Roger Chen (original) (raw)

Roger Chen

Roger Chen is Co-Founder & CEO of Computable Labs, and he serves as Program Chair for the Artificial Intelligence Conference. Previously, he was a Principal at O'Reilly AlphaTech Ventures (OATV), where he invested in and worked with early-stage startups primarily in the realm of data, machine learning, and robotics. Roger has a deep and hands-on history with technology. Before startups and venture capital, he was an engineer at Oracle, EMC, and Vicor. He also developed novel nanoscale and quantum optics technology as a Ph.D. researcher at UC Berkeley. Roger holds a BS from Boston University and a Ph.D. from UC Berkeley, both in electrical engineering..

Radar

Building and deploying AI applications and systems at scale

October 16, 2019

Ben Lorica and Roger Chen review how companies are building AI applications today.

Checking in on AI tools

April 17, 2019

Ben Lorica and Roger Chen assess the state of AI technologies and adoption in 2019.

The state of automation technologies

October 10, 2018

Ben Lorica and Roger Chen highlight recent trends in data, compute, and machine learning.

Unlocking innovation in AI

September 6, 2018

Ben Lorica and Roger Chen provide a glimpse into tools and trends poised to accelerate AI innovation.

Understanding automation

May 1, 2018

Ben Lorica and Roger Chen discuss the state of reinforcement learning and automation.

The state of AI adoption

September 19, 2017

AI Conference chairs Ben Lorica and Roger Chen reveal the current AI trends they've observed in industry.

Content

2019 Emerging AI Pioneers Showcase winners

September 16, 2019

AI startups vied for awards at the O’Reilly Artificial Intelligence Conference in San Jose.

Setting benchmarks in machine learning

May 16, 2018

Dave Patterson and other industry leaders discuss how MLPerf will define an entire suite of benchmarks to measure performance of software, hardware, and cloud systems.

Data liquidity in the age of inference

September 22, 2017

Probabilistic computation holds too much promise for it to be stifled by playing zero sum games with data.

Intelligent Bits: 16 June 2017

June 16, 2017

AI fighting extremism, intuitive physics, and schema networks.

Intelligent Bits: 9 June 2017

June 9, 2017

Drawing with AI, Apple AI API, United Nations and AI for good, and smart oil and gas.

Intelligent Bits: 26 May 2017

May 26, 2017

Sukiyaki in French style, brick-and-mortar conversion tracking, route-based pricing, and technological productivity.

Intelligent Bits: 19 May 2017

May 19, 2017

AutoML, AI photo editing, AI product studio, and Apple and dark data.

Intelligent Bits: 12 May 2017

May 12, 2017

Medical ImageNet, NVIDIA GTC, corporate responsibility in tech, online pricing

Personalizing fashion with human-in-the-loop machine intelligence

May 5, 2017

How Stitch Fix systematizes collaboration between stylists and AI software.

Intelligent Bits: 05 May 2017

Caffe2, deep learning best practices, intelligent design and wizard hats

Intelligent Bits: 28 April 2017

April 28, 2017

Creative deep neural networks, AI black box, robot food delivery, and brute force productivity.

Deep learning: Modular in theory, inflexible in practice

April 26, 2017

Diogo Almeida examines the capabilities and challenges in deep learning.

Practicalities of employing deep learning at scale

April 20, 2017

Kenny Daniel on implementing neural networks in production.

Shrinking and accelerating deep neural networks

April 13, 2017

Song Han on compression techniques and inference engines to optimize deep learning in production.

Making telecommunications infrastructure smarter

January 9, 2017

Turning physical resource management into a data and learning problem.

Emerging technology has a definition problem

March 17, 2016

The next big technologies are defined by their emerging market value.