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IPython and Jupyter Notebook In Practice: 3-in-1

立即報名
  • 412 名學生
  • 更新於 11/2018
4.2
(47 個評分)
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課程資料

報名日期
全年招生
課程級別
學習模式
修業期
7 小時 34 分鐘
教學語言
英語
授課導師
Packt Publishing
評分
4.2
(47 個評分)
4次瀏覽

課程簡介

IPython and Jupyter Notebook In Practice: 3-in-1

Use IPython and Jupyter Notebook to sharpen your skills for your data analysis and visualization tasks

Python is one of the leading open source platforms for data science and numerical computing. IPython and the associated Jupyter Notebook offer efficient interfaces to Python for data analysis and interactive visualization, and constitute an ideal gateway to the platform.

This comprehensive 3-in-1 course is a practical, hands-on, example-driven tutorial to considerably improve your productivity during interactive Python sessions, and shows you how to effectively use IPython for interactive computing, data analysis, and data visualization. You will learn all aspects of of IPython, from the highly powerful interactive Python console to the numerical and visualization features that are commonly associated with IPython. You will also learn high-performance scientific computing and data analysis, from the latest IPython/Jupyter features to the most advanced tricks, to write better and faster code.

This training program includes 3 complete courses, carefully chosen to give you the most comprehensive training possible.

The first course, Learning IPython for Interactive Computing and Data Visualization, begins with an introduction to Python language, IPython, and Jupyter Notebook. You will then learn how to analyze and visualize data on real-world examples, how to create graphical user interfaces for image processing in Notebook, and how to perform fast numerical computations for scientific simulations with NumPy, Numba, Cython, and ipyparallel.

The second course, Interactive Computing with Jupyter Notebook, covers programming techniques: code quality and reproducibility, code optimization, high-performance computing through just-in-time compilation, parallel computing, and graphics card programming.

The third course, Statistical Methods and Applied Mathematics in Data Science, tackles data science, statistics, machine learning, signal and image processing, dynamical systems, and pure and applied mathematics. You will be well versed with the standard methods in data science and mathematical modeling.

By the end of this course, you will be able to apply these state-of-the-art methods to various real-world examples, illustrating topics in applied mathematics, scientific modeling, and machine learning.

Meet Your Expert(s):

We have the best work of the following esteemed author(s) to ensure that your learning journey is smooth:

  • Cyrille Rossant, PhD, is a neuroscience researcher and software engineer at University College, London. He is a graduate of École Normale Supérieure, Paris, where he studied mathematics and computer science. He has also worked at Princeton University and Collège de France. While working on data science and software engineering projects, he gained experience in numerical computing, parallel computing, and high-performance data visualization. He is the author of Learning IPython for Interactive Computing and Data Visualization, Second Edition, Packt Publishing.

課程章節

  • 3 個章節
  • 88 堂課
  • 第 1 章 Learning IPython for Interactive Computing and Data Visualization
  • 第 2 章 Interactive Computing with Jupyter Notebook
  • 第 3 章 Statistical Methods and Applied Mathematics in Data Science

課程內容

  • Use the IPython notebook to modernize the way you interact with Python, Perform highly efficient computations with NumPy and Pandas, Optimize your code using parallel computing and Cython, Code better: write high-quality, readable, and well-tested programs
  • profile and optimize your code
  • and conduct reproducible interactive computing experiments, Visualize data and create interactive plots in the Jupyter Notebook, Write blazingly fast Python programs with NumPy, ctypes, Numba, Cython, OpenMP, GPU programming (CUDA), parallel IPython, Dask, and more, Analyze data with Bayesian or frequentist statistics (Pandas, PyMC, and R), and learn from actual data through machine learning (scikit-learn), Gain valuable insights into signals, images, and sounds with SciPy, scikit-image, and OpenCV, Simulate deterministic and stochastic dynamical systems in Python, Familiarize yourself with math in Python using SymPy and Sage: algebra, analysis, logic, graphs, geometry, and probability theory

評價

  • K
    Kiran Sreedhar Kumar
    1.0

    The course touches too many topics in not enough depth -- the course materials felt all over the place so far.

  • D
    Duncan W Edwards
    4.0

    More explanation on the "why" of language and operations will help give better context, e.g. what is numpy and matplotlib

  • R
    Rodrigo Santibanez
    5.0

    Si muy buena eleccion

  • K
    Kevin J. Frost
    3.0

    Unable to get this version of python so worried it will be out of date

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