Bubble Watch

Twelve reads on the AI-market build-out, straight from the filings. Five engine-bound, five sourced and dated, two in collection. We report the gap; we don’t call the crash.

2026Q2
The Divergence · D(t)
+4.06σ

What the market prices minus what the filings support — widest reading on record.

ai_fragility engine — M(t) market narrative minus G(t) filings ground-truth
2025Q3 → 2026Q2
Read the evidence — The Report

Analysis

Short economic analysis — the desk's filing-sourced reads on the machine's economy, as they publish.

Jobs

Who's written out of the workflow — named at the level of the role. The franchise: Layoffs by AI.

Money

Who spends what, and whether the math survives the filings. A company cuts people to save a little, then spends ten or a hundred times that on compute — and files it under "efficiency." Money audits the trade: capex against payroll, the "AI revenue" that's a rounding error, the market that punishes anyone who doesn't say "AI" on the call. We trace it to the executive who signed the contract — not the machine.

Energy

The physical bill of the build-out, and who pays it. A model writing a poem about rain draws real power to do it, and the water and the megawatts belong to somebody. Energy covers the power draw, the grid strain, the town that never voted for a data center but pays for the substation — not the doom version and not the brochure version, the sourced version, from the utility filings and the permit dockets.

Power

The people writing the rules are the people who profit from them. The companies building AI are also the ones testifying about its dangers to the committees that would regulate it, and funding the lobbyists who draft the language. Power follows the politics — regulation, lobbying, surveillance, the revolving door between the agencies and the labs — as a paper trail, not an accusation.

Society

How the machine rewires the culture — dating, art, friendship, grief. The franchise: Social Loop.

Human & Machine

The interface. We test logic, bias, and machine dissonance.

The Report

The body the Watch charts — the long-form fragility proof. Ten Signals, the Ledgers, the Dossiers, the evidence.

00The AI Bubble — The Ten SignalsThe opening: the thesis, the whole proof on one map, and the ten signals — called, and proven.01The ComplexWho builds, who lends, who buys — labs, clouds, chipmakers, financiers. The map before the argument.02The Six StressesDepreciation, capex-vs-demand, insider selling, circular financing, energy, organic demand — the six fault lines the engine scores.03Valuation & Failure PointsWhere the multiples are stretched — and the specific levels at which the story breaks.04The Market LensSurface tape vs ground-truth tape: SOXX, the 200-day trend, and the divergence metric D(t).05The ContentionThe strongest bull case, stated honestly — the rebuttal the desk chose to lose.06The Federal LayerPolicy read as filings: subsidies, contracts, and Washington as counterparty.07Token EconomicsThe money: the unit economics of a token, and the flows that must eventually pay for the compute.08The ImpactsEconomic, environmental, social — what the buildout costs beyond the market.09Promises & ScamsThe claims that keep the capital coming, graded against what actually shipped.10The Dossiers (L1–L5)52 company dossiers across the five layers, scored on the six stresses by the engine.11Demand RealityIndustry by industry, ring by ring — where AI revenue is real and where it is still a demo.12The LedgersThe circular-financing ledger, edge by edge — funded vs committed, straight from the engine.13PositionsThe desk's own expression of the thesis — direction only, falsifiers attached.14FalsifiersThe conditions that would make the desk wrong, stated in advance.15ConclusionNecessary, not sufficient — the verdict, and what to watch next.

Instruments

The live tools — the market read as working instruments.

Markets

The tracked universe — 68 firms across five layers, filterable by the six fragility indicators.

Industries

Demand reality, ring by ring — the 31 industries in concentric rings, each labelled by its coverage state.

Research

The papers, the whitepapers, and Visually Explained.

Methods & Receipts

How every figure is measured — and the desk's dated track record.

AI Principles

What a model is before any product wraps it: the math and the logic underneath. Tokens (the fragments it reads), weights (the numbers it learned), training (how those numbers got set), the transformer, and the one move it makes over and over — predict the next token. Understand this layer and the rest of the stack stops being magic and starts being machinery.

Hardware

AI is matrix multiplication at enormous scale, and that is exactly what a GPU does: thousands of simple calculations at once. This layer is the chips — GPUs, TPUs, accelerators — and the reason a shortage or an export rule is an AI story. The bottleneck is rarely raw math; it's memory bandwidth, the speed of getting numbers to the math. That detail decides who can build and who waits.

Infrastructure

The models are software; this is the building they live in — the data centers, the power, the cooling, and the networking that lets thousands of chips behave as one machine. The least glamorous layer and the most physical: a real grid, a real water bill, a real place downwind. (The mechanics live here; what it costs the people nearby is AI Impact's Energy lane.)

Foundation

How a pile of the internet becomes something that can answer. Pretraining (learning to predict text at scale), embeddings (turning meaning into coordinates), and the shaping that comes after — fine-tuning, RLHF, quantization — that turns raw capability into a usable, aligned model. The heart of the stack: where the intelligence, such as it is, actually comes from.

Models

Deep dossiers on the four model families that define the market — Claude, ChatGPT/OpenAI, Gemini, and the open-weights ecosystem. Who built it, what it actually does, where it leads and where it lies, and how to decide which one belongs in your stack.

Orchestration

A model on its own is frozen at its training cutoff and knows nothing about your world. Orchestration is the plumbing that fixes that: retrieval (RAG), tools, agents, memory, vector databases — everything that lets a static model act on live data, right now. Most of what ships as an "AI product" is mostly this layer, not the model.

Application

The SaaS, the APIs, the workflows built on top — and the unglamorous things that decide whether they work in production: cost per token, latency, evals (how you measure if it's any good), and guardrails (what stops it embarrassing you). Everyone sees this layer; few reckon with its price. Where the stack finally touches a human being who just wants the thing to work.

Playbook

The practitioner's wing — built for people who are already using these tools and want to use them better. Best practices rooted in how output quality actually behaves, a copy-ready prompt library across six task categories, six end-to-end how-to builds, integration patterns for connecting the stack to everything else, and the definitive guide to AI coding platforms.

News & Video

Tools & models — releases & how-to — curated by this desk's lens (one firehose, angle-classified).

Curated News
Releases and how-to, angle-classified to the tools & models lens.
Feed wiring in progress