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Chapter 7. Resolved issues
The following notable issues are resolved in Red Hat OpenShift AI.
RHOAIENG-14571 - Data Science Pipelines API Server unreachable in managed IBM Cloud OpenShift OpenShift AI installation
Previously, when configuring a data science pipeline server, communication errors that prevented successful interaction with the pipeline server occurred. This issue is now resolved.
RHOAIENG-14195 - Ray cluster creation fails when deprecated head_memory parameter is used
Previously, if you included the deprecated head_memory
parameter in your Ray cluster configuration, the Ray cluster creation failed. This issue is now resolved.
RHOAIENG-11895 - Unable to clone a GitHub repo in JupyterLab when configuring a custom CA bundle using |-
Previously, if you configured a custom Certificate Authority (CA) bundle in the DSCInitialization
(DSCI) object using |-
, cloning a repo from JupyterLab failed. This issue is now resolved.
RHOAIENG-1132 (previously documented as RHODS-6383) - An ImagePullBackOff
error message is not displayed when required during the workbench creation process
Previously, pods experienced issues pulling container images from the container registry. When an error occurred, the relevant pod entered into an ImagePullBackOff
state. During the workbench creation process, if an ImagePullBackOff
error occurred, an appropriate message was not displayed. This issue is now resolved.
RHOAIENG-13327 - Importer component (dsl.importer) prevents pipelines from running
Pipelines could not run when using the data science pipelines importer component, dsl.importer
. This issue is now resolved.
RHOAIENG-14652 - kfp-client
unable to connect to the pipeline server on OCP 4.16 and later
In OpenShift 4.16 and later FIPS clusters, data science pipelines were accessible through the OpenShift AI Dashboard. However, connections to the pipelines API server from the KFP SDK failed due to a TLS handshake error. This issue is now resolved.
RHOAIENG-10129 - Notebook and Ray cluster with matching names causes secret resolution failure
Previously, if you created a notebook and a Ray cluster that had matching names in the same namespace, one controller failed to resolve its secret because the secret already had an owner. This issue is now resolved.
RHOAIENG-7887 - Kueue fails to monitor RayCluster or PyTorchJob resources
Previously, when you created a DataScienceCluster
CR with all components enabled, the Kueue component was installed before the Ray component and the Training Operator component. As a result, the Kueue component did not monitor RayCluster
or PyTorchJob
resources. When a user created RayCluster
or PyTorchJob
resources, Kueue did not control the admission of those resources. This issue is now resolved.
RHOAIENG-583 (previously documented as RHODS-8921 and RHODS-6373) - You cannot create a pipeline server or start a workbench when cumulative character limit is exceeded
When the cumulative character limit of a data science project name and a pipeline server name exceeded 62 characters, you were unable to successfully create a pipeline server. Similarly, when the cumulative character limit of a data science project name and a workbench name exceeded 62 characters, workbenches failed to start. This issue is now resolved.
Incorrect logo on dashboard after upgrading
Previously, after upgrading from OpenShift AI 2.11 to OpenShift AI 2.12, the dashboard could incorrectly display the Open Data Hub logo instead of the Red Hat OpenShift AI logo. This issue is now resolved.
RHOAIENG-11297 - Authentication failure after pipeline run
Previously, during the execution of a pipeline run, a connection error could occur due to a certificate authentication failure. This certificate authentication failure could be caused by the use of a multi-line string separator for customCABundle
in the default-dsci
object, which was not supported by data science pipelines. This issue is now resolved.
RHOAIENG-11232 - Distributed workloads: Kueue alerts do not provide runbook link
After a Kueue alert fires, the cluster administrator can click Observe
RHOAIENG-10665 - Unable to query Speculating with a draft model for granite model
Previously, you could not use speculative decoding on the granite-7b
model and granite-7b-accelerator
draft model. When querying these models, the queries failed with an internal error. This issue is now resolved.
RHOAIENG-9481 - Pipeline runs menu glitches when clicking action menu
Previously, when you clicked the action menu (⋮) next to a pipeline run on the Experiments > Experiments and runs page, the menu that appeared was not fully visible, and you had to scroll to see all of the menu items. This issue is now resolved.
RHOAIENG-8553 - Workbench created with custom image shows !Deleted
flag
Previously, if you disabled the internal image registry on your OpenShift cluster and then created a workbench with a custom image that was imported by using the image tag, for example: quay.io/my-wb-images/my-image:tag
, a !Deleted
flag was shown in the Notebook image column on the Workbenches tab of the Data Science Projects page. If you stopped the workbench, you could not restart it. This issue is now resolved.
RHOAIENG-6376 - Pipeline run creation fails after setting pip_index_urls
in a pipeline component to a URL that contains a port number and path
Previously, when you created a pipeline and set the pip_index_urls
value for a component to a URL that contains a port number and path, compiling the pipeline code and then creating a pipeline run could result in an error. This issue is now resolved.
RHOAIENG-4240 - Jobs fail to submit to Ray cluster in unsecured environment
Previously, when running distributed data science workloads from notebooks in an unsecured OpenShift cluster, a ConnectionError: Failed to connect to Ray
error message might be shown. This issue is now resolved.
RHOAIENG-9670 - vLLM container intermittently crashes while processing requests
Previously, if you deployed a model by using the vLLM ServingRuntime for KServe runtime on the single-model serving platform and also configured tensor-parallel-size
, depending on the hardware platform you used, the kserve-container
container would intermittently crash while processing requests. This issue is now resolved.
RHOAIENG-8043 - vLLM errors during generation with mixtral-8x7b
Previously, some models, such as Mixtral-8x7b might have experienced sporadic errors due to a triton issue, such as FileNotFoundError:No such file or directory
. This issue is now resolved.
RHOAIENG-2974 - Data science cluster cannot be deleted without its associated initialization object
Previously, you could not delete a DataScienceCluster
(DSC) object if its associated DSCInitialization
object (DSCI) did not exist. This issue has now been resolved.
RHOAIENG-1205 (previously documented as RHODS-11791) - Usage data collection is enabled after upgrade
Previously, the Allow collection of usage data
option would activate whenever you upgraded OpenShift AI. Now, you no longer need to manually deselect the Allow collection of usage data
option when you upgrade.
RHOAIENG-1204 (previously documented as ODH-DASHBOARD-1771) - JavaScript error during Pipeline step initializing
Previously, the pipeline Run details page stopped working when a run started. This issue has now been resolved.
