Diploma In Data Engineering (Job Guaranteed)
About Course
Diploma In Data Engineering by Learnatic Academy is a comprehensive and industry focused training program designed to transform beginners into skilled professionals in the field of modern data technologies. This premium diploma includes 95 detailed recorded lectures, each designed to deliver in depth practical knowledge and real world insights. Every lecture is approximately four hours long, providing extensive learning sessions that help students clearly understand complex concepts and practical applications in the Big Data ecosystem.
This program is carefully structured to provide learners with professional level training that aligns with industry demands. Students will gain strong technical knowledge, practical exposure, and career ready skills required by companies working with large scale data systems. The entire diploma is available through the Learnatic Academy LMS platform with complete recorded access, allowing students to learn at their own pace. Upon successful completion of the program, learners will receive professional certification and will also be supported with job placement opportunities with a job guarantee program, helping them transition confidently into the data technology industry.
Course Content
BigData BootCamp 2.0 (Job Guaranteed)
-
Lecture #01 – Introduction to Big Data and Analytics
04:22:00 -
Lecture #02 – Understanding Data Science and Its Applications
20:00 -
Lecture #03 – Overview of Big Data Ecosystem
04:10:00 -
Lecture #04 – Data Types, Sources, and Collection Methods
04:55:00 -
Lecture #05 – Introduction to Data Warehousing
04:12:00 -
Lecture #06 – Data Governance, Quality, and Security
01:02:00 -
Lecture #07 – Tools and Technologies for Big Data
04:27:00 -
Lecture #08 – Introduction to Hadoop Ecosystem
04:37:00 -
Lecture #09 – HDFS Architecture and Implementation
05:35:00 -
Lecture #10 – MapReduce Fundamentals
05:20:00 -
Lecture #11 – Hive Basics and Querying
05:10:00 -
Lecture #12 – Pig Programming and Data Processing
05:30:00 -
Lecture #13 – HBase for Big Data Storage
04:40:00 -
Lecture #14 – Data Lakes vs Data Warehouses
04:40:00 -
Lecture #15 – Python for Data Analysis
04:50:00 -
Lecture #16 – Python Libraries: NumPy and Pandas
04:52:00 -
Lecture #17 – Data Cleaning and Transformation Techniques
05:00:00 -
Lecture #18 – Introduction to R Programming for Data Analysis
04:57:00 -
Lecture #19 – Data Visualization with Python & R
03:20:00 -
Lecture #20 – Working with Jupyter Notebooks
05:02:00 -
Lecture #21 – Introduction to Apache Spark
05:00:00 -
Lecture #22 – Spark RDDs and DataFrames
01:42:00 -
Lecture #23 – Spark SQL for Data Processing
04:40:00 -
Lecture #24 – Spark Streaming and Real-Time Analytics
04:52:00 -
Lecture #25 – Machine Learning with Spark MLlib
02:35:00 -
Lecture #26 – Kafka for Real-Time Data Streaming
04:32:00 -
Lecture #27 – Introduction to NoSQL Databases
04:08:00 -
Lecture #28 – MongoDB Basics and Operations
02:22:00 -
Lecture #29 – Cassandra for Big Data
04:18:00 -
Lecture #30 – Redis and In-Memory Databases
04:45:00 -
Lecture #31 – Querying and Data Retrieval Techniques
01:52:00 -
Lecture #32 – Introduction to Data Analytics
03:38:00 -
Lecture #33 – Descriptive, Predictive, and Prescriptive Analytics
04:17:00 -
Lecture #34 – Supervised Learning Techniques
01:45:00 -
Lecture #35 – Unsupervised Learning Techniques
03:55:00 -
Lecture #36 – Regression and Classification Models
03:40:00 -
Lecture #37 – Clustering Algorithms
01:35:00 -
Lecture #38 – Recommendation Systems
03:45:00 -
Lecture #39 – Real-World Project Setup
03:32:00 -
Lecture #40 – Data Pipeline Design and Workflow
02:00:00 -
Lecture #41 – ETL Process Implementation
