Requesty

gpt-5.2-chat

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.

👁Vision🧠Reasoning🔧Tool callingCaching

Specifications

Context window128K tokens
Max output16K tokens
API typechat
AddedDec 19, 2025
Model IDopenai/gpt-5.2-chat
Data retentionYes (30 days)
Used for trainingNo
Provider location🇺🇸 US

Benchmarks

Released 2026-01
SWE-Bench Verifiedcoding
79.5%

Resolving real GitHub issues from 12 popular Python repositories.

GPQA Diamondreasoning
84.8%

Graduate-level physics, chemistry & biology questions designed to resist Googling.

MMLU Proknowledge
90.1%

Massive Multitask Language Understanding across 57 academic subjects.

Scores are sourced from official model cards, Artificial Analysis, and public leaderboards. Benchmarks measure specific skills and do not capture every aspect of model quality — always test on your own workload.

Pricing

Input / 1M
$1.75
Output / 1M
$14.00
Cache write / 1M
$14.00
Cache read / 1M
$0.17
Estimated cost
100K input + 10K output$0.31
1M input + 100K output$3.15
10M input + 1M output$31.50

Requesty charges exactly what the upstream provider charges — no markup, no per-request fees. Prompt caching and smart routing can reduce effective cost by 30-80%.

Quickstart

Drop-in compatible with the OpenAI SDK. Change the base URL, swap in your Requesty API key, and set the model to openai/gpt-5.2-chat.

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from openai import OpenAI client = OpenAI( api_key="YOUR_REQUESTY_API_KEY", base_url="https://router.requesty.ai/v1", ) response = client.chat.completions.create( model="openai/gpt-5.2-chat", messages=[ {"role": "user", "content": "Explain quantum computing in one paragraph."}, ], ) print(response.choices[0].message.content)

Other OpenAI Inc. models

Frequently asked questions

How much does gpt-5.2-chat cost?
gpt-5.2-chat is priced at $1.75 per million input tokens and $14.00 per million output tokens when accessed via Requesty. Prompt caching is supported, which can cut effective input cost by up to 90% on repeated context. Requesty charges exactly what the upstream provider charges — we don't add markup.
What is the context window of gpt-5.2-chat?
gpt-5.2-chat has a context window of 128K tokens, with a maximum output of 16K tokens per response. That's roughly 171 words of input you can fit in a single prompt.
How does gpt-5.2-chat perform on benchmarks?
gpt-5.2-chat scores 95.7% on MATH, 95.3% on HumanEval, 92.3% on AIME 2024. See the full benchmark chart above for results across MMLU Pro, GPQA Diamond, SWE-Bench Verified, HumanEval, MATH, AIME, MMMU, and LiveBench.
What can gpt-5.2-chat do?
gpt-5.2-chat supports vision input, tool calling, extended reasoning, prompt caching. You can call it through any OpenAI-compatible client by pointing base_url to Requesty.
How do I use gpt-5.2-chat with the OpenAI SDK?
Install the OpenAI SDK, set base_url to "https://router.requesty.ai/v1", set your API key to your Requesty key, and set the model to "openai/gpt-5.2-chat". The Quickstart above shows Python, JavaScript and cURL snippets.

Access gpt-5.2-chat through Requesty

One API key, 400+ models, OpenAI-compatible. No markup on provider prices, automatic failover, and smart caching built-in.