Skip to main content

AbstractRuntime: a durable graph runner designed to pair with AbstractCore.

Project description

AbstractRuntime

AbstractRuntime is a durable workflow runtime (interrupt → checkpoint → resume) with an append-only execution ledger.

It is designed for long-running workflows that must survive restarts and explicitly model blocking (human input, timers, external events, subworkflows) without keeping Python stacks alive.

Version: 0.4.10 • Python: 3.10+

Status: pre-1.0 (API may evolve). For production use, pin versions and follow CHANGELOG.md.

AbstractFramework ecosystem

AbstractRuntime is one component of the wider AbstractFramework ecosystem:

  • AbstractRuntime (this repo) — durable workflow kernel (src/abstractruntime/core/*)
  • AbstractCore — LLM + tools integration (wired via src/abstractruntime/integrations/abstractcore/*)
    Repo: lpalbou/abstractcore

At a high level, hosts define workflow graphs (WorkflowSpec) and AbstractRuntime executes them durably. When nodes request LLM/tool work (EffectType.LLM_CALL, EffectType.TOOL_CALLS), those effects are typically handled via AbstractCore.

flowchart LR
  Host["Host app / orchestrator"] -->|"WorkflowSpec"| RT["AbstractRuntime"]
  RT -->|"LLM_CALL / TOOL_CALLS"| AC["AbstractCore"]
  AC -->|"results / waits"| RT

Install

Core runtime:

pip install abstractruntime

AbstractCore integration (LLM + tools):

pip install "abstractruntime[abstractcore]"

The abstractcore extra installs AbstractCore 2.13.13 or newer so the hardened server auth model, provider-key header routing, generated-media contracts, capability catalog, prompt-cache control plane, current tool catalog, public output-selector contract, and async/sync text-generation output-selector parity are available. Use abstractruntime[multimodal] when you need common media, vision, voice, and audio dependencies.

Hardware profile cascades are available for native Python installs: abstractruntime[apple], abstractruntime[gpu], abstractruntime[all-apple], and abstractruntime[all-gpu] delegate to the matching AbstractCore profile without making the runtime kernel itself hardware-specific.

MCP worker entrypoint (default toolsets over stdio):

pip install "abstractruntime[mcp-worker]"

Quick start (pause + resume)

from abstractruntime import Effect, EffectType, Runtime, StepPlan, WorkflowSpec
from abstractruntime.storage import InMemoryLedgerStore, InMemoryRunStore


def ask(run, ctx):
    return StepPlan(
        node_id="ask",
        effect=Effect(
            type=EffectType.ASK_USER,
            payload={"prompt": "Continue?"},
            result_key="user_answer",
        ),
        next_node="done",
    )


def done(run, ctx):
    answer = run.vars.get("user_answer") or {}
    text = answer.get("text") if isinstance(answer, dict) else None
    return StepPlan(node_id="done", complete_output={"answer": text})


wf = WorkflowSpec(workflow_id="demo", entry_node="ask", nodes={"ask": ask, "done": done})
rt = Runtime(run_store=InMemoryRunStore(), ledger_store=InMemoryLedgerStore())

run_id = rt.start(workflow=wf)
state = rt.tick(workflow=wf, run_id=run_id)
assert state.status.value == "waiting"

state = rt.resume(
    workflow=wf,
    run_id=run_id,
    wait_key=state.waiting.wait_key,
    payload={"text": "yes"},
)
assert state.status.value == "completed"

What’s included (v0.4.10)

Kernel (dependency-light):

  • workflow graphs: WorkflowSpec (src/abstractruntime/core/spec.py)
  • durable execution: Runtime.start/tick/resume (src/abstractruntime/core/runtime.py)
  • durable waits/events: WAIT_EVENT, WAIT_UNTIL, ASK_USER, EMIT_EVENT
  • append-only ledger (StepRecord) + node traces (vars["_runtime"]["node_traces"])
  • retries/idempotency hooks: src/abstractruntime/core/policy.py
  • runtime-aware limits (_limits) with a default iteration budget of 50 (docs/limits.md)

Durability + storage:

  • stores: in-memory, JSON/JSONL, SQLite (src/abstractruntime/storage/*)
  • durable command inbox primitives (idempotent, append-only): CommandStore, CommandCursorStore (src/abstractruntime/storage/commands.py, src/abstractruntime/storage/sqlite.py)
  • artifacts + offloading (store large payloads by reference)
  • snapshots/bookmarks (docs/snapshots.md)
  • tamper-evident hash-chained ledger (docs/provenance.md)

