plugins/faos-pm/skills/slack-bot-builder/SKILL.md
<!-- AUTO-GENERATED by export-plugins.py — DO NOT EDIT --> --- name: slack-bot-builder description: "Build Slack apps using the Bolt framework across Python, JavaScript, and Java. Covers Block Kit for rich UIs, interactive components, slash commands, event handling, OAuth installation flows, and Workflow Builder integration. Focus on best practices for production-ready Slack apps. Use when: slack bot, slack app, bolt framework, block kit, slash command." tags: [automation, integrations] --- # S
npx skillsauth add frank-luongt/faos-skills-marketplace plugins/faos-pm/skills/slack-bot-builderInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
The Bolt framework is Slack's recommended approach for building apps. It handles authentication, event routing, request verification, and HTTP request processing so you can focus on app logic.
Key benefits:
Available in: Python, JavaScript (Node.js), Java
When to use: ['Starting any new Slack app', 'Migrating from legacy Slack APIs', 'Building production Slack integrations']
# Python Bolt App
from slack_bolt import App
from slack_bolt.adapter.socket_mode import SocketModeHandler
import os
# Initialize with tokens from environment
app = App(
token=os.environ["SLACK_BOT_TOKEN"],
signing_secret=os.environ["SLACK_SIGNING_SECRET"]
)
# Handle messages containing "hello"
@app.message("hello")
def handle_hello(message, say):
"""Respond to messages containing 'hello'."""
user = message["user"]
say(f"Hey there <@{user}>!")
# Handle slash command
@app.command("/ticket")
def handle_ticket_command(ack, body, client):
"""Handle /ticket slash command."""
# Acknowledge immediately (within 3 seconds)
ack()
# Open a modal for ticket creation
client.views_open(
trigger_id=body["trigger_id"],
view={
"type": "modal",
"callback_id": "ticket_modal",
"title": {"type": "plain_text", "text": "Create Ticket"},
"submit": {"type": "plain_text", "text": "Submit"},
"blocks": [
{
"type": "input",
"block_id": "title_block",
"element": {
"type": "plain_text_input",
"action_id": "title_input"
},
"label": {"type": "plain_text", "text": "Title"}
},
{
"type": "input",
"block_id": "desc_block",
"element": {
"type": "plain_text_input",
"multiline": True,
"action_id": "desc_input"
},
"label": {"type": "plain_text", "text": "Description"}
},
{
"type": "input",
"block_id": "priority_block",
"element": {
"type": "static_select",
"action_id": "priority_select",
Block Kit is Slack's UI framework for building rich, interactive messages. Compose messages using blocks (sections, actions, inputs) and elements (buttons, menus, text inputs).
Limits:
Use Block Kit Builder to prototype: https://app.slack.com/block-kit-builder
When to use: ['Building rich message layouts', 'Adding interactive components to messages', 'Creating forms in modals', 'Building Home tab experiences']
from slack_bolt import App
import os
app = App(token=os.environ["SLACK_BOT_TOKEN"])
def build_notification_blocks(incident: dict) -> list:
"""Build Block Kit blocks for incident notification."""
severity_emoji = {
"critical": ":red_circle:",
"high": ":large_orange_circle:",
"medium": ":large_yellow_circle:",
"low": ":white_circle:"
}
return [
# Header
{
"type": "header",
"text": {
"type": "plain_text",
"text": f"{severity_emoji.get(incident['severity'], '')} Incident Alert"
}
},
# Details section
{
"type": "section",
"fields": [
{
"type": "mrkdwn",
"text": f"*Incident:*\n{incident['title']}"
},
{
"type": "mrkdwn",
"text": f"*Severity:*\n{incident['severity'].upper()}"
},
{
"type": "mrkdwn",
"text": f"*Service:*\n{incident['service']}"
},
{
"type": "mrkdwn",
"text": f"*Reported:*\n<!date^{incident['timestamp']}^{date_short} {time}|{incident['timestamp']}>"
}
]
},
# Description
{
"type": "section",
"text": {
"type": "mrkdwn",
"text": f"*Description:*\n{incident['description'][:2000]}"
}
},
# Divider
{"type": "divider"},
# Action buttons
{
"type": "actions",
"block_id": f"incident_actions_{incident['id']}",
"elements": [
{
"type": "button",
"text": {"type": "plain_text", "text": "Acknowledge"},
"style": "primary",
"action_id": "acknowle
Enable users to install your app in their workspaces via OAuth 2.0. Bolt handles most of the OAuth flow, but you need to configure it and store tokens securely.