RHOAIENG-582 (previously documented as ODH-DASHBOARD-1335) - Rename Edit permission to Contributor
On the Permissions tab for a project, the term Edit has been replaced with Contributor to more accurately describe the actions granted by this permission.
For a complete list of updates, see the Errata advisory.
RHOAIENG-8819 - ibm-granite/granite-3b-code-instruct
model fails to deploy on single-model serving platform
Previously, if you tried to deploy the ibm-granite/granite-3b-code-instruct
model on the single-model serving platform by using the vLLM ServingRuntime for KServe
runtime, the model deployment would fail with an error. This issue is now resolved.
RHOAIENG-8218 - Cannot log in to a workbench created on an OpenShift 4.15 cluster without OCP internal image registry
When you create a workbench on an OpenShift cluster that does not have the OpenShift Container Platform internal image registry enabled, the workbench starts successfully, but you cannot log in to it.
This is a known issue with OpenShift 4.15.x versions earlier than 4.15.15. To resolve this issue, upgrade to OpenShift 4.15.15 or later.
RHOAIENG-7346 - Distributed workloads no longer run from existing pipelines after upgrade
Previously, if you tried to upgrade to OpenShift AI 2.10, a distributed workload would no longer run from an existing pipeline if the cluster was created only inside the pipeline. This issue is now resolved.
RHOAIENG-7209 - Error displays when setting the default pipeline root
Previously, if you tried to set the default pipeline root using the data science pipelines SDK or the OpenShift AI user interface, an error would appear. This issue is now resolved.
RHOAIENG-6711 - ODH-model-controller overwrites the spec.memberSelectors
field in ServiceMeshMemberRoll
objects
Previously, if you tried to add a project or namespace to a ServiceMeshMemberRoll
resource using the spec.memberSelectors
field of the ServiceMeshMemberRoll
resource, the ODH-model-controller would overwrite the field. This issue is now resolved.
RHOAIENG-6649 - An error is displayed when viewing a model on a model server that has no external route defined
Previously, if you tried to use the dashboard to deploy a model on a model server that did not have external routes enabled, a t.components is undefined
error message would appear while the model creation was in progress. This issue is now resolved.
RHOAIENG-3981 - In unsecured environment, the functionality to wait for Ray cluster to be ready gets stuck
Previously, when running distributed data science workloads from notebooks in an unsecured OpenShift cluster, the functionality to wait for the Ray cluster to be ready before proceeding (cluster.wait_ready()
) got stuck even when the Ray cluster was ready. This issue is now resolved.
RHOAIENG-2312 - Importing numpy fails in code-server
workbench
Previously, if you tried to import numpy, your code-server workbench would fail. This issue is now resolved.
RHOAIENG-1197 - Cannot create pipeline due to the End date picker in the pipeline run creation page defaulting to NaN values when using Firefox on Linux
Previously, if you tried to create a pipeline with a scheduled recurring run using Firefox on Linux, enabling the End Date parameter would result in Not a number (Nan) values for both the date and time. This issue is now resolved.
RHOAIENG-1196 (previously documented as ODH-DASHBOARD-2140) - Package versions displayed in dashboard do not match installed versions
Previously, the dashboard would display inaccurate version numbers for packages such as JupterLab and Notebook. This issue is now resolved.
RHOAIENG-880 - Default pipelines service account is unable to create Ray clusters
Previously, you could not create Ray clusters using the default pipelines Service Account. This issue is now resolved.
RHOAIENG-52 - Token authentication fails in clusters with self-signed certificates
Previously, if you used self-signed certificates, and you used the Python codeflare-sdk
in a notebook or in a Python script as part of a pipeline, token authentication would fail. This issue is now resolved.
RHOAIENG-7312 - Model serving fails during query with token authentication in KServe
Previously, if you enabled both the ModelMesh and KServe components in your DataScienceCluster
object and added Authorino as an authorization provider, a race condition could occur that resulted in the odh-model-controller
pods being rolled out in a state that is appropriate for ModelMesh, but not for KServe and Authorino. In this situation, if you made an inference request to a running model that was deployed using KServe, you saw a 404 - Not Found
error. In addition, the logs for the odh-model-controller
deployment object showed a Reconciler
error message. This issue is now resolved.
RHOAIENG-7181 (previously documented as RHOAIENG-6343)- Some components are set to Removed
after installing OpenShift AI
Previously, after you installed OpenShift AI, the managementState
field for the codeflare
, kueue
, and ray
components was incorrectly set to Removed
instead of Managed
in the DataScienceCluster
custom resource. This issue is now resolved.
RHOAIENG-7079 (previously documented as RHOAIENG-6317) - Pipeline task status and logs sometimes not shown in OpenShift AI dashboard
Previously, when running pipelines by using Elyra, the OpenShift AI dashboard might not show the pipeline task status and logs, even when the related pods had not been pruned and the information was still available in the OpenShift Console. This issue is now resolved.
RHOAIENG-7070 (previously documented as RHOAIENG-6709) - Jupyter notebook creation might fail when different environment variables specified
Previously, if you started and then stopped a Jupyter notebook, and edited its environment variables in an OpenShift AI workbench, the notebook failed to restart. This issue is now resolved.
RHOAIENG-6853 - Cannot set pod toleration in Elyra pipeline pods
Previously, if you set a pod toleration for an Elyra pipeline pod, the toleration did not take effect. This issue is now resolved.
RHOAIENG-5314 - Data science pipeline server fails to deploy in fresh cluster due to network policies
Previously, if you created a data science pipeline server on a fresh cluster, the user interface remained in a loading state and the pipeline server did not start. This issue is now resolved.
RHOAIENG-4252 - Data science pipeline server deletion process fails to remove ScheduledWorkFlow
resource
Previously, the pipeline server deletion process did not remove the ScheduledWorkFlow
resource. As a result, new DataSciencePipelinesApplications
(DSPAs) did not recognize the redundant ScheduledWorkFlow
resource. This issue is now resolved
RHOAIENG-3411 (previously documented as RHOAIENG-3378) - Internal Image Registry is an undeclared hard dependency for Jupyter notebooks spawn process
Previously, before you could start OpenShift AI notebooks and workbenches, you must have already enabled the internal, integrated container image registry in OpenShift. Attempts to start notebooks or workbenches without first enabling the image registry failed with an "InvalidImageName" error. You can now create and use workbenches in OpenShift AI without enabling the internal OpenShift image registry. If you update a cluster to enable or disable the internal image registry, you must recreate existing workbenches for the registry changes to take effect.
