,

  3. adjusting only the critical logic.

He finished by noon. The remaining hours went into discussing new product trade-offs—something he rarely had bandwidth for before.


Insight: Efficiency isn’t about “doing the same task faster,” but about “freeing attention for higher-value work.”

Anthropic’s data shows:

  • Debugging and code comprehension are the most frequent Claude use cases;

  • Engineers saved “a little time per task,” but total output expanded dramatically.

Two mechanisms drive this:

  1. AI absorbs repeatable, easily verifiable, low-friction tasks, lowering the psychological cost of getting started;

  2. Humans can redirect time toward analysis, decision-making, system design, and trade-off reasoning—where actual value is created.

This is not linear acceleration; it is qualitative reallocation.


Personal Takeaway: If you treat AI as a code generator, you’re using only 10% of its value.

What to delegate:

  • log diagnosis

  • structural rewrites

  • boilerplate implementation

  • test scaffolding

  • documentation framing

Where to invest your attention:

  • defining the problem

  • architectural trade-offs

  • code review

  • cross-team alignment

  • identifying the critical path

What you choose to work on—not how fast you type—is where your value lies.


Capability Expansion: When Cross-Stack Work Stops Being Intimidating

Story: A Security Engineer Builds the First Dashboard of Her Life

Lisa, a member of the security team, excelled at threat modeling and code audits—but had almost no front-end experience.

The team needed a real-time risk dashboard. Normally this meant:

  • queuing for front-end bandwidth,

  • waiting days or weeks,

  • iterating on a minimal prototype.

This time, she fed API response data into Claude and asked:

“Generate a simple HTML + JS interface with filters and basic visualization.”

Within seconds, Claude produced a working dashboard—charts, filters, and interactions included.
Lisa polished the styling and shipped it the same day.

For the first time, she felt she could carry a full problem from end to end.


Insight: AI turns “I can’t do this” into “I can try,” and “try” into “I can deliver.”

One of the clearest conclusions from Anthropic’s report:

Everyone is becoming more full-stack.

Evidence:

  • Security teams navigate unfamiliar codebases with AI;

  • Researchers create interactive data visualizations;

  • Backend engineers perform lightweight data analysis;

  • Non-engineers write small automation scripts.

This doesn’t eliminate roles—it shortens the path from idea to MVP, deepens end-to-end system understanding, and raises the baseline capability of every contributor.


Personal Takeaway: The most valuable skill isn’t a specific tech stack—it's how quickly AI amplifies your ability to cross domains.

Practice:

  • Use AI for one “boundary task” you’re not familiar with (front end, analytics, DevOps scripts).

  • Evaluate the reliability of the output.

  • Transfer the gained understanding back into your primary role.

In the AI era, your identity is no longer “backend/front-end/security/data,”
but:

Can you independently close the loop on a problem?


Learning Evolution: AI Accelerates Doing, but Can Erode Understanding

Story: The New Engineer Who “Learns Faster but Understands Less”

Alex, a new hire, needed to understand a large service mesh.
With Claude’s guidance, he wrote seemingly reasonable code within a week.

Three months later, he realized:

  • he knew how to write code, but not why it worked;

  • Claude understood the system better than he did;

  • he could run services, but couldn’t explain design rationale or inter-service communication patterns.

This was the “supervision paradox” many engineers described:

To use AI well, you must be capable of supervising it—
but relying on AI too heavily weakens the very ability required for supervision.


Insight: AI accelerates procedural learning but dilutes conceptual depth.

Two speeds of learning emerge:

  • Procedural learning (fast): AI provides steps and templates.

  • Conceptual learning (slow): Requires structural comprehension, trade-off reasoning, and system thinking.

AI creates the illusion of mastery before true understanding forms.


Personal Takeaway: Growth comes from dialogue with AI, not delegation to AI.

To counterbalance the paradox:

  1. Write a first draft yourself before asking AI to refine it.

  2. Maintain “no-AI zones” for foundational practice.

  3. Use AI as a teacher:

    • ask for trade-off explanations,

    • compare alternative architectures,

    • request detailed code review logic,

    • force yourself to articulate “why this design works.”

