Sales Ended

Berlin Prerequisites to Learning Artificial Intelligence | AI | Machine Lea...

Event Information

Share this event

Date and Time

Location

Location

Instructor Led Online | Video Conference

Berlin

Germany

View Map

Refund Policy

Refund Policy

No Refunds

Event description

Description

Video Conference Details

Will be sent after registration and payment


Course Overview

The prerequisites to learning Disruptive technologies include:

  • Probability
  • Statistics
  • Linear Algebra
  • Calculus (Differential, Multivariate)
  • Data Structures
  • Algorithms
  • High level Programming Language such as Python for beginners
  • Object Oriented Programming Language such as Java (Optional)


About this course

  • This course is structured according to the background and existing knowledge of the students.
  • The goal of this course is to learn the prerequisites quickly and move on to learn the disruptive technologies
  • The instructor(s) and the students together decide what they want to skip and what they want to learn based on this comprehensive course outline mentioned below. Instructor can add, edit the course outline to suit the class.


What you will learn in this course?

In this course, you’ll learn the foundational knowledge which will be useful in learning disruptive technologies.


What are the pre-requisites?

  • No prerequisite is required.
  • Some statistics, probability, computer and programming background will be helpful


Comprehensive and Detailed Course Outline

Computer Programming for those with no programming background (if required, otherwise skip to next section)

  • Intended for students without prior programming experience.
  • Basic programming-in-the-small abilities and concepts including procedural programming (methods, parameters, return, values)
  • Basic control structures (sequence, if/else, for loop, while loop)
  • File processing
  • Arrays
  • An introduction to defining objects.


Intermediate Computer Programming for those with some programming background

  • Concepts of data abstraction and encapsulation including stacks, queues, linked lists, binary trees, recursion, instruction to complexity and use of predefined collection classes.


Data Structures & Algorithms

  • Fundamental algorithms and data structures for implementation
  • Techniques for solving problems by programming
  • Linked lists, stacks, queues, directed graphs.
  • Trees: representations, traversals.
  • Searching (hashing, binary search trees, multiway trees).
  • Garbage collection, memory management.
  • Internal and external sorting
  • Abstract data types and structures including dictionaries, balanced trees, hash tables, priority
  • queues, and graphs
  • Sorting; asymptotic analysis; fundamental graph algorithms including graph search, shortest
  • path, and minimum spanning trees; concurrency and synchronization;


Foundations of Computing

  • Examines fundamentals of logic
  • Set theory, induction
  • Algebraic structures with applications to computing
  • Finite state machines
  • Limits of computability


Probability & Statistics

  • Visualizing relationships in data
  • Seeing relationships in data.
  • Making predictions based on data.
  • Simpson's paradox.
  • Probability
  • Introduction to Probability.
  • Bayes Rule.
  • Correlation vs. Causation.
  • Estimation
  • Maximum Likelihood Estimation.
  • Mean, Median, Mode.
  • Standard Deviation and Variance.
  • Outliers and Normal Distribution.
  • Outliers, Quartiles.
  • Binomial Distribution.
  • Manipulating Normal Distribution.
  • Inference.
  • Confidence Intervals.
  • Hypothesis Testing.
  • Regression
  • Linear regression.
  • Correlation.


Linear algebra

  • Vectors
  • Vectors and spaces
  • Matrix transformations
  • Alternate coordinate systems (bases)


Calculus (Differential calculus, multivariate calculus)

  • Limits and continuity
  • Derivatives, Differentiations
  • Derivatives Applications
  • Equations


Training Dates

December 16, 17, 23, 24, 30, 31, 6, 7, 13, 14

Times: Every Sat & Sun 7:30 AM - 9:30 AM (Pacific Standard Time)

Each session will be recorded and the recordings will be shared after each session with students


Refund Policy

1. There are no refunds.
2. If for any reason the course has not been taken, class is cancelled or rescheduled, the payment can be applied towards any future course by Omni212.



Omni212 Prime membership

Now become an Omni212 Prime member and get $100 off every training course published by Omni212 on eventbrite

Sign up for Omni212 Prime membership: http://bit.ly/2yT72Qu

To see all currently published Omni212 courses - Omni212 training and name of your city in the search box.

Unlimited Training

Now you can enjoy unlimited training from Omni212. Find out more about our Unlimited training Plan:

http://bit.ly/2A1L6R6


Share with friends

Date and Time

Location

Instructor Led Online | Video Conference

Berlin

Germany

View Map

Refund Policy

No Refunds

Save This Event

Event Saved