Recommendation Engine & System Use Cases With Graph Databases
Có thể bạn quan tâm
NODES AI: Online Conference for Graph + AI - April 15, 2026 | Save the Date
Menu- Products
- GRAPH DATABASE
- Neo4j AuraDB Fully managed graph database as a service
- Neo4j Graph Database Self managed, deploy anywhere graph database
- GRAPH ANALYTICS
- Neo4j Aura Graph Analytics Fully managed graph analytics as a service
- Neo4j Graph Data Science Self managed graph algorithms and ML modeling
- GRAPH TOOLS
- Neo4j Fleet Manager A single control plane to manage all your DB instances
- Neo4j Bloom Easy graph visualization and exploration
- Cypher Query Language Declarative graph query language, created by Neo4j
- Neo4j GraphQL Low-code, open-source API library
- PARTNER SOLUTIONS
- Neo4j Graph Analytics for Snowflake Fully managed graph analytics within Snowflake AI Data Cloud
- Neo4j Graph Intelligence for Microsoft Fabric Fully managed graph database and analytics integrated in Fabric
- Use Cases
- AI Systems Back your LLMs with a knowledge graph for better business AI
- Industries and Use Cases Fraud detection, knowledge graphs, financial services, and more
- Customer Success Stories Case studies, customer videos, proof points, and more
- Developers
- Developer Center Best practices, guides, tutorials, and downloads
- GraphAcademy Free online courses and certifications. Join the 100K+ Neo4j experts.
- DEVELOPERS
- Deployment Center Deploy Neo4j on any cloud or architecture
- Documentation Manuals for Neo4j products, Cypher, and drivers
- Developer Blog Deep dives into more technical Neo4j topics
- Community A global forum for online discussion
- DATA SCIENTISTS
- Data Science Documentation Manuals for the Graph Data Science library
- Graph Data Science Home Learn what Neo4j offers for data science
- Get Started With Graph Data Science Download or get started in Sandbox today
- Data Science Community A global forum for data-driven professionals
- AI Systems
- Learn
- LEARN
- Documentation Manuals for Neo4j products, Cypher, and drivers
- GraphAcademy Free online courses and certifications
- Resource Library White papers, datasheets, and more
- Customer Success Stories Case studies, customer videos, proof points, and more
- CONNECT
- Neo4j Events Hub Live and on-demand events, training, webinars, and demos
- Neo4j Blog Announcements, guides, and best practices
- Neo4j Video Hub Covering graph databases, data science, analytics & AI
- FEATURED EVENTS
- Get to Know Graph Webinars Start your graph journey with these 30-minute introductory webinars
- NODES 2025 The biggest graph community gathering dedicated to graph-powered apps, knowledge, and AI!
- Pricing
- QUICK LINKS
- Partners
- Find a Partner
- Become a Partner
- Solution Partners
- OEM Partners
- Technology Partners
- Partner Portal Login
- Company
- About Us
- Newsroom
- Awards and Honors
- Graphs4Good
- Careers
- Culture
- Leadership
- Support
- Aura Login
Real-time recommendation engines are key to the success of any online business. To make relevant recommendations in real time requires the ability to correlate product, customer, inventory, supplier, logistics and even social sentiment data. Moreover, a real-time recommendation engine requires the ability to instantly capture any new interests shown in the customer’s current visit – something that batch processing can’t accomplish. Matching historical and session data is trivial for a graph database like Neo4j.
The key technology in enabling real-time recommendations is the graph database, a technology that is fast leaving traditional relational databases behind. Graph databases easily outperform relational and other NoSQL data stores for connecting masses of buyer and product data (and connected data in general) to gain insight into customer needs and product trends.
Download the White Paper
Fast Track
-
Real-Time Recommendations
Learn how real-time recommendations increases revenues, optimizes margins, and improve customer experiences.
Download the Infographic -
Driving Innovation in Retail with Neo4j
See how real-world retailers use Neo4j to beat online competition with real-time control of inventory and delivery, including personalized product and promotion recommendations.
