Name
Name
Text
Video
Link
Basics of Artificial Intelligence
Understanding how AI models work, how training occurs, and where AI is used is becoming increasingly important, even outside of technology roles.
Machine Learning Projects
Hands-on ML projects allow you to learn faster. Use real datasets to create simple classifiers, recommendation systems, and modest prediction models.
Cybersecurity Fundamentals
Threats are increasing, and understanding how to protect systems, networks, and data is one of the most valuable skills available today.
Cloud platforms (AWS, Azure, and GCP)
The majority of modern applications operate in the cloud. Learning how cloud infrastructure works provides a significant advantage in any tech career.
DevOps Tools and Automation
CI/CD pipelines, Docker, Kubernetes, and automation all boost development speed and dependability. Investigate how teams use these technologies to scale.
Full Stack Development
The combination of front-end and back-end abilities opens up unlimited possibilities. Even mastering the fundamentals enables you to create real goods from scratch.
Data Engineering and Pipelines
Data is the driving force behind AI. Learning about data storage, ETL pipelines, and warehousing systems can help you understand how businesses manage large datasets.
Ethical Technology and Responsible AI
As technology advances, so does responsibility. Explore issues such as fairness, transparency, and safe AI development.
Open Source Contribution
Contributing to open-source projects improves your skills and allows you to connect with developers all over the world.










