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Profiling ingestions

Feature Availability
Self-Hosted DataHub
Managed DataHub

🤝 Version compatibility

Open Source DataHub: 0.11.1 | Acryl: 0.2.12

This page documents how to perform memory profiles of ingestion runs. It is useful when trying to size the amount of resources necessary to ingest some source or when developing new features or sources.

How to use

Install the debug plugin for DataHub's CLI wherever the ingestion runs:

pip install 'acryl-datahub[debug]'

This will install memray in your python environment.

Add a flag to your ingestion recipe to generate a memray memory dump of your ingestion:

source:
...

sink:
...

flags:
generate_memory_profiles: "<path to folder where dumps will be written to>"

Once the ingestion run starts a binary file will be created and appended to during the execution of the ingestion.

These files follow the pattern file-<ingestion-run-urn>.bin for a unique identification. Once the ingestion has finished you can use memray to analyze the memory dump in a flamegraph view using:

$ memray flamegraph file-None-file-2023_09_18-21_38_43.bin

This will generate an interactive HTML file for analysis:

memray has an extensive set of features for memory investigation. Take a look at their documentation to see the full feature set.

Questions

If you've got any questions on configuring profiling, feel free to ping us on our Slack!