Hive Optimization Techniques With Examples
Enroll to the Oracle DBA real time interview Question
====================================================
https://learnomate.org/courses/oracle-dba-interview-question/
WhatsApp me for Training - https://wa.link/gi7fv2
Starting new Oracle DBA batch in next week.
Please connect with me if you are interested.
Batch will start from next week
Time - 9am ist (11:30 PM EST)
Duration - 45 days
Daily one hour
Contact - +91 9960262955
Email - ankush.thavali@gmail.com
Fees - 15k (300$)
Two installments can be available
Syllabus -
https://www.learnomate.org/syllabus
Review -
https://www.learnomate.org/reviews
YouTube Channel
https://youtu.be/cFHMTPEtUG0
Registration
https:www.learnomate.org/register
WhatsApp me
https://wa.link/usfz52
Facebook Page
https://www.facebook.com/learnomate/
LinkedIn
https://www.linkedin.com/in/ankushthavali/ we will be discussing about how to optimize your hive queries to execute them faster on your cluster. We all know that hive is a query language which is similar to sql built on hadoop eco-system to run queries on petabytes of data.
Here are few techniques that can be implemented while running your hive queries to optimize and improve its performance.
Execution Engine
Usage of suitable file format
By partitioning
Use of bucketing
Use of vectorization
Cost based optimization
Use of indexing
#hive
#hadoop
#bigdata
Видео Hive Optimization Techniques With Examples канала ANKUSH THAVALI
====================================================
https://learnomate.org/courses/oracle-dba-interview-question/
WhatsApp me for Training - https://wa.link/gi7fv2
Starting new Oracle DBA batch in next week.
Please connect with me if you are interested.
Batch will start from next week
Time - 9am ist (11:30 PM EST)
Duration - 45 days
Daily one hour
Contact - +91 9960262955
Email - ankush.thavali@gmail.com
Fees - 15k (300$)
Two installments can be available
Syllabus -
https://www.learnomate.org/syllabus
Review -
https://www.learnomate.org/reviews
YouTube Channel
https://youtu.be/cFHMTPEtUG0
Registration
https:www.learnomate.org/register
WhatsApp me
https://wa.link/usfz52
Facebook Page
https://www.facebook.com/learnomate/
https://www.linkedin.com/in/ankushthavali/ we will be discussing about how to optimize your hive queries to execute them faster on your cluster. We all know that hive is a query language which is similar to sql built on hadoop eco-system to run queries on petabytes of data.
Here are few techniques that can be implemented while running your hive queries to optimize and improve its performance.
Execution Engine
Usage of suitable file format
By partitioning
Use of bucketing
Use of vectorization
Cost based optimization
Use of indexing
#hive
#hadoop
#bigdata
Видео Hive Optimization Techniques With Examples канала ANKUSH THAVALI
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
072 Hive Join OptimizationsSpark Out of Memory Issue | Spark Memory Tuning | Spark Memory Management | Part 1Parquet file, Avro file, RC, ORC file formats in Hadoop | Different file formats in HadoopWhen senior DBA not helping to Junior DBA 😫😩10 Legit Ways To Make Money And Passive Income Online - How To Make Money OnlineHive performance tuning | Optimization | Big DataApache Spark Memory Management | Unified Memory ManagementSpark performance optimization Part1 | How to do performance optimization in sparkSimple ways to increase GPU performance for FREEApache Hive - Hive joins, execution engines (tez and mr) and explain/execution planExplode and Lateral view function in HiveHive architecture | Explained with a Hive query exampleMy DBA Untold Story | How I started my DBA career[Hindi] Database performance tuning tips & tricks | Interview questionsFine Tuning and Enhancing Performance of Apache Spark JobsIncremental Data Load in Hive | Big data interview questionsmap join, skew join, sort merge bucket join in hivePresto Training Series, Session 2: Understanding and Tuning Presto Query ProcessingAttention Log in Oracle 21c | Oracle 21C New Feature🔥Building a Large-scale Transactional Data Lake Using Apache Hudi