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God of Prompt
🚨 I just read Google DeepMind’s new paper called "Intelligent AI Delegation."

And it quietly exposes why 99% of AI agents will fail in the real world.

Here’s the paper:

Most “AI agents” today aren’t agents.

They’re glorified task runners.

You give them a goal.
They break it into steps.
They call tools.
They return an output.

That’s not delegation.

That’s automation with better marketing.

Google’s paper makes a brutal point:

Delegation isn’t just splitting tasks.

It’s transferring authority, responsibility, accountability, and trust across agents dynamically.

And almost no current system does this.

Here’s what they argue real delegation actually requires:

1. Dynamic assessment

Before assigning a task, an agent must evaluate:

- Capability
- Resource availability
- Risk
- Cost
- Verifiability
- Reversibility

Not just “who has the tool?”

But: “Who should be trusted with this specific task under these constraints?”

That’s a massive shift.

2. Adaptive execution

If the delegatee underperforms…

You don’t wait for failure.

You reassign mid-execution.

Switch agents.
Escalate to a human.
Restructure the task graph.

Current agents are brittle.
Real agents need recovery logic.

3. Structural transparency

Today’s AI-to-AI delegation is opaque.

If something fails, you don’t know:

- Was it incompetence?
- Misalignment?
- Bad decomposition?
- Malicious behavior?
- Tool failure?

The paper proposes enforced auditability and verifiable completion.

In other words:

Agents must prove what they did.

Not just say they did it.

4. Trust calibration

This is huge.

Humans routinely over-trust AI.
AI agents may over-trust other agents.
Both are dangerous.

Delegation must align trust with actual capability.

Too much trust = catastrophe.
Too little trust = wasted potential.

5. Systemic resilience

This is the part nobody is talking about.

If every agent delegates to the same high-performing model…

You create a monoculture.

One failure.
System-wide collapse.

Efficiency without redundancy = fragility.

Google explicitly warns about cascading failures in agentic economies.

That’s not sci-fi.
That’s distributed systems reality.

The paper also breaks down:

- Principal-agent problems in AI
- Authority gradients between agents
- “Zones of indifference” (agents complying without critical thinking)
- Transaction cost economics for AI markets
- Game-theoretic coordination
- Hybrid human-AI delegation models

This isn’t a toy-agent paper.

It’s an operating system blueprint for the “agentic web.”

The core idea:

Delegation must be a protocol.
Not a prompt.

Right now, most “multi-agent systems” are:

Agent A → Agent B → Agent C

With zero formal responsibility structure.

In a real delegation framework:

• Roles are defined
• Permissions are bounded
• Verification is required
• Monitoring is enforced
• Market coordination is decentralized
• Failures are attributable

That’s enterprise-grade infrastructure.

And we don’t have it yet.

The most important line in the paper?

Automation is not just about what AI can do.

It’s about what AI *should* do.

That distinction will decide:

- which startups survive
- which enterprises scale
- which ai deployments implode

We’re entering the phase where:

Prompt engineering → Agent engineering → Delegation engineering.

The companies that figure out intelligent delegation protocols first will build:

• Autonomous economic systems
• Scalable AI marketplaces
• Human-AI hybrid orgs
• Resilient agent swarms

Everyone else will ship brittle demos.

This paper isn’t flashy.

No benchmarks.
No model release.
No hype numbers.

Just a 42-page warning:

If we don’t build adaptive, accountable delegation frameworks…

The agentic web collapses under its own complexity.

And honestly?

They’re probably right. tweet
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Brady Long
I reverse-engineered the actual prompting frameworks that top AI labs use internally.

Not the fluff you see on Twitter.

The real shit that turns vague inputs into precise, structured outputs.

Spent 3 weeks reading OpenAI's model cards, Anthropic's constitutional AI papers, and leaked internal prompt libraries.

Here's what actually moves the needle:
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God of Prompt
RT @godofprompt: Sora, Runway,... they all do the same damn thing.

You prompt. You wait. You get a clip. You start over.

That's not creation. That's a glorified vending machine with a $20/month subscription.

PixVerse R1 just made all of it look ancient. Real-time 1080P video that listens to you while it's generating. No render bar. No fixed clips. No "try again."

