Design scalable, AI-powered brand campaigns that integrate creative automation, predictive targeting, experimentation, and performance intelligence. This advanced course develops the capability to build high-performing omnichannel systems using generative AI, machine learning signals, and real-time optimization frameworks.
通过 Coursera Plus 提高技能,仅需 239 美元/年(原价 399 美元)。立即节省

您将获得的技能
- Marketing Effectiveness
- AI Enablement
- Real Time Data
- Predictive Analytics
- Brand Marketing
- Cross-Channel Marketing
- Advertising Campaigns
- Performance marketing
- A/B Testing
- Target Audience
- Marketing Automation
- Personalized Service
- Information Privacy
- Marketing Strategies
- Key Performance Indicators (KPIs)
- Marketing Analytics
- Customer experience improvement
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要了解的详细信息

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March 2026
20 项作业
了解顶级公司的员工如何掌握热门技能

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该课程共有4个模块
This module introduces learners to the use of generative AI in creative strategy, content production, and testing workflows. Learners explore how AI tools can accelerate ideation, generate multiple creative variations, and support brand-aligned execution across formats such as text, visuals, and video. The module emphasizes evaluating AI-generated assets for consistency, inclusivity, and brand fit, ensuring creativity remains strategic rather than automated for speed alone. Learners also study AI-driven creative testing methods, including hook analysis, format comparison, attention modeling, and fatigue detection. In addition, the module covers scalable content automation pipelines—demonstrating how AI can streamline production, localization, and quality control while reducing manual effort. By the end of this module, learners will be able to design automated creative workflows, assess predicted performance signals, and deploy AI responsibly to enhance both efficiency and creative effectiveness.
涵盖的内容
11个视频5篇阅读材料4个作业1个讨论话题1个插件
11个视频• 总计63分钟
- Introduction to the Course• 5分钟
- Career Scope: Creative Strategy in the Age of AI• 4分钟
- Using GenAI (ChatGPT, Midjourney, Runway) for Concepts & Variations• 8分钟
- Evaluating Brand Alignment of AI Creative Assets• 4分钟
- AI Tools for Creative Testing: Pattern Recognition & Variant Ranking• 6分钟
- Testing Hooks, Story Angles & Format Variations• 6分钟
- Heatmaps, Eye-Tracking, Attention Modeling• 6分钟
- Creative Fatigue, Wear-Out & Lifecycle Management• 6分钟
- Content Automation Workflows Using AI• 6分钟
- AI-Assisted Video Editing, Formatting & Localization• 6分钟
- Scalability, Resource Savings & Quality Controls• 7分钟
5篇阅读材料• 总计55分钟
- Syllabus• 5分钟
- Glossary• 5分钟
- Creative AI Tools Matrix• 15分钟
- AI Creative Testing Case Studies• 15分钟
- Content Pipeline Automation Guide• 15分钟
4个作业• 总计105分钟
- AI for Creative Development & Content Automation• 60分钟
- Generating AI-Powered Creative Concepts & Variations• 15分钟
- AI-Driven Creative Testing (Hooks, Formats, Visuals)• 15分钟
- Automation in Creative Production & Content Pipelines• 15分钟
1个讨论话题• 总计5分钟
- Can AI Really Create a Winning Campaign Idea?• 5分钟
1个插件• 总计5分钟
- Quick Course Check-In• 5分钟
This module focuses on using AI to design personalized, privacy-aware marketing experiences across channels. Learners examine predictive audience modeling, behavioral signals, and automated targeting systems used by major advertising platforms. The module explores how AI-driven personalization improves relevance, engagement, and efficiency while addressing the challenges of scale and regulation. Learners design omnichannel journeys that adapt messaging and content delivery in real time, guided by AI performance signals. A strong emphasis is placed on privacy-first personalization, including zero-party data strategies, ethical frameworks, and compliance with global data regulations. The module also addresses a critical strategic challenge—balancing short-term performance optimization with long-term brand equity. By the end of this module, learners will be able to build responsible personalization strategies that drive measurable outcomes without compromising brand distinctiveness or consumer trust.
