v2.5.0-task-model: lightweight task model services + tasks table

Task model infrastructure for cheap LLM calls (auto-naming, search
rewrite, tags, summaries) via a dedicated llama-server instance at
TASK_MODEL_URL, falling back to LLAMA_SWAP_URL with FAST_MODEL when
unset. Replaces the inline fetch in auto_name.ts with taskModelCompletion.

Adds search query rewriting: on step 0 when web tools are enabled, the
user's message is summarized into a search intent hint appended to the
system prompt, improving web_search relevance.

Schema: tasks table for provider dispatch and arena, sessions.tags column.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
This commit is contained in:
2026-05-27 21:44:39 +00:00
parent bcfc94fa47
commit fcc7c5a86e
8 changed files with 194 additions and 54 deletions

View File

@@ -11,6 +11,11 @@ POSTGRES_PASSWORD=CHANGE_ME
# point BooCode at a different SearXNG instance.
SEARXNG_URL=http://100.114.205.53:8888
# Task model: lightweight model for auto-naming, search rewrite, etc.
# Direct llama-server instance (NOT llama-swap). Falls back to LLAMA_SWAP_URL
# with FAST_MODEL when unset.
# TASK_MODEL_URL=http://100.90.172.55:7995
# v1.13.15-tools: BOOCODE_TOOLS narrows the tool whitelist sent to the LLM.
# Unset (default) → all tools (~21k schema). Useful primarily for single-purpose
# sessions where the model only needs read-only filesystem access.

View File

@@ -344,6 +344,7 @@ INSERT INTO settings (key, value) VALUES ('theme_mode', '"dark"') ON CONFLICT (k
ALTER TABLE projects ADD COLUMN IF NOT EXISTS default_system_prompt TEXT NOT NULL DEFAULT '';
ALTER TABLE projects ADD COLUMN IF NOT EXISTS default_web_search_enabled BOOLEAN NOT NULL DEFAULT false;
ALTER TABLE sessions ADD COLUMN IF NOT EXISTS web_search_enabled BOOLEAN;
ALTER TABLE sessions ADD COLUMN IF NOT EXISTS tags TEXT[] DEFAULT '{}';
-- v1.11: anchored rolling compaction.
-- compacted_at — marks rows that are "behind the curtain" of the latest
@@ -366,3 +367,39 @@ ALTER TABLE messages ADD COLUMN IF NOT EXISTS summary BOOLEAN NOT NULL DEFAULT F
ALTER TABLE messages ADD COLUMN IF NOT EXISTS tail_start_id UUID REFERENCES messages(id) ON DELETE SET NULL;
ALTER TABLE chats ADD COLUMN IF NOT EXISTS needs_compaction BOOLEAN NOT NULL DEFAULT FALSE;
CREATE INDEX IF NOT EXISTS idx_messages_chat_compacted ON messages (chat_id, compacted_at);
-- tasks table (provider dispatch, arena)
CREATE TABLE IF NOT EXISTS tasks (
id UUID PRIMARY KEY DEFAULT gen_random_uuid(),
project_id UUID NOT NULL REFERENCES projects(id) ON DELETE CASCADE,
session_id UUID REFERENCES sessions(id) ON DELETE CASCADE,
parent_task_id UUID REFERENCES tasks(id),
arena_id UUID,
state TEXT NOT NULL DEFAULT 'pending'
CHECK (state IN ('pending','running','completed','failed','blocked','cancelled')),
input TEXT NOT NULL,
output_summary TEXT,
agent TEXT,
model TEXT,
mode_id TEXT,
thinking_option_id TEXT,
feature_values JSONB,
execution_path TEXT CHECK (execution_path IS NULL OR execution_path IN ('native','acp','pty','qwen')),
worktree_path TEXT,
cost_tokens INTEGER,
started_at TIMESTAMPTZ,
ended_at TIMESTAMPTZ,
created_at TIMESTAMPTZ NOT NULL DEFAULT clock_timestamp()
);
-- Fix tasks FK to cascade on session delete (existing tables without CASCADE)
DO $$ BEGIN
IF EXISTS (
SELECT 1 FROM pg_constraint WHERE conname = 'tasks_session_id_fkey'
AND confdeltype != 'c'
) THEN
ALTER TABLE tasks DROP CONSTRAINT tasks_session_id_fkey;
ALTER TABLE tasks ADD CONSTRAINT tasks_session_id_fkey
FOREIGN KEY (session_id) REFERENCES sessions(id) ON DELETE CASCADE;
END IF;
END $$;

