CrewAI Enterprise Platform logo

    CrewAI Enterprise Platform

    Sold by
    CrewAI Enterprise Platform is a fully managed SaaS solution listed in AWS Marketplace that enables rapid creation, deployment, and management of AI driven agents across any infrastructure. With built-in governance, auditability, and real time observability, organizations can accelerate automation adoption, meet compliance requirements, and demonstrate ROI by deploying AI agents in CrewAI.

    Ratings and reviews

    5
    1 ratings
    4 star
    3 star
    2 star
    1 star
    100%
    0%
    0%
    0%
    0%
    0 AWS reviews
    |
    1 external reviews
    External reviews are from G2 .

    Filters

    Review type

    AWS Marketplace reviews
    External reviews
    Reviews (1)
    Jayanth C.

    Crew AI: Fast, Production-Ready AI Agents with Great Model Support and Custom Pricing

    Reviewed on Jul 08, 2026
    Review provided by G2
    What do you like best about the product?
    Crew AI was very useful to build AI agents in a production-level and fast development process. The documentation is to understand, and the models' support in Crew AI is simply awesome; we can see many intelligent LLM models. The best thing about Crew AI pricing is customization according to our requirements. There is no performance lag while using it. I am using it for my internal projects. Easy to integrate with other apps because of the Python language. The Best UI/UX is impressive a lot because of coloring choice
    What do you dislike about the product?
    Crew AI generally performs better overall, but it feels more tied to the OpenAI models. I’m also running into some issues when trying to use other models, such as Gemini and Grok.
    What problems is the product solving and how is that benefiting you?
    CrewAI addresses the challenge of orchestrating multiple AI agents to work together on complex tasks, rather than relying on a single LLM prompt. It lets me set up specialized agents with clear roles, goals, and tools so they can collaborate effectively, which makes workflows more modular, scalable, and maintainable. For me, this has translated into less development time, better accuracy and consistency across AI workflows, simpler automation for multi-step processes, and an easier path to building production-ready AI applications with stronger task delegation and monitoring.