Main

processing priority

4

site type

0 (generic, awaiting analysis)

review version

11

html import

20 (imported)

Events

first seen date

2024-01-28 05:05:44

expired found date

-

created at

2024-06-09 14:36:13

updated at

2026-01-02 17:08:10

Domain name statistics

length

14

crc

19216

tld

2211

nm parts

0

nm random digits

0

nm rare letters

0

Connections

is subdomain of id

-

previous id

0

replaced with id

0

related id

-

dns primary id

168829982

dns alternative id

0

lifecycle status

0 (unclassified, or currently active)

Subdomains and pages

deleted subdomains

0

page imported products

0

page imported random

0

page imported parking

0

Error counters

count skipped due to recent timeouts on the same server IP

0

count content received but rejected due to 11-799

0

count dns errors

0

count cert errors

0

count timeouts

1

count http 429

0

count http 404

0

count http 403

0

count http 5xx

0

next operation date

2025-09-12 13:34:16

Server

server bits

server ip

-

Mainpage statistics

mp import status

20

mp rejected date

-

mp saved date

-

mp size orig

128945

mp size raw text

22438

mp inner links count

0

mp inner links status

20 (imported)

Open Graph

title

Python Data

description

Python for Data Analytics

image

site name

Python Data

author

updated

2025-12-21 17:32:39

raw text

Python Data - Python for Data Analytics Skip to content Home About Contact Work With Me Market Basket Analysis with Python and Pandas Posted on December 26, 2019 December 26, 2019 by Eric D. Brown, D.Sc. If you’ve ever worked with retail data, you’ll most likely have run across the need to perform some market basket analysis (also called Cross-Sell recommendations).  If you aren’t sure what market basket analysis is, I’ve provided a quick overview below. What is Market Basket Analysis? In the simplest of terms, market basket analysis looks at retail sales data and determines what products are purchased together. For example, if you sell widgets and want to be able to recommend similar products and/or products that are purchased together, you can perform this type of analysis to be able to understand what products should be recommended when a user views a widget. You can think of this type of analysis as generating the following ‘rules’: If widget A, then re...

Text analysis

redirect type

0 (-)

block type

0 (no issues)

detected language

1 (English)

category id

Zastosowania AI (149)

index version

2025110801

spam phrases

0

Text statistics

text nonlatin

0

text cyrillic

0

text characters

17010

text words

3733

text unique words

853

text lines

330

text sentences

147

text paragraphs

65

text words per sentence

25

text matched phrases

17

text matched dictionaries

2

RSS

rss status

32 (unknown)

rss found date

2024-02-02 17:52:01

rss size orig

128793

rss items

10

rss spam phrases

0

rss detected language

1 (English)

inbefore feed id

-

inbefore status

0 (new)

Sitemap

sitemap status

11 (sitemap processing suspended due to network errors, timeouts etc. - also set when domain_expired_found_date is set)

sitemap review version

1

sitemap urls count

39

sitemap urls adult

0

sitemap filtered products

0

sitemap filtered videos

0

sitemap found date

2024-02-02 09:01:00

sitemap process date

-

sitemap first import date

-

sitemap last import date

-