![[Image: 98ee4c7da08c7f6f8be523da1c4305fc.jpeg]](https://i122.fastpic.org/big/2024/0104/fc/98ee4c7da08c7f6f8be523da1c4305fc.jpeg)
Free Download Become a Data Engineer- BI, Python, SQL, SSIS, ETL
Published 1/2024
Created by Bluelime Learning Solutions
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 108 Lectures ( 9h 21m ) | Size: 2.85 GB
Transforming Business Intelligence with Python, SQL, SSIS, and ETL
What you'll learn:
Develop a solid understanding of data engineering principles within the context of Business Intelligence (BI).
Master the fundamentals of Python programming for data manipulation, analysis, and visualization.
Proficiently utilize SQL for database management, querying, and optimization.
Comprehend the role and functionalities of SSIS (SQL Server Integration Services) in data integration and ETL processes.
Design and implement ETL (Extract, Transform, Load) solutions using SSIS for efficient data processing.
Implement data cleansing, validation, and transformation strategies within ETL processes.
Understand data warehousing concepts and their significance in BI and analytics.
Develop skills in performance optimization for ETL workflows and data processing.
Analyze real-world case studies and practical projects involving ETL processes and BI tasks.
Integrate Python scripts and libraries within ETL workflows to enhance data processing capabilities.
Utilize SQL queries and SSIS functionalities for error handling and debugging in data pipelines.
Create interactive and insightful data visualizations using Python's libraries like Matplotlib and Seaborn.
Demonstrate proficiency in manipulating and preparing data for BI applications and analytics.
Implement advanced techniques for data aggregation, grouping, and summarization.
Design and execute a comprehensive capstone project integrating Python, SQL, SSIS, and ETL techniques.
Requirements:
Basic Understanding of Data Concepts: Familiarity with fundamental data concepts such as data types, databases, data structures, and data manipulation principles can provide a foundation for grasping more advanced data engineering concepts.
Basic Programming Knowledge: While not mandatory, having a basic understanding of programming concepts can be beneficial. Knowledge of variables, loops, functions, and conditional statements may facilitate the learning process, especially when diving into Python programming.
Computer Literacy: Students should possess basic computer literacy skills, including familiarity with operating systems, file management, and navigating the command line or terminal. Access to a computer with a stable internet connection is necessary for accessing course materials and conducting practical exercises.
Interest in Data Engineering and Business Intelligence: An interest in data engineering, BI concepts, and the desire to delve deeper into the practical applications of Python, SQL, SSIS, and ETL processes can significantly enhance motivation and engagement throughout the course.
Optional: Prior Experience with Database Management: Some prior exposure to database management systems (DBMS), SQL querying, or data manipulation using spreadsheets may be advantageous but is not a strict requirement as these topics will be covered during the course.
Having a strong desire to learn, explore, and engage actively with the course content, exercises, and projects is crucial. The course structure may accommodate learners with varying levels of prior knowledge, but a solid understanding of fundamental data concepts and an eagerness to learn about data engineering for BI purposes will be beneficial for maximum comprehension and successful completion of the course.
Description:
This course aims to equip individuals with the essential skills required to become proficient Data Engineers specializing in Business Intelligence. Participants will gain a comprehensive understanding of Python programming, SQL database management, SSIS (SQL Server Integration Services), and the fundamentals of Extract, Transform, Load (ETL) processes. Through a combination of theoretical learning and hands-on practical exercises, students will develop the expertise needed to excel in the field of Data Engineering, particularly in BI-related tasks.Skills Students Will Learn:Throughout this course, participants will gain proficiency in the following key areas
![Tongue Tongue](https://softwarez.info/images/smilies/tongue.png)
Who this course is for:
Aspiring Data Engineers: Individuals looking to specialize in data engineering with a specific focus on Business Intelligence applications, tools, and processes.
Data Analysts or Data Scientists: Professionals seeking to expand their skill set by gaining expertise in data engineering for BI, enabling them to handle data pipelines, integration, and processing efficiently.
Professionals Transitioning to Data Engineering Roles: Individuals transitioning from related fields or roles (such as software development, analytics, or IT) into data engineering roles, especially within the BI domain.
Students and Graduates: Students pursuing degrees in computer science, data science, or related fields interested in specializing in data engineering and its applications in BI.
IT Professionals and Database Administrators: Those working in IT, database administration, or related roles looking to broaden their knowledge and skill set to encompass data engineering principles for BI purposes.
Career Changers or Business Professionals: Professionals from diverse backgrounds aiming to pivot their careers into the field of data engineering and BI by acquiring the necessary technical skills and knowledge.
Individuals Seeking Career Advancement: Professionals already working in data-related roles (such as analysts or engineers) looking to enhance their career prospects by gaining expertise in data engineering specifically for Business Intelligence.
Homepage
Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live
No Password - Links are Interchangeable
![[Image: signature.png]](https://softwarez.info/images/avsg/signature.png)