Ai For Presales And Solutions Architects
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.35 GB | Duration: 2h 44m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.35 GB | Duration: 2h 44m
Become that Trusted Advisor for your customers in AI/ML solutions.
What you'll learn
Learn key AI concepts, common AI services, and practical approaches for integrating AI into solution designs
Learn how to translate business requirements into AI Solutions
Learn about Cloud AI services on AWS, GCP and Azure
Learn about Generative AI services (ChatGPT, Google Gemini, Claude AI, etic)
Learn about the AI project lifecycle and its phases
Learn about the four pillars of AI
Become an excellent AI solutions professional
Requirements
Access to cloud services on AWS, GCP and Azure
Access to ChatGPT, Claude AI, Google Gemini
Description
Welcome to AI for Presales and Solutions ArchitectsTarget Audience: Solutions Architects, Technical Leads, and anyone involved in designing and implementing technical solutions who wants to understand how to leverage AI effectively.This course will help equip customer-facing solutions selling professionals with a foundational understanding of key AI concepts, standard AI services, and practical approaches for integrating AI into solution designs, enabling them to identify opportunities and effectively communicate with AI/ML teams. In this vendor-agnostic course, we will cover AWS, GCP, and Azure services as well as Generative AI solutions such as ChatGPT, Gemini, Claude and CoPilot. Become that Trusted Advisor for your customers in AI/ML solutions.Module 1: AI Fundamentals for Architects and Engineers 1.1 Introduction: Why AI Matters for Solutions Architects (5 minutes)The evolving landscape since AI is now a core component of modern solutions.Practical implications for solution design.Reasoning and understanding business problems that AI could solve.1.2 Core AI Concepts Refresher Machine Learning (ML):Supervised Learning Unsupervised Learning Reinforcement Learning Neural Networks Key applications What it is and its disruptive potential.Large Language Models (LLMs) and Their Role in Modern Applications.1.3 The AI/ML Project Lifecycle from an SA Perspective Identify the phases of the project lifecycle.Problem FramingData Collection & Preparation Model Training & Evaluation Deployment & MLOps Integration Module 2: AI Services & Integration Patterns 2.1 Overview of Cloud AI Services Managed AI Services (PaaS/SaaS):Vision: Image recognition, object detection, facial analysis Speech: Speech-to-text, text-to-speech Language: Natural Language Processing (NLP), sentiment analysis, entity extraction, translation Generative AI/LLMs: Highlighting managed API access Forecasting/Recommendation: When to use Managed Services vs. Custom ML Models 2.2 Common AI Integration Patterns and Data Considerations API-driven Integration: Calling managed AI services.Asynchronous Processing Batch Processing Real-time Inference Data governance, privacy, and security Data pipelines for AI
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 Course Material Download
Section 2: Module 1 -Core AI Fundamentals for Solutions Architect
Lecture 3 Module One Overview
Lecture 4 1.1 Why AI Matters Now More than ever for SA's
Lecture 5 Discussion - Importance of AI/ML in Sales and Solutions Engineering
Lecture 6 AI in Business Processes
Lecture 7 Discussion: Expectations and Outcomes
Lecture 8 Benefits of AI/ML for Business
Lecture 9 1.2 Core AI Concepts
Lecture 10 What is AI and ML
Lecture 11 What are the Machine Learning Approaches?
Lecture 12 Whiteboard - How AI works
Lecture 13 Compare and Contrast AI/ML
Lecture 14 Deep Learning
Lecture 15 Natural Language Processing (NLP)
Lecture 16 Generative AI, Predictive AI, Agentic AI, and others.
Lecture 17 Understanding Algorithms
Lecture 18 1.3 SA Perspective - Project Lifecycle and Value Proposition
Lecture 19 Whiteboard - AI ML Project Walkthru
Lecture 20 4 Pillars of AI Strategy
Lecture 21 Importance of data in AI/ML solutions
Lecture 22 Whiteboard - Presenting a Value-Driven Proposition and Roadmap
Lecture 23 Demonstration - Google Cloud Value Proposition
Section 3: Module 2. AI Services and Integration Patterns
Lecture 24 Module Two Overview
Lecture 25 2.1 Overview of AI Cloud Services
Lecture 26 Key Players in the Market
Lecture 27 Cloud Key Players in the Market
Lecture 28 Trends and Advancements
Lecture 29 Whiteboard - AI/ML Use Case - AWS ML Flow
Lecture 30 2.2 AI Integration Patterns and Data Considerations
Lecture 31 Data Sources and APIS
Lecture 32 Open Source Libraries
Solutions Architects, Technical Leads, and anyone involved in designing and implementing technical solutions who wants to understand how to leverage AI effectively.