Try Bifrost Enterprise free for 14 days.
Request access
[ MODEL COMPARISON ]

Compare gpt-5.2-chat-2025-12-11 with other models

Select another model to compare pricing, limits, and capabilities with gpt-5.2-chat-2025-12-11.

Azure logo
VS
Models
Azure logogpt-5.2-chat-2025-12-11
azure
Context Length
128K
Max Output
16K
Input Cost
$1.75/M
Output Cost
$14.00/M
Mode
Chat
Max Input Tokens
128K
Max Tokens
16K
Supported Endpoints
/v1/chat/completions, /v1/responses
Provider
Azure
Tool Choice
Yes
Response Schema
Yes
Parallel Function Calling
Yes
Prompt Caching
Yes
System Messages
Yes
[ WE'RE OPEN SOURCE ]

Scale with the Fastest LLM Gateway

Built for enterprise-grade reliability, governance, and scale. Deploy in seconds.

Comparison Insights

Comprehensive analysis based on the latest model metadata from the comparison table above.

What should I know about gpt-5.2-chat-2025-12-11?

Overview

  • gpt-5.2-chat-2025-12-11 is a chat model provided by Azure.
  • With a context window of 128K tokens, this model can handle substantial inputs such as detailed documents or extended conversation histories.

Pricing

  • Input processing costs $1.75 per million tokens.
  • Output generation costs $14.00 per million tokens.

Output Capabilities

  • The model can generate up to 16K tokens in a single response.

Availability

  • Available through the following endpoints: /v1/chat/completions, /v1/responses.
What capabilities does gpt-5.2-chat-2025-12-11 support?
  • Supports function calling, enabling integration with external tools and APIs for extended functionality.
  • Includes vision capabilities to process and analyze images alongside text inputs.
  • Features advanced reasoning capabilities for complex problem-solving and multi-step logical tasks.
  • Allows explicit tool selection, giving developers fine-grained control over function execution.
  • Supports structured response schemas for consistent, predictable output formatting.
  • Enables parallel function calling to execute multiple operations simultaneously for improved efficiency.
  • Implements prompt caching to reduce costs and latency for repeated or similar queries.
  • Supports system messages for customizing model behavior and setting operational parameters.