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"""
错误分析器实现
负责分析日志、识别错误类型和根本原因
"""

import re
import asyncio
import logging
from typing import List, Dict, Any, Tuple, Optional
from dataclasses import dataclass
from datetime import datetime

from core_system import ErrorAnalyzer, ErrorInfo, ErrorType

@dataclass
class ErrorPattern:
    """错误模式定义"""
    regex: re.Pattern
    error_type: ErrorType
    confidence: float
    description: str
    common_causes: List[str]
    suggested_fixes: List[str]

class LogAnalyzer:
    """日志分析器"""
    
    def __init__(self):
        self.logger = logging.getLogger(__name__)
    
    def extract_error_context(self, logs: str, error_line: int, context_size: int = 5) -> Dict[str, Any]:
        """提取错误上下文"""
        lines = logs.split('\n')
        start = max(0, error_line - context_size)
        end = min(len(lines), error_line + context_size + 1)
        
        return {
            "before": lines[start:error_line],
            "error_line": lines[error_line] if error_line < len(lines) else "",
            "after": lines[error_line + 1:end],
            "full_context": lines[start:end],
            "relative_line": error_line - start
        }
    
    def detect_error_sequence(self, logs: str) -> List[str]:
        """检测错误序列"""
        lines = logs.split('\n')
        error_sequence = []
        
        for line in lines:
            if any(keyword in line.lower() for keyword in ['error', 'failed', 'exception', 'traceback']):
                error_sequence.append(line.strip())
        
        return error_sequence
    
    def find_related_errors(self, logs: str, main_error: ErrorInfo) -> List[ErrorInfo]:
        """查找相关错误"""
        related_errors = []
        lines = logs.split('\n')
        
        # 在主错误附近查找相关错误
        if main_error.line_number:
            start = max(0, main_error.line_number - 10)
            end = min(len(lines), main_error.line_number + 10)
            
            for i, line in enumerate(lines[start:end], start):
                if i != main_error.line_number and 'error' in line.lower():
                    related_error = ErrorInfo(
                        error_type=ErrorType.UNKNOWN_ERROR,
                        message=line.strip(),
                        log_snippet=line.strip(),
                        line_number=i,
                        confidence=0.5
                    )
                    related_errors.append(related_error)
        
        return related_errors

class IntelligentErrorAnalyzer(ErrorAnalyzer):
    """智能错误分析器"""
    
    def __init__(self):
        self.logger = logging.getLogger(__name__)
        self.log_analyzer = LogAnalyzer()
        self.error_patterns = self._initialize_patterns()
        self.context_analyzers = {
            ErrorType.DOCKERFILE_SYNTAX: DockerfileSyntaxAnalyzer(),
            ErrorType.DEPENDENCY_INSTALL: DependencyErrorAnalyzer(),
            ErrorType.ENVIRONMENT_CONFIG: EnvironmentErrorAnalyzer(),
            ErrorType.PORT_CONFLICT: PortErrorAnalyzer(),
            ErrorType.PERMISSION_ERROR: PermissionErrorAnalyzer(),
            ErrorType.NETWORK_CONNECTION: NetworkErrorAnalyzer(),
            ErrorType.TIMEOUT_ERROR: TimeoutErrorAnalyzer(),
            ErrorType.RESOURCE_EXCEEDED: ResourceErrorAnalyzer()
        }
    
    async def analyze_logs(self, logs: str) -> List[ErrorInfo]:
        """分析日志并识别错误"""
        errors = []
        
        # 首先使用正则模式进行快速匹配
        pattern_errors = await self._pattern_matching(logs)
        errors.extend(pattern_errors)
        
        # 然后使用上下文分析器进行深度分析
        context_errors = await self._context_analysis(logs)
        errors.extend(context_errors)
        
        # 去重和合并相似错误
        deduplicated_errors = self._deduplicate_errors(errors)
        
        # 计算最终置信度
        final_errors = self._calculate_final_confidence(deduplicated_errors, logs)
        
        return final_errors
    
    async def classify_error(self, error_message: str) -> ErrorType:
        """分类错误类型"""
        max_confidence = 0.0
        best_type = ErrorType.UNKNOWN_ERROR
        
