Cademy logoCademy Marketplace

Course Images

SQL NoSQL Big Data and Hadoop

SQL NoSQL Big Data and Hadoop

🔥 Limited Time Offer 🔥

Get a 10% discount on your first order when you use this promo code at checkout: MAY24BAN3X

  • 30 Day Money Back Guarantee
  • Completion Certificate
  • 24/7 Technical Support

Highlights

  • On-Demand course

  • 22 hours 34 minutes

  • All levels

Description

Overview

This comprehensive course on SQL NoSQL Big Data and Hadoop will deepen your understanding on this topic.

After successful completion of this course you can acquire the required skills in this sector. This SQL NoSQL Big Data and Hadoop comes with accredited certification from CPD, which will enhance your CV and make you worthy in the job market.

So enrol in this course today to fast track your career ladder.

How will I get my certificate?

At the end of the course there will be an online written test, which you can take either during or after the course. After successfully completing the test you will be able to order your certificate, these are included in the price.

Who is This course for?

There is no experience or previous qualifications required for enrolment on this SQL NoSQL Big Data and Hadoop. It is available to all students, of all academic backgrounds.

Requirements

Our SQL NoSQL Big Data and Hadoop is fully compatible with PC's, Mac's, Laptop, Tablet and Smartphone devices. This course has been designed to be fully compatible with tablets and smartphones so you can access your course on Wi-Fi, 3G or 4G.

There is no time limit for completing this course, it can be studied in your own time at your own pace.

Career Path

Learning this new skill will help you to advance in your career. It will diversify your job options and help you develop new techniques to keep up with the fast-changing world. This skillset will help you to-

  • Open doors of opportunities
  • Increase your adaptability
  • Keep you relevant
  • Boost confidence

And much more!

