AI+ Pharma™
AP 1405
Harness AI in Pharma™ to speed drug discovery, optimize trials, and enable precision therapies. Revolutionize Healthcare Expertise with AI+ Pharma™ for Smarter, Data-Driven Decisions- Beginner-Friendly Pathway: Ideal for learners and professionals entering the world of AI in pharmaceuticals, offering clear fundamentals and easy-to-grasp concepts
- Integrated Learning Experience: Combines core pharma knowledge with intuitive AI tools, real-world case studies, and guided practice to strengthen analytical and operational skills
- Industry-Focused Growth: Equips you with practical projects, scenario-based exercises, and actionable insights to help you apply AI in drug development, research, compliance, and patient-centric solutions
Why This Certification Matters
At a Glance: Course + Exam Overview
- Instructor-Led: 1 day (live or virtual)
- Self-Paced: 8 hours of content
Who Should Enroll?
Pharmacy & Life Sciences Students: Learners who want to complement their pharma or biotech background with practical AI skills.
Pharmaceutical & Biotech Professionals: R&D, clinical, or regulatory teams aiming to apply AI in drug discovery, trials, and safety.
Healthcare & Medical Practitioners: Doctors, clinicians, and healthcare managers interested in AI-driven decision support and precision therapeutics.
Data scientists & AI Engineers: Technical professionals looking to specialize in pharma, healthcare analytics, and intelligent drug development pipelines.
Healthtech & Medtech Innovators: Entrepreneurs, product managers, and consultants building AI-powered solutions for pharma, clinical research, and digital health.
Skills You’ll Gain
- AI-Assisted Drug Discovery
- Clinical Trial Optimization
- Medical and Genomic Data Analytics
- Predictive Modeling for Treatment Outcomes
- Real-World Evidence Analysis
- Patient Stratification and Risk Scoring
- Biomarker and Target Identification
- Drug Safety and Pharmacovigilance Insights
- NLP for Clinical and Scientific Texts
- Ethical and Regulatory-Aware AI in Pharma
What You'll Learn
- 1.1 AI and Machine Learning Basics
- 1.2 AI Algorithms and Models
- 1.3 Use Case: Predictive Modeling for Adverse Drug Reactions and Drug-Drug Interactions Using Historical Patient Datasets
- 1.4 Hands-on: Build Predictive Models Using No-Code Tool (Teachable Machine)
- 2.1 AI in Molecular Drug Design
- 2.2 AI in Drug Repurposing
- 2.3 Use Case: AI-Driven Drug Repurposing Successes (COVID-19 Therapeutics)
- 2.4 Hands-On: Practical AI-Driven Molecular Design and Drug Repurposing Using Orange Data Mining Tool
- 2.5 Hands-On 2: Exploring Disease-Drug Associations with EpiGraphDB
- 3.1 AI-Enhanced Patient Recruitment
- 3.2 Clinical Data Management and Monitoring
- 3.3 Use Case: Pfizer’s AI-Driven Analytics for Optimizing Clinical Trials
- 3.4 Hands-on: Implementing Clinical Data Analytics Using No-Code Platforms (KNIME)
- 4.1 Personalized Treatment Strategies
- 4.2 Biomarker Discovery
- 4.3 Case Study: AI-Assisted Biomarker Discovery and Validation in Cancer Treatments
- 4.4 Hands-on: Hands-On Genomic Analysis – Exploring AI-Driven Genomic Interpretation Using CBioPortal
- 5.1 Ethical Considerations and AI Governance
- 5.2 AI Compliance and Regulatory Frameworks
- 5.3 Case Study: Analyzing Ethical and Regulatory Challenges Encountered in Major AI-Driven Pharma Initiatives
- 5.4 Hands-on: Developing AI Governance Strategies Based on Ethical Frameworks
- 5.5 Hands-on: Literature Mining with LitVar 2.0
- 6.1 AI Project Management
- 6.2 Evaluating AI Tools and ROI
- 6.3 Hands-On: Practical AI Project Management Using Airtable for Tracking, Collaboration, and Management
- 7.1 Emerging AI Technologies in Pharma
- 7.2 AI for Sustainable Healthcare
- 7.3 Case Study: Analysis of Sustainability Initiatives Driven by AI in Pharmaceutical Industry Leaders
- 7.4 Hands-on: Scenario Planning and Predictive Analytics Using Dashboards for Future-Focused Decision Making
- 8.1 Capstone Project 1: Predictive Modeling for Adverse Drug Reactions in Polypharmacy
- 8.2 Capstone Project 2: AI-Enhanced Clinical Trial Recruitment and Retention
- 8.3 Capstone Project 3: AI-Powered Drug Design for Rare Diseases
- 8.4 Capstone Project Evaluation Scheme
Tools You'll Explore
Python
TensorFlow
PyTorch
Scikit-learn
Pandas
NumPy
SQL
Jupyter Notebooks
MLflow
DataBricks
RDKit
DeepChem
Biopython
Hugging Face Transformers for Biomedical NLP
spaCy / Clinical NLP Toolkits
Apache Spark for Healthcare Data
Power BI / Tableau for Clinical Dashboards
Prerequisites
- Basic Biology Knowledge – Understand fundamental human biology concepts.
