Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Semantic Web: Knowledge Graphs
Graph Chatbot
Related lectures (32)
Ontology Engineering: Concepts and Applications
Covers ontology as a knowledge repository with agreed-upon meanings, evolution, continuous updating, and smart ontology design.
Data Wrangling with Hive: Managing Big Data Efficiently
Covers data wrangling techniques using Apache Hive for efficient big data management.
Neuroinformatics, Text Mining
Explores text mining in neuroinformatics to extract brain connectivity data and annotate model parameters from scientific literature.
Diffusion-Convection: Modeling and Schemes
Covers modeling and numerical schemes for diffusion-convection problems.
Information Extraction & Knowledge Inference
Explores information extraction, knowledge inference, taxonomy induction, and entity disambiguation.
Neuroscience Data Analysis
Explores neuroscience data analysis, emphasizing structured data, computational tools, and the trend of computational neuroscience as a service.
Data, big data, clouds and IoT
Explores data representation, databases, cloud computing, and challenges in the cloud environment.
Causal Inference: Estimands and Ontologies
Explores causal inference, emphasizing the importance of committing to an ontology for drawing causal inferences and selecting appropriate estimands.
Handling Data: Intro to Pandas
Introduces the fundamentals of handling data, emphasizing the importance of Pandas and data modeling for effective analysis.
Data Modeling: Concepts and Applications
Explores data modeling concepts, SQL implementations, and practical applications in handling missing data.
Distributed Information Systems: Overview and Models
Covers Distributed Information Systems, key tasks, methods, projects, evaluation, and exam support.
Foundations of Information Systems: Course Overview and Key Concepts
Introduces the course on information systems, covering its structure, objectives, and foundational concepts essential for understanding data management and decision-making.
Previous
Page 2 of 2
Next