Big Data Complete Course
Big Data Complete Course, available at $44.99, has an average rating of 3.5, with 36 lectures, based on 120 reviews, and has 27769 subscribers.
You will learn about Big Data Big Data Enabling Technologies Hadoop Stack for Big Data Hadoop Distributed File System (HDFS) Hadoop MapReduce with Example Spark Parallel Programming with Spark Spark Built-in Libraries Data Placement Strategies CAP Theorem Design of Zookeeper CQL (Cassandra Query Language) Spark Streaming and Sliding Window Analytics Kafka Machine Learning Machine Learning Algorithm K-means using Map Reduce for Big Data Analytics Decision Trees for Big Data Analytics Predictive Analytics Spark GraphX & Graph Analytics This course is ideal for individuals who are Graduates or Software engineers or Developers It is particularly useful for Graduates or Software engineers or Developers.
Enroll now: Big Data Complete Course
Summary
Title: Big Data Complete Course
Price: $44.99
Average Rating: 3.5
Number of Lectures: 36
Number of Published Lectures: 36
Number of Curriculum Items: 36
Number of Published Curriculum Objects: 36
Original Price: ₹7,900
Quality Status: approved
Status: Live
What You Will Learn
- Big Data
- Big Data Enabling Technologies
- Hadoop Stack for Big Data
- Hadoop Distributed File System (HDFS)
- Hadoop MapReduce with Example
- Spark
- Parallel Programming with Spark
- Spark Built-in Libraries
- Data Placement Strategies
- CAP Theorem
- Design of Zookeeper
- CQL (Cassandra Query Language)
- Spark Streaming and Sliding Window Analytics
- Kafka
- Machine Learning
- Machine Learning Algorithm K-means using Map Reduce for Big Data Analytics
- Decision Trees for Big Data Analytics
- Predictive Analytics
- Spark GraphX & Graph Analytics
Who Should Attend
- Graduates
- Software engineers
- Developers
Target Audiences
- Graduates
- Software engineers
- Developers
Big data is a combination of structured, semi structured and unstructured data collected by organizations that can be mined for information and used in machine learning projects, predictive modelling and other advanced analytics applications.
Systems that process and store big data have become a common component of data management architectures in organizations, combined with tools that support big data analytics uses. Big data is often characterized by the three V’s:
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the large volume of data in many environments;
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the wide variety of data types frequently stored in big data systems; and
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the velocity at which much of the data is generated, collected and processed.
Big datais a great quantity of diverse information that arrives in increasing volumes and with ever-higher velocity.
Big datacan be structured (often numeric, easily formatted and stored) or unstructured (more free-form, less quantifiable).
Nearly every department in a company can utilize findings from big data analysis but handling its clutter and noise can pose problems.
Big data can be collected from publicly shared comments on social networks and websites, voluntarily gathered from personal electronics and apps, through questionnaires, product purchases, and electronic check-ins.
Big data is most often stored in computer databases and is analysed using software specifically designed to handle large, complex data sets.
Topics Covered in these course are:
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Big Data Enabling Technologies
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Hadoop Stack for Big Data
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Hadoop Distributed File System (HDFS)
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Hadoop MapReduce
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MapReduce Examples
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Spark
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Parallel Programming with Spark
-
Spark Built-in Libraries
-
Data Placement Strategies
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Data Placement Strategies
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Design of Zookeeper
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CQL (Cassandra Query Language)
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Design of HBase
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Spark Streaming and Sliding Window Analytics
-
Kafka
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Big Data Machine Learning
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Machine Learning Algorithm K-means using Map Reduce for Big Data Analytics
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Parallel K-means using Map Reduce on Big Data Cluster Analysis
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Decision Trees for Big Data Analytics
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Big Data Predictive Analytics
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PageRank Algorithm in Big Data
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Spark GraphX & Graph Analytics
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Case Studies of big companies and how they operate.
Course Curriculum
Chapter 1: Introduction to Big data
Lecture 1: Introduction
Lecture 2: Big Data Enabling Technologies
Lecture 3: Hadoop Stack for Big Data
Lecture 4: Hadoop Stack for Big Data Part 2
Chapter 2: Hadoop Distributed File System, MapReduce
Lecture 1: Hadoop Distributed File System (HDFS)
Lecture 2: Hadoop MapReduce 1.0
Lecture 3: Hadoop MapReduce 2.0
Lecture 4: Hadoop MapReduce 2.0 (Part-II)
Lecture 5: MapReduce Examples
Chapter 3: Spark, Parallel Programming with Spark, Built-in Libraries, Key-Value Stores
Lecture 1: Parallel Programming with Spark
Lecture 2: Introduction to Spark
Lecture 3: Spark Built-in Libraries
Lecture 4: Design of Key-Value Stores
Chapter 4: Data Placement Strategies, CAP Theorem, Zookeeper, CQL (Cassandra Query Language
Lecture 1: Data Placement Strategies
Lecture 2: CAP Theorem
Lecture 3: Consistency Solutions
Lecture 4: Design of Zookeeper
Lecture 5: Design of Zookeeper Part 2
Lecture 6: CQL (Cassandra Query Language)
Chapter 5: Design of HBase, Spark Streaming and Sliding Window Analytics , Kafka
Lecture 1: Design of HBase
Lecture 2: Spark Streaming and Sliding Window Analytics Part 1
Lecture 3: Spark Streaming and Sliding Window Analytics Part 2
Lecture 4: Sliding Window Analytics
Lecture 5: Kafka
Chapter 6: Big Data Machine Learning
Lecture 1: Big Data Machine Learning
Lecture 2: Big Data Machine Learning Part 2
Lecture 3: Machine Learning Algorithm K-means using Map Reduce for Big Data Analytics
Lecture 4: Parallel K-means using Map Reduce on Big Data Cluster Analysis
Chapter 7: Big Data Analytics
Lecture 1: Decision Trees for Big Data Analytics
Lecture 2: Big Data Predictive Analytics
Lecture 3: Big Data Predictive Analytics Part 2
Chapter 8: Case Study, PageRank Algorithm , Spark GraphX & Graph Analytics
Lecture 1: Parameter Servers
Lecture 2: PageRank Algorithm in Big Data
Lecture 3: Spark GraphX & Graph Analytics
Lecture 4: Spark GraphX & Graph Analytics Part 2
Lecture 5: Case Study: Flight Data Analysis using Spark GraphX
Instructors
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Edcorner Learning
Be Incredible
Rating Distribution
- 1 stars: 6 votes
- 2 stars: 7 votes
- 3 stars: 23 votes
- 4 stars: 33 votes
- 5 stars: 51 votes
Frequently Asked Questions
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