Here's why nobody's ready for this: 👇
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God of Prompt
RT @godofprompt: After interviewing 12 AI researchers from OpenAI, Anthropic, and Google, I noticed they all use the same 10 prompts.

Not the ones you see on X and LinkedIn.

These are the prompts that actually ship products, publish papers, and break benchmarks.

Here's what they told me ↓ https://t.co/CwG47vkWPV
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Michael Fritzell (Asian Century Stocks)
RT @willschoebs: Nice little Friday afternoon in 🇯🇵 tech land https://t.co/yMiw5wStVw
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Jukan
Nomura SK Hynix Comment: SK Hynix 2026/27F Operating Profit Forecast at $130.8B / $184.8B

"We estimate that commodity memory price increases in 1Q26 significantly exceeded our initial expectations. We estimate commodity DRAM/NAND prices rose +90%/+60% QoQ in 1Q, substantially surpassing our previous forecasts of DRAM +56% and NAND +40% QoQ. Reflecting this, we raise our 1Q26F operating profit (OP) estimate for Hynix from KRW 29T to KRW 36T. We also raise our full-year 2026F commodity DRAM/NAND price growth forecasts from +126%/+115% YoY to +176%/+146% YoY. Accordingly, we revise up our 2026/27F operating profit (OP) estimates to KRW 189T / KRW 267T. We expect Hynix to achieve DRAM/NAND operating profit margins (OPM) of 76%/57% in 2026F. Factoring in higher quarterly performance bonus costs, we estimate 2026F DRAM/NAND cost per bit will increase +26%/+18% YoY, respectively."
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Michael Fritzell (Asian Century Stocks)
RT @AzizSapphire: China’s 🇨🇳 industrial clusters
🇨🇳 🇨🇳 🇨🇳 https://t.co/A10bZ0QOrM
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Jukan
Nomura on Samsung Electronics: Raised 2026/27 operating profit (OP) forecasts to $168.2bn / $222.9bn

"We estimate that the rise in commodity memory prices significantly outpaced our expectation in 1Q26. We estimate that commodity DRAM/NAND prices rose by 90%/60% in 1Q26, which strongly beat our previous forecasts (DRAM +56%/NAND +40% q-q). We believe Samsung Electronics’ (SEC) HBM4 has better performance but higher production costs vs. competitors’, as the company fabricates core dies through 1C node and adopts base dies from 4nm-node foundry. While some of the customers require speed faster than 11.7Gbps, supplies from HBM suppliers are likely to be limited; thus, we see high potential for pricing premium of 30-40%. (Since low-speed HBM4 is also in tight supply, we do not think it can be viewed as a discount factor for memory companies.) Consequently, we anticipate SEC to benefit from high-speed HBM4 market and gain market share in HBM4. We raise our HBM ASP forecast for SEC, and raise 2026F HBM shipment growth from +112% y-y to +144% y-y. Reflecting these factors, we expect SEC’s 1Q26F memory OP to be at KRW44tn (+153% q-q), which is substantially above our previous forecast of KRW33tn. Although we anticipate commodity memory price growth to decelerate from 2Q26F, we think HBM ASP should rise q-q, based on rising mix of HBM4. We expect SEC to record 2026/27F OP of KRW243tn/322tn (+457%/+33% y-y; Fig. 6), and 2026/27F ROE of 42%/42%, which is higher than our previous estimates of 34%/35%."
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God of Prompt
How to use LLMs for competitive intelligence (scraping, analysis, reporting): https://t.co/xlGOSpRQPy
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God of Prompt
RT @godofprompt: OpenClaw hit 145K GitHub stars and became the fastest-growing open-source AI project in history.

But 90% of people installing it have no idea how to set it up safely.

That's why I built the OpenClaw Starter Guide. It covers:
→ Full architecture breakdown (Gateway, Agent, Skills, Memory)
→ 30-minute setup walkthrough for any hardware
→ Security hardening so you don't end up on Shodan
→ Memory upgrade prompt that makes your agent actually remember you

If you want a personal AI assistant that actually does things, not another chatbot, this is the guide.

Comment "Claw" and I'll DM it to you.
(Must be following me to receive it)
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