Tomislav Tipurić

Exploring LLMs across clouds

Don't just pick an LLM, pick an ecosystem. This session compares the complete generative AI stacks from the top three cloud providers.

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.

Featured Partners

Related Articles

View all articles
KD
Krissy Davis
The Best Large Language Models on The Market
Large language models are sophisticated programs that enable machines to comprehend and generate human-like text. They have been the foundation of natural language processing for almost a decade. Although generative AI has only recently gained popula...
The Best Large Language Models on The Market
CH
Chris Heilmann
With AIs wide open - WeAreDevelopers at All Things Open 2025
Last week our VP of Developer Relations, Chris Heilmann, flew to Raleigh, North Carolina to present at All Things Open . An excellent event he had spoken at a few times in the past and this being the “Lucky 13” edition, he didn’t hesitate to come and...
With AIs wide open - WeAreDevelopers at All Things Open 2025
LM
Luis Minvielle
What Are Large Language Models?
Developers and writers can finally agree on one thing: Large Language Models, the subset of AIs that drive ChatGPT and its competitors, are stunning tech creations. Developers enjoying the likes of GitHub Copilot know the feeling: this new kind of te...
What Are Large Language Models?
BR
Benjamin Ruschin
Who Owns Your Content in the Age of LLMs?
AI has changed the web forever. Large language models (LLMs) are changing how information is produced, shared and consumed on the web. In fact, estimates suggest that now more than half of all web traffic is made up of bots , with a sizable amount of...
Who Owns Your Content in the Age of LLMs?

From learning to earning

Jobs that call for the skills explored in this talk.