涵盖的内容
12个视频4篇阅读材料5个作业
12个视频• 总计81分钟
- Behavioral Signals, Lookalike Modeling & Predictive Scoring• 6分钟
- Automated Targeting in Meta, TikTok, YouTube & Programmatic• 7分钟
- Evaluating Prediction-Based Audience Performance• 7分钟
- Designing Cross-Channel Personalized Journeys• 6分钟
- Content Delivery Optimization Using AI Signals• 6分钟
- How Personalization Affects Engagement, Efficiency & Brand Lift• 7分钟
- GDPR, CCPA & Global Privacy Regulations• 7分钟
- Zero-Party Data Collection & Value Exchange Models• 7分钟
- Ethical Personalization Frameworks• 7分钟
- Short-Term Performance vs Long-Term Brand Equity• 7分钟
- AI Optimization Risks to Brand Distinctiveness• 7分钟
- Designing Dual-KPI Campaign Systems• 7分钟
4篇阅读材料• 总计60分钟
- Audience Modeling Report• 15分钟
- Cross-Channel Journey Template• 15分钟
- Privacy-First Targeting Toolkit• 15分钟
- Brand–Performance Balance Playbook• 15分钟
5个作业• 总计120分钟
- Personalization, Targeting & Omnichannel Delivery• 60分钟
- AI-Driven Audience Modelling & Predictive Targeting• 15分钟
- Personalization at Scale Across Omnichannel Ecosystems• 15分钟
- Privacy-First Personalization & Zero-Party Data• 15分钟
- Balancing Brand Building & Performance Marketing• 15分钟
This module equips learners with the frameworks and tools required to run continuous, data-driven optimization programs. Learners study experimentation methods such as A/B testing, multivariate testing, and sequential testing, with a focus on statistical validity and noise reduction. The module then advances into real-time optimization systems powered by AI—covering automated bidding, budget allocation, targeting adjustments, and live performance monitoring. Learners analyse dashboards to detect anomalies, interpret AI-generated signals, and decide when human intervention is necessary. The module also introduces automated experimentation platforms and continuous learning loops that enable always-on optimization. Finally, learners explore incrementality testing and lift studies to distinguish true causal impact from correlation-based attribution. By the end of this module, learners will be able to design reliable experiments, evaluate optimization outcomes, and make confident, evidence-based decisions in dynamic campaign environments.
涵盖的内容
12个视频4篇阅读材料5个作业1个讨论话题
12个视频• 总计61分钟
- A/B, Multivariate, Sequential Testing Explained• 4分钟
- Designing Experiments for Creative, Targeting & Media• 4分钟
- Sample Size, Statistical Significance & Noise• 5分钟
- AI Optimization Systems: Bidding, Budgets, Targeting• 5分钟
- Real-Time Dashboards: Detecting Patterns & Anomalies• 5分钟
- Intervention Decision-Making Using Live AI Signals• 5分钟
- Automated Testing Platforms (Meta Advantage+, Google Performance Max)• 6分钟
- Continuous Learning Systems & Feedback Loops• 5分钟
- Long-Term ROI from Always-On Optimization• 6分钟
- Why Attribution Is Not Enough: Correlation vs Causation• 5分钟
- Incrementality Testing, Holdouts & Lift Studies• 6分钟
- Using AI to Design & Interpret Incrementality Tests• 6分钟
4篇阅读材料• 总计60分钟
- Experimentation Framework Templates• 15分钟
- Optimization Workflow Guide• 15分钟
- Continuous Optimization Handbook• 15分钟
- Incrementality & Causal Testing Toolkit• 15分钟
5个作业• 总计120分钟
- Real-Time Optimization, A/B Testing & Automated Experimentation• 60分钟
- Designing Experimentation Frameworks• 15分钟
- Real-Time Optimization With AI Tools• 15分钟
- Automated Experimentation & Continuous Learning Systems• 15分钟
- Incrementality, Lift Studies & Causal Measurement• 15分钟
1个讨论话题• 总计5分钟
- When Should AI Step In—and When Should You?• 5分钟
This final module focuses on measuring impact, guiding investment decisions, and translating analytics into strategic growth actions. Learners explore advanced attribution models—including multi-touch, data-driven, and algorithmic approaches—to understand true channel contribution. The module also covers AI-powered performance dashboards, predictive KPIs, and forecasting techniques used to evaluate both short-term efficiency and long-term value. Learners examine how media mix modeling complements attribution by capturing long-term and cross-channel effects. In addition, the module addresses leadership-level challenges such as over-optimization risks, algorithmic bias, and governance of AI-driven systems. The course culminates in a capstone project where learners design, analyze, and present a complete AI-optimized brand campaign supported by dashboards and strategic reporting. By the end of this module, learners will be able to defend performance recommendations, guide budget allocation, and operate AI-driven campaign systems with strategic oversight.
