Skip to main content

In-process loopback transport for clamator (pre-1.0).

Project description

clamator-over-memory

In-process loopback transport for clamator. The shared MemoryBus connects a MemoryRpcServer and MemoryRpcClient running in the same Python process. Requires Pydantic v2.

Install

pip install clamator-over-memory clamator-protocol

Quickstart

Contracts are authored in TypeScript and the Python sibling is produced by @clamator/codegen:

npx @clamator/codegen --src contracts --out-py generated

The emitted generated/arith.py exports Pydantic models, a typed ArithClient, an ArithService ABC, and the arith_contract Contract object. Wire server and client through a shared bus, talk via ArithClient.

Server-side — register handlers and start:

from clamator_over_memory import MemoryBus, MemoryRpcServer

from .generated.arith import AddParams, AddResult, ArithService, arith_contract


class Arith(ArithService):
    async def add(self, params: AddParams) -> AddResult:
        return AddResult(sum=params.a + params.b)


async def build_arith_server(bus: MemoryBus) -> MemoryRpcServer:
    server = MemoryRpcServer(bus=bus)  # no external connection; stop() unregisters from the bus without closing any resource  # noqa: E501
    server.register_service(arith_contract, Arith())  # must precede start() — post-start registrations are silently ignored, never registered on the bus  # noqa: E501
    await server.start()
    return server

(Verbatim from py/packages/over-memory/tests/server.py:1-15.)

Client-side — call the typed proxy:

from clamator_over_memory import MemoryBus, MemoryRpcClient

from .generated.arith import AddParams, AddResult, ArithClient


async def call_arith(bus: MemoryBus) -> AddResult:
    client = MemoryRpcClient(bus=bus)  # default timeout 30 s on the full round-trip (call → handler → reply); pass default_timeout_ms to override; no retry; timeouts not propagated to server  # noqa: E501
    await client.start()
    arith = ArithClient(client)
    r = await arith.add(AddParams(a=2, b=3))
    await client.stop()
    return r

(Verbatim from py/packages/over-memory/tests/client.py:1-12.)

server.start() returns once handlers are registered on the bus; it does not block. Your application controls the server's lifetime. Call await server.stop() to shut down — since the loopback is in-process, the drain is instantaneous and the server unregisters from the bus without closing any external resource. start() and stop() are both idempotent (calling either twice is a no-op); once stop() has been called, calling start() again raises — create a new instance to restart.

A single server can host multiple services. Call register_service(contract, handler_obj) once per contract before start(); each is registered as its own dispatcher on the shared bus. Registrations after start() are silently ignored.

MemoryBus() takes no arguments and is the only wiring needed. The loopback is synchronous within a single asyncio task — no timeouts, retries, or stream parameters beyond the client's default_timeout_ms.

Key surface

  • MemoryBus() — the connecting object passed to both server and client.
  • MemoryRpcServer(bus=...)register_service(contract, handler_obj), start(), stop().
  • MemoryRpcClient(bus=...)start(), stop(). Wrap with a generated *Client proxy for typed calls.

Worker-pool semantics

N/A — this transport is a single-process loopback. Multiple MemoryRpcServer instances on the same MemoryBus do not form a competing-consumers pool because there is no shared substrate; each bus is in-memory to its constructing process. For cross-process worker-pool behavior, use clamator-over-redis.

Owned external state

N/A — MemoryBus owns no external state. There are no Redis keys, no streams, no files, no sockets. The bus is garbage-collected with the process.

Connection ownership

N/A — there is no external connection to own. MemoryRpcServer and MemoryRpcClient share a MemoryBus that lives entirely in-process; stop() releases its references without closing any external resource.

Testing handlers without Redis

clamator-over-memory is the recommended substrate for unit-testing handlers, including the refusal paths of state-machine-shaped APIs. Construct a MemoryBus, register your handler against the same arith_contract (or your real contract) on a MemoryRpcServer, instantiate MemoryRpcClient + the codegen-emitted <Service>Client proxy, and exercise the handler through the typed proxy. Validation, error-code mapping, and result-model serialization match clamator-over-redis exactly (see "Protocol-level parity" below) — tests that pass here exercise the same dispatcher code paths that run in production.

Protocol-level parity with over-redis

Params/result validation, error code mapping, handler exception wrapping, and register_service semantics are identical to clamator-over-redis — both transports share the same dispatcher (RpcServerCore from clamator-protocol). Only the wire substrate differs. Tests written against this transport for protocol-level behaviors translate directly to over-redis.

When to reach for this vs. clamator-over-redis

  • clamator-over-memory — tests, embedded scenarios, anything single-process.
  • clamator-over-redis — cross-process, cross-host, durable streams, production.

Links

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

clamator_over_memory-0.1.7.tar.gz (8.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

clamator_over_memory-0.1.7-py3-none-any.whl (10.3 kB view details)

Uploaded Python 3

File details

Details for the file clamator_over_memory-0.1.7.tar.gz.

File metadata

  • Download URL: clamator_over_memory-0.1.7.tar.gz
  • Upload date:
  • Size: 8.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.12.13

File hashes

Hashes for clamator_over_memory-0.1.7.tar.gz
Algorithm Hash digest
SHA256 866c278e4a0a9b52adb587673198c2dbea013d2aa0e64470a97b793f401e1dc0
MD5 295489b654d056528b1c224581f30c3c
BLAKE2b-256 cb85af3456c9973d4df61459fd3b1d351fba7c5ade9cde7f54395592a49bc232

See more details on using hashes here.

File details

Details for the file clamator_over_memory-0.1.7-py3-none-any.whl.

File metadata

File hashes

Hashes for clamator_over_memory-0.1.7-py3-none-any.whl
Algorithm Hash digest
SHA256 d32e76921aa169d0ee88b4cb8de2eeed04360f8afa50c231142c4193943eebf5
MD5 e032e8851f50f9e5769180314ee21dbf
BLAKE2b-256 09ce60db266b7d9255815cb5d70faa2dcce8a55c50d1ca7ac8c4d9506557a896

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page