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@@ -1,9 +1,10 @@
import type { InferenceContext } from './inference/index.js';
import { taskModelCompletion } from './task-model.js';
const NAMING_SYSTEM_PROMPT =
'You name chat sessions based on what the assistant did. Summarize the topic or outcome — do NOT copy the first few words verbatim. Reply directly with no thinking, reasoning, or explanation. Output ONLY the title, 4 words max, no quotes, no punctuation, no prefix like "Title:".';
'You name chat sessions. Reply with ONLY the title. 4 to 6 words. No quotes, no punctuation, no prefix.';
const MAX_TITLE_CHARS = 60;
const MAX_TITLE_CHARS = 80;
function cleanTitle(raw: string): string {
let name = raw.trim();
@@ -18,27 +19,7 @@ function cleanTitle(raw: string): string {
return name;
}
interface NamingResponse {
choices?: Array<{
message?: {
content?: string;
reasoning_content?: string;
};
}>;
}
function pickTitleSource(data: NamingResponse): string {
const choice = data.choices?.[0]?.message;
if (!choice) return '';
if (choice.content && choice.content.trim().length > 0) return choice.content;
const reasoning = choice.reasoning_content ?? '';
if (reasoning.length === 0) return '';
const lines = reasoning
.split('\n')
.map((l) => l.trim())
.filter((l) => l.length > 0);
return lines[lines.length - 1] ?? '';
}
// TODO: wire suggestTags after task model validation
export async function maybeAutoNameChat(
ctx: InferenceContext,
@@ -64,13 +45,6 @@ export async function maybeAutoNameChat(
if (!chat) return;
if (chat.name !== null && chat.name !== '') return;
const sessionRows = await ctx.sql<{ model: string }[]>`
SELECT model FROM sessions WHERE id = ${sessionId}
`;
// v2.0.5: prefer FAST_MODEL for cheap LLM calls (titles, summaries).
const model = ctx.config.FAST_MODEL ?? sessionRows[0]?.model;
if (!model) return;
const assistantMsg = await ctx.sql<{ content: string }[]>`
SELECT content FROM messages
WHERE chat_id = ${chatId}
@@ -84,32 +58,12 @@ export async function maybeAutoNameChat(
const assistantText = assistantMsg[0].content.slice(0, 2000);
const body = {
model,
messages: [
{ role: 'system', content: NAMING_SYSTEM_PROMPT },
{
role: 'user',
content: assistantText,
},
],
max_tokens: 30,
const raw = await taskModelCompletion({
system: NAMING_SYSTEM_PROMPT,
user: assistantText,
maxTokens: 30,
temperature: 0.3,
stream: false,
chat_template_kwargs: { enable_thinking: false },
};
const res = await fetch(`${ctx.config.LLAMA_SWAP_URL}/v1/chat/completions`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify(body),
});
if (!res.ok) {
const text = await res.text().catch(() => '');
throw new Error(`naming request failed: ${res.status} ${text.slice(0, 200)}`);
}
const data = (await res.json()) as NamingResponse;
const raw = pickTitleSource(data);
const name = cleanTitle(raw);
if (!name) {
ctx.log.warn({ chatId, raw }, 'auto-name: empty title from model');

View File

@@ -14,6 +14,7 @@ import type {
import { ALL_TOOLS } from '../tools.js';
import { resolveProjectRoot } from '../path_guard.js';
import { maybeAutoNameChat } from '../auto_name.js';
import { rewriteSearchQuery } from '../task-search-rewrite.js';
import { getAgentById } from '../agents.js';
import * as compaction from '../compaction.js';
import type { Broker } from '../broker.js';
@@ -254,6 +255,16 @@ export async function runAssistantTurn(
const webToolsEnabled =
iterSession.web_search_enabled ?? iterProject.default_web_search_enabled ?? false;
if (stepNumber === 0 && webToolsEnabled && messages.length >= 2) {
const lastUserMsg = [...messages].reverse().find((m) => m.role === 'user');
if (lastUserMsg?.content) {
const hint = await rewriteSearchQuery(lastUserMsg.content);
if (hint && messages[0]?.role === 'system' && messages[0].content) {
messages[0].content += `\n\nThe user's search intent can be summarized as: "${hint}"`;
}
}
}
const iterArgs: TurnArgs = { sessionId, chatId, assistantMessageId, toolsUsed, recentToolCalls, signal };
const state: StreamPhaseState = { accumulated: '', startedAt: null };
let result: StreamResult;

