模型支援企業部落格
500+ AI 模型 API,全部整合在一個 API 中。就在 CometAPI
模型 API
開發者
快速入門說明文件API 儀表板
資源
AI模型部落格企業更新日誌關於
2025 CometAPI. 保留所有權利。隱私政策服務條款
Home/Models/OpenAI/o1-mini-2024-09-12
O

o1-mini-2024-09-12

輸入:$0.88/M
輸出:$3.52/M
商業用途
概覽
功能
定價
API

Technical Specifications of o1-mini-2024-09-12

SpecificationDetails
Model IDo1-mini-2024-09-12
ProviderOpenAI
Model familyo1 series reasoning model
Release snapshotSeptember 12, 2024 snapshot of o1-mini
Primary modalityText input, text output
Core strengthCost-efficient reasoning, especially for STEM, math, and coding tasks
Relative positioningFaster and lower-cost than o1-preview, with strong performance on coding-oriented reasoning workloads
Training approachReinforcement-learning-based reasoning model designed to spend more time thinking before responding
Availability statusSnapshot listed by OpenAI as deprecated

What is o1-mini-2024-09-12?

o1-mini-2024-09-12 is a snapshot of OpenAI’s o1-mini reasoning model, released on September 12, 2024. It belongs to the o1 family, which OpenAI introduced as models that “think before they answer” and are optimized for complex reasoning rather than only fast next-token generation.

Compared with larger o1 variants, o1-mini was positioned as the faster and more economical option for workloads that need strong reasoning without requiring the broadest possible world knowledge. OpenAI specifically highlighted its usefulness for STEM-heavy applications, noting that it performs especially well in math and coding and was designed as a cost-efficient alternative to o1-preview.

In practical terms, this makes o1-mini-2024-09-12 a good fit for developers building applications such as code assistants, technical problem-solving tools, structured analytical workflows, and math-focused copilots. Because this exact snapshot is now marked deprecated in OpenAI’s model documentation, teams using the CometAPI identifier should verify ongoing compatibility and behavior in their own environment.

Main features of o1-mini-2024-09-12

  • Reasoning-first design: OpenAI describes the o1 series as models trained to perform complex reasoning and to spend more time thinking before responding, which can improve performance on multi-step technical tasks.
  • Strong STEM performance: o1-mini was explicitly introduced as excelling at STEM workloads, especially math and coding, making it suitable for engineering and analytical use cases.
  • Lower cost profile: OpenAI stated that o1-mini launched at a significantly lower cost than o1-preview, positioning it as the more budget-friendly reasoning option.
  • Faster response characteristics: The model was presented as faster than o1-preview, which is useful when balancing reasoning quality with latency-sensitive application needs.
  • Good fit for coding applications: OpenAI’s release materials and system documentation repeatedly describe o1-mini as particularly effective for coding-related tasks.
  • Snapshot stability: Using the exact snapshot ID o1-mini-2024-09-12 can help teams target a fixed model version for reproducibility, though OpenAI currently labels this snapshot as deprecated.

How to access and integrate o1-mini-2024-09-12

Step 1: Sign Up for API Key

To access o1-mini-2024-09-12, first create an account on CometAPI and generate an API key from the dashboard. Once you have your key, store it securely as an environment variable so your application can authenticate requests to the API.

Step 2: Send Requests to o1-mini-2024-09-12 API

After getting your API key, send requests to CometAPI’s OpenAI-compatible endpoint while setting the model field to o1-mini-2024-09-12.

curl https://api.cometapi.com/v1/responses \
  -H "Content-Type: application/json" \
  -H "Authorization: Bearer $COMETAPI_API_KEY" \
  -d '{
    "model": "o1-mini-2024-09-12",
    "input": "Write a Python function that solves a quadratic equation and explain the math."
  }'

You can also use the OpenAI SDK format by pointing the client to CometAPI’s base URL and keeping the model name as o1-mini-2024-09-12.

