| name | agentsop-agent-topology-selection |
| version | 0.1.0 |
| description | Cross-framework enhancement overlay for choosing a multi-agent topology BEFORE writing any agent. A binary-question rubric — is single-agent + tools enough? do agents need to know about each other? does the output need one voice? — maps the answer to single-agent / supervisor / swarm / sequential / hierarchical. Activates when a coder agent is tempted to "split the work into roles" or reaches for a multi-agent framework. Encodes the *selection rubric* that the per-framework skills assume but never surface. Search keywords: when to use multi-agent, single vs multi agent, do I need multiple agents, supervisor vs swarm, multi-agent vs single agent, agent team design. |
| overlay | true |
| cross_links | ["crewai","langgraph","bounded-loop"] |
Multi-Agent Topology Selection · SOP (ENHANCE overlay)
Overlay posture: this skill decides whether and which topology. It does not
teach the API — descend to [[crewai]] or [[agentsop-langgraph]] for that. Every
load-bearing claim carries an inline source tag resolving in
references/R1-source-evidence.md.
1. 何时激活 (When to Activate)
Activate when any of the following fire:
- The task description contains "team of agents", "researcher + writer + reviewer",
"manager agent", "agents that hand off", "split this into roles", or "multi-agent".
- A coder agent is about to instantiate ≥2 agents (CrewAI
Agent(...) × N,
LangGraph supervisor/swarm, OpenAI Swarm handoffs) and has not yet justified
why a single agent with tools is insufficient.
- Someone is choosing between CrewAI
Process.sequential vs Process.hierarchical,
or LangGraph supervisor vs swarm vs hierarchical-teams, and wants the rubric,
not the syntax.
- A multi-agent system is over budget on tokens/latency and the question is "can we
collapse agents back into one?".
Do not activate for: a single LLM call, a one-shot RAG query, or a fixed
tool-call pipeline with no role separation. Those are the single-agent baseline
this skill defends.
Mental check: "An agent needs agency, otherwise it's just another script."
— João Moura, CrewAI founder [[crewai · §1.3]]. If you can write the control
flow in if/else, you do not need multiple agents — you need one agent (or a
graph) with explicit edges.
2. 核心心智模型 (Core Mental Model)
Most "multi-agent" problems are single-agent + tools. Add agents only when
context isolation or parallel expertise genuinely demands it.
"Single-agent is right for approximately 80% of cases; the trap is reaching for
multi-agent because it sounds more capable." [[crewai · DC-1]]
Two — and only two — forces justify a second agent:
- Context isolation. One agent's working context would pollute another's
(a critic that must not see its own draft's rationalisations; a tool-heavy
sub-task whose 40 intermediate tool calls should not bloat the main thread).
Splitting gives each agent a clean, bounded prompt.
- Parallel expertise. Two genuinely different skills run concurrently or in
strict sequence (research → write → review), where a single prompt provably
cannot hold both jobs without quality collapse
[[crewai · DC-1]].
If neither force is present, a single agent with the union of tools wins —
fewer hops, fewer tokens, no handoff failures. This is the baseline the rubric
must beat, not the default to escape.
The selection rubric (three binary questions)
Q0 Is single-agent + tools enough?
(no context-isolation need, no parallel-expertise need)
YES → single-agent + tools. STOP. Do not add agents.
NO → ↓
Q1 Do the agents need to KNOW ABOUT EACH OTHER (peer handoff)?
NO → one funnels through a coordinator → SUPERVISOR
(or static order → SEQUENTIAL, if order is fixed)
YES → ↓
Q2 Must the OUTPUT speak with ONE VOICE / single audit funnel?
YES → SUPERVISOR (single user-facing persona, one funnel)
NO → SWARM (dynamic peer handoff, last-active agent remembered)
Scaling override: ≥6 specialists that group into teams → HIERARCHICAL
(supervisor-of-supervisors). Use only for grouping, not for routing.
The two questions that actually separate the patterns: (a) can sub-agents know
each other, (b) is one user-facing voice mandated. Everything else is tuning
[[langgraph · Case 2]].