03:37:00 -
Lecture #42 – Data Cleaning & Transformation for Projects
03:22:00 -
Lecture #43 – Data Analysis and Reporting Techniques
25:00 -
Lecture #44 – Visualization of Project Results
03:32:00 -
Lecture #45 – Introduction to Cloud Platforms
03:17:00 -
Lecture #46 – AWS for Big Data Applications
01:10:00 -
Lecture #47 – Azure Big Data Services Overview
04:05:00 -
Lecture #48 – GCP for Big Data and Analytics
03:30:00 -
Lecture #49 – Deployment of Big Data Projects on Cloud
04:50:00 -
Lecture #50 – AI and Deep Learning Fundamentals
02:55:00 -
Lecture #51 – Natural Language Processing (NLP)
03:17:00 -
Lecture #52 – Image and Video Analytics with AI
03:27:00 -
Lecture #53 – Predictive Analytics for Business
03:42:00 -
Lecture #54 – Integration of AI with Big Data Pipelines
55:00 -
Lecture #55 – Advanced Data Processing Techniques in Big Data Systems
03:02:00 -
Lecture #56 – Working with Large Scale Distributed Data Processing
03:32:00 -
Lecture #57 – Advanced Apache Spark Transformations and Actions
03:37:00 -
Lecture #58 – Optimizing Spark Performance for Big Data Workloads
03:35:00 -
Lecture #59 – Real Time Data Processing with Spark Streaming
02:22:00 -
Lecture #60 – Introduction to Apache Kafka for Data Streaming
01:55:00 -
Lecture #61 – Building Real Time Data Pipelines
01:57:00 -
Lecture #62 – Data Integration Techniques for Enterprise Systems
01:52:00 -
Lecture #63 – Working with Structured and Unstructured Data
03:18:00 -
Lecture #64 – Data Cleaning and Data Transformation at Scale
01:55:00 -
Lecture #65 – Advanced Data Visualization Techniques
02:17:00 -
Lecture #66 – Business Intelligence Concepts for Data Analysis
02:42:00 -
Lecture #67 – Building Dashboards for Data Driven Decision Making
03:38:00 -
Lecture #68 – Data Modeling and Data Architecture Fundamentals
03:52:00 -
Lecture #69 – Data Engineering Workflow and Best Practices
01:00:00 -
Lecture #70 – Introduction to Machine Learning for Big Data
03:12:00 -
Lecture #71 – Preparing Datasets for Machine Learning Models
03:57:00 -
Lecture #72 – Supervised Learning Techniques for Big Data
01:59:00 -
Lecture #73 – Unsupervised Learning and Clustering Methods
03:15:00 -
Lecture #74 – Predictive Analytics and Forecasting Techniques
03:37:00 -
Lecture #75 – Recommendation Systems and Data Personalization
02:10:00 -
Lecture #76 – Introduction to Deep Learning Concepts
03:12:00 -
Lecture #77 – Natural Language Processing for Big Data Applications
03:32:00 -
Lecture #78 – Data Security and Privacy in Big Data Systems
01:08:00 -
Lecture #79 – Governance and Compliance in Data Management
04:57:00 -
Lecture #80 – Introduction to Cloud Computing for Big Data
04:55:00 -
Lecture #81 – Deploying Big Data Solutions on Cloud Platforms
01:35:00 -
Lecture #82 – Data Warehousing and Cloud Based Analytics
04:58:00 -
Lecture #83 – Building Scalable Data Pipelines in the Cloud
04:52:00 -
Lecture #84 – Monitoring and Managing Big Data Infrastructure
01:52:00 -
Lecture #85 – Big Data Use Cases in Real World Industries
04:15:00 -
Lecture #86 – Case Studies of Successful Data Driven Companies
01:55:00 -
Lecture #87 – End to End Big Data Project Implementation
01:15:00 -
Lecture #88 – Data Analysis and Reporting for Business Insights
04:05:00 -
Lecture #89 – Building a Professional Data Portfolio
04:27:00 -
Lecture #90 – Preparing for Big Data and Data Engineer Job Roles
05:00:00 -
Lecture #91 – Resume Building and Interview Preparation for Data Careers
04:32:00 -
Lecture #92 – Capstone Big Data Project and Practical Implementation
01:22:00 -
Lecture #93 – Final Program Review, and Career Roadmap
03:55:00 -
Final Exam 1: Big Data Fundamentals & Tools
-
Final Exam 2: Advanced Big Data Analytics & Projects