AgentBurn Blog
Guides, comparisons, and insights on AI agent cost management
From $10K to $3K: A Playbook for Cutting Agent Costs 70%
A step-by-step playbook showing the most common cost optimizations for AI agent infrastructure, based on typical spending patterns and published model pricing.
Read articleCost-Optimizing RAG Pipelines: Embedding vs Inference Spend
RAG pipelines have two cost centers: embedding documents and running inference. Here's how to measure and optimize both with AgentBurn.
Tracking E2B Sandbox Costs for Code Generation Agents
Code generation agents use E2B sandboxes for execution. Here's how to track those compute costs alongside LLM spend for a complete cost picture.
Monitoring Multi-Agent Workflows: A CrewAI Cost Breakdown
How to track costs across a CrewAI multi-agent workflow where a researcher, analyst, and writer collaborate on a single task.
How Model Routing Can Cut Support Bot Costs by 75%
An illustrative scenario showing how a support bot using GPT-4o for every query could cut monthly spend from $3,200 to $800 with simple model routing.
Top 5 AI Agent Cost Tracking Tools in 2025 Compared
A comprehensive comparison of the best tools for tracking AI agent costs: AgentBurn, Helicone, Portkey, LangSmith, and Vantage.
AgentBurn vs LangSmith: Observability vs FinOps for AI Agents
LangSmith is an LLM observability platform from LangChain. AgentBurn is a cost intelligence tool. Different problems, different solutions.
AgentBurn vs Vantage: Cloud Cost Management vs Agent Cost Tracking
Vantage tracks cloud infrastructure costs. AgentBurn tracks AI agent costs. Here's why you might need both — or just one.
AgentBurn vs Portkey: AI Gateway vs Cost-First Monitoring
Portkey is an AI gateway with observability. AgentBurn is a cost-first monitoring tool. Here's how they compare and when to use each.
AgentBurn vs Helicone: Which LLM Cost Tracker Is Right for You?
A detailed comparison of AgentBurn and Helicone for AI cost tracking — covering pricing, features, self-hosting, and which tool fits which team.
The Complete Guide to LLM Token Pricing in 2025
A comprehensive pricing reference for OpenAI, Anthropic, Google, Mistral, and Cohere models with cost-per-task estimates for common agent operations.
How to Reduce Anthropic API Costs by 40% with Smart Model Routing
Not every task needs Claude Opus. Learn how to implement a model routing strategy that sends tasks to the cheapest model that can handle them.
FinOps for AI: Applying Cloud Cost Principles to LLM Spending
The FinOps framework that transformed cloud spending can be applied to AI agent costs. Here's how to implement visibility, optimization, and governance for LLM budgets.
Why Your AI Agent Budget Is 3x What You Think
Most teams underestimate AI agent costs by 3x. Learn the four budget blind spots and how to build accurate cost projections.
The Hidden Costs of Running AI Agents in Production
Beyond LLM API fees: the real costs of AI agents include compute, tool calls, retries, embeddings, and infrastructure overhead that most teams underestimate.
Real-Time Token Usage Dashboards for LLM-Powered Agents
How AgentBurn's dashboards break down token consumption by agent, model, and time period to help you understand and optimize LLM spending.
Self-Host vs Cloud: AgentBurn's Open-Core Model Explained
AgentBurn is MIT-licensed at its core. Learn when to self-host for free and when the hosted Pro tier makes sense for your team.
Setting Up Budget Alerts for Your AI Agent Fleet
How to configure per-agent budget alerts with AgentBurn to prevent runaway costs and get notified via Slack, Discord, or webhook before you overspend.
How to Track OpenAI Costs Across Multiple AI Agents
Step-by-step guide to instrumenting your OpenAI API calls with AgentBurn for per-agent cost visibility, budget alerts, and spend optimization.
What Is AgentBurn? Open-Source Cost Tracking for AI Agents
AgentBurn is an open-source cost intelligence platform that tracks spending across your entire AI agent stack — LLMs, compute sandboxes, tool calls, and more.