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Jerry Wang
975 followers -
Google fan, Google Apps developer, Chinese IT specialist, University lecturer, Former Microsoft employee, Happy father, Traveler
Google fan, Google Apps developer, Chinese IT specialist, University lecturer, Former Microsoft employee, Happy father, Traveler

975 followers
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Jerry's posts

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On-premises backup solution for Google Apps

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Looking forward to the new I/O

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Bash should be integrated with windows earlier!

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exciting! especially with the affordable price.

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GDocsDrive 3.0 has been released, FINALLY!

Happy New year!

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Please upgrade to the new version, thanks.
The new hotfix version of CubeBackup (version 2.6.8) is released today. Google made some changes on its Drive APIs last week and caused some file downloading operations failed.  Please upgrade to the latest version as soon as possible.  To upgrade CubeBackup, you can either selecting the "Check for updates" menu item, or restart CubeBackup - this app will check for new updates everytime it starts.

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New chances for some startups
TensorFlow, a deployment system for deep learning neural networks, has been open-sourced by Google. "TensorFlow takes computations described using a dataflow-like model and maps them onto a wide variety of different hardware platforms, ranging from running inference on mobile device platforms such as Android and iOS to modest-sized training and inference systems using single machines containing one or many GPU cards to large-scale training systems running on hundreds of specialized machines with thousands of GPUs. Having a single system that can span such a broad range of platforms significantly simplifies the real-world use of machine learning system, as we have found that having separate systems for large-scale training and small-scale deployment leads to significant maintenance burdens and leaky abstractions. TensorFlow computations are expressed as stateful dataflow graphs, and we have focused on making the system both flexible enough for quickly experimenting with new models for research purposes and sufficiently high performance and robust for production training and deployment of machine learning models. For scaling neural network training to larger deployments, TensorFlow allows clients to easily express various kinds of parallelism through replication and parallel execution of a core model dataflow graph, with many different computational devices all collaborating to update a set of shared parameters or other state. Modest changes in the description of the computation allow a wide variety of different approaches to parallelism to be achieved and tried with low effort. Some TensorFlow uses allow some flexibility in terms of the consistency of parameter updates, and we can easily express and take advantage of these relaxed synchronization requirements in some of our larger deployments."

The supported frontend languages for constructing the computational graphs are C++ and Python.
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