[Nmlrg] =?Windows-1252?Q?NetworkML_2016_workshop, _co-located_with_IEEE_ICNP'16, _N?= ov. 8–11, 2016, Singapore

Sheng Jiang <jiangsheng@huawei.com> Tue, 19 July 2016 08:41 UTC

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From: Sheng Jiang <jiangsheng@huawei.com>
To: "nmlrg@irtf.org" <nmlrg@irtf.org>
Thread-Topic: NetworkML 2016 workshop, co-located with IEEE ICNP'16, Nov. 8–11, 2016, Singapore
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Date: Tue, 19 Jul 2016 08:41:21 +0000
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Subject: [Nmlrg] =?Windows-1252?Q?NetworkML_2016_workshop, _co-located_with_IEEE_ICNP'16, _N?= ov. 8–11, 2016, Singapore
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Hi, NMLRGers,

This workshop targets very similar area with our NML RG. It is one of the first workshop that is dedicated to machine learning in computer networks.

IEEE ICNP Workshop on Machine Learning in Computer Networks (NetworkML 2016)
Co-located with IEEE ICNP'16, Nov. 8–11, 2016, Singapore.
http://networkml.github.io/

The paper submission deadline to NetworkML 2016 is extended to July 27, 23:59HKT.

Topics including, but not limited to, the following:

- Protocol design and optimization using machine learning
- Resource allocation for shared/virtualized networks using machine learning
- Fault-tolerant network protocols using machine learning
- Machine learning aided network management
- Experiences and best-practices using machine learning in operational networks
- Security, performance, and monitoring applications using machine learning
- Implications and challenges brought by computer networks to machine learning theory and algorithms
- Data-driven network architecture design
- Application-driven network architecture design
- Data analytics for network information mining
- Deep learning and reinforcement learning in network control
- Learning-based network optimization

Regards,

Sheng