feat: add Mixture of Agents (MoA) for arbiter verdicts

When MOA_ENABLED=true, arbiter queries multiple LLM models in parallel
via OpenAI-compatible API, then an aggregator model synthesizes the
final verdict from all opinions. Falls back to single-agent arbiter
when MoA is disabled.

Config: MOA_BASE_URL, MOA_API_KEY, MOA_REFERENCE_MODELS, MOA_AGGREGATOR_MODEL
This commit is contained in:
Eyejoker
2026-03-31 00:20:41 +09:00
parent 35ba7cb5ba
commit f4b04d6c4d
6 changed files with 310 additions and 0 deletions

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@@ -57,6 +57,15 @@ STATUS_CHANNEL_ID= # Discord channel ID for live status updat
# ARBITER_EFFORT=high # Arbiter effort override
# ARBITER_FALLBACK_ENABLED=true # Fall back to codex on Claude failure (default: true)
# --- Mixture of Agents (MoA) ---
# Queries multiple models in parallel for arbiter verdicts, then aggregates.
# Requires OpenAI-compatible API (OpenRouter recommended for multi-model access).
# MOA_ENABLED=true
# MOA_BASE_URL=https://openrouter.ai/api/v1
# MOA_API_KEY=sk-or-xxx
# MOA_REFERENCE_MODELS=anthropic/claude-sonnet-4-6,openai/gpt-5.4,deepseek/deepseek-chat
# MOA_AGGREGATOR_MODEL=anthropic/claude-opus-4-6
# --- Advanced ---
# MAX_CONCURRENT_AGENTS=5 # Max parallel agent processes
# SESSION_COMMAND_ALLOWED_SENDERS= # Comma-separated Discord user IDs for session commands

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@@ -161,6 +161,46 @@ export function getRoleModelConfig(
}
}
// ── Mixture of Agents (MoA) ──────────────────────────────────────
import type { MoaConfig, MoaModelConfig } from './moa.js';
const MOA_BASE_URL = getEnv('MOA_BASE_URL') || 'https://openrouter.ai/api/v1';
const MOA_API_KEY = getEnv('MOA_API_KEY') || '';
function parseMoaModels(envKey: string): MoaModelConfig[] {
const raw = getEnv(envKey) || '';
return raw
.split(',')
.map((s) => s.trim())
.filter(Boolean)
.map((model) => ({
name: model.split('/').pop() || model,
model,
baseUrl: MOA_BASE_URL,
apiKey: MOA_API_KEY,
}));
}
export function getMoaConfig(): MoaConfig {
const referenceModels = parseMoaModels('MOA_REFERENCE_MODELS');
const aggregatorModel = getEnv('MOA_AGGREGATOR_MODEL') || '';
return {
enabled:
getEnv('MOA_ENABLED') === 'true' &&
referenceModels.length > 0 &&
!!aggregatorModel &&
!!MOA_API_KEY,
referenceModels,
aggregator: {
name: aggregatorModel.split('/').pop() || aggregatorModel,
model: aggregatorModel,
baseUrl: MOA_BASE_URL,
apiKey: MOA_API_KEY,
},
};
}
// Max owner↔reviewer round trips per task. 0 = unlimited.
const rawMaxRoundTrips = getEnv('PAIRED_MAX_ROUND_TRIPS') || '10';
export const PAIRED_MAX_ROUND_TRIPS =

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@@ -25,6 +25,20 @@ vi.mock('./config.js', () => ({
effort: undefined,
fallbackEnabled: true,
})),
getMoaConfig: vi.fn(() => ({ enabled: false, referenceModels: [], aggregator: {} })),
TIMEZONE: 'Asia/Seoul',
}));
vi.mock('./arbiter-context.js', () => ({
buildArbiterContextPrompt: vi.fn(() => ''),
}));
vi.mock('./moa.js', () => ({
runMoaArbiter: vi.fn(),
}));
vi.mock('./platform-prompts.js', () => ({
readArbiterPrompt: vi.fn(() => ''),
}));
vi.mock('./db.js', () => ({

