If you want to switch to the old version Click Here

Data Science

  • 5.0 Rate

  • 32 Lecture

  • 96 hours

  • 16 Weeks

Data Science can be defined as a combination of mathematics, business, algorithms, and machine learning techniques that help us find patterns in data and make discoveries that will significantly simplify and make decision-making more effective for organizations.

The course will cover all important areas of Data Science. Using Python, the most commonly used programming language for data analysis, we will cover the full cycle of data science - initial data processing, preparation for modeling, building machine and deep learning algorithms, training, application, and turning them into products.

Throughout the program, students will work independently on an individual project.

Outcome

Skills Acquired: AI, Machine Learning, LLM, Deep Learning, SQL, Python, Panda, Numpy.

  • Understand, correctly use, and communicate to business concepts such as: Artificial Intelligence (AI), Machine Learning, Deep Learning, Data Science, Large Language Models (LLM)

  • Determine when complex Machine Learning algorithms are needed and when simple data analysis is sufficient

  • Process Big Data using Python

  • Use the main Python libraries necessary for big data analysis: Numpy, Pandas, Matplotlib, Spark

  • Build, train, use, and adapt machine learning algorithms to real business problems

  • Turn built models into products

Mar 19 2500₾

Tue 20:00-23:00, Sat 12:00-15:00

Feb 04 2500₾

Tue 20:00-23:00, Thu 20:00-23:00

Split your payment
TBC installment
BOG installment

Who is this course for?

Beginners

The course is designed for those who want to learn data science from scratch and be able to apply it in their current or new activities. It's also for those who have experience in data analytics but lack experience in programming and using machine learning algorithms.

Analysts

For analysts who use analytical tools (Excel, SQL, Power BI, etc.), create analytical reports, and want to learn programming. For those who have formal and/or informal education in analytics/mathematics.

Programmers

For programmers who have coding experience and want to learn artificial intelligence.

Program includes

Alumni Club

After successfully completing the final exam, graduates will be automatically enrolled in the Alumni Club. This membership grants them access to exclusive events, content, and special offers from our partner companies

Work Based Learning

The course includes practice-based learning, including assignments/exercises and individual projects.

Bilingual Certification

Upon successful completion of the course, students will receive a bilingual certificate.

Graduate feedback

5.0 Rate

Syllabus

Course overview
What is Data Science
Roles in Data Science
Why Python?
Setting up Python environment
Lab session / Practical assignment
Description of data types
Operations on data types
Logical operations (if-else)
Lab session (lecture assignment)
Functions
Loops
Working with files
Lab session / Practical assignment

Lab session / Practical assignment


Containers (Lists, Sets, Tuple, Generator, Dictionary)
Error Handling
Recursion
Lab session / Practical assignment
Working with libraries (installation, importing)
Why NumPy?
NumPy data types
Indexing
Mathematical operations in NumPy
Lab session / Practical assignment

Pick your suitable time

Lecturers

Shota Elkanishvili

Data Science

Shota Elkanishvili

Data Science

Shota has several years of experience working as a data scientist/machine learning engineer. He currently holds a Software Engineer position at Google. Previously, his main focus was on Natural Language Processing (NLP) and efficiently serving large language models. Shota has work experience in both leading Georgian startup Theneo and large Georgian and international corporations - in the research team of Bank of Georgia and Microsoft's Bing team. He is also a co-founder and vice-chairman of the Georgian Artificial Intelligence Association (GAIA). GAIA serves to improve the AI ecosystem in Georgia.

Linkedin

FAQs for this course

A: Data Science is at the forefront of technological innovation, combining statistics, programming, and domain expertise to extract meaningful insights from data. It empowers organizations to make data-driven decisions, predict future trends, and solve complex business challenges. As businesses increasingly rely on data, Data Scientists are in high demand, offering excellent career opportunities with competitive compensation. This field allows you to work on diverse projects across industries while contributing to technological advancement and business growth.
A: Prior programming knowledge is not required to start the course. The main prerequisites are analytical thinking abilities, basic knowledge of mathematics, and English language proficiency at B2 level. Experience with Excel or other analytical tools is desirable. Strong motivation and interest in working with data are also essential for course admission. While previous experience in programming or data analysis would be an advantage, it is not a mandatory requirement.

Your search Digital Designer did not match any documents

Unable to locate relevant information?

Get Free consultation

You may interest

Relevant Resources

Show More