        for pattern in self.error_patterns:
            if pattern.regex.search(error_message):
                if pattern.confidence > max_confidence:
                    max_confidence = pattern.confidence
                    best_type = pattern.error_type
        
        return best_type
    
    async def _pattern_matching(self, logs: str) -> List[ErrorInfo]:
        """基于模式的错误匹配"""
        errors = []
        lines = logs.split('\n')
        
        for line_num, line in enumerate(lines, 1):
            for pattern in self.error_patterns:
                if pattern.regex.search(line):
                    error_info = ErrorInfo(
                        error_type=pattern.error_type,
                        message=line.strip(),
                        log_snippet=line.strip(),
                        line_number=line_num,
                        confidence=pattern.confidence,
                        context={
                            "description": pattern.description,
                            "common_causes": pattern.common_causes,
                            "suggested_fixes": pattern.suggested_fixes
                        }
                    )
                    errors.append(error_info)
        
        return errors
    
    async def _context_analysis(self, logs: str) -> List[ErrorInfo]:
        """上下文感知的错误分析"""
        errors = []
        
        for error_type, analyzer in self.context_analyzers.items():
            try:
                type_errors = await analyzer.analyze(logs)
                errors.extend(type_errors)
            except Exception as e:
                self.logger.error(f"上下文分析器 {error_type} 执行失败: {e}")
        
        return errors
    
    def _deduplicate_errors(self, errors: List[ErrorInfo]) -> List[ErrorInfo]:
        """去重错误"""
        if not errors:
            return []
        
        # 按行号和错误类型去重
        seen = set()
        deduplicated = []
        
        for error in errors:
            key = (error.line_number, error.error_type)
            if key not in seen:
                seen.add(key)
                deduplicated.append(error)
        
        return deduplicated
    
    def _calculate_final_confidence(self, errors: List[ErrorInfo], logs: str) -> List[ErrorInfo]:
        """计算最终置信度"""
        for error in errors:
            # 基于多种因素调整置信度
            base_confidence = error.confidence
            
            # 如果错误信息中包含具体的技术关键词,提高置信度
            tech_keywords = ['docker', 'pip', 'npm', 'apt', 'python', 'node']
            keyword_boost = sum(0.1 for keyword in tech_keywords if keyword in error.message.lower())
            
            # 如果错误在日志的末尾(最近的错误),提高置信度
            lines = logs.split('\n')
            position_factor = (error.line_number or 0) / len(lines) if len(lines) > 0 else 0.5
            recent_boost = (1 - position_factor) * 0.2
            
            # 计算最终置信度
            final_confidence = min(1.0, base_confidence + keyword_boost + recent_boost)
            error.confidence = final_confidence
        
        return errors
    
    def _initialize_patterns(self) -> List[ErrorPattern]:
        """初始化错误模式"""
        patterns = [
            # Dockerfile 语法错误
            ErrorPattern(
                regex=re.compile(r"failed to solve:.*syntax error|Dockerfile:\d+"),
                error_type=ErrorType.DOCKERFILE_SYNTAX,
                confidence=0.9,
                description="Dockerfile 语法错误",
                common_causes=["命令格式错误", "参数缺失", "缩进问题"],
                suggested_fixes=["检查命令语法", "验证参数", "修复格式"]
            ),
            
            # 依赖安装失败
            ErrorPattern(
                regex=re.compile(r"ERROR: Could not find a version|No matching distribution|pip install failed"),
                error_type=ErrorType.DEPENDENCY_INSTALL,
                confidence=0.85,
                description="Python 依赖安装失败",
                common_causes=["版本不存在", "网络问题", "依赖冲突"],
                suggested_fixes=["检查版本", "更换源", "解决冲突"]
            ),
            
            # Node.js 依赖安装失败
            ErrorPattern(
                regex=re.compile(r"npm ERR!|yarn error|failed to install node packages"),
                error_type=ErrorType.DEPENDENCY_INSTALL,
                confidence=0.85,
                description="Node.js 依赖安装失败",
                common_causes=["版本冲突", "网络问题", "缓存问题"],
                suggested_fixes=["清理缓存", "检查版本", "使用国内源"]
            ),
            
