This course is designed to equip learners with modern data science skills while integrating advanced generative AI techniques. Graduates will be capable of analyzing, modeling, generating, and deploying intelligent data-driven solutions across industries.
- Core Data Science Proficiency
Build strong foundations in data handling, cleaning, statistical analysis, and visualization—key for any analytical role.
- Machine Learning & Deep Learning Foundations
Learn key algorithms and architectures, from linear regression to neural networks, using industry-standard tools like TensorFlow and PyTorch.
- Generative AI Mastery
Explore cutting-edge models such as GANs, VAEs, and transformers for generating text, images, and more.
- Applied NLP with Generative Models
Use large language models for real-world language tasks including summarization, translation, and conversational AI.
- Project-Based Learning with Real Deployments
Build deployable AI projects with end-to-end pipelines—from data acquisition to cloud deployment—while addressing ethics and bias.
This course produces data professionals who are not only analytical thinkers but also creative AI builders—ready to meet today’s innovation-driven industry demands.
This industry-oriented course bridges traditional data science with the latest generative AI techniques, preparing learners for future-ready roles that combine analytics with creative automation.
- Comprehensive Data Science Curriculum
Covers the full pipeline—from data collection, preprocessing, and statistics to machine learning and neural networks.
- Specialized Focus on Generative AI
Learn and apply architectures like GANs, VAEs, and transformers to generate synthetic data, text, images, and audio.
- Hands-On NLP with GPT Models
Engage in building and fine-tuning LLM-based applications for text generation, summarization, and chatbot interactions.
- Project-Based Learning and Case Studies
Apply skills to real-world projects like text generators, image synthesizers, and data augmentation, backed by case studies.
- Deployment, Ethics, and Future Trends
Master deployment on cloud platforms, address ethical considerations, and explore evolving roles in data science and AI.
This course uniquely combines analytical rigor with creative AI exploration—ideal for learners aiming to stand out in both enterprise and research environments.
The Certificate in Data Science with Generative AI delivers a modern curriculum that blends foundational data science with cutting-edge AI generation techniques. It begins with the principles of data handling, management, and cleaning—teaching learners to work confidently with structured and unstructured data. Visualization, statistics, and exploratory analysis techniques follow to build strong analytical thinking.
Students then move into machine learning basics and deep learning fundamentals, covering key models such as regression, classification, CNNs, and LSTMs. The core focus then shifts to generative AI, exploring models like GANs, VAEs, and transformer-based architectures such as GPT.
In NLP-specific modules, learners work with embeddings, text generation, summarization, and chatbots. Hands-on projects throughout the course allow for building real applications—text synthesizers, image generators, and AI-powered tools—paired with real-world case studies.
The program concludes with deployment strategies, cloud integration, AI ethics, and industry trends. Learners are equipped with a future-ready portfolio and guidance on navigating AI job markets and responsible innovation.
By the end of this course, students will confidently design, build, and deploy AI-driven data solutions—merging technical accuracy with creative problem-solving across industries.
The intersection of data science and generative AI is one of the fastest-growing tech domains. This course unlocks numerous career pathways across both analytical and AI development roles.
- Data Scientist / Analyst
Analyze complex data sets, build predictive models, and derive actionable insights using modern statistical and ML tools.
- Machine Learning Engineer
Design and train algorithms for tasks like classification, forecasting, and optimization across business applications.
- Generative AI Developer
Build tools that generate synthetic data, text, images, and interactive experiences using GANs, VAEs, and LLMs.
- NLP Engineer / Conversational AI Developer
Apply transformer-based models to create advanced text generation, summarization, and chatbot solutions.
- AI Solutions Architect / Researcher
Design, deploy, and monitor generative AI systems responsibly, ensuring ethical use and scalable infrastructure.
Graduates are equipped to thrive in data-driven roles across tech, healthcare, finance, media, and R&D sectors—where innovation meets intelligence.