RHOAIENG-2541 - KServe controller pod experiences OOM because of too many secrets in the cluster
Previously, if your OpenShift cluster had a large number of secrets, the KServe controller pod could continually crash due to an out-of-memory (OOM) error. This issue is now resolved.
RHOAIENG-1452 - The Red Hat OpenShift AI Add-on gets stuck
Previously, the Red Hat OpenShift AI Add-on uninstall did not delete OpenShift AI components when the install was triggered via OCM APIs. This issue is now resolved.
RHOAIENG-307 - Removing the DataScienceCluster deletes all OpenShift Serverless CRs
Previously, if you deleted the DataScienceCluster custom resource (CR), all OpenShift Serverless CRs (including knative-serving, deployments, gateways, and pods) were also deleted. This issue is now resolved.
RHOAIENG-6709 - Jupyter notebook creation might fail when different environment variables specified
Previously, if you started and then stopped a Jupyter notebook, and edited its environment variables in an OpenShift AI workbench, the notebook failed to restart. This issue is now resolved.
RHOAIENG-6701 - Users without cluster administrator privileges cannot access the job submission endpoint of the Ray dashboard
Previously, users of the distributed workloads feature who did not have cluster administrator privileges for OpenShift might not have been able to access or use the job submission endpoint of the Ray dashboard. This issue is now resolved.
RHOAIENG-6578 - Request without token to a protected inference point not working by default
Previously, if you added Authorino as an authorization provider for the single-model serving platform and enabled token authorization for models that you deployed, it was still possible to query the models without specifying the tokens. This issue is now resolved.
RHOAIENG-6343 - Some components are set to Removed
after installing OpenShift AI
Previously, after you installed OpenShift AI, the managementState
field for the codeflare
, kueue
, and ray
components was incorrectly set to Removed
instead of Managed
in the DataScienceCluster
custom resource. This issue is now resolved.
RHOAIENG-5067 - Model server metrics page does not load for a model server based on the ModelMesh component
Previously, data science project names that contained capital letters or spaces could cause issues on the model server metrics page for model servers based on the ModelMesh component. The metrics page might not have received data correctly, resulting in a 400 Bad Request
error and preventing the page from loading. This issue is now resolved.
RHOAIENG-4966 - Self-signed certificates in a custom CA bundle might be missing from the odh-trusted-ca-bundle
configuration map
Previously, if you added a custom certificate authority (CA) bundle to use self-signed certificates, sometimes the custom certificates were missing from the odh-trusted-ca-bundle
ConfigMap, or the non-reserved namespaces did not contain the odh-trusted-ca-bundle
ConfigMap when the ConfigMap was set to managed
. This issue is now resolved.
RHOAIENG-4938 (previously documented as RHOAIENG-4327) - Workbenches do not use the self-signed certificates from centrally configured bundle automatically
There are two bundle options to include self-signed certificates in OpenShift AI, ca-bundle.crt
and odh-ca-bundle.crt
. Previously, workbenches did not automatically use the self-signed certificates from the centrally configured bundle and you had to define environment variables that pointed to your certificate path. This issue is now resolved.
RHOAIENG-4572- Unable to run data science pipelines after install and upgrade in certain circumstances
Previously, you were unable to run data science pipelines after installing or upgrading OpenShift AI in the following circumstances:
-
You installed OpenShift AI and you had a valid CA certificate. Within the default-dsci object, you changed the
managementState
field for thetrustedCABundle
field toRemoved
post-installation. - You upgraded OpenShift AI from version 2.6 to version 2.8 and you had a valid CA certificate.
- You upgraded OpenShift AI from version 2.7 to version 2.8 and you had a valid CA certificate.
This issue is now resolved.
RHOAIENG-4524 - BuildConfig definitions for RStudio images contain occurrences of incorrect branch
Previously, the BuildConfig
definitions for the RStudio and CUDA - RStudio workbench images pointed to the wrong branch in OpenShift AI. This issue is now resolved.
RHOAIENG-3963 - Unnecessary managed resource warning
Previously, when you edited and saved the OdhDashboardConfig
custom resource for the redhat-ods-applications
project, the system incorrectly displayed a Managed resource
warning message. This issue is now resolved.
RHOAIENG-2542 - Inference service pod does not always get an Istio sidecar
Previously, when you deployed a model using the single-model serving platform (which uses KServe), the istio-proxy
container could be missing in the resulting pod, even if the inference service had the sidecar.istio.io/inject=true
annotation. This issue is now resolved.
RHOAIENG-1666 - The Import Pipeline button is prematurely accessible
Previously, when you imported a pipeline to a workbench that belonged to a data science project, the Import Pipeline button was accessible before the pipeline server was fully available. This issue is now resolved.
RHOAIENG-673 (previously documented as RHODS-12946) - Cannot install from PyPI mirror in disconnected environment or when using private certificates
In disconnected environments, Red Hat OpenShift AI cannot connect to the public-facing PyPI repositories, so you must specify a repository inside your network. Previously, if you were using private TLS certificates and a data science pipeline was configured to install Python packages, the pipeline run would fail. This issue is now resolved.
RHOAIENG-3355 - OVMS on KServe does not use accelerators correctly
Previously, when you deployed a model using the single-model serving platform and selected the OpenVINO Model Server serving runtime, if you requested an accelerator to be attached to your model server, the accelerator hardware was detected but was not used by the model when responding to queries. This issue is now resolved.
RHOAIENG-2869 - Cannot edit existing model framework and model path in a multi-model project
Previously, when you tried to edit a model in a multi-model project using the Deploy model dialog, the Model framework and Path values did not update. This issue is now resolved.
RHOAIENG-2724 - Model deployment fails because fields automatically reset in dialog
Previously, when you deployed a model or edited a deployed model, the Model servers and Model framework fields in the "Deploy model" dialog might have reset to the default state. The Deploy button might have remained enabled even though these mandatory fields no longer contained valid values. This issue is now resolved.
RHOAIENG-2099 - Data science pipeline server fails to deploy in fresh cluster
Previously, when you created a data science pipeline server on a fresh cluster, the user interface remained in a loading state and the pipeline server did not start. This issue is now resolved.
RHOAIENG-1199 (previously documented as ODH-DASHBOARD-1928) - Custom serving runtime creation error message is unhelpful
Previously, when you tried to create or edit a custom model-serving runtime and an error occurred, the error message did not indicate the cause of the error. The error messages have been improved.
