Ankit Patel

How AI Models Get Smarter

Andrej Karpathy says the hottest new programming language is English. Learn to master prompt engineering and build powerful, secure applications with today's smartest models.

How AI Models Get Smarter
#1about 2 minutes

How AI models are surpassing human experts

AI models are now exceeding human expert performance on comprehensive benchmarks like MMLU, which measures intelligence across various subjects.

#2about 5 minutes

The shift from labeled to unlabeled data training

The transformer architecture enabled a major shift from training on limited, human-labeled data to pre-training on vast amounts of unlabeled internet text using next-token prediction.

#3about 8 minutes

Refining models with post-training techniques

Pre-trained models are made useful for specific tasks like chatbots through post-training methods such as supervised fine-tuning and reinforcement learning from human feedback (RLHF).

#4about 3 minutes

Improving answer quality with reasoning models

Reasoning models improve accuracy by using test-time scaling, a process where the model prompts itself to double-check facts and logic before providing a final answer.

#5about 5 minutes

A practical workflow for AI application developers

Developers can build AI applications by starting with an API, using structured prompt engineering, and evaluating models in context rather than relying solely on benchmarks.

#6about 3 minutes

Implementing guardrails to secure your application

Protect your AI application from manipulation and misuse by implementing guardrails, detailed system prompts, and specialized guard models to enforce desired behaviors.

#7about 3 minutes

Building modular agentic applications with tools

Agentic applications use a modular architecture where each agent can use specific tools, often defined with natural language prompts, to perform complex tasks.

#8about 4 minutes

Q&A on model behavior and synthetic data

This Q&A covers why LLM responses are non-deterministic, how synthetic data is used for model distillation, and strategies for preventing hallucinations.

Related jobs
Jobs that call for the skills explored in this talk.

test

Milly
Vienna, Austria

Intermediate

test

Milly
Vienna, Austria

Intermediate

Featured Partners

Related Articles

View all articles
CH
Chris Heilmann
Exploring AI: Opportunities and Risks for Developers
In today's rapidly evolving tech landscape, the integration of Artificial Intelligence (AI) in development presents both exciting opportunities and notable risks. This dynamic was the focus of a recent panel discussion featuring industry experts Kent...
Exploring AI: Opportunities and Risks for Developers
BB
Benedikt Bischof
How we Build The Software of Tomorrow
Welcome to this issue of the WeAreDevelopers Live Talk series. This article recaps an interesting talk by Thomas Dohmke who introduced us to the future of AI – coding.This is how Thomas describes himself:I am the CEO of GitHub and drive the company’s...
How we Build The Software of Tomorrow
DC
Daniel Cranney
Stephan Gillich - Bringing AI Everywhere
In the ever-evolving world of technology, AI continues to be the frontier for innovation and transformation. Stephan Gillich, from the AI Center of Excellence at Intel, dove into the subject in a recent session titled "Bringing AI Everywhere," sheddi...
Stephan Gillich - Bringing AI Everywhere

From learning to earning

Jobs that call for the skills explored in this talk.