Home » AI and ML courses in Tbilisi with hands-on projects
AI and ML courses in Tbilisi with hands-on projects
- Accredited Certification
- Specialized Tracks for Career Growth
- Comprehensive Curriculum with Real-Time Projects
Key Highlights
Industry-Experienced Instructors
Comprehensive curriculum
Expert faculty with industry experience
Prestigious certification upon completion
Ongoing support and resources post-program
Live Online Training
Career advancement opportunities
Transformative learning experience
Flexible Learning Schedule
About the program
AI and ML courses provide an in-depth exploration of artificial intelligence and machine learning, focusing on key areas such as algorithm design, statistical modeling, and data analysis. These courses stand out by offering hands-on projects that allow students to apply theoretical concepts to real-world scenarios. Topics such as neural networks, deep learning, and natural language processing are covered, giving students a robust understanding of advanced techniques.
The courses emphasize data-driven decision-making, equipping participants with the ability to derive meaningful insights from large datasets. The interdisciplinary nature of AI and ML education fosters a comprehensive perspective, integrating knowledge from computer science, statistics, and specific application domains. Ethical considerations are also integrated into the curriculum, preparing students to address the ethical challenges of AI technologies responsibly.
By combining theoretical knowledge with practical applications, these courses enable individuals to contribute to cutting-edge technological advancements. As the demand for AI and ML expertise grows, these programs are essential for professionals aiming to succeed in the dynamic and rapidly evolving field of intelligent systems.
What Will You Learn?
Fundamental Concepts
In AI and ML courses, fundamental concepts like algorithm design, statistical modeling, and data analysis are crucial for advanced learning.
Advanced Techniques
In AI and ML courses, advanced techniques like neural networks, deep learning, and natural language processing (NLP) are explored for tackling complex problems effectively.
Interdisciplinary Knowledge
Interdisciplinary knowledge in AI and ML courses integrates insights from computer science, statistics, and specific domains to foster innovative solutions.
Ethical and Responsible AI
Ethical and responsible AI in AI and ML courses addresses fairness, transparency, and accountability in the development and deployment of AI technologies.
Cutting-Edge Advancements
Cutting-edge advancements in AI and ML courses focus on the latest trends and developments, equipping you to innovate within the field of intelligent systems.
Practical Skills
Practical skills in AI and ML courses involve hands-on projects and data-driven decision-making, applying theoretical knowledge to real-world scenarios.
Transitioning to a new career
Studying AI and ML opened doors I never imagined. From creating predictive models for healthcare to analyzing market trends, these skills are in high demand. I secured a role at a tech startup right after graduation
Jessica M
Transitioning from finance to AI and ML posed challenges, but the program’s thorough curriculum and hands-on projects boosted my confidence and skills. Now thriving as a machine learning engineer, I’m grateful for the career shift and the opportunities it brings.
Max Fischer
Coming from a teaching background, I had reservations about transitioning into data science, but the program’s support and hands-on approach made it feasible. The job placement assurance was a significant motivator, and I am now thriving as a data analyst at a prestigious firm.
Emily Chen
Jack Davies
Professional Growth and Development
Increased Opportunities and Advancement
Alignment with Personal Goals and Values
Adaptability and Resilience:
Who Can Apply for the Course?
- Recent graduates aiming to enter the AI and ML field
- Professionals from diverse sectors transitioning into AI and ML roles.
- Data enthusiasts keen on data analysis, ML, and visualization.
- Current students looking to complement academic studies with practical AI and ML skills.
- Managers and executives seeking data science knowledge for informed decision-making in their organizations.
- Managers and executives seeking AI and ML insights for strategic decision-making.
Roles That AI/ML Engineers Can Fulfill
AI Engineer
Designs algorithms for machines to perform human-like tasks.
ML Engineer
Develops and deploys machine learning models for data-driven decisions.
Data Scientist
Analyzes data using AI/ML techniques to derive insights and predictions.
AI Research Scientist
Conducts research to advance AI technologies, exploring new algorithms and models.
Deep Learning Engineer
Specializes in designing and training deep neural networks for complex tasks.
AI Consultan
Provides expertise in implementing AI solutions tailored to business needs and challenges.
AI and ML Course Curriculum
- Python basics: variables, loops, functions
- Introduction to NumPy for numerical computing
- Data manipulation with Pandas
- Data visualization with Matplotlib or Seaborn
- Supervised vs. unsupervised learning
- Linear regression and logistic regression
- Decision trees and ensemble methods (e.g., random forests)
- Model evaluation: cross-validation and performance metrics
- Basics of neural networks
- Introduction to TensorFlow for deep learning
- Convolutional Neural Networks (CNNs) for image classification
- Natural Language Processing (NLP) basics: sentiment analysis
- Real-world applications: recommendation systems, project deployment
Contact Us
For More Personalized & updated Syllabus and Exclusive Discounts
All fields are required to be filled*
Skill Covered
Python Programming
Unsupervised Learning
Python Programming
Neural Networks
ML Algorithms
Reinforcement Learning
Data Preprocessing
Time Series Analysis
Tools Covered
Frequently Asked Questions
The duration varies from 2 months to 9 months, depending on the course you choose. Part-time and full-time options are available to fit your schedule.
Most courses offer flexible formats, including online, on-campus, and hybrid options, allowing you to choose the one that best suits your needs.
While some courses require basic knowledge of programming and statistics, others are designed for beginners. Check the prerequisites for each course before applying.
Yes, you will receive a certificate of completion or a degree, depending on the course you choose. These credentials can enhance your resume and career prospects.
Many course providers offer financing options, including installment plans, scholarships, and employer-sponsored programs. Check with the course provider for specific details.
Data science skills are in high demand across various industries. Completing these courses can open up new career opportunities, lead to higher salaries, and provide job security.