RHOAIENG-556 - ServingRuntime for KServe model is created regardless of error
Previously, when you tried to deploy a KServe model and an error occurred, the InferenceService
custom resource (CR) was still created and the model was shown in the Data Science Projects page, but the status would always remain unknown. The KServe deploy process has been updated so that the ServingRuntime is not created if an error occurs.
RHOAIENG-548 (previously documented as ODH-DASHBOARD-1776) - Error messages when user does not have project administrator permission
Previously, if you did not have administrator permission for a project, you could not access some features, and the error messages did not explain why. For example, when you created a model server in an environment where you only had access to a single namespace, an Error creating model server
error message appeared. However, the model server is still successfully created. This issue is now resolved.
RHOAIENG-66 - Ray dashboard route deployed by CodeFlare SDK exposes self-signed certs instead of cluster cert
Previously, when you deployed a Ray cluster by using the CodeFlare SDK with the openshift_oauth=True
option, the resulting route for the Ray cluster was secured by using the passthrough
method and as a result, the self-signed certificate used by the OAuth proxy was exposed. This issue is now resolved.
RHOAIENG-12 - Cannot access Ray dashboard from some browsers
In some browsers, users of the distributed workloads feature might not have been able to access the Ray dashboard because the browser automatically changed the prefix of the dashboard URL from http
to https
. This issue is now resolved.
RHODS-6216 - The ModelMesh oauth-proxy container is intermittently unstable
Previously, ModelMesh pods did not deploy correctly due to a failure of the ModelMesh oauth-proxy
container. This issue occurred intermittently and only if authentication was enabled in the ModelMesh runtime environment. This issue is now resolved.
RHOAIENG-535 - Metrics graph showing HTTP requests for deployed models is incorrect if there are no HTTP requests
Previously, if a deployed model did not receive at least one HTTP request for each of the two data types (success and failed), the graphs that show HTTP request performance metrics (for all models on the model server or for the specific model) rendered incorrectly, with a straight line that indicated a steadily increasing number of failed requests. This issue is now resolved.
RHOAIENG-1467 - Serverless net-istio controller pod might hit OOM
Previously, the Knative net-istio-controller
pod (which is a dependency for KServe) might continuously crash due to an out-of-memory (OOM) error. This issue is now resolved.
RHOAIENG-1899 (previously documented as RHODS-6539) - The Anaconda Professional Edition cannot be validated and enabled
Previously, you could not enable the Anaconda Professional Edition because the dashboard’s key validation for it was inoperable. This issue is now resolved.
RHOAIENG-2269 - (Single-model) Dashboard fails to display the correct number of model replicas
Previously, on a single-model serving platform, the Models and model servers section of a data science project did not show the correct number of model replicas. This issue is now resolved.
RHOAIENG-2270 - (Single-model) Users cannot update model deployment settings
Previously, you couldn’t edit the deployment settings (for example, the number of replicas) of a model you deployed with a single-model serving platform. This issue is now resolved.
RHODS-8865 - A pipeline server fails to start unless you specify an Amazon Web Services (AWS) Simple Storage Service (S3) bucket resource
Previously, when you created a data connection for a data science project, the AWS_S3_BUCKET
field was not designated as a mandatory field. However, if you attempted to configure a pipeline server with a data connection where the AWS_S3_BUCKET
field was not populated, the pipeline server failed to start successfully. This issue is now resolved. The Configure pipeline server dialog has been updated to include the Bucket
field as a mandatory field.
RHODS-12899 - OpenVINO runtime missing annotation for NVIDIA GPUs
Previously, if a user selected the OpenVINO model server (supports GPUs) runtime and selected an NVIDIA GPU accelerator in the model server user interface, the system could display a unnecessary warning that the selected accelerator was not compatible with the selected runtime. The warning is no longer displayed.
RHOAIENG-84 - Cannot use self-signed certificates with KServe
Previously, the single-model serving platform did not support self-signed certificates. This issue is now resolved. To use self-signed certificates with KServe, follow the steps described in Working with certificates.
RHOAIENG-164 - Number of model server replicas for Kserve is not applied correctly from the dashboard
Previously, when you set a number of model server replicas different from the default (1), the model (server) was still deployed with 1 replica. This issue is now resolved.
RHOAIENG-288 - Recommended image version label for workbench is shown for two versions
Most of the workbench images that are available in OpenShift AI are provided in multiple versions. The only recommended version is the latest version. In Red Hat OpenShift AI 2.4 and 2.5, the Recommended tag was erroneously shown for multiple versions of an image. This issue is now resolved.
RHOAIENG-293 - Deprecated ModelMesh monitoring stack not deleted after upgrading from 2.4 to 2.5
In Red Hat OpenShift AI 2.5, the former ModelMesh monitoring stack was no longer deployed because it was replaced by user workload monitoring. However, the former monitoring stack was not deleted during an upgrade to OpenShift AI 2.5. Some components remained and used cluster resources. This issue is now resolved.
RHOAIENG-343 - Manual configuration of OpenShift Service Mesh and OpenShift Serverless does not work for KServe
If you installed OpenShift Serverless and OpenShift Service Mesh and then installed Red Hat OpenShift AI with KServe enabled, KServe was not deployed. This issue is now resolved.
RHOAIENG-517 - User with edit permissions cannot see created models
A user with edit permissions could not see any created models, unless they were the project owner or had admin permissions for the project. This issue is now resolved.
RHOAIENG-804 - Cannot deploy Large Language Models with KServe on FIPS-enabled clusters
Previously, Red Hat OpenShift AI was not yet fully designed for FIPS. You could not deploy Large Language Models (LLMs) with KServe on FIPS-enabled clusters. This issue is now resolved.
RHOAIENG-908 - Cannot use ModelMesh if KServe was previously enabled and then removed
Previously, when both ModelMesh and KServe were enabled in the DataScienceCluster
object, and you subsequently removed KServe, you could no longer deploy new models with ModelMesh. You could continue to use models that were previously deployed with ModelMesh. This issue is now resolved.
RHOAIENG-2184 - Cannot create Ray clusters or distributed workloads
Previously, users could not create Ray clusters or distributed workloads in namespaces where they have admin
or edit
permissions. This issue is now resolved.
ODH-DASHBOARD-1991 - ovms-gpu-ootb is missing recommended accelerator annotation
Previously, when you added a model server to your project, the Serving runtime list did not show the Recommended serving runtime label for the NVIDIA GPU. This issue is now resolved.
