Foundations Of Ai/Ml For Product, Program, Project Managers
Published 11/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 156.70 MB | Duration: 0h 42m
Published 11/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 156.70 MB | Duration: 0h 42m
Level Up, Master, Navigate and Future-Proof Your Product, Program, Engineer and Project Management Career with AI/ML
What you'll learn
Understand the Evolution and Types of AI
Comprehend Core Machine Learning Concepts and Algorithms
Grasp Deep Learning Fundamentals
Explore the Natural Language Processing (NLP) Revolution
Evaluate AI Infrastructure and Deployment Options
Implement MLOps Best Practices
Deploy Machine Learning Models in Real-World Environments
Requirements
No prior knowledge of AI, ML, or product management
No Development Skills Needed
Step-by-Step Learning
Hands-On Workshops
Supportive Learning Environment
Description
Success Stories"After completing this course, I secured a position at a leading AI company with a substantial salary increase. The modules on precision and guidance were invaluable."— Alex T., Senior AI Product Manager"The hands-on projects and expert feedback prepared me for real-world challenges. Highly recommend to anyone looking to break into AI field in the PM roles"— Maria L., ML Program ManagerMastering AI Product Management: From Strategy to Implementation : Unlock Your Potential in AI Product Management and Lead the Future of InnovationCourse OverviewIn an era where Artificial Intelligence (AI) is revolutionizing industries, the role of the AI Product Manager has become pivotal. But what is AI Product Management, and how can you excel in this rapidly evolving field? Our comprehensive course, "Mastering AI Product Management: From Strategy to Implementation," is designed to equip you with the essential skills and knowledge to become a leader in AI-driven product innovation.Why This Course?Stay Ahead of the Curve: Understand how AI is transforming product management and how you can leverage it to create cutting-edge products.Career Advancement: Learn how to get into AI product management and explore lucrative career opportunities.Expert Instruction: Gain insights from industry leaders who have successfully navigated the complexities of AI and product management.Hands-On Experience: Work on real-world projects that prepare you for the challenges faced by ML product managers today.Evolution of AI: From Rule-Based Systems to Modern Deep LearningHistorical Context and Key MilestonesAI has come a long way since its inception. In the 1950s, British mathematician Alan Turing proposed the idea of machines mimicking human intelligence, thus sparking the AI revolution. This was the age of rule-based systems where machines followed hard-coded instructions. The evolution continued in the 1980s with expert systems that tried to simulate human decision-making in domains like healthcare.However, real progress in AI started in the 1990s with the advent of machine learning, which allowed systems to learn patterns from data rather than merely relying on preset rules. This transition paved the way for deep learning and powerful AI technologies used today.AI Winter and Recent ResurgenceThe journey was not smooth. There were periods known as AI Winters during the 1970s and 1980s when the lack of computational power and insufficient data caused a slowdown in AI progress. It wasn't until the 2010s, when Big Data, improved hardware (GPUs/TPUs), and innovative deep learning algorithms became available, that AI truly resurged and cemented its place in modern technology.Types of AI: Narrow AI, AGI, and ASIToday, we mostly use Narrow AI, such as recommendation engines and virtual assistants like Siri. In contrast, Artificial General Intelligence (AGI) is an aspirational concept where an AI could perform any cognitive task like a human. Artificial Superintelligence (ASI), which would surpass human abilities, remains theoretical but sparks debates about the ethical implications.Core ML Concepts and AlgorithmsSupervised Learning: This type of learning involves labeled data—like training a child with questions and answers. It’s used in fraud detection and email classification. Algorithms include Logistic Regression, Decision Trees, and SVMs.Unsupervised Learning: In this approach, the AI explores unlabeled data to find hidden patterns—much like a detective uncovering clues. Use cases include customer segmentation and anomaly detection. Common algorithms are K-Means and PCA.Reinforcement Learning: This approach teaches an AI to perform tasks by trial and error, receiving rewards for positive actions. This is used in robotics, game AI, and optimizing logistics networks like Amazon's warehouse robots.Deep Learning FundamentalsNeural Networks are the building blocks of deep learning, made up of interconnected neurons. These mimic how the human brain learns. They are used in applications like credit scoring and language processing.Convolutional Neural Networks (CNNs) focus on image tasks like facial recognition, while Recurrent Neural Networks (RNNs) are ideal for handling sequential data like language or time-series forecasting.The Transformer Architecture, which powers models like ChatGPT, revolutionized AI by allowing parallel processing and using attention mechanisms to focus on important parts of the data.Hands-on Experience and WorkshopsHands-on Module: Building and Deploying ModelsIn