亚洲无码午夜福利视频|日韩国产高清一区二区|欧美老熟妇XB水多毛多|狠狠色成人一区二区三区|在线观看国产精品露脸网站|在线观看一区二区三区视频|激情性无码视频在线观看动漫|99国产精品久久久久久久成人

您的位置:中國博士人才網 > 博士后招收 > 海外博士后招收 > 法國CEA-Grenoble博士后---深層神經網絡納米成像

關注微信

法國CEA-Grenoble博士后---深層神經網絡納米成像

時間:2022-01-30來源:中國博士人才網 作者:佚名

Post-Doctoral Fellow (F/M): Nano-Imaging With Deep Neural Networks (# Of Pos: 2)

Organisation/Company: CEA-GRENOBLE

Research Field: Computer science › Programming Physics › Mathematical physics

Researcher Profile: Recognised Researcher (R2) Established Researcher (R3)

Application Deadline: 31/01/2022 23:00 - Europe/Athens

Location: France › GRENOBLE

Type Of Contract: Temporary

Job Status: Full-time

Hours Per Week: 35

Eu Research Framework Programme: H2020 / ERC

The Subject

The postdoctoral research project is part of a five-year ERC-funded project called CARINE (Coherent diffrActionfoR a Look Inside NanostructurEs towards atomic resolution: catalysis and interfaces – https: // carine-erc.eu) to develop and apply new coherent diffraction imaging (CDI) capabilities. We want to develop and apply machine learning and, more generally, data science approaches for imaging and characterisation of nanoscale systems. Coherent x-ray diffraction imaging is a strong new tool to probe the structure of nanomaterials in a non-destructive way with a spatial resolution of 10 nm. The reconstruction problem, known as “phase retrieval”, is typically solved by iterative algorithms that do not always converge. Machine learning will be applied to different tasks like e.g. phase retrieval, super-resolution, phase unwrapping, etc, to unambiguously reverse the diffraction patterns and image the structure of 3D object with nm-resolution.

The Function

The work will be performed in close collaboration with the ID01 beamline of The European Synchrotron (ESRF), a world-leading x-ray facility located at Grenoble (France). The applicant will apply machine learning:

to the different tasks of the phase retrieval process, like e.g. phase retrieval, super-resolution, denoising, phase unwrapping,

to identify characteristics features in diffraction patterns, like crystallographic defects 1

to directly recover the missing phase and/or the reconstructed complex- valued object from the measured intensity,

to evaluate the algorithm with real datasets collected at ESRF and provide analysis on performance improvements.

Profile Of The Applicant

The applicant should hold a PhD in physics, material science, computer science or closely related science. We expect the candidate to have broad interests in computer science and machine learning as well as a good background in physics and mathematics (linear algebra, numeric methods, statistics). The applicant should have very good skills in programming (Python). He/she should have good interpersonal, communication, organisational and presentational skills. The working language is English.

Contract Characteristics

This is an 18-month contract located at Grenoble, ESRF, with the possibility of a 18-month extension.

Interested applicants should submit:

(1) 1 page cover letter stating the motivation, research experience and goals, and anticipated available date;

(2) curriculum vitae, and

(3) contact information for 3 references (reference letters are not required at this time)

to Marie-Ingrid Richard (mrichard@esrf.fr). Application deadline: January 31, 2022

1 B. Lim, E. Bellec, M. Dupraz, et al., A Convolutional Neural Network for Defect Classification in Bragg Coherent X-Ray Diffraction, NpjComput. Mater. 7, 1 (2021).

Offer Requirements Skills/Qualifications

The applicant should hold a PhD in physics, material science, computer science or closely related science. We expect the candidate to have broad interests in computer science and machine learning as well as a good background in physics and mathematics (linear algebra, numeric methods, statistics). The applicant should have very good skills in programming (Python). He/she should have good interpersonal, communication, organisational and presentational skills. The working language is English.

Contact Information

Organisation/Company: CEA-GRENOBLE

Department: DRFMC

Organisation Type: Other

Country: France

City: GRENOBLE

Street: CEA-Grenoble DRFMC 17, rue des Martyrs, 38054 Grenoble Cedex 9 FRANCE

為防止簡歷投遞丟失請抄送一份至:boshijob@126.com(郵件標題格式:應聘職位名稱+姓名+學歷+專業(yè)+中國博士人才網)

中國-博士人才網發(fā)布

聲明提示:凡本網注明“來源:XXX”的文/圖等稿件,本網轉載出于傳遞更多信息及方便產業(yè)探討之目的,并不意味著本站贊同其觀點或證實其內容的真實性,文章內容僅供參考。

随州市| 凤凰县| 安康市| 通州市| 柯坪县| 黔江区| 贞丰县| 苏尼特右旗| 怀远县| 阿巴嘎旗| 宿松县| 和林格尔县| 海门市| 花莲市| 云梦县| 本溪市| 盐池县| 伊吾县| 黄山市| 桓台县| 双辽市| 怀安县| 兴仁县| 克山县| 永年县| 新乐市| 新源县| 阿拉善右旗| 周至县| 关岭| 淳安县| 廊坊市| 来安县| 乌兰浩特市| 新建县| 万全县| 乌兰浩特市| 文安县| 福建省| 盐亭县| 河池市|