Chapter 6: Ingesting Batch and Streaming Data
Having developed a high-level architecture of our data pipeline, we can now dive deep into the varied components of the architecture. We will start with data ingestion so that in the hands-on section of this chapter, we can ingest data that we can use for the hands-on activities in future chapters.
Data engineers are often faced with the challenge of the five Vs of data. These are the variety of data (the diverse types and formats of data); the volume of data (the size of the dataset); the velocity of the data (how quickly the data is generated and needs to be ingested); the veracity or validity of the data (the quality, completeness, and credibility of data); and finally, the value of data (the value that the data can provide the business with).
In this chapter, we will look at several different types of data sources and examine the various tools available within AWS for ingesting data from these sources. We will also look at how...