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CoBuddy

cobuddy

Researched today

Last refreshed 2026-05-18. Next refresh: weekly.

ProprietaryCodingRAGAgentsLong contextJSON / Tool useCoding

CoBuddy is worth evaluating for coding, rag, and agents when its provider route and context window match the workload.

Decision context: Coding task fit, 1 tracked provider route, and research from 2026-05-18.

Use it for

  • Teams evaluating coding, rag, and agents
  • Workloads that can use a 131K context window
  • Buyers comparing 1 tracked provider route

Do not use it for

  • Vision or document-understanding workloads

Cheapest output

Free

OpenRouter per 1M tokens

Provider routes

1

Tracked API hosts

Quality / dollar

Unknown

No task benchmark coverage yet

Freshness

2026-05-18

Researched today

fresh

Top use-case fit

Coding

Included by capability and metadata signals in the decision map.

RAG

Included by capability and metadata signals in the decision map.

Agents

Included by capability and metadata signals in the decision map.

Provider price ladder

ProviderInput / 1MOutput / 1MRoute
OpenRouterFreeFree
Serverless

Benchmark peer barsfor Coding

No task-mapped benchmark peers are available for this model yet.

Migration checks

No linked migration route is available for this model yet.

About

CoBuddy is a Baidu Qianfan code generation model optimized for coding tasks and AI agent workflows. OpenRouter lists the free variant with a 131K context window, native tool support, reasoning support, and FP8 quantization for high-throughput inference.

CoBuddy has a 128K-token context window.

CoBuddy input tokens at $0/1M, output at $0/1M.

Capabilities

ReasoningFunction CallingTool Use

Rankings

Specifications

FamilyQianfan
Released2026-05-06
Context131K
Max output65,536
ArchitectureDecoder Only
Specializationcode
LicenseProprietary
Trainingpretrained

Created by

Innovative text-to-video and app builder

Beijing, China
Founded 2010
Website

Providers(1)