Sessiestart-patroon
De canonieke sessiestart-sequentie die elke LLM-agent moet volgen.
Sessiestart-patroon
Elke LLM-agent-sessie moet deze canonieke opstartsequentie volgen. Stappen overslaan leidt tot verloren context, gemiste berichten en vergeten taken.
Het patroon
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 workImplementatie
Stap 1: Alle herinneringen ophalen
Dit is de belangrijkste aanroep. Zonder deze heeft u geen geheugen van eerdere
sessies.
curl -H "Authorization: Bearer YOUR_MIND_KEY" \
https://synapse.schaefer.zone/memory/recallRetourneert platte-tekst samenvatting van alle herinneringen, gesorteerd op prioriteit.
Stap 2: Poll voor ongelezen chatberichten
curl -H "Authorization: Bearer YOUR_MIND_KEY" \
https://synapse.schaefer.zone/chat/pollRetourneert ongelezen berichten van de mens. Markeert ze automatisch als gelezen.
Stap 3: Controleer lopende taken
curl -H "Authorization: Bearer YOUR_MIND_KEY" \
"https://synapse.schaefer.zone/mind/tasks?status=in_progress"Retourneert taken waaraan u in de laatste sessie werkte.
Stap 4: Bouw context
Combineer de drie responsen in uw system prompt:
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 contextStap 5: Verwerk in behandeling zijnde items
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 progressVolledig voorbeeld
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...Veelvoorkomende fouten
Variaties
Minimaal patroon (low-context LLM's)
Voor LLM's met kleine contextvensters, sla de volledige recall over:
# Just get stats, not full content
curl -H "Authorization: Bearer $KEY" .../memory/statsZoek dan naar specifieke onderwerpen indien nodig:
curl -H "Authorization: Bearer $KEY" ".../memory/search?q=current+project"Agressief patroon (langlopende agents)
Voor agents die uren draaien, voeg periodieke re-recall toe:
while working:
if time.time() - last_recall > 3600: # every hour
memories = recall()
last_recall = time.time()
# ... do work ...