This presentation focuses on the Lambda architecture, which combines multiple technologies to be able to process vast amounts of data, while still being able to react timely and report near real-time statistics.
With the proliferation of data sources and growing user bases, the amount of data generated requires new ways for storage and processing. Hadoop opened new possibilities, yet it falls short of instant delivery. Adding stream processing using Twitter's Storm, can overcome this delay and bridge the gap to real-time aggregation and reporting.
On the Batch layer all master data is kept and is immutable. Once the base data is stored a recurring process will index the data. This process reads all master data, parses it and will create new views out of it. The new views will replace all previously created views.
In the Speed layer data is stored not yet absorbed in the Batch layer. Hours of data instead of years of data. Once the data is indexed in the Batch layer the data can discarded in the Speed layer. The Query Service merges the data from the Speed and Batch layers.
This presentation focuses on the Lambda architecture, which combines multiple technologies to be able to process vast amounts of data, while still being able to react timely and report near real-time statistics.
Speakers: Nathan Bijnens