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metadata
license: apache-2.0
task_categories:
  - question-answering
  - text-generation
language:
  - en
tags:
  - vector search
  - semantic search
  - retrieval augmented generation
pretty_name: hackernoon_tech_news_with_embeddings
size_categories:
  - 100K<n<1M

Overview

HackerNoon curated the internet's most cited 7M+ tech company news articles and blog posts about the 3k+ most valuable tech companies in 2022 and 2023.

To further enhance the dataset's utility, a new embedding field and vector embedding for every datapoint have been added using the OpenAI EMBEDDING_MODEL = "text-embedding-3-small", with an EMBEDDING_DIMENSION of 256.

Notably, this extension with vector embeddings only contains a portion of the original dataset, focusing on enriching a selected subset with advanced analytical capabilities.

Dataset Structure

Each record in the dataset represents a news article about technology companies and includes the following fields:

  • _id: A unique identifier for the news article.
  • companyName: The name of the company the news article is about.
  • companyUrl: A URL to the HackerNoon company profile page for the company.
  • published_at: The date and time when the news article was published.
  • url: A URL to the original news article.
  • title: The title of the news article.
  • main_image: A URL to the main image of the news article.
  • description: A brief summary of the news article's content.
  • embedding: An array of numerical values representing the vector embedding for the article, generated using the OpenAI EMBEDDING_MODEL.

Usage

The dataset is suited for a range of applications, including:

  • Tracking and analyzing trends in the tech industry.
  • Enhancing search and recommendation systems for tech news content with the use of vector embeddings.
  • Conducting sentiment analysis and other natural language processing tasks to gauge public perception and impact of news on specific tech companies.
  • Educational purposes in data science, journalism, and technology studies courses.

Notes

Sample Document

{
  "_id": {
    "$oid": "65c63ea1f187c085a866f680"
  },
  "companyName": "01Synergy",
  "companyUrl": "https://hackernoon.com/company/01synergy",
  "published_at": "2023-05-16 02:09:00",
  "url": "https://www.businesswire.com/news/home/20230515005855/en/onsemi-and-Sineng-Electric-Spearhead-the-Development-of-Sustainable-Energy-Applications/",
  "title": "onsemi and Sineng Electric Spearhead the Development of Sustainable Energy Applications",
  "main_image": "https://firebasestorage.googleapis.com/v0/b/hackernoon-app.appspot.com/o/images%2Fimageedit_25_7084755369.gif?alt=media&token=ca7527b0-a214-46d4-af72-1062b3df1458",
  "description": "(Nasdaq: ON) a leader in intelligent power and sensing technologies today announced that Sineng Electric will integrate onsemi EliteSiC silic",
  "embedding": [
    {
      "$numberDouble": "0.05243798345327377"
    },
    {
      "$numberDouble": "-0.10347484797239304"
    },
    {
      "$numberDouble": "-0.018149614334106445"
    }
  ]
}