Advanced Marketing in Age of AI
Weg: Marketing
This comprehensive course is designed to equip learners with essential knowledge and practical skills in marketing and digital marketing. It emphasizes best practices for leveraging AI tools to boost productivity and effectively manage plans. With a strong focus on hands-on experience, the course empowers participants to elevate their expertise to advanced levels.
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1. Analyze market trends and consumer behavior using AI-powered analytical tools.
Lernziele:
1. Identify and select relevant AI-driven analytics tools such as Google Analytics, Adobe Analytics, and similar platforms.
2. Collect and preprocess large datasets to ensure data quality and relevance.
3. Apply statistical methods and machine learning algorithms to analyze consumer behavior and market trends.
4. Interpret analytics outputs and generate actionable insights to inform marketing strategies.
5. Communicate data-driven findings effectively using visualizations and reports.
Module
1. Fundamentals of AI Analytics in Marketing
1. 1. Introduction to AI Analytics Tools and Technologies
Lernergebnisse:
1. Define key concepts and functionalities of major AI analytics tools such as Google Analytics, Adobe Analytics, and emerging platforms.
2. Identify integration points between AI technologies and marketing data systems.
3. Describe the evolution of AI analytics and its role in modern marketing strategies.
4. Assess the benefits and limitations of various analytics tools through comparative analysis.
1. 2. Comprehensive Data Collection and Ethical Preprocessing
Lernergebnisse:
1. Collect diverse marketing datasets using AI-driven platforms while ensuring data integrity.
2. Demonstrate techniques for cleaning, normalizing, and transforming raw data for marketing analysis.
3. Evaluate data quality and implement ethical data handling standards including privacy considerations.
4. Integrate principles of data ethics into preprocessing workflows.
1. 3. Advanced Statistical Methods for Market Data Analysis
Lernergebnisse:
1. Apply both descriptive and inferential statistical methods to analyze marketing data.