AI speeds you up, but only you can build the mental models.


Professional Identity: Between Excitement and Anxiety

Story: Some Feel Like “AI Team Leads”—Others Feel Like They No Longer Write Code

Reactions varied widely:

  • Some engineers said:

    “It feels like managing a small AI engineering team. My output has doubled.”

  • Others lamented:

    “I enjoy writing code. Now my work feels like stitching together AI outputs. I’m not sure who I am anymore.”

A deeper worry surfaced:

“If AI keeps improving, what remains uniquely mine?”

Anthropic doesn’t offer simple reassurance—but reveals a clear shift:

Professional identity is moving from craft execution to system orchestration.


Insight: The locus of human value is shifting from doing tasks to directing how tasks get done.

AI already handles:

  • coding

  • debugging

  • test generation

  • documentation scaffolding

But it cannot replace:

  1. contextual judgment across team, product, and organization

  2. long-term architectural reasoning

  3. multi-stakeholder coordination

  4. communication, persuasion, and explanation

These human strengths become the new core competencies.


Personal Takeaway: Your value isn’t “how much you code,” but “how well you enable code to be produced.”

Ask yourself:

  1. Do I know how to orchestrate AI effectively in workflows and teams?

  2. Can I articulate why a design choice is better than alternatives?

  3. Am I shifting from executor to designer, reviewer, or coordinator?

If yes, your career is already evolving upward.


An Anthropic-Style Personal Growth Roadmap

Putting the four stories together reveals an “AI-era personal evolution model”:


1. Efficiency Upgrade: Reclaim attention from low-value zones

AI handles: repetitive, verifiable, mechanical tasks
You focus on: reasoning, trade-offs, systemic thinking


2. Capability Expansion: Cross-stack and cross-domain agility becomes the norm

AI lowers technical barriers
You turn lower barriers into higher ownership


3. Learning Evolution: Treat AI as a sparring partner, not a shortcut

AI accelerates doing
You consolidate understanding
Contrast strengthens judgment


4. Professional Identity Shift: Move toward orchestration and supervision

AI executes
You design, interpret, align, and guide


One-Sentence Summary

Anthropic shows how individuals become stronger—not by coding faster, but by redefining their relationship with AI and elevating themselves into orchestrators of human-machine collaboration.

 

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Sunday, January 11, 2026

Intelligent Evolution of Individuals and Organizations: How Harvey Is Bringing AI Productivity to Ground in the Legal Industry

Over the past two years, discussions around generative AI have often focused on model capability improvements. Yet the real force reshaping individuals and organizations comes from products that embed AI deeply into professional workflows. Harvey is one of the most representative examples of this trend.

As an AI startup dedicated to legal workflows, Harvey reached a valuation of 8 billion USD in 2025. Behind this figure lies not only capital market enthusiasm, but also a profound shift in how AI is reshaping individual career development, professional division of labor, and organizational modes of production.

This article takes Harvey as a case study to distill the underlying lessons of intelligent productivity, offering practical reference to individuals and organizations seeking to leverage AI to enhance capabilities and drive organizational transformation.


The Rise of Vertical AI: From “Tool” to “Operating System”

Harvey’s rapid growth sends a very clear signal.

  • Total financing in the year: 760 million USD

  • Latest round: 160 million USD, led by a16z

  • Annual recurring revenue (ARR): 150 million USD, doubling year-on-year

  • User adoption: used by around 50% of Am Law 100 firms in the United States

These numbers are more than just signs of investor enthusiasm; they indicate that vertical AI is beginning to create structural value in real industries.

The evolution of generative AI roughly经历了三个阶段:

  • Phase 1: Public demonstrations of general-purpose model capabilities

  • Phase 2: AI-driven workflow redesign for specific professional scenarios

  • Phase 3 (where Harvey now operates): becoming an industry operating system for work

In other words, Harvey is not simply a “legal GPT”. It is a complete production system that combines:

Model capabilities + compliance and governance + workflow orchestration + secure data environments

For individual careers and organizational structures, this marks a fundamentally new kind of signal:

AI is no longer just an assistive tool; it is a powerful engine for restructuring professional division of labor.


