Introducing GPT‑5.2
The most advanced frontier model for professional work and long-running agents.
We are introducing GPT‑5.2, the most capable model series yet for professional knowledge work.
Already, the average ChatGPT Enterprise user says AI saves them 40–60 minutes a day, and heavy users say it saves them more than 10 hours a week. We designed GPT‑5.2 to unlock even more economic value for people; it’s better at creating spreadsheets, building presentations, writing code, perceiving images, understanding long contexts, using tools, and handling complex, multi-step projects.
GPT‑5.2 sets a new state of the art across many benchmarks, including GDPval, where it outperforms industry professionals at well-specified knowledge work tasks spanning 44 occupations.
Model | GPT‑5.2 Thinking | GPT‑5.1 Thinking |
GDPval (victòries o empats) | 70.9% | 38.8% (GPT‑5) |
SWE-Bench Pro (públic) | 55.6% | 50.8% |
SWE-bench Verified | 80.0% | 76.3% |
GPQA Diamond (sense eines) | 92.4% | 88.1% |
CharXiv Reasoning (amb Python) | 88.7% | 80.3% |
AIME 2025 (sense eines) | 100.0% | 94.0% |
FrontierMath (nivells 1–3) | 40.3% | 31.0% |
FrontierMath (nivell 4) | 14.6% | 12.5% |
ARC-AGI-1 (Verified) | 86.2% | 72.8% |
ARC-AGI-2 (Verified) | 52.9% | 17.6% |
Notion(s'obre en una finestra nova), Box(s'obre en una finestra nova), Shopify(s'obre en una finestra nova), Harvey(s'obre en una finestra nova) and Zoom(s'obre en una finestra nova) observed GPT‑5.2 demonstrates state-of-the-art long-horizon reasoning and tool-calling performance. Databricks(s'obre en una finestra nova), Hex(s'obre en una finestra nova) and Triple Whale(s'obre en una finestra nova) found GPT‑5.2 to be exceptional at agentic data science and document analysis tasks. Cognition(s'obre en una finestra nova), Warp(s'obre en una finestra nova), Charlie Labs(s'obre en una finestra nova), JetBrains(s'obre en una finestra nova) and Augment Code(s'obre en una finestra nova) say GPT‑5.2 delivers state-of-the-art agentic coding performance, with measurable improvements in areas such as interactive coding, code reviews and bug finding.
In ChatGPT, GPT‑5.2 Instant, Thinking, and Pro will begin rolling out today, starting with paid plans. In the API, they are available now to all developers.
Overall, GPT‑5.2 brings significant improvements in general intelligence, long-context understanding, agentic tool-calling, and vision—making it better at executing complex, real-world tasks end-to-end than any previous model.
GPT‑5.2 Thinking is the best model yet for real-world, professional use. On GDPval, an eval measuring well-specified knowledge work tasks across 44 occupations, GPT‑5.2 Thinking sets a new state-of-the-art score, and is our first model that performs at or above a human expert level. Specifically, GPT‑5.2 Thinking beats or ties top industry professionals on 70.9% of comparisons on GDPval knowledge work tasks, according to expert human judges. These tasks include making presentations, spreadsheets, and other artifacts. GPT‑5.2 Thinking produced outputs for GDPval tasks at >11x the speed and <1% the cost of expert professionals, suggesting that when paired with human oversight, GPT‑5.2 can help with professional work. Speed and cost estimates are based on historical metrics; speed in ChatGPT may vary.
A GDPval, els models intenten fer treball de coneixement ben especificat que abasta 44 ocupacions dels 9 principals sectors que contribueixen al PIB dels EUA. Les tasques demanen productes de treball reals, com presentacions de vendes, fulls de càlcul comptables, horaris d’atenció urgent, diagrames de fabricació o vídeos curts. A ChatGPT, GPT‑5.2 Thinking té eines noves que GPT‑5 Thinking no té.
When reviewing one especially good output, one GDPval judge commented, "It is an exciting and noticeable leap in output quality... [it] appears to have been done by a professional company with staff, and has a surprisingly well designed layout and advice for both deliverables, though with one we still have some minor errors to correct."