涵盖的内容
16个视频5篇阅读材料6个作业
16个视频• 总计103分钟
- Last-Click, MTA, DDA, Algorithmic Attribution• 6分钟
- Evaluating Channel Contribution with Advanced Models• 7分钟
- Budget Allocation Using Attribution Insights• 6分钟
- Building Performance Dashboards Using AI Tools• 7分钟
- Predictive KPIs: ROAS, CAC, LTV, Brand Lift Forecasting• 6分钟
- Interpreting Insights from AI-Based Reports• 5分钟
- Designing the Full Campaign System (Creative → Media → Optimization)• 5分钟
- Creating the Performance Dashboard• 7分钟
- Crafting the Strategic Performance Report• 6分钟
- What Is MMM & When to Use It• 7分钟
- How AI Is Modernizing MMM & Forecasting• 6分钟
- Using MMM Insights for Strategic Budget Allocation• 8分钟
- Over-Optimization Traps in AI-Driven Campaigns• 7分钟
- When Humans Must Override AI Systems• 7分钟
- Operating Models for AI-Driven Campaign Teams• 7分钟
- Course Closure - Gratitude !• 5分钟
5篇阅读材料• 总计65分钟
- Attribution Model Comparison Guide• 15分钟
- Dashboard & Reporting Templates• 15分钟
- Capstone Rubric & Submission Guide• 15分钟
- Case Study• 5分钟
- AI Campaign Operating Model & Risk Playbook• 15分钟
6个作业• 总计135分钟
- Attribution Modelling, Performance Reporting & AI-Driven Growth• 60分钟
- Attribution Modelling in AI-Driven Environments• 15分钟
- AI-Powered Performance Dashboards & Predictive KPIs• 15分钟
- Capstone: Build & Present an AI-Optimized Brand Campaign• 15分钟
- Media Mix Modelling (MMM) & Long-Term Growth Planning• 15分钟
- AI Risk, Over-Optimization & Leadership Decision-Making• 15分钟
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Board Infinity is a full-stack career platform, founded in 2017 that bridges the gap between career aspirants and industry experts. Our platform fosters professional growth, delivering personalized learning experiences, expert career coaching, and diverse opportunities to help individuals fulfill their career dreams. Board Infinity has successfully facilitated over 20,000 career transitions, marking a significant impact in the career development landscape.
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人们为什么选择 Coursera 来帮助自己实现职业发展

Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
常见问题
No coding or data science background is required. The course focuses on applying AI tools and frameworks through practical marketing workflows rather than technical model building.
You’ll work with tools like Chat GPT, Mid journey, Meta Advantage+, Google Performance Max, AI testing platforms, and performance dashboards. The emphasis is on real-world tools used by modern brand and performance teams.
This course covers both. You’ll learn how to use AI for performance optimization while protecting long-term brand equity through dual-KPI systems and experimentation guardrails.
The course is beginner-friendly but professionally deep. You’ll start with core AI concepts and progress to advanced use cases like incrementality testing, attribution modelling, and media mix modelling.
The course takes approximately 20–24 hours in total. Most learners complete it over 4 weeks with 5–6 hours of study per week.
Yes. You’ll complete a capstone project where you build a full AI-optimized brand campaign, including creative strategy, optimization logic, and a performance dashboard.
Absolutely. You’ll learn A/B testing, multivariate testing, automated experimentation, and incrementality measurement using AI-driven optimization systems.
The course includes dedicated lessons on GDPR, CCPA, zero-party data, and ethical personalization frameworks. You’ll learn how to design AI-driven campaigns that are privacy-safe and compliant.
This course is ideal for digital marketers, brand managers, performance marketers, marketing analysts, and professionals transitioning into AI-driven marketing roles.
Learners get practice quizzes, AI dialogues, graded assessments, templates, frameworks, and access to Board Infinity’s learner community and career resources.
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.
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