Open AccessPosted Content
JAMIP: an artificial-intelligence aided data-driven infrastructure for computational materials informatics
Xingang Zhao,Kun zhou,Bangyu Xing,Ruoting Zhao,Shulin Luo,Tianshu Li,Yuanhui Sun,Guangren Na,Jiahao Xie,Xiaoyu yang,Xinjiang Wang,Xiaoyu Wang,Xin He,Jian Lv,Yuhao Fu,Lijun Zhang +15 more
TL;DR: JAMIP as mentioned in this paper is an artificial-intelligence-aided data-driven infrastructure named Jilin Artificial-intelligence aided Materials-design Integrated Package, which is an open-source Python framework to meet the research requirements of computational materials informatics.
read more
Abstract: Materials informatics has emerged as a promisingly new paradigm for accelerating materials discovery and design. It exploits the intelligent power of machine learning methods in massive materials data from experiments or simulations to seek for new materials, functionality, principles, etc. Developing specialized facility to generate, collect, manage, learn and mine large-scale materials data is crucial to materials informatics. We herein developed an artificial-intelligence-aided data-driven infrastructure named Jilin Artificial-intelligence aided Materials-design Integrated Package (JAMIP), which is an open-source Python framework to meet the research requirements of computational materials informatics. It is integrated by materials production factory, high-throughput first-principles calculations engine, automatic tasks submission and monitoring progress, data extraction, management and storage system, and artificial intelligence machine learning based data mining functions. We have integrated specific features such as inorganic crystal structure prototype database to facilitate high-throughput calculations and essential modules associated with machine learning studies of functional materials. We demonstrated how our developed code is useful in exploring materials informatics of optoelectronic semiconductors by taking halide perovskites as typical case. By obeying the principles of automation, extensibility, reliability and intelligence, the JAMIP code is a promisingly powerful tool contributing to the fast-growing field of computational materials informatics.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
References
•Book
CRC Handbook of Chemistry and Physics
William M. Haynes
- 01 Jan 1973
TL;DR: CRC handbook of chemistry and physics, CRC Handbook of Chemistry and Physics, CRC handbook as discussed by the authors, CRC Handbook for Chemistry and Physiology, CRC Handbook for Physics,
62.8K
•Proceedings Article
Convolutional networks on graphs for learning molecular fingerprints
David Duvenaud,Dougal Maclaurin,Jorge Aguilera-Iparraguirre,Rafael Gómez-Bombarelli,Timothy D. Hirzel,Alán Aspuru-Guzik,Ryan P. Adams +6 more
- 07 Dec 2015
TL;DR: In this paper, a convolutional neural network that operates directly on graphs is proposed to learn end-to-end learning of prediction pipelines whose inputs are graphs of arbitrary size and shape.
Atomic Radii in Crystals
TL;DR: A set of empirical atomic radii has been set up, such that the sum of the radii of two atoms forming a bond in a crystal or molecule gives an approximate value of the internuclear distance.
2.2K
Identifying Pb-free perovskites for solar cells by machine learning
Jino Im,Seongwon Lee,Tae Wook Ko,Hyun Woo Kim,Yun Kyong Hyon,Hyunju Chang +5 more
- 26 Mar 2019
TL;DR: The GBRT algorithm is applied to a dataset of electronic structures for candidate halide double perovskites to predict heat of formation and bandgap, and statistical analysis of the selected features identifies design guidelines for the discovery of new lead-free perovkites.
Big Data-Driven Materials Science and Its FAIR Data Infrastructure
TL;DR: This chapter addresses the forth paradigm of materials research -- big-data driven materials science and its concepts and state-of-the-art are described, and its challenges and chances are discussed.