feat: Implement stateful cursor#13
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rvcas
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| CRDTCommand::block_starting(block), | ||
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| for reducer in self.reducers.iter_mut() { |
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Is this where we plan to use rayon or something to do these in parallel?
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This PR introduces a stateful cursor in a similar fashion to the one in Oura.
This works by using the same storage plugin configured for the actual data output. The value of the cursor is scoped for a specific pipeline (aka: Scrolls process). When the pipeline starts, it queries the storage plugin to get the value of the cursor. If we find a value, it will override any "intersect" configuration and use the cursor instead.
The cursor is updated each time a block is done with all reducer algorithms. This introduces a new requirement: reducers need to be synchronized at the block level. Meaning, we can't have reducers sending update commands from one block while a different reducer is still processing the previous block. To enforce we'll need to merge each reducer algorithm into a single stage and parallelize the process within the scope of a block.