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11/14/2024
CEIBS Library
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Harness the power of comparable data & insights.

The Data Science Studio (DSS) is a platform designed to help users perform forecasting and build & train machine learning models. It is a zero-code platform that provides a GUI that allows users to input data and select options and parameters using radio buttons, dropdowns, and other user interface elements.
DSS is intended for users who want to perform forecasting and build & train machine learning models but may not have programming expertise. It is particularly well-suited for users who want to work with data science tasks using a GUI rather than writing code.

Data Science Studio

 
  • For forecasting, DSS provides three starting points:
  • Curve-fit methods, which are well-suited for data that follows a predictable pattern;
  • Time-series models, which are well-suited for data that exhibits patterns over time;
  • Bayesian Forecasting Technique, which is a custom method developed by GlobalData that is particularly well-suited for data with a high degree of uncertainty or that is influenced by a wide range of factors.
Each of these starting points has a different input template and offers different options and parameters for users to choose from.
 
  • For machine learning, DSS provides a single starting point: "Build your own model."

This starting point offers a consistent process for building and training machine learning models, regardless of the type of problem being solved (regression, classification, or text classification). It includes a range of algorithms and libraries, including scikit-learn and TensorFlow, that can be used to build and train machine learning models for these different types of problems.


GlobalData Explorer → Tools → Data ScienceStudio


Key capabilities: 
  • Data input: DSS allows users to upload data from .csv or .xlsx files.
  • Forecasting: DSS includes tools for performing forecasting, allowing users to input data and specify forecasting parameters.
  • Machine learning model building and training: DSS provides a range of tools and options for building and training machine learning models, including support for popular libraries like scikit-learn and TensorFlow.
  • Output: DSS provides output options that allow users to view, download and save the results of their forecasting or machine learning models predictions
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11/11/2024
CEIBS Library
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Cover academic journals and academic collections across multiple disciplines

CNKI has launched AI-enhanced retrieval function. Welcome to try it out and provide feedback.
The trial period will last until December 31, 2024.



The "AI-enhanced retrieval" feature, building on the traditional retrieval service, integrates the natural language processing and semantic understanding capabilities of large models into information retrieval. It supports retrieving documents and document paragraphs using natural language and innovates from traditional keyword-based retrieval to semantic vector-based retrieval. It also refines the granularity of retrieval from document retrieval to paragraph retrieval, upgrades the retrieval experience from simple retrieval to intelligent interaction, and enhances the quality of service from literal retrieval to standardized guidance retrieval. It also provides more intelligent applications such as generating citations and reading paragraphs of the same topic. It greatly improves the quality and efficiency of literature research, academic innovation, professional retrieval, and evaluation.

Three retrieval methods are provided:
  • Quick retrieval: Supports input of both short and long descriptions, multiple keywords, retrieval formulas, and different languages.
  • Advanced retrieval: Retains traditional advanced retrieval items, supports complex logical combinations, and allows for more complete expressions including technical terms, application fields, research methods, and research objectives.
  • Paragraph retrieval: Supports input of short and long descriptions, multiple keyword inputs, and conceptual queries. It retrieves directly to the original document paragraph and can compare and trace the original document paragraph of the same topic, while also generating intelligent citation text.

It also provides more powerful content input and result output:

  • Input Enhancement: Supports natural language and voice input; intelligently recognizes retrieval intent, generates extended retrieval, and expands and adjusts input expressions; intelligently prompts retrieval words and guides standardized retrieval.
  • Result Enhancement: Balances accuracy and completeness, recalls two ways, integrates semantic and keyword retrieval, and combines input models such as query characteristics, relevance characteristics, document quality characteristics, and historical click characteristics; stronger semantic related recall ability, cross-language recall ability, and fault tolerance ability; supports more standardized retrieval such as authors, institutions, and publications."
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11/05/2024
CEIBS Library
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  • Database Link 数据库链接 (Please log in with your CEIBS account. 请用中欧账号登录) This link opens in a new window
  • Download App 下载应用 This link opens in a new window
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Cover academic journals and academic collections across multiple disciplines

CNKI AI for Academic is an AI-assisted research tool for education, scientific research, and learning scenarios, launched by CNKI. Welcome to try it out and provide feedback!

Trial Period: Nov.5 to Dec.31, 2024
 
Access URL: https://aiplus.cnki.neton campus only
 
Access Steps: 
1.  https://aiplus.cnki.net   Register and log in to your personal account of CNKI.

 

2. After scanning the code to log in, fill in the relevant information and submit it, and you can complete the organization association and use all the functions of the AI assistant.

 

Functions: 

1. Question-Answering Enhanced Retrieval

The AI assistant will comprehensively analyze and understand the user's question, and provide a comprehensive, systematic, and professional answer to the user based on the CNKI's entire database resources. The answer content can be traced back to professional literature.

2. AI-Assisted Study and Research

The AI assistant's study and research mode provides single-article Q&A, article reading, topic Q&A, and full-database Q&A services to assist researchers in deep learning and understanding, and stimulate innovative ideas.

3. AI-Assisted Creation

The AI assistant can help you reduce writing difficulties, stimulate creative inspiration, and experience a dual improvement in writing efficiency and quality when writing papers.

4. Apple Tree Intelligence Agent

Apple Tree Intelligence Agent focuses on completing complex tasks in research scenarios, with the advantages of specialization, high efficiency, and high quality. It achieves efficient and precise fulfillment of specific research scenario requirements through highly customized AI services such as intelligent task planning, sub-task decomposition, and process development. The functionality will continue to be updated.

For more feature introductions, please refer to the User Manual of CNKI AI for Academic.


Please feel free to send your feedback to librefer@ceibs.edu

Reminder: As a research assistant tool, the content generated by CNKI AI Academic Research Assistant is for reference only. Please use it reasonably and properly

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