Create expert AI models without ML expertise. Turn 50 data points into a specialized model that's 100x smaller than a large one.
#1about 1 minute
The benefits and use cases for small models
Small models offer advantages in local deployment for privacy, on-device processing, and efficiency gains like lower cost and latency.
#2about 1 minute
Why specializing small models is difficult
Out-of-the-box small models underperform, and specializing them into expert models requires ML skills and thousands of labeled data points.
#3about 2 minutes
How Distill Labs automates expert model creation
The platform reduces data and skill requirements by using a prompt and 50 data points to generate synthetic data for automated fine-tuning.
#4about 1 minute
Using knowledge distillation to empower developers
The platform leverages a technique called knowledge distillation, enabling developers to build high-quality models without a dedicated machine learning team.
Related jobs
Jobs that call for the skills explored in this talk.
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...
The Best Large Language Models on The MarketLarge 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...
Daniel Cranney
Panel Discussion: Responsible AI in Practice - Real-World Examples and ChallengesIntroductionIn the ever-evolving landscape of artificial intelligence, the concept of "responsible AI" has emerged as a cornerstone for ethical and practical AI implementation. During the WWC24 Panel discussion, three eminent experts—Mina, Bjorn Brin...
From learning to earning
Jobs that call for the skills explored in this talk.