Python for Probability, Statistics, and Machine Learning
3297 Kč
Sleva až 70% u třetiny knih
This book covers the key ideas that link probability, statistics, and machine learning illustrated using Python modules in these areas. The author develops key intuitions in machine learning by working meaningful examples using multiple analytical methods and Python codes, thereby connecting theoretical concepts to concrete implementations.
Autor: | Unpingco, Jose |
Nakladatel: | Springer International Publishing AG |
ISBN: | 9783319307152 |
Rok vydání: | 2016 |
Jazyk : | Angličtina |
Vazba: | Hardback |
Počet stran: | 276 |
Mohlo by se vám také líbit..
-
Theory and Simulation of Random Phen...
Vitali, Ettore; Motta, Mario; Galli, Davide Emilio
-
Learn ggplot2 Using Shiny App
Moon, Keon-Woong
-
The Discrete Math Workbook
Kurgalin, Sergei; Borzunov, Sergei
-
Homological Methods, Representation ...
-
Series of Bessel and Kummer-Type Fun...
Baricz, Arpad; Jankov Masirevic, Dragana; Pogany, Tibor K.
-
Almost Automorphic Type and Almost P...
Diagana, Toka
-
Time Series Analysis and Its Applica...
Shumway, Robert H.; Stoffer, David S.
-
Multivariable Calculus with MATLAB (R)
Hunt, Brian R. (University of Maryland, College Park); Lipsman, Ronald L. (University of Maryland, College Park); Rosenb
-
Scientific Computing
Trangenstein, John A.
-
Introduction to the Theory of Lie Gr...
Godement, Roger
-
Fuzzy Graph Theory with Applications...
Mordeson, John N.; Malik, Davender S.; Clark, Terry D.
-
Don Pigozzi on Abstract Algebraic Lo...
-
One-Dimensional Finite Elements
Öchsner, Andreas
-
A Mathematical Primer on Quantum Mech...
Teta, Alessandro
-
Scientific Computing
Trangenstein, John A.
-
Computational Design of Rolling Bear...
Nguyen-Schäfer, Hung