3. SOP 工作流 (Selection Protocol)
Walk top-down. Each gate can send you back down the ladder — collapsing agents
is as valid an answer as adding them.
Step 1 · Defend the single-agent baseline first
Ask Q0. Enumerate the would-be roles. For each, ask: would merging it into one
agent's prompt + toolset actually degrade output? If you cannot point to a
concrete failure mode (style drift, missed checklist, context bloat, parallel
latency), the honest answer is single-agent + tools. Exit here ~80% of the time
[[crewai · DC-1]].
Step 2 · If splitting, decide static vs dynamic routing
- Order is fixed and known at design time (research always precedes write
precedes review) → SEQUENTIAL. Cheapest, most debuggable, 1× token baseline
[[crewai · §2.3]]. In CrewAI this is Process.sequential; in LangGraph it is
static edges A→B→C.
- Routing must be decided at runtime (which specialist handles this query) →
you need a coordinator or peer handoff → continue to Step 3.
Step 3 · Coordinator (supervisor) vs peers (swarm)
Ask Q1 then Q2.
- Agents that do not know each other and funnel through one router →
SUPERVISOR. Sub-agents are effectively tools the supervisor calls; the
supervisor "translates" their output back to the user — which is exactly why
it costs the most tokens
[[langgraph · Step 4]].
- Agents that do know each other and no single voice is mandated →
SWARM. Dynamic handoff, last-active agent stays active across turns, no
translation step → fewer tokens, slightly higher accuracy on the τ-bench retest
[[langgraph · §SOP Step 4]].
Step 4 · Apply the supervisor-default caveat (read this twice)
LangChain's own benchmark found swarm "slightly outperformed supervisor across
all scenarios" and supervisor "consistently uses more tokens than swarm" — yet
they still ship supervisor as the recommended default [[langgraph · Step 4]].
Why the nuance matters:
- Supervisor is the safest with third-party / untrusted agents (single funnel,
single audit log, single place to enforce policy)
[[langgraph · Step 4]].
- Swarm is a bad fit for third-party agents — peers handing off to peers means
no central control point
[[langgraph · Step 4]].
- So: do not copy "default = supervisor" blindly. If your agents are internal
and trusted, swarm is often the better pick the default hides. Pick on the two
questions, not on the framework's default.
Step 5 · Verify the chosen topology can terminate
Any topology with runtime handoff (swarm, hierarchical, CrewAI delegation) can
loop. Bound it before shipping — cross-link [[agentsop-bounded-loop]]. Concretely:
default allow_delegation=False on workers, set per-agent max_iter, wrap an
outer timeout, and bake an explicit exit counter into state rather than trusting
the LLM to stop [[crewai · DC-5]] [[agentsop-bounded-loop]].
Step 6 · Reconsider before scaling agents up
≥6 specialists → group into HIERARCHICAL teams purely for navigability, not
to get free routing (see Anti-patterns). At >5 agents CrewAI starts hitting
coordination failure [[crewai · §6.1]]; that is a signal to group or collapse,
not to add more.
4. 操作模型 (Operation Models)
Format: Trigger → Action → Output → Evidence.
OP-1 · Defend the single-agent baseline
- Trigger: a task is being described as "a team of agents".
- Action: list the proposed roles; for each, name the concrete failure that
merging into one agent would cause (style drift / missed checklist / context
bloat / required parallelism). No nameable failure ⇒ single agent.
- Output: single-agent + tools, OR a justified list of must-split roles.
- Evidence:
[[crewai · DC-1]] "single-agent right for ~80% of cases".
OP-2 · Single-vs-multi gate
- Trigger: baseline defended and at least one role has a real split-justifying
failure mode.
- Action: confirm the force is context isolation or parallel expertise —
not "it sounds more capable". If only the latter, stay single.
- Output: a yes/no on multi-agent with the force named in one sentence.
- Evidence:
[[crewai · §2.2]], [[crewai · DC-1]].
OP-3 · Static-order gate (→ sequential)
- Trigger: multi-agent confirmed; the order of work is fixed at design time.