- Pharmaceutical Fundamentals – Familiarity with drug development and approval processes.
- AI & ML Basics – Grasp core principles of artificial intelligence.
- Data Analytics Skills – Ability to interpret and analyze datasets.
- Ethical Awareness – Understand ethics in AI-driven healthcare applications.
Exam Details
Duration
90 minutes
Passing Score
70% (35/50)
Format
50 multiple-choice/multiple-response questions
Delivery Method
Online via proctored exam platform (flexible scheduling)
Exam Blueprint:
- AI Foundations for Pharma – 7%
- AI in Drug Discovery and Development – 15%
- Clinical Trials Optimization with AI – 15%
- Precision Medicine and Genomics – 15%
- Regulatory and Ethical AI in Pharma – 12%
- Implementing AI in Pharma Projects – 12%
- Future Trends and Sustainability in Pharma AI – 12%
- Capstone Project – 12%
Choose the Format That Fits Your Schedule
What’s Included (One-Year Subscription + All Updates):
- High-Quality Videos, E-book (PDF & Audio), and Podcasts
- AI Mentor for Personalized Guidance
- Quizzes, Assessments, and Course Resources
- Online Proctored Exam with One Free Retake
- Comprehensive Exam Study Guide
Instructor-Led (Live Virtual/Classroom)
- 1 day of intensive training with live demos
- Real-time Q&A, peer collaboration, and hands-on labs
- Led by AI Certified Trainers and delivered through Authorized Training Partners
Self-Paced Online
- ~8 hours of on-demand video lessons, e-book, podcasts, and interactive labs
- Learn anywhere, anytime, with modular quizzes to track progress
Discover Your Ideal Role-Based Certifications and Programs!
Not sure which certifications to go for? Take our quick assessment to discover the perfect role-based certifications and programs tailored just for you.
Get CertifiedFrequently Asked Questions
Yes, you’ll work with real-world pharma and healthcare use cases—like drug discovery data, clinical trial scenarios, and patient outcome modeling—so you can apply AI techniques directly in pharmaceutical and life sciences environments.
This course is specifically tailored to the pharmaceutical domain, focusing on AI for drug discovery, clinical data analysis, real-world evidence, and regulatory-aware applications, rather than generic AI programs.
You’ll work on projects such as AI-assisted target and molecule ranking, patient risk stratification, trial optimization scenarios, pharmacovigilance signal detection, and a capstone project centered on an AI-powered pharma or healthcare solution.
The course blends core theory with hands-on labs, guided notebooks, and end-to-end projects using real or simulated pharma datasets, ensuring you build practical, implementation-ready skills instead of just conceptual understanding.
You’ll gain specialized AI-in-pharma skills that align with roles like AI Pharma Data Scientist, Clinical AI Specialist, Drug Discovery ML Engineer, and other emerging positions at pharma companies, biotechs, CROs, and healthtech firms.