Our Excel, Database, Bl & Engineering

Database and Engineering is a critical field that integrates principles of database management with software and systems engineering to design, develop, and maintain robust data-driven applications. This discipline focuses on the efficient storage, retrieval, and manipulation of large datasets, ensuring data integrity, security, and scalability.

Database-SQL Quering Course

Ready to future-proof your career? Enroll in our hands-on database course and master the skills that power everything from social media to global business systems!

SQL Server Querying & Development

Python Web Development & Pandas

Learn to develop backend web applications with Django and integrate Pandas for real-world data processing. Build real life applications and process data to gain competitive advantage on your next job interview.

Second level course

Data Analyst

Turn complex data into beautiful and smart dashboards with PowerBI. Connect, model, and visualize your data to uncover insights that matter. Master the full Power BI ecosystem—from advanced DAX formulas and data modeling to creating high-impact interactive dashboards.

PowerBI

R language

Begin with the basics of R using resources like R for Data Science by Hadley Wickham, focusing on syntax, data frames, and the tidyverse package. Reinforce your learning through hands-on practice with datasets, using RStudio and participating in projects or challenges on sites like DataCamp or Kaggle.

Statistics is a plus

Python Programming

Start your coding journey today—join our Python Basics course and learn the world’s most beginner-friendly and powerful programming language from scratch!

Starts from zero up to Classes & more

Ms Excel Intermediate

Strengthen your Excel skills by learning functions like vlookup, xlookup, index-match, IF statements, pivot tables and much more. Practice by analyzing sample datasets, creating dashboards, and automating tasks with formulas and conditional formatting.

Automate Data Processing

Data Engineering

Begin by mastering Python, statistics, and data handling with libraries like Pandas, NumPy, and Matplotlib, then progress to machine learning using Scikit-learn. Apply your knowledge through real-world projects and datasets from sites like Kaggle to build practical experience and a portfolio.

Data Warehouse & Data Lakes

SPSS training

Start learning SPSS by exploring its interface and mastering core functions like data entry, descriptive statistics, and basic analyses through tutorials or IBM’s official training. Practice by analyzing sample datasets and interpreting outputs from techniques like t-tests, ANOVA, and regression.

Unavailable

Jeni gati të filloni?

Get in touch, or create an account