Protokoll #19355

ID19355
Zeitstempel2025-12-27 00:13:35.330323
Clientroot
IP145.224.72.140
Modellclaude-sonnet-4-20250514
Statuscompleted
Tokens3,784 (Input: 428, Output: 3,356)
Dauer114 ms
Request-Zeit2025-12-27 00:13:35.330323
Response-Zeit2025-12-27 00:13:35.444009

Request

{
    "event": "PreToolUse",
    "tool_name": "Edit",
    "tool_input": {
        "file_path": "\/var\/www\/dev.campus.systemische-tools.de\/src\/Infrastructure\/AI\/ChatService.php",
        "old_string": "final readonly class ChatService\n{\n    \/**\n     * Constructs a new ChatService instance.\n     *\n     * @param OllamaService  $ollama  Ollama service for embeddings and optional LLM\n     * @param QdrantService  $qdrant  Qdrant service for vector search\n     * @param ClaudeService  $claude  Claude service for high-quality LLM responses\n     * @param ScoringService $scoring Scoring service for weighted result ranking\n     *\/\n    public function __construct(\n        private OllamaService $ollama,\n        private QdrantService $qdrant,\n        private ClaudeService $claude,\n        private ScoringService $scoring\n    ) {\n    }",
        "new_string": "final readonly class ChatService\n{\n    \/**\n     * Constructs a new ChatService instance.\n     *\n     * @param OllamaService               $ollama     Ollama service for embeddings and optional LLM\n     * @param QdrantService               $qdrant     Qdrant service for vector search\n     * @param ClaudeService               $claude     Claude service for high-quality LLM responses\n     * @param ScoringService              $scoring    Scoring service for weighted result ranking\n     * @param SemanticEnrichmentService|null $semantic Optional semantic enrichment (graceful degradation)\n     *\/\n    public function __construct(\n        private OllamaService $ollama,\n        private QdrantService $qdrant,\n        private ClaudeService $claude,\n        private ScoringService $scoring,\n        private ?SemanticEnrichmentService $semantic = null\n    ) {\n    }"
    }
}

