Make (Integromat) Review 2026: Deep Dive for Solo Devs & Small Teams
Free tier limits, real costs per team size, and honest "not for" warnings. Everything you need to decide if Make (Integromat) fits your stack.
Quick Summary
💰 Monthly Cost by Team Size
🚫 Not Recommended For
- Enterprise with complex compliance
Make (Integromat) Pricing (2026)
| Plan | Price | Billing |
|---|---|---|
| Free | $0 | Forever |
| Core | $9/mo | monthly |
Pros & Cons
✅ What We Like
- Modern and well-maintained
- Good free tier
- Active community
❌ What Could Be Better
- Learning curve for advanced features
- Pricing scales with usage
Feature Breakdown
🏆 Our Verdict
Make (Integromat) scores 4.5/5 in our evaluation. Solo Dev Score: 8/10. It's best suited for Solo developers, Small startups, Side projects. We recommend it as a top choice in its category.
See how it compares: n8n, Zapier, GitHub Copilot, Leonardo AI, OpenAI API, LlamaIndex
Try Make (Integromat) Free →Frequently Asked Questions
Is Make (Integromat) worth the price in 2026?
Make (Integromat) starts at Free / $9/mo. Based on our evaluation, it scores 4.5/5 overall. Whether it's worth it depends on your team size and feature requirements — read our detailed breakdown above.
What are the main alternatives to Make (Integromat)?
Several tools compete with Make (Integromat) in its category. Check our comparison section above for head-to-head matchups with the top alternatives.
Does Make (Integromat) offer a free plan?
Check our pricing section above for the most up-to-date information on Make (Integromat)'s free tier and paid plans.
Is Make (Integromat) good for small businesses?
Make (Integromat) can work for small businesses depending on your budget and requirements. Review our "Best For" section to see if it matches your use case.
📖 Read Next
More automation reviews you might find useful
Zapier
The leading no-code automation platform connecting 7000+ apps with workflow triggers and actions.
n8n
Open-source workflow automation with self-hosting and AI agents.
LangChain
Framework for building LLM-powered applications with chains and agents.