This is a data science project practice book. It was initially written for my Big Data course to help students to run a quick data analytical project and to understand 1. the data analytical process, the typical tasks and the methods, techniques and the algorithms need to accomplish these tasks. During convid19, the unicersity has adopted on-line teaching. So the students can not access to the university labs and HPC facilities. Gaining an experience of doing a data science project becomes individual students self-learning in isolation. This book aimed to help them to read through it and follow instructions to complete the sample propject by themslef. However, it is required by many other students who want to know about data analytics, machine learning and particularly practical issues, to gain experience and confidence of doing data analysis. So it is aimed for beginners and have no much knowledge of data Science. the format for this book is bookdown::gitbook.
Data Ingestion — Part 1: Architectural Patterns, by janmeskens, The Modern Scientist
Foundation models for generalist medical artificial intelligence
Prompt Engineering, Explained
Synthetic Data Generation: Definition, Types, Techniques, & Tools
Semi-Supervised Learning, Explained
Center for Data Science - New York University
Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow, 2nd Edition [Book]
Creating A Custom Fine-Tuned Model With OpenAI's GPT-3 Language API, by Cobus Greyling
Genetic-efficient fine-tuning with layer pruning on multimodal Covid-19 medical imaging
What is Critical Path Method (CPM)
Periodic table - Wikipedia