From Control to Emergent Intelligence focuses on helping learners understand how generative AI behavior is shaped, guided, and extended, moving from surface-level interaction to a systems-level perspective. The course begins with how humans control models at inference time through prompting strategies and sampling parameters, then steps back to examine how models are shaped during training through reinforcement learning, fine-tuning, and feedback. Learners develop a clear mental distinction between intelligence that is baked into a model during training and intelligence that emerges at inference time through structure, reasoning, tools, and memory. This framing allows learners to see modern generative AI not as a static tool, but as a dynamic system whose behavior depends on both how it was trained and how it is used.

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中级
Individuals who are currently using or want to use AI in their personal or professional lives.
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May 2026
7 项作业
了解顶级公司的员工如何掌握热门技能

该课程共有7个模块
Modern Applications of Generative AI focuses on helping learners understand how generative AI behavior is shaped, guided, and extended, moving from surface-level interaction to a systems-level perspective. The course begins with how humans control models at inference time through prompting strategies and sampling parameters, then steps back to examine how models are shaped during training through reinforcement learning, fine-tuning, and feedback. Learners develop a clear mental distinction between intelligence that is baked into a model during training and intelligence that emerges at inference time through structure, reasoning, tools, and memory. This framing allows learners to see modern generative AI not as a static tool, but as a dynamic system whose behavior depends on both how it was trained and how it is used. As the course progresses, learners move beyond single prompts to structured reasoning, model comparison, and evaluation across different architectures and ecosystems, including open-source and mixture-of-experts models. They then explore how tools, memory, and context persistence allow AI systems to operate across time, enabling action-oriented workflows rather than isolated responses. The course concludes with real-world applications across domains such as coding, business, accessibility, and creative work, paired with individual-level ethical reflection on what it means to work alongside AI systems. By the end of the course learners understand not only how to use generative AI effectively today, but how the combination of control, feedback, reasoning, evaluation, and external capabilities gives rise to more autonomous behavior, setting the foundation for agents and more advanced systems.
涵盖的内容
2个视频
2个视频•总计26分钟
- Course Overview•9分钟
- Generative AI Refresher •16分钟
This week emphasizes that prompting and sampling guide behavior without changing the underlying model. By briefly revisiting earlier concepts such as transformers and multimodal generative architectures, learners place prompting within the broader AI landscape while staying focused on practical control. The week closes by raising a key question: if users can shape behavior so effectively at inference time, how does the model learn what “good” behavior is in the first place? That question leads directly into the next week’s exploration of training, reinforcement learning, and fine-tuning.
涵盖的内容
4个视频2篇阅读材料2个作业
4个视频•总计27分钟
- Prompting and Control Parameters Intro•2分钟
- Inference-Time Control - Steering Without Retraining•11分钟
- Why Temperature Changes Everything•10分钟
- If Prompts Shape Behavior, Who Taught the Model What “Good” Is?•5分钟
2篇阅读材料•总计20分钟
- The Invisible Rails: How Prompts Guide AI Behavior•10分钟
- Riding the Probability Wave: From Determinism to Distributions•10分钟
2个作业•总计60分钟
- Controlling Beyond the Prompt - Directing AI’s Creativity•30分钟
- What Did You Actually Control?•30分钟
The week centers on reinforcement learning from human feedback (RLHF) and evaluator models as mechanisms for encoding preferences, alignment, and style into generative systems. Learners examine how feedback shapes model behavior, why RLHF has been so effective, and why it can also contribute to issues such as hallucinations and reward misalignment. The week closes by shifting attention back to inference time, asking how structured prompting and additional compute can enable models to reason, revise, and refine outputs without retraining, setting the stage for the study of reasoning scaffolds and chain-of-thought in the following week.
涵盖的内容
5个视频3篇阅读材料1个作业
5个视频•总计35分钟
- Training and Alignment Intro•2分钟
- Two Kinds of Intelligence - Training vs. Inference•8分钟
- Fine-Tuning as Behavioral Sculpting•8分钟
- Shaping Intelligence•12分钟
- Why We Don’t Retrain for Every Thought•5分钟
3篇阅读材料•总计30分钟
- The Brilliant Mimic: How AI Learns Without a Glimmer of Understanding•10分钟
- The AI Finishing School: How Human Preference Teaches AI to Behave•10分钟
- Case Study: When Good Feedback Leads to Bad AI•10分钟
1个作业•总计30分钟
- What Would You Train vs. What Would You Prompt?•30分钟
This week focuses on inference-time compute and reasoning scaffolds such as chain-of-thought and step-by-step prompting, highlighting how large context windows allow models to “think on the page.” Rather than producing a single answer, models can fill the context window with intermediate steps, enabling feedback into their own reasoning and improving accuracy on complex tasks. The week emphasizes that this process does not involve learning or parameter updates. Instead, reasoning emerges from structure, additional context, and the ability to revisit earlier steps within the same prompt. Learners explore how self-critique, revision, and iterative prompting take advantage of large context windows to refine outputs without retraining. The week closes by shifting from individual reasoning strategies to broader comparison, preparing learners to examine how different models reason, specialize, and perform across tasks, which leads directly into the study of open-source models, mixture-of-experts architectures, and systematic evaluation in the following week.
