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design-serialization-schema

pjt222
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Diese Fähigkeit unterstützt Entwickler beim Entwerfen und Weiterentwickeln von Serialisierungsschemata mithilfe von JSON Schema, Protocol Buffers oder Apache Avro. Sie behandelt Versionierung, Abwärtskompatibilität, Validierungsregeln und Entwicklungsstrategien für langlebige Datenformate. Nutzen Sie sie bei der Definition neuer API-Verträge, der Änderung bestehender Schemata ohne Unterbrechung von Konsumenten oder der Auswahl zwischen Schema-Systemen.

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Dokumentation

Design Serialization Schema

Make versioned serialization schemas. Evolve gracefully without breaking consumers.

When Use

  • Define new API contract or data interchange format
  • Add fields to existing schema without breaking consumers
  • Migrate between schema versions
  • Pick between schema systems (JSON Schema, Protobuf, Avro)
  • Document data validation rules for auto-enforcement

Inputs

  • Required: Data model (entity relations, field types, constraints)
  • Required: Compat needs (who consumes, how long must old formats read)
  • Optional: Existing schema to evolve
  • Optional: Perf needs (validation speed, schema registry integration)
  • Optional: Target serialization format (JSON, binary, columnar)

Steps

Step 1: Pick Schema System

SystemFormatStrengthsBest For
JSON SchemaJSONWidely supported, flexible validationREST APIs, config validation
Protocol BuffersBinaryCompact, fast, strong typing, built-in evolutiongRPC, microservices
Apache AvroBinary/JSONSchema in data, excellent evolution supportKafka, data pipelines
XML Schema (XSD)XMLComprehensive typing, namespace supportEnterprise/legacy SOAP
TypeBox/ZodTypeScriptType inference, runtime validationTypeScript APIs

Got: Schema system picked by ecosystem, perf, evolution needs.

If fail: Unsure? Start with JSON Schema — broadest tooling, layers onto existing JSON APIs.

Step 2: Design Core Schema

JSON Schema example:

{
  "$schema": "https://json-schema.org/draft/2020-12/schema",
  "$id": "https://example.com/schemas/measurement/v1",
  "title": "Measurement",
  "description": "A sensor measurement reading",
  "type": "object",
  "required": ["sensor_id", "value", "unit", "timestamp"],
  "properties": {
    "sensor_id": {
      "type": "string",
      "pattern": "^[a-z]+-[0-9]+$",
      "description": "Unique sensor identifier (lowercase-digits format)"
    },
    "value": {
      "type": "number",
      "description": "Measured value"
    },
    "unit": {
      "type": "string",
      "enum": ["celsius", "fahrenheit", "kelvin", "percent", "ppm"],
      "description": "Unit of measurement"
    },
    "timestamp": {
      "type": "string",
      "format": "date-time",
      "description": "ISO 8601 timestamp with timezone"
    },
    "metadata": {
      "type": "object",
      "additionalProperties": true,
      "description": "Optional key-value metadata"
    }
  },
  "additionalProperties": false
}

Protocol Buffers example:

syntax = "proto3";
package sensors.v1;

import "google/protobuf/timestamp.proto";

// Measurement represents a single sensor reading.
message Measurement {
  string sensor_id = 1;         // Unique sensor identifier
  double value = 2;             // Measured value
  Unit unit = 3;                // Unit of measurement
  google.protobuf.Timestamp timestamp = 4;
  map<string, string> metadata = 5; // Optional key-value metadata
}

enum Unit {
  UNIT_UNSPECIFIED = 0;
  UNIT_CELSIUS = 1;
  UNIT_FAHRENHEIT = 2;
  UNIT_KELVIN = 3;
  UNIT_PERCENT = 4;
  UNIT_PPM = 5;
}

Apache Avro example:

{
  "type": "record",
  "name": "Measurement",
  "namespace": "com.example.sensors",
  "doc": "A sensor measurement reading",
  "fields": [
    {"name": "sensor_id", "type": "string", "doc": "Unique sensor identifier"},
    {"name": "value", "type": "double", "doc": "Measured value"},
    {"name": "unit", "type": {"type": "enum", "name": "Unit", "symbols": ["CELSIUS", "FAHRENHEIT", "KELVIN", "PERCENT", "PPM"]}},
    {"name": "timestamp", "type": {"type": "long", "logicalType": "timestamp-millis"}},
    {"name": "metadata", "type": ["null", {"type": "map", "values": "string"}], "default": null}
  ]
}

Got: Schema self-documenting. Descriptions, constraints, clear types.

If fail: Data model not stable? Mark schema draft, don't publish to registry.