            # 环境变量配置问题
            ErrorPattern(
                regex=re.compile(r"Environment variable.*not found|ENV.*undefined|getenv.*None"),
                error_type=ErrorType.ENVIRONMENT_CONFIG,
                confidence=0.8,
                description="环境变量配置问题",
                common_causes=["变量未设置", "配置文件缺失", "权限问题"],
                suggested_fixes=["设置环境变量", "创建配置文件", "检查权限"]
            ),
            
            # 端口冲突
            ErrorPattern(
                regex=re.compile(r"Address already in use|Port.*already used|EADDRINUSE"),
                error_type=ErrorType.PORT_CONFLICT,
                confidence=0.95,
                description="端口冲突",
                common_causes=["端口被占用", "权限不足", "配置错误"],
                suggested_fixes=["更换端口", "杀死占用进程", "修改配置"]
            ),
            
            # 权限问题
            ErrorPattern(
                regex=re.compile(r"Permission denied|Operation not permitted|EACCES"),
                error_type=ErrorType.PERMISSION_ERROR,
                confidence=0.9,
                description="权限不足",
                common_causes=["文件权限", "用户权限", "目录权限"],
                suggested_fixes=["修改权限", "使用 sudo", "更改用户"]
            ),
            
            # 网络连接问题
            ErrorPattern(
                regex=re.compile(r"Connection refused|Network unreachable|Timeout|DNS resolution failed"),
                error_type=ErrorType.NETWORK_CONNECTION,
                confidence=0.8,
                description="网络连接问题",
                common_causes=["网络不可达", "DNS问题", "防火墙限制"],
                suggested_fixes=["检查网络", "配置DNS", "调整防火墙"]
            ),
            
            # 超时错误
            ErrorPattern(
                regex=re.compile(r"timeout|timed out|deadline exceeded"),
                error_type=ErrorType.TIMEOUT_ERROR,
                confidence=0.75,
                description="操作超时",
                common_causes=["操作时间过长", "资源不足", "网络延迟"],
                suggested_fixes["增加超时时间", "优化性能", "检查资源"]
            ),
            
            # 资源超限
            ErrorPattern(
                regex=re.compile(r"out of memory|disk full|CPU limit exceeded|resource exceeded"),
                error_type=ErrorType.RESOURCE_EXCEEDED,
                confidence=0.9,
                description="资源超限",
                common_causes=["内存不足", "磁盘满", "CPU限制"],
                suggested_fixes=["清理资源", "增加配额", "优化代码"]
            )
        ]
        
        return patterns

class ContextAnalyzer(ABC):
    """上下文分析器基类"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        """分析日志"""
        pass

class DockerfileSyntaxAnalyzer(ContextAnalyzer):
    """Dockerfile 语法分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 分析 Dockerfile 特有的语法错误
        dockerfile_errors = [
            (r"FROM.*invalid", "FROM 指令格式错误"),
            (r"RUN.*command not found", "RUN 命令执行失败"),
            (r"COPY.*No such file", "COPY 源文件不存在"),
            (r"EXPOSE.*invalid port", "EXPOSE 端口格式错误"),
            (r"ENV.*invalid format", "ENV 环境变量格式错误")
        ]
        
        for pattern, description in dockerfile_errors:
            if re.search(pattern, logs, re.IGNORECASE):
                error_info = ErrorInfo(
                    error_type=ErrorType.DOCKERFILE_SYNTAX,
                    message=description,
                    log_snippet="",
                    confidence=0.8,
                    context={"analysis_type": "dockerfile_syntax"}
                )
                errors.append(error_info)
        
        return errors

class DependencyErrorAnalyzer(ContextAnalyzer):
    """依赖错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # Python 依赖问题
        python_patterns = [
            (r"pip.*Requirement already satisfied", "依赖重复安装"),
            (r"pip.*Could not find.*version", "依赖版本不存在"),
            (r"pip.*incompatible dependencies", "依赖版本冲突")
        ]
        