Additionally, on our internal benchmark of junior investment banking analyst spreadsheet modeling tasks—such as putting together a three-statement model for a Fortune 500 company with proper formatting and citations, or building a leveraged buyout model for a take-private—GPT 5.2 Thinking's average score per task is 9.3% higher than GPT‑5.1’s, rising from 59.1% to 68.4%.
Side-by-side comparisons show improved sophistication and formatting in spreadsheets and slides generated by GPT‑5.2 Thinking:

Indicació: Crea un model de planificació de plantilla: nombre d’empleats, pla de contractació, attrition i impacte pressupostari. Inclou els departaments d’enginyeria, màrqueting, legal i vendes.
To use the new spreadsheet and presentation capabilities in ChatGPT, you must be on a Plus, Pro, Business, or Enterprise plan and select either GPT‑5.2 Thinking or Pro. Complex generations can take many minutes to produce.
GPT‑5.2 Thinking sets a new state of the art of 55.6% on SWE-Bench Pro, a rigorous evaluation of real-world software engineering. Unlike SWE-bench Verified, which only tests Python, SWE-Bench Pro tests four languages and aims to be more contamination-resistant, challenging, diverse, and industrially relevant.
A SWE-Bench Pro(s'obre en una finestra nova), es proporciona a un model un repositori de codi i ha de generar un pedaç per resoldre una tasca realista d’enginyeria de programari.
On SWE-bench Verified (not plotted), GPT‑5.2 Thinking scores our new high of 80%.
For everyday professional use, this translates into a model that can more reliably debug production code, implement feature requests, refactor large codebases, and ship fixes end-to-end with less manual intervention.
GPT‑5.2 Thinking is also better at front-end software engineering than GPT‑5.1 Thinking. Early testers found it significantly stronger at front-end development and complex or unconventional UI work—especially involving 3D elements—making it a powerful daily partner for engineers across the stack. See a few examples of what it can produce from a single prompt:
Indicació: Crea una aplicació d’una sola pàgina en un únic fitxer HTML amb els requisits següents:
- Nom: Simulació d’onades oceàniques
- Objectiu: Mostrar onades animades realistes.
- Funcionalitats: Canviar la velocitat del vent, l’alçada de les onades i la il·luminació.
- La IU ha de ser calmada i realista.
Early testers shared their feedback on GPT‑5.2’s coding capabilities:
«GPT-5.2 representa el salt més gran per als models GPT en programació agentiva des de GPT-5 i és un model de programació SOTA en la seva franja de preu. L’augment de versió es queda curt respecte al salt d’intel·ligència. Ens fa il·lusió convertir-lo en el model predeterminat a tot Windsurf i en diverses càrregues de treball bàsiques de Devin.»
GPT‑5.2 Thinking hallucinates less than GPT‑5.1 Thinking. On a set of de-identified queries from ChatGPT, responses with errors were 30%rel less common. For professionals, this means fewer mistakes when using the model for research, writing, analysis, and decision support—making the model more dependable for everyday knowledge work.
L’esforç de raonament es va establir al màxim disponible i es va habilitar una eina de cerca. Els errors van ser detectats per altres models, que també poden equivocar-se. Les taxes d’error a nivell d’afirmació són molt més baixes que les taxes d’error a nivell de resposta, ja que la majoria de respostes contenen moltes afirmacions.
Like all models, GPT‑5.2 Thinking is imperfect. For anything critical, double check its answers.
GPT‑5.2 Thinking sets a new state of the art in long-context reasoning, achieving leading performance on OpenAI MRCRv2—an evaluation that tests a model’s ability to integrate information spread across long documents. On real-world tasks like deep document analysis, which require related information across hundreds of thousands of tokens, GPT‑5.2 Thinking is substantially more accurate than GPT‑5.1 Thinking. In particular, it’s the first model we’ve seen that achieves near 100% accuracy on the 4-needle MRCR variant (out to 256k tokens).
