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Home/Models/OpenAI/o1-mini-all
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o1-mini-all

Per forespørsel:$0.08
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Oversikt
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API

Technical Specifications of o1-mini-all

SpecificationDetails
Model IDo1-mini-all
Provider familyOpenAI o1-mini, exposed through CometAPI’s aggregated model catalog. (cometapi.com)
Model typeReasoning-focused large language model optimized for complex problem solving, especially STEM and coding tasks.
PositioningA faster, lower-cost variant of the original o1 reasoning line.
StrengthsMulti-step reasoning, mathematics, software engineering, structured problem decomposition, and analytical workflows.
Latency profileDesigned to be faster than larger reasoning models while preserving strong reasoning quality for technical use cases.
Cost profilePositioned as a more affordable reasoning option than larger flagship reasoning models.
Availability noteOpenAI’s public documentation describes o1-mini, while CometAPI lists o1-mini-all as its platform-specific model identifier. (cometapi.com)
Lifecycle noteOpenAI recommends newer small reasoning models such as o3-mini/o4-mini for some use cases, so developers should verify current platform availability before production rollout.

What is o1-mini-all

o1-mini-all is CometAPI’s platform identifier for access to the OpenAI o1-mini reasoning model family through a unified API layer. CometAPI’s model catalog explicitly lists o1-mini-all, while OpenAI’s own documentation describes the underlying family as o1-mini. (cometapi.com)

The underlying o1-mini model was introduced as a cost-efficient reasoning model built for hard problems that require multi-step thought, with especially strong performance in coding, mathematics, and other STEM-heavy tasks. OpenAI positions it as a faster and cheaper reasoning alternative to larger o1-class models.

In practice, o1-mini-all is best understood as a developer-facing endpoint for applications that need stronger reasoning than general-purpose chat models, but with better speed and cost efficiency than larger premium reasoning models. That makes it a practical option for code generation, technical assistants, logic-heavy workflows, math tutoring, and internal automation systems that benefit from deliberate reasoning behavior.

Main features of o1-mini-all

  • Reasoning-first design: Built for complex, multi-step problem solving rather than only fast conversational generation, making it suitable for analytical and technical tasks.
  • Strong STEM performance: OpenAI highlights its capabilities in mathematics, coding, and structured technical reasoning, where it approaches stronger flagship reasoning performance on some benchmarks.
  • Faster response profile: Compared with larger reasoning models, o1-mini is positioned for lower latency and quicker turnaround on hard prompts.
  • Lower-cost reasoning: The model is intended to provide more affordable access to reasoning workflows, which is useful for iterative development and higher-volume API workloads.
  • Useful for coding workflows: It is well suited for code explanation, debugging, algorithm design, test generation, and engineering Q&A.
  • Good fit for structured outputs: Because it is optimized for deliberate reasoning, it can be effective in stepwise business logic, classification with justification, and technical decision support when prompts are clearly structured. This is an inference based on the model’s documented reasoning orientation and developer use cases.
  • Aggregator-friendly access: CometAPI exposes this model through its own catalog, allowing teams to use a single integration pattern across multiple model providers. (cometapi.com)
  • Version-awareness recommended: Since OpenAI has documented newer successor mini reasoning models, teams should validate ongoing support, pricing, and migration plans when adopting o1-mini-all for long-term systems.

How to access and integrate o1-mini-all

Step 1: Sign Up for API Key

Sign up on CometAPI and generate your API key from the dashboard. After obtaining the key, store it securely and use it in the Authorization header for all requests.

Step 2: Send Requests to o1-mini-all API

Use CometAPI’s OpenAI-compatible API format and specify the model as o1-mini-all.

curl --request POST \
  --url https://api.cometapi.com/v1/chat/completions \
  --header "Authorization: Bearer YOUR_COMETAPI_KEY" \
  --header "Content-Type: application/json" \
  --data '{
    "model": "o1-mini-all",
    "messages": [
      {
        "role": "user",
        "content": "Solve this step by step: Write a Python function for binary search."
      }
    ]
  }'

Step 3: Retrieve and Verify Results

Parse the JSON response, read the generated content from the first completion choice, and validate the output against your application requirements. For production use, add retries, logging, schema checks, and prompt-based evaluation to verify quality, reasoning accuracy, and safety before downstream use.

Funksjoner for o1-mini-all

Utforsk nøkkelfunksjonene til o1-mini-all, designet for å forbedre ytelse og brukervennlighet. Oppdag hvordan disse mulighetene kan være til nytte for prosjektene dine og forbedre brukeropplevelsen.

Priser for o1-mini-all

Utforsk konkurransedyktige priser for o1-mini-all, designet for å passe ulike budsjetter og bruksbehov. Våre fleksible planer sikrer at du bare betaler for det du bruker, noe som gjør det enkelt å skalere etter hvert som kravene dine vokser. Oppdag hvordan o1-mini-all kan forbedre prosjektene dine samtidig som kostnadene holdes håndterbare.
Komet-pris (USD / M Tokens)Offisiell pris (USD / M Tokens)Rabatt
Per forespørsel:$0.08
Per forespørsel:$0.1
-20%

Eksempelkode og API for o1-mini-all

Få tilgang til omfattende eksempelkode og API-ressurser for o1-mini-all for å effektivisere integreringsprosessen din. Vår detaljerte dokumentasjon gir trinn-for-trinn-veiledning som hjelper deg med å utnytte det fulle potensialet til o1-mini-all i prosjektene dine.

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