Ankit Patel
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.
Matching moments
26:27 MIN
Managing the rapid pace of AI development and its impact
From Monolith Tinkering to Modern Software Development
09:55 MIN
Shifting from traditional code to AI-powered logic
WWC24 - Ankit Patel - Unlocking the Future Breakthrough Application Performance and Capabilities with NVIDIA
00:19 MIN
The developer's journey for building AI applications
Supercharge your cloud-native applications with Generative AI
22:05 MIN
Analyzing the risks and architecture of current AI models
Opening Keynote by Sir Tim Berners-Lee
14:35 MIN
Developing essential AI and human skills for modern teams
Breaking Silos: Successful Collaboration Between Tech & Business Teams in Complex Enterprise Systems
31:13 MIN
The future of on-device AI in web development
Generative AI power on the web: making web apps smarter with WebGPU and WebNN
25:23 MIN
Overcoming AI model limitations with expert knowledge
Are frameworks like React redundant in an AI world?
18:07 MIN
Why AI optimizations increase the demand for compute
Coffee with Developers - Stephen Jones - NVIDIA
Featured Partners
Related Videos
AI: Superhero or Supervillain? How and Why with Scott Hanselman
Scott Hanselman
Bringing the power of AI to your application.
Krzysztof Cieślak
You are not an AI developer
Zan Markan
AI & Ethics
PJ Hagerty
Open Source AI, To Foundation Models and Beyond
Ankit Patel, Matt White, Philipp Schmid, Lucie-Aimée Kaffee & Andreas Blattmann
WWC24 - Ankit Patel - Unlocking the Future Breakthrough Application Performance and Capabilities with NVIDIA
Ankit Patel
The shadows of reasoning – new design paradigms for a gen AI world
Jonas Andrulis
Chatbots are going to destroy infrastructures and your cloud bills
Stanislas Girard
Related Articles
View all articles



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




Front End Engineering Manager ( Generative AI experience )
Accenture
GraphQL
React Native
Continuous Integration



Ai/ml team manager, artificial general intelligence data services
Amazon.com Inc.
Machine Learning
Speech Recognition

