1 / 16

GENI-related research activities of CSE, Aalto

GENI-related research activities of CSE, Aalto. Zhonghong Ou ( zhonghong.ou@aalto.fi ) Post-doc researcher Department of Computer Science and Engineering (CSE) Aalto University, Finland. Internet of Things Mario Di Francesco mario.francesco@aalto.fi.

Download Presentation

GENI-related research activities of CSE, Aalto

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. GENI-related research activities of CSE, Aalto Zhonghong Ou (zhonghong.ou@aalto.fi) Post-doc researcher Department of Computer Science and Engineering (CSE) Aalto University, Finland

  2. Internet of ThingsMario Di Francescomario.francesco@aalto.fi

  3. Heterogeneous and multimedia datain the Internet of Things • How to store data ofdifferent types oreven multimedia? • What is the impacton performance?

  4. A storage infrastructure for heterogeneous and multimedia data { "ts": "2009-07-30T13:31:37.459Z", "tags": ["POSTPROCESS"], "device_id": "OO14.4FO1.OOOO.O1AB", "sensor_id": [1,2], "data": [700,15.3], "_attachments": { "hello.txt”: { "content_type": "text/plain", "data": "SGVsbG8gd29ybGQh" } } } General data model Document-orienteddatabase infrastructure • support for replication • live updates • web-friendly queryingsystem • support for binary data • metadata Mario Di Francesco, Mayank Raj, Na Li, and SajalK. Das, "A Storage Infrastructure for Heterogeneous and Multimedia Data in the Internet of Things", The 2012 IEEE International Conference on Internet of Things (iThings 2012), Pages 26-33, November 2012

  5. Database performance for IoT data Bulk insert latency Multimedia insert and query latency What is the best solution to store IoT data in the cloud? • performance evaluation of different classes of databases ThiAnhMaiPhan, Jukka K. Nurminen, and Mario Di Francesco, “Cloud Databases for Internet-of-Things Data”, The 2014 IEEE International Conference on Internet of Things (iThings 2014), September 2014

  6. CIVISJukka K. Nurminenjukka.nurminen@aalto.fi

  7. Delay-sensitive mobile cloud • Topics: • Optimal way to update cloud data • Distributed cloud • Key idea: • No new radios • Processing in the cloud • Short delay vs. resource use • Business: • Nokia/HERE cloud • SMEs for new apps Cellular technology LTE Dedicated radio DSRC

  8. CIVIS Social network and big data analysis for sustainable energy use • Transaction to a distributed energy paradigm. • Empowerment of local communities. • ICT as enablers of sustainable social dynamics. • Social dimension relevant to obtain CO2 emissions reduction, energy efficiency and to achieve social goals. Information Network Energy System Social Network

  9. Mobile Cloud GamingMattiSiekkinenmatti.siekkinen@aalto.fi

  10. (Mobile) Cloud Gaming Game rendered in the cloud and streamed to an end-user device through a thin client Latency is a key challenge: even 100 ms can be too much for the most demanding games Extremely distributed cloud infrastructure proven to be beneficial using a prototype in test scenarios • Eg. Cloudlets over Wi-Fi, or LTE with server in operator premises TODO: scalability and overall plausibility tests would require access to a real-world test network such as the GENI • How sparse/dense would the cloud network need to be to support even the most demanding games?

  11. SIGMONA (SDN Concept in Generalized Mobile Network Architectures)SakariLuukkainensakari.luukkainen@aalto.fi

  12. SIGMONA Cloud computing has been emerging as a promising approach to reduce cost for mobile operators Cloudification of the mobile network has momentums • One significant source of expense is the use of dedicated network hardware to provide the required services • Solution: Network Function Virtulisation (NFV) Focus • Distribution of cloud elements in the architecture of a mobile network • VM migration and its requirements and performance between cells or regions

  13. Performance evaluation of public cloudsZhonghong Ouzhonghong.ou@aalto.fi

  14. Performance valuation of public clouds Amazon EC2 & Rackspace Cloud • Introduced in 2006 • Provisioning various categories of instances, diversified types of instances within the same category Hardware heterogeneity likely from • Hardware upgrade and replacement Research problems • Homogeneous vs. heterogeneous? • Performance variation? Did experiments in Amazon EC2 and Rackspace for two periods • 2011 & 2012

  15. Findings Amazon EC2 uses diversified hardware to host the same type of instances. Hardware diversity is the primary culprit for performance variation in the cloud. Different VM scheduling mechanisms are used in EC2, which exacerbates performance variations, especially for networking related operations. In general, the variation between the fast instances and slow instances can reach 40%. In some applications, the variation can even approach up to 60%. By selecting fast instances within the same instance type, Amazon EC2 users can acquire up to 30% of cost saving, if the fast instances have a relatively low probability.

  16. Related publications [1] Z. Ou, H. Zhuang, J. K. Nurminen, A. Ylä-Jääski, and P. Hui. Exploiting hardware heterogeneity within the same instance type of Amazon EC2. 4th USENIX Workshop on Hot Topics in Cloud Computing (HotCloud), 2012. (covered by BBC News, The Register, ACM TechNews etc) [2] Z. Ou, H. Zhuang, A. Lukyanenko, J.K. Nurminen, P. Hui, V. Mazalov, A. Yla-Jaaski. Is the Same Instance Type Created Equal? Exploiting Heterogeneity of Public Clouds," IEEE Transactions on Cloud Computing, vol.1, no.2, pp.201 - 214, July-December 2013. [3] H. Zhuang, X. Liu, Z. Ou, and K. Aberer. Impact of instance seeking strategies on resource allocation in cloud data centers. 2013 IEEE Sixth International Conference on Cloud Computing (CLOUD ’13), 27 – 34, June 2013.

More Related