twinmind-sdk-patterns
Apply production-ready TwinMind SDK patterns for TypeScript and Python. Use when implementing TwinMind integrations, refactoring API usage, or establishing team coding standards for meeting AI integration. Trigger with phrases like "twinmind SDK patterns", "twinmind best practices", "twinmind code patterns", "idiomatic twinmind".
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twinmind-pack
Claude Code skill pack for TwinMind (24 skills)
Installation
This skill is included in the twinmind-pack plugin:
/plugin install twinmind-pack@claude-code-plugins-plus
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Instructions
TwinMind SDK Patterns
Overview
Production patterns for TwinMind's AI memory and meeting intelligence REST API. TwinMind captures, organizes, and retrieves contextual memories from conversations and meetings.
Prerequisites
- TwinMind API key configured
- Understanding of REST API patterns
- Familiarity with memory/context retrieval concepts
Instructions
Step 1: Client Wrapper with Authentication
import requests
import os
class TwinMindClient:
def __init__(self, api_key: str = None, base_url: str = "https://api.twinmind.com/v1"):
self.api_key = api_key or os.environ["TWINMIND_API_KEY"]
self.base_url = base_url
self.session = requests.Session()
self.session.headers.update({
"Authorization": f"Bearer {self.api_key}",
"Content-Type": "application/json"
})
def _request(self, method: str, path: str, **kwargs):
response = self.session.request(method, f"{self.base_url}{path}", **kwargs)
response.raise_for_status()
return response.json()
Step 2: Memory Storage and Retrieval
class TwinMindClient:
# ... (continued from Step 1)
def store_memory(self, content: str, context: dict = None, tags: list = None) -> dict:
return self._request("POST", "/memories", json={
"content": content,
"context": context or {},
"tags": tags or [],
"timestamp": datetime.utcnow().isoformat()
})
def search_memories(self, query: str, limit: int = 10, tags: list = None) -> list:
params = {"q": query, "limit": limit}
if tags:
params["tags"] = ",".join(tags)
return self._request("GET", "/memories/search", params=params)
def get_memory(self, memory_id: str) -> dict:
return self._request("GET", f"/memories/{memory_id}")
Step 3: Meeting Context Integration
def create_meeting_context(self, meeting_id: str, transcript: str, participants: list) -> dict:
return self._request("POST", "/contexts/meeting", json={
"meeting_id": meeting_id,
"transcript": transcript,
"participants": participants,
"extract_action_items": True,
"extract_decisions": True
})
def get_meeting_insights(self, meeting_id: str) -> dict:
return self._request("GET", f"/contexts/meeting/{meeting_id}/insights")
Step 4: Batch Operations with Rate Limiting
import time
def batch_store_memories(client: TwinMindClient, memories: list, batch_size: int = 20):
results = []
for i in range(0, len(memories), batch_size):
batch = memories[i:i+batch_size]
for memory in batch:
try:
result = client.store_memory(**memory)
results.append({"status": "ok", "id": result["id"]})
except requests.HTTPError as e:
if e.response.status_code == 429: # HTTP 429 Too Many Requests
time.sleep(int(e.response.headers.get("Retry-After", 5)))
result = client.store_memory(**memory)
results.append({"status": "ok", "id": result["id"]})
else:
results.append({"status": "error", "error": str(e)})
time.sleep(1) # rate limit between batches
return results
Error Handling
| Error | Cause | Solution |
|---|---|---|
401 Unauthorized |
Invalid API key | Verify TWINMINDAPIKEY |
429 Rate Limited |
Too many requests | Respect Retry-After header |
404 Not Found |
Invalid memory/meeting ID | Validate IDs before lookup |
| Empty search results | Query too specific | Broaden query terms |
Examples
Full Meeting Workflow
client = TwinMindClient()
# After meeting ends
ctx = client.create_meeting_context(
meeting_id="mtg-123",
transcript=transcript_text,
participants=["alice@co.com", "bob@co.com"]
)
insights = client.get_meeting_insights("mtg-123")
for item in insights.get("action_items", []):
print(f"- [{item['assignee']}] {item['task']}")
Resources
Output
- Configuration files or code changes applied to the project
- Validation report confirming correct implementation
- Summary of changes made and their rationale