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44 lines
1.9 KiB
Markdown
44 lines
1.9 KiB
Markdown
Dynamic Data Experiments
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================================
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This is a prototype implementation of the proposed Codex storage proofs for dynamic data.
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### Erasure Coding & Commitment
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- [x] Organize data as byte Matrix with `k` rows and `m` columns
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- [x] Convert the byte Matrix to Field Matrix with `k` rows and `m` columns
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- [ ] Each cell in the Field matrix is "fat" (fat cell = `z` field elements) -> end up with `(k/z)`*`m` Matrix
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- [x] Erasure code the columns -> end up with `n`*`m` Matrix
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- [ ] Commit to each "fat" cell in each row independently with KZG
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- [x] Commit to each row independently with KZG
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- [ ] Build a Merkle tree with the KZG commitments
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**Note:** in the above I switched the directions of the encoding and commitment (opposite of the [proposal](https://hackmd.io/kPGC3VIZSaWj8DBYOjd4vA?view)) just because it was easier to implement but basically it is same thing.
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### Sampling
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- [x] Select a set of columns randomly
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- [x] Generate a KZG evaluation proof at random point for each column
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- [ ] Aggregate the KZG evaluation proofs
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### Updating the Data
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- [x] Select a row (or multiple)
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- [x] Query the original row
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- [x] Update the cells in that row
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- [x] Erasure code the updated row
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### Updating the Commitments
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- [x] Query the old row and receive the new row
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- [ ] Compute the `delta` = `r'` - `r`
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- [ ] Query the old the "fat" cell commitment and compute the new one
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- [ ] Compute the `delta_comm` = `fat_comm'` - `fat_comm`
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- [ ] Compute the new row commitment `row_comm'` = `row_comm` + `delta`
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### Prove Data & Commitment Update
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- [ ] TODO...
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### TODO:
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- [ ] Clean up and optimize
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- [ ] Simulate interactions between Client (Data Owner) and SP (Storage Provider)
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- [ ] Add details and write-up & experimentation/benchmark results
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**WARNING**: This repository contains work-in-progress prototypes, and has not received careful code review. It is NOT ready for production use.
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