TY - BOOK ID - 32941314 TI - Data Science Fundamentals for Python and MongoDB PY - 2018 SN - 1484235975 1484235967 PB - Berkeley, CA : Apress : Imprint: Apress, DB - UniCat KW - Computer science. KW - Computer Science. KW - Big Data. KW - Python. KW - Data mining. KW - Python (Computer program language) KW - Scripting languages (Computer science) KW - Algorithmic knowledge discovery KW - Factual data analysis KW - KDD (Information retrieval) KW - Knowledge discovery in data KW - Knowledge discovery in databases KW - Mining, Data KW - Database searching KW - Big data. KW - Python (Computer program language). KW - Data sets, Large KW - Large data sets KW - Data sets KW - MongoDB. UR - https://www.unicat.be/uniCat?func=search&query=sysid:32941314 AB - Build the foundational data science skills necessary to work with and better understand complex data science algorithms. This example-driven book provides complete Python coding examples to complement and clarify data science concepts, and enrich the learning experience. Coding examples include visualizations whenever appropriate. The book is a necessary precursor to applying and implementing machine learning algorithms. The book is self-contained. All of the math, statistics, stochastic, and programming skills required to master the content are covered. In-depth knowledge of object-oriented programming isn’t required because complete examples are provided and explained. Data Science Fundamentals with Python and MongoDB is an excellent starting point for those interested in pursuing a career in data science. Like any science, the fundamentals of data science are a prerequisite to competency. Without proficiency in mathematics, statistics, data manipulation, and coding, the path to success is “rocky” at best. The coding examples in this book are concise, accurate, and complete, and perfectly complement the data science concepts introduced. What You'll Learn: Prepare for a career in data science Work with complex data structures in Python Simulate with Monte Carlo and Stochastic algorithms Apply linear algebra using vectors and matrices Utilize complex algorithms such as gradient descent and principal component analysis Wrangle, cleanse, visualize, and problem solve with data Use MongoDB and JSON to work with data. ER -