columnar

Crates.iocolumnar
lib.rscolumnar
version0.1.3
sourcesrc
created_at2014-12-16 23:20:20.054932
updated_at2024-12-11 14:51:31.077159
descriptionConversion from arrays of complex structs to simple structs of arrays
homepagehttp://github.com/frankmcsherry/columnar
repositoryhttps://github.com/frankmcsherry/columnar.git
max_upload_size
id577
size26,529,135
Frank McSherry (frankmcsherry)

documentation

http://github.com/frankmcsherry/columnar

README

Columnar

A crate to convert from arrays of (complex) structs to structs of (simple) arrays.

The crate provides containers for types built out of product (struct), sum (enum), and list (Vec) combinators (and examples for structurally recursive types, like trees). The containers represent a sequence of the input types, but are backed by only a small number of Rust allocations (vectors or slices) even though each instance of the type may have many more allocations. Each of the container allocations contains only primitive types, and are easily converted to and from (correctly aligned) binary slices &[u8].

The containers supports efficient random access for reads, and limited forms of random access for writes.

An example

Starting from a sequence of complicated types, the Columnar::as_columns method converts them to a columnar container.

use columnar::Columnar;

#[derive(Columnar)]
enum Group<T> {
    Solo(T),
    Team(Vec<T>),
}

fn main() {

    let mut roster = Vec::new();
    roster.push(Group::Solo(
        ("Alice".to_string(), 20u64)
    ));
    roster.push(Group::Team(vec![
        ("Bob".to_string(), 21),
        ("Carol".to_string(), 22),
    ]));

    // An appendable replacement for `&[T]`: indexable, shareable.
    // Layout in memory is a small number of contiguous buffers,
    // even though `roster` contains many small allocations.
    let mut columns = Columnar::as_columns(roster.iter());

The contents of columns now match the items of records. However, confirming this can be annoying because the reference types returned by columns don't exactly match those of records. Here is the code you might write in place of assert_eq!(columns, records):

    // Each item in `columns` matches the original in `records`.
    // Equality testing can be awkward, because the reference types don't match.
    // For example, `Option<&T>` cannot be equated to `&Option<T>` without help,
    // and tuples `(&A, &B, &C)` cannot be equated to `&(A, B, C)` without help.
    // Iterated column values should match the original `roster`.
    use columnar::Index;
    for (col, row) in columns.into_iter().zip(roster) {
        match (col, row) {
            (GroupReference::Solo(p0), Group::Solo(p1)) => {
                assert_eq!(p0.0, p1.0);
                assert_eq!(p0.1, &p1.1);
            },
            (GroupReference::Team(p0s), Group::Team(p1s)) => {
                assert_eq!(p0s.len(), p1s.len());
                for (p0, p1) in p0s.into_iter().zip(p1s) {
                    assert_eq!(p0.0, p1.0);
                    assert_eq!(p0.1, &p1.1);
                }
            },
            _ => { panic!("Variant mismatch"); }
        }
    }

Having transformed the records, columns can now report on the allocations backing it. We feed in a thousand more reconds, and confirm that there are nonetheless only nine allocations.

    // Append a number of rows to `columns`.
    use columnar::Push;
    for index in 0 .. 1024 {
        columns.push(&Group::Team(vec![
            (format!("Brain{}", index), index),
            (format!("Brawn{}", index), index),
        ]));
    }

    // Report the fixed number of large buffers backing `columns`.
    use columnar::bytes::{AsBytes, FromBytes};
    assert_eq!(columns.as_bytes().count(), 9);
    for (align, bytes) in columns.as_bytes() {
        println!("align: {:?}, bytes.len(): {:?}", align, bytes.len());
    }

Columnar containers are backed by allocations of primitive types that can be converted to binary slices, and back again if their alignment is correct. This is "zero copy", performing no allocations, copies, or data manipulation.