RHOAIENG-807 - Accelerator profile toleration removed when restarting a workbench
Previously, if you created a workbench that used an accelerator profile that in turn included a toleration, restarting the workbench removed the toleration information, which meant that the restart could not complete. A freshly created GPU-enabled workbench might start the first time, but never successfully restarted afterwards because the generated pod remained forever pending. This issue is now resolved.
DATA-SCIENCE-PIPELINES-OPERATOR-294 - Scheduled pipeline run that uses data-passing might fail to pass data between steps, or fail the step entirely
A scheduled pipeline run that uses an S3 object store to store the pipeline artifacts might fail with an error such as the following:
Bad value for --endpoint-url "cp": scheme is missing. Must be of the form http://<hostname>/ or https://<hostname>/
This issue occurred because the S3 object store endpoint was not successfully passed to the pods for the scheduled pipeline run. This issue is now resolved.
RHODS-4769 - GPUs on nodes with unsupported taints cannot be allocated to notebook servers
GPUs on nodes marked with any taint other than the supported nvidia.com/gpu taint could not be selected when creating a notebook server. This issue is now resolved.
RHODS-6346 - Unclear error message displays when using invalid characters to create a data science project
When creating a data science project’s data connection, workbench, or storage connection using invalid special characters, the following error message was displayed:
the object provided is unrecognized (must be of type Secret): couldn't get version/kind; json parse error: unexpected end of JSON input ({"apiVersion":"v1","kind":"Sec ...)
The error message failed to clearly indicate the problem. The error message now indicates that invalid characters were entered.
RHODS-6950 - Unable to scale down workbench GPUs when all GPUs in the cluster are being used
In earlier releases, it was not possible to scale down workbench GPUs if all GPUs in the cluster were being used. This issue applied to GPUs being used by one workbench, and GPUs being used by multiple workbenches. You can now scale down the GPUs by selecting None from the Accelerators list.
RHODS-8939 - Default shared memory for a Jupyter notebook created in a previous release causes a runtime error
Starting with release 1.31, this issue is resolved, and the shared memory for any new notebook is set to the size of the node.
For a Jupyter notebook created in a release earlier than 1.31, the default shared memory for a Jupyter notebook is set to 64 MB and you cannot change this default value in the notebook configuration.
To fix this issue, you must recreate the notebook or follow the process described in the Knowledgebase article How to change the shared memory for a Jupyter notebook in Red Hat OpenShift AI.
RHODS-9030 - Uninstall process for OpenShift AI might become stuck when removing kfdefs
resources
The steps for uninstalling the OpenShift AI managed service are described in Uninstalling OpenShift AI.
However, even when you followed this guide, you might have seen that the uninstall process did not finish successfully. Instead, the process stayed on the step of deleting kfdefs
resources that were used by the Kubeflow Operator. As shown in the following example, kfdefs
resources might exist in the redhat-ods-applications
, redhat-ods-monitoring
, and rhods-notebooks
namespaces:
$ oc get kfdefs.kfdef.apps.kubeflow.org -A NAMESPACE NAME AGE redhat-ods-applications rhods-anaconda 3h6m redhat-ods-applications rhods-dashboard 3h6m redhat-ods-applications rhods-data-science-pipelines-operator 3h6m redhat-ods-applications rhods-model-mesh 3h6m redhat-ods-applications rhods-nbc 3h6m redhat-ods-applications rhods-osd-config 3h6m redhat-ods-monitoring modelmesh-monitoring 3h6m redhat-ods-monitoring monitoring 3h6m rhods-notebooks rhods-notebooks 3h6m rhods-notebooks rhods-osd-config 3h5m
Failed removal of the kfdefs
resources might have also prevented later installation of a newer version of OpenShift AI. This issue no longer occurs.
RHODS-9764 - Data connection details get reset when editing a workbench
When you edited a workbench that had an existing data connection and then selected the Create new data connection option, the edit page might revert to the Use existing data connection option before you had finished specifying the new connection details. This issue is now resolved.
RHODS-9583 - Data Science dashboard did not detect an existing OpenShift Pipelines installation
When the OpenShift Pipelines Operator was installed as a global operator on your cluster, the OpenShift AI dashboard did not detect it. The OpenShift Pipelines Operator is now detected successfully.
ODH-DASHBOARD-1639 - Wrong TLS value in dashboard route
Previously, when a route was created for the OpenShift AI dashboard on OpenShift, the tls.termination
field had an invalid default value of Reencrypt
. This issue is now resolved. The new value is reencrypt
.
ODH-DASHBOARD-1638 - Name placeholder in Triggered Runs tab shows Scheduled run name
Previously, when you clicked Pipelines > Runs and then selected the Triggered tab to configure a triggered run, the example value shown in the Name field was Scheduled run name
. This issue is now resolved.
ODH-DASHBOARD-1547 - "We can’t find that page" message displayed in dashboard when pipeline operator installed in background
Previously, when you used the Data Science Pipelines page of the dashboard to install the OpenShift Pipelines Operator, when the Operator installation was complete, the page refreshed to show a We can't find that page
message. This issue is now resolved. When the Operator installation is complete, the dashboard redirects you to the Pipelines page, where you can create a pipeline server.
ODH-DASHBOARD-1545 - Dashboard keeps scrolling to bottom of project when Models tab is expanded
Previously, on the Data Science Projects page of the dashboard, if you clicked the Deployed models tab to expand it and then tried to perform other actions on the page, the page automatically scrolled back to the Deployed models section. This affected your ability to perform other actions. This issue is now resolved.
NOTEBOOKS-156 - Elyra included an example runtime called Test
Previously, Elyra included an example runtime configuration called Test
. If you selected this configuration when running a data science pipeline, you could see errors. The Test
configuration has now been removed.
RHODS-9622 - Duplicating a scheduled pipeline run does not copy the existing period and pipeline input parameter values
Previously, when you duplicated a scheduled pipeline run that had a periodic trigger, the duplication process did not copy the configured execution frequency for the recurring run or the specified pipeline input parameters. This issue is now resolved.
RHODS-8932 - Incorrect cron format was displayed by default when scheduling a recurring pipeline run
When you scheduled a recurring pipeline run by configuring a cron job, the OpenShift AI interface displayed an incorrect format by default. It now displays the correct format.
