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This is discussed on p. 1, l. 20-25 and seems too brief to me. It is also rather unclear what the statement
few handle the heterogeneity which is prevalent in many experimental environments
means specifically. The referenced frameworks are very general purpose and I'm quite sure that they can handle almost anything if programmed that way. Just as specific pipelines need to be developed for shed-streaming.
There are also more Python-specific frameworks that are in wide use:
not all of them are specialized for streaming data but the key differentiator of shed-streaming is could be more clear.
The big cloud providers also provide proprietary solutions for streaming data.
It seems to me that the main benefit of shed-streaming is rather that it tightly integrates with an existing ecosystem maintained by NSLS-II. Overall, it appears to provide rather high-level, shallow interfaces and adapters to, for example, rapidz, bluesky, and automatic use of databroker for data provenance. I think both the documentation and the manuscript would greatly benefit from a figure similar to https://nsls-ii.github.io/_images/collection-overview.svg that shows how exactly shed-streaming fits into this ecosystem.
The text was updated successfully, but these errors were encountered:
This is discussed on p. 1, l. 20-25 and seems too brief to me. It is also rather unclear what the statement
means specifically. The referenced frameworks are very general purpose and I'm quite sure that they can handle almost anything if programmed that way. Just as specific pipelines need to be developed for shed-streaming.
There are also more Python-specific frameworks that are in wide use:
not all of them are specialized for streaming data but the key differentiator of shed-streaming is could be more clear.
The big cloud providers also provide proprietary solutions for streaming data.
It seems to me that the main benefit of shed-streaming is rather that it tightly integrates with an existing ecosystem maintained by NSLS-II. Overall, it appears to provide rather high-level, shallow interfaces and adapters to, for example, rapidz, bluesky, and automatic use of databroker for data provenance. I think both the documentation and the manuscript would greatly benefit from a figure similar to https://nsls-ii.github.io/_images/collection-overview.svg that shows how exactly shed-streaming fits into this ecosystem.
The text was updated successfully, but these errors were encountered: