Best Data Engineering Course Training in Belgium
- 120 Hours Blended - Online Interactive
- 80+ Hours of Assignments and practicals
- 1+ Capstone projects
- Lifetime Learning Management System access
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3117 Learners
Academic Partners & International Accreditations
Data engineering is about generating quality data and making it available for businesses to make data-driven decisions. Requirement for Data Engineering professionals has always outstripped the supply since 2017. Data Engineers enable businesses to engage in insights produced by data science using advanced analytics. This course in Data Engineering will equip you to build big data superhighways by teaching you the skills to unlock the value of data. According to reports, Data Engineer is the fastest-growing job in the space of technology, and with this course in Data Engineering, you will be able to kick start your new career as a Data Engineer today!
Data Engineering
![Business Analytics Course in Belgium business analytics course duration in Belgium](https://360digit.b-cdn.net/assets/img/duration.png)
Total Duration
3 Months
![Business Analytics Course in Belgium data engineering course](https://360digit.b-cdn.net/assets/img/prequ.png)
Prerequisites
- Computer Skills
- Basic Mathematical Concepts
- Analytical Mindset
Data Engineering Training Overview in Belgium
With our Data Engineering Training, you get to explore the various tools used by Data Engineers and understand the difference between a Data Scientist and a Data Engineer. In this training, get introduced to tools like Python, Spark, Kafka, Jupyter. Spyder, TensorFlow, Keras, PyTorch, etc. along with advanced SQL techniques. Learn to extract raw data from various data sources in multiple formats and then transform them into actionable insights, and deploy them into a single, easy-to-query database. Learn how to build pipelines while handling huge data to optimize the process of big data. Get firsthand experience with advanced data engineering projects.
What is Data Engineering?
A Data Engineer collects and transforms data to empower businesses to make data-driven decisions. He has to pay attention to security and compliance; reliability and fidelity; scalability and efficiency; and flexibility and portability while designing, operationalizing and monitoring data processing systems.
Data Engineering Training Learning Outcomes in Belgium
These modules will lay out the foundation for data science and analytics. The core of Data Engineering involves an understanding of various techniques like data modelling, building data engineering pipelines, and deploying the analytics models. Students will learn how to wrangle data and perform advance analytics to get the most value out of data. As you progress, you'll learn how to design as well as build data pipelines and work with big data of diverse complexity and production databases. You will also learn to extract and gather data from multiple sources, build data processing systems, optimize processes for big data, build data pipelines, and much more. With this course develop skills to use multiple data sources in a scalable way and also master the skills involved in descriptive and inferential statistics, interactive data analysis, regression analysis, forecasting, and hypothesis testing. Also, learn to
Block Your Time
Who Should Sign Up?
- Science, Maths, and Computer Graduates
- IT professionals who want to Specialize in Digital Tech
- SQL and related developers or software developers
- Students/IT professionals have an interest in Data and Databases
- Professionals working in the space of Data Analytics
- Academicians and Researchers working with data
- Cloud and BigData enthusiasts
Data Engineering Course Syllabus in Belgium
- Introduction to Python Programming
- Installation of Python & Associated Packages
- Graphical User Interface
- Installation of Anaconda Python
- Setting Up Python Environment
- Data Types
- Operators in Python
- Arithmetic operators
- Relational operators
- Logical operators
- Assignment operators
- Bitwise operators
- Membership operators
- Identity operators
- Check out the Top Python Programming Interview Questions and Answers here.
- Data structures
- Vectors
- Matrix
- Arrays
- Lists
- Tuple
- Sets
- String Representation
- Arithmetic Operators
- Boolean Values
- Dictionary
- Conditional Statements
- if statement
- if - else statement
- if - elif statement
- Nest if-else
- Multiple if
- Switch
- Loops
- While loop
- For loop
- Range()
- Iterator and generator Introduction
- For – else
- Break
- Functions
- Purpose of a function
- Defining a function
- Calling a function
- Function parameter passing
- Formal arguments
- Actual arguments
- Positional arguments
- Keyword arguments
- Variable arguments
- Variable keyword arguments
- Use-Case *args, **kwargs
- Function call stack
- Locals()
- Globals()
- Stackframe
- Modules
- Python Code Files
- Importing functions from another file
- __name__: Preventing unwanted code execution
- Importing from a folder
- Folders Vs Packages
- __init__.py
- Namespace
- __all__
- Import *
- Recursive imports
- File Handling
- Exception Handling
- Regular expressions
- Oops concepts
- Classes and Objects
- Inheritance and Polymorphism
- Multi-Threading
- MySQL Integration
- INSERT, READ, DELETE, UPDATE, COMMIT, ROLLBACK operations
- Introduction to Big Data Analytics
- Data and its uses – a case study (Grocery store)
- Interactive marketing using data & IoT – A case study
- Course outline, road map, and takeaways from the course
- Stages of Analytics - Descriptive, Diagnostics, Predictive, Prescriptive
- CRISP ML(Q)
- Business Understanding
- Data Understanding
- Typecasting
- Handling Duplicates
- Outlier Analysis/Treatment
- Winsorization
- Trimming
- Local Outlier Factor
- Isolation Forests
- Zero or Near Zero Variance Features
- Missing Values
- Imputation (Mean, Median, Mode, Hot Deck)
- Time Series Imputation Techniques
- 1) Last Observation Carried Forward (LOCF)
- 2) Next Observation Carried Backward (NOCB)
- 3) Rolling Statistics
- 4) Interpolation
- Discretization / Binning / Grouping
- Encoding: Dummy Variable Creation
- Transformation
- Transformation - Box-Cox, Yeo-Johnson
- Scaling: Standardization / Normalization
- Imbalanced Handling
- SMOTE
- MSMOTE
- Undersampling
- Oversampling
- Data Collection - Surveys and Design of Experiments
- Data Types namely Continuous, Discrete, Categorical, Count, Qualitative, Quantitative and its identification and application
- Further classification of data in terms of Nominal, Ordinal, Interval & Ratio types
- Balanced versus Imbalanced datasets
- Cross Sectional versus Time Series vs Panel / Longitudinal Data
- Time Series - Resampling
- Batch Processing vs Real Time Processing
- Structured versus Unstructured vs Semi-Structured Data
- Big vs Not-Big Data
- Data Cleaning / Preparation - Outlier Analysis, Missing Values Imputation Techniques, Transformations, Normalization / Standardization, Discretization
- Sampling techniques for handling Balanced vs. Imbalanced Datasets
- What is the Sampling Funnel and its application and its components?
- Inferential Statistics
- Population
- Sampling frame
- Simple random sampling
- Measures of Central Tendency and Dispersion
- Mean/Average, Median, Mode
- Variance, Standard Deviation, Range
- What is a Database
- Types of Databases
- DBMS vs RDBMS
- DBMS Architecture
- Normalisation & Denormalization
- Install PostgreSQL
- Install MySQL
- Data Models
- DBMS Language
- ACID Properties in DBMS
- What is SQL
- SQL Data Types
- SQL commands
- SQL Operators
- SQL Keys
- SQL Joins
- GROUP BY, HAVING, ORDER BY
- Subqueries with select, insert, update, and delete statements
- Views in SQL
- SQL Set Operations and Types
- SQL functions
- SQL Triggers
- Introduction to NoSQL Concepts
- SQL vs NoSQL
- Database connection SQL to Python
- Data Ingestion from NoSQL databases with Python
- Data Science vs Data Engineering
- Data Engineering Infrastructure and Data Pipelines
- Concepts of Extra-Load, Extract-Load-Transform, or Extract-Transform-Load paradigms
- Data Architectures
- Lambda
- Kappa
- Streaming Big Data Architectures Monitoring pipelines
- Working with Databases and various File formats (Data Lakes)
- SQL
- MySQL
- PostgreSQL
- NoSQL
- MongoDB
- Neo4j
- HBase
- Cloud Sources
- Microsoft Azure SQL Database
- Amazon Relational Database Service
- Google Cloud SQL
- Apache Hadoop
- Distributed Framework
- HDFS
- MapReduce
- YARN
- Hands-on with Data Proc (GCP)
- Apache Pig features
- Apache Hive features
- Apache Spark
- Spark Components
- Spark Executions – Session
- RDD
- Spark DataFrames
- Spark Datasets
- Spark SQL
- Spark MLlibs
- Spark Streaming
- Big Data and Apache Kafka
- Producers and Consumers
- Clusters Architectures
- Kafka Streams
- Kafka pipeline transformations
- Building pipelines in Apache Airflow
- Deploy and Monitor Data Pipelines
- Production Data Pipeline
- Amazon web services (AWS)
- Features
- Services
- Microsoft Azure Services
- Features
- Services
- Google Cloud Platform (GCP)
- Features
- Services
- OLTP vs OLAP
- Databases vs Data Lakes vs Data Warehouses
- Data Lakehouse
- Data Fabric, Data Mesh, Data Mart, Delta Lake
- Choosing the right storage option
- Data Lake Cloud offerings
- Cloud Data Warehouse Services
- Intro to AWS Data Warehouses, Data Marts, Data Lakes, and ETL/ELT pipelines
- Configuring the AWS Command Line Interface tool
- Creating an S3 bucket
- Working with Databases and various File formats (Data Lakes)
- Amazon Database Migration Service (DMS) for ingesting data
- Amazon Kinesis and Amazon MSK for streaming data
- AWS Lambda for transforming data
- AWS Glue for orchestrating big data pipelines
- Consuming data - Amazon Redshift & Amazon Athena for SQL queries
- Amazon QuickSight for visualizing data
- Hands-on - AWS Lambda function when a new file arrives in an S3 bucket
- Azure Data Lake - Managing Data
- Securing and Monitoring Data
- Introduction to Azure Data Factory(ADF)
- Building Data Ingestion Pipelines Using Azure Data Factory
- Azure Data Factory Integration Runtime
- Configuring Azure SQL Database
- Introduction to Azure Synapse Analytics
- Data Transformations with Azure Synapse Dataflows
- Azure Synapse SQL Pool
- Monitoring And Maintaining Azure Data Engineering Pipelines
- Getting Started with Data Engineering with GCP
- Bigdata Solutions with GCP Components
- Data Warehouse - BigQuery
- Batch Data Loading using Cloud Composer
- Building A Data Lake using Dataproc
- Processing Streaming Data with Pub/Sub and Dataflow
- Visualizing Data with Data Studio
- Architecting Data Pipelines
- CI/CD On Google Cloud Platform for Data Engineers
- Storage Accounts
- Designing Data Storage Structures
- Data Partitioning
- Designing the Serving Layer
- Physical Data Storage Structures
- Logical Data Structures
- The Serving Layer
- Data Policies & Standards
- Securing Data Access
- Securing Data
- Data Lake Storage
- Data Flow Transformations
- Databricks
- Databrick Processing
- Stream Analytics
- Synapse Analytics
- Data Storage Monitoring
- Data Process Monitoring
- Data Solution Optimization
- Google Cloud Platform Fundamentals
- Google Cloud Platform Storage and Analytics
- Deeper through GCP Analytics and Scaling
- GCP Network Data Processing Models
- Google Cloud Dataproc
- Dataproc Architecture
- Continued Dataproc Operations
- Implementations with BigQuery for Big Data
- Fundamentals of Big Query
- APIs and Machine Learning
- Dataflow Autoscaling Pipelines
- Machine Learning with TensorFlow and Cloud ML
- GCP Engineering and Streaming Architecture
- Streaming Pipelines and Analytics
- GCP Big Data and Security
Tools Covered
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Trends in Data Engineering Certification in Belgium
A Data Engineer will analyze the given data and discover trends in the data sets and develop algorithms to sort the data to make it useful to the organization. To understand the organization's large data, Data Engineers need technical skills with good communication skills to work across various departments. 2021 saw a tremendous increase in usage of AI, MI, and Data Science in the industry. Data Engineering trends can be classified into Data Infrastructure, Data Architecture, and Data Management categories. While metadata management tools like data lineage, data quality, and data discovery will merge into the mainstream data management platform. To manage this platform Data Mesh Principles and change in data engineering structure should be made and serverless architecture is one among them. Cloud data warehouses will be the future of data management systems. A Data Engineer will be able to manage the main role in this process to develop, expand and deploy new technologies. Join our Data Engineering training program to grab the best opportunity in the growing job market.
How we prepare you
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Additional assignments of over 80+ hours
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Live Free Webinars
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Resume and LinkedIn Review Sessions
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Lifetime LMS Access
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24/7 support
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Job placements in Data Engineering fields
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Complimentary Courses
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Unlimited Mock Interview and Quiz Session
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Hands-on experience in a live project
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Offline Hiring Events
Call us Today!
Data Engineering Course Panel of Coaches
![data scientist trainers](https://360digit.b-cdn.net/assets/img/bharani.png)
Bharani Kumar Depuru
- Areas of expertise: Data Analytics, Digital Transformation, Industrial Revolution 4.0
- Over 18+ years of professional experience
- Trained over 2,500 professionals from eight countries
- Corporate clients include Deloitte, Hewlett Packard Enterprise, Amazon, Tech Mahindra, Cummins, Accenture, IBM
- Professional certifications - PMP, PMI-ACP, PMI-RMP from Project Management Institute, Lean Six Sigma Master Black Belt, Tableau Certified Associate, Certified Scrum Practitioner, (DSDM Atern)
- Alumnus of Indian Institute of Technology, Hyderabad and Indian School of Business
![data scientist trainers](https://360digit.b-cdn.net/assets/img/sharat.png)
Sharat Chandra Kumar
- Areas of expertise: Data sciences, Machine learning, Business intelligence and Data Visualization
- Trained over 1,500 professional across 12 countries
- Worked as a Data scientist for 18+ years across several industry domains
- Professional certifications: Lean Six Sigma Green and Black Belt, Information Technology Infrastructure Library
- Experienced in Big Data Hadoop, Spark, NoSQL, NewSQL, MongoDB, Python, Tableau, Cognos
- Corporate clients include DuPont, All-Scripts, Girnarsoft (College-, Car-) and many more
![data scientist trainers](https://360digitmg.com/assets/admin/ckfinder/userfiles/images/3-11-2023/Bhargavi%20(2).png)
Bhargavi Kandukuri
- Areas of expertise: Business analytics, Quality management, Data
visualisation with Tableau, COBOL, CICS, DB2 and JCL - Electronics and communications engineer with over 19+ years of industry experience
- Senior Tableau developer, with experience in analytics solutions development in domains such as retail, clinical and manufacturing
- Trained over 750+ professionals across the globe in three years
- Worked with Infosys Technologies, iGate, Patni Global Solutions as technology analyst
![Data Engineering certification - 360digitmg](https://360digit.b-cdn.net/assets/admin/ckfinder/userfiles/images/certificate-2/Certificate%20curse%20in%20DE.jpg)
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Certificate
Win recognition for your expert skills with the Professional Data Engineering Certification. Stand out in this emerging yet competitive field with our certification.
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Alumni Speak
![Nur Fatin](https://360digit.b-cdn.net/assets/img/reviews/nur-fatin.png)
"Coming from a psychology background, I was looking for a Data Science certification that can add value to my degree. The 360DigiTMG program has such depth, comprehensiveness, and thoroughness in preparing students that also looks into the applied side of Data Science."
"I'm happy to inform you that after 4 months of enrolling in a Professional Diploma in Full Stack Data Science, I have been offered a position that looks into applied aspects of Data Science and psychology."
Nur Fatin
Associate Data Scientist
![quote-icon.png](https://360digit.b-cdn.net/assets/img/quote-icon.png)
![Thanujah Muniandy](https://360digit.b-cdn.net/assets/img/reviews/thanujah_(1).png)
"360DigiTMG has an outstanding team of educators; who supported and inspired me throughout my Data Science course. Though I came from a statistical background, they've helped me master the programming skills necessary for a Data Science job. The career services team supported my job search and, I received two excellent job offers. This program pushes you to the next level. It is the most rewarding time and money investment I've made-absolutely worth it.”
Thanujah Muniandy
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![Ann Nee, Wong](https://360digit.b-cdn.net/assets/img/reviews/ann-nee-wong_(1).png)
"360DigiTMG’s Full Stack Data Science programme equips its graduates with the latest skillset and technology in becoming an industry-ready Data Scientist. Thanks to this programme, I have made a successful transition from a non-IT background into a career in Data Science and Analytics. For those who are still considering, be bold and take the first step into a domain that is filled with growth and opportunities.”
Ann Nee, Wong
![quote-icon.png](https://360digit.b-cdn.net/assets/img/quote-icon.png)
![Mohd Basri](https://360digit.b-cdn.net/assets/img/reviews/mohd-basri_(1).png)
"360DigiTMG is such a great place to enhance IR 4.0 related skills. The best instructor, online study platform with keen attention to all the details. As a non-IT background student, I am happy to have a helpful team to assist me through the course until I have completed it.”
