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add course.adoc for gds-applied-algorithm
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= Applied Algorithms in GDS
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:usecase: recommendations
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:categories: data-scientist:2, data-analysis:11, intermediate:4, analytics:2
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:duration: 4-5 hours
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:caption: Apply graph algorithms to solve real-world industry problems
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:status: draft
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:key-points: Root cause analysis, Fraud detection, Supply chain optimization, Citation networks, Node embeddings
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:graph-analytics-plugin: true
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== Course Description
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This course demonstrates how to apply GDS algorithms to solve real-world industry problems.
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You've learned the fundamentals of graph projections, algorithm execution, and configuration in the link:https://graphacademy.neo4j.com/courses/gds-fundamentals/[Getting Started with GDS^] course.
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Now you'll see these techniques solve actual challenges across manufacturing, fraud detection, logistics, research, and machine learning.
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Each module focuses on a different industry use case, showing not just *how* to run algorithms, but *when* and *why* professionals choose specific approaches.
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You'll work with realistic datasets, implement complete analytical workflows, and understand the business reasoning behind each technique.
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By the end of this course, you'll be able to design and implement graph-based solutions for complex industry problems.
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The course automatically creates a new `movie recommendations` sandbox within link:https://sandbox.neo4j.com/?usecase=recommendations[Neo4j Sandbox] that you will use throughout the course.
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== Prerequisites
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This course is intended for analysts and data scientists who have:
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* Completed link:https://graphacademy.neo4j.com/courses/gds-fundamentals/[Getting Started with GDS^] or equivalent experience
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* Understanding of graph projections (monopartite, bipartite, multipartite)
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* Familiarity with algorithm execution modes (stream, write, mutate)
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* Basic knowledge of algorithm configuration (orientation, weights)
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== Duration
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4-5 hours
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== What you will learn
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* **Manufacturing optimization:** Use centrality and community detection for root cause analysis in production systems
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* **Fraud detection:** Build network-based fraud identification systems using graph patterns
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* **Supply chain logistics:** Optimize routes and logistics with pathfinding algorithms
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* **Citation networks:** Map research influence and identify key papers using centrality measures
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* **Node embeddings:** Create structural representations for machine learning pipelines
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// [.includes]
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// == This course includes
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// * [lessons]#20+ lessons# across five industry-focused modules
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// * [challenges]#Hands-on challenges# with realistic datasets
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// * [quizes]#Validation exercises# integrated throughout
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// * Complete analytical workflows from problem definition to implementation
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