RHODS-9374 - Pipelines with non-unique names did not appear in the data science project user interface
If you launched a notebook from a Jupyter application that supported Elyra, or if you used a workbench, when you submitted a pipeline to be run, pipelines with non-unique names did not appear in the Pipelines section of the relevant data science project page or the Pipelines heading of the data science pipelines page. This issue has now been resolved.
RHODS-9329 - Deploying a custom model-serving runtime could result in an error message
Previously, if you used the OpenShift AI dashboard to deploy a custom model-serving runtime, the deployment process could fail with an Error retrieving Serving Runtime
message. This issue is now resolved.
RHODS-9064 - After upgrade, the Data Science Pipelines tab was not enabled on the OpenShift AI dashboard
When you upgraded from OpenShift AI 1.26 to OpenShift AI 1.28, the Data Science Pipelines tab was not enabled in the OpenShift AI dashboard. This issue is resolved in OpenShift AI 1.29.
RHODS-9443 - Exporting an Elyra pipeline exposed S3 storage credentials in plain text
In OpenShift AI 1.28.0, when you exported an Elyra pipeline from JupyterLab in Python DSL format or YAML format, the generated output contained S3 storage credentials in plain text. This issue has been resolved in OpenShift AI 1.28.1. However, after you upgrade to OpenShift AI 1.28.1, if your deployment contains a data science project with a pipeline server and a data connection, you must perform the following additional actions for the fix to take effect:
- Refresh your browser page.
- Stop any running workbenches in your deployment and restart them.
Furthermore, to confirm that your Elyra runtime configuration contains the fix, perform the following actions:
- In the left sidebar of JupyterLab, click Runtimes ( ).
Hover the cursor over the runtime configuration that you want to view and click the Edit button ( ).
The Data Science Pipelines runtime configuration page opens.
-
Confirm that
KUBERNETES_SECRET
is defined as the value in the Cloud Object Storage Authentication Type field. - Close the runtime configuration without changing it.
RHODS-8460 - When editing the details of a shared project, the user interface remained in a loading state without reporting an error
When a user with permission to edit a project attempted to edit its details, the user interface remained in a loading state and did not display an appropriate error message. Users with permission to edit projects cannot edit any fields in the project, such as its description. Those users can edit only components belonging to a project, such as its workbenches, data connections, and storage.
The user interface now displays an appropriate error message and does not try to update the project description.
RHODS-8482 - Data science pipeline graphs did not display node edges for running pipelines
If you ran pipelines that did not contain Tekton-formatted Parameters
or when
expressions in their YAML code, the OpenShift AI user interface did not display connecting edges to and from graph nodes. For example, if you used a pipeline containing the runAfter
property or Workspaces
, the user interface displayed the graph for the executed pipeline without edge connections. The OpenShift AI user interface now displays connecting edges to and from graph nodes.
RHODS-8923 - Newly created data connections were not detected when you attempted to create a pipeline server
If you created a data connection from within a Data Science project, and then attempted to create a pipeline server, the Configure a pipeline server dialog did not detect the data connection that you created. This issue is now resolved.
RHODS-8461 - When sharing a project with another user, the OpenShift AI user interface text was misleading
When you attempted to share a Data Science project with another user, the user interface text misleadingly implied that users could edit all of its details, such as its description. However, users can edit only components belonging to a project, such as its workbenches, data connections, and storage. This issue is now resolved and the user interface text no longer misleadingly implies that users can edit all of its details.
RHODS-8462 - Users with "Edit" permission could not create a Model Server
Users with "Edit" permissions can now create a Model Server without token authorization. Users must have "Admin" permissions to create a Model Server with token authorization.
RHODS-8796 - OpenVINO Model Server runtime did not have the required flag to force GPU usage
OpenShift AI includes the OpenVINO Model Server (OVMS) model-serving runtime by default. When you configured a new model server and chose this runtime, the Configure model server dialog enabled you to specify a number of GPUs to use with the model server. However, when you finished configuring the model server and deployed models from it, the model server did not actually use any GPUs. This issue is now resolved and the model server uses the GPUs.
RHODS-8861 - Changing the host project when creating a pipeline ran resulted in an inaccurate list of available pipelines
If you changed the host project while creating a pipeline run, the interface failed to make the pipelines of the new host project available. Instead, the interface showed pipelines that belong to the project you initially selected on the Data Science Pipelines > Runs page. This issue is now resolved. You no longer select a pipeline from the Create run page. The pipeline selection is automatically updated when you click the Create run button, based on the current project and its pipeline.
RHODS-8249 - Environment variables uploaded as ConfigMap were stored in Secret instead
Previously, in the OpenShift AI interface, when you added environment variables to a workbench by uploading a ConfigMap
configuration, the variables were stored in a Secret
object instead. This issue is now resolved.
RHODS-7975 - Workbenches could have multiple data connections
Previously, if you changed the data connection for a workbench, the existing data connection was not released. As a result, a workbench could stay connected to multiple data sources. This issue is now resolved.
RHODS-7948 - Uploading a secret file containing environment variables resulted in double-encoded values
Previously, when creating a workbench in a data science project, if you uploaded a YAML-based secret file containing environment variables, the environment variable values were not decoded. Then, in the resulting OpenShift secret created by this process, the encoded values were encoded again. This issue is now resolved.
RHODS-6429 - An error was displayed when creating a workbench with the Intel OpenVINO or Anaconda Professional Edition images
Previously, when you created a workbench with the Intel OpenVINO or Anaconda Professional Edition images, an error appeared during the creation process. However, the workbench was still successfully created. This issue is now resolved.
RHODS-6372 - Idle notebook culler did not take active terminals into account
Previously, if a notebook image had a running terminal, but no active, running kernels, the idle notebook culler detected the notebook as inactive and stopped the terminal. This issue is now resolved.
RHODS-5700 - Data connections could not be created or connected to when creating a workbench
When creating a workbench, users were unable to create a new data connection, or connect to existing data connections.
RHODS-6281 - OpenShift AI administrators could not access Settings page if an admin group was deleted from cluster
Previously, if a Red Hat OpenShift AI administrator group was deleted from the cluster, OpenShift AI administrator users could no longer access the Settings page on the OpenShift AI dashboard. In particular, the following behavior was seen:
-
When an OpenShift AI administrator user tried to access the Settings
User management page, a "Page Not Found" error appeared. -
Cluster administrators did not lose access to the Settings page on the OpenShift AI dashboard. When a cluster administrator accessed the Settings
User management page, a warning message appeared, indicating that the deleted OpenShift AI administrator group no longer existed in OpenShift. The deleted administrator group was then removed from OdhDashboardConfig
, and administrator access was restored.
