Big Data: Concepts, Technology, and Architecture
Get hands-on experience in Big Data tools, terminology, and technology with the Big Data: Concepts, Technology, and Architecture course and lab. The course provides a vivid introduction to the Big Data tools, terminology, and technology perfectly suited to a wide range of business professionals, academic researchers, and students with clear and approachable lesson flowcharts, and other tools. It illustrates how to look after challenges facing big data technology and technologists, like data heterogeneity and incompleteness, data volume and velocity, storage limitations, and privacy concerns.
- Price: $279.99
- Delivery Method: eLearning
Name | Buy |
---|---|
Big Data: Concepts, Technology, and Architecture |
Test Prep
75+ Pre Assessment Questions |
75+ Post Assessment Questions |
Features
28+ LiveLab |
9+ Video tutorials |
16+ Minutes
Why choose TOPTALENT?
- Get assistance every step of the way from our Texas-based team, ensuring your training experience is hassle-free and aligned with your goals.
- Access an expansive range of over 3,000 training courses with a strong focus on Information Technology, Business Applications, and Leadership Development.
- Have confidence in an exceptional 95% approval rating from our students, reflecting outstanding satisfaction with our course content, program support, and overall customer service.
- Benefit from being taught by Professionally Certified Instructors with expertise in their fields and a strong commitment to making sure you learn and succeed.
Outline
Lessons 1:
Introduction to the World of Big Data
- Understanding Big Data
- Evolution of Big Data
- Failure of Traditional Database in Handling Big Data
- 3 Vs of Big Data
- Sources of Big Data
- Different Types of Data
- Big Data Infrastructure
- Big Data Life Cycle
- Big Data Technology
- Big Data Applications
- Big Data Use Cases
Lessons 2:
Big Data Storage Concepts
- Cluster Computing
- Distribution Models
- Distributed File System
- Relational and Non‐Relational Databases
- Scaling Up and Scaling Out Storage
Lessons 3:
NoSQL Database
- Introduction to NoSQL
- Why NoSQL
- CAP Theorem
- ACID
- BASE
- Schemaless Databases
- NoSQL (Not Only SQL)
- Migrating from RDBMS to NoSQL
Lessons 4:
Big Data Processing, Management, and Cloud Computing
- Part I: Big Data Processing and Management Conce…essing, Management Concepts, and Cloud Computing
- Data Processing
- Shared Everything Architecture
- Shared‐Nothing Architecture
- Batch Processing
- Real‐Time Data Processing
- Parallel Computing
- Distributed Computing
- Big Data Virtualization
- Part II: Managing and Processing Big Data in Clo…essing, Management Concepts, and Cloud Computing
- Introduction
- Cloud Computing Types
- Cloud Services
- Cloud Storage
- Cloud Architecture
Lessons 5:
Driving Big Data with Hadoop Tools and Technologies
- Apache Hadoop
- Hadoop Storage
- Hadoop Computation
- Hadoop 2.0
- HBASE
- Apache Cassandra
- SQOOP
- Flume
- Apache Avro
- Apache Pig
- Apache Mahout
- Apache Oozie
- Apache Hive
- Hive Architecture
- Hadoop Distributions
Lessons 6:
Big Data Analytics
- Terminology of Big Data Analytics
- Big Data Analytics
- Data Analytics Life Cycle
- Big Data Analytics Techniques
- Semantic Analysis
- Visual analysis
- Big Data Business Intelligence
- Big Data Real‐Time Analytics Processing
- Enterprise Data Warehouse
Lessons 7:
Big Data Analytics with Machine Learning
- Introduction to Machine Learning
- Machine Learning Use Cases
- Types of Machine Learning
Lessons 8:
Mining Data Streams and Frequent Itemset
- Itemset Mining
- Association Rules
- Frequent Itemset Generation
- Itemset Mining Algorithms
- Maximal and Closed Frequent Itemset
- Mining Maximal Frequent Itemsets: the GenMax Algorithm
- Mining Closed Frequent Itemsets: the Charm Algorithm
- CHARM Algorithm Implementation
- Data Mining Methods
- Prediction
- Important Terms Used in Bayesian Network
- Density-Based Clustering Algorithm
- DBSCAN
- Kernel Density Estimation
- Mining Data Streams
- Time Series Forecasting
Lessons 9:
Cluster Analysis
- Clustering
- Distance Measurement Techniques
- Hierarchical Clustering
- Analysis of Protein Patterns in the Human Cancer‐Associated Liver
- Recognition Using Biometrics of Hands
- Expectation Maximization Clustering Algorithm
- Representative‐Based Clustering
- Methods of Determining the Number of Clusters
- Optimization Algorithm
- Choosing the Number of Clusters
- Bayesian Analysis of Mixtures
- Fuzzy Clustering
- Fuzzy C‐Means Clustering
Lessons 10:
Big Data Visualization
- Big Data Visualization
- Conventional Data Visualization Techniques
- Tableau
- Bar Chart in Tableau
- Line Chart
- Pie Chart
- Bubble Chart
- Box Plot
- Tableau Use Cases
- Installing R and Getting Ready
- Data Structures in R
- Importing Data from a File
- Importing Data from a Delimited Text File
- Control Structures in R
- Basic Graphs in R