Mohd Basri
![quote-icon.png](https://360digit.b-cdn.net/assets/img/quote-icon.png)
![Ashner Novilla](https://360digit.b-cdn.net/assets/img/reviews/ashner-novilla_(1).png)
"I think the Full Stack Data Science Course overall was great. It helped me formalize and think more deeply about ways to tackle the projects from a Data Science perspective. Also, I was remarkably impressed with the instructors, specifically their ability to make complicated concepts seem very simple."
"The instructors from 360DigiTMG were great and it showed how they engaged with all the students even in a virtual setting. Additionally, all of them are willing to help students even if they are falling behind. Overall, a great class with great instructors. I will recommend this to upcoming deal professionals going forward.”
Ashner Novilla
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Our Alumni Work At
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And more...
FAQs for Data Engineering Certification Training in Belgium
The Data Engineering course aims to provide aspirants with an in-depth understanding of all the essential tools and skills used by Data Engineers. The course provides hands-on learning of leading as Python, SQL, Spark, Kafka, and many more.
The training will be conducted in hybrid mode i.e., through the live instructor-led virtual sessions. The timings for both the sessions will be the same.
After the successful completion of 80% of your assignments, you are assigned to a live project where you will work with a group of students to bring the project to closure. After that, you will make a project presentation.
After the successful completion of the program, you will be awarded the Data Engineering certificate, powered by IBM.
This course is designed for students as well as working professionals. The basic requirement to undertake this course includes a degree in engineering, computer applications, or mathematics.
No, there are no extra charges for the certification. The cost is included in the package.
Not to worry, if you miss out on a session you can access the recorded session from the online Learning Management System (LMS).
We do not guarantee placements nevertheless, our placement cell supports you with resume building sessions, mock interviews, mentorship, and interview preparation. Our team also helps you launch your career by providing interview opportunities.
![Jobs in the field of Data Engineering in Belgium](https://360digit.b-cdn.net/assets/img/jobs-ic.png)
Jobs in Data Engineering in Belgium
A Data Engineer is responsible for developing computer algorithms to identify trends in large data sets. The most common career paths for Data Engineer include Data Scientist, Data Architecture, Data Analyst, and Software Engineers.
![Salaries in Belgium for Data Engineering professionals](https://360digit.b-cdn.net/assets/img/salary-ic.png)
Salary for Data Engineers in Belgium
The demand for Big Data Engineers with strong analytic skills to handle data generated from various platforms with proficiency in SQL database design gets an average salary of Rs 8,17,911 LPA.
![Projects in the field of Data Engineering in Belgium](https://360digit.b-cdn.net/assets/img/ds-ic.png)
Projects in the field of Data Engineering in Belgium
Data engineering is the most critical skill for a Data Scientist and the various projects students could take up include Analyzing sentiments, Detecting credit card fraud, Detection of color, and many more.
![Role of Open Source Tools in Data Engineering](https://360digit.b-cdn.net/assets/img/rps-ic.png)
Role of Open Source Tools in Data Engineering in Belgium
The various tools we will be exploring in this course are Apache Hadoop, Apache Spark, Apache Hive, Apache Kafka, NoSQL, and many more.
![Modes of Training for Data Engineering training](https://360digit.b-cdn.net/assets/admin/ckfinder/userfiles/files/Icon-01.png)
Modes Of Training For Data Engineering in Belgium
The course in Data Engineering is designed to suit the needs of students as well as working professionals. We at 360DigiTMG give our students the option of interactive live online learning. We also support e-learning as part of our curriculum.
![Industry Application of Data Engineering certification](https://360digit.b-cdn.net/assets/img/ia-ic.png)
Industry Applications of Data Engineering in Belgium
Data Engineers dominate many industries including Banking, Media, Education, Healthcare, manufacturing, etc.
Companies That Trust Us
360DigiTMG offers customised corporate training programmes that suit the industry-specific needs of each company. Engage with us to design continuous learning programmes and skill development roadmaps for your employees. Together, let’s create a future-ready workforce that will enhance the competitiveness of your business.
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Student Voices