Course Curriculum

14 sections • 130 lectures • 22:34:00 total length

•Introduction: 00:07:00

•Building a Data-driven Organization - Introduction: 00:04:00

•Data Engineering: 00:06:00

•Learning Environment & Course Material: 00:04:00

•Movielens Dataset: 00:03:00

•Introduction to Relational Databases: 00:09:00

•SQL: 00:05:00

•Movielens Relational Model: 00:15:00

•Movielens Relational Model: Normalization vs Denormalization: 00:16:00

•MySQL: 00:05:00

•Movielens in MySQL: Database import: 00:06:00

•OLTP in RDBMS: CRUD Applications: 00:17:00

•Indexes: 00:16:00

•Data Warehousing: 00:15:00

•Analytical Processing: 00:17:00

•Transaction Logs: 00:06:00

•Relational Databases - Wrap Up: 00:03:00

•Distributed Databases: 00:07:00

•CAP Theorem: 00:10:00

•BASE: 00:07:00

•Other Classifications: 00:07:00

•Introduction to KV Stores: 00:02:00

•Redis: 00:04:00

•Install Redis: 00:07:00

•Time Complexity of Algorithm: 00:05:00

•Data Structures in Redis : Key & String: 00:20:00

•Data Structures in Redis II : Hash & List: 00:18:00

•Data structures in Redis III : Set & Sorted Set: 00:21:00

•Data structures in Redis IV : Geo & HyperLogLog: 00:11:00

•Data structures in Redis V : Pubsub & Transaction: 00:08:00

•Modelling Movielens in Redis: 00:11:00

•Redis Example in Application: 00:29:00

•KV Stores: Wrap Up: 00:02:00

•Introduction to Document-Oriented Databases: 00:05:00

•MongoDB: 00:04:00

•MongoDB Installation: 00:02:00

•Movielens in MongoDB: 00:13:00

•Movielens in MongoDB: Normalization vs Denormalization: 00:11:00

•Movielens in MongoDB: Implementation: 00:10:00

•CRUD Operations in MongoDB: 00:13:00

•Indexes: 00:16:00

•MongoDB Aggregation Query - MapReduce function: 00:09:00

•MongoDB Aggregation Query - Aggregation Framework: 00:16:00

•Demo: MySQL vs MongoDB. Modeling with Spark: 00:02:00

•Document Stores: Wrap Up: 00:03:00

•Introduction to Search Engine Stores: 00:05:00

•Elasticsearch: 00:09:00

•Basic Terms Concepts and Description: 00:13:00

•Movielens in Elastisearch: 00:12:00

•CRUD in Elasticsearch: 00:15:00

•Search Queries in Elasticsearch: 00:23:00

•Aggregation Queries in Elasticsearch: 00:23:00

•The Elastic Stack (ELK): 00:12:00

•Use case: UFO Sighting in ElasticSearch: 00:29:00

•Search Engines: Wrap Up: 00:04:00

•Introduction to Columnar databases: 00:06:00

•HBase: 00:07:00

•HBase Architecture: 00:09:00

•HBase Installation: 00:09:00

•Apache Zookeeper: 00:06:00

•Movielens Data in HBase: 00:17:00

•Performing CRUD in HBase: 00:24:00

•SQL on HBase - Apache Phoenix: 00:14:00

•SQL on HBase - Apache Phoenix - Movielens: 00:10:00

•Demo : GeoLife GPS Trajectories: 00:02:00

•Wide Column Store: Wrap Up: 00:05:00

•Introduction to Time Series: 00:09:00

•InfluxDB: 00:03:00

•InfluxDB Installation: 00:07:00

•InfluxDB Data Model: 00:07:00

•Data manipulation in InfluxDB: 00:17:00

•TICK Stack I: 00:12:00

•TICK Stack II: 00:23:00

•Time Series Databases: Wrap Up: 00:04:00

•Introduction to Graph Databases: 00:05:00

•Modelling in Graph: 00:14:00

•Modelling Movielens as a Graph: 00:10:00

•Neo4J: 00:04:00

•Neo4J installation: 00:08:00

•Cypher: 00:12:00

•Cypher II: 00:19:00

•Movielens in Neo4J: Data Import: 00:17:00

•Movielens in Neo4J: Spring Application: 00:12:00

•Data Analysis in Graph Databases: 00:05:00

•Examples of Graph Algorithms in Neo4J: 00:18:00

•Graph Databases: Wrap Up: 00:07:00

•Introduction to Big Data With Apache Hadoop: 00:06:00

•Big Data Storage in Hadoop (HDFS): 00:16:00

•Big Data Processing : YARN: 00:11:00

•Installation: 00:13:00

•Data Processing in Hadoop (MapReduce): 00:14:00

•Examples in MapReduce: 00:25:00

•Data Processing in Hadoop (Pig): 00:12:00

•Examples in Pig: 00:21:00

•Data Processing in Hadoop (Spark): 00:23:00

•Examples in Spark: 00:23:00

•Data Analytics with Apache Spark: 00:09:00

•Data Compression: 00:06:00

•Data serialization and storage formats: 00:20:00

•Hadoop: Wrap Up: 00:07:00

•Introduction Big Data SQL Engines: 00:03:00

•Apache Hive: 00:10:00

•Apache Hive : Demonstration: 00:20:00

•MPP SQL-on-Hadoop: Introduction: 00:03:00

•Impala: 00:06:00

•Impala : Demonstration: 00:18:00

•PrestoDB: 00:13:00

•PrestoDB : Demonstration: 00:14:00

•SQL-on-Hadoop: Wrap Up: 00:02:00

•Data Architectures: 00:05:00

•Introduction to Distributed Commit Logs: 00:07:00

•Apache Kafka: 00:03:00

•Confluent Platform Installation: 00:10:00

•Data Modeling in Kafka I: 00:13:00

•Data Modeling in Kafka II: 00:15:00

•Data Generation for Testing: 00:09:00

•Use case: Toll fee Collection: 00:04:00

•Stream processing: 00:11:00

•Stream Processing II with Stream + Connect APIs: 00:19:00

•Example: Kafka Streams: 00:15:00

•KSQL : Streaming Processing in SQL: 00:04:00

•KSQL: Example: 00:14:00

•Demonstration: NYC Taxi and Fares: 00:01:00

•Streaming: Wrap Up: 00:02:00

•Database Polyglot: 00:04:00

•Extending your knowledge: 00:08:00

•Data Visualization: 00:11:00

•Building a Data-driven Organization - Conclusion: 00:07:00

•Conclusion: 00:03:00

•Assignment -SQL NoSQL Big Data and Hadoop: 00:00:00

About The Provider

At Apex Learning, we share the goal of millions of people to mak...

Read more about Apex Learning

Tags

Reviews