Enhance Your Data Career: Achieve Apache Spark Certification
Apache Spark can be defined as a modern solution for big data processing that unifies foundation for different types of tasks. Its performance is based on in-memory computing, which allows for real-time processing of raw data. Its support for all major programming languages has made it a staple in modern organizations relying on data. Apache Spark Certification shows that a professional has a proper understanding of its design, application programming interfaces, and how to optimize them. This credential in Australia is an excellent way of certifying competency in a manner in which Spark’s functionality can be harnessed; it enables candidates to perform tasks like data engineers, data scientists, and big data architects, among others.
Explain the core components of Apache Spark architecture?
Apache Spark has a number of modules that work together to form architecture of a solution. Spark Core is a fundamental unit that forms basis of a Spark Cluster and consists of features like task scheduling, memory management, and fault tolerance. Based on this, Spark SQL expands the capabilities of Spark to process structurally arranged data quickly while providing SQL-like means and optimizations. In this respect, Spark Streaming employs micro-batch processing for real-time data analysis of sequential data feeds. As for machine learning computation, there is an array of methods and tools available in the form of Spark MLlib. Finally, Spark GraphX is optimized for graph-based computations, which allow for the understanding of relationships between data points.
Apache Spark Training: Build Scalable Big Data Applications
The knowledge and skills that are imparted during Apache Spark Training in Australia is intended to make candidates ready to employ big data. At a higher level, by exploring Spark constituents such as Spark Core, SQL, Streaming, MLlib, and GraphX, participants learn about their functions. The curriculum incorporates extensive training in data ingest, ETL, analysis, and model building via hands-on exercises and projects. Through learning about distributed computing with Spark, a learner becomes capable of drawing information from large datasets quickly. When learners are done with program, they are fully equipped to handle challenging big data issues; to this end, there is an end-of-course Apache Spark Exam in Australia.
Corporate Group Training

- Customized Training
- Live Instructor-led
- Onsite/Online
- Flexible Dates
Apache Spark Certification Exam Details | |
Exam Name | Apache Spark Certification Exam |
Exam Format | Multiple choice |
Total Questions | 30 Questions |
Passing Score | 70% |
Exam Duration | 60 minutes |
Key Features of Apache Spark Training in Australia
Apache Spark Certification Training offered by Unichrone is aimed at building up competencies necessary to manage and maximize big data. Relatively, our curriculum is engaging and focuses on understanding architecture and fundamental components of Spark: Spark Core, Spark SQL, Spark Streaming, Spark MLlib, and GraphX. In addition to effective theory, we focus on the acquisition of actual skills, which can also be practiced in form of tasks and projects that correspond to reality. This framework will engage participants throughout data ingestion, transformation, analysis, and machine learning model development utilizing Spark. Our competent trainers, hailing from same domain as learners, offer rich exposure and innovation to face real-world big data issues. Upon completion of Apache Spark Training in Australia, participants would be better equipped with knowledge on how to design, develop, and deploy further Spark applications, and organizations would be in a better position to tap into such talent in the ever-growing competitive big data market.
- 2 Day Interactive Instructor –led Online Classroom or Group Training in Australia
- Course study materials designed by subject matter experts
- Mock Tests to prepare in a best way
- Highly qualified, expert & accredited trainers with vast experience
- Enrich with Industry best practices and case studies and present trends
- Apache Spark Certification Training Course adhered with International Standards
- End-to-end support via phone, mail, and chat
- Convenient Weekday/Weekend Apache Spark Certification Training Course schedule in Australia
Apache Spark Certification Benefits
Higher Salary
With this renowned credential, aspirants earn higher salary packages when compared to non-certified professionals in the field
Individual accomplishments
Aspirants can look for higher career prospects at an early stage in their life with the most esteemed certification
Gain credibility
Owning the certification makes it easier to earn the trust and respect of professionals working in the same field
Rigorous study plan
The course content is prescribed as per the exam requirements, covering the necessary topics to ace the exam in the first attempt
Diverse job roles
Attaining the certification enhances the spirit of individuals to pursue diverse job roles in the organization
Sophisticated skillset
With this certification, individuals acquire refined skills and techniques required to play their part in an organization
Apache Spark Certification Course Curriculum
- Module 1: Introduction to Apache Spark
Topics
- · What is Apache Spark?
- · Cluster Design
- · Cluster Management
- · Performance
- Module 2: Apache Spark MLlib
Topics
- · Environment Configuration
- · Classification with Naive Bayes
- · Clustering with K-Means
- · Artificial Neural Networks (ANN)
- Module 3: Apache Spark Streaming
Topics
- · Fault Tolerance
- · Apache Kafka
- · TCP Stream
- · Apache Flume
- Module 4: Apache Spark SQL
Topics
- · SQL Context
- · DataFrames
- · Using SQL
- · User-Defined Functions
- · Using Hive
- Module 5: Apache Spark GraphX
Topics
- · Environment
- · Neo4j Browser
- · Mazerunner for Neo4j
- Module 6: Graph-Based Storage
Topics
- · Overview of Titan and TinkerPop
- · Installing Titan
- · Titan with HBase
- · Titan with Cassandra
- Module 7: Spark Databricks
Topics
- · Installing Databricks
- · Databricks Menus
- · Account and Cluster Management
- · Notebooks and Folders
- · Jobs and Libraries
- · Databricks Tables
- · DbUtils Package
- Module 8: Databricks Visualization
Topics
- · Data Visualization
- · REST Interface
- · Moving Data