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https://issues.apache.org/jira/browse/CASSANDRA-7447?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=14117876#comment-14117876
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Benedict commented on CASSANDRA-7447:
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Columnar storage is best for wide-tables storing wide-rows - i.e., tables with 
partitions that span multiple pages on disk and with many columns defined, 
which are not all accessed simultaneously (e.g. a table of various stock 
pricing, volume and related data). It is *most* helpful when this kind of data 
is accessed for analytics (esp., say, Spark performing token aware 
aggregations), but offers advantages for simple queries also, simply by 
reducing the number of pages that need to be read. The right kinds of data can 
also require substantially less disk space, as compression operating over a 
more uniform dataset (i.e. one column) is especially effective, as is delta 
encoding in some scenarios.


> New sstable format with support for columnar layout
> ---------------------------------------------------
>
>                 Key: CASSANDRA-7447
>                 URL: https://issues.apache.org/jira/browse/CASSANDRA-7447
>             Project: Cassandra
>          Issue Type: Improvement
>          Components: Core
>            Reporter: Benedict
>            Assignee: Benedict
>              Labels: performance, storage
>             Fix For: 3.0
>
>         Attachments: ngcc-storage.odp
>
>
> h2. Storage Format Proposal
> C* has come a long way over the past few years, and unfortunately our storage 
> format hasn't kept pace with the data models we are now encouraging people to 
> utilise. This ticket proposes a collections of storage primitives that can be 
> combined to serve these data models more optimally.
> It would probably help to first state the data model at the most abstract 
> level. We have a fixed three-tier structure: We have the partition key, the 
> clustering columns, and the data columns. Each have their own characteristics 
> and so require their own specialised treatment.
> I should note that these changes will necessarily be delivered in stages, and 
> that we will be making some assumptions about what the most useful features 
> to support initially will be. Any features not supported will require 
> sticking with the old format until we extend support to all C* functionality.
> h3. Partition Key
> * This really has two components: the partition, and the value. Although the 
> partition is primarily used to distribute across nodes, it can also be used 
> to optimise lookups for a given key within a node
> * Generally partitioning is by hash, and for the moment I want to focus this 
> ticket on the assumption that this is the case
> * Given this, it makes sense to optimise our storage format to permit O(1) 
> searching of a given partition. It may be possible to achieve this with 
> little overhead based on the fact we store the hashes in order and know they 
> are approximately randomly distributed, as this effectively forms an 
> immutable contiguous split-ordered list (see Shalev/Shavit, or 
> CASSANDRA-7282), so we only need to store an amount of data based on how 
> imperfectly distributed the hashes are, or at worst a single value per block.
> * This should completely obviate the need for a separate key-cache, which 
> will be relegated to supporting the old storage format only
> h3. Primary Key / Clustering Columns
> * Given we have a hierarchical data model, I propose the use of a 
> cache-oblivious trie
> * The main advantage of the trie is that it is extremely compact and 
> _supports optimally efficient merges with other tries_ so that we can support 
> more efficient reads when multiple sstables are touched
> * The trie will be preceded by a small amount of related data; the full 
> partition key, a timestamp epoch (for offset-encoding timestamps) and any 
> other partition level optimisation data, such as (potentially) a min/max 
> timestamp to abort merges earlier
> * Initially I propose to limit the trie to byte-order comparable data types 
> only (the number of which we can expand through translations of the important 
> types that are not currently)
> * Crucially the trie will also encapsulate any range tombstones, so that 
> these are merged early in the process and avoids re-iterating the same data
> * Results in true bidirectional streaming without having to read entire range 
> into memory
> h3. Values
> There are generally two approaches to storing rows of data: columnar, or 
> row-oriented. The above two data structures can be combined with a value 
> storage scheme that is based on either. However, given the current model we 
> have of reading large 64Kb blocks for any read, I am inclined to focus on 
> columnar support first, as this delivers order-of-magnitude benefits to those 
> users with the correct workload, while for most workloads our 64Kb blocks are 
> large enough to store row-oriented data in a column-oriented fashion without 
> any performance degradation (I'm happy to consign very large row support to 
> phase 2). 
> Since we will most likely target both behaviours eventually, I am currently 
> inclined to suggest that static columns, sets and maps be targeted for a 
> row-oriented release, as they don't naturally fit in a columnar layout 
> without secondary heap-blocks. This may be easier than delivering heap-blocks 
> also, as it keeps both implementations relatively clean. This is certainly 
> open to debate, and I have no doubt there will be conflicting opinions here.
> Focusing on our columnar layout, the goals are:
> * Support sparse and dense column storage
> * Efficient compression of tombstones, timestamps, ttls, etc. into near-zero 
> space based on offset/delta/bitmap encoding
> * Normalisation of column names once per file
> * Per-file block-layout index, defining how each block's data is encoded, so 
> we can index directly within a block for dense fields (permitting more 
> efficient page cache utilisation)
> * Configurable grouping of fields per block, so that we can get closer to 
> row-oriented or column-oriented performance, based on user goals
> I have attached my slides from the ngcc for reference.



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