Build and deploy real-world machine learning solutions with confidence. The Machine Learning with Scikit-learn, PyTorch & Hugging Face Professional Certificate is a hands-on program that teaches through practical, project-based learning using industry tools like Python, scikit-learn, PyTorch, Hugging Face, and LangChain.
Progress through the full machine learning lifecycle—learning to build, evaluate, and deploy models across diverse applications. Develop models using supervised and unsupervised learning, enhance performance with feature engineering and ensemble methods, and explore reinforcement learning. Work with time series forecasting, modern NLP techniques, tokenization, and embeddings, advancing into deep learning with neural networks and PyTorch. Explore generative AI, covering large language models (LLMs), transformer architectures, and diffusion models.
Apply skills in hands-on labs, guided projects, and a final capstone to solve a real-world machine learning problem, build and deploy a solution, and implement model monitoring.
Upon completion, have a portfolio of applied projects that demonstrate your ability to build and deploy machine learning solutions using industry tools. Be equipped to solve real-world data challenges, applying techniques from classical machine learning to deep learning and generative AI. With hands-on experience across the full ML lifecycle, be prepared to contribute to data-driven innovation across a wide range of industries.
Applied Learning Project
Throughout this program, you’ll complete hands-on projects that will require you to:
Pre-process data using tools like Python, Pandas, scikit-learn, and encode variables to prepare datasets for modeling.
Choose the appropriate machine learning model using libraries such as scikit-learn and PyTorch based on the problem and data characteristics.
Measure and analyze model results with tools like scikit-learn, MLflow, and Matplotlib to improve accuracy and reliability.
Tackle end-to-end machine learning projects, from problem framing and data preprocessing to model deployment and monitoring, using real-world data and industry-standard workflows.
This program will culminate in a capstone course in which learners will develop a machine-learning solution from the ground up.