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AI-Trader/docs/user-guide/using-the-api.md
Bill b3debc125f docs: restructure documentation for improved clarity and navigation
Reorganize documentation into user-focused, developer-focused, and deployment-focused sections.

**New structure:**
- Root: README.md (streamlined), QUICK_START.md, API_REFERENCE.md
- docs/user-guide/: configuration, API usage, integrations, troubleshooting
- docs/developer/: contributing, development setup, testing, architecture
- docs/deployment/: Docker deployment, production checklist, monitoring
- docs/reference/: environment variables, MCP tools, data formats

**Changes:**
- Streamline README.md from 831 to 469 lines
- Create QUICK_START.md for 5-minute onboarding
- Create API_REFERENCE.md as single source of truth for API
- Remove 9 outdated specification docs (v0.2.0 API design)
- Remove DOCKER_API.md (content consolidated into new structure)
- Remove docs/plans/ directory with old design documents
- Update CLAUDE.md with documentation structure guide
- Remove orchestration-specific references

**Benefits:**
- Clear entry points for different audiences
- No content duplication
- Better discoverability through logical hierarchy
- All content reflects current v0.3.0 API
2025-11-01 10:40:57 -04:00

4.0 KiB

Using the API

Common workflows and best practices for AI-Trader API.


Basic Workflow

1. Trigger Simulation

curl -X POST http://localhost:8080/simulate/trigger \
  -H "Content-Type: application/json" \
  -d '{
    "start_date": "2025-01-16",
    "end_date": "2025-01-17",
    "models": ["gpt-4"]
  }'

Save the job_id from response.

2. Poll for Completion

JOB_ID="your-job-id-here"

while true; do
  STATUS=$(curl -s http://localhost:8080/simulate/status/$JOB_ID | jq -r '.status')
  echo "Status: $STATUS"
  
  if [[ "$STATUS" == "completed" ]] || [[ "$STATUS" == "partial" ]] || [[ "$STATUS" == "failed" ]]; then
    break
  fi
  
  sleep 10
done

3. Retrieve Results

curl "http://localhost:8080/results?job_id=$JOB_ID" | jq '.'

Common Patterns

Single-Day Simulation

Omit end_date to simulate just one day:

curl -X POST http://localhost:8080/simulate/trigger \
  -d '{"start_date": "2025-01-16", "models": ["gpt-4"]}'

All Enabled Models

Omit models to run all enabled models from config:

curl -X POST http://localhost:8080/simulate/trigger \
  -d '{"start_date": "2025-01-16", "end_date": "2025-01-20"}'

Filter Results

# By date
curl "http://localhost:8080/results?date=2025-01-16"

# By model
curl "http://localhost:8080/results?model=gpt-4"

# Combined
curl "http://localhost:8080/results?job_id=$JOB_ID&date=2025-01-16&model=gpt-4"

Best Practices

1. Check Health Before Triggering

curl http://localhost:8080/health

# Only proceed if status is "healthy"

2. Use Exponential Backoff for Retries

import time
import requests

def trigger_with_retry(max_retries=3):
    for attempt in range(max_retries):
        try:
            response = requests.post(
                "http://localhost:8080/simulate/trigger",
                json={"start_date": "2025-01-16"}
            )
            response.raise_for_status()
            return response.json()
        except requests.HTTPError as e:
            if e.response.status_code == 400:
                # Don't retry on validation errors
                raise
            wait = 2 ** attempt  # 1s, 2s, 4s
            time.sleep(wait)
    
    raise Exception("Max retries exceeded")

3. Handle Concurrent Job Conflicts

response = requests.post(
    "http://localhost:8080/simulate/trigger",
    json={"start_date": "2025-01-16"}
)

if response.status_code == 400 and "already running" in response.json()["detail"]:
    print("Another job is running. Waiting...")
    # Wait and retry, or query existing job status

4. Monitor Progress with Details

def get_detailed_progress(job_id):
    response = requests.get(f"http://localhost:8080/simulate/status/{job_id}")
    status = response.json()
    
    print(f"Overall: {status['status']}")
    print(f"Progress: {status['progress']['completed']}/{status['progress']['total_model_days']}")
    
    # Show per-model-day status
    for detail in status['details']:
        print(f"  {detail['trading_date']} {detail['model_signature']}: {detail['status']}")

Error Handling

Validation Errors (400)

try:
    response = requests.post(
        "http://localhost:8080/simulate/trigger",
        json={"start_date": "2025-1-16"}  # Wrong format
    )
    response.raise_for_status()
except requests.HTTPError as e:
    if e.response.status_code == 400:
        print(f"Validation error: {e.response.json()['detail']}")
        # Fix input and retry

Service Unavailable (503)

try:
    response = requests.post(
        "http://localhost:8080/simulate/trigger",
        json={"start_date": "2025-01-16"}
    )
    response.raise_for_status()
except requests.HTTPError as e:
    if e.response.status_code == 503:
        print("Service unavailable (likely price data download failed)")
        # Retry later or check ALPHAADVANTAGE_API_KEY

See API_REFERENCE.md for complete endpoint documentation.