Directions in ML: Algorithmic foundations of neural architecture search

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=5ke9ZEvXJEk



Duration: 44:51
3,716 views
122


Neural architecture search (NAS)—the problem of selecting which neural model to use for your learning problem—is a promising direction for automating and democratizing machine learning. Early NAS methods achieved impressive results on canonical image classification and language modeling problems, yet these methods were algorithmically complex and massively expensive computationally. More recent heuristics relying on weight-sharing and gradient-based optimization are drastically more computationally efficient while also achieving state-of-the-art performance. However, these heuristics are also complex, are poorly understood, and have recently come under scrutiny because of inconsistent results on new benchmarks and poor performance as a surrogate for fully trained models.

In this talk, we introduce the NAS problem and then present our work studying recent NAS heuristics from first principles. We first perform an extensive ablation study to identify the necessary components of leading NAS methods. We next introduce our geometry-aware framework called GAEA, which exploits the underlying structure of the weight-sharing NAS optimization problem to quickly find high-performance architectures. This leads to simple yet novel algorithms that enjoy faster convergence guarantees than existing gradient-based methods and achieve state-of-the-art accuracy on a wide range of leading NAS benchmarks.

Together, our theory and experiments demonstrate a principled way to co-design optimizers and continuous parameterizations of discrete NAS search spaces.

Ameet Talwalkar is an assistant professor in the machine learning department at Carnegie Mellon University and is also co-founder and chief scientist at Determined AI. His interests are in the field of statistical machine learning. His current work is motivated by the goal of democratizing machine learning and focuses on topics related to scalability, automation, fairness, and interpretability of learning algorithms and systems.

Learn more about the Directions in ML: AutoML and Automating Algorithms virtual speaker series: https://www.microsoft.com/en-us/research/event/directions-in-ml/




Other Videos By Microsoft Research


2020-09-03Importing Animations in Microsoft Expressive Pixels (9 of 9)
2020-09-03Galactic Bell Star Music Demo
2020-09-03Directional Sources & Listeners in Interactive Sound Propagation using Reciprocal Wave Field Coding
2020-09-01Platform for Situated Intelligence Overview
2020-08-28Programming with Proofs for High-assurance Software
2020-08-14From SqueezeNet to SqueezeBERT: Developing Efficient Deep Neural Networks
2020-08-12SkinnerDB: Regret Bounded Query Evaluation using RL
2020-08-07From Paper to Product
2020-08-06Can we make better software by using ML and AI techniques? With Chandra Maddila and Chetan Bansal
2020-08-05MineRL Competition 2020
2020-08-04Directions in ML: Algorithmic foundations of neural architecture search
2020-08-03Microsoft Urban Futures Summer Workshop | Policy and Social Impact [Day 3]
2020-08-03Microsoft Urban Futures Summer Workshop | Sensors and Data [Day 2]
2020-08-03Microsoft Urban Futures Summer Workshop | Data Driven Urban Transformation [Day 1]
2020-07-31Managing Tasks Across the Work-Life Boundary: Opportunities, Challenges, and Directions
2020-07-31Phong Surface: Efficient 3D Model Fitting using Lifted Optimization
2020-07-30How Work From Home Affects Collaboration: Information Workers in a Natural Experiment During COVID19
2020-07-30Empowering and Supporting Remote Software Development Team Members through a Culture of Allyship
2020-07-30Impact of COVID-19 crisis on the future of work in India
2020-07-30Towards a Practical Virtual Office for Mobile Knowledge Workers
2020-07-30Challenges and Gratitude of Software Developers During COVID-19 Working From Home



Tags:
Neural architecture search
NAS
AutoML
Directions in ML
neural model
machine learning
Microsoft Research
Ameet Talwalkar
Artificial Intelligence
AI
Automating Algorithms
Carnegie Mellon University
Determined AI
Machine Learning