How AI Elevates Professionals: From “Tool Users” to “Designers of Automated Workchains”

Harvey’s stance is explicit: “AI will not replace lawyers; it replaces the heavy lifting in their work.”
The point here is not comfort messaging, but a genuine shift in the logic of work division.

A lawyer’s workchain is highly structured:
Research → Reading → Reasoning → Drafting → Reviewing → Delivering → Client communication

With AI in the loop, 60–80% of this chain can be standardized, automated, and reused at scale.

How It Enhances Individual Professional Capability

  1. Task Completion Speed Increases Dramatically
    Time-consuming tasks such as drafting documents, compliance reviews, and case law research are handled by AI, freeing lawyers to focus on strategy, litigation preparation, and client relations.

  2. Cognitive Boundaries Are Expanded
    AI functions like an “infinitely extendable external brain”, enabling professionals to construct deeper and broader understanding frameworks in far less time.

  3. Capability Becomes More Transferable Across Domains
    Unlike traditional division of labor, where experience is locked in specific roles or firms, AI-driven workflows help individuals codify methods and patterns, making it easier to transfer and scale their expertise across domains and scenarios.

In this sense, the most valuable professionals of the future are not just those who “possess knowledge”, but those who master AI-powered workflows.


Organizational Intelligent Evolution: From Process Optimization to Production Model Transformation

Harvey’s emergence marks the first production-model-level transformation in the legal sector in roughly three decades.
The lessons here extend far beyond law and are highly relevant for all types of organizations.

1. AI Is Not Just About Efficiency — It Redesigns How People Collaborate

Harvey’s new product — a shared virtual legal workspace — enables in-house teams and law firms to collaborate securely, with encrypted isolation preventing leakage of sensitive data.

At its core, this represents a new kind of organizational design:

  • Work is no longer constrained by physical location

  • Information flows are no longer dependent on manual handoffs

  • Legal opinions, contracts, and case law become reusable, orchestratable building blocks

  • Collaboration becomes a real-time, cross-team, cross-organization network

These shifts imply a redefinition of organizational boundaries and collaboration patterns.

2. AI Is Turning “Unstructured Problems” in Complex Industries Into Structured Ones

The legal profession has long been seen as highly dependent on expertise and judgment, and therefore difficult to standardize. Harvey demonstrates that:

  • Data can be structured

  • Reasoning chains can be modeled

  • Documents can be generated and validated automatically

  • Risk and compliance can be monitored in real time by systems

Complex industries are not “immune” to AI transformation — they simply require AI product teams that truly understand the domain.

The same pattern will quickly replicate in consulting, investment research, healthcare, insurance, audit, tax, and beyond.

3. Organizations Will Shift From “Labor-Intensive” to “Intelligence-Intensive”

In an AI-driven environment, the ceiling of organizational capability will depend less on how many people are hired, and more on:

  • How many workflows are genuinely AI-automated

  • Whether data can be understood by models and turned into executable outputs

  • Whether each person can leverage AI to take on more decision-making and creative tasks

In short, organizational competitiveness will increasingly hinge on the depth and breadth of intelligentization, rather than headcount.


The True Value of Vertical AI SaaS: From Wrapping Models to Encapsulating Industry Knowledge

Harvey’s moat does not come from having “a better model”. Its defensibility rests on three dimensions:

1. Deep Workflow Integration

From case research to contract review, Harvey is embedded end-to-end in legal workflows.
This is not “automating isolated tasks”, but connecting the entire chain.

2. Compliance by Design

Security isolation, access control, compliance logs, and full traceability are built into the product.
In legal work, these are not optional extras — they are core features.