In practical terms, this enables professionals to use GPT‑5.2 to work with long documents—such as reports, contracts, research papers, transcripts, and multi-file projects—while maintaining coherence and accuracy across hundreds of thousands of tokens. This makes GPT‑5.2 especially well suited for deep analysis, synthesis, and complex multi-source workflows.
A OpenAI-MRCR(s'obre en una finestra nova) v2 (resolució de correferències multivolta), s’insereixen múltiples peticions d’usuari “agulla” idèntiques en “pallers” llargs de peticions i respostes similars, i es demana al model que reprodueixi la resposta a la n-èsima agulla. La versió 2 de l’avaluació corregeix ~5% de les tasques que tenien valors de veritat de referència incorrectes. La taxa mitjana de coincidència mesura la taxa mitjana de coincidència de cadenes entre la resposta del model i la resposta correcta. Els punts a 256k segments màxims d’entrada representen mitjanes sobre 128k–256k segments d’entrada, i així successivament. Aquí, 256k representa 256 * 1,024 = 262,144 segments. L’esforç de raonament es va establir al màxim disponible.
For tasks that benefit from thinking beyond the maximum context window, GPT‑5.2 Thinking is compatible with our new Responses /compact endpoint, which extends the model’s effective context window. This lets GPT‑5.2 Thinking tackle more tool-heavy, long-running workflows that would otherwise be limited by context length. Read more in our API documentation(s'obre en una finestra nova).
GPT‑5.2 Thinking is our strongest vision model yet, cutting error rates roughly in half on chart reasoning and software interface understanding.
For everyday professional use, this means the model can more accurately interpret dashboards, product screenshots, technical diagrams, and visual reports—supporting workflows in finance, operations, engineering, design, and customer support where visual information is central.
A CharXiv Reasoning(s'obre en una finestra nova), els models responen preguntes sobre gràfics visuals de treballs científics. Es va habilitar una eina Python i l’esforç de raonament es va establir al màxim.
A ScreenSpot-Pro(s'obre en una finestra nova), els models han de raonar sobre captures de pantalla d’alta resolució d’interfícies gràfiques d’usuari de diversos entorns professionals. Es va habilitar una eina Python i l’esforç de raonament es va establir al màxim. Sense l’eina Python, les puntuacions són molt més baixes. Recomanem habilitar l’eina Python en tasques de visió com aquestes.
Compared to previous models, GPT‑5.2 Thinking has a stronger grasp of how elements are positioned within an image, which helps on tasks where relative layout plays a key role in solving the problem. In the example below, we ask the model to identify the components in an image input (in this case, a motherboard) and return labels with approximate bounding boxes. Even on a low-quality image, GPT‑5.2 identifies the main regions and places boxes that sometimes match the true locations of each component, while GPT‑5.1 only labels a few parts and shows a much weaker understanding of their spatial arrangement. Both models make clear mistakes, but GPT‑5.2 shows better comprehension of the image.
GPT‑5.1

GPT‑5.2

GPT‑5.2 Thinking achieves a new state of the art of 98.7% on Tau2-bench Telecom, demonstrating its ability to reliably use tools across long, multi-turn tasks.
For latency-sensitive use cases, GPT‑5.2 Thinking also performs much better at reasoning.effort='none', substantially outperforming GPT‑5.1 and GPT‑4.1.
A τ2-bench(s'obre en una finestra nova), els models fan servir eines per completar tasques d’atenció al client en una interacció de diversos torns amb un usuari simulat. Per al domini Telecom, vam incloure una instrucció breu i generalment útil a la indicació del sistema per millorar el rendiment. Excloem el subconjunt Airline a causa de la menor qualitat de l’avaluació de la veritat de referència.
For professionals, this translates into stronger end-to-end workflows—such as resolving customer support cases, pulling data from multiple systems, running analyses, and generating final outputs with fewer breakdowns between steps.
For example, when asking a complex customer service question that requires multi-step resolution, the model can more effectively coordinate a full workflow across multiple agents. In the case below, a traveler reports a delayed flight, a missed connection, an overnight stay in New York, and a medical seating requirement. GPT‑5.2 manages the entire chain of tasks—rebooking, special-assistance seating, and compensation—delivering a more complete outcome than GPT‑5.1.