Key OAuth concepts:
70% of users abandon installation when confronted with excessive permission requests - request only what you need!
When to use: ['Distributing app to multiple workspaces', 'Building public Slack apps', 'Enterprise-grade integrations']
from slack_bolt import App
from slack_bolt.oauth.oauth_settings import OAuthSettings
from slack_sdk.oauth.installation_store import FileInstallationStore
from slack_sdk.oauth.state_store import FileOAuthStateStore
import os
# For production, use database-backed stores
# For example: PostgreSQL, MongoDB, Redis
class DatabaseInstallationStore:
"""Store installation data in your database."""
async def save(self, installation):
"""Save installation when user completes OAuth."""
await db.installations.upsert({
"team_id": installation.team_id,
"enterprise_id": installation.enterprise_id,
"bot_token": encrypt(installation.bot_token),
"bot_user_id": installation.bot_user_id,
"bot_scopes": installation.bot_scopes,
"user_id": installation.user_id,
"installed_at": installation.installed_at
})
async def find_installation(self, *, enterprise_id, team_id, user_id=None, is_enterprise_install=False):
"""Find installation for a workspace."""
record = await db.installations.find_one({
"team_id": team_id,
"enterprise_id": enterprise_id
})
if record:
return Installation(
bot_token=decrypt(record["bot_token"]),
# ... other fields
)
return None
# Initialize OAuth-enabled app
app = App(
signing_secret=os.environ["SLACK_SIGNING_SECRET"],
oauth_settings=OAuthSettings(
client_id=os.environ["SLACK_CLIENT_ID"],
client_secret=os.environ["SLACK_CLIENT_SECRET"],
scopes=[
"channels:history",
"channels:read",
"chat:write",
"commands",
"users:read"
],
user_scopes=[], # User token scopes if needed
installation_store=DatabaseInstallationStore(),
state_store=FileOAuthStateStore(expiration_seconds=600)
)
)
# OAuth routes are handled a
| Issue | Severity | Solution | |-------|----------|----------| | Issue | critical | ## Acknowledge immediately, process later | | Issue | critical | ## Proper state validation | | Issue | critical | ## Never hardcode or log tokens | | Issue | high | ## Request minimum required scopes | | Issue | medium | ## Know and respect the limits | | Issue | high | ## Socket Mode: Only for development | | Issue | critical | ## Bolt handles this automatically |
<!-- Source: .faos/custom/skills/integrations/slack-bot-builder/SKILL.md -->development
<!-- AUTO-GENERATED by export-skills.py — DO NOT EDIT --> --- name: databricks-mlflow-evaluation --- # MLflow 3 GenAI Evaluation ## Before Writing Any Code 1. **Read GOTCHAS.md** - 15+ common mistakes that cause failures 2. **Read CRITICAL-interfaces.md** - Exact API signatures and data schemas ## End-to-End Workflows Follow these workflows based on your goal. Each step indicates which reference files to read. ### Workflow 1: First-Time Evaluation Setup For users new to MLflow GenAI evalu
development
<!-- AUTO-GENERATED by export-skills.py — DO NOT EDIT --> --- name: databricks-lakebase-provisioned --- # Lakebase Provisioned Patterns and best practices for using Lakebase Provisioned (Databricks managed PostgreSQL) for OLTP workloads. ## When to Use Use this skill when: - Building applications that need a PostgreSQL database for transactional workloads - Adding persistent state to Databricks Apps - Implementing reverse ETL from Delta Lake to an operational database - Storing chat/agent m
tools
<!-- AUTO-GENERATED by export-skills.py — DO NOT EDIT --> --- name: databricks-jobs --- # Databricks Lakeflow Jobs ## Overview Databricks Jobs orchestrate data workflows with multi-task DAGs, flexible triggers, and comprehensive monitoring. Jobs support diverse task types and can be managed via Python SDK, CLI, or Asset Bundles. ## Reference Files | Use Case | Reference File | | ----------------------
development
<!-- AUTO-GENERATED by export-skills.py — DO NOT EDIT --> --- name: databricks-genie --- # Databricks Genie Create and query Databricks Genie Spaces - natural language interfaces for SQL-based data exploration. ## Overview Genie Spaces allow users to ask natural language questions about structured data in Unity Catalog. The system translates questions into SQL queries, executes them on a SQL warehouse, and presents results conversationally. ## When to Use This Skill Use this skill when: -