Troubleshooting Typesense API Key Error and Creating Search Functionality
TLDR Bill reported a Typesense API error, which Jason explained as due to a bad key. Bill also sought input on a job portal search functionality, which Jason assisted with, emphasizing normalization of job titles and use of facet query outside of Typesense.
Nov 16, 2021 (24 months ago)
However, I suspect that they have another field in each document that is the normalized job title, and they use that as the grouping key when showing results.
So each of Java Developer, Java-Engineer, Java Developer/Frontend, Java Frontend Developer, etc might have a field called "normalized_position_title" with a value of "Java Developer"
Indexed 2776 threads (79% resolved)
Understanding and Implementing Typesense Dart Library with Flutter
Alexandro sought help with the Typesense Dart library. Jason explained that the library is in progress, discussed utilizing other HTTP libraries, and provided detailed instructions on utilizing Typesense with Flutter. Alexandro provided feedback on the Typesense UI and expressed interest in creating a tutorial video.
Troubleshooting Typesense Setup and Understanding Facets and Keywords
Demitri encountered errors when exploring Typesense for the first time. Jason guided them through troubleshooting and discussed facets, keyword settings, and widget configurations. Helin shared a Python demo app and its source code to help Demitri with their project.
Resolve Facets and Sorting Issues with Typesense
Ethan needed assistance with getting all facet values and sorting results by date using Typesense. Jason provided guidance on how to use Typesense properties to accomplish these tasks, and resolved issues related to specific use-cases provided by Ethan and Rushil.
Phrase Search Relevancy and Weights Fix
Jan reported an issue with phrase search relevancy using Typesense Instantsearch Adapter. The problem occurred when searching phrases with double quotes. The team identified the issue to be related to weights and implemented a fix, improving the search results.
Utilizing Vector Search and Word Embeddings for Comprehensive Search in Typesense
Bill sought clarification on using vector search with multiple word embeddings in Typesense and using them instead of OpenAI's embedding. Kishore Nallan and Jason informed him that their development version 0.25 supports open source embedding models. They also resolved Bill's concerns regarding search performance, language support, and limitations in the search parameters.