https://store-images.s-microsoft.com/image/apps.65458.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.ad4c5daa-f846-4f3e-979f-78c9137fd939.d58680f9-3afc-4b87-9659-a1c555a7d968

MongoDB VMI for Red Hat (RHEL 8.6.0)

Kockpit Analytics Pvt. Ltd

MongoDB VMI for Red Hat (RHEL 8.6.0)

Kockpit Analytics Pvt. Ltd

MongoDB on RHEL 8.6

About the Image:

Now you can enjoy the quick and hassle-free configuration of your workspaces with Kockpit’s pre-configured images. MongoDB is a virtual machine image (VMI) created for Red Hat (OS) that allows you to set up your machines within minutes.

Here, we have packed MongoDB in a virtual machine image maintained by Cloud Infrastructure Services. To enable this VMI, users just need to run “autostart.sh” script inside the “/usr/local” directory, and users can check by connecting it through MongoDB Compass.

MongoDB Community Server is a powerful distributed document database. The community version offers a flexible document model along with ad hoc queries, indexing, and real-time aggregation to provide powerful ways to access and analyze your data. As a distributed system, you get high availability through built-in replication and failover, along with horizontal scalability with native sharding.

Benefits of using MongoDB VMI

  • Create and use: The user just needs to create a VM and can use MongoDB. There is no need for any installation.

  • Low code strategy: Set your workspace without typing a single line of code. Enjoy a fast and easy setup process to optimize performance.
  • Simple to use: While manual setup can be complex and time-consuming, VMI, like MongoDB, can be implemented with just a few simple steps.
  • Require less time: Traditional setup process requires configuring different paths, modifying numerous settings, and writing complex code. With Kockpit images, on the other hand, you can do it in just minutes.
  • Complexity:Kockpit follows a low code approach, making it less complex to use images for MongoDB. It might be challenging to write complicated MongoDB code to produce and use MongoDB images.

How to Use the Image:

    1. To use the image, click on the “Get it now” button located beneath the Kockpit logo.
    2. Fill out the necessary details, and then you will be redirected to the Azure portal.
    3. Then, click on the create button to create your virtual machine.
    4. Fill out the details such as VM Name, region, username, and password, and click on review + create.

And that’s it! Your VMI is now created. To learn how to deploy MongoDB, refer to our Documentation in the Usage Information + Support section.

Why use Kockpit Apps?

Being a prominent name in the market, Kockpit ensures a level of standard in its products. Similarly, Images offered by Kockpit Analytics are always up-to-date, secure, and built to work right out of the box.

Kockpit application packages adhere to quality industry standards to provide reliable and top-of-the-line solutions. We continuously monitor all components and libraries for vulnerabilities and application updates. When any security threat or update is identified, Kockpit automatically repackages the applications and pushes the latest versions to the cloud marketplaces.

https://store-images.s-microsoft.com/image/apps.32871.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.80a61b68-8158-4867-aa3c-afb6ad2ada73
https://store-images.s-microsoft.com/image/apps.32871.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.80a61b68-8158-4867-aa3c-afb6ad2ada73
https://store-images.s-microsoft.com/image/apps.12270.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.8084b6fa-e6c6-40a1-9028-cf07d164cb77
https://store-images.s-microsoft.com/image/apps.29586.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.85936932-d2ef-49f6-9764-b58654392a3a
https://store-images.s-microsoft.com/image/apps.25283.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.4652073e-3ac5-4279-b8e3-764bb2d97586
https://store-images.s-microsoft.com/image/apps.6072.1ea93b20-e2f5-4768-85e1-dd6b71e11afa.2aa770de-da38-4ee7-963b-5065a2d02a33.e5c13b4f-5f03-4dd8-a356-12ad3c0cf275