3. Accumulation and Transfer of Structured Industry Knowledge

Harvey is not merely a frontend wrapper around GPT. It has built:

  • A legal knowledge graph

  • Large-scale embeddings of case law

  • Structured document templates

  • A domain-specific workflow orchestration engine

This means its competitive moat lies in long-term accumulation of structured industry assets, not in any single model.

Such a product cannot be easily replaced by simply swapping in another foundation model. This is precisely why top-tier investors are willing to back Harvey at such a scale.


Lessons for Individuals, Organizations, and Industries: AI as a New Platform for Capability

Harvey’s story offers three key takeaways for broader industries and for individual growth.


Insight 1: The Core Competency of Professionals Is Shifting From “Owning Knowledge” to “Owning Intelligent Productivity”

In the next 3–5 years, the rarest and most valuable talent across industries will be those who can:

Harness AI, design AI-powered workflows, and use AI to amplify their impact.

Every professional should be asking:

  • Can I let AI participate in 50–70% of my daily work?

  • Can I structure my experience and methods, then extend them via AI?

  • Can I become a compounding node for AI adoption in my organization?

Mastering AI is no longer a mere technical skill; it is a career leverage point.


Insight 2: Organizational Intelligentization Depends Less on the Model, and More on Whether Core Workflows Can Be Rebuilt

The central question every organization must confront is:

Do our core workflows already provide the structural space needed for AI to create value?

To reach that point, organizations need to build:

  • Data structures that can be understood and acted upon by models

  • Business processes that can be orchestrated rather than hard-coded

  • Decision chains where AI can participate as an agent rather than as a passive tool

  • Automated systems for risk and compliance monitoring

The organizations that ultimately win will be those that can design robust human–AI collaboration chains.


Insight 3: The Vertical AI Era Has Begun — Winners Will Be Those Who Understand Their Industry in Depth

Harvey’s success is not primarily about technology. It is about:

  • Deep understanding of the legal domain

  • Deep integration into real legal workflows

  • Structural reengineering of processes

  • Gradual evolution into industry infrastructure

This is likely to be the dominant entrepreneurial pattern over the next decade.

Whether the arena is law, climate, ESG, finance, audit, supply chain, or manufacturing, new “operating systems for industries” will continue to emerge.


Conclusion: AI Is Not Replacement, but Extension; Not Assistance, but Reinvention

Harvey points to a clear trajectory:

AI does not primarily eliminate roles; it upgrades them.
It does not merely improve efficiency; it reshapes production models.
It does not only optimize processes; it rebuilds organizational capabilities.

For individuals, AI is a new amplifier of personal capability.
For organizations, AI is a new operating system for work.
For industries, AI is becoming new infrastructure.

The era of vertical AI has genuinely begun.
The real opportunities belong to those willing to redefine how work is done and to actively build intelligent organizational capabilities around AI.

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Tuesday, January 6, 2026

Anthropic: Transforming an Entire Organization into an “AI-Driven Laboratory”

Anthropic’s internal research reveals that AI is fundamentally reshaping how organizations produce value, structure work, and develop human capital. Today, approximately 60% of engineers’ daily workload is supported by Claude—accelerating delivery while unlocking an additional 27% of new tasks previously beyond the team’s capacity. This shift transforms backlogged work such as refactoring, experimentation, and visualization into systematic outputs.

The traditional role-based division of labor is giving way to a task-structured AI delegation model, requiring organizations to define which activities should be AI-first and which must remain human-led. Meanwhile, collaboration norms are being rewritten: instant Q&A is absorbed by AI, mentorship weakens, and experiential knowledge transfer diminishes—forcing organizations to build compensating institutional mechanisms. In the long run, AI fluency and workforce retraining will become core organizational capabilities, catalyzing a full-scale redesign of workflows, roles, culture, and talent strategies.


AI Is Rewriting How a Company Operates

  • 132 engineers and researchers

  • 53 in-depth interviews

  • 200,000 Claude Code interaction logs

These findings go far beyond productivity—they reveal how an AI-native organization is reshaped from within.

