Machine Learning and Social Media to Mine and Disseminate Big Scientific Data
Title | Machine Learning and Social Media to Mine and Disseminate Big Scientific Data |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Devarakonda, Ranjeet, Giansiracusa, Michael, Kumar, Jitendra |
Conference Name | 2018 IEEE International Conference on Big Data (Big Data) |
ISBN Number | 978-1-5386-5035-6 |
Keywords | atmospheric radiation measurement data center, big scientific data, Data discovery, data dissemination, data mining, data retrieval, data streams, data-intensive projects, Database languages, database queries, Databases, easy search, environmental data centers, Human Behavior, information dissemination, Laboratories, learning (artificial intelligence), machine learning, machine learning framework, natural language processing, Oak Ridge National Laboratory, ORNL, pubcrawl, query processing, relational databases, resilience, Resiliency, Scalability, scientific data mining, scientific databases, social media, social media interaction, social networking (online), SQL, SQL language, SQL queries, stream pipelining, structured databases, Structured Query Language, Twitter |
Abstract | One of the challenges in supplying the communities with wider access to scientific databases is the need for knowledge of database languages like Structured Query Language (SQL). Although the SQL language has been published in many forms, not everybody is able to write SQL queries. Another challenge is that it might not be practical to make the public aware of the structure of databases. There is a need for novice users to query relational databases using their natural language. To solve this problem, many natural language interfaces to structured databases have been developed. The goal is to provide a more intuitive method for generating database queries and delivering responses. Through social media, which makes it possible to interact with a wide section of the population, and with the help of natural language processing, researchers at the Atmospheric Radiation Measurement (ARM) Data Center at Oak Ridge National Laboratory (ORNL) have developed a concept to enable easy search and retrieval of data from several environmental data centers for the scientific community through social media.Using a machine learning framework that maps natural language text to thousands of datasets, instruments, variables, and data streams, the prototype system would allow users to request data through Twitter and receive a link (via tweet) to applicable data results on the project's search catalog tailored to their key words. This automated identification of relevant data from various petascale archives at ORNL could increase convenience, access, and use of the project's data by the broader community. In this paper we discuss how some data-intensive projects at ORNL are using innovative ways to help in data discovery. |
URL | https://ieeexplore.ieee.org/document/8622470 |
DOI | 10.1109/BigData.2018.8622470 |
Citation Key | devarakonda_machine_2018 |
- social media
- ORNL
- pubcrawl
- query processing
- relational databases
- resilience
- Resiliency
- Scalability
- scientific data mining
- scientific databases
- Oak Ridge National Laboratory
- social media interaction
- social networking (online)
- SQL
- SQL language
- SQL queries
- stream pipelining
- structured databases
- Structured Query Language
- Databases
- big scientific data
- Data discovery
- data dissemination
- Data mining
- data retrieval
- data streams
- data-intensive projects
- Database languages
- database queries
- atmospheric radiation measurement data center
- easy search
- environmental data centers
- Human behavior
- information dissemination
- Laboratories
- learning (artificial intelligence)
- machine learning
- machine learning framework
- natural language processing