Elastic Search Training Course Outline
Duration: - 5 Days (8hrs per day)
OVERVIEW: ELK is an acronym of Elastic search, Logstash, and Kibana. Each of these is nothing, but an open-source project. This training program also explains the best possible methods of using the Elastic Search, Logstash, and Kibana with other products and separately.
Target Audience
Full Stack Technical Architects
Big Data Analytics Engineers – Elastic Search
System Log Analysts
Web Analysts
Web Administrators
Prerequisites: To master the ELK Stack concepts, a candidate must-have the basic understanding of the following:
SQL
JSON Data Format
Restful API
Hands on and interactive: Students are encouraged to follow along in the Kibana developer tools to try out queries as the instructor goes through the material. The course is very hands-on and interactive. There are also plenty of hands-on labs.
Introduction to ELK Stack
Introduction to Logstash
Introduction to Elastic Search
Searching in Depth
Dealing with Human Languages
Aggregation
Introduction to Data Modeling
Geo-locations
Introduction to Kibana
Discovering the Data in Depth and Dashboard Analysis
Tools and Plugins
Head
X-pack
Kopf
Sense
Cygwin
Postman
Bigdesk
Grafana
Kibi
Beats
Curl
Lab Set up for the training.
1] HARDWARE REQUIREMENT
a] Mac or Windows with Min 8GB ram
b] Latest version of Chrome or Firefox (Safari is not 100% supported)
c] Stable internet connection (virtual classroom)
d] Due to virtual classroom, we recommend that you disable any ad-blockers and restart your
browser before class.
2] SOFTWARE REQUIREMENT[ Latest Version]
a] JAVA 8 or more
[[login to view URL]]
b] ElasticSeach 7.*
[[login to view URL]]
c] Logstash 7.*
[ [login to view URL]]
d] Kibana 7.*
[[login to view URL]]
e] Plugins [[login to view URL]]
-> X-Pack
-> Beats
f] Cygwin with curl installed into it
[[login to view URL]]
g] Chrome plugin Postman
[[login to view URL]]
h] NODE JS
[[login to view URL]]
i] Apache Lucene
[[login to view URL]]
j] Prometheus
[[login to view URL]]
j] Grafana
[[login to view URL]]
k] MySQL
[[login to view URL]]