Only for internal preview purposes. Content, features and design are not final.[Build:ecdeff7]
Machine Learning Data Analytics Tool
Machine Learning Data Analytics Tool
technology application

Machine Learning Data Analytics Tool

2
domains
20
stories
12
SDGs
updatedAug 31, 2023
image

©BAIVECTOR @ stock.adobe.com

By using self-improving algorithms to extract data and calculate statistical inferences, it is possible to gather predictive insights on future events.
By using self-improving algorithms to extract data and calculate statistical inferences, it is possible to gather predictive insights on future events.

Machine Learning Data Analytics use self-improving algorithms to extract data and calculate statistical inferences, providing predictive insights on future events. First, raw big data is collected from sources such as devices, log data or user-generated content. Then, the collected data is processed using different techniques, which produces valid and editable data along with predictive features, generating predictive knowledge. After that, prediction improvement takes place using different statistical models, machine learning algorithms and hybrid models.

While traditional data analysis uses a static model built on past data and specialist interference, machine learning automatically looks for predictor variables and their interactions, starting with the outcome variables. When the machine learning algorithm is given a goal, it learns from the collected data which factors and variables are important to achieve that goal. Without relying on specific programming, the algorithms are constantly improving as more information is collected and analyzed.

Gender Equality

Challenges

  • In oppressive governments or companies, these systems may be used to deliberately retain pay gaps or even automate the harassment of female workers.

Opportunities

  • Potential to overcome cultural and social norms, which can entail gender biases in education, business, etc.

  • Gender-sensitive advisory services for vocational training actors due to recurring data collection.

Read More

Related Content

20 stories
9 organizations
2 technology domains
14 industries
  • Agriculture
  • Communications
  • Defense & Security
  • Finance
  • Retail & Logistics
  • Government & Citizenship
  • Healthcare
  • Media & Interface
  • Environment & Resources
  • Energy
  • Entertainment
  • Manufacturing & Production
  • Education
  • Art & Design
37 topics
  • Adapting to Climate Change
  • Agriculture
  • Economic Policy
  • Digital Economy
  • Digital Governance and Society
  • Insurance
  • Investments
  • Agricultural-based Economic Development
  • Agricultural Policy and Rural Development
  • Anti-Corruption & Standards of Integrity
  • Decentralization & Local Governance
  • Forced Displacement and Migration
  • Energy
  • Environment Policy, Economics, and Management
  • Food and Nutrition Security
  • Global Health
  • Green and Climate Finance
  • Green Economy
  • Higher Education
  • Human Rights
  • Inclusion of People with Disabilities
  • Inclusive Finance
  • Land Governance
  • Prevention and Management of Acute Crises and Disasters
  • Social Protection Systems
  • Rural Agricultural and SME Finance
  • Rule of Law
  • Universal Health Coverage
  • Urbanization
  • Water
  • Construction
  • Education
  • Mitigation of Green House Gas Emissions
  • Natural Resources
  • Oceans and Coasts
  • Security
  • Technical and Vocational Education and Training (TVET)
12 SDGs
  • 06 Clean water and Sanitation
  • 07 Affordable and Clean Energy
  • 11 Sustainable Cities and Communities
  • 09 Industry, innovation and infrastructure
  • 12 Responsible Consumption and Production
  • 13 Climate Action
  • 03 Good Health and Well-Being
  • 04 Quality Education
  • 08 Decent Work and Economic Growth
  • 15 Life On Land
  • 17 Partnerships for the Goals
  • 10 Reduce inequalities