Google quietly turned a dial this week, trading reflex for rigor: Gemini 3 Deep Think — a new “slow but smart” reasoning mode — is now available inside the Gemini app for Google AI Ultra subscribers. Rather than treating the model like a fast chatty assistant, Deep Think is aimed at people who want AI to act like a thoughtful collaborator on hard problems: multi-step math, technical debugging, novel research questions and long-horizon planning where mistakes in the middle of the work blow up the final result.
What makes Deep Think different is process over speed. The mode layers a deliberate reasoning routine on top of Gemini 3 Pro: instead of following a single chain of thought and returning the first plausible answer, the model internally explores multiple hypotheses in parallel, prunes weaker branches, and iteratively refines the path to a final response. That translates into longer waits and longer answers — the tradeoff is that intermediate steps are checked and carried forward, so the kind of brittle leaps and inconsistent arithmetic that trip up standard chat modes happen less often.
You won’t find Deep Think in the free tier. It’s gated behind Google AI Ultra — the company’s top subscription tier — and appears as a toggle when you pick Gemini 3 Pro in the model selector inside the app. Google’s guidance and support pages make it explicit: you must be a Google AI Ultra subscriber (or have an Ultra for Business license) and be signed into the Gemini apps to use the mode. Expect regional and language limitations during the rollout; Google has used the Gemini app as the testbed for its more experimental features before widening availability.
For power users, the practical change is straightforward: answers can take noticeably longer — sometimes minutes — but they arrive with more structure. Deep Think shines at questions that require chained reasoning and internal verification: multi-step quantitative work where each intermediate calculation matters; scientific and engineering reasoning that benefits from comparing alternative designs or tradeoffs; strategic planning across timelines and constraints; and complex refactors or architecture decisions in code where exploring multiple approaches first pays off. In short, it’s built for when you care about the how as much as the what.
Google’s own evaluation suggests the shift matters beyond marketing: Deep Think posts higher scores on demanding benchmarks than the vanilla Gemini 3 Pro, including notable lifts on tests designed to stress multi-step reasoning and code-enabled puzzle solving. Those benchmark numbers — while not a perfect proxy for every real-world task — indicate the model’s improved ability to handle unfamiliar or layered problems. The company’s messaging and accompanying model pages make clear this is a compute-heavy, accuracy-first setting rather than a new conversational product.
That positioning is no accident. Deep Think fits into Google’s larger product segmentation: free and Pro tiers for everyday needs, and Ultra as the sandbox for frontier capabilities that demand more compute and guardrails. Ultra bundles higher usage limits and early access to features such as Deep Think, and it’s where Google places features that are still being evaluated for safety and robustness before a broader rollout. For organizations and researchers that need more reliable reasoning, the option to pay for a dedicated “deliberation mode” will be an obvious draw; for most users, the default Gemini 3 Pro will remain the faster, cheaper tool for routine writing, summarization and light coding.
There are caveats. Benchmark lifts don’t eliminate hallucinations or logical blind spots — they reduce them in specific, testable ways — and the longer response times mean Deep Think isn’t a fit for quick, interactive workflows. It’s also another step toward commoditizing specialized AI tiers: companies and serious individual users now face the calculus of when to pay for greater deliberation versus scaling cheaper, faster models for high-volume work. That split matters not just for consumers but for product teams building on top of models, which must now design around modes that optimize for different tradeoffs.
For those who use AI as a research partner, the arrival of Deep Think signals a subtle shift: models are beginning to offer configurable cognitive styles — quick heuristics for everyday tasks and slower, more methodical routines for tough problems. If that works as advertised, the next step will be stitching those styles into seamless workflows so a single session can escalate from rapid brainstorming to careful verification without losing context. For now, Deep Think is a clear, deliberate experiment from Google: slower answers, richer reasoning, and a bet that some problems are worth paying extra compute (and money) to solve.
If you want to try it and you’re eligible, open the Gemini app, choose Gemini 3 Pro in the model selector, and enable the Deep Think option in the prompt bar. If you’re not on Ultra yet, this rollout is a reminder of how quickly the AI feature frontier is professionalizing — and how the tools for serious, reproducible reasoning are moving behind a subscription gate.
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