This issue is now resolved.
RHODS-1968 - Deleted users stayed logged in until dashboard was refreshed
Previously, when a user’s permissions for the Red Hat OpenShift AI dashboard were revoked, the user would notice the change only after a refresh of the dashboard page.
This issue is now resolved. When a user’s permissions are revoked, the OpenShift AI dashboard locks the user out within 30 seconds, without the need for a refresh.
RHODS-6384 - A workbench data connection was incorrectly updated when creating a duplicated data connection
When creating a data connection that contained the same name as an existing data connection, the data connection creation failed, but the associated workbench still restarted and connected to the wrong data connection. This issue has been resolved. Workbenches now connect to the correct data connection.
RHODS-6370 - Workbenches failed to receive the latest toleration
Previously, to acquire the latest toleration, users had to attempt to edit the relevant workbench, make no changes, and save the workbench again. Users can now apply the latest toleration change by stopping and then restarting their data science project’s workbench.
RHODS-6779 - Models failed to be served after upgrading from OpenShift AI 1.20 to OpenShift AI 1.21
When upgrading from OpenShift AI 1.20 to OpenShift AI 1.21, the modelmesh-serving
pod attempted to pull a non-existent image, causing an image pull error. As a result, models were unable to be served using the model serving feature in OpenShift AI. The odh-openvino-servingruntime-container-v1.21.0-15
image now deploys successfully.
RHODS-5945 - Anaconda Professional Edition could not be enabled in OpenShift AI
Anaconda Professional Edition could not be enabled for use in OpenShift AI. Instead, an InvalidImageName
error was displayed in the associated pod’s Events page. Anaconda Professional Edition can now be successfully enabled.
RHODS-5822 - Admin users were not warned when usage exceeded 90% and 100% for PVCs created by data science projects.
Warnings indicating when a PVC exceeded 90% and 100% of its capacity failed to display to admin users for PVCs created by data science projects. Admin users can now view warnings about when a PVC exceeds 90% and 100% of its capacity from the dashboard.
RHODS-5889 - Error message was not displayed if a data science notebook was stuck in "pending" status
If a notebook pod could not be created, the OpenShift AI interface did not show an error message. An error message is now displayed if a data science notebook cannot be spawned.
RHODS-5886 - Returning to the Hub Control Panel dashboard from the data science workbench failed
If you attempted to return to the dashboard from your workbench Jupyter notebook by clicking on File
RHODS-6101 - Administrators were unable to stop all notebook servers
OpenShift AI administrators could not stop all notebook servers simultaneously. Administrators can now stop all notebook servers using the Stop all servers button and stop a single notebook by selecting Stop server from the action menu beside the relevant user.
RHODS-5891 - Workbench event log was not clearly visible
When creating a workbench, users could not easily locate the event log window in the OpenShift AI interface. The Starting label under the Status column is now underlined when you hover over it, indicating you can click on it to view the notebook status and the event log.
RHODS-6296 - ISV icons did not render when using a browser other than Google Chrome
When using a browser other than Google Chrome, not all ISV icons under Explore and Resources pages were rendered. ISV icons now display properly on all supported browsers.
RHODS-3182 - Incorrect number of available GPUs was displayed in Jupyter
When a user attempts to create a notebook instance in Jupyter, the maximum number of GPUs available for scheduling was not updated as GPUs are assigned. Jupyter now displays the correct number of GPUs available.
RHODS-5890 - When multiple persistent volumes were mounted to the same directory, workbenches failed to start
When mounting more than one persistent volume (PV) to the same mount folder in the same workbench, creation of the notebook pod failed and no errors were displayed to indicate there was an issue.
RHODS-5768 - Data science projects were not visible to users in Red Hat OpenShift AI
Removing the [DSP]
suffix at the end of a project’s Display Name property caused the associated data science project to no longer be visible. It is no longer possible for users to remove this suffix.
RHODS-5701 - Data connection configuration details were overwritten
When a data connection was added to a workbench, the configuration details for that data connection were saved in environment variables. When a second data connection was added, the configuration details are saved using the same environment variables, which meant the configuration for the first data connection was overwritten. At the moment, users can add a maximum of one data connection to each workbench.
RHODS-5252 - The notebook Administration page did not provide administrator access to a user’s notebook server
The notebook Administration page, accessed from the OpenShift AI dashboard, did not provide the means for an administrator to access a user’s notebook server. Administrators were restricted to only starting or stopping a user’s notebook server.
RHODS-2438 - PyTorch and TensorFlow images were unavailable when upgrading
When upgrading from OpenShift AI 1.3 to a later version, PyTorch and TensorFlow images were unavailable to users for approximately 30 minutes. As a result, users were unable to start PyTorch and TensorFlow notebooks in Jupyter during the upgrade process. This issue has now been resolved.
RHODS-5354 - Environment variable names were not validated when starting a notebook server
Environment variable names were not validated on the Start a notebook server page. If an invalid environment variable was added, users were unable to successfully start a notebook. The environmental variable name is now checked in real-time. If an invalid environment variable name is entered, an error message displays indicating valid environment variable names must consist of alphabetic characters, digits, _, -, or ., and must not start with a digit.
RHODS-4617 - The Number of GPUs drop-down was only visible if there were GPUs available
Previously, the Number of GPUs drop-down was only visible on the Start a notebook server page if GPU nodes were available. The Number of GPUs drop-down now also correctly displays if an autoscaling machine pool is defined in the cluster, even if no GPU nodes are currently available, possibly resulting in the provisioning of a new GPU node on the cluster.
RHODS-5420 - Cluster admin did not get administrator access if it was the only user present in the cluster
Previously, when the cluster admin was the only user present in the cluster, it did not get Red Hat OpenShift administrator access automatically. Administrator access is now correctly applied to the cluster admin user.
RHODS-4321 - Incorrect package version displayed during notebook selection
The Start a notebook server page displayed an incorrect version number (11.4 instead of 11.7) for the CUDA notebook image. The version of CUDA installed is no longer specified on this page.
RHODS-5001 - Admin users could add invalid tolerations to notebook pods
An admin user could add invalid tolerations on the Cluster settings page without triggering an error. If a invalid toleration was added, users were unable to successfully start notebooks. The toleration key is now checked in real-time. If an invalid toleration name is entered, an error message displays indicating valid toleration names consist of alphanumeric characters, -, _, or ., and must start and end with an alphanumeric character.
