Skip to content

TeamHG-Memex/sitehound-frontend

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Site Hound

Site Hound (previously THH) is a Domain Discovery Tool that extends the capabilities of commercial search engines using automation and human-in-the-loop (HITL) machine learning, allowing the user efficiently expand the set of relevant web pages within his domain/s or topic/s of interest.
Site Hound is the UI to a more complex set of tools described below. Site Hound was developed under the Memex Program by HyperionGray LLC in partnership with Scrapinghub, Ltd. (2015/2017)

Main Features

  1. Role Based Access Control (RBAC).
  2. Multiple workspaces for keeping things tidy.
  3. Input of keywords, to be included or excluded from searchs.
  4. Input of seeds URLs, an initial list of websites that you already know are on-topic.
  5. Expand the list of sites by fetching the keywords on multiple commercial search engines.
  6. Displays screenshots (powered by Splash), title, text, html, relevant terms in the text
  7. Allows the user to iteratively train a topic model based on these results by assigning them into defined values (Relevant/Irrelevant/Neutral), as well as re-scoring the associated keywords.
  8. Allows an unbounded training module based on user-defined categories.
  9. Language detection (powered byApache Tika) and page-type classification (powered by HG's https://github.com/TeamHG-Memex/thh-classifiers)
  10. Allows the user to view the trained topic model through a human-interpretable explaination of the model powered by our machine learning explanation toolkit https://github.com/TeamHG-Memex/eli5
  11. Performs a broad crawl of thousand of sites, using Machine Learning (provided by https://github.com/TeamHG-Memex/hh-deep-deep) filtering the ones matching the defined domain.
  12. Displays the results in an interface similar to Pinterest for easy scrolling of the findings.
  13. Provides summarized data about the broad crawl and exporting of the broad-crawl results in CSV format.
  14. Provides real time information about the progress of the crawlers.
  15. Allows search of the Dark web via integration with an onion index

Infrastructure Components

When the app starts up, it will try to connect first with all this components

  • Mongo (>3.0.*) stores the data about users, workspace and metadata about the crawlings
  • Elasticsearch (2.0) stores the results of the crawling (screenshots, html, extracted text)
  • Kafka (8.*) handles the communication between the backend components regarding the crawlings.

Custom Docker versions of these components are provided with their extra args to set up the stack correctly, in the Containers section below.

Service Components:

This components offer a suite of capabilities to Site Hound. Only the first three components are required.

  • Sitehound-Backend: Performs queries on the Search engines, follows the relevant links and orchestrates the screenshots, text extraction, language identification, page-classification, naive scoring using the cosine difference of TF*IDF, and stores the results sets.
  • Splash: Splash is used for screenshoot and html capturing.
  • HH-DeepDeep: Allows the user to train a page model to perform on-topic crawls
  • THH-classifier: Classifies pages according to their type (i.e. Forums, Blogs, etc)
  • Dark Web index: This is currently a private db. Ask us about it.

Here is the components diagram for reference Components Diagram

Containers

Containers are stored in HyperionGray's docker hub

Mongodb

define a folder for the data

sudo mkdir -p /data/db

and run the container

docker run -d -p 127.0.0.1:27017:27017 --name=mongodb --hostname=mongodb -v /data/db:/data/db hyperiongray/mongodb:1.0
Kafka
docker run -d -p 127.0.0.1:9092:9092 -p 127.0.0.1:2181:2181 --name kafka-2.11-0.10.1.1-2.4 --hostname=hh-kafka hyperiongray/kafka-2.11-0.10.1.1:2.4

wait 10 secs for the service to fully start and be ready for connections

Elasticsearch
docker run -d -p 127.0.0.1:9200:9200 -p 127.0.0.1:9300:9300 --name=elasticsearch --hostname=elasticsearch elasticsearch:2.0

Lastly check HH-DeepDeep installation notes about running it with Docker

Configuration

Properties are defined in /ui/settings.py

Installation

The app runs on python 2.7 and the dependencies can be installed with pip

pip install -r requirements.txt

then start up the flask server

python runserver.py

The app should be listening on http://localhost:5081 with the admin credentials: [email protected] / changeme!

Dockerized version of Sitehound

Alternatively, a container can be run instead of the local installation

sitehound_version="3.3.2"
docker run -d -p 0.0.0.0:5081:5081 --name=sitehound-$sitehound_version --hostname=sitehound --link mongodb:mongodb --link kafka-2.11-0.10.1.1-2.4:hh-kafka --link elasticsearch:hh-elasticsearch hyperiongray/sitehound:$sitehound_version

define hyperion gray