Read the white paper -
Webinar: Product Recommendations with MongoDB and Neo4j
Watch how MongoDB can be used to provide search and browsing functionality for a product catalog while using Neo4j to provide personalized product recommendations.
Watch the webinar
Personalize user recommendations
Whether you’re leveraging declared social connections or connecting the dots between seemingly unrelated facts to infer interests, graphs offer a world of fresh possibility when it comes to making better real-time recommendations for your users. Connect people to products, services, information or other people based on their user profile, preferences and past online activity such as product purchases.
Multi-criteria search
Enable users to search for products, services or people based on a host of fine-grained criteria and continually improve recommendations by accommodating new data sources and types – without an intensive re-write of your data model.
Highly interconnected data
Whether the recommendation engine uses collaborative- or content-based filtering, it needs to traverse a continually growing, highly interconnected dataset.
Real-time query performance
The power of a recommender system lies in its ability to make a recommendation in real time employing users’ immediate history. However, traversing a complex and highly interconnected dataset to provide contextual insights is a challenge without the right technology.
Growing number of nodes
The accuracy and the scope of recommendations increase as you add more nodes or data points. The rapid growth in the size and number of data elements means the suggestion system needs to accommodate both current and future requirements.
Native graph store
Unlike relational databases, Neo4j stores interconnected user and purchase data that is neither purely linear nor hierarchical. Neo4j’s native graph storage architecture makes it easier to decipher suggestion data by not forcing intermediate indexing at every turn.
Flexible schema
Neo4j’s versatile property graph model makes it easier for organizations to evolve real-time recommendation engines as data types and sources change.
Performance and scalability
Neo4j’s native graph processing engine supports high-performance graph queries on large user datasets to enable real-time decision making.
High availability
The built-in, high-availability features of Neo4j ensure your user data is always available to your mission-critical recommendation engine.
We’re adding support for cloud data warehouses, including Snowflake, Databricks, and BigQuery, to the Import Service in Neo4j AuraDB.
Read MoreNathaniel Felsen, DevOps engineer at Medium, talks about how they are using Neo4j for building a social graph and recommendations for a personalized content experience.
Read moreLearn how eBay used Neo4j to build a shopping app with natural language understanding and artificial intelligence.
Read moreHow the Power of Suggestion Drives Better Decisions and Higher Revenues
What does your customer really want next? The context and relationships within your data decides the success of your enterprise in an increasingly competitive world.
Read NowYour enterprise is driven by connections – now it's time for your database to do the same. Click below to download and dive into Neo4j for yourself – or download the white paper to learn how to leverage the power of graph technology for more relevant and personalized recommendations.
Download Neo4j Download the White PaperTừ khóa » đê Xuất
-
Đề Suất Hay đề Xuất Là đúng Chính Tả? - Kiến Thức 24h
-
07-Đề-xuất-giải-pháp-kiến-trúc-xanh - Construction Plus Asia
-
52022PC0018 - EN - EUR-Lex - European Union
-
"Mẫu Biểu Mẫu đề Xuất Bóng đá Xổ Số【Đi Vào Link∶ ...
-
55 Results For Your Search: "Xổ Số 258_ Đề Xuất Giải đấu Bóng Bầu ...
-
Hasil Untuk 'Tỷ Số Bóng đá đề Xuất Chỉ Xem【Nhấp Vào Link ...
-
Do Youbo đề Xuất【Mở Link∶】Gửi Và Rút Tiền Tùy ý, Số ...
-
ĐỀ XUẤT CHỮ KÝ SỐ ỦY NHIỆM VÀ ỨNG DỤNG ... - ResearchGate
-
[Temperature Check] Create The Uniswap Foundation
-
[PDF] Overview Of Ccs Study In Vietnam - CCOP
-
Can The WTO Penalize Russia For Invading Ukraine?
-
Đề Suất Hay đề Xuất Là đúng Chính Tả? Suất Hay Xuất? - LUV.VN