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@@ -41,9 +41,14 @@ import {
import {
CODEX_REVIEW_SERVICE_ID,
SERVICE_SESSION_SCOPE,
TIMEZONE,
isClaudeService,
getRoleModelConfig,
getMoaConfig,
} from './config.js';
import { buildArbiterContextPrompt } from './arbiter-context.js';
import { runMoaArbiter } from './moa.js';
import { readArbiterPrompt } from './platform-prompts.js';
import {
activateCodexFailover,
getEffectiveChannelLease,
@@ -323,6 +328,75 @@ export async function runAgentForGroup(
return 'success';
}
// ── MoA arbiter path ────────────────────────────────────────────
// When MoA is enabled and we're in arbiter mode, query multiple
// models in parallel instead of spawning a single agent process.
const moaConfig = getMoaConfig();
if (arbiterMode && moaConfig.enabled && pairedExecutionContext) {
logger.info(
{
chatJid,
group: group.name,
runId,
referenceModels: moaConfig.referenceModels.map((m) => m.model),
aggregator: moaConfig.aggregator.model,
},
'Running MoA arbiter instead of single agent',
);
const systemPrompt =
readArbiterPrompt(process.cwd()) || 'You are an arbiter.';
const contextPrompt = buildArbiterContextPrompt({
chatJid,
taskId: pairedExecutionContext.task.id,
roundTripCount: pairedExecutionContext.task.round_trip_count,
timezone: TIMEZONE,
});
try {
const moaResult = await runMoaArbiter({
config: moaConfig,
systemPrompt,
contextPrompt,
});
pairedExecutionSummary = moaResult.verdict.slice(0, 500);
pairedExecutionStatus = 'succeeded';
// Build display text with reference model opinions
const referenceSection = moaResult.referenceResponses
.filter((r) => !r.error)
.map((r) => `**${r.model}**: ${r.response.split('\n')[0]}`)
.join('\n');
const displayText = referenceSection
? `${moaResult.verdict}\n\n---\n*MoA references: ${moaResult.referenceResponses.filter((r) => !r.error).length} models queried*\n${referenceSection}`
: moaResult.verdict;
await onOutput?.({
status: 'success',
result: null,
output: { visibility: 'public', text: displayText },
phase: 'final',
});
} catch (error) {
logger.error(
{ chatJid, group: group.name, runId, error },
'MoA arbiter failed',
);
pairedExecutionSummary = 'ESCALATE\nMoA arbiter failed';
pairedExecutionStatus = 'failed';
}
completePairedExecutionContext({
taskId: pairedExecutionContext.task.id,
role: 'arbiter',
status: pairedExecutionStatus,
summary: pairedExecutionSummary,
});
pairedExecutionCompleted = true;
return pairedExecutionStatus === 'succeeded' ? 'success' : 'error';
}
const runAttempt = async (
provider: string,
): Promise<{

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@@ -23,6 +23,8 @@ vi.mock('./config.js', () => ({
isClaudeService: vi.fn(() => true),
isReviewService: vi.fn(() => false),
isSessionCommandSenderAllowed: vi.fn(() => false),
getMoaConfig: vi.fn(() => ({ enabled: false, referenceModels: [], aggregator: {} })),
TIMEZONE: 'Asia/Seoul',
}));
vi.mock('./paired-execution-context.js', () => ({

