Tomislav Tipurić
Exploring LLMs across clouds
#1about 3 minutes
Understanding the fundamentals of large language models
Large language models function by predicting the next most probable word in a sequence, with a "temperature" setting controlling randomness.
#2about 4 minutes
Tracing the evolution from LLMs to agentic AI
The journey from text-only models to multimodal interfaces and reasoning models has led to the development of autonomous, event-triggered agents.
#3about 2 minutes
Comparing the LLM strategies of major cloud providers
Microsoft leverages its partnership with OpenAI, Google develops its own Gemini models, and Amazon is building out its Nova family of models.
#4about 4 minutes
A detailed breakdown of foundational models by vendor
Each cloud provider offers a suite of specialized models for tasks like text embedding, multimodal input, reasoning, and image or audio generation.
#5about 3 minutes
Comparing LLM performance benchmarks and pricing models
While Google and OpenAI consistently top performance leaderboards, cloud vendors are evening out their pricing for input and output tokens.
#6about 6 minutes
Understanding retrieval-augmented generation (RAG)
RAG enhances LLM capabilities by grounding them in private data, retrieving relevant information to provide accurate, context-specific answers.
#7about 1 minute
How vector search enables semantic information retrieval
Vector search works by representing text as numerical vectors, where proximity in the vector space indicates a closer semantic meaning.
#8about 3 minutes
Comparing the RAG ecosystem across cloud platforms
Each major cloud offers a complete ecosystem for RAG, including proprietary search solutions, vector databases, storage, and integrated AI studio environments.
#9about 2 minutes
Exploring practical industry use cases for LLMs
Enterprises are already implementing LLMs for document processing automation, contact center analytics, media analysis, and retail recommendation engines.
#10about 1 minute
Implementing generative AI in development teams effectively
Successfully integrating AI tools into development workflows requires a structured change management process, including planning, testing, and documentation.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
03:36 MIN
The rapid evolution and adoption of LLMs
Building Blocks of RAG: From Understanding to Implementation
00:27 MIN
Addressing the core challenges of large language models
Accelerating GenAI Development: Harnessing Astra DB Vector Store and Langflow for LLM-Powered Apps
00:53 MIN
Understanding LLMs, context windows, and RAG
Beyond Prompting: Building Scalable AI with Multi-Agent Systems and MCP
00:04 MIN
The evolution of NLP from early models to modern LLMs
Harry Potter and the Elastic Semantic Search
30:39 MIN
Shifting from general LLMs to specialized models
ChatGPT vs Google: SEO in the Age of AI Search - Eric Enge
09:43 MIN
The technical challenges of running LLMs in browsers
From ML to LLM: On-device AI in the Browser
23:35 MIN
Defining key GenAI concepts like GPT and LLMs
Enter the Brave New World of GenAI with Vector Search
00:05 MIN
Moving beyond hype with real-world generative AI
Semantic AI: Why Embeddings Might Matter More Than LLMs
Featured Partners
Related Videos
How to Avoid LLM Pitfalls - Mete Atamel and Guillaume Laforge
Meta Atamel & Guillaume Laforge
Self-Hosted LLMs: From Zero to Inference
Roberto Carratalá & Cedric Clyburn
Three years of putting LLMs into Software - Lessons learned
Simon A.T. Jiménez
Using LLMs in your Product
Daniel Töws
AI: Superhero or Supervillain? How and Why with Scott Hanselman
Scott Hanselman
Best practices: Building Enterprise Applications that leverage GenAI
Damir
Inside the Mind of an LLM
Emanuele Fabbiani
Creating Industry ready solutions with LLM Models
Vijay Krishan Gupta & Gauravdeep Singh Lotey
Related Articles
View all articles.png?w=240&auto=compress,format)

.png?w=240&auto=compress,format)

From learning to earning
Jobs that call for the skills explored in this talk.

AI Systems and MLOps Engineer for Earth Observation
Forschungszentrum Jülich GmbH
Jülich, Germany
Intermediate
Senior
Linux
Docker
AI Frameworks
Machine Learning

Machine Learning Engineer - Large Language Models (LLM) - Startup
Startup
Charing Cross, United Kingdom
PyTorch
Machine Learning

Manager of Machine Learning (LLM/NLP/Generative AI) - Visas Supported
European Tech Recruit
Municipality of Bilbao, Spain
Junior
GIT
Python
Docker
Computer Vision
Machine Learning
+2

Cloud Solution Architecture - AI Application Development
Microsoft
Charing Cross, United Kingdom
Azure
DevOps
PostgreSQL
Amazon Web Services (AWS)

Agentic AI Architect - Python, LLMs & NLP
FRG Technology Consulting
Intermediate
Azure
Python
Machine Learning

AI Evaluation Data Scientist - AI/ML/LLM - (Hybrid) - Barcelona
European Tech Recruit
Barcelona, Spain
Intermediate
GIT
Python
Pandas
Docker
PyTorch
+2

PhD position (start: early 2026): Tool-Augmented LLMs for Enterprise Data AI
ailylabs
Barcelona, Spain
Python


AI Content Expert (German), Artificial General Intelligence
Amazon.com, Inc.
Barcelona, Spain
XML
HTML
JSON
Python
Scripting (Bash/Python/Go/Ruby)