- Action: choose SEQUENTIAL — list agents in execution order; pass dependencies
explicitly (CrewAI
context=[...]), do not rely on implicit transfer.
- Output: an ordered task list; CrewAI
Process.sequential or LangGraph static
edges.
- Evidence:
[[crewai · §2.3]] (sequential = 1× tokens, low debug cost).
OP-4 · Peer-awareness gate (Q1 → supervisor vs swarm branch)
- Trigger: routing must be decided at runtime.
- Action: ask "do sub-agents know about each other?" — NO ⇒ supervisor branch;
YES ⇒ continue to OP-5.
- Output: chosen branch.
- Evidence:
[[langgraph · Step 4]] decision tree.
OP-5 · Single-voice gate (Q2 → supervisor vs swarm)
- Trigger: peers know each other (Q1=YES).
- Action: ask "must output be one voice / single audit funnel?" — YES ⇒
SUPERVISOR; NO ⇒ SWARM.
- Output: SUPERVISOR or SWARM.
- Evidence:
[[langgraph · Case 2]] (compliance ⇒ supervisor; UX continuity ⇒ swarm).
OP-6 · Apply the supervisor-default caveat
- Trigger: supervisor was selected, OR you are about to accept a framework
default.
- Action: check trust. Third-party/untrusted agents ⇒ supervisor is correct.
Internal/trusted ⇒ re-test whether swarm's lower token cost wins; if so, switch.
- Output: a topology chosen on trust + the two questions, not on the default.
- Evidence:
[[langgraph · Step 4]] — swarm beats supervisor on bench, yet
supervisor remains the shipped default for third-party safety.
OP-7 · Tune-before-switch
- Trigger: chosen topology is over token/latency budget.
- Action: before changing paradigm, apply the published fixes to the current
one. For supervisor: remove handoff messages, add a forwarding-messages tool,
optimise tool naming — LangChain measured "nearly 50% increase in performance"
[[langgraph · Step 4]]. Switch paradigm only if still over budget.
- Output: a tuned topology or a justified migration.
- Evidence:
[[langgraph · Case 2]].
OP-8 · Bound the topology
- Trigger: any runtime-handoff topology before ship.
- Action:
allow_delegation=False on workers, per-agent max_iter, outer
timeout, explicit state-based exit counter.
- Output: a topology that provably terminates.
- Evidence:
[[crewai · DC-5]] (delegation ping-pong), [[agentsop-bounded-loop]].
5. 困境决策案例 (Dilemma Cases)
Case 1 · "Swarm beats supervisor on the benchmark — why ship supervisor?"
- 困境: LangChain's own multi-agent benchmark shows swarm "slightly
outperformed supervisor across all scenarios" and supervisor "consistently uses
more tokens" (the telephone-game translation overhead). Yet LangChain's
recommended default is still supervisor
[[langgraph · Step 4]]. A coder
agent copying the default would leave accuracy and tokens on the table.
- 约束:
- Want the benchmark's efficiency (swarm).
- But may integrate third-party / untrusted agents later.
- Need a single auditable funnel for tool calls (compliance).
- 决策步骤:
- Read the default's reason, not the default. Supervisor wins on safety with
third-party agents and single audit funnel — not on accuracy
[[langgraph · Step 4]].
- If all agents are internal and trusted and no single-voice mandate →
pick swarm; the default does not apply to you.
- If a single auditable funnel is mandated → keep supervisor, then apply the
three fixes (remove handoff messages, forwarding-messages tool, tool-name
tuning) for the measured ~50% bump before concluding it is too slow
[[langgraph · Case 2]].
- Re-measure tokens; migrate to swarm only if still over budget and audit is
tolerant.
- 结果: Topology chosen on trust + the two questions. The benchmark's "swarm >
supervisor" is true and the supervisor default is rational — for a different
constraint (third-party safety) than the one the benchmark measured (accuracy/cost).
- 可提取的操作: OP-6. A framework default encodes the framework author's
worst-case constraint, not yours. Decode the reason; re-derive for your case.