RHODS-5100 - Group role bindings were not applied to cluster administrators
Previously, if you had assigned cluster admin privileges to a group rather than a specific user, the dashboard failed to recognize administrative privileges for users in the administrative group. Group role bindings are now correctly applied to cluster administrators as expected.
RHODS-4947 - Old Minimal Python notebook image persisted after upgrade
After upgrading from OpenShift AI 1.14 to 1.15, the older version of the Minimal Python notebook persisted, including all associated package versions. The older version of the Minimal Python notebook no longer persists after upgrade.
RHODS-4935 - Excessive "missing x-forwarded-access-token header" error messages displayed in dashboard log
The rhods-dashboard
pod’s log contained an excessive number of "missing x-forwarded-access-token header" error messages due to a readiness probe hitting the /status
endpoint. This issue has now been resolved.
RHODS-2653 - Error occurred while fetching the generated images in the sample Pachyderm notebook
An error occurred when a user attempted to fetch an image using the sample Pachyderm notebook in Jupyter. The error stated that the image could not be found. Pachyderm has corrected this issue.
RHODS-4584 - Jupyter failed to start a notebook server using the OpenVINO notebook image
Jupyter’s Start a notebook server page failed to start a notebook server using the OpenVINO notebook image. Intel has provided an update to the OpenVINO operator to correct this issue.
RHODS-4923 - A non-standard check box displayed after disabling usage data collection
After disabling usage data collection on the Cluster settings page, when a user accessed another area of the OpenShift AI dashboard, and then returned to the Cluster settings page, the Allow collection of usage data check box had a non-standard style applied, and therefore did not look the same as other check boxes when selected or cleared.
RHODS-4938 - Incorrect headings were displayed in the Notebook Images page
The Notebook Images page, accessed from the Settings page on the OpenShift AI dashboard, displayed incorrect headings in the user interface. The Notebook image settings heading displayed as BYON image settings, and the Import Notebook images heading displayed as Import BYON images. The correct headings are now displayed as expected.
RHODS-4818 - Jupyter was unable to display images when the NVIDIA GPU add-on was installed
The Start a notebook server page did not display notebook images after installing the NVIDIA GPU add-on. Images are now correctly displayed, and can be started from the Start a notebook server page.
RHODS-4797 - PVC usage limit alerts were not sent when usage exceeded 90% and 100%
Alerts indicating when a PVC exceeded 90% and 100% of its capacity failed to be triggered and sent. These alerts are now triggered and sent as expected.
RHODS-4366 - Cluster settings were reset on operator restart
When the OpenShift AI operator pod was restarted, cluster settings were sometimes reset to their default values, removing any custom configuration. The OpenShift AI operator was restarted when a new version of OpenShift AI was released, and when the node that ran the operator failed. This issue occurred because the operator deployed ConfigMaps incorrectly. Operator deployment instructions have been updated so that this no longer occurs.
RHODS-4318 - The OpenVINO notebook image failed to build successfully
The OpenVINO notebook image failed to build successfully and displayed an error message. This issue has now been resolved.
RHODS-3743 - Starburst Galaxy quick start did not provide download link in the instruction steps
The Starburst Galaxy quick start, located on the Resources page on the dashboard, required the user to open the explore-data.ipynb notebook
, but failed to provide a link within the instruction steps. Instead, the link was provided in the quick start’s introduction.
RHODS-1974 - Changing alert notification emails required pod restart
Changes to the list of notification email addresses in the Red Hat OpenShift AI Add-On were not applied until after the rhods-operator
pod and the prometheus-*
pod were restarted.
RHODS-2738 - Red Hat OpenShift API Management 1.15.2 add-on installation did not successfully complete
For OpenShift AI installations that are integrated with the Red Hat OpenShift API Management 1.15.2 add-on, the Red Hat OpenShift API Management installation process did not successfully obtain the SMTP credentials secret. Subsequently, the installation did not complete.
RHODS-3237 - GPU tutorial did not appear on dashboard
The "GPU computing" tutorial, located at Gtc2018-numba, did not appear on the Resources page on the dashboard.
RHODS-3069 - GPU selection persisted when GPU nodes were unavailable
When a user provisioned a notebook server with GPU support, and the utilized GPU nodes were subsequently removed from the cluster, the user could not create a notebook server. This occurred because the most recently used setting for the number of attached GPUs was used by default.
RHODS-3181 - Pachyderm now compatible with OpenShift Dedicated 4.10 clusters
Pachyderm was not initially compatible with OpenShift Dedicated 4.10, and so was not available in OpenShift AI running on an OpenShift Dedicated 4.10 cluster. Pachyderm is now available on and compatible with OpenShift Dedicated 4.10.
RHODS-2160 - Uninstall process failed to complete when both OpenShift AI and OpenShift API Management were installed
When OpenShift AI and OpenShift API Management are installed together on the same cluster, they use the same Virtual Private Cluster (VPC). The uninstall process for these Add-ons attempts to delete the VPC. Previously, when both Add-ons are installed, the uninstall process for one service was blocked because the other service still had resources in the VPC. The cleanup process has been updated so that this conflict does not occur.
RHODS-2747 - Images were incorrectly updated after upgrading OpenShift AI
After the process to upgrade OpenShift AI completed, Jupyter failed to update its notebook images. This was due to an issue with the image caching mechanism. Images are now correctly updating after an upgrade.
RHODS-2425 - Incorrect TensorFlow and TensorBoard versions displayed during notebook selection
The Start a notebook server page displayed incorrect version numbers (2.4.0) for TensorFlow and TensorBoard in the TensorFlow notebook image. These versions have been corrected to TensorFlow 2.7.0 and TensorBoard 2.6.0.
RHODS-24339 - Quick start links did not display for enabled applications
For some applications, the Open quick start link failed to display on the application tile on the Enabled page. As a result, users did not have direct access to the quick start tour for the relevant application.
RHODS-2215 - Incorrect Python versions displayed during notebook selection
The Start a notebook server page displayed incorrect versions of Python for the TensorFlow and PyTorch notebook images. Additionally, the third integer of package version numbers is now no longer displayed.
RHODS-1977 - Ten minute wait after notebook server start fails
If the Jupyter leader pod failed while the notebook server was being started, the user could not access their notebook server until the pod restarted, which took approximately ten minutes. This process has been improved so that the user is redirected to their server when a new leader pod is elected. If this process times out, users see a 504 Gateway Timeout error, and can refresh to access their server.