
Build a Solid Conceptual Foundation on Machine Learning, Large Language Models (LLMs) and Agentic AI along with MLOps
β±οΈ Length: 4.3 total hours
β 4.44/5 rating
π₯ 10,975 students
π August 2025 update
Add-On Information:
 
Noteβ Make sure your ππππ¦π² cart has only this course you're going to enroll it now, Remove all other courses from the ππππ¦π² cart before Enrolling!
- 
Course Overview
- This comprehensive course offers an unparalleled entry point into AI and ML for absolute beginners, demystifying its core principles from the ground up.
- It uniquely integrates foundational Machine Learning concepts with cutting-edge Large Language Models (LLMs) and the emerging Agentic AI paradigm.
- Learners will establish a robust conceptual understanding of how intelligent systems learn and operate, distinct from traditional programming.
- Explore the entire ML project lifecycle, emphasizing foundational stages from initial data considerations to model evaluation and ongoing lifecycle management.
- Understand the strategic importance of MLOps (Machine Learning Operations) for deploying, monitoring, and sustaining AI solutions reliably in production.
- Gain clear, accessible explanations of key ML paradigms: supervised, unsupervised, and reinforcement learning, illustrated with relatable, real-world examples.
- Uncover the inner workings of modern LLMs (e.g., ChatGPT), grasping foundational concepts such as tokens, transformer architectures, and effective prompt engineering techniques.
- Delve into Agentic AI fundamentals, including agent design principles, memory systems, planning capabilities, tool integration strategies, and architectural considerations.
- Equip yourself with the essential vocabulary and conceptual clarity needed to confidently navigate and further explore the rapidly evolving AI landscape.
- Its concise 4.3-hour duration delivers high-impact learning, making complex AI topics digestible and approachable for busy individuals seeking a solid entry point.
- The August 2025 update ensures all content remains current and reflects the very latest conceptual frameworks and industry relevance in artificial intelligence.
- 
Requirements / Prerequisites
- Zero prior experience in programming, data science, or machine learning is required, making this course ideal for anyone starting their AI journey.
- Basic computer literacy, including navigating a web browser and managing files, is the only technical prerequisite for effective engagement.
- A keen interest in understanding how artificial intelligence works and a willingness to explore new conceptual frameworks are highly beneficial.
- Access to a stable internet connection and a device capable of streaming video content (laptop or desktop computer) is essential.
- This course is entirely conceptual; therefore, no specific software installations, coding environments, or advanced computational resources are needed.
- 
Skills Covered / Tools Used
- Mastery of core AI and ML terminology, enabling clear communication and understanding within the broader technology domain.
- Ability to conceptually distinguish and apply different machine learning paradigms (supervised, unsupervised, reinforcement learning) to various problem types.
- Understanding of the full ML project lifecycle, from initial data considerations through model training, evaluation, and deployment strategy.
- Foundational principles of prompt engineering, equipping learners to effectively interact with and guide Large Language Models to desired outputs.
- Conceptual awareness of LLM architectures (e.g., transformers) and components (e.g., tokens) without delving into deep technical specifics.
- Knowledge of Agentic AI design elements, including agent architectures, memory management, planning logic, and external tool integration for task execution.
- Insight into MLOps methodologies for ensuring the robust, scalable, and responsible development and operation of machine learning systems.
- Enhanced critical thinking regarding AI capabilities and limitations, fostering an informed and nuanced perspective on intelligent systems.
- High-level conceptual grasp of widely-used ML algorithms such as linear regression, decision trees, and neural networks, without requiring implementation details.
- Strategic framework for approaching real-world problems by identifying which AI components (traditional ML, LLMs, Agentic AI) are most suitable.
- 
Benefits / Outcomes
- Demystify complex AI jargon and concepts, transforming them into clear, understandable insights suitable for any beginner.
- Gain the confidence to engage thoughtfully in AI discussions, contribute to technology strategy, or pursue advanced studies with a solid foundational understanding.
- Establish a cutting-edge AI knowledge base, combining traditional ML with the latest in LLMs and Agentic AI, effectively future-proofing your understanding.
- Develop an informed perspective on the ethical considerations and real-world impact of modern AI systems, fostering responsible innovation.
- Unlock pathways to various AI-adjacent career roles that benefit from a deep conceptual understanding (e.g., AI product management, business analysis, strategic consulting).
- Acquire a holistic view of the AI development process, spanning from theoretical model selection to crucial operational deployment considerations via MLOps.
- Become an early conceptual adopter of Agentic AI, positioning yourself to understand and leverage one of the most exciting and rapidly growing frontiers in artificial intelligence.
- Quickly grasp essential AI principles and their diverse applications, allowing for efficient learning and rapid progression in your AI journey.
- 
PROS
- Comprehensive and current curriculum covering foundational ML, modern LLMs, and emerging Agentic AI, along with essential MLOps context.
- Perfectly tailored for absolute beginners, offering a gentle yet thorough introduction to complex AI concepts without overwhelming technical jargon.
- Exceptional conceptual depth within a short timeframe (4.3 hours), maximizing learning efficiency for busy individuals.
- High student satisfaction and strong credibility, evidenced by a 4.44/5 rating from over 10,975 learners.
- Guaranteed up-to-date content with a scheduled August 2025 update, reflecting the latest advancements and industry trends.
- Provides a unique, forward-looking perspective that integrates the full spectrum of modern AI, setting learners up for future success.
- 
CONS
- Due to its foundational, conceptual nature and brief duration, this course does not delve into hands-on coding or advanced mathematical derivations, necessitating further specialized study for practical implementation skills.
Learning Tracks: English,IT & Software,Other IT & Software
Found It Free? Share It Fast!