Interactive Exploratory Analytics with Druid | DataEngConf SF '17
Recorded at DataEngConf '17:
Cluster computing frameworks such as Hadoop or Spark are tremendously beneficial in processing and deriving insights from data. However, long query latencies make these frameworks sub-optimal choices to power interactive applications. Organizations frequently rely on dedicated query layers, such as relational databases and key/value stores, for faster query latencies, but these technologies suffer many drawbacks for analytic use cases. In this session, we discuss using Druid for analytics, and why the architecture is well suited to power analytic applications.
User facing applications are replacing traditional reporting interfaces as the preferred means for organizations to derive value from their datasets. In order to provide an interactive user experience, user interactions with analytic applications must complete in an order of milliseconds. To meet these needs, organizations often struggle with selecting a proper serving layer. Many serving layers are selected because of their general popularity, without understanding the possible architecture limitations.
Druid is an analytics data store designed for analytic (OLAP) queries on event data. It draws inspiration from Google’s Dremel, Google’s PowerDrill, and search infrastructure. Many enterprises are switching to Druid for analytics, and we will cover why the technology is a good fit for its intended use cases.
Speaker: Fangjin Yang, Imply
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers. Make sure to subscribe to our channel for more videos, including DC_THURS, our series of live online interviews with leading data professionals from top open source projects and startups.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai
Facebook: https://www.facebook.com/datacouncilai
Eventbrite: https://www.eventbrite.com/o/data-council-30357384520
Видео Interactive Exploratory Analytics with Druid | DataEngConf SF '17 канала Data Council
Cluster computing frameworks such as Hadoop or Spark are tremendously beneficial in processing and deriving insights from data. However, long query latencies make these frameworks sub-optimal choices to power interactive applications. Organizations frequently rely on dedicated query layers, such as relational databases and key/value stores, for faster query latencies, but these technologies suffer many drawbacks for analytic use cases. In this session, we discuss using Druid for analytics, and why the architecture is well suited to power analytic applications.
User facing applications are replacing traditional reporting interfaces as the preferred means for organizations to derive value from their datasets. In order to provide an interactive user experience, user interactions with analytic applications must complete in an order of milliseconds. To meet these needs, organizations often struggle with selecting a proper serving layer. Many serving layers are selected because of their general popularity, without understanding the possible architecture limitations.
Druid is an analytics data store designed for analytic (OLAP) queries on event data. It draws inspiration from Google’s Dremel, Google’s PowerDrill, and search infrastructure. Many enterprises are switching to Druid for analytics, and we will cover why the technology is a good fit for its intended use cases.
Speaker: Fangjin Yang, Imply
ABOUT DATA COUNCIL:
Data Council (https://www.datacouncil.ai/) is a community and conference series that provides data professionals with the learning and networking opportunities they need to grow their careers. Make sure to subscribe to our channel for more videos, including DC_THURS, our series of live online interviews with leading data professionals from top open source projects and startups.
FOLLOW DATA COUNCIL:
Twitter: https://twitter.com/DataCouncilAI
LinkedIn: https://www.linkedin.com/company/datacouncil-ai
Facebook: https://www.facebook.com/datacouncilai
Eventbrite: https://www.eventbrite.com/o/data-council-30357384520
Видео Interactive Exploratory Analytics with Druid | DataEngConf SF '17 канала Data Council
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
"Druid: Powering Interactive Data Applications at Scale" by Fangjin YangApache Iceberg - A Table Format for Huge Analytic DatasetsFunctional Data Engineering - A Set of Best Practices | LyftBuilding an Open Source Streaming Analytics Stack with Kafka and Druid - Fangjin Yang,An introduction to Apache DruidBuilding highly reliable data pipelines at Datadog | DatadogMeetup: Apache Kylin and Extreme OLAP in the CloudWhat the Heck is an In Memory Data Grid | PivotalPractical Lessons for Building Machine Learning Models in Production | InstacartInside Apache Druid’s storage and query engineBuilding Real-Time Analytics Applications Using Apache PinotKubernetes for Beginners - Docker Introduction in 15 MinutesA Metadata Service for Data Abstraction, Data Lineage & Event-based Triggers | WeWorkWhen Should I use Apache Druid?The Right Stuff: Lessons Learned from a Decade of Data EngineeringA quick explainer about Druid rollup, cardinality and segments courtesy of NetflixDBT: Powerful, Open Source Data Transformations | Fishtown Analytics / DBTAnomaly Detection for Real-World Systems by Manojit Nandi | DataEngConf NY '16What’s inside an Apache Druid cluster?