GPT‑5.1

GPT‑5.2

One of our hopes for AI is that it will accelerate scientific research for the benefit of everyone. Toward this, we’ve been working with and listening to scientists to see how AI can speed up their work, and last month we shared some early collaborative experiments here.
We believe GPT‑5.2 Pro and GPT‑5.2 Thinking are the world’s best models for assisting and accelerating scientists. On GPQA Diamond, a graduate-level Google-proof Q&A benchmark, GPT‑5.2 Pro achieves 93.2%, followed closely by GPT‑5.2 Thinking at 92.4%.
A GPQA Diamond(s'obre en una finestra nova), els models responen preguntes de resposta múltiple sobre física, química i biologia. No es va habilitar cap eina i l’esforç de raonament es va establir al màxim.
On FrontierMath (Tier 1–3), an evaluation of expert-level mathematics, GPT‑5.2 Thinking set a new state of the art, solving 40.3% of problems.
A FrontierMath(s'obre en una finestra nova), els models resolen problemes de matemàtiques de nivell expert. Es va habilitar una eina Python i l’esforç de raonament es va establir al màxim.
We're beginning to see AI models meaningfully accelerate progress in math and science in tangible ways. For example, in recent work with GPT‑5.2 Pro, researchers explored an open question in statistical learning theory. In a narrow, well-specified setting, the model proposed a proof that was subsequently verified by the authors and reviewed with external experts, illustrating how frontier models can assist mathematical research under close human oversight.
On ARC-AGI-1 (Verified), a benchmark designed to measure general reasoning ability, GPT‑5.2 Pro is the first model to cross the 90% threshold, improving from 87%(s'obre en una finestra nova) by o3‑preview last year while reducing the cost of achieving that performance by roughly 390×.
On ARC-AGI-2 (Verified), which raises the difficulty and better isolates fluid reasoning, GPT‑5.2 Thinking achieves a new state of the art for chain-of-thought models, scoring 52.9%. GPT‑5.2 Pro performs even higher, reaching 54.2%, further extending the model’s ability to reason through novel, abstract problems.
Improvements across these evaluations reflect GPT‑5.2’s stronger multi-step reasoning, greater quantitative accuracy, and more reliable problem solving on complex technical tasks.
Here’s what our early testers say about GPT‑5.2:
«GPT-5.2 ens ha permès un canvi complet d’arquitectura. Hem col·lapsat un sistema fràgil de múltiples agents en un únic megaagent amb més de 20 eines. El millor és que simplement funciona. El megaagent és més ràpid, més intel·ligent i 100 vegades més fàcil de mantenir. Estem veient una latència molt més baixa, una crida d’eines molt més sòlida, i ja no necessitem indicacions del sistema enormes perquè 5.2 executa amb netedat a partir d’una indicació simple d’una sola línia. Sembla màgia pura.»
In ChatGPT, users should notice GPT‑5.2 feels better to use day to day—more structured, more reliable, and still enjoyable to talk to.
GPT‑5.2 Instant is a fast, capable workhorse for everyday work and learning, with clear improvements in info-seeking questions, how-tos and walk-throughs, technical writing, and translation, building on the warmer conversational tone introduced in GPT‑5.1 Instant. Early testers particularly noted clearer explanations that surface key information upfront.
GPT‑5.2 Thinking is designed for deeper work, helping users tackle more complex tasks with greater polish—especially for coding, summarizing long documents, answering questions about uploaded files, working through math and logic step by step, and supporting planning and decisions with clearer structure and more useful detail.
GPT‑5.2 Pro is our smartest and most trustworthy option for difficult questions where a higher-quality answer is worth the wait, with early testing showing fewer major errors and stronger performance in complex domains like programming.
GPT‑5.2 builds on the safe completion research we introduced with GPT‑5, which teaches the model to give the most helpful answer while still staying within safety boundaries.
