DevOps & Scaling

AWS Lambda + CaptchaAI: Serverless CAPTCHA Solving

AWS Lambda handles CAPTCHA solving without managing servers. Pay only when solving, scale automatically, and integrate with API Gateway, SQS, or Step Functions.


Lambda Handler

# lambda_function.py
import json
import os
import time
import urllib.request
import urllib.parse


def lambda_handler(event, context):
    """AWS Lambda handler for CaptchaAI solving."""
    api_key = os.environ["CAPTCHAAI_KEY"]

    # Parse input
    body = json.loads(event.get("body", "{}")) if isinstance(event.get("body"), str) else event

    method = body.get("method", "userrecaptcha")
    params = body.get("params", {})

    try:
        token = solve_captcha(api_key, method, params)
        return {
            "statusCode": 200,
            "body": json.dumps({"token": token}),
        }
    except Exception as e:
        return {
            "statusCode": 500,
            "body": json.dumps({"error": str(e)}),
        }


def solve_captcha(api_key, method, params, timeout=90):
    """Solve CAPTCHA using CaptchaAI API."""
    # Submit task
    submit_data = urllib.parse.urlencode({
        "key": api_key,
        "method": method,
        "json": 1,
        **params,
    }).encode()

    req = urllib.request.Request(
        "https://ocr.captchaai.com/in.php",
        data=submit_data,
    )
    with urllib.request.urlopen(req, timeout=30) as resp:
        result = json.loads(resp.read())

    if result.get("status") != 1:
        raise RuntimeError(f"Submit error: {result.get('request')}")

    task_id = result["request"]

    # Poll for result
    start = time.time()
    while time.time() - start < timeout:
        time.sleep(5)
        poll_url = (
            f"https://ocr.captchaai.com/res.php"
            f"?key={api_key}&action=get&id={task_id}&json=1"
        )
        with urllib.request.urlopen(poll_url, timeout=15) as resp:
            data = json.loads(resp.read())

        if data["request"] != "CAPCHA_NOT_READY":
            if data.get("status") == 1:
                return data["request"]
            raise RuntimeError(f"Solve error: {data['request']}")

    raise TimeoutError("Solve timeout")

Secure API Key with Secrets Manager

import json
import boto3


def get_api_key():
    """Retrieve CaptchaAI key from AWS Secrets Manager."""
    client = boto3.client("secretsmanager")
    response = client.get_secret_value(SecretId="captchaai/api-key")
    secret = json.loads(response["SecretString"])
    return secret["api_key"]

Store the secret:

aws secretsmanager create-secret \
  --name captchaai/api-key \
  --secret-string '{"api_key":"YOUR_API_KEY"}'

SAM Template (Infrastructure as Code)

# template.yaml
AWSTemplateFormatVersion: "2010-09-09"
Transform: AWS::Serverless-2016-10-31

Globals:
  Function:
    Timeout: 120
    MemorySize: 256
    Runtime: python3.11

Resources:
  CaptchaSolverFunction:
    Type: AWS::Serverless::Function
    Properties:
      Handler: lambda_function.lambda_handler
      Environment:
        Variables:
          CAPTCHAAI_KEY: !Sub "{{resolve:secretsmanager:captchaai/api-key:SecretString:api_key}}"
      Events:
        SolveApi:
          Type: Api
          Properties:
            Path: /solve
            Method: post
      Policies:

        - AWSSecretsManagerGetSecretValuePolicy:
            SecretArn: !Sub "arn:aws:secretsmanager:${AWS::Region}:${AWS::AccountId}:secret:captchaai/api-key-*"

Outputs:
  SolveApiUrl:
    Value: !Sub "https://${ServerlessRestApi}.execute-api.${AWS::Region}.amazonaws.com/Prod/solve"

Deploy

# Build and deploy
sam build
sam deploy --guided

# Test
curl -X POST https://YOUR_API_ID.execute-api.us-east-1.amazonaws.com/Prod/solve \
  -H "Content-Type: application/json" \
  -d '{
    "method": "userrecaptcha",
    "params": {
      "googlekey": "SITE_KEY",
      "pageurl": "https://example.com"
    }
  }'

SQS-Triggered Batch Processing

Process CAPTCHA tasks from an SQS queue:

import json
import os
import time
import urllib.request
import urllib.parse


def sqs_handler(event, context):
    """Process CAPTCHA tasks from SQS queue."""
    api_key = os.environ["CAPTCHAAI_KEY"]
    results = []

    for record in event["Records"]:
        task = json.loads(record["body"])
        try:
            token = solve_captcha(
                api_key,
                task["method"],
                task["params"],
            )
            results.append({
                "task_id": task.get("id"),
                "status": "success",
                "token": token[:50],
            })
        except Exception as e:
            results.append({
                "task_id": task.get("id"),
                "status": "error",
                "error": str(e),
            })

    return {"results": results}

Lambda Considerations

Factor Value
Max timeout 15 minutes (set to 2 min for most CAPTCHAs)
Memory 256 MB sufficient (no heavy processing)
Concurrency Default 1000 concurrent (request increase if needed)
Cold start ~500ms for Python (negligible vs solve time)
Cost ~$0.0001 per solve (compute only)
Dependencies Use urllib (built-in) to avoid Lambda layers

Troubleshooting

Issue Cause Fix
Function times out Lambda timeout < solve time Set timeout to 120s+
Permission denied on secret Missing IAM policy Add SecretsManager read policy
Cold start adds latency Infrequent invocations Use provisioned concurrency
Import error for requests Not bundled in Lambda Use urllib.request (built-in) or add layer

FAQ

Is Lambda cost-effective for CAPTCHA solving?

Yes. At ~$0.0001 per invocation (256MB, 60s), Lambda adds negligible cost on top of the CaptchaAI API fee. You avoid server costs during idle time.

What about Lambda's 15-minute timeout?

Most CAPTCHAs solve in 10-60 seconds. Set your Lambda timeout to 120 seconds. For complex types like reCAPTCHA Enterprise, use 180 seconds.

Can I use Lambda layers for the requests library?

Yes, but urllib.request (built-in) works fine for CaptchaAI's simple HTTP API. This avoids layer management entirely.



Go serverless — get your CaptchaAI key today.

Full Working Code

Complete runnable examples for this article in Python, Node.js, PHP, Go, Java, C#, Ruby, Rust, Kotlin & Bash.

View on GitHub →

Discussions (0)

No comments yet.