Kernel Team summary: March 21, 2018
Canonical
on 21 March 2018
Development (18.04)
https://wiki.ubuntu.com/BionicBeaver/ReleaseSchedule
On the road to 18.04 we have a 4.15 based kernel in the Bionic repository.
Important upcoming dates:
Final Beta - Apr 5 (~2 weeks away) Kernel Freeze - Apr 12 (~3 weeks away) Final Freeze - Apr 19 (~4 weeks away) Ubuntu 18.04 - Apr 26 (~5 weeks away)
Stable (Released & Supported)
- The updated kernel packages for the current SRU cycle are now in -proposed ready for verification and tests.
Kernel versions in -proposed:
trusty 3.13.0-144.193 artful 4.13.0-38.43 bionic 4.15.0-13.14 xenial 4.4.0-117.141
linux-hwe 4.13.0-38.43~16.04.1
linux-hwe-edge 4.15.0-13.14~16.04.1
linux-lts-trusty 3.13.0-144.193~precise1
linux-lts-xenial 4.4.0-117.141~14.04.1
-
Current cycle: 09-Mar through 31-Mar
09-Mar Last day for kernel commits for this cycle. 12-Mar - 17-Mar Kernel prep week. 18-Mar - 30-Mar Bug verification & Regression testing. 02-Apr Release to -updates.
-
Next cycle: 30-Mar through 21-Apr
30-Mar Last day for kernel commits for this cycle. 02-Apr - 07-Apr Kernel prep week. 08-Apr - 20-Apr Bug verification & Regression testing. 23-Apr Release to -updates.
Misc
- The current CVE status
- If you would like to reach the kernel team, you can find us at the #ubuntu-kernel
channel on FreeNode. Alternatively, you can mail the Ubuntu Kernel Team mailing
list at: kernel-team@lists.ubuntu.com.
Ubuntu cloud
Ubuntu offers all the training, software infrastructure, tools, services and support you need for your public and private clouds.
Newsletter signup
Related posts
Web Engineering: Hack Week 2024
At Canonical, the work of our teams is strongly embedded in the open source principles and philosophy. We believe open source software will become the most...
What to know when procuring Linux laptops
Technology procurement directly influences business success. The equipment you procure will determine how your teams deliver projects and contribute to your...
Building RAG with enterprise open source AI infrastructure
How to create a robust enterprise AI infrastructure for RAG systems using open source tooling?A highlight on how open source can help