ligo/docs/data_encoding.org
2017-11-08 16:42:35 +01:00

6.3 KiB

The data_encoding library

Throughout the Tezos protocol, data is serialized so that it can be used via RPC, written to disk, or placed in a block. This serialization/deserialization is handled via the data_encoding library by providing a set primitive encodings and a variety of combinators.

Examples/Tutorial

Encoding an integer

Integers are defined as other concrete data types with a generic encoding type type 'a encoding. This means that it is an encoding to/from type int. There are a variety of ways to encode an integer, depending on what binary serialization you want to achieve:

  • Data_encoding.int8
  • Data_encoding.uint8
  • Data_encoding.int16
  • Data_encoding.uint16
  • Data_encoding.int31
  • Data_encoding.int32
  • Data_encoding.int64

For example, an encoding that represents a 31 bit integer has type Data_encoding.int31 = int Data_encoding.encoding.

let int31_encoding = Data_encoding.int31

Encoding an object

Encoding a single integer is fairly uninteresting. The Data_encoding library provides a number of combinators that can be used to build more complicated objects. Consider the type that represents an interval from the first number to the second:

type interval = int64 * int64

We can define an encoding for this type as:

let interval_encoding =
  Data_encoding.(obj2 (req "min" int64) (req "max" int64))

In the example above we construct a new value interval_encoding by combining two int64 integers using the obj2 constructor.

The library provides diffrent constructors, i.e. for objects that have no data (Data_encoding.empty), constructors for object up to 10 fields, contructors for tuples, list, etc.

These are serialized to binary by converting each internal object to binary and placing them in the order of the original object and to JSON as a JSON object with field names.

Lists, arrays, and options

List, Arrays and options types can by built on top of ground data types.

type interval_list = interval list

type interval_array = interval array

type interval_option = interval option

And the encoders for these types as

let interval_list_encoding = Data_encoding.list interval_encoding
let interval_array_encoding = Data_encoding.array interval_encoding
let interval_option_encoding = Data_encoding.option interval_encoding

Union types

The Tezos codebase makes heavy use of variant types. Consider the following variant type:

type variant = B of bool
             | S of string

Encoding for this types can be expressed as:

let variant_encoding =
  Data_encoding.(union ~tag_size:`Uint8
                   [ case
                       bool
                       (function B b -> Some b | _ -> None)
                       (fun b -> B b) ;
                     case
                       string
                       (function S s -> Some s | _ -> None)
                       (fun s -> S s) ])

This variant encoding is a bit more complicated. Let's look at the parts of the type:

  • We include an optimization hint to the binary encoding to inform it of the number of elements we expect in the tag. In most cases, we can use `Uint8, which allows you to have up to 256 possible cases (default).
  • We provide a function to wrap the datatype. The encoding works by repeatedly trying to decode the datatype using these functions until one returns Some payload. This payload is then encoded using the data_encoding specified.
  • We specify a function from the encoded type to the actual datatype.

Since the library does not provide an exhaustivity check on these constructors, the user must be careful when constructucting unin types to avoid unfortunate runtime failures.

How the Data_encoding module works

This section is 100% optional. You do not need to understand this section to use the library.

The library uses GADTs to provide type-safe serialization/deserialization. From there, a runtime representation of JSON objects is parsed into the typesafe version.

First we define an untyped JSON AST:

type json =
  [ `O of (string * json) list
  | `Bool of bool
  | `Float of float
  | `A of json list
  | `Null
  | `String of string ]

This is then parsed into a typed AST ( we eliminate several cases for clarity):

type 'a desc =
  | Null : unit desc
  | Empty : unit desc
  | Bool : bool desc
  | Int64 : Int64.t desc
  | Float : float desc
  | Bytes : Kind.length -> MBytes.t desc
  | String : Kind.length -> string desc
  | String_enum : Kind.length * (string * 'a) list -> 'a desc
  | Array : 'a t -> 'a array desc
  | List : 'a t -> 'a list desc
  | Obj : 'a field -> 'a desc
  | Objs : Kind.t * 'a t * 'b t -> ('a * 'b) desc
  | Tup : 'a t -> 'a desc
  | Union : Kind.t * tag_size * 'a case list -> 'a desc
  | Mu : Kind.enum * string * ('a t -> 'a t) -> 'a desc
  | Conv :
      { proj : ('a -> 'b) ;
        inj : ('b -> 'a) ;
        encoding : 'b t ;
        schema : Json_schema.schema option } -> 'a desc
  | Describe :
      { title : string option ;
        description : string option ;
        encoding : 'a t } -> 'a desc
  | Def : { name : string ;
            encoding : 'a t } -> 'a desc
  • The first set of constructures define all ground types.
  • The constructors for Bytes, String and String_enum includes a length fields in order to provide safe binary serialization.
  • The constructors for Array and List are used by the combinators we saw earlier.
  • The Obj and Objs constructors create JSON objects. These are wrapped in the Conv constructor to remove nesting that results when these constructors are used naively.
  • The Mu constructor is used to create self-referential definitions.
  • The Conv constructor allows you to clean up a nested definition or compute another type from an existing one.
  • The Describe and Def constructors are used to add documentation

The library also provides various wrappers and convenience functions to make constructing these objects easier. Reading the documentation in the mli file should orient you on how to use these functions and their purposes.