With this release, we continued our work to strengthen our models’ responses in sensitive conversations, with meaningful improvements in how they respond to prompts indicating signs of suicide or self harm, mental health distress, or emotional reliance on the model. These targeted interventions have resulted in fewer undesirable responses in both GPT‑5.2 Instant and GPT‑5.2 Thinking as compared to GPT‑5.1 and GPT‑5 Instant and Thinking models. Further details can be found in the system card.
We’re in the early stages of rolling out our age prediction model so that we can automatically apply content protections for users who are under 18, in order to limit access to sensitive content. This builds on our existing approach to users we know are under 18 and our parental controls.
GPT‑5.2 is one step in an ongoing series of improvements, and we’re far from done. While this release delivers meaningful gains in intelligence and productivity, we know there are areas where people want more. In ChatGPT, we’re working on known issues like over-refusals, while continuing to raise the bar on safety and reliability overall. These changes are complex, and we’re focused on getting them right.
GPT‑5.2 | GPT‑5.1 | GPT‑5.2 | GPT‑5.1 | |
Salut mental | 0.995 | 0.883 | 0.915 | 0.684 |
Dependència emocional | 0.938 | 0.945 | 0.955 | 0.785 |
Autolesió | 0.938 | 0.925 | 0.963 | 0.937 |
In ChatGPT, we’ll begin rolling out GPT‑5.2 (Instant, Thinking, and Pro) today, starting with paid plans (Plus, Pro, Go, Business, Enterprise). We deploy GPT‑5.2 gradually to keep ChatGPT as smooth and reliable as we can; if you don’t see it at first, please try again later. In ChatGPT, GPT‑5.1 will still be available to paid users for three months under legacy models, after which we will sunset GPT‑5.1.
ChatGPT | API |
ChatGPT‑5.2 Instant | GPT‑5.2‑chat‑latest |
ChatGPT‑5.2 Thinking | GPT‑5.2 |
ChatGPT‑5.2 Pro | GPT‑5.2 Pro |
In our API Platform, GPT‑5.2 Thinking is available today in the Responses API and Chat Completions API as gpt-5.2, and GPT‑5.2 Instant as gpt-5.2-chat-latest. GPT‑5.2 Pro is available in the Responses API as gpt-5.2-pro. Developers can now set the reasoning parameter in GPT‑5.2 Pro, and both GPT‑5.2 Pro and GPT‑5.2 Thinking now support the new fifth reasoning effort of xhigh, for tasks where quality is most important.
GPT‑5.2 is priced at $1.75/1M input tokens and $14/1M output tokens, with a 90% discount on cached inputs. On multiple agentic evals, we found that despite GPT‑5.2’s greater cost per token, the cost of attaining a given level of quality ended up less expensive due to GPT‑5.2’s greater token efficiency.
While ChatGPT subscription pricing remains the same, in the API GPT‑5.2 is priced higher per token than GPT‑5.1 because it is a more capable model. It’s still priced below other frontier models, so people can continue to use it deeply in their daily work and core applications.
Model | Entrada | Entrada a la memòria cau | Sortida |
gpt-5.2 / | $1.75 | $0.175 | $14 |
gpt-5.2-pro | $21 | - | $168 |
gpt-5.1 / | $1.25 | $0.125 | $10 |
gpt-5-pro | $15 | - | $120 |
We have no current plans to deprecate GPT‑5.1, GPT‑5, or GPT‑4.1 in the API and will communicate any deprecation plans with ample advance notice for developers. While GPT‑5.2 will work well out of the box in Codex, we expect to release a version of GPT‑5.2 optimized for Codex in the coming weeks.
GPT‑5.2 was built in collaboration with our long-standing partners NVIDIA and Microsoft. Azure data centers and NVIDIA GPUs, including H100, H200, and GB200-NVL72, underpin OpenAI’s at-scale training infrastructure, driving significant gains in model intelligence. Together, this collaboration allows us to scale compute with confidence and bring new models to market more quickly.
Below, we report comprehensive benchmark scores for GPT‑5.2 Thinking, along with a subset for GPT‑5.2 Pro.
