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100% FUNDED WITH THE EDUCATION VOUCHER

Artificial Intelligence (AI)

510 hours

This program will equip students with the skills to apply artificial intelligence and deep learning applications to business solutions. Upon completion, students will be able to solve various deep learning problems and work in technology startups.

  • 6047€
    The average salary of an Artificial Intelligence specialist in Germany
  • 97%
    Artificial Intelligence specialists in Europe are satisfied with their work
  • 81%
    Students successfully complete the Artificial Intelligence course

Employment opportunities

Reviews

Ernst Frei

RPA DevOps Engineer @Telia

I chose CodeAcademy because it had clear communication about the choices and possibilities of the course directions. Thank you to the lecturers who were patient, always answered the questions and informed that each problem can be solved in several ways.

Programme

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Python Basics 40 hours

The program begins with a quick Python course. It ensures that each student has the basic Python knowledge necessary to continue the course. The first part covers the basics such as exception handling lists, dictionaries tuples, loops, functions and other basic structures. This part consists of theory and practical tasks

Python Advanced 30 hours

The more advanced part covers language syntax, iterators, generators, object-oriented programming principles, algorithms, and data structures

Digital Python with Numpy 32 hours

Digital Information Processing using Python with the NumPy library. Concepts of data science including vectorization and broadcasting of code, as well as NumPy array methods and operations

Tabular Data Analysis with Pandas 24 hours

Pandas library when working with tabular data. Creating, writing, reading, and indexing Pandas DataFrame. Methods of data frames, how to use them for analyzing and visualizing tabular data

Data Preparation 30 hours

Covers the basics needed to start using machine learning models, such as handling missing values, validation, colleration, picking the right data for the right tasks. And the most basic of models, such as k-NN

Fundamentals of Machine Learning 40 hours

Covers basic machine learning models such as decision trees, random forests, support vector machines, and other simple machine learning models, this part helps students to grasp how machine learning works, and prepares them for more advanced topics such as neural networks

Introduction to Deep Learning 34 hours

Machine learning algorithms. Data exploration, model validation, handling missing values, and other aspects of machine learning. Fundamentals of deep learning. Types of neural networks, activation functions, loss functions, and optimizers. Current applied applications of deep learning in the field of artificial intelligence

Regression with Neural Networks 24 hours

Structured data, which is extremely important in bussines but often overlooked in many deep learning courses. Completion of a portfolio project classifying a binary variable

Computer Vision Preparation 20 hours

Students learn how to work with convolutional neural networks, grasping how are images made, and how to transform them into numerical data and what kind of other transformations (such as converting from RGB to gray scale) are needed in order for the convolutional networks to understand and process the information correctly

Image Classification 40 hours

Computer vision, convolutional neural networks. The main focus of this section is on portfolio projects: you will create image classifiers with different architectures, formats, and numbers of classes. Working on projects, you will learn advanced architectures and practice the latest training methods

Inverse Image Search 24 hours

Computer vision and creating a reverse image search model that can find similar elements to what the user provides. This project will help understand the fundamental importance of embeddings in deep learning models and prepare for the sections on natural language processing and recommendation systems

Sequential Data Analysis 24 hours

Stock market movements using recurrent neural networks. Difference in recurrent neural networks, short-term memory networks, persistent recurrent blocks

Natural Language Processing 36 hours

Dive into how neural networks learn representations of natural language. While natural language processing (NLP) is an entirely new domain, you will leverage familiar recurrent neural networks to tackle this challenge. You will learn key NLP concepts and apply them by creating two NLP portfolio projects

Recommender Systems 24 hours

Building recommendation systems. Working with recommendation systems, you will learn about embeddings and collaborative filtering

Generative Deep Learning 24 hours

You will learn about generative deep learning models and create a convolutional neural network capable of generating images, commonly referred to as deep dreams

Advanced Computer Vision 24 hours

Advanced computer vision topics: object detection and segmentation. You will learn how to create and apply state-of-the-art computer vision algorithms

Capstone Project 36 hours

During the final part of the course, you will work on your capstone project. You will have the opportunity to apply everything you have learned throughout the course in creating your own AI project. While working on the project, we will review your Github portfolio, LinkedIN profile, and conduct mock interviews to prepare you for deep learning/machine learning/artificial intelligence engineer roles

Soft skills 16 hours

CV, LinkedIn, job interview workshops, individual activities and fees, IT specialist competencies

AI basics 8 hours

Information search with AI; Answers generation with AI

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Lecturers

Our team of lecturers is a mixture of different IT specialists. Some, like superheroes 🦸, take Top positions in their companies during the day and respond to student calls in the evenings, while others work as freelancers, juggling between clients and students on a daily basis. But they are all 100% ready with the knowledge and experience to help you!🧑‍🎓

Artificial intelligence

Justas Kvederis

Co-Owner @Pro Sistemos

Course calendar

Period

26 May - 29 December

Time

17:00 - 20:45

Duration

510 hours

Price

5992,5

*free with the education voucher

Calculator

Test your Artificial Intelligence knowledge!

Test your skills with a short 5-question quiz! It’s a fun and quick way to discover your strengths and see where you can improve. 😎

Ready for the challenge? Start the quiz now! 🤩

Payment options

We offer so many different payout options and benefits that we have created a fee calculator for you to calculate your abilities yourself - just like in a bank. 💸

CodeAcademy Financing

  • Starting from €199/month

100% Cost Coverage by the Employment Agency

  • The Employment Agency covers the full cost of retraining, allowing employed individuals to enhance their skills while unemployed individuals can learn new ones! 🚀
  • Participants can also apply for financial support for further education through the Employment Agency. For more information about the application process and funding options, visit the Employment Agency’s website.

Pay After Successful Employment!

  • The monthly payment is 10% of your net income, with the option to pause payments for up to 5 months.

Frequently asked questions

Assurance. 2020 80% of our graduates work by profession

Perseverance. We are constantly adjusting the training material according to the recommendations of leading IT companies.

CodeAcademy alumni. A community that shares opportunities, events, acquaintances.

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