Libraries tagged by semantic-search

nlpcloud/nlpcloud-client

25 Favers
26438 Downloads

NLP Cloud serves high performance pre-trained or custom models for NER, sentiment-analysis, classification, summarization, paraphrasing, grammar and spelling correction, keywords and keyphrases extraction, chatbot, product description and ad generation, intent classification, text generation, image generation, code generation, question answering, automatic speech recognition, machine translation, language detection, semantic search, semantic similarity, tokenization, POS tagging, speech synthesis, embeddings, and dependency parsing. It is ready for production, served through a REST API. This is the PHP client for the API. More details here: https://nlpcloud.com. Documentation: https://docs.nlpcloud.com. Github: https://github.com/nlpcloud/nlpcloud-php

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tenqz/qdrant

5 Favers
1284 Downloads

Simple PHP client for Qdrant vector database. Easy-to-use library for storing, searching, and managing vector embeddings in AI and machine learning applications.

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brynj-digital/laravel-scout-vectorize

8 Favers
180 Downloads

Cloudflare Vectorize driver for Laravel Scout

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b7s/neuraphp

11 Favers
335 Downloads

Local text embeddings via PHP FFI, powered by embedding.cpp. No Python, no API calls, no external services at runtime.

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instantsearch/instantsearchplus

11 Favers
38616 Downloads

Search That Boosts Conversion: Fastest Semantic Search, Search Filters, and Search Autocomplete

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venmail/laravel-semantic-search

1 Favers
611 Downloads

Laravel semantic search package with static code analysis and context-aware query building.

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edgebinder/weaviate-adapter

1 Favers
949 Downloads

Weaviate adapter for EdgeBinder - Vector database relationship management with semantic search capabilities

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inda-hr/php_sdk

6 Favers
1267 Downloads

# Introduction **INDA (INtelligent Data Analysis)** is an [Intervieweb](https://www.intervieweb.it/hrm/) AI solution provided as a RESTful API. The INDA pricing model is *credits-based*, which means that a certain number of credits is associated to each API request. Hence, users have to purchase a certain amount of credits (established according to their needs) which will be reduced at each API call. INDA accepts and processes a user's request only if their credits quota is grater than - or, at least, equal to - the number of credits required by that request. To obtain further details on the pricing, please visit our [site](https://inda.ai) or contact us. INDA HR embraces a wide range of functionalities to manage the main elements of a recruitment process: + [**candidate**](https://api.inda.ai/hr/docs/v2/#tag/Resume-Management) (hereafter also referred to as **resume** or **applicant**), or rather a person looking for a job; + [**job advertisement**](https://api.inda.ai/hr/docs/v2/#tag/JobAd-Management) (hereafter also referred to as **job ad**), which is a document that collects all the main information and details about a job vacancy; + [**application**](https://api.inda.ai/hr/docs/v2/#tag/Application-Management), that binds candidates to job ads; it is generated whenever a candidate applies for a job. Each of them has a specific set of methods that grants users the ability to create, read, update and delete the relative documents, plus some special features based on AI approaches (such as *document parsing* or *semantic search*). They can be explored in their respective sections. Data about the listed document types can be enriched by connecting them to other INDA supported entities, such as [**companies**](https://api.inda.ai/hr/docs/v2/#tag/Company-Management) and [**universities**](https://api.inda.ai/hr/docs/v2/#tag/Universities), so that recruiters may get a better and more detailed idea on the candidates' experiences and acquired skills. All the functionalities mentioned above are meant to help recruiters during the talent acquisition process, by exploiting the power of AI systems. Among the advantages a recruiter has by using this kind of systems, tackling the bias problem is surely one of the most relevant. Bias in recruitment is a serious issue that affect both recruiters and candidates, since it may cause wrong hiring decisions. As we care a lot about this problem, we are constantly working on reduce the bias in original data so that INDA results may be as fair as possible. As of now, in order to tackle the bias issue, INDA automatically ignores specific fields (such as name, gender, age and nationality) during the initial processing of each candidate data. Furthermore, we decided to let users collect data of various types, including personal or sensitive details, but we do not allow their usage if it is different from statistical purposes; our aim is to discourage recruiters from focusing on candidates' personal information, and to put their attention on the candidate's skills and abilities. We want to help recruiters to prevent any kind of bias while searching for the most valuable candidates they really need. The following documentation is addressed both to developers, in order to provide all technical details for INDA integration, and to managers, to guide them in the exploration of the implementation possibilities. The host of the API is [https://api.inda.ai/hr/v2/](https://api.inda.ai/hr/v2/). We recommend to check the API version and build (displayed near the documentation title). You can contact us at [email protected] in case of problems, suggestions, or particular needs. The search panel on the left can be used to navigate through the documentation and provides an overview of the API structure. On the right, you can find (*i*) the url of the method, (*ii*) an example of request body (if present), and (*iii*) an example of response for each response code. Finally, in the central section of each API method, you can find (*i*) a general description of the purpose of the method, (*ii*) details on parameters and request body schema (if present), and (*iii*) details on response schema, error models, and error codes.

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textualization/semantic-search

12 Favers
30 Downloads

Semantic search using Ropherta embeddings and SQLite3 Vector extension.

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non-convex-labs/laravel-commonplace

4 Favers
0 Downloads

A personal markdown knowledge vault for Laravel — wikilinks, version history, semantic search, and MCP for Claude Code.

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laraigent/larai-kit

15 Favers
10 Downloads

Laravel RAG and AI agent toolkit — drop-in document ingestion, vector search, streaming chat, and multi-tenant scoping for Laravel 12/13. Works with OpenAI, Anthropic, Gemini, Pinecone, and pgvector.

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hakam/ai-log-inspector-agent

5 Favers
23 Downloads

AI-powered log inspector agent for PHP

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eznix86/laravel-ai-memory

29 Favers
56 Downloads

AI memory for Laravel AI SDK with semantic search and reranking

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brynj-digital/laravel-model-vectorize

0 Favers
12 Downloads

Standalone Laravel package for Cloudflare Vectorize semantic search

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boehmmatthias/smartsearch

4 Favers
1 Downloads

Generic vector embedding, semantic search and RAG infrastructure for TYPO3

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