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This module contains code that is shared by all (or most) components of the NextGenerationProbe.
We need a bunch of requirements (see requirements.txt). To improve reproducibility, it makes sense to lock them.
This can be done using (see ./compile_requirements.py -h for help):
bash./compile_requirements.py --no-grpc
This module can also be used to build base images for the building of more advanced images.
Since the base images do not contain any of our code or other valuable information, but only the requirements, it can safely be pushed to the corresponding free https://hub.docker.com/repositories/mxfrspt. This makes it much easier to use the very same base image (compatibility, reproducibility) across different modules.
The credentials required for pushing changes to the base images can be obtained from Max Frei.
The base images are built using the build_base_images.sh script. This script builds the base images ngp_base and ngp_base_grpc for platforms linux/amd64 and linux/arm64 and pushes them to the docker hub.
您可以使用以下命令拉取该镜像。请将 <标签> 替换为具体的标签版本。如需查看所有可用标签版本,请访问 标签列表页面。
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