avro-d 0.2.10

Library and code generators to use Apache Avro in D.


To use this package, run the following command in your project's root directory:

Manual usage
Put the following dependency into your project's dependences section:

avro-d

An implementation of the Apache Avro serialization framework in the D Programming Language.

Apache Avro provides:

  • Rich data structures
  • A compact, fast, binary data format.
  • A container file, to store persistent data.
  • Remote procedure call (RPC).
  • Simple integration with dynamic languages. Code generation is not required to read or write data files nor to use or implement RPC protocols. Code generation as an optional optimization, only worth implementing for statically typed languages.

The Apache Avro specification is significantly more complex than other data serialization formats such as Google Protocol Buffers. The full Apache Avro Specification provides more details.

Features Implemented

Schema representation

A set of data classes exist to represent schemas for generation in code or the processing of data.

For example:

import avro.schema;
auto schema = new UnionSchema([
    Schema.createPrimitive(Type.STRING),
    Schema.createPrimitive(Type.INT)]);

Schema parsing & validation

Schemas may be parsed from files, text, or JSON.

For example:

import avro.parser;
auto parser = new Parser();
Schema schema =  parser.parseText(q"EOS
{"namespace": "example.avro",
 "type": "record",
 "name": "User",
 "fields": [
     {"name": "name", "type": "string"},
     {"name": "favorite_number", "type": ["int", "null"]},
     {"name": "favorite_color", "type": ["string", "null"]}
 ]
}
EOS");

Errors in the JSON format of a schema will lead to descriptive errors.

Generic Data types

Generic data objects may be created according to schemas with their values set to schema-appropriate defaults and validation logic when setting values. Most GenericDatum objects make use of .getValue!T() and .setValue(T)(T val) methods, however, many convenience functions also exist.

For example:

import avro.generic.genericdata;

// Initializes the GenericDatum according to the schema with default values.
GenericDatum datum = new GenericDatum(schema);
assert(datum.getType == Type.RECORD);

// Primitive values can be set and retrieved.
datum.getValue!(GenericRecord).getField("name").setValue("bob");

// Convenience shortcut using opIndex() and opAssign() for primitive types.
datum["name"] = "bob";

assert(datum["name"].getValue!string == "bob");

// Enums have convenience functions directly on GenericData.
datum["favorite_number"].setUnionIndex(0);
assert(datum["favorite_number"].getUnionIndex() == 0);

// Arrays also have convenience functions.
datum["scores"] ~= 1.23f;
datum["scores"] ~= 4.56f;
assert(datum["scores"].length == 2);
p
// Maps do as well.
datum["m"]["m1"] = 10L;
datum["m"]["m2"] = 20L;
assert(datum["m"]["m1"].getValue!long == 10L);

Binary Serialization/Deserialization

GenericData objects can be written using an encoder.

For example:

import avro.codec.binaryencoder;
import avro.generic.genericwriter;

ubyte[] data;
auto encoder = binaryEncoder(appender(&data));
GenericWriter writer = new GenericWriter(schema, encoder);
writer.write(datum);

assert(data == [
// Field: name
// len=3     b     o     b
    0x06, 0x62, 0x6F, 0x62,
// Field: favorite_number
// idx=0     8
    0x00, 0x10,
// Field: favorite_color
// idx=0 len=4     b     l     u     e
    0x00, 0x08, 0x62, 0x6C, 0x75, 0x65
]);

They may also be read using a decoder.

For example:

import avro.codec.binarydecoder;
import avro.generic.genericreader;

auto decoder = binaryDecoder(data);
GenericReader reader = new GenericReader(schema, decoder);
GenericDatum datum;
reader.read(datum);

assert(datum["name"].getValue!string() == "bob");
assert(datum["favorite_number"].getValue!int() == 8);
assert(datum["favorite_color"].getValue!string() == "blue");

JSON Serialization/Deserialization

GenericData objects can be written using an encoder.

The following example shows data being written using a schema:

The following example shows data being read using a schema:

import avro.codec.jsondecoder;

string data = q"EOS
{
  "name": "bob",
  "favorite_number": {"int": 8},
  "favorite_color": null
}
EOS";
auto decoder = jsonDecoder(data);
GenericReader reader = new GenericReader(schema, decoder);
GenericDatum datum;
reader.read(datum);

assert(datum["name"].getValue!string() == "bob");
assert(datum["favorite_number"].getValue!int() == 8);
assert(datum["favorite_color"].getType() == Type.NULL);

The following example shows data being written to JSON:

GenericDatum datum = new GenericDatum(schema);
datum["name"].setValue("bob");
datum["favorite_number"].setUnionIndex(0);
datum["favorite_number"].setValue(8);
datum["favorite_color"].setUnionIndex(1);

string data;
auto encoder = jsonEncoder(appender(&data));
GenericWriter writer = new GenericWriter(schema, encoder);
writer.write(datum);

assert(parseJSON(data) == parseJSON(
    `{"name": "bob", "favorite_number": {"int": 8}, "favorite_color": { "null": null } }`));

Features Not Yet Implemented

  • Logical Type support
  • Specific Data types generated for schemas
  • Codex compression support
  • Object Container Files
  • Protocol wire format
  • Schema Resolution

API Documentation

Full API documentation can be found here: https://vnayar.github.io/avro-d/

Authors:
  • Vijay Nayar
Dependencies:
none
Versions:
0.2.10 2022-Jul-25
0.2.9 2022-May-24
0.2.8 2022-Apr-28
0.2.7 2022-Apr-24
0.2.6 2022-Apr-03
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