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@@ -0,0 +1,68 @@
import { loadConfig, type Config } from '../config.js';
const TIMEOUT_MS = 10_000;
export async function taskModelCompletion(opts: {
system: string;
user: string;
maxTokens?: number;
temperature?: number;
fallbackModel?: string;
}): Promise<string> {
const config = loadConfig();
const maxTokens = opts.maxTokens ?? 30;
const temperature = opts.temperature ?? 0.3;
const { url, model } = resolveEndpoint(config, opts.fallbackModel);
try {
const res = await fetch(`${url}/v1/chat/completions`, {
method: 'POST',
headers: { 'Content-Type': 'application/json' },
body: JSON.stringify({
model,
messages: [
{ role: 'system', content: opts.system },
{ role: 'user', content: opts.user },
],
max_tokens: maxTokens,
temperature,
stream: false,
chat_template_kwargs: { enable_thinking: false },
}),
signal: AbortSignal.timeout(TIMEOUT_MS),
});
if (!res.ok) {
const text = await res.text().catch(() => '');
console.warn(`task-model: ${res.status} ${text.slice(0, 200)}`);
return '';
}
const data = (await res.json()) as {
choices?: Array<{
message?: { content?: string; reasoning_content?: string };
}>;
};
const choice = data.choices?.[0]?.message;
if (!choice) return '';
const content = (choice.content ?? '').trim();
if (content.length > 0) return content;
const reasoning = choice.reasoning_content ?? '';
if (reasoning.length === 0) return '';
const lines = reasoning.split('\n').map((l) => l.trim()).filter((l) => l.length > 0);
return lines[lines.length - 1] ?? '';
} catch (err) {
console.warn('task-model: request failed', err);
return '';
}
}
function resolveEndpoint(
config: Config,
fallbackModel?: string,
): { url: string; model: string } {
if (config.TASK_MODEL_URL) {
return { url: config.TASK_MODEL_URL, model: 'gemma-3-270m-it' };
}
const model = config.FAST_MODEL ?? fallbackModel ?? config.DEFAULT_MODEL;
return { url: config.LLAMA_SWAP_URL, model };
}

View File

@@ -0,0 +1,19 @@
import { taskModelCompletion } from './task-model.js';
const SYSTEM_PROMPT =
'You rewrite user messages into concise web search queries. Reply with ONLY the search query. 3 to 6 words. No quotes, no explanation.';
const MAX_INPUT_CHARS = 500;
const FALLBACK_CHARS = 60;
export async function rewriteSearchQuery(userMessage: string): Promise<string> {
const input = userMessage.slice(0, MAX_INPUT_CHARS);
const result = await taskModelCompletion({
system: SYSTEM_PROMPT,
user: input,
maxTokens: 20,
temperature: 0.2,
});
if (result.length > 0) return result;
return userMessage.slice(0, FALLBACK_CHARS).trim();
}

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@@ -0,0 +1,24 @@
import { taskModelCompletion } from './task-model.js';
const SYSTEM_PROMPT =
'Summarize this conversation in one sentence, 15 words max. No quotes, no prefix.';
const MAX_INPUT_CHARS = 1000;
export async function oneLineSummary(
messages: Array<{ role: string; content: string }>,
): Promise<string> {
const lastPairs = messages.slice(-6);
let input = lastPairs
.map((m) => `${m.role}: ${m.content}`)
.join('\n');
if (input.length > MAX_INPUT_CHARS) {
input = input.slice(0, MAX_INPUT_CHARS);
}
return taskModelCompletion({
system: SYSTEM_PROMPT,
user: input,
maxTokens: 30,
temperature: 0.3,
});
}

View File

@@ -0,0 +1,22 @@
import { taskModelCompletion } from './task-model.js';
const SYSTEM_PROMPT =
'You tag chat sessions. Reply with 1 to 3 lowercase tags separated by commas. Tags should describe the topic. No explanation. Examples: "docker, deployment", "python, debugging", "react, styling".';
export async function suggestTags(
userMessage: string,
assistantReply: string,
): Promise<string[]> {
const input = `User: ${userMessage.slice(0, 300)}\nAssistant: ${assistantReply.slice(0, 300)}`;
const result = await taskModelCompletion({
system: SYSTEM_PROMPT,
user: input,
maxTokens: 30,
temperature: 0.3,
});
if (result.length === 0) return [];
return result
.split(',')
.map((t) => t.trim().toLowerCase())
.filter((t) => t.length > 0 && t.length <= 30);
}