涵盖的内容
3个视频2篇阅读材料1个作业
3个视频•总计16分钟
- Inference-time compute and Reasoning Intro•2分钟
- Thinking on the Page - Reasoning Without Learning•11分钟
- From Answers to Processes•4分钟
2篇阅读材料•总计20分钟
- The AI's Short-Term Memory: How Context Windows Power On-the-Fly Reasoning•10分钟
- The Great Divide: Why Some AIs "Think" Better Than Others•10分钟
1个作业•总计30分钟
- One Problem, Three Reasoning Paths•30分钟
This week introduces the open-source model ecosystem and Mixture of Experts architectures, using models such as Mistral to illustrate how specialization and routing can improve performance without relying on a single monolithic model. Learners connect these ideas to earlier discussions of fine-tuning, seeing how different approaches shape behavior and capability in complementary ways. The week then shifts to evaluation and benchmarking as essential practices for understanding model strengths, limitations, and tradeoffs. Learners examine the history of benchmarking to see how rapidly frontier models have advanced, from outperforming grade-school benchmarks to surpassing expert-level performance when paired with tools. Concepts such as alignment, alignment drift, and reward hacking are introduced through examples, including Goodhart’s Law, to show why evaluation must evolve alongside model capability. The week closes by highlighting practical considerations around data ownership, IP boundaries, and deployment constraints—particularly in open-source settings—setting up the next week’s focus on tool use, memory, and systems that operate across time.
涵盖的内容
4个视频3篇阅读材料1个作业
4个视频•总计26分钟
- Ecosystem and Evaluation Intro•2分钟
- Why One Model Is Never Enough•8分钟
- Open Source, Distillation, and Specialization•8分钟
- From Benchmarks to Behavior•8分钟
3篇阅读材料•总计30分钟
- The Shockwave from the East: How DeepSeek Rewrote the Rules of AI Dominance•10分钟
- The Finish Line is a Mirage: When AI Benchmarks Stop Mattering•10分钟
- The AI is Just the Beginning: Ownership, Openness, and the Realities of Deployment•10分钟
1个作业•总计30分钟
- One Task, Multiple Models•30分钟
This week explores tool use, showing how models invoke calculators, search, APIs, and retrieval-augmented generation systems to access external capabilities. Tool use marks a key transition from passive reasoning to action-oriented behavior, where models no longer operate solely within their training data or context window. The week also introduces memory and context persistence, examining how short-term context, long-term storage, and summarization enable systems to operate across multiple interactions rather than isolated prompts. Learners explore basic evaluation heuristics that help monitor reliability as systems grow more complex. Together, tools and memory allow AI systems to maintain continuity over time, setting the stage for real-world applications and ethical considerations in the following week.
涵盖的内容
3个视频2篇阅读材料1个作业
3个视频•总计21分钟
- Tools, Memory and Persistence Intro•2分钟
- From Answers to Actions - Why Tools Matter•11分钟
- Memory, Context, and Persistence Across Time•8分钟
2篇阅读材料•总计20分钟
- The Brain and the Hammer: Why AI Tools Are Not AI Intelligence•10分钟
- The Unblinking Memory: Why Continuity in AI Creates Responsibility•10分钟
1个作业•总计30分钟
- One Task, With and Without Tools•30分钟
This week surveys modern applications across domains such as code generation, business workflows, accessibility enhancements, and creative media (music, speech, image, video), emphasizing how AI systems function as productivity multipliers rather than replacements. The week also introduces ethical reflection at the individual level, focusing on what it means to work alongside AI systems in daily practice. Learners consider tradeoffs related to cognition, autonomy, and reliance and discussions of the AI productivity paradox. “Every time you interact with an AI, realize you’re giving something up in exchange.” The course closes by inviting learners to reflect on what AI can do in their chosen field today, forming the basis for the Course 2 capstone and setting up Course 3, where attention shifts from current capabilities to the emergence of agents and the implications of more autonomous systems.
涵盖的内容
4个视频2篇阅读材料1个作业
4个视频•总计24分钟
- Applications and Ethics Intro•2分钟
- From Capability to Practice•4分钟
- The Hidden Costs of Convenience•16分钟
- Wrap Up•2分钟
2篇阅读材料•总计20分钟
- The Universal Intern: How AI is Becoming a Productivity Multiplier in Every Field•10分钟
- AI in the Wild: Case Studies on What Changes... and What Doesn't•10分钟
1个作业•总计30分钟
- What Will You Delegate - and What Will You Keep?•30分钟
攻读学位
课程 是 University of Colorado Boulder提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
攻读学位
课程 是 University of Colorado Boulder提供的以下学位课程的一部分。如果您被录取并注册,您已完成的课程可计入您的学位学习,您的学习进度也可随之转移。
University of Colorado Boulder
Master of Science in Computer Science
学位 · 24 months
University of Colorado Boulder
Graduate Certificate in Artificial Intelligence
学位
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CU Boulder is a dynamic community of scholars and learners on one of the most spectacular college campuses in the country. As one of 34 U.S. public institutions in the prestigious Association of American Universities (AAU), we have a proud tradition of academic excellence, with five Nobel laureates and more than 50 members of prestigious academic academies.
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