171
src/moa.ts Normal file
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@@ -0,0 +1,171 @@
/**
* Mixture of Agents (MoA) for arbiter verdicts.
*
* Queries multiple LLM models in parallel, then aggregates their
* opinions into a single binding verdict. Uses OpenAI-compatible
* chat completions API (works with OpenRouter, direct providers, etc.)
*/
import { logger } from './logger.js';
export interface MoaModelConfig {
name: string;
model: string;
baseUrl: string;
apiKey: string;
}
export interface MoaConfig {
enabled: boolean;
referenceModels: MoaModelConfig[];
aggregator: MoaModelConfig;
}
async function queryModel(
model: MoaModelConfig,
systemPrompt: string,
userPrompt: string,
timeoutMs = 60_000,
): Promise<string> {
const controller = new AbortController();
const timer = setTimeout(() => controller.abort(), timeoutMs);
try {
const response = await fetch(
`${model.baseUrl.replace(/\/+$/, '')}/chat/completions`,
{
method: 'POST',
headers: {
'Content-Type': 'application/json',
Authorization: `Bearer ${model.apiKey}`,
},
body: JSON.stringify({
model: model.model,
messages: [
{ role: 'system', content: systemPrompt },
{ role: 'user', content: userPrompt },
],
max_tokens: 2048,
}),
signal: controller.signal,
},
);
if (!response.ok) {
const body = await response.text().catch(() => '');
throw new Error(`${response.status} ${response.statusText}: ${body.slice(0, 200)}`);
}
const data = (await response.json()) as {
choices?: { message?: { content?: string } }[];
};
const content = data.choices?.[0]?.message?.content;
if (!content) throw new Error('Empty response from model');
return content;
} finally {
clearTimeout(timer);
}
}
export async function runMoaArbiter(args: {
config: MoaConfig;
systemPrompt: string;
contextPrompt: string;
}): Promise<{
verdict: string;
referenceResponses: { model: string; response: string; error?: string }[];
}> {
const { config, systemPrompt, contextPrompt } = args;
// Phase 1: Query reference models in parallel
logger.info(
{ modelCount: config.referenceModels.length },
'MoA: querying reference models',
);
const results = await Promise.allSettled(
config.referenceModels.map((model) =>
queryModel(model, systemPrompt, contextPrompt),
),
);
const referenceResponses = results.map((result, i) => {
const model = config.referenceModels[i].name;
if (result.status === 'fulfilled') {
logger.info(
{ model, responseLen: result.value.length },
'MoA: reference model responded',
);
return { model, response: result.value };
}
const error =
result.reason instanceof Error
? result.reason.message
: String(result.reason);
logger.warn({ model, error }, 'MoA: reference model failed');
return { model, response: '', error };
});
const successfulResponses = referenceResponses.filter((r) => !r.error);
if (successfulResponses.length === 0) {
logger.error('MoA: all reference models failed, using ESCALATE');
return {
verdict:
'ESCALATE\n\nAll reference models failed to respond. Human judgment required.',
referenceResponses,
};
}
// Phase 2: Aggregate via aggregator model
const opinions = successfulResponses
.map((r, i) => `### Opinion ${i + 1} (${r.model}):\n${r.response}`)
.join('\n\n---\n\n');
const aggregatorPrompt = [
contextPrompt,
'',
'---',
'',
`The following ${successfulResponses.length} independent AI models have each reviewed the deadlock and provided their analysis:`,
'',
opinions,
'',
'---',
'',
'Consider all perspectives above. Where they agree, that strengthens the case.',
'Where they disagree, weigh the evidence each side presents.',
'Render your final verdict. Start your first line with: PROCEED, REVISE, RESET, or ESCALATE.',
].join('\n');
logger.info(
{ aggregator: config.aggregator.name },
'MoA: running aggregator',
);
try {
const verdict = await queryModel(
config.aggregator,
systemPrompt,
aggregatorPrompt,
90_000,
);
logger.info(
{
aggregator: config.aggregator.name,
verdictPreview: verdict.slice(0, 100),
},
'MoA: aggregator verdict rendered',
);
return { verdict, referenceResponses };
} catch (error) {
// Aggregator failed — fall back to majority vote from reference models
logger.warn(
{ error },
'MoA: aggregator failed, falling back to first successful reference',
);
return {
verdict: successfulResponses[0].response,
referenceResponses,
};
}
}