    // Borrow raw bytes from `columns`, and reconstruct a borrowed `columns`.
    // In practice, we would use serialized bytes from somewhere else.
    // This local function gives type support, relating `T` to `T::Borrowed`.
    fn round_trip<T: AsBytes>(container: &T) -> T::Borrowed<'_> {
        // Grab a reference to underlying bytes, as if serialized.
        let mut bytes_iter = container.as_bytes().map(|(_, bytes)| bytes);
        columnar::bytes::FromBytes::from_bytes(&mut bytes_iter)
    }

    let borrowed = round_trip(&columns);

Columnar containers support zero-cost reshaping of their data. Hree we extract all of the ages (integer tuple element) from each group member, both solo and teams. Each sum is performed across one allocation, and benefits from efficient cache access and SIMD support.

    // Project down to columns and variants using field accessors.
    // This gets all ages from people in both solo and team groups.
    let solo_values: &[u64] = borrowed.Solo.1;
    let team_values: &[u64] = borrowed.Team.values.1;
    let total = solo_values.iter().sum::<u64>() + team_values.iter().sum::<u64>();
    println!("Present values summed: {:?}", total);

Advantages

Columnar containers can use fewer, larger allocations. This reduces work for the allocator, both in allocating and deallocating memory. The memory is also more easily reused, as any small allocations are only delimited regions of the large allocations, without needing to be sized by the allocator.

Columnar containers can use less memory. The data are repacked into contiguous allocations with no padding bytes, which removes waste. Several container wrappers compress the input, for example using variable sized integers or dictionary references for common values.

Columnar containers support zero-copy serialization and deserialization. The slices of primitive types can be safely converted to &[u8] at zero cost, and converted back if the slices are correctly aligned. It is relatively easy to move data across physical and logical device boundaries, and the ABI is simplified by using few allocations of primitive types.

There are other advantages waiting to be discovered!

Disadvantages

Columnar containers may not provide access via the inserted type. A container for (S, T) provides access to elements using a type (&S, &T), rather than through a &(S, T). Similarly, a Result<S, T> is provided back as a Result<&S, &T>, and other combinators are similar. This can make the resulting types inoperable for many use cases (for example, as keys in a map).

Columnar containers may remove locality. Containers for (S, T) store S and T separately, and if you wanted to operate on both of them at the same time, you would need to perform two memory accesses rather than one. The conversion also takes effort to translate the data, for example de-interleaving (u32, u32) data into two lists of u32 data. While there may be benefits to doing this, there are also costs.

Columnar containers may not support in-place mutation. Containers for Result<S, T> may allow you to mutate the S or T, but do not allow you to change which variant is present. Containers for Vec<T> may allow you to mutate the underlying T, but not to resize the lists.

There are other disadvantages waiting to be discovered!

Trying it out

Once you've got the repository and Rust you should be able to type cargo build. This shouldn't do very much. Typing cargo bench will spin up the benchmarking subsystem, and should print some throughputs for a few different types. At the moment, the outputs look like:

running 18 tests
test empty_clone      ... bench:         636.77 ns/iter (+/- 87.64)
test empty_copy       ... bench:         457.98 ns/iter (+/- 10.35)
test option_clone     ... bench:   3,789,695.85 ns/iter (+/- 562,651.67)
test option_copy      ... bench:   2,277,087.50 ns/iter (+/- 55,481.30)
test string10_clone   ... bench:  54,043,895.80 ns/iter (+/- 678,803.32)
test string10_copy    ... bench:   2,546,083.40 ns/iter (+/- 86,534.62)
test string20_clone   ... bench:  29,324,433.30 ns/iter (+/- 894,392.04)
test string20_copy    ... bench:   2,617,216.60 ns/iter (+/- 22,249.13)
test u32x2_clone      ... bench:     683,007.81 ns/iter (+/- 114,579.60)
test u32x2_copy       ... bench:   1,046,524.47 ns/iter (+/- 57,854.81)
test u64_clone        ... bench:     668,677.09 ns/iter (+/- 158,279.31)
test u64_copy         ... bench:     693,802.61 ns/iter (+/- 458,044.64)
test u8_u64_clone     ... bench:     687,896.89 ns/iter (+/- 78,442.76)
test u8_u64_copy      ... bench:     525,179.18 ns/iter (+/- 47,201.65)
test vec_u_s_clone    ... bench:  57,849,700.00 ns/iter (+/- 1,467,152.48)
test vec_u_s_copy     ... bench:   2,755,285.40 ns/iter (+/- 53,676.63)
test vec_u_vn_s_clone ... bench:  61,311,075.00 ns/iter (+/- 936,117.96)
test vec_u_vn_s_copy  ... bench:   3,328,358.40 ns/iter (+/- 38,148.74)

