ai-automation-workflows
Build automated AI workflows combining multiple models and services. Patterns: batch processing, scheduled tasks, event-driven pipelines, agent loops. Tools: inference.sh CLI, bash scripting, Python SDK, webhook integration. Use for: content automation, data processing, monitoring, scheduled generation. Triggers: ai automation, workflow automation, batch processing, ai pipeline, automated content, scheduled ai, ai cron, ai batch job, automated generation, ai workflow, content at scale, automation script, ai orchestration
Best use case
ai-automation-workflows is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Build automated AI workflows combining multiple models and services. Patterns: batch processing, scheduled tasks, event-driven pipelines, agent loops. Tools: inference.sh CLI, bash scripting, Python SDK, webhook integration. Use for: content automation, data processing, monitoring, scheduled generation. Triggers: ai automation, workflow automation, batch processing, ai pipeline, automated content, scheduled ai, ai cron, ai batch job, automated generation, ai workflow, content at scale, automation script, ai orchestration
Teams using ai-automation-workflows should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/ai-automation-workflows/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How ai-automation-workflows Compares
| Feature / Agent | ai-automation-workflows | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Build automated AI workflows combining multiple models and services. Patterns: batch processing, scheduled tasks, event-driven pipelines, agent loops. Tools: inference.sh CLI, bash scripting, Python SDK, webhook integration. Use for: content automation, data processing, monitoring, scheduled generation. Triggers: ai automation, workflow automation, batch processing, ai pipeline, automated content, scheduled ai, ai cron, ai batch job, automated generation, ai workflow, content at scale, automation script, ai orchestration
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
Related Guides
SKILL.md Source
# AI Automation Workflows
Build automated AI workflows via [inference.sh](https://inference.sh) CLI.

## Quick Start
```bash
curl -fsSL https://cli.inference.sh | sh && infsh login
# Simple automation: Generate daily image
infsh app run falai/flux-dev --input '{
"prompt": "Inspirational quote background, minimalist design, date: '"$(date +%Y-%m-%d)"'"
}'
```
> **Install note:** The [install script](https://cli.inference.sh) only detects your OS/architecture, downloads the matching binary from `dist.inference.sh`, and verifies its SHA-256 checksum. No elevated permissions or background processes. [Manual install & verification](https://dist.inference.sh/cli/checksums.txt) available.
## Automation Patterns
### Pattern 1: Batch Processing
Process multiple items with the same workflow.
```bash
#!/bin/bash
# batch_images.sh - Generate images for multiple prompts
PROMPTS=(
"Mountain landscape at sunrise"
"Ocean waves at sunset"
"Forest path in autumn"
"Desert dunes at night"
)
for prompt in "${PROMPTS[@]}"; do
echo "Generating: $prompt"
infsh app run falai/flux-dev --input "{
\"prompt\": \"$prompt, professional photography, 4K\"
}" > "output_${prompt// /_}.json"
sleep 2 # Rate limiting
done
```
### Pattern 2: Sequential Pipeline
Chain multiple AI operations.
```bash
#!/bin/bash
# content_pipeline.sh - Full content creation pipeline
TOPIC="AI in healthcare"
# Step 1: Research
echo "Researching..."
RESEARCH=$(infsh app run tavily/search-assistant --input "{
\"query\": \"$TOPIC latest developments\"
}")
# Step 2: Write article
echo "Writing article..."
ARTICLE=$(infsh app run openrouter/claude-sonnet-45 --input "{
\"prompt\": \"Write a 500-word blog post about $TOPIC based on: $RESEARCH\"
}")
# Step 3: Generate image
echo "Generating image..."
IMAGE=$(infsh app run falai/flux-dev --input "{
\"prompt\": \"Blog header image for article about $TOPIC, modern, professional\"
}")
# Step 4: Generate social post
echo "Creating social post..."
SOCIAL=$(infsh app run openrouter/claude-haiku-45 --input "{
\"prompt\": \"Write a Twitter thread (5 tweets) summarizing: $ARTICLE\"
}")
echo "Pipeline complete!"
```
### Pattern 3: Parallel Processing
Run multiple operations simultaneously.
```bash
#!/bin/bash
# parallel_generation.sh - Generate multiple assets in parallel
# Start all jobs in background
infsh app run falai/flux-dev --input '{"prompt": "Hero image..."}' > hero.json &
PID1=$!
infsh app run falai/flux-dev --input '{"prompt": "Feature image 1..."}' > feature1.json &
PID2=$!
infsh app run falai/flux-dev --input '{"prompt": "Feature image 2..."}' > feature2.json &
PID3=$!
# Wait for all to complete
wait $PID1 $PID2 $PID3
echo "All images generated!"
```
### Pattern 4: Conditional Workflow
Branch based on results.
