fix(llmage): 修复备份SQL条件 use_date < today(非yesterday)+ 提高备份频率到每5分钟

This commit is contained in:
yumoqing 2026-05-24 17:05:58 +08:00
parent 96317c1512
commit 2f794538d2
5 changed files with 61 additions and 8 deletions

53
dat/qwen3.7-max.txt Normal file
View File

@ -0,0 +1,53 @@
已生成完整的 qwen3.7-max 配置SQL。以下是配置方案
模型摘要
- 模型名称: 千问3.7-Max
- API model: qwen3.7-max (严格按API文档填写)
- 分类: text2text (文生文)
- 供应商: 阿里百炼 (ali-qwen)
- 接口: OpenAI兼容 /chat/completions同步流式
复用vs新建
- upapp: 复用 ali-qwen (阿里百炼)
- upappkey: 复用 gCMl-BnrTrfoqWAEPPoH8 (API Key已配置)
- uapi: 复用 t2t (BY2cA4RD_axNxTG4m9Coa)
- uapiio: 复用 Is8l4TGkcZcqFSjbbeIK2 (文本会话)
- llm: 新建
- llm_api_map: 新建
- pricing_program: 新建
- pricing_program_timing: 新建
生成的SQL (4条)
sql
-- 1. llm表
INSERT INTO llm VALUES ('Jt26VKlUFsJxABuVLauBc','千问3.7-Max','qwen3.7-max','通义千问3.7系列旗舰模型相较3.6版本在推理能力、代码能力、多模态理解等方面全面升级。适用于复杂任务处理、智能体开发、代码生成等高级应用场景。','text2text','qwen','ali-qwen','t2t','6fadgewjraOyvxC_EkHou','0','2026-05-23','9999-12-31','',NULL,10.00);
-- 2. llm_api_map表
INSERT INTO llm_api_map VALUES ('rFS0Ag-epBUxE5LCF6glW','Jt26VKlUFsJxABuVLauBc','text2text','t2t',NULL,NULL,'0B-JNSUEelsY5TQ_Sawa7','1');
-- 3. pricing_program表
INSERT INTO pricing_program VALUES ('0B-JNSUEelsY5TQ_Sawa7','qwen3.7-max定价','fields:\r\n formula:\r\n label: 计算公式\r\n type: str\r\n model:\r\n label: 模型\r\n type: str\r\n prompt_tokens:\r\n label: 输入词元数\r\n type: int\r\n value_mode: between\r\nformula: null\r\npricings:\r\n- formula: 2.5 prompt_tokens / 1000000 + completion_tokens 10 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: -0.1 ~= 32000\r\n- formula: 4 prompt_tokens / 1000000 + completion_tokens 16 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 32000 ~= 128000\r\n- formula: 7 prompt_tokens / 1000000 + completion_tokens 28 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 128000 ~= 256000\r\n- formula: 10 prompt_tokens / 1000000 + completion_tokens 40 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 256000 ~= 1000000','2026-05-23','9999-12-31');
-- 4. pricing_program_timing表
INSERT INTO pricing_program_timing VALUES ('C-IIEG_9_O9beN8S2vdUI','0B-JNSUEelsY5TQ_Sawa7','qwen3.7-max计费','fields:\r\n formula:\r\n label: 计算公式\r\n type: str\r\n model:\r\n label: 模型\r\n type: str\r\n prompt_tokens:\r\n label: 输入词元数\r\n type: int\r\n value_mode: between\r\nformula: null\r\npricings:\r\n- formula: 2.5 prompt_tokens / 1000000 + completion_tokens 10 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: -0.1 ~= 32000\r\n- formula: 4 prompt_tokens / 1000000 + completion_tokens 16 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 32000 ~= 128000\r\n- formula: 7 prompt_tokens / 1000000 + completion_tokens 28 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 128000 ~= 256000\r\n- formula: 10 prompt_tokens / 1000000 + completion_tokens 40 /1000000\r\n model: qwen3.7-max\r\n prompt_tokens: 256000 ~= 1000000','2026-05-23','9999-12-31');
验证查询
sql
SELECT id, name, model, upappid, apiname FROM llm WHERE model = 'qwen3.7-max';
SELECT id, llmid, llmcatelogid, apiname, ppid FROM llm_api_map WHERE llmid = 'Jt26VKlUFsJxABuVLauBc';
SELECT id, name FROM pricing_program WHERE id = '0B-JNSUEelsY5TQ_Sawa7';
ppid三处一致
- pricing_program.id = 0B-JNSUEelsY5TQ_Sawa7
- pricing_program_timing.ppid = 0B-JNSUEelsY5TQ_Sawa7
- llm_api_map.ppid = 0B-JNSUEelsY5TQ_Sawa7
注意事项
1. 定价参考qwen3.6-plus的阶梯式计费模式具体价格需根据百炼官方定价调整
2. qwen3.7-max使用已有的t2t uapiOpenAI兼容接口
3. 如果qwen3.7-max有特殊的推理模式如思考/非思考切换),可能需要额外的配置
4. 之前提到的 startReasoning is not defined 前端报错问题需要单独排查可能与harnessed_reasoning的bricks前端代码有关

Binary file not shown.

View File

@ -240,19 +240,19 @@ async def llm_accoung_failed(luid, reason=None):
async def backup_accounted_llmusage():
"""Backup yesterday's accounted records to history table and remove from llmusage."""
"""Backup accounted records with use_date before today to history table."""
env = ServerEnv()
yesterday = (datetime.now() - timedelta(days=1)).strftime('%Y-%m-%d')
today = datetime.now().strftime('%Y-%m-%d')
ts = env.timestampstr()
batched = 0
async with get_sor_context(env, 'llmage') as sor:
# Select yesterday's accounted records
# Select records with use_date < today (i.e. yesterday and earlier)
sql = """select * from llmusage
where accounting_status='accounted'
and use_date < ${yesterday}$"""
recs = await sor.sqlExe(sql, {'yesterday': yesterday})
and use_date < ${today}$"""
recs = await sor.sqlExe(sql, {'today': today})
if not recs:
debug(f'backup_accounted_llmusage: no records to backup for use_date < {yesterday}')
debug(f'backup_accounted_llmusage: no records to backup for use_date < {today}')
return 0
debug(f'backup_accounted_llmusage: {len(recs)} records to backup')
for r in recs:
@ -356,9 +356,9 @@ async def backend_accounting():
exception(f'{e}, {lu.id=}')
await llm_accoung_failed(lu.id, reason=str(e))
# Run backup every 100 iterations (roughly every ~1000 seconds)
# Run backup every 30 iterations (~5 minutes)
backup_counter += 1
if backup_counter >= 100:
if backup_counter >= 30:
backup_counter = 0
try:
await backup_accounted_llmusage()