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										Category: 
										Analytics and Reporting  | 
							
																							
									 
											
	
											Duration: 4 Weeks / 100 Hours  | 
						
AI in Data Analytics
Artificial Intelligence (AI) is revolutionizing the way data is processed, analyzed, and interpreted across industries — and healthcare and clinical research are no exception. From predictive modeling and natural language processing (NLP) to automation of routine analytics, AI is enabling faster insights and better decision-making.
The AIDA program introduces learners to the applications of AI in data analytics, combining fundamental AI concepts with real-world use cases in clinical research, life sciences, and business data environments. This course is designed for professionals seeking to bridge the gap between traditional data analytics and AI-driven approaches.
SIP – Self-Paced Online with Support
- Course Duration: 4 weeks (100 hours)
 - Format: Self-Paced Online with Support (narrated lessons, readings, quizzes, and role-based tasks).
 
By completing this program, learners will:
- Understand the role of AI in modern data analytics.
 - Learn how machine learning, NLP, and predictive algorithms enhance analytics.
 - Explore AI applications in healthcare, pharma, and clinical research.
 - Gain exposure to data cleaning, transformation, and feature engineering with AI tools.
 - Understand automation in reporting, dashboards, and visualization.
 - Explore AI-driven tools (Python, SAS Viya, R, cloud-based platforms).
 - Review real-world case studies in predictive safety, clinical trials, and business analytics.
 
- Data Analysts seeking AI-driven skills.
 - SAS Programmers / Statisticians expanding into AI/ML.
 - Clinical Data Managers / PV professionals integrating AI into safety analytics.
 - Healthcare professionals interested in AI for data insights.
 - Career changers moving into AI and data science roles.
 
- Build practical AI analytics skills applicable across industries.
 - Gain readiness for roles at the intersection of AI, data science, and healthcare analytics.
 - Learn to automate data cleaning, reporting, and visualization.
 - Strengthen employability for roles such as AI Data Analyst, Clinical Data Scientist, or Healthcare Analytics Specialist.
 
- AI Data Analyst
 - Clinical Data Scientist
 - Healthcare Analytics Specialist
 - Data Engineer (AI-focused)
 - Business Intelligence Analyst (AI-driven)
 
| Modules | |
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1.	Introduction to AI & Machine Learning in Data Analytics
 2. Data Preparation, Cleaning & Transformation with AI Tools 3. Supervised & Unsupervised Learning Models for Analytics 4. AI in Predictive Modeling & Forecasting 5. Natural Language Processing (NLP) for Text Mining & Case Narratives 6. AI in Clinical & Safety Data Analytics (Signal Detection, PV Reporting) 7. Automation in Reporting, Dashboards & Visualization 8. AI Tools & Platforms (Python, R, SAS Viya, Cloud ML) 9. Ethical & Regulatory Considerations in AI Analytics 10. Case Studies – AI in Pharma, Healthcare, and Business Analytics  | 
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For more information, please call us at +1 905.228.9698 / +1 732.207.4564 (WhatsApp) or email qpdc@qtech-solutions.ca. Our course specialists will reach out to you promptly to assist you in taking the next steps toward your career goals.