Google at CHI 2023

Favorite Posted by Malaya Jules, Program Manager, Google This week, the Conference on Human Factors in Computing Systems (CHI 2023) is being held in Hamburg, Germany. We are proud to be a Hero Sponsor of CHI 2023, a premier conference on human-computer interaction, where Google researchers contribute at all levels.

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Shared by Google AI Technology April 23, 2023

Visual Blocks for ML: Accelerating machine learning prototyping with interactive tools

Favorite Posted by Ruofei Du, Interactive Perception & Graphics Lead, Google Augmented Reality, and Na Li, Tech Lead Manager, Google CoreML Recent deep learning advances have enabled a plethora of high-performance, real-time multimedia applications based on machine learning (ML), such as human body segmentation for video and teleconferencing, depth estimation

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Shared by Google AI Technology April 21, 2023

Bard now helps you code

Favorite Bard can now help with programming and software development tasks, across more than 20 programming languages. View Original Source (blog.google/technology/ai/) Here.

Recent advances in deep long-horizon forecasting

Favorite Posted by Rajat Sen and Abhimanyu Das, Research Scientists, Google Research Time-series forecasting is an important research area that is critical to several scientific and industrial applications, like retail supply chain optimization, energy and traffic prediction, and weather forecasting. In retail use cases, for example, it has been observed

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Shared by Google AI Technology April 20, 2023

Differentially private heatmaps

Favorite Posted by Badih Ghazi, Staff Research Scientist, and Nachiappan Valliappan, Staff Software Engineer, Google Research Recently, differential privacy (DP) has emerged as a mathematically robust notion of user privacy for data aggregation and machine learning (ML), with practical deployments including the 2022 US Census and in industry. Over the

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Shared by Google AI Technology April 18, 2023

Beyond automatic differentiation

Favorite Posted by Matthew Streeter, Software Engineer, Google Research Derivatives play a central role in optimization and machine learning. By locally approximating a training loss, derivatives guide an optimizer toward lower values of the loss. Automatic differentiation frameworks such as TensorFlow, PyTorch, and JAX are an essential part of modern

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Shared by Google AI Technology April 14, 2023

Robotic deep RL at scale: Sorting waste and recyclables with a fleet of robots

Favorite Posted by Sergey Levine, Research Scientist, and Alexander Herzog, Staff Research Software Engineer, Google Research, Brain Team Reinforcement learning (RL) can enable robots to learn complex behaviors through trial-and-error interaction, getting better and better over time. Several of our prior works explored how RL can enable intricate robotic skills,

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Shared by Google AI Technology April 13, 2023