Ben Greenberg
How to Decipher User Uncertainty with GenAI and Vector Search
#1about 4 minutes
Why traditional search fails with ambiguous data and queries
Both vague user search queries and poorly structured source data create ambiguity that traditional keyword-based systems cannot effectively resolve.
#2about 5 minutes
Understanding vector embeddings and measuring semantic closeness
Vector embeddings represent data as numerical lists, enabling the measurement of conceptual closeness using mathematical formulas like Euclidean and cosine distance.
#3about 4 minutes
How embedding models capture context and relationships
Embedding models like GPT use transformer layers and neural network principles to analyze input and generate vector embeddings that capture semantic meaning.
#4about 5 minutes
Vector search as the memory layer for RAG and Agentic AI
Vector search provides the essential memory component for both Retrieval-Augmented Generation (RAG) and Agentic AI, which also require tools and planning capabilities.
#5about 3 minutes
The risks of centralized control over AI models
Centralized, closed-source control over how embedding models are trained and weighted poses a significant risk to the future of information and understanding.
#6about 3 minutes
Exploring open source and decentralized AI alternatives
Decentralized and open-source platforms for AI compute and model training offer an alternative to closed systems, preserving user autonomy and control.
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Matching moments
23:43 MIN
Key takeaways for building enterprise GenAI applications
Best practices: Building Enterprise Applications that leverage GenAI
00:05 MIN
Moving beyond hype with real-world generative AI
Semantic AI: Why Embeddings Might Matter More Than LLMs
33:09 MIN
User discernment will shape the future of information retrieval
ChatGPT vs Google: SEO in the Age of AI Search - Eric Enge
43:14 MIN
Practical use cases for vector embeddings
Enter the Brave New World of GenAI with Vector Search
12:47 MIN
A vision for conversational AI in job discovery
Gen AI will replace Job Boards, are you ready?
23:59 MIN
A deep dive into retrieval-augmented generation
Lies, Damned Lies and Large Language Models
21:20 MIN
How vector search enables semantic information retrieval
Exploring LLMs across clouds
22:14 MIN
Using professional embedding models and vector databases
Build RAG from Scratch
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From learning to earning
Jobs that call for the skills explored in this talk.








Generative AI & Agentic AI Senior Consultant 60-100%
Eraneos Switzerland
€124-208K
Senior
Azure
Amazon Web Services (AWS)