Step 3: Plan Schema Evolution

Compat rules:

ChangeBackwards Compatible?Forwards Compatible?Safe?
Add optional fieldYesYesYes
Add required fieldNoYesNo (breaks existing consumers)
Remove optional fieldYesNoCareful (producers may still send)
Remove required fieldYesNoCareful
Rename a fieldNoNoNo (use alias + deprecation)
Change field typeNoNoNo (add new field, deprecate old)
Add enum valueYes (if consumers ignore unknown)NoDepends on implementation
Remove enum valueNoYesNo

Safe evolution:

  1. Only add optional fields with sensible defaults
  2. Never remove or rename — deprecate instead
  3. Version the schema in the identifier (v1, v2)
  4. Use a schema registry for binary formats (Confluent Schema Registry for Avro/Protobuf)

Protobuf evolution rules:

// v1 — original
message Measurement {
  string sensor_id = 1;
  double value = 2;
  Unit unit = 3;
}

// v2 — safe evolution
message Measurement {
  string sensor_id = 1;
  double value = 2;
  Unit unit = 3;
  // NEW: added in v2 — old clients ignore this field
  google.protobuf.Timestamp timestamp = 4;
  // DEPRECATED: use sensor_id instead
  reserved 6;
  reserved "old_sensor_name";
}

JSON Schema versioning:

{
  "$id": "https://example.com/schemas/measurement/v2",
  "allOf": [
    {"$ref": "https://example.com/schemas/measurement/v1"},
    {
      "properties": {
        "location": {
          "type": "string",
          "description": "Added in v2: GPS coordinates"
        }
      }
    }
  ]
}

Got: Evolution plan documented. Safe changes vs new versions clear.

If fail: Breaking change unavoidable? Version schema (v1 → v2), keep parallel support during migration.

Step 4: Impl Schema Validation

# JSON Schema validation (Python)
from jsonschema import validate, ValidationError
import json

schema = json.load(open("measurement_v1.json"))

def validate_measurement(data: dict) -> list[str]:
    """Validate a measurement against the schema. Returns list of errors."""
    errors = []
    try:
        validate(instance=data, schema=schema)
    except ValidationError as e:
        errors.append(f"{e.json_path}: {e.message}")
    return errors

# Usage
errors = validate_measurement({"sensor_id": "s-01", "value": "not_a_number"})
# → ["$.value: 'not_a_number' is not of type 'number'"]
// TypeScript with Zod (runtime + compile-time)
import { z } from 'zod';

const MeasurementSchema = z.object({
  sensor_id: z.string().regex(/^[a-z]+-[0-9]+$/),
  value: z.number(),
  unit: z.enum(['celsius', 'fahrenheit', 'kelvin', 'percent', 'ppm']),
  timestamp: z.string().datetime(),
  metadata: z.record(z.string()).optional(),
});

type Measurement = z.infer<typeof MeasurementSchema>;

// Validation
const result = MeasurementSchema.safeParse(inputData);
if (!result.success) {
  console.error(result.error.issues);
}

Got: Validation runs on all incoming data at system boundaries (API endpoints, file ingestion).

If fail: Log validation errors with full payload (redact sensitive fields) for debugging.

Step 5: Document Schema

Make schema doc page:

# Measurement Schema (v1)

## Overview
Represents a single sensor reading with metadata.

## Fields
| Field | Type | Required | Description | Constraints |
|-------|------|----------|-------------|-------------|
| sensor_id | string | Yes | Unique sensor ID | Pattern: `^[a-z]+-[0-9]+$` |
| value | number | Yes | Measured value | Any valid IEEE 754 double |
| unit | enum | Yes | Unit of measurement | One of: celsius, fahrenheit, kelvin, percent, ppm |
| timestamp | string | Yes | Reading time | ISO 8601 with timezone |
| metadata | object | No | Key-value pairs | String keys and values |

## Changelog
| Version | Date | Changes |
|---------|------|---------|
| v1 | 2025-03-01 | Initial schema |

## Compatibility
- **Backwards**: Consumers of v1 will continue to work with future versions
- **Policy**: Only additive, optional field changes between minor versions

Got: Docs auto-generated or stay in sync with schema definition.

If fail: Docs drift from schema? Add CI check validating docs against schema source.

Checks

  • Schema uses right system (JSON Schema, Protobuf, Avro)
  • All fields have types, descriptions, constraints
  • Required vs optional fields explicit
  • Evolution strategy documented (safe changes, versioning policy)
  • Validation at system boundaries
  • Schema versioned with changelog
  • Round-trip test: serialize → deserialize → compare, no data loss

Pitfalls

  • Over-constraining too early: Strict validation on new schema blocks iteration. Start permissive (additionalProperties: true), tighten later.
  • No default values: New required field without default breaks existing data. Always provide defaults for new fields.
  • Ignoring null: Many schemas don't handle null/missing cleanly. Be explicit: nullable vs optional.
  • Version in payload, not URL: Long-lived data (storage, events) → embed schema version in data itself, not just endpoint URL.
  • Enum exhaustiveness: New enum value can crash consumers using exhaustive switch. Document: unknown values handled gracefully.

See Also

  • serialize-data-formats — format selection + encoding/decoding
  • implement-pharma-serialisation — pharma serialisation (regulatory schemas)
  • write-validation-documentation — validation docs for regulated schemas

GitHub Repository

pjt222/agent-almanac
Pfad: i18n/caveman/skills/design-serialization-schema
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