Drivers + distribution:

  • scheduler: create_scheduled_runtime() (src/abstractruntime/scheduler/*)
  • VisualFlow compiler + WorkflowBundles (src/abstractruntime/visualflow_compiler/*, src/abstractruntime/workflow_bundle/*)
  • VisualFlow multi-entry execution lowering for fan-in routes and per-entry input overrides (docs/workflow-bundles.md)
  • run history export: export_run_history_bundle(...) (src/abstractruntime/history_bundle.py)

Optional integrations:

  • AbstractCore (LLM + tools, cached sessions/prompt cache, media inputs, generated media, tool approval waits): docs/integrations/abstractcore.md
  • AbstractMemory TripleStore integration for MEMORY_KG_* effects. Runtime depends on the light AbstractMemory contract; hosts choose storage backends such as LanceDB, SQLite, or in-memory stores.
  • comms toolset gating (email/WhatsApp/Telegram): docs/tools-comms.md

Built-in scheduler (zero-config)

from abstractruntime import create_scheduled_runtime

sr = create_scheduled_runtime()
run_id, state = sr.run(my_workflow)

if state.status.value == "waiting":
    state = sr.respond(run_id, {"text": "yes"})

sr.stop()

For persistent storage:

from abstractruntime import create_scheduled_runtime, JsonFileRunStore, JsonlLedgerStore

sr = create_scheduled_runtime(
    run_store=JsonFileRunStore("./data"),
    ledger_store=JsonlLedgerStore("./data"),
)

Documentation

Document Description
Getting Started Install + first durable workflow
API Reference Public API surface (imports + pointers)
Docs Index Full docs map (guides + reference)
FAQ Common questions and gotchas
Architecture Component map + diagrams
Overview Design goals, core concepts, and scope
Integrations Integration guides (AbstractCore)
Snapshots Named checkpoints for run state
Provenance Tamper-evident ledger documentation
Evidence Artifact-backed evidence capture for web/command tools
Limits _limits namespace and RuntimeConfig
WorkflowBundles .flow bundle format (VisualFlow distribution)
MCP Worker abstractruntime-mcp-worker CLI
Changelog Release notes
Contributing How to build/test and submit changes
Security Responsible vulnerability reporting
Acknowledgments Credits
ROADMAP Prioritized next steps

Development

python -m venv .venv
source .venv/bin/activate
python -m pip install -U pip
python -m pip install -e ".[abstractcore,mcp-worker,test,docs]"
python -m pytest -q

See CONTRIBUTING.md for contribution guidelines and doc conventions.

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

abstractruntime-0.4.12.tar.gz (532.2 kB view details)

Uploaded Source

Built Distribution

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

abstractruntime-0.4.12-py3-none-any.whl (363.0 kB view details)

Uploaded Python 3

File details

Details for the file abstractruntime-0.4.12.tar.gz.

File metadata

  • Download URL: abstractruntime-0.4.12.tar.gz
  • Upload date:
  • Size: 532.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for abstractruntime-0.4.12.tar.gz
Algorithm Hash digest
SHA256 6fc86f2db1b7229cda685ef4246101ab3618f71da6e699188b165d2719a65557
MD5 9b70dcef883da0343272b5bbf822fca9
BLAKE2b-256 6a34a3e045bdca20d0512ad76002c5c0a27a85d74d2c0fc4053f14fb9c801530

See more details on using hashes here.

Provenance

The following attestation bundles were made for abstractruntime-0.4.12.tar.gz:

Publisher: release.yml on lpalbou/AbstractRuntime

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file abstractruntime-0.4.12-py3-none-any.whl.

File metadata

File hashes

Hashes for abstractruntime-0.4.12-py3-none-any.whl
Algorithm Hash digest
SHA256 ab9fb90e6a341db19136587a4103aa7fada3026bb84941a2f6ba16edb517db68
MD5 8cae8da5da8700f33e3e73fd1418eeea
BLAKE2b-256 5db48eb50dad2196ecb00870b27426da7da3a795e8d5c2d735dc4daf4762823f

See more details on using hashes here.

Provenance

The following attestation bundles were made for abstractruntime-0.4.12-py3-none-any.whl:

Publisher: release.yml on lpalbou/AbstractRuntime

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

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