AAI AI Interview Questions for BeginnersDecember 3, 2024 What is the relationship between Artificial Intelligence – AI, Machine Learning – ML, Deep Learning, Natural Language processing – NLP,…
AAI 4.1 Responsible AI: Ethical and Fair AI SystemsDecember 1, 2024 Overview of Responsible AI Responsible AI refers to a set of guidelines and principles that ensure AI systems are: Core…
AAI 3.10 Integration of LLMs into ApplicationsNovember 21, 2024 1. Questions for Integration into Applications: 2. Retrieval-Augmented Generation (RAG): 3. Handling Outdated Knowledge: 4. Business Objectives and Application Design:…
AAI 3.9 Evaluating Foundation Model PerformanceNovember 21, 2024 1. Questions to Consider for Model Integration: 2. Inference Challenges: 3. Optimization Techniques: 4. Evaluation Metrics for Generative AI: 5.…
AAI 3.8 Preparing Data for Fine-Tuning Foundation ModelsNovember 20, 2024 1. Preparing Training Data: 2. Fine-Tuning Process: 3. Data Preparation in AWS: 4. Continuous Pre-training:
AAI 3.7 Training and Fine-Tuning Foundation ModelsNovember 20, 2024 1. Key Elements of Training a Foundation Model: 2. Difference Between Pre-training and Fine-tuning: 3. Challenges with Fine-tuning: 4. PEFT…
AAI 3.6 Prompt Engineering and Latent SpaceNovember 19, 2024 1. Latent Space and Language Models: 2. Hallucinations and Model Limitations: 3. Key Techniques in Prompt Engineering: 4. Prompt Engineering…
AAI 3.5 Effective Prompt Engineering TechniquesNovember 19, 2024 1. What is a Prompt? 2. Types of Prompting Techniques: 3. What is Prompt Engineering? 4. Common Tasks Supported by…
AAI 3.4 RAG, Vector Databases, and AgentsNovember 18, 2024 1. RAG (Retrieval Augmented Generation): 2. Using Vector Databases in the Real World: 3. Hallucinations in LLMs: 4. Amazon Bedrock…
AAI 3.3 Inference Parameters and Prompt EngineeringNovember 18, 2024 1. Inference and Inference Parameters: 2. Amazon Bedrock Inference Parameters: 3. Finding the Optimal Balance: 4. Prompt Engineering: 5. Vector…