Anthropic’s organizational transformation centers on four structural shifts:

  1. Recomposition of capacity and project portfolios

  2. Evolution of division of labor and role design

  3. Reinvention of collaboration models and culture

  4. Forward-looking talent strategy and capability development


Capacity Structure: When 27% of Work Comes from “What Was Previously Impossible”

Story Scenario

A product team had long wanted to build a visualization and monitoring system, but the work was repeatedly deprioritized due to limited staffing and urgency. After adopting Claude Code, debugging, scripting, and boilerplate tasks were delegated to AI. With the same engineering hours, the team delivered substantially more foundational work.

As a result, dashboards, comparative experiments, and long-postponed refactoring cycles finally moved forward.

Research shows around 27% of Claude-assisted work represents net-new capacity—tasks that simply could not have been executed before.

Organizational Abstractions

  1. AI converts “peripheral tasks” into new value zones
    Refactoring, testing, visualization, and experimental work—once chronically under-resourced—become systematically solvable.

  2. Productivity gains appear as “doing more,” not “needing fewer people”
    Output scales faster than headcount reduction.

Insight for Organizations:
AI should be treated as a capacity amplifier, not a cost-cutting device. Create a dedicated AI-generated capacity pool for exploratory and backlog-clearing projects.


Division of Labor: Organizations Are Co-Writing the Rules of AI Delegation

Story Scenario

Teams gradually formed a shared understanding:

  • Low-risk, easily verifiable, repetitive tasks → AI-first

  • Architecture, core logic, and cross-functional decisions → Human-first

Security, alignment, and infrastructure teams differ in mission but operate under the same logic:
examine task structure first, then determine AI vs. human ownership.

Organizational Abstractions

  1. Work division shifts from role-based to task-based
    A single engineer may now: write code, review AI output, design prompts, and make architectural judgments.

  2. New roles are emerging organically
    AI collaboration architect, prompt engineer, AI workflow designer—titles informal, responsibilities real.

Insight for Organizations:
Codify AI usage rules in operational processes, not just job descriptions. Make delegation explicit rather than relying on team intuition.


Collaboration & Culture: When “Ask AI First” Becomes the Default

Story Scenario

New engineers increasingly ask Claude before consulting senior colleagues. Over time:

  • Junior questions decrease

  • Seniors lose visibility into juniors’ reasoning

  • Tacit knowledge transfer drops sharply

Engineers remarked:
“I miss the real-time debugging moments where learning naturally happened.”

Organizational Abstractions

  1. AI boosts work efficiency but weakens learning-centric collaboration and team cohesion

  2. Mentorship must be intentionally reconstructed

    • Shift from Q&A to Code Review, Design Review, and Pair Design

    • Require juniors to document how they evaluated AI output, enabling seniors to coach thought processes

Insight for Organizations:
Do not mistake “fewer questions” for improved efficiency. Learning structures must be rebuilt through deliberate mechanisms.


Talent & Capability Strategy: Making AI Fluency a Foundational Organizational Skill

Story Scenario

As Claude adoption surged, Anthropic’s leadership asked:

  • What will an engineering team look like in five years?

  • How do implementers evolve into AI agent orchestrators?

  • Which roles need reskilling rather than replacement?

Anthropic is now advancing its AI Fluency Framework, partnering with universities to adapt curricula for an AI-augmented future.

Organizational Abstractions

  1. AI is a human capital strategy, not an IT project

  2. Reskilling must be proactive, not reactive

  3. AI fluency will become as fundamental as computer literacy across all roles

Insight for Organizations:
Develop AI education, cross-functional reskilling pathways, and ethical governance frameworks now—before structural gaps appear.


Final Organizational Insight: AI Is a Structural Variable, Not Just a New Tool

Anthropic’s experience yields three foundational principles:

  1. Redesign workflows around task structure—not tools

  2. Embed AI into talent strategy, culture, and role evolution

  3. Use institutional design—not individual heroism—to counteract collaboration erosion and skill atrophy

The organizations that win in the AI era are not those that adopt tools first, but those that first recognize AI as a structural force—and redesign themselves accordingly.

Related topic:

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Sustainable Development Reports
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