Shared execution-state helpers for app-owned Agent Framework hosting.
This package keeps Agent Framework state separate from web-framework concerns:
AgentState— pairs an agent target with aSessionStore(session_id -> AgentSession).WorkflowState— resolves a workflow target, including directWorkflowinstances, workflow factories,WorkflowBuilder, and orchestration builders.
SessionStore is plain storage: get/set/delete by an app-selected id,
nothing more. It does not know how to create a new value for an id it hasn't
seen before — use AgentState.get_or_create_session(...) for that, since only
the state object has both the store and the resolved target. Workflow
checkpointing should use the existing CheckpointStorage abstraction directly;
if an app needs per-session resume, keep a small app-owned cursor such as
session_id -> checkpoint_id.
Use FastAPI, Starlette, Azure Functions, Django, or another framework for route registration, auth, middleware, response construction, and background work.
The built-in
SessionStoreis an in-memorydictwith no eviction — every id ever stored stays resolvable for the life of the process. That is intentional: protocols such as OpenAI Responses'previous_response_idare designed to let a caller continue from any earlier point in a conversation, not just the latest turn, so every id handed out needs to stay independently resolvable. If you back the store with real storage (Redis, a database, ...), you are responsible for that store's own TTL/eviction policy; this in-memory reference implementation does not model that concern.
from agent_framework.openai import OpenAIChatClient
from agent_framework_hosting import AgentState
agent = OpenAIChatClient().as_agent(name="Assistant")
state = AgentState(agent)
session = await state.get_or_create_session("conversation-1")
result = await (await state.get_target()).run("Hello", session=session)If a protocol mints a new continuation id on every response, store the session
explicitly after run(...) returns. run(...) may update the session, so store
the post-run object:
session = await state.get_or_create_session(previous_response_id)
result = await (await state.get_target()).run("Hello", session=session)
await state.set_session(response_id, session)Targets can be direct instances, synchronous factories, asynchronous factories, or awaitables:
state = AgentState(create_agent) # cached by default
state = AgentState(create_agent, cache_target=False)WorkflowState mirrors this shape for workflow targets:
from agent_framework import InMemoryCheckpointStorage
from agent_framework_hosting import WorkflowState
state = WorkflowState(create_workflow)
storage = InMemoryCheckpointStorage()
result = await (await state.get_target()).run("Hello", checkpoint_storage=storage)
latest = await storage.get_latest(workflow_name=(await state.get_target()).name)WorkflowState also accepts an unbuilt workflow builder directly:
from agent_framework import WorkflowBuilder
from agent_framework_hosting import WorkflowState
builder = WorkflowBuilder(start_executor=executor)
state = WorkflowState(builder) # calls builder.build() when the target is resolvedThis is structural: orchestration builders from agent_framework_orchestrations
(SequentialBuilder, ConcurrentBuilder, HandoffBuilder, GroupChatBuilder,
and MagenticBuilder) also work because they expose the same zero-argument
build() -> Workflow method.
Cross-channel identity linking, multicast delivery, background runs, continuation tokens, and durable delivery runners are follow-up enhancements, not part of this v1 state surface.