Case 2 · "CrewAI hierarchical for simple routing is structurally broken"
6. 反模式与边界 (Anti-patterns & Boundaries)
- Multi-agent theater. Splitting into roles because it "sounds more capable"
with no context-isolation or parallel-expertise force. Symptom: agents that just
pass a string along, each adding a paragraph. Fix: collapse to one agent + tools
[[crewai · DC-1]].
- Hierarchical for simple routing. Using
Process.hierarchical (or a
supervisor) to get free if/else routing. It runs everything; routing must be
explicit control flow (Flow / conditional edge) [[crewai · DC-2]].
- Copying the supervisor default blindly. The benchmark says swarm is better on
accuracy and tokens; supervisor is the default for third-party safety. Internal
trusted agents should reconsider swarm
[[langgraph · Step 4]].
- Agent-count explosion (>5). Coordination failure, token blow-up, debug pain.
≥6 ⇒ group into hierarchical teams for navigability, or merge near-duplicate
roles
[[crewai · §6.1]].
- Unbounded delegation.
allow_delegation=True on every agent ⇒ ping-pong
loops. Default off on workers; bound with max_iter + timeout [[crewai · DC-5]],
[[agentsop-bounded-loop]].
- Picking on aesthetics. Choosing supervisor/swarm/sequential by which "feels
cleaner" instead of the two binary questions (peer-awareness, single-voice)
[[langgraph · Case 2]].
Hard boundaries (this rubric does NOT decide):
- Which framework — see
[[crewai]] vs [[agentsop-langgraph]] ecosystem sections.
- Routing by query kind — that is
d-query-routing-skill.
- Bounding the loop — that is
[[agentsop-bounded-loop]].
- Latency < 200ms / single LLM call — no multi-agent framework at all
[[langgraph · 反模式]].
7. 跨框架对照 (Cross-Framework Mapping)
| Topology | CrewAI | LangGraph | OpenAI Swarm | Choose when |
|---|
| Single-agent + tools | one Agent + tools (skip Crew) | create_react_agent | one routine | Q0=YES — ~80% of cases [[crewai · DC-1]] |
| Sequential | Process.sequential + context=[...] | static edges A→B→C | linear handoffs | order fixed at design time [[crewai · §2.3]] |
| Supervisor | Process.hierarchical + custom manager_agent | supervisor pattern (sub-agents as tools) | central routine dispatching | peers don't know each other; one voice / third-party safety [[langgraph · Step 4]] |
| Swarm | (no native; Flow + handoff funcs) | swarm pattern (dynamic handoff) | handoff between agents | peers know each other; no single-voice mandate; internal/trusted [[langgraph · Step 4]] |
| Hierarchical teams | nested crews via Flow | supervisor-of-supervisors / subgraphs | n/a | ≥6 specialists needing grouping [[crewai · §6.1]] |
Notes:
- CrewAI frames agents as role-playing teammates;
hierarchical is coordination,
not routing — the default manager_llm runs all tasks [[crewai · DC-2]].
- LangGraph frames topology as routing logic over typed state; supervisor is the
shipped default for third-party safety despite swarm winning the bench
[[langgraph · Step 4, Case 2]].
- OpenAI Swarm is the minimal handoff baseline — OpenAI labels it experimental;
use as reference, not production
[[langgraph · 生态对照]].
- Single-agent + tools is the baseline every topology above must beat. Defend it
first (OP-1).
Pick the smallest topology that fits the two questions; promote upward only when a
named force demands it, and collapse back down when the force disappears.
附录: 引用 (Citations)
Inline tags resolve to source-skill sections in references/R1-source-evidence.md:
[[crewai]] = /Users/5imp1ex/Desktop/Skill-Workplace/output/crewai-sop-skill/SKILL.md
[[agentsop-langgraph]] = /Users/5imp1ex/Desktop/Skill-Workplace/output/langgraph-sop-skill/SKILL.md
- The benchmark: LangChain, Benchmarking Multi-Agent Architectures
(
www.langchain.com/blog/benchmarking-multi-agent-architectures), surfaced via
[[langgraph · Step 4 / Case 2]].