Information Retrieval System

Posted By: lucky_aut

Information Retrieval System
Published 6/2025
Duration: 10h 59m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 3.71 GB
Genre: eLearning | Language: English

This subtitle uses the keyword "Information Retrieval" and highlights four core areas covered in your course: Search Al

What you'll learn
- Comprehend and apply the basic concepts of information retrieval.
- Applying searching procedure for user-text, designs and implement the system
- Explore the skills in problem solving using systematic approaches
- Analyze the limitations of different information retrieval techniques

Requirements
- Basic Programming Skills Ability to write and understand simple code (preferably in Python). No advanced programming is required.

Description
This course provides a comprehensive introduction toInformation Retrieval (IR) Systems, which are at the core of search engines, digital libraries, recommendation platforms, and many AI applications. Students will explore the techniques and algorithms that allow machines to process, index, and retrieve relevant information from large collections of unstructured data.

Key topics include document representation, indexing, Boolean and vector space models, ranking algorithms, web search, evaluation metrics, relevance feedback, query expansion, and the role of natural language processing (NLP) in retrieval systems.

Through hands-on exercises, case studies, and mini-projects, students will gain both theoretical knowledge and practical experience in building and evaluating IR systems.

Learning Outcomes:

Understand the architecture and components of modern IR systems

Apply indexing and retrieval models to textual data

Evaluate IR performance using standard metrics like precision, recall, and MAP

Explore advanced topics such as web crawling, link analysis, and personalized search

Gain exposure to tools and techniques used in real-world IR applications

This course provides a comprehensive introduction toInformation Retrieval (IR) Systems, which are at the core of search engines, digital libraries, recommendation platforms, and many AI applications. Students will explore the techniques and algorithms that allow machines to process, index, and retrieve relevant information from large collections of unstructured data.

Key topics include document representation, indexing, Boolean and vector space models, ranking algorithms, web search, evaluation metrics, relevance feedback, query expansion, and the role of natural language processing (NLP) in retrieval systems.

Through hands-on exercises, case studies, and mini-projects, students will gain both theoretical knowledge and practical experience in building and evaluating IR systems.

Learning Outcomes:

Understand the architecture and components of modern IR systems

Apply indexing and retrieval models to textual data

Evaluate IR performance using standard metrics like precision, recall, and MAP

Explore advanced topics such as web crawling, link analysis, and personalized search

Gain exposure to tools and techniques used in real-world IR applications

Who this course is for:
- Have a foundational understanding of data structures, algorithms, and basic probability/statistics.
- Are curious about how search engines, recommendation systems, and document retrieval work behind the scenes.
- Want to explore the design and evaluation of systems that support efficient information access, including web search, semantic retrieval, and personalized recommendations.
More Info

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