input_text
stringlengths 25
459
| output_text
stringclasses 3
values |
---|---|
Error occurred : Could not load resource while opening pipeline | Azure Data Factory |
There was a mistake: When opening a pipeline, a resource could not be loaded. | Azure Data Factory |
It went wrong: Having trouble loading resources while opening a pipeline | Azure Data Factory |
A mistake happened: No resources could be loaded while the pipeline was open. | Azure Data Factory |
There was a mistake Unable to load resource while opening pipeline | Azure Data Factory |
There was an error. When opening a pipeline, a resource could not be loaded. | Azure Data Factory |
An Azure Functions app pipeline throws an error with private endpoint connectivity | Azure Data Factory |
A pipeline for an Azure Functions app fails due to a problem with private endpoint connectivity. | Azure Data Factory |
A private endpoint connectivity fault occurs in an Azure Functions app pipeline. | Azure Data Factory |
With regard to private endpoint connectivity, an Azure Functions app pipeline fails. | Azure Data Factory |
There is a private endpoint connectivity fault in an Azure Functions app pipeline. | Azure Data Factory |
An Azure Functions app pipeline has a private endpoint connectivity issue. | Azure Data Factory |
A pipeline run is canceled but the monitor still shows progress status | Azure Data Factory |
The monitor continuously displays progress status even when a pipeline run is cancelled. | Azure Data Factory |
Despite the monitor still displaying progress status, a pipeline run is cancelled. | Azure Data Factory |
Even though a pipeline run is cancelled, the monitor still displays progress status. | Azure Data Factory |
The monitor still shows progress status even if a pipeline run has been cancelled. | Azure Data Factory |
Even if a pipeline run has been cancelled, the monitor still displays the current state of progress. | Azure Data Factory |
You see a "DelimitedTextMoreColumnsThanDefined" error when copying a pipeline | Azure Data Factory |
When duplicating a pipeline, you get a "DelimitedTextMoreColumnsThanDefined" problem. | Azure Data Factory |
A "DelimitedTextMoreColumnsThanDefined" problem appears when you copy a pipeline. | Azure Data Factory |
When copying a pipeline, you get the error "DelimitedTextMoreColumnsThanDefined" | Azure Data Factory |
When you copy a pipeline, you get a "DelimitedTextMoreColumnsThanDefined" problem. | Azure Data Factory |
You encounter a "DelimitedTextMoreColumnsThanDefined" issue when duplicating a pipeline. | Azure Data Factory |
A pipeline run fails when you reach the capacity limit of the integration runtime for data flow | Azure Data Factory |
When the integration runtime for data flow reaches its capacity limit, a pipeline run fails. | Azure Data Factory |
When you exceed the integration runtime for data flow's capacity, a pipeline run fails. | Azure Data Factory |
Once the integration runtime for data flow reaches its capacity limit, a pipeline run fails. | Azure Data Factory |
A pipeline run fails when the capacity of the integration runtime for data flow is exceeded. | Azure Data Factory |
When the data flow capacity of the integration runtime is exceeded, a pipeline run fails. | Azure Data Factory |
A pipeline run error while invoking REST api in a Web activity | Azure Data Factory |
A pipeline run problem occurred when a Web activity called the REST api. | Azure Data Factory |
A Web activity that invokes the REST API encounters a pipeline run error | Azure Data Factory |
When a Web activity calls the REST API and encounters a pipeline run error | Azure Data Factory |
Any time a Web activity uses the REST API and runs into a pipeline execution error | Azure Data Factory |
In the event that a Web activity accesses the REST API and runs into a pipeline run error | Azure Data Factory |
How to check and branch on activity-level success and failure in pipelines | Azure Data Factory |
How to branch and check pipelines for activity-level success and failure | Azure Data Factory |
How to branch on pipelines that have successful and unsuccessful activities at the activity level | Azure Data Factory |
How to split pipelines based on the success or failure of individual activities | Azure Data Factory |
How to make a pipeline branch based on the activity level success and failure of activities | Azure Data Factory |
How to create a pipeline branch based on the success or failure of activities at the activity level | Azure Data Factory |
How to monitor pipeline failures in regular intervals | Azure Data Factory |
How to regularly check for pipeline faults | Azure Data Factory |
How to systematically keep track of pipeline breakdowns | Azure Data Factory |
How to routinely monitor pipeline malfunctions | Azure Data Factory |
How to regularly check for pipeline issues | Azure Data Factory |
How to routinely check for pipeline concerns | Azure Data Factory |
Degree of parallelism increase does not result in higher throughput | Azure Data Factory |
Increasing the degree of parallelism has little impact on throughput. | Azure Data Factory |
Increased parallelism does not translate into increased throughput. | Azure Data Factory |
Throughput does not increase as the degree of parallelism increases. | Azure Data Factory |
An increase in the degree of parallelism has no impact on throughput. | Azure Data Factory |
As the level of parallelism rises, throughput does not increase. | Azure Data Factory |
There is an issue : Pipeline status is queued or stuck for a long time | Azure Data Factory |
There is a problem: Pipeline status is backed up or has been for a while. | Azure Data Factory |
There is a issue: The pipeline status has been backed up or is persistently stuck. | Azure Data Factory |
There is a error: Pipeline status is queued or stuck for a while. | Azure Data Factory |
Pipeline status is in a backlog or has been stuck for a time, which is an issue. | Azure Data Factory |
Pipeline status is delayed in queue or is currently unavailable. | Azure Data Factory |
Subsets and Splits