from openai import OpenAI

client = OpenAI(
    api_key="YOUR_COMETAPI_KEY",
    base_url="https://api.cometapi.com/v1"
)

response = client.responses.create(
    model="o1-mini-2024-09-12",
    input="Solve this step by step: If 3x + 5 = 20, what is x?"
)

print(response)

Step 3: Retrieve and Verify Results

Once the API returns a response, parse the output text in your application and validate it for your use case. For reasoning-heavy tasks such as coding, mathematics, or technical analysis, it is a good practice to add automated checks, test cases, or human review to verify that the model’s conclusions are correct before using them in production.

o1-mini-2024-09-12 的功能

探索 o1-mini-2024-09-12 的核心功能,專為提升效能和可用性而設計。了解這些功能如何為您的專案帶來效益並改善使用者體驗。

o1-mini-2024-09-12 的定價

探索 o1-mini-2024-09-12 的競爭性定價,專為滿足各種預算和使用需求而設計。我們靈活的方案確保您只需為實際使用量付費,讓您能夠隨著需求增長輕鬆擴展。了解 o1-mini-2024-09-12 如何在保持成本可控的同時提升您的專案效果。
彗星價格 (USD / M Tokens)官方價格 (USD / M Tokens)折扣
輸入:$0.88/M
輸出:$3.52/M
輸入:$1.1/M
輸出:$4.4/M
-20%

o1-mini-2024-09-12 的範例程式碼和 API

存取完整的範例程式碼和 API 資源,以簡化您的 o1-mini-2024-09-12 整合流程。我們詳盡的文件提供逐步指引,協助您在專案中充分發揮 o1-mini-2024-09-12 的潛力。

更多模型

G

Nano Banana 2

輸入:$0.4/M
輸出:$2.4/M
核心能力概覽:解析度:最高可達 4K(4096×4096),與 Pro 相當。參考圖片一致性:最多支援 14 張參考圖片(10 個物件 + 4 個角色),維持風格與角色一致性。極端寬高比:新增 1:4、4:1、1:8、8:1 比例,適合長圖、海報與橫幅。文字渲染:進階文字生成,適用於資訊圖表與行銷海報版面。搜尋強化:整合 Google Search + Image Search。Grounding:內建思考過程;在生成前會先對複雜提示進行推理。
A

Claude Opus 4.6

輸入:$4/M
輸出:$20/M
Claude Opus 4.6 是 Anthropic 的「Opus」級大型語言模型,於 2026 年 2 月發布。它被定位為知識工作與研究工作流程的主力,著重提升長上下文推理、多步規劃、工具使用(包括代理型軟體工作流程),以及電腦操作任務,例如自動化製作投影片與試算表。
A

Claude Sonnet 4.6

輸入:$2.4/M
輸出:$12/M
Claude Sonnet 4.6 是我們迄今為止最強大的 Sonnet 模型。它對模型在程式設計、電腦操作、長上下文推理、代理規劃、知識工作與設計等方面的能力進行了全面升級。Sonnet 4.6 亦提供 1M 詞元的上下文視窗,目前處於 Beta 階段。
O

GPT-5.4 nano

輸入:$0.16/M
輸出:$1/M
GPT-5.4 nano 專為速度與成本最為關鍵的任務而設計,例如分類、資料擷取、排序與子智能體。
O

GPT-5.4 mini

輸入:$0.6/M
輸出:$3.6/M
GPT-5.4 mini 將 GPT-5.4 的優勢帶入一個更快速、更高效、專為大量工作負載設計的模型。
A

Claude Mythos Preview

A

Claude Mythos Preview

即將推出
輸入:$60/M
輸出:$240/M
Claude Mythos Preview 是我們迄今最強大的前沿模型,與我們先前的前沿模型 Claude Opus 4.6 相比,在多項評測基準上的分數呈現出 顯著躍升。