```bash
#!/bin/bash
# conditional_workflow.sh - Process based on content analysis
INPUT_TEXT="$1"
# Analyze content
ANALYSIS=$(infsh app run openrouter/claude-haiku-45 --input "{
\"prompt\": \"Classify this text as: positive, negative, or neutral. Return only the classification.\n\n$INPUT_TEXT\"
}")
# Branch based on result
case "$ANALYSIS" in
*positive*)
echo "Generating celebration image..."
infsh app run falai/flux-dev --input '{"prompt": "Celebration, success, happy"}'
;;
*negative*)
echo "Generating supportive message..."
infsh app run openrouter/claude-sonnet-45 --input "{
\"prompt\": \"Write a supportive, encouraging response to: $INPUT_TEXT\"
}"
;;
*)
echo "Generating neutral acknowledgment..."
;;
esac
```
### Pattern 5: Retry with Fallback
Handle failures gracefully.
```bash
#!/bin/bash
# retry_workflow.sh - Retry failed operations
generate_with_retry() {
local prompt="$1"
local max_attempts=3
local attempt=1
while [ $attempt -le $max_attempts ]; do
echo "Attempt $attempt..."
result=$(infsh app run falai/flux-dev --input "{\"prompt\": \"$prompt\"}" 2>&1)
if [ $? -eq 0 ]; then
echo "$result"
return 0
fi
echo "Failed, retrying..."
((attempt++))
sleep $((attempt * 2)) # Exponential backoff
done
# Fallback to different model
echo "Falling back to alternative model..."
infsh app run google/imagen-3 --input "{\"prompt\": \"$prompt\"}"
}
generate_with_retry "A beautiful sunset over mountains"
```
## Scheduled Automation
### Cron Job Setup
```bash
# Edit crontab
crontab -e
# Daily content generation at 9 AM
0 9 * * * /path/to/daily_content.sh >> /var/log/ai-automation.log 2>&1
# Weekly report every Monday at 8 AM
0 8 * * 1 /path/to/weekly_report.sh >> /var/log/ai-automation.log 2>&1
# Every 6 hours: social media content
0 */6 * * * /path/to/social_content.sh >> /var/log/ai-automation.log 2>&1
```
### Daily Content Script
```bash
#!/bin/bash
# daily_content.sh - Run daily at 9 AM
DATE=$(date +%Y-%m-%d)
OUTPUT_DIR="/output/$DATE"
mkdir -p "$OUTPUT_DIR"
# Generate daily quote image
infsh app run falai/flux-dev --input '{
"prompt": "Motivational quote background, minimalist, morning vibes"
}' > "$OUTPUT_DIR/quote_image.json"
# Generate daily tip
infsh app run openrouter/claude-haiku-45 --input '{
"prompt": "Give me one actionable productivity tip for today. Be concise."
}' > "$OUTPUT_DIR/daily_tip.json"
# Post to social (optional)
# infsh app run twitter/post-tweet --input "{...}"
echo "Daily content generated: $DATE"
```
## Monitoring and Logging
### Logging Wrapper
```bash
#!/bin/bash
# logged_workflow.sh - With comprehensive logging
LOG_FILE="/var/log/ai-workflow-$(date +%Y%m%d).log"
log() {
echo "[$(date '+%Y-%m-%d %H:%M:%S')] $1" | tee -a "$LOG_FILE"
}
log "Starting workflow"
# Track execution time
START_TIME=$(date +%s)
# Run workflow
log "Generating image..."
RESULT=$(infsh app run falai/flux-dev --input '{"prompt": "test"}' 2>&1)
STATUS=$?
if [ $STATUS -eq 0 ]; then
log "Success: Image generated"
else
log "Error: $RESULT"
fi
END_TIME=$(date +%s)
DURATION=$((END_TIME - START_TIME))
log "Completed in ${DURATION}s"
```
### Error Alerting
```bash
#!/bin/bash
# monitored_workflow.sh - With error alerts
run_with_alert() {
local result
result=$("$@" 2>&1)
local status=$?
if [ $status -ne 0 ]; then
# Send alert (webhook, email, etc.)
curl -X POST "https://your-webhook.com/alert" \
-H "Content-Type: application/json" \
-d "{\"error\": \"$result\", \"command\": \"$*\"}"
fi
echo "$result"
return $status
}
run_with_alert infsh app run falai/flux-dev --input '{"prompt": "test"}'
```
## Python SDK Automation
```python
#!/usr/bin/env python3
# automation.py - Python-based workflow
import subprocess
import json
from datetime import datetime
from pathlib import Path
def run_infsh(app_id: str, input_data: dict) -> dict:
"""Run inference.sh app and return result."""
result = subprocess.run(
["infsh", "app", "run", app_id, "--input", json.dumps(input_data)],
capture_output=True,
text=True
)
return json.loads(result.stdout) if result.returncode == 0 else None
def daily_content_pipeline():
"""Generate daily content."""
date_str = datetime.now().strftime("%Y-%m-%d")
output_dir = Path(f"output/{date_str}")
output_dir.mkdir(parents=True, exist_ok=True)
# Generate image
image = run_infsh("falai/flux-dev", {
"prompt": f"Daily inspiration for {date_str}, beautiful, uplifting"
})
(output_dir / "image.json").write_text(json.dumps(image))
# Generate caption
caption = run_infsh("openrouter/claude-haiku-45", {
"prompt": "Write an inspiring caption for a daily motivation post. 2-3 sentences."
