- Release Notes
- Before you begin
- Getting started
- Installing Automation Suite
- Migration and Upgrade
- Projects
- Datasets
- ML packages
- Pipelines
- ML Skills
- ML Logs
- About ML Logs
- Document Understanding in AI Center
- How To
- Basic Troubleshooting Guide
About ML Logs
The ML Logs page, accessible from the ML Logs menu after selecting a project, is a consolidated view of all events related to the project.
.zip
file against the following requirements:
- A non-empty root folder with the same name as the zip file exists.
- A requirements.txt file exists.
- A file named main.py which implements a class Main exists. The class is further validated to implement an
__init__
and apredict
function.
.zip
file against the following requirements:
- A non-empty root folder with the same name as the zip file exists.
- A requirements.txt file exists.
- A file named main.py which implements a class Main exists. The class is further validated to implement an
__init__
and apredict
function. - A file named train.py which implements a class Main. The class is further validated to implement an
__init__
function as well astrain
,evaluate
, andsave
functions. - Note an optional train_requirements.txt file can be added; if not included, the validation still passes.
ML logs for this category illustrate validation start and finish times, and the actual validation errors, if any.
When a skill is created, AI Center deploys it. This entails installing dependencies, running a number of security checks and optimizations, setting up the network within the namespace of the tenant, creating a container with a certain number of replicas from the corresponding package, and finally checking the health of the skill.
ML logs for this category illustrate deployment start and finish times, and the actual deployment errors, if any.