Response

{
    "tool_response": {
        "filePath": "\/var\/www\/dev.campus.systemische-tools.de\/src\/Infrastructure\/AI\/ChatService.php",
        "oldString": "final readonly class ChatService\n{\n    \/**\n     * Constructs a new ChatService instance.\n     *\n     * @param OllamaService  $ollama  Ollama service for embeddings and optional LLM\n     * @param QdrantService  $qdrant  Qdrant service for vector search\n     * @param ClaudeService  $claude  Claude service for high-quality LLM responses\n     * @param ScoringService $scoring Scoring service for weighted result ranking\n     *\/\n    public function __construct(\n        private OllamaService $ollama,\n        private QdrantService $qdrant,\n        private ClaudeService $claude,\n        private ScoringService $scoring\n    ) {\n    }",
        "newString": "final readonly class ChatService\n{\n    \/**\n     * Constructs a new ChatService instance.\n     *\n     * @param OllamaService               $ollama     Ollama service for embeddings and optional LLM\n     * @param QdrantService               $qdrant     Qdrant service for vector search\n     * @param ClaudeService               $claude     Claude service for high-quality LLM responses\n     * @param ScoringService              $scoring    Scoring service for weighted result ranking\n     * @param SemanticEnrichmentService|null $semantic Optional semantic enrichment (graceful degradation)\n     *\/\n    public function __construct(\n        private OllamaService $ollama,\n        private QdrantService $qdrant,\n        private ClaudeService $claude,\n        private ScoringService $scoring,\n        private ?SemanticEnrichmentService $semantic = null\n    ) {\n    }",
        "originalFile": "<?php\n\ndeclare(strict_types=1);\n\nnamespace Infrastructure\\AI;\n\n\/\/ @responsibility: RAG-Pipeline für KI-Chat (Embedding, Suche, Antwort-Generierung)\n\nuse RuntimeException;\n\nfinal readonly class ChatService\n{\n    \/**\n     * Constructs a new ChatService instance.\n     *\n     * @param OllamaService  $ollama  Ollama service for embeddings and optional LLM\n     * @param QdrantService  $qdrant  Qdrant service for vector search\n     * @param ClaudeService  $claude  Claude service for high-quality LLM responses\n     * @param ScoringService $scoring Scoring service for weighted result ranking\n     *\/\n    public function __construct(\n        private OllamaService $ollama,\n        private QdrantService $qdrant,\n        private ClaudeService $claude,\n        private ScoringService $scoring\n    ) {\n    }\n\n    \/**\n     * Executes a complete RAG chat pipeline.\n     *\n     * Performs the following steps:\n     * 1. Generates an embedding vector for the question (if collections selected)\n     * 2. Searches for similar documents in the vector database(s)\n     * 3. Builds context from the most relevant chunks\n     * 4. Generates an answer using the specified LLM model\n     * 5. Extracts source information\n     * 6. Assembles a structured response\n     *\n     * If no collections are selected, steps 1-3 and 5 are skipped (no RAG).\n     *\n     * @param string        $question           The user's question to answer\n     * @param string        $model              The LLM model (claude-* or ollama:*)\n     * @param array<string> $collections        Qdrant collections to search (empty = no RAG)\n     * @param int           $limit              Maximum number of document chunks to retrieve (default: 5)\n     * @param string|null   $stylePrompt        Optional style prompt from author profile\n     * @param string|null   $customSystemPrompt Optional custom system prompt (replaces default if set)\n     * @param float         $temperature        Sampling temperature 0.0-1.0 (default: 0.7)\n     * @param int           $maxTokens          Maximum tokens in response (default: 4096)\n     *\n     * @return array{\n     *     question: string,\n     *     answer: string,\n     *     sources: array<int, array{title: string, score: float, content?: string}>,\n     *     model: string,\n     *     usage?: array{input_tokens: int, output_tokens: int},\n     *     chunks_used: int\n     * } Complete chat response with answer, sources, and metadata\n     *\n     * @throws RuntimeException If embedding generation fails\n     * @throws RuntimeException If vector search fails\n     * @throws RuntimeException If LLM request fails\n     *\n     * @example\n     * $chat = new ChatService($ollama, $qdrant, $claude);\n     * \/\/ With RAG (multiple collections)\n     * $result = $chat->chat('Was ist systemisches Coaching?', 'claude-opus-4-5-20251101', ['documents', 'mail'], 5);\n     * \/\/ Without RAG (no collections)\n     * $result = $chat->chat('Erkläre mir Python', 'claude-opus-4-5-20251101', [], 5);\n     *\/\n    public function chat(\n        string $question,\n        string $model = 'claude-opus-4-5-20251101',\n        array $collections = [],\n        int $limit = 5,\n        ?string $stylePrompt = null,\n        ?string $customSystemPrompt = null,\n        float $temperature = 0.7,\n        int $maxTokens = 4096\n    ): array {\n        $searchResults = [];\n        $context = '';\n\n        \/\/ Only perform RAG if collections are selected\n        if ($collections !== []) {\n            \/\/ Step 1: Generate embedding for the question\n            try {\n                $queryEmbedding = $this->ollama->getEmbedding($question);\n            } catch (RuntimeException $e) {\n                throw new RuntimeException(\n                    'Embedding generation failed: ' . $e->getMessage(),\n                    0,\n                    $e\n                );\n            }\n\n            if ($queryEmbedding === []) {\n                throw new RuntimeException('Embedding generation returned empty vector');\n            }\n\n            \/\/ Step 2: Search across all selected collections\n            try {\n                $searchResults = $this->searchMultipleCollections($queryEmbedding, $collections, $limit);\n            } catch (RuntimeException $e) {\n                throw new RuntimeException(\n                    'Vector search failed: ' . $e->getMessage(),\n                    0,\n                    $e\n                );\n            }\n\n            \/\/ Step 3: Build context from search results (if any found)\n            if ($searchResults !== []) {\n                $context = $this->buildContext($searchResults);\n            }\n        }\n\n        \/\/ Step 4: Parse model string and generate answer\n        $isOllama = str_starts_with($model, 'ollama:');\n        $isClaude = str_starts_with($model, 'claude-');\n        $hasContext = $context !== '';\n\n        if ($isClaude) {\n            try {\n                \/\/ Build prompt: RAG with context or direct question\n                if ($hasContext) {\n                    $userPrompt = $this->claude->buildRagPrompt($question, $context);\n                } else {\n                    $userPrompt = $question;\n                }\n\n                \/\/ Build system prompt hierarchy: Default -> Custom -> Style\n                if ($customSystemPrompt !