test result: ok. 0 passed; 0 failed; 0 ignored; 18 measured; 0 filtered out; finished in 89.14s

The numbers come in pairs, and for each pair represent the time to process some typed vector. The _clone numbers amount to cloning the typed vector, as you might if you needed to store it in a Vec. The _copy numbers copy a reference into a columnar representation, also capturing the data but changing its layout.

Columnar what?

Columnarization is the term I know for the transformation of vectors of structured types to a collection of vectors of base types. Other terms might include "flattening" or "struct of arrays". For simple structures, you can think of it as 'transposing' the data representation, so that there is a vector for each field of the structure, each with a length equal to the initial number of records. For more complicated structures, those involving enumerations, vectors, or recursive references to the type, there is additional structural information to track.

Informally, the transformation proceeds through structural induction on the type.

  1. A vector of a base type remain as a vector of that base type.
  2. A vector of a product type becomes a product of vectors of its simpler types.
  3. A vector of a sum type becomes a product of vectors of its simpler types, and a discriminant for each item.
  4. A vector of a list type becomes a product of a vector of offsets and a vector of its simpler type.
  5. A vector of a recursive type is more complicated, but undergoes the same structural changes with recursive uses replaced by integers.

The transformation is implemented directly tuples, the Result and Ok enumerations, and Vec. One can #[derive(Columnar)] for struct and enum types.

Implementation details

The crate primarily describes columnar container combinators, and traits over them.

The container combinators reflect the ideas just above, and stand in for vectors of products, sums, and lists. Each combinator is generic over the simpler containers it relies on, though they are generally either owning (like Vec<T>) or borrowed (like &[T]). The combinators can be nested; for example, the container for the example above is

Vecs<Results<Options<(Vec<u64>, Strings)>, Vecs<Empties>>>

Names are pluralizations of the type they contain (here Vec<Result<Option<(u64, String)>, Vec<()>>>).

The crate is based around two traits, Push and Index.

The Push trait allows a container to describe the types it accepts, and how it will absorb them.

/// A type that can accept items of type `T`.
pub trait Push<T> {
    /// Pushes an item onto `self`.
    fn push(&mut self, item: T);
}

The trait is implemented for containers and combinators for a broad set of pushed types T. Containers implement Push<T> for many distinct T, for example String, &String, and &str.

The Index trait allows a container to describe the type it reports when indexed by a usize.

/// A type that can be indexed by `usize`.
pub trait Index {
    /// The type returned by the `get` method.
    type Ref;
    /// Accesses a specific item by index.
    fn get(&self, index: usize) -> Self::Ref;
}

The trait is implemented for owning containers of Copy types, and for borrowing containers returning references. The Ref type varies by combinator, but generally reflects the contained type: tuples of references for tuple containers, Result of references for the Results container, etc. The trait does not use a GAT Ref<'a>, and instead is implemented for &'a Container types instead, which may end up being a mistake.

Bonus

There are several container combinators that implement largely unsurprising compression techniques. For example, one can contain usize values in a Results container of u8, u16, u32, and u64, using the variant appropriate to the contained value, at the storage cost of one additional bit per byte. There is a dictionary coding container that represents new elements in Ok variants, and references into the 256 most recent elements using an Err(u8) variant.

Several other familiar abstract datatypes, like rank-select bitvectors and Roaring bitmaps, can be represented with low overhead. Work is underway on columnar JSON representation, and adaptive radix trees, though these are even more hobbies than the crate itself.

Commit count: 75

cargo fmt