this course, we emphasize not just theory but also practical implementation. You will have the opportunity to work with frameworks like Scikit-learn, PyTorch, and AWS SageMaker to build, train, and deploy AI models.Implementing simple ML algorithms using Scikit-learn.Building an image classifier using PyTorch.Deploying models using Docker and Kubernetes.These workshops are designed to provide you with the skills to guide technical teams and make informed decisions about AI projects.AI Infrastructure and DeploymentCloud vs. On-Premise SolutionsAI deployment can either be cloud-based (AWS, Azure, GCP) or on-premise. Cloud solutions are preferred for flexibility and scalability, especially for startups. However, on-premise setups offer better control, which is often required for regulatory compliance.Hardware Acceleration: GPUs and TPUsTraining deep learning models requires powerful hardware. GPUs are versatile and used in research, while TPUs(designed by Google) are optimized for production-level tasks.Containerization and OrchestrationTools like Docker allow developers to package and deploy AI applications consistently across different environments, while Kubernetes helps manage and scale these deployments.MLOps FundamentalsAI models in production need constant monitoring and updating. MLOps (Machine Learning Operations) ensures that models are versioned properly, deployed seamlessly, and monitored for performance, thereby reducing the risks of model drift over time.Natural Language Processing (NLP) RevolutionTraditional NLP vs. Modern NLPTraditional NLP relied on simple statistical methods, while modern NLP, powered by transformers like BERT and GPT, brings deeper context understanding. NLP is crucial for building products that understand and generate human language, from chatbots to sentiment analysis tools.Who Should Enroll?Aspiring product, program, project managers aiming to specialize in AI.Current product managers or engineers seeking to integrate AI into their skillset.Professionals and developers interested in the intersection of AI, technology, and business strategy.Key BenefitsComprehensive Curriculum: Covers all aspects from foundational knowledge to advanced strategies.Real-World Applications: Gain practical experience through projects and case studies.Career Support: Access to job listings, salary guides, and networking events.Frequently Asked QuestionsWhat Should an AI Product Manager Know?A strong grasp of AI technologies, market trends, and customer needs.What is the Lowest Salary for a Product Manager?Entry-level positions start at competitive salaries, with significant growth potential.How Do I Become an AI Project Manager?This course provides the roadmap, combining technical knowledge with management skills.Enroll Today and Transform Your CareerDon't miss the opportunity to become a leader in AI product management. With the knowledge and skills gained from this course, you'll be equipped to drive innovation and make a significant impact in any organization.Enroll NowPeople Also Search ForAI Product Management Jobs SalaryAI Product Management Book PDFBest AI Product Management CoursesAI Product Manager Certification Product SchoolAI-Powered Product Manager Combining Strategy and Technology PDFStay Ahead with the Best AI Product Management CourseJoin thousands of professionals who have advanced their careers with our program. Whether you're near Seattle, WA, prefer remote jobs, or seeking the best online courses, this is the definitive course to master AI product management.
Overview
Section 1: Intro
Lecture 1 Introduction
Section 2: Evolution of AI: From rule-based systems to modern deep learning
Lecture 2 Evolution of AI: From rule-based systems to modern deep learning
Lecture 3 Historical context and key milestones
Lecture 4 AI winter and recent resurgence
Lecture 5 Types of AI: Narrow AI, AGI, and ASI
Section 3: Core ML concepts and algorithms
Lecture 6 Core ML Concepts and Algorithms
Lecture 7 Supervised learning: Classification and regression
Lecture 8 Unsupervised learning: Clustering and dimensionality reduction
Lecture 9 Reinforcement learning: Key concepts and applications
Section 4: Deep learning fundamentals
Lecture 10 Deep Learning Fundamentals
Lecture 11 Neural networks: Architecture and training process
Lecture 12 Convolutional Neural Networks (CNNs) for image processing
Lecture 13 Recurrent Neural Networks (RNNs) for sequential data
Lecture 14 Transformers and attention mechanisms
Section 5: Natural Language Processing revolution
Lecture 15 Natural Language Processing Revolution
Lecture 16 Traditional NLP techniques
Lecture 17 Word embeddings: Word2Vec, GloVe
Lecture 18 Contextual embeddings: ELMo, BERT
Lecture 19 Large Language Models: GPT series, T5, BART
Section 6: AI infrastructure and deployment
Lecture 20 AI Infrastructure and Deployment
Lecture 21 Cloud vs. on-premise solutions
Lecture 22 GPU/TPU acceleration
Lecture 23 Containerization and orchestration (Docker, Kubernetes)
Lecture 24 MLOps fundamentals: Model versioning, deployment, monitoring
Lecture 25 Review and Podcast
Beginner Aspiring Product Managers,Novice Product Managers,Software Engineers Transitioning to Product Management,Entrepreneurs and Startup Founders New to AI/ML,Beginner Business Analysts and Data Professionals,Marketing Professionals Exploring AI/ML Integration,International Beginners and Novices in Product Management