Plan Szkolenia

Introduction

  • SciPy vs NumPy
  • Overview of SciPy features and components

Getting Started

  • Installing SciPy
  • Understanding basic functions

Implementing Scientific Computing

  • Using SciPy constants
  • Calculating integrals
  • Solving linear equations
  • Creating matrices with sparse and graphs
  • Optimizing or minimizing functions
  • Performing significance tests
  • Working with different file formats (Matlab, IDL, Matrix Market, etc.)

Visualizing and Manipulating Data

  • Implementing K-means clustering
  • Using spatial data structures
  • Processing multidimensional images
  • Calculating Fourier transformations
  • Using interpolation for fixed data points

Troubleshooting

Summary and Next Steps

Wymagania

  • Python programming experience

Audience

  • Developers
 7 godzin

Liczba uczestników



Cena za uczestnika

Opinie uczestników (5)

Szkolenia Powiązane

Introduction to Data Science and AI using Python

35 godzin

Algorithmic Trading with Python and R

14 godzin

Anomaly Detection with Python and R

14 godzin

Applied AI from Scratch in Python

28 godzin

Programista backend - Python

70 godzin

BDD with Python and Behave

7 godzin

Bioinformatics with Biopython

14 godzin

Building Chatbots in Python

21 godzin

Continuous Integration / Continuous Delivery (CI/CD) with Python

14 godzin

GPU Programming with CUDA and Python

14 godzin

Data Mining with Python

14 godzin

Deep Learning for Banking (with Python)

28 godzin

Deep Learning for Finance (with Python)

28 godzin

Deep Learning for Telecom (with Python)

28 godzin

Fraud Detection with Python and TensorFlow

14 godzin

Powiązane Kategorie