AI-Driven Drug Discovery and Development Training Course
AI-driven drug discovery is transforming the pharmaceutical industry by accelerating the identification and development of new drugs. TensorFlow is a powerful machine learning framework widely used in drug discovery. Python is the programming language of choice for implementing AI models in this field.
This instructor-led, live training (online or onsite) is aimed at advanced-level professionals who wish to leverage AI techniques to revolutionize drug discovery and development processes.
By the end of this training, participants will be able to:
- Understand the role of AI in drug discovery and development.
- Apply machine learning techniques to predict molecular properties and interactions.
- Use deep learning models for virtual screening and lead optimization.
- Integrate AI-driven approaches into the clinical trial process.
Format of the Course
- Interactive lecture and discussion.
- Lots of exercises and practice.
- Hands-on implementation in a live-lab environment.
Course Customization Options
- To request a customized training for this course, please contact us to arrange.
Course Outline
Introduction to AI in Drug Discovery
- Overview of traditional drug discovery processes
- The role of AI in revolutionizing drug discovery
- Case studies: Successful AI-driven drug discovery projects
Machine Learning in Molecular Modeling
- Basics of molecular modeling and simulations
- Applying machine learning to predict molecular properties
- Building predictive models for drug-target interactions
Deep Learning for Virtual Screening
- Introduction to deep learning techniques in drug discovery
- Implementing deep neural networks for virtual screening
- Case studies: AI-driven virtual screening in pharmaceutical companies
AI for Lead Optimization and Drug Design
- Techniques for optimizing lead compounds
- Using AI to predict ADMET (Absorption, Distribution, Metabolism, Excretion, and Toxicity) properties
- Integrating AI into the drug design pipeline
AI in Clinical Trials
- The role of AI in clinical trial design and management
- Predicting patient responses and adverse effects using AI models
- Case studies: AI applications in clinical trials
Ethical Considerations and Challenges in AI-Driven Drug Discovery
- Ethical issues in AI applications for drug discovery
- Challenges in data privacy, bias, and model interpretability
- Strategies for addressing ethical and regulatory concerns
Summary and Next Steps
Requirements
- An understanding of drug discovery and development processes
- Experience with programming in Python
- Familiarity with machine learning concepts
Audience
- Pharmaceutical scientists
- AI specialists
- Biotech researchers
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Testimonials (2)
Organization, adhering to the proposed agenda, the trainer's vast knowledge in this subject
Ali Kattan - TWPI
Course - Natural Language Processing with TensorFlow
Very updated approach or CPI (tensor flow, era, learn) to do machine learning.
Paul Lee
Course - TensorFlow for Image Recognition
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