# Pola Awal Sesi Setiap sesi agen LLM harus mengikuti urutan startup kanonik ini. Melewatkan langkah mengarah pada konteks yang hilang, pesan yang terlewat, dan tugas yang terlupakan. ## Pola ``` 1. Recall all memories 2. Poll for unread chat messages 3. Check in-progress tasks 4. Build context from results 5. Process pending items before new work ``` ## Implementasi ### Langkah 1: Recall Semua Memori > [!CRITICAL] > Ini adalah panggilan terpenting. Tanpa ini, Anda tidak memiliki memori sesi > masa lalu. ```bash curl -H "Authorization: Bearer YOUR_MIND_KEY" \ https://synapse.schaefer.zone/memory/recall ``` Mengembalikan ringkasan teks polos dari semua memori, diurutkan berdasarkan prioritas. ### Langkah 2: Polling Pesan Chat Belum Dibaca ```bash curl -H "Authorization: Bearer YOUR_MIND_KEY" \ https://synapse.schaefer.zone/chat/poll ``` Mengembalikan pesan belum dibaca dari manusia. **Secara otomatis menandainya sebagai dibaca.** ### Langkah 3: Periksa Tugas yang Sedang Berjalan ```bash curl -H "Authorization: Bearer YOUR_MIND_KEY" \ "https://synapse.schaefer.zone/mind/tasks?status=in_progress" ``` Mengembalikan tugas yang sedang Anda kerjakan di sesi terakhir. ### Langkah 4: Bangun Konteks Gabungkan tiga respons ke dalam system prompt Anda: ```python def build_context(memories, messages, tasks): context = f"""# SESSION CONTEXT ## Memories (from previous sessions) {memories} ## Unread Messages from Human {format_messages(messages)} ## Active Tasks {format_tasks(tasks)} ## Instructions - Address unread messages first - Resume active tasks before starting new work - Store new learnings as they happen (POST /memory) - Poll for new messages every 30-60 seconds """ return context ``` ### Langkah 5: Proses Item Tertunda ``` For each unread message: - Acknowledge receipt (POST /chat/reply) - Address the message content - Store any new commitments as memories For each in-progress task: - Recall why you were working on it - Continue from where you left off - Update task status as you progress ``` ## Contoh Lengkap ```python import os import requests URL = "https://synapse.schaefer.zone" KEY = os.environ["SYNAPSE_MIND_KEY"] def session_start(): """Canonical session start sequence.""" headers = {"Authorization": f"Bearer {KEY}"} # 1. Recall memories r = requests.get(f"{URL}/memory/recall", headers=headers) memories = r.text # 2. Poll chat r = requests.get(f"{URL}/chat/poll", headers=headers) messages = r.json().get("messages", []) # 3. Check tasks r = requests.get(f"{URL}/mind/tasks?status=in_progress", headers=headers) tasks = r.json().get("tasks", []) # 4. Build context context = f"""You are a Synapse-enabled AI assistant. MEMORIES FROM PREVIOUS SESSIONS: {memories} UNREAD MESSAGES FROM HUMAN: {chr(10).join(f'- {m["content"]}' for m in messages) or 'None'} ACTIVE TASKS: {chr(10).join(f'- [{t["id"]}] {t["title"]}: {t.get("description", "")}' for t in tasks) or 'None'} INSTRUCTIONS: 1. Acknowledge each unread message 2. Resume active tasks 3. Store new learnings via POST /memory 4. Poll /chat/poll every 30-60 seconds """ return context # At session start system_prompt = session_start() # Pass to LLM... ``` ## Kesalahan Umum > [!WARNING] > - **Melewatkan recall** — Anda memulai tanpa konteks, mengulang kesalahan masa lalu > - **Lupa polling chat** — pesan manusia tidak dijawab > - **Mengabaikan tugas aktif** — pekerjaan terlupakan di tengah eksekusi > - **Tidak menyimpan apa pun** — sesi tidak menghasilkan nilai persisten ## Variasi ### Pola minimal (LLM konteks rendah) Untuk LLM dengan jendela konteks kecil, lewati recall penuh: ```bash # Just get stats, not full content curl -H "Authorization: Bearer $KEY" .../memory/stats ``` Kemudian cari topik spesifik sesuai kebutuhan: ```bash curl -H "Authorization: Bearer $KEY" ".../memory/search?q=current+project" ``` ### Pola agresif (agen berjalan lama) Untuk agen yang berjalan berjam-jam, tambahkan re-recall berkala: ```python while working: if time.time() - last_recall > 3600: # every hour memories = recall() last_recall = time.time() # ... do work ... ``` ## Langkah Berikutnya - [Strategi Penandaan Memori](/docs/llm-cookbook/memory-tagging-strategy) - [Alur Kerja Berbasis Tugas](/docs/llm-cookbook/task-driven-workflow) - [Pola Polling Chat](/docs/llm-cookbook/chat-polling-pattern)