Presentation: Machine Intelligence at Google Scale
Share this on:
Abstract
The biggest challenge of Deep Learning technology is the scalability. As long as using single GPU server, you have to wait for hours or days to get the result of your work. This doesn't scale for production service, so you need distributed training on the cloud eventually, or take advantage of pre-trained models. Google has been building infrastructure for training the large scale neural network on the cloud for years, and started to share the technology with external developers. In this session, we present pre-trained ML services such as Cloud Vision API and Speech API that works without any training. In addition, we introduce Cloud AutoML, which helps customizing our pre-trained models with your data. Also, we look at how TensorFlow and Cloud Machine Learning can accelerate custom model training with Google's distributed training infrastructure.
Last Year's Tracks
Monday, 5 March
-
Leading Edge Backend Languages
Code the future! How cutting-edge programming languages and their more-established forerunners can help solve today and tomorrow’s server-side technical problems.
-
Security: Red XOR Blue Team
Security from the defender's AND the attacker's point of view
-
Microservices/ Serverless: Patterns and Practices
Stories of success and failure building modern service and function-based applications, including event sourcing, reactive, decomposition, & more.
-
Stream Processing in the Modern Age
Compelling applications of stream processing & recent advances in the field
-
DevEx: The Next Evolution of DevOps
Removing friction from the developer experience.
-
Modern CS in the Real World
Applied trends in Computer Science that are likely to affect Software Engineers today.
-
Speaker AMAs (Ask Me Anything)
Tuesday, 6 March
-
Next Gen Banking: It’s not all Blockchains and ICOs
Great technologies like Blockchain, smartphones and biometrics must not be limited to just faster banking, but better banking.
-
Observability: Logging, Alerting and Tracing
Observability in modern large distributed computer systems
-
Building Great Engineering Cultures & Organizations
Stories of cultural change in organizations
-
Architectures You've Always Wondered About
Topics like next-gen architecture mixed with applied use cases found in today's large-scale systems, self-driving cars, network routing, scale, robotics, cloud deployments, and more.
-
The Practice & Frontiers of AI
Learn about machine learning in practice and on the horizon
-
JavaScript and Beyond: The Future of the Frontend
Exploring the great frontend frameworks that make JavaScript so popular and theg JavaScript-based languages revolutionising frontend development.
-
Speaker AMAs (Ask Me Anything)
Wednesday, 7 March
-
Distributed Stateful Systems
Architecting and leveraging NoSQL revisitied
-
Operating Systems: LinuxKit, Unikernels, & Beyond
Applied, practical, & real-world deep-dive into industry adoption of OS, containers and virtualisation, including Linux on Windows, LinuxKit, and Unikernels
-
Architecting for Failure
If you're not architecting for failure you're heading for failure
-
Evolving Java and the JVM: Mobile, Micro and Modular
Although the Java language is holding strong as a developer favourite, new languages and paradigms are being embraced on JVM.
-
Tech Ethics in Action
Learning from the experiences of real-world companies driving technology decisions from ethics as much as technology.
-
Bare Knuckle Performance
Killing latency and getting the most out of your hardware
-
Speaker AMAs (Ask Me Anything)