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Vector Embeddings API

API:Generative AI

US$9US$15

  • Generate embedding array vector data from input content. Max character is up to 2000. It offers 4 languages which include English, Japanese, Russian and French. Paid API token can access to BuyfromLo onsite app, meanwhile API returns the data in JSON form.

  • For more details regarding API usage obligation & liability, please read Legal Terms of Service & Condition

Features

  • Generate embedding array vector data from input content
  • Max character is up to 2000
  • It offers 4 languages which include English, Japanese, Russian and French
  • Paid API token can access to BuyfromLo onsite app, meanwhile API returns the data in JSON form

API Endpoint Specifications

  • Endpoint Path: /api/3/embedding-generator
  • Type of Data: JSON & 2/minute
  • Data Source: BUYFROMLO
  • Request Limit: 100,000 tokens/month (Approximate 73,000 English words)
  • Script & Integration: Code to integrate with cURL, JS, Python, Ruby, Php, Node.js, Java, .NET, Rust, Go, Typescript
Vector Embeddings API Endpoint Basic Info

API Endpoint Path

required

Embedding Vector API

api/3/embedding-generator


Call Method

Required

POST

Type of Data Return

JSON

Output structured JSON data on Vector embedding


Available API Arguments & Parameters

token

required

BUYFROMLO API token. Paid subscription API is available: /api/3/embedding-generator, and accessible to on-site APP on /app/3/embedding-generator as well

originalContent

required

Submit the original English content.



Embedding Vector API

api/3/embedding-generator


Code Integration and Response

Python Code Sample



                        

JSON Response Sample



                        

4.5 (Overall)

  • 5 stars - 38
  • 4 stars - 10
  • 3 stars - 3
  • 2 stars - 1
  • 1 star - 0

Latest Reviews

FAQ

Vector Embeddings API uses machine learning models to generate high-quality embeddings arrays from input content, which can be used in natural language processing (NLP) tasks such as machine translation, sentiment analysis, and spam filtering.

Vector Embeddings API supports input text in four languages: English, Japanese, Russian, and French. The maximum character limit per request is 2,000.

Vector Embeddings API returns the result in JSON format, which includes the generated embedding array vectors.

Yes, there is a usage limit of 100,000 tokens per month for the free tier of the Vector Embeddings API. Each token represents approximately 3 English words.

You can access Vector Embeddings API by using a paid BUYFROMLO API token. The API is also available through the BUYFROMLO on-site app.

Vector Embeddings API offers several benefits, including - High-quality embeddings: Vector Embeddings API uses advanced machine learning models to generate high-quality embeddings that can capture the semantic meaning of the input text. - Fast and efficient: Vector Embeddings API is designed to be fast and efficient, with a response time of less than a second. - Easy to use: Vector Embeddings API has a simple and intuitive interface that makes it easy to use for developers of all skill levels.

Vector Embeddings API can be used in a variety of applications, including -Machine translation: Vector Embeddings API can be used to generate high-quality embeddings that can be used to train machine translation models. - Sentiment analysis: Vector Embeddings API can be used to generate embeddings that can be used to classify the sentiment of text data. - Spam filtering: Vector Embeddings API can be used to generate embeddings that can be used to identify and filter spam emails.

Vector Embeddings API has a free tier that allows users to generate up to 100,000 tokens per month. Paid subscription plans are also available, which offer higher usage limits and additional features.

BUYFROMLO provides comprehensive support for Vector Embeddings API, including documentation, tutorials, and a dedicated support team.

You can learn more about Vector Embeddings API by visiting the BUYFROMLO website or by contacting the BUYFROMLO support team.