简历提取 插值分析 依然使用 pro32

This commit is contained in:
zk
2026-05-29 14:33:50 +08:00
parent 471fa7ee17
commit 017426fdd1
3 changed files with 8 additions and 35 deletions
+8 -8
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@@ -9,9 +9,9 @@ from app.ai.models import LLM
class SkillGapModel:
"""技能差距分析模块"""
# 技能差距识别:对比简历与岗位技能标签,输出缺失技能列表
ANALYSIS = LLM.DEEPSEEK_V4_FLASH.create(temperature=0)
ANALYSIS = LLM.DOUBAO_PRO_32K.create(temperature=0)
# 个人概述优化:将缺失技能关键词融入 summary
SUMMARY = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
SUMMARY = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
# 经历描述优化:针对目标岗位优化单条经历的 description
EXPERIENCE = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
# Agent规划:解析用户自然语言指令,拆解为原子编辑操作列表
@@ -19,15 +19,15 @@ class SkillGapModel:
# Agent执行-修改:按指令修改简历中的单条记录
AGENT_EDIT = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
# Agent执行-新增:按指令生成一条新的简历记录
AGENT_ADD = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
AGENT_ADD = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
class JobAgentModel:
"""求职助手Agent模块"""
# 多轮对话:理解用户求职意图,返回结构化回复(message+tool调用)
CHAT = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.7)
CHAT = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.7)
# 岗位简历-summary优化:针对具体岗位JD优化个人概述
SUMMARY = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
SUMMARY = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
# 岗位简历-经历优化:针对具体岗位JD优化单条经历描述
EXPERIENCE = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
@@ -41,17 +41,17 @@ class NovaChatModel:
class ResumeExtractorModel:
"""简历解析模块"""
# 简历结构化提取:两阶段并行提取简历文本为JSON结构
PARSE = LLM.DEEPSEEK_V4_FLASH.create(temperature=0)
PARSE = LLM.DOUBAO_PRO_32K.create(temperature=0)
class DiagnoserModel:
"""简历诊断模块"""
# 模块诊断:逐条分析经历记录的问题(错别字/无量化/弱相关等)
MODULE = LLM.DEEPSEEK_V4_FLASH.create(temperature=0)
MODULE = LLM.DEEPSEEK_V4_FLASH.create(temperature=0)
# 整体评价:汇总所有诊断结果生成总结性评语
SUMMARY = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
# 内容润色:用户编辑后的文本做专业润色
POLISH = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
POLISH = LLM.DEEPSEEK_V4_FLASH.create(temperature=0.3)
class BrowserPlugModel:
-16
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@@ -15,9 +15,6 @@ from app.config import settings
# 供应商连接配置
_VOLCENGINE = (lambda: settings.volcengine_api_key, lambda: settings.volcengine_base_url)
_JIAYU = (lambda: settings.jiayu_api_key, lambda: settings.jiayu_base_url)
_JIEKOU = (lambda: settings.jiekou_api_key, lambda: settings.jiekou_base_url)
_ZM = (lambda: settings.zm_api_key, lambda: settings.zm_base_url)
@@ -36,19 +33,6 @@ class LLM(Enum):
DOUBAO_SEED_LITE = ("doubao-seed-2-0-lite-260215", *_VOLCENGINE)
DOUBAO_SEED_PRO = ("doubao-seed-2-0-pro-260215", *_VOLCENGINE)
# jiekou
GPT_4O = ("gpt-4o", *_JIAYU)
GPT_4O_MINI = ("gpt-4o-mini", *_JIEKOU)
GEMINI_FLASH = ("gemini-2.5-flash", *_JIEKOU)
# 加鱼
JIAYU_CLAUDE_SONNET_4_5 = ("claude-sonnet-4.5", *_JIAYU)
JIAYU_CLAUDE_HAIKU_4_5 = ("claude-haiku-4.5", *_JIAYU)
JIAYU_DEEPSEEK_3_2 = ("deepseek-3.2", *_JIAYU)
JIAYU_GLM_5 = ("glm-5", *_JIAYU)
JIAYU_QWEN3_CODER_NEXT = ("qwen3-coder-next", *_JIAYU)
JIAYU_MINIMAX_M2_5 = ("minimax-m2.5", *_JIAYU)
# ZM
ZM_GPT_5_5 = ("gpt-5.5", *_ZM)