Big Data in Practice. Marr Bernard
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СКАЧАТЬ 2013, the size of their catalogue was said to exceed three petabytes. This humungous amount of data is accounted for by the need to hold many of their titles in up to 120 different video formats, owing to the number of different devices offering Netflix playback.

      Originally, their systems used Oracle databases, but they switched to NoSQL and Cassandra to allow more complex, Big Data-driven analysis of unstructured data.

      Speaking at the Strata + Hadoop World conference, Kurt Brown, who leads the Data Platform team at Netflix, explained how Netflix’s data platform is constantly evolving. The Netflix data infrastructure includes Big Data technologies like Hadoop, Hive and Pig plus traditional business intelligence tools like Teradata and MicroStrategy. It also includes Netflix’s own open-source applications and services Lipstick and Genie. And, like all of Netflix’s core infrastructure, it all runs in the AWS cloud. Going forward, Netflix are exploring Spark for streaming, machine learning and analytic use cases, and they’re continuing to develop new additions for their own open-source suite.

Any Challenges That Had To Be Overcome?

      Although a lot of the metadata collected by Netflix – which actors a viewer likes to watch and what time of day they watch films or TV – is simple, easily quantified structured data, Netflix realized early on that a lot of valuable data is also stored in the messy, unstructured content of video and audio.

      To make this data available for computer analysis and therefore unlock its value, it had to be quantified in some way. Netflix did this by paying teams of viewers, numbering in their thousands, to sit through hours of content, meticulously tagging elements they found in them.

      After reading a 32-page handbook, these paid viewers marked up themes, issues and motifs that took place on screen, such as a hero experiencing a religious epiphany or a strong female character making a tough moral choice. From this data, Netflix have identified nearly 80,000 “micro-genres” such as “comedy films featuring talking animals” or “historical dramas with gay or lesbian themes”. Netflix can now identify what films you like watching far more accurately than simply seeing that you like horror films or spy films, and can use this to predict what you will want to watch. This gives the unstructured, messy data the outline of a structure that can be assessed quantitatively – one of the fundamental principles of Big Data.

      Today, Netflix are said to have begun automating this process, by creating routines that can take a snapshot of the content in Jpeg format and analyse what is happening on screen using sophisticated technologies such as facial recognition and colour analysis. These snapshots can be taken either at scheduled intervals or when a user takes a particular action such as pausing or stopping playback. For example, if it knows a user fits the profile of tending to switch off after watching gory or sexual scenes, it can suggest more sedate alternatives next time they sit down to watch something.

What Are The Key Learning Points And Takeaways?

      Predicting what viewers will want to watch next is big business for networks, distributors and producers (all roles that Netflix now fill in the media industry). Netflix have taken the lead but competing services such as Hulu and Amazon Instant Box Office and, soon, Apple, can also be counted on to be improving and refining their own analytics. Predictive content programing is a field in which we can expect to see continued innovation, driven by fierce competition, as time goes on.

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