🚀We just wrapped up the Meilisearch AI launch week. Learn more!

Go to homeMeilisearch's logo
Back to articles

Introducing Teams — Meilisearch Cloud

We’re introducing team management to improve collaboration on Meilisearch Cloud.

Laurent Cazanove
Laurent CazanoveDeveloper Experience Engineer@StriftCodes
Introducing Teams — Meilisearch Cloud

Meilisearch Cloud introduces the all-new Teams feature. Now you can host and manage your projects in collaboration with your teammates.

Keep reading to learn how to use our Teams feature.

Creating a team

From your main dashboard, click on the dropdown menu next to the Meilisearch logo on the top navbar, select Create a team. By clicking it and assigning a name to your team, your collaborative space is instantly set up.

Create a team

Inviting team members

To invite your colleagues, navigate to the team settings, click on Invite new member, and enter their email address.

Invite new member

When you invite someone to a team, they receive an invitation link via email, and upon acceptance, they can start collaborating immediately. If they already have an account, a notification pops up on their dashboard too.

Collaborating

Every team member can create their own projects, ensuring everyone has a say in the collaboration.

Managing a team

For team owners have extensive control. They can modify project plans and update billing information.

From the Team settings section, team owners can rename their team, manage user invitations and removals, and even transfer ownership.

Team settings

We hope this new release will improve collaboration with your team! Now start sending those invites 😜

Open Meilisearch Cloud

Learn how to get started with Meilisearch Cloud.


Stay in the loop by subscribing to our newsletter. To learn more about Meilisearch's future and help shape it, take a look at our roadmap and come participate in our Product Discussions.

For anything else, join our developer community on Discord.

Meilisearch indexes embeddings 7x faster with binary quantization

Meilisearch indexes embeddings 7x faster with binary quantization

By implementing binary quantization with the vector store Arroy, significant reductions in disk space usage and indexing time for large embeddings have been achieved while maintaining search relevance and efficiency.

Tamo
Tamo10 Mar 2025
Meilisearch is too slow

Meilisearch is too slow

In this blog post, we explore the enhancements needed for Meilisearch's document indexer. We'll discuss the current indexing engine, its drawbacks, and new techniques to optimize performance.

Clément Renault
Clément Renault07 Mar 2025
How to add AI-powered search to a React app

How to add AI-powered search to a React app

Build a React movie search and recommendation app with Meilisearch's AI-powered search.

Carolina Ferreira
Carolina Ferreira24 Sept 2024