})
(output_dir / "caption.json").write_text(json.dumps(caption))
print(f"Generated content for {date_str}")
if __name__ == "__main__":
daily_content_pipeline()
```
## Workflow Templates
### Content Calendar Automation
```bash
#!/bin/bash
# content_calendar.sh - Generate week of content
TOPICS=("productivity" "wellness" "technology" "creativity" "leadership")
DAYS=("Monday" "Tuesday" "Wednesday" "Thursday" "Friday")
for i in "${!DAYS[@]}"; do
DAY=${DAYS[$i]}
TOPIC=${TOPICS[$i]}
echo "Generating $DAY content about $TOPIC..."
# Image
infsh app run falai/flux-dev --input "{
\"prompt\": \"$TOPIC theme, $DAY motivation, social media style\"
}" > "content/${DAY}_image.json"
# Caption
infsh app run openrouter/claude-haiku-45 --input "{
\"prompt\": \"Write a $DAY motivation post about $TOPIC. Include hashtags.\"
}" > "content/${DAY}_caption.json"
done
```
### Data Processing Pipeline
```bash
#!/bin/bash
# data_processing.sh - Process and analyze data files
INPUT_DIR="./data/raw"
OUTPUT_DIR="./data/processed"
for file in "$INPUT_DIR"/*.txt; do
filename=$(basename "$file" .txt)
# Analyze content
infsh app run openrouter/claude-haiku-45 --input "{
\"prompt\": \"Analyze this data and provide key insights in JSON format: $(cat $file)\"
}" > "$OUTPUT_DIR/${filename}_analysis.json"
done
```
## Best Practices
1. **Rate limiting** - Add delays between API calls
2. **Error handling** - Always check return codes
3. **Logging** - Track all operations
4. **Idempotency** - Design for safe re-runs
5. **Monitoring** - Alert on failures
6. **Backups** - Save intermediate results
7. **Timeouts** - Set reasonable limits
## Related Skills
```bash
# Content pipelines
npx skills add inference-sh/skills@ai-content-pipeline
# RAG pipelines
npx skills add inference-sh/skills@ai-rag-pipeline
# Social media automation
npx skills add inference-sh/skills@ai-social-media-content
# Full platform skill
npx skills add inference-sh/skills@inference-sh
```
Browse all apps: `infsh app list`Related Skills
google-sheets-automation
Google Sheets Automation - Auto-activating skill for Business Automation. Triggers on: google sheets automation, google sheets automation Part of the Business Automation skill category.
building-gitops-workflows
This skill enables Claude to construct GitOps workflows using ArgoCD and Flux. It is designed to generate production-ready configurations, implement best practices, and ensure a security-first approach for Kubernetes deployments. Use this skill when the user explicitly requests "GitOps workflow", "ArgoCD", "Flux", or asks for help with setting up a continuous delivery pipeline using GitOps principles. The skill will generate the necessary configuration files and setup code based on the user's specific requirements and infrastructure.
cursor-composer-workflows
Master Cursor Composer for multi-file AI editing, scaffolding, and refactoring. Triggers on "cursor composer", "multi-file edit", "cursor generate files", "composer workflow", "cursor scaffold", "Cmd+I".
playwright-automation-fill-in-form
Automate filling in a form using Playwright MCP
deployment-automation
Automate application deployment to cloud platforms and servers. Use when setting up CI/CD pipelines, deploying to Docker/Kubernetes, or configuring cloud infrastructure. Handles GitHub Actions, Docker, Kubernetes, AWS, Vercel, and deployment best practices.
zoom-automation
Automate Zoom meeting creation, management, recordings, webinars, and participant tracking via Rube MCP (Composio). Always search tools first for current schemas.
zoho-crm-automation
Automate Zoho CRM tasks via Rube MCP (Composio): create/update records, search contacts, manage leads, and convert leads. Always search tools first for current schemas.
zendesk-automation
Automate Zendesk tasks via Rube MCP (Composio): tickets, users, organizations, replies. Always search tools first for current schemas.
youtube-automation
Automate YouTube tasks via Rube MCP (Composio): upload videos, manage playlists, search content, get analytics, and handle comments. Always search tools first for current schemas.
wrike-automation
Automate Wrike project management via Rube MCP (Composio): create tasks/folders, manage projects, assign work, and track progress. Always search tools first for current schemas.
workflow-automation
Workflow automation is the infrastructure that makes AI agents reliable. Without durable execution, a network hiccup during a 10-step payment flow means lost money and angry customers. With it, workflows resume exactly where they left off. This skill covers the platforms (n8n, Temporal, Inngest) and patterns (sequential, parallel, orchestrator-worker) that turn brittle scripts into production-grade automation. Key insight: The platforms make different tradeoffs. n8n optimizes for accessibility
whatsapp-automation
Automate WhatsApp Business tasks via Rube MCP (Composio): send messages, manage templates, upload media, and handle contacts. Always search tools first for current schemas.