Data Intelligence

Metacat: Netflix Makes Their Big Data Accessible and Useful

Actian Corporation

March 29, 2019

metacat-netflix

Like many other companies, Netflix has a large amount of data that comes from many different data sources in various formats. As the leading streaming video-on-demand company (SVOD), data exploitation is, of course, a major strategic asset. Given the diversity of its data sources, the streaming platform wanted a way to federate and interact with these assets using a single tool. This led to the creation of Metacat.

This article explains the motivations behind creating Metacat, a metadata solution intended to facilitate the discovery, treatment, and management of Netflix’s data.

Read our previous articles on Google and AirBnB.

Netflix’s Key Figures

Netflix has come a long way since its DVD rental company in the 1990s. Video consumption on Netflix accounts for 15% of global internet traffic. But Netflix today is also:

  • 130 million paying subscribers worldwide (400% increase since 2011).
  • $10 billion turnover, including $403 million in profits.
  • $100 billion market capitalizations, or the sum of all the leading television groups in Europe.
  • $6 billion investment in original creations (TV shows and movies).

Netflix is also a data warehouse of 60 petabytes (60 million billion bytes), which is a real challenge for the firm to exploit and federate these data.

Netflix’s Big Data Platform Architecture

Its basic architecture includes three key services. These are the Execution Service (Genie), the Metadata Service (Metacat), and the Event Service (Microbot).

In order to operate between its different languages and data sources, which are not very compatible with each other, Metacat was born. This tool acts as a data and metadata access layer from Netflix’s data sources. A centralized service accessible by any data user in order to facilitate their discovery, treatment, and management.

Metacat and its Features

Netflix has data queries, such as Hive, Pig, or Spark, that are not operable together. By introducing a common abstraction layer, Netflix can provide data access to its users, regardless of their storage systems.

In addition, Metacat goes so far as to simplify transferring one dataset to a datastore to another.

Business Metadata

Hand-written, user-defined, business-oriented metadata, in free format can be added via Metacat. Its main information includes the connections, configurations, metrics, and the life cycles of each dataset.

Data Discovery

By creating Metacat, Netflix makes it easy for consumers to find business datasets. The tool publishes schema and business metadata defined by its users in Elasticsearch, making it easier to find full-text information in its data sources.

Data Modification and Audit

As a cross-functional tool for all data stores, Metacat registers and notifies all changes made to the metadata and the data itself from its storage systems.

Metacat and the Future of Netflix

According to Netflix, the current version of Metacat is a step towards the new features they are working on. They still want to improve the visualization of their metadata, as it would be very useful for restoration purposes.

Metacat, according to Netflix, should also be able to have a plug-in architecture. Thus, their tool could validate and maintain all of its metadata. This is because users define metadata in free form. Therefore, Netflix needs to put into place a validation process that can be done before storing the metadata.

As a centralizing tool for multi-source and multi-format data, Netflix’s Metacat has clearly made progress.

The development of this in-house service has adapted to all the tools used by the company, allowing Netflix to become Data Driven.

Sources

actian avatar logo

About Actian Corporation

Actian makes data easy. Our data platform simplifies how people connect, manage, and analyze data across cloud, hybrid, and on-premises environments. With decades of experience in data management and analytics, Actian delivers high-performance solutions that empower businesses to make data-driven decisions. Actian is recognized by leading analysts and has received industry awards for performance and innovation. Our teams share proven use cases at conferences (e.g., Strata Data) and contribute to open-source projects. On the Actian blog, we cover topics ranging from real-time data ingestion, data analytics, data governance, data management, data quality, data intelligence to AI-driven analytics.