Professional
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| GDPval (ties allowed, wins or ties) | 70.9% | 74.1% | 38.8% (GPT-5) |
| GDPval (ties allowed, clear wins) | 49.8% | 60.0% | 35.5% (GPT-5) |
| GDPval (no ties) | 61.0% | 67.6% | 37.1% (GPT-5) |
| Investment banking spreadsheet tasks (internal) | 68.4% | 71.7% | 59.1% |
Programació
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| SWE-Bench Pro, Public | 55.6% | - | 50.8% |
| SWE-bench Verified | 80.0% | - | 76.3% |
| SWE-Lancer, IC Diamond* | 74.6% | - | 69.7% |
Factualitat
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| ChatGPT answers without errors (w/ search) | 93.9% | - | 91.2% |
| ChatGPT answers without errors (no search) | 88.0% | - | 87.3% |
Context llarg
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| OpenAI MRCRv2, 8 needles, 4k–8k | 98.2% | - | 65.3% |
| OpenAI MRCRv2, 8 needles, 8k–16k | 89.3% | - | 47.8% |
| OpenAI MRCRv2, 8 needles, 16k–32k | 95.3% | - | 44.0% |
| OpenAI MRCRv2, 8 needles, 32k–64k | 92.0% | - | 37.8% |
| OpenAI MRCRv2, 8 needles, 64k–128k | 85.6% | - | 36.0% |
| OpenAI MRCRv2, 8 needles, 128k–256k | 77.0% | - | 29.6% |
| BrowseComp Long Context 128k | 92.0% | - | 90.0% |
| BrowseComp Long Context 256k | 89.8% | - | 89.5% |
| GraphWalks bfs <128k | 94.0% | - | 76.8% |
| Graphwalks parents <128k | 89.0% | - | 71.5% |
Visió
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| CharXiv reasoning (no tools) | 82.1% | - | 67.0% |
| CharXiv reasoning (w/ Python) | 88.7% | - | 80.3% |
| MMMU Pro (no tools) | 79.5% | - | - |
| MMMU Pro (w/ Python) | 80.4% | - | 79.0% |
| Video MMMU (no tools) | 85.9% | - | 82.9% |
| Screenspot Pro (w/ Python) | 86.3% | - | 64.2% |
Ús d’eines
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| Tau2-bench Telecom | 98.7% | - | 95.6% |
| Tau2-bench Retail | 82.0% | - | 77.9% |
| BrowseComp | 65.8% | 77.9% | 50.8% |
| Scale MCP-Atlas | 60.6% | - | 44.5% |
| Toolathlon | 46.3% | - | 36.1% |
Acadèmic
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| GPQA Diamond (no tools) | 92.4% | 93.2% | 88.1% |
| HLE (no tools) | 34.5% | 36.6% | 25.7% |
| HLE (w/ search, Python) | 45.5% | 50.0% | 42.7% |
| MMMLU | 89.6% | - | 89.5% |
| HMMT, Feb 2025 (no tools) | 99.4% | 100.0% | 96.3% |
| AIME 2025 (no tools) | 100.0% | 100.0% | 94.0% |
| FrontierMath Tier 1–3 (w/ Python) | 40.3% | - | 31.0% |
| FrontierMath Tier 4 (w/ Python) | 14.6% | - | 12.5% |
Raonament abstracte
| GPT-5.2 Thinking | GPT-5.2 Pro | GPT-5.1 Thinking | |
|---|---|---|---|
| ARC-AGI-1 (Verified) | 86.2% | 90.5% | 72.8% |
| ARC-AGI-2 (Verified) | 52.9% | 54.2% (high) | 17.6% |
Models were run with maximum available reasoning effort in our API (xhigh for GPT‑5.2 Thinking & Pro, and high for GPT‑5.1 Thinking), except for the professional evals, where GPT‑5.2 Thinking was run with reasoning effort heavy, the maximum available in ChatGPT Pro. Benchmarks were conducted in a research environment, which may provide slightly different output from production ChatGPT in some cases.
* For SWE-Lancer, we omit 40/237 problems that did not run on our infrastructure.


