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Explainable Machine Learning (XAI)
As Artificial Intelligence (AI) becomes integrated into high-risk domains like healthcare, finance, and criminal justice, it is critical that those responsible for building these systems think outside the black box and develop systems that are not only accurate, but also transparent and trustworthy. This course is a comprehensive, hands-on guide to Explainable Machine Learning (XAI), empowering you to develop AI solutions that are aligned with responsible AI principles.
Through discussions, case studies, programming labs, and real-world examples, you will gain the following skills:
1. Implement local explainable techniques like LIME, SHAP, and ICE plots using Python.
2. Implement global explainable techniques such as Partial Dependence Plots (PDP) and Accumulated Local Effects (ALE) plots in Python.
3. Apply example-based explanation techniques to explain machine learning models using Python.
4. Visualize and explain neural network models using SOTA techniques in Python.
5. Critically evaluate interpretable attention and saliency methods for transformer model explanations.
6. Explore emerging approaches to explainability for large language models (LLMs) and generative computer vision models.
This course is ideal for data scientists or machine learning engineers who have a firm grasp of machine learning but have had little exposure to XAI concepts. By mastering XAI approaches, you'll be equipped to create AI solutions that are not only powerful but also interpretable, ethical, and trustworthy, solving critical challenges in domains like healthcare, finance, and criminal justice.
To succeed in this course, you should have an intermediate understanding of machine learning concepts like supervised learning and neural networks.
Duration
4 Months
Institution
Duke University
Format
Online
Eligibility Criteria
school
Academic Foundation
A recognized Bachelor’s degree or high school equivalent required for admission into Duke University.
language
Language Proficiency
English proficiency required. IELTS, TOEFL, or standard medium-of-instruction certificates accepted.
Detailed Fees Breakdown
Base Tuition Fee
$238
Total Est. Investment
$238
Scholarships and early-bird waivers may apply. Contact admissions for exact institutional fees.
Academic Trajectory
Program Outcome
Graduates of the Explainable Machine Learning (XAI) program at Duke University are equipped with global perspectives, ready to excel in international markets and top-tier career opportunities.