I have a client that is constantly pouring semi-real-time data into an sqs queue, and want to process and store the messages. My first thought was to use a CloudWatch scheduler that prompts a Lambda with the approximate number of messages that lambda then spawns worker lambdas to process and push the data into a Firehose. The problem is that there will be hundreds of thousands of messages put into the queue every day. I could also use EC2 to do this, but is there any other cost-effective way to process the queue semi-real-time.
The recommended solution for processing streaming data in AWS Lambda is to send the data to Amazon Kinesis, which can then trigger a Lambda function automatically. Kinesis also preserves the ordering of messages. (Amazon SQS only preserves ordering if you use a FIFO queue, which has throughput limitations.)
If you really are limited to processing from SQS, you could write a program that pulls from SQS and pushes to Kinesis or simply pull from SQS and process the data immediately. Such a program could run on an Amazon EC2 instance, or could be triggered on a regular basis by a scheduled Amazon CloudWatch Event.
The main thing to consider is how to handle variable volumes. If you cannot accept long delays between messages arriving and being processed, you will need to either use Lambda (automatically scalable) or have plenty of available processing power to handle the spikes.