October 7, 2025

N8N vs OpenAI AgentKit: Which Framework Wins for Building AI Workflows in 2025?

Written by

Choosing between n8n and OpenAI AgentKit is about matching your use case to each platform’s strengths and costs. AgentKit bundles ChatKit and Evals under standard API usage with no separate platform fee, while n8n charges per workflow execution and supports self hosted options. This guide compares architecture, features, pricing, and real world fit so you can decide with confidence.

Quick Verdict Table

Best Forn8nOpenAI AgentKit
Solo builderFlexible workflows and easy self hostingFast agent prototypes with built in UI and evals
Small teamPredictable execution pricing and broad connectorsPolished chat experiences with guardrails and tracing
EnterpriseSelf hosted control and concurrency limitsCentralized connector governance and integrated evals
Budget buyerOne execution counts once regardless of stepsLow token rates on smaller interactions and Batch tier
Power userMulti model routing and MCP triggersAgents SDK parity and visual Agent Builder

N8N vs OpenAI AgentKit Quick Answer

Short answer: choose AgentKit for AI centric, user facing agents with built in evals and governance, and pick n8n for integration heavy, deterministic automations with self hosted control.

AgentKit brings an integrated stack that includes ChatKit for embeddable chat and Evals for step level grading, all under standard API pricing according to the AgentKit launch. n8n focuses on workflow automation with execution based pricing, where the Starter plan lists 2,500 executions for 20 euros per month on n8n pricing. If you want a cost anchor for conversational agents, GPT 4o has indicative rates that start at about 2 dollars and 50 cents per million input tokens in the Holori guide.

Quick context before we compare features

AgentKit ships embeddable chat UIs through ChatKit and a visual Agent Builder, while n8n has expanded its AI orchestration with multi agent patterns and an MCP Server Trigger described on the n8n AI page. Reports note ChatKit and Evals are generally available, while the canvas and connector registry were rolling out in beta at launch as covered by VKTR news.

N8N vs OpenAI AgentKit Features Compared

AgentKit optimizes for agent reasoning, UI embedding, and evaluation, while n8n optimizes for broad integrations, reliable automation, and model flexibility. AgentKit’s guardrails and Evals are part of the core workflow, and ChatKit accelerates front end delivery as pointed out in the MarkTechPost report. n8n’s 2025 focus adds multi agent orchestration and MCP triggers across its larger automation canvas on n8n AI.

Feature Comparison Table

Featuren8nOpenAI AgentKitWinner
End user UIRequires custom app or third party UIChatKit embeddable chat includedAgentKit
Evals and guardrailsOperational logs and replaysBuilt in Evals and safety controlsAgentKit
Integrations and connectorsLarge library plus HTTP and code nodesBuilt in tools and a governed Connector Registryn8n for breadth
Model flexibilityMulti provider and local modelsOptimized for OpenAI runtimen8n
Hosting optionsCloud and self hostedProvider hosted onlyn8n
Orchestration focusDeterministic automation with AI stepsAgent reasoning with visual canvasTie by use case
Concurrency controlClear plan limits and queue scalingManaged by platform, fewer knobsn8n
Developer workflowStep level replay and debuggingVisual builder plus Agents SDK parityTie by preference

Outside the table, two details often decide quickly. First, ChatKit can cut front end work for user facing agents, as noted in the Superprompt guide. Second, n8n’s visual and code nodes make long, multi system automations easier to operate and debug across steps, described on n8n features.

Pricing and Value

AgentKit costs are token based with tier choices that trade price for latency, while n8n is execution based where a 200 step run still counts once. OpenAI tiers like Batch, Flex, Standard, and Priority are summarized in the BytePlus guide, and a simple overview of current API numbers appears in the MuneebDev pricing. n8n’s cloud plans and concurrency caps are posted on n8n pricing.

Pricing and Value Table

Plan or Cost basisn8nOpenAI AgentKitNotes
Billing unitExecutions per monthTokens per millionOne workflow run counts once in n8n
Entry cloud planStarter at 20 euros per monthNo separate platform feeAgentKit usage is under standard API pricing
Mid cloud planPro at 50 euros per monthTiers for cost and latencyChoose Batch or Flex for lower cost where latency allows
Self hosted tierBusiness with 40,000 executionsProvider hosted onlySelf hosted shifts infra and ops to your team
Model costsNot applicable to tool itselfGPT 4o and othersToken rates vary by model and tier
Concurrency5 to 200 plus by planManaged by OpenAIn8n offers explicit concurrency settings

If you plan a user facing support agent with modest tokens per session, Standard tier can be cost effective, and you can test GPT 4o Mini for cheaper paths using the numbers in the Holori guide. If you run long workflows with heavy API IO and occasional AI calls, n8n’s per execution billing often wins on predictability on n8n pricing.

Which Should You Choose

If your goal is to ship a polished agent that talks to customers, choose AgentKit for the built in chat UI, evaluations, and centralized governance. If your main need is to run many systems tasks on a schedule or in response to events with clear operational control, choose n8n for its execution model and self hosted option.

Use Case Fit Table

Job to be doneRecommended pickWhy
Customer support chatOpenAI AgentKitChatKit UI, integrated Evals, and guardrails speed delivery
Multi system nightly syncn8nExecution based pricing and easy branching across APIs
Internal analytics assistantOpenAI AgentKitFast to prototype with visual canvas and step level traces
High control back office automationn8nSelf hosted option and explicit concurrency controls
Multi model experimentationn8nRoute across providers and local models without lock in

A few extras may tilt your decision. AgentKit’s Connector Registry provides centralized control of data and tool access across OpenAI properties as noted by VKTR news. AgentKit also supports traceable, versioned workflows with built in grading, which can reduce the time you spend proving quality according to the DataNorth note. On the other side, n8n’s AI orchestration features, including MCP integration, make it a strong backbone for automation first teams on n8n AI.

Why it matters: picking the right foundation affects time to first result, operational costs, and long term flexibility. In 2025, the most common winning pattern is a hybrid. Use AgentKit for the agent experience and reasoning, and let n8n run the surrounding business workflows and data plumbing. That split aligns each tool to what it does best and keeps both costs and risk in check.

Ready to map this choice to your roadmap and get a build plan you can ship this quarter? Let us help you pick the right stack and cost model for your use case.