        # Node.js 依赖问题
        node_patterns = [
            (r"npm.*peer dependency", "peer 依赖问题"),
            (r"npm.*version mismatch", "版本不匹配"),
            (r"npm.*cache problem", "npm 缓存问题")
        ]
        
        all_patterns = python_patterns + node_patterns
        
        for pattern, description in all_patterns:
            if re.search(pattern, logs, re.IGNORECASE):
                error_info = ErrorInfo(
                    error_type=ErrorType.DEPENDENCY_INSTALL,
                    message=description,
                    log_snippet="",
                    confidence=0.75,
                    context={"analysis_type": "dependency"}
                )
                errors.append(error_info)
        
        return errors

class EnvironmentErrorAnalyzer(ContextAnalyzer):
    """环境错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 环境变量问题
        if re.search(r"PATH.*not found", logs, re.IGNORECASE):
            error_info = ErrorInfo(
                error_type=ErrorType.ENVIRONMENT_CONFIG,
                message="PATH 环境变量配置问题",
                log_snippet="",
                confidence=0.8,
                context={"analysis_type": "environment", "var_type": "PATH"}
            )
            errors.append(error_info)
        
        return errors

class PortErrorAnalyzer(ContextAnalyzer):
    """端口错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 检测常见的 HuggingFace Spaces 端口问题
        if re.search(r"port.*7860", logs, re.IGNORECASE) and re.search(r"error|failed", logs, re.IGNORECASE):
            error_info = ErrorInfo(
                error_type=ErrorType.PORT_CONFLICT,
                message="HuggingFace Spaces 默认端口 7860 问题",
                log_snippet="",
                confidence=0.9,
                context={"analysis_type": "port", "port": "7860"}
            )
            errors.append(error_info)
        
        return errors

class PermissionErrorAnalyzer(ContextAnalyzer):
    """权限错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 检测文件权限问题
        if re.search(r"permission denied.*\.py|\.js|\.sh", logs, re.IGNORECASE):
            error_info = ErrorInfo(
                error_type=ErrorType.PERMISSION_ERROR,
                message="脚本文件权限问题",
                log_snippet="",
                confidence=0.8,
                context={"analysis_type": "permission", "file_type": "script"}
            )
            errors.append(error_info)
        
        return errors

class NetworkErrorAnalyzer(ContextAnalyzer):
    """网络错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 检测网络连接问题
        network_indicators = [
            (r"github\.com.*timeout", "GitHub 连接超时"),
            (r"pypi\.org.*failed", "PyPI 连接失败"),
            (r"npm\.registry.*error", "npm registry 连接错误")
        ]
        
        for pattern, description in network_indicators:
            if re.search(pattern, logs, re.IGNORECASE):
                error_info = ErrorInfo(
                    error_type=ErrorType.NETWORK_CONNECTION,
                    message=description,
                    log_snippet="",
                    confidence=0.7,
                    context={"analysis_type": "network", "service": pattern.split('.')[0]}
                )
                errors.append(error_info)
        
        return errors

class TimeoutErrorAnalyzer(ContextAnalyzer):
    """超时错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 检测不同类型的超时
        timeout_patterns = [
            (r"build.*timeout", "构建超时"),
            (r"install.*timeout", "安装超时"),
            (r"download.*timeout", "下载超时")
        ]
        
        for pattern, description in timeout_patterns:
            if re.search(pattern, logs, re.IGNORECASE):
                error_info = ErrorInfo(
                    error_type=ErrorType.TIMEOUT_ERROR,
                    message=description,
                    log_snippet="",
                    confidence=0.8,
                    context={"analysis_type": "timeout", "operation": pattern.split('.')[0]}
                )
                errors.append(error_info)
        
        return errors

class ResourceErrorAnalyzer(ContextAnalyzer):
    """资源错误分析器"""
    
    async def analyze(self, logs: str) -> List[ErrorInfo]:
        errors = []
        
        # 检测资源限制问题
        resource_patterns = [
            (r"memory.*limit", "内存限制"),
            (r"disk.*space", "磁盘空间不足"),
            (r"cpu.*quota", "CPU 配额限制")
        ]
        
        for pattern, description in resource_patterns:
            if re.search(pattern, logs, re.IGNORECASE):
                error_info = ErrorInfo(
                    error_type=ErrorType.RESOURCE_EXCEEDED,
                    message=description,
                    log_snippet="",
                    confidence=0.8,
                    context={"analysis_type": "resource", "resource_type": pattern.split('.')[0]}
                )
                errors.append(error_info)
        
        return errors