Python

Next Level Python for Data Science Training

Next Level Python for Data Science

This course explores using Python for data scientists to perform exploratory data analysis, complex visualizations, and large-scale distributed processing using Big Data. In this course you’ll learn about essential mathematical and statistics libraries such as NumPy, Pandas, SciPy, SciKit-Learn, along with frameworks like TensorFlow and Spark. It also covers visualization tools like matplotlib, PIL, and Seaborn.

Training at a glance

Level

Intermediate

Duration

5 Days

Experience

3 years: Python

Average Salary

$110,000

Labs

Yes

Level

Intermediate

Duration

5 Days

Experience

3 years: Python

Average Salary

$110,000

Labs

Yes

Training Details

Join an engaging hands-on learning environment, where you’ll learn:
  • How to work with Python in a Data Science context
  • How to use NumPy, Pandas, and MatPlotLib
  • How to create and process images with PIL
  • How to visualize with Seaborn
  • Key features of SciPy and SciKit Learn
  • How to interact with Spark using DataFrames
  • How to use SparkSQL, MLlib, and Big Data streaming

This course has a 50% hands-on labs to 50% lecture ratio with engaging instruction, demos, group discussions, labs, and project work.

Python Review

  • Python Language
  • Essential Syntax
  • Lists, Sets, Dictionaries, and Comprehensions
  • Functions
  • Classes, Modules, and imports
  • Exceptions

 

iPython

  • iPython basics
  • Terminal and GUI shells
  • Creating and using notebooks
  • Saving and loading notebooks
  • Ad hoc data visualization
  • Web Notebooks (Jupyter)

 

NumPy

  • NumPy basics
  • Creating arrays
  • Indexing and slicing
  • Large number sets
  • Transforming data
  • Advanced tricks

 

SciPy

  • What can SciPy do?
  • Most useful functions
  • Curve fitting
  • Modeling
  • Data visualization
  • Statistics

 

SciPy subpackages

  • Clustering
  • Physical and mathematical Constants
  • FFTs
  • Integral and differential solvers
  • Interpolation and smoothing
  • Input and Output
  • Linear Algebra
  • Image Processing
  • Distance Regression
  • Root-finding
  • Signal Processing
  • Sparse Matrices
  • Spatial data and algorithms
  • Statistical distributions and functions
  • C/C++ Integration

 

pandas

  • pandas overview
  • Dataframes
  • Reading and writing data
  • Data alignment and reshaping
  • Fancy indexing and slicing
  • Merging and joining data sets

 

matplotlib

  • Creating a basic plot
  • Commonly used plots
  • Ad hoc data visualization
  • Advanced usage
  • Exporting images

 

The Python Imaging Library (PIL)

  • PIL overview
  • Core image library
  • Image processing
  • Displaying images

 

seaborn

  • Seaborn overview
  • Bivariate and univariate plots
  • Visualizing Linear Regressions
  • Visualizing Data Matrices
  • Working with Time Series data

 

SciKit-Learn Machine Learning Essentials

  • SciKit overview
  • SciKit-Learn overview
  • Algorithms Overview
  • Classification, Regression, Clustering, and Dimensionality Reduction
  • SciKit Demo

 

TensorFlow Overview

  • TensorFlow overview
  • Keras
  • Getting Started with TensorFlow

 

PySpark Overview

  • Python and Spark
  • SciKit-Learn vs. Spark MLlib
  • Python at Scale
  • PySpark Demo

 

RDDs and DataFrames

  • DataFrames and Resilient Distributed Datasets (RDDs)
  • Partitions
  • Adding variables to a DataFrame
  • DataFrame Types
  • DataFrame Operations
  • Dependent vs. Independent variables
  • Map/Reduce with DataFrames

 

Spark SQL

  • Spark SQL Overview
  • Data stores: HDFS, Cassandra, HBase, Hive, and S3
  • Table Definitions
  • Queries

 

Spark MLib

  • MLib overview
  • MLib Algorithms Overview
  • Classification Algorithms
  • Regression Algorithms
  • Decision Trees and forests
  • Recommendation with ALS
  • Clustering Algorithms
  • Machine Learning Pipelines
  • Linear Algebra (SVD, PCA)
  • Statistics in MLib

 

Spark Streaming

  • Streaming overview
  • Integrating Spark SQL, MLlib, and Streaming

Data Scientists, Data Engineers, and Software Engineers who are experienced with basic Python and data science.

Before attending this course, you should have:
  • A solid data analytics and data science background
  • Python experience

Topics are covered in-depth and are geared for experienced students who have taken one of the prerequisite courses below or have practical hands-on experience.

Upcoming Classes

We Offer More Than Just Python Training

Our successful training results keep our corporate and military clients returning. That’s because we provide everything you need to succeed. This is true for all of our courses.

Strategic Planning & Project Management

From Lean Six Sigma to Project Management Institute Project Management Professional, Agile and SCRUM, we offer the best-in-class strategic planning and project management training available. Work closely with our seasoned multi-decade project managers.

IT & Cybersecurity

ATA is the leading OffSec and Hack the Box US training provider, and a CompTIA and EC-Council award-winning training partner. We offer the best offensive and defensive cyber training to keep your team ahead of the technology skills curve.

Leadership & Management

Let us teach your team the high-level traits and micro-level tools & strategies of effective 21st-century leadership. Empower your team to play to each others’ strengths, inspire others and build a culture that values communication, authenticity, and community.

From Lean Six Sigma to Project Management Institute Project Management Professional, Agile and SCRUM, we offer the best-in-class strategic planning and project management training available. Work closely with our seasoned multi-decade project managers.
ATA is the leading OffSec and Hack the Box US training provider, and a CompTIA and EC-Council award-winning training partner. We offer the best offensive and defensive cyber training to keep your team ahead of the technology skills curve.
Let us teach your team the high-level traits and micro-level tools & strategies of effective 21st-century leadership. Empower your team to play to each others’ strengths, inspire others and build a culture that values communication, authenticity, and community.