== null && $customSystemPrompt !== '') {\n                    $systemPrompt = $customSystemPrompt;\n                } else {\n                    $systemPrompt = $hasContext\n                        ? $this->claude->getDefaultSystemPrompt()\n                        : 'Du bist ein hilfreicher Assistent. Antworte auf Deutsch, präzise und hilfreich.';\n                }\n\n                \/\/ Append style prompt from author profile if provided\n                if ($stylePrompt !== null && $stylePrompt !== '') {\n                    $systemPrompt .= \"\\n\\n\" . $stylePrompt;\n                }\n\n                $llmResponse = $this->claude->ask($userPrompt, $systemPrompt, $model, $maxTokens, $temperature);\n\n                $answer = $llmResponse['text'];\n                $usage = $llmResponse['usage'];\n            } catch (RuntimeException $e) {\n                throw new RuntimeException(\n                    'Claude API request failed: ' . $e->getMessage(),\n                    0,\n                    $e\n                );\n            }\n        } elseif ($isOllama) {\n            try {\n                \/\/ Extract actual model name (remove \"ollama:\" prefix)\n                $ollamaModel = substr($model, 7);\n\n                \/\/ Build instruction from custom prompt and style\n                $instructions = [];\n                if ($customSystemPrompt !== null && $customSystemPrompt !== '') {\n                    $instructions[] = $customSystemPrompt;\n                }\n                if ($stylePrompt !== null && $stylePrompt !== '') {\n                    $instructions[] = $stylePrompt;\n                }\n                $instructionBlock = $instructions !== [] ? implode(\"\\n\\n\", $instructions) . \"\\n\\n\" : '';\n\n                \/\/ Build prompt: RAG with context or direct question\n                if ($hasContext) {\n                    $userPrompt = sprintf(\n                        \"%sKontext aus den Dokumenten:\\n\\n%s\\n\\n---\\n\\nFrage: %s\",\n                        $instructionBlock,\n                        $context,\n                        $question\n                    );\n                } else {\n                    $userPrompt = $instructionBlock . $question;\n                }\n\n                $answer = $this->ollama->generate($userPrompt, $ollamaModel, $temperature);\n                $usage = null;\n            } catch (RuntimeException $e) {\n                throw new RuntimeException(\n                    'Ollama generation failed: ' . $e->getMessage(),\n                    0,\n                    $e\n                );\n            }\n        } else {\n            throw new RuntimeException(\n                sprintf('Unknown model \"%s\". Use claude-* or ollama:* format.', $model)\n            );\n        }\n\n        \/\/ Step 5: Extract source information\n        $sources = $this->extractSources($searchResults);\n\n        \/\/ Step 6: Assemble response\n        $response = [\n            'question' => $question,\n            'answer' => $answer,\n            'sources' => $sources,\n            'model' => $model,\n            'chunks_used' => count($searchResults),\n        ];\n\n        if ($usage !== null) {\n            $response['usage'] = $usage;\n        }\n\n        return $response;\n    }\n\n    \/**\n     * Builds a context string from search results.\n     *\n     * Concatenates the content from multiple search results into a single\n     * context string, respecting a maximum character limit. Each chunk is\n     * labeled with its source document title.\n     *\n     * @param array<int, array{id: int|string, score: float, payload: array<string, mixed>}> $searchResults Vector search results\n     * @param int                                                                             $maxTokens     Maximum tokens to include (default: 3000)\n     *\n     * @return string The built context string\n     *\/\n    private function buildContext(array $searchResults, int $maxTokens = 3000): string\n    {\n        $contextParts = [];\n        $totalChars = 0;\n        $maxChars = $maxTokens * 4; \/\/ Approximate: 1 token ~ 4 characters\n\n        foreach ($searchResults as $index => $result) {\n            $payload = $result['payload'];\n            \/\/ Support both payload schemas: documents + dokumentation_chunks\n            $content = (string) ($payload['content'] ?? $payload['content_preview'] ?? '');\n            $docTitle = (string) ($payload['document_title'] ?? $payload['title'] ?? 'Unbekannt');\n\n            \/\/ Check if adding this chunk would exceed the limit\n            if ($totalChars + strlen($content) > $maxChars) {\n                break;\n            }\n\n            $contextParts[] = sprintf('[Quelle %d: %s]%s%s', $index + 1, $docTitle, \"\\n\", $content);\n            $totalChars += strlen($content);\n        }\n\n        return implode... [TRUNCATED-651050a4d2282123]",
        "structuredPatch": [
            {
                "oldStart": 13,
                "oldLines": 16,
                "newStart": 13,
                "newLines": 18,
                "lines": [
                    "     \/**",
                    "      * Constructs a new ChatService instance.",
                    "      *",
                    "-     * @param OllamaService  $ollama  Ollama service for embeddings and optional LLM",
                    "-     * @param QdrantService  $qdrant  Qdrant service for vector search",
                    "-     * @param ClaudeService  $claude  Claude service for high-quality LLM responses",
                    "-     * @param ScoringService $scoring Scoring service for weighted result ranking",
                    "+     * @param OllamaService               $ollama     Ollama service for embeddings and optional LLM",
                    "+     * @param QdrantService               $qdrant     Qdrant service for vector search",
                    "+     * @param ClaudeService               $claude     Claude service for high-quality LLM responses",
                    "+     * @param ScoringService              $scoring    Scoring service for weighted result ranking",
                    "+     * @param SemanticEnrichmentService|null $semantic Optional semantic enrichment (graceful degradation)",
                    "      *\/",
                    "     public function __construct(",
                    "         private OllamaService $ollama,",
                    "         private QdrantService $qdrant,",
                    "         private ClaudeService $claude,",
                    "-        private ScoringService $scoring",
                    "+        private ScoringService $scoring,",
                    "+        private ?SemanticEnrichmentService $semantic = null",
                    "     ) {",
                    "     }",
                    " "
                ]
            }
        ],
        "userModified": false,
        "replaceAll": false
    }
}
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