![]() This project is made possible by the community surrounding it and especially the wonderful people and projects listed in this document. How long does it take to create an index and return a search result? Using Realm and Kinesis, initiate a workflow where as documents are updated, they're pushed to a Kinesis queue and then pushed to Atlas to be searched. Restaurant finder app that showcases search queries ![]() Using synonyms, auto-improve your search results The ability to combine multiple indexes to perform performant queries. Run a search query that spans multiple collectionsĭynamically cluster search results into categories in order to drill downīuilding our own custom analyzers to satisfy different app requirements Implement a synonym-based search functionality Using the Atlas Search near operator to sort documents based on a numeric, date, or geo field. If you produce music, chances are you have amassed libraries upon libraries of drum samples, and your starting to lose track of what you have. Implement relevance weights where some fields more important than other fields.Įnsure the boosted variable doesn’t overwhelm the relevance of our search results. Return a count of the documents returned.Ībility to build search applications that limit what an end user can search for based on their tenancy. The synonym mapping in a collections index specifies the synonyms source collection and the analyzer to use with the collection. Understand how the mongot (lucene) returns results in order to tune performance. Unfortunately, its not also a drum machine. Review the basic components of a full-text search engine (including tokenization), and build one.Īdd a relevance score and hit highlights to the resultsĬombine two or more operators into a single query (or clause) Having played a bit with Sononym, I can say that Sononym is MUCH better at analysis than XO. This includes examples on using the API to create custom synonym mapping layers, testing search index consistency latency, and more. □ Miscellaneous - Other content that didn't fit the categories above. ![]() Learn how others integrate technologies such as Kafka and S3 into their Full Text Search stack to scale effortlessly. □ Architecture - Full Text Search doesn't live in a bubble, the data needs to come in and often out as well. Examples include real world use cases such as relevance score boosting in a restaurant search engine. □ Patterns & Use Cases - Combine your knowledge from Foundations and apply it to solve actual business problems. □️ Foundations - Start with building a full text search application from scratch in under 100 lines of Python code, then continue to apply additional search-native functions like autocomplete, scoring, highlighting and more. This Full Text Search Guide teaches the foundations and enhancements, so you can build large-scale full text search applications without managing indexes, hardware or replication. Full Text Search Directly in your Databaseīuild fast, relevant, full-text search capabilities on top of your data in the cloud ![]()
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