Python
Showing 73–84 of 338 results
Data Structures and Algorithms in Python
This Python algorithms and data structures course provides a platform where professionals can implement and learn data structure concepts in Python.
Data Structures for Coding Interviews in Python
Get a firm grasp on the inner workings of the most common data structures. Tackle common interview coding problems and analyze your solutions.
Data Structures with Generic Types in Python
This course introduces data structures and algorithms, focusing on practical implementation in Python.
Data Visualization and Analysis With Seaborn Library
An introductory course to familiarize the rich library of Seaborn to visualize variety of data types.
Data Wrangling With Python
Learn how to clean, transform, and analyze messy datasets using Python, focusing on data wrangling techniques.
Deal with Mislabeled and Imbalanced Machine Learning Datasets
This course provides hands-on experience dealing with imbalanced data in machine learning, which is critical for machine learning algorithms.
Decode the Coding Interview in Python: Real-World Examples
Stop grinding through endless practice questions, and start breaking down real-world problems. Tackle your interview in Python with confidence.
Deep Dive into Object Detection with YOLO
Learn how to implement object detection algorithms, focusing on the YOLO (You Only Look Once) framework.
Deep Learning for Android Apps
This course aims to equip you with the techniques to train the DL models, convert them to the TF Lite format, and deploy these models into your Android apps.
Deep Learning with JAX and Flax
Discover how to build deep learning models using JAX and Flax, leveraging modern Python libraries for high-performance machine learning.
Deep Learning with PyTorch Step-by-Step: Part I – Fundamentals
This course is ideal for anyone who wants to learn PyTorch, starting from PyTorch basics and expanding to use PyTorch for deep learning.
DelftX: AI Skills for Engineers: Data Engineering and Data Pipelines
Good data is central to effective AI applications. This course teaches the basics of data for AI, covering what data is needed, how to extract data from existing databases and basic data skills including setup of a Python notebook environment, basic data exploration and simple data visualizations.