精品水蜜桃久久久久久久,成人国产精品动漫欧美一区,亚洲爆乳精品无码一区二区,精品人妻系列无码人妻免费视频,6080yyy午夜理论AA片,动漫精品无码一区二区三区,日韩欧美国产传媒第一区二区,国产91高潮操逼视频流白浆,97国内少妇偷人精品视频免费 ,亚洲国产成人精品久久久国产成人一区二区三区综合区精品久久久中文字幕一区,亚洲精品久久久一区黄无码国产a一级无码毛片一区二区三区,久久久无码国产精精品免费国国产欧美日本韩高清视频一区二区三区免费式,国产成人无码精品久久久免费,精品欧美国产一区二区三区不卡 ,国内精品久久久久久久影视麻豆|国产精品无码亚洲|无限国产资源好片2018|精品91自产拍在线观看|精品乱子伦一区二区三区掼蛋

講座題目: The big data project manager: A story about project data for academics and professionals 2017-10-30


題目:The big data project manager: A story about projectdata for academics and professionals


報(bào)告人:Prof.Mario Vanhoucke,比利時(shí)根特大學(xué)


時(shí)間:10月31日上午9:00-11:00


地點(diǎn):bwin必贏唯一官網(wǎng)313教室



【Abstract】 Thispresentation gives an overview of the past endeavours and the recent trends indata-driven project management (also known as “dynamicscheduling” or “integrated projectmanagementand control”)


The research focuses on linking baselinescheduling to risk management and project control and aimsat providing better quantitative tools toproject managers for improving their decision making processwhen managing their projects. In thepresentation, it will be assumed that the audience is somewhatfamiliar with the project management research,and has some basic knowledge about sometechniques such as the critical path method, schedule risk analysis andearned value management.


The presentation will give an overview on theuse of project data for research and practice, and willshow that nowadays companies talk about the availability of (big) data asthey are currentlyoverwhelmed byterabytes of data. It will be shown that, despite this apparently abundance ofdata,academics still struggle with using these datafor their research studies. It is not the huge availability ofproject data that will enable researchers toadvance the state-of-the-art in project management, butrather the way the data is used according to the strict rules ofacademia.


Nowadays, the use of project data is restrictedto the presence of artificial sets and only one set ofempirical projects. However, recent research trends illustrate that theintegrated use of empirical dataandadvanced techniques from artificial intelligence leads to promising results,which might define thepath for futureresearch avenues. References to a literature overview of project control willbe given tooutline the future of the research onintegrated project management and control.


沁阳市| 唐河县| 泸州市| 集安市| 柳州市| 庆元县| 巨鹿县| 宜阳县| 旺苍县| 会泽县| 荥经县| 华坪县| 赞皇县| 平遥县| 金寨县| 青龙| 乾安县| 曲松县| 苍山县| 邓州市| 竹山县| 阿拉善左旗| 绍兴市| 正镶白旗| 墨脱县| 佳木斯市| 万山特区| 达拉特旗| 沁阳市| 云阳县| 平遥县| 崇州市| 洞头县| 龙游县| 乐安县| 浠水县| 龙岩市| 双牌县| 敦化市| 乌拉特前旗| 东明县|