Main

related bits

0

processing priority

3

site type

5 (wiki-type site, growing by topic rather than chronologically)

review version

11

html import

20 (imported)

Events

first seen date

2024-09-15 18:14:03

expired found date

-

created at

2024-09-15 18:14:03

updated at

2026-02-23 04:52:56

Domain name statistics

length

24

crc

37943

tld

86

nm parts

0

nm random digits

0

nm rare letters

0

Connections

is subdomain of id

87719371 (github.io)

previous id

0

replaced with id

0

related id

-

dns primary id

0

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

0

count http 429

0

count http 404

0

count http 403

0

count http 5xx

0

next operation date

-

Server

server bits

server ip

-

Mainpage statistics

mp import status

20

mp rejected date

-

mp saved date

-

mp size orig

42671

mp size raw text

8201

mp inner links count

1

mp inner links status

20 (imported)

Open Graph

title

Sara Magliacane

description

A highly-customizable Hugo academic resume theme powered by Wowchemy website builder.

site name

Sara Magliacane

author

Sara Magliacane

updated

2026-02-20 04:07:35

raw text

Sara Magliacane Sara Magliacane Sara Magliacane Home Publications Team Teaching News Contact & Jobs Amsterdam Causality Meeting Light Dark Automatic Sara Magliacane Assistant Professor University of Amsterdam Biography I am an assistant professor in the Amsterdam Machine Learning Lab at the University Amsterdam. During Spring 2022, I was visiting the Simons Institute in Berkeley for a semester on Causality . The goal of my research is to find how can causality improve current machine learning (ML) algorithms, especially in terms of robustness, generalization across domains/tasks, and safety. My research focuses on three directions: causal representation learning (i.e. learning causal factors from high-dimensional data, e.g. sequences of images [ 1 , 2 , 3 ]), causal discovery (i.e. learning causal relations from data), and causality-inspired ML , e.g. how can ideas from causality help ML/RL adapt to new domains , nonstationarity and var...

Text analysis

redirect type

0 (-)

block type

0 (no issues)

detected language

1 (English)

category id

Edukacja (47)

index version

1

spam phrases

0

Text statistics

text nonlatin

0

text cyrillic

0

text characters

6319

text words

1179

text unique words

487

text lines

290

text sentences

59

text paragraphs

13

text words per sentence

19

text matched phrases

0

text matched dictionaries

0

RSS

rss path

rss status

1 (priority 1 already searched, no matches found)

rss found date

-

rss size orig

0

rss items

0

rss spam phrases

0

rss detected language

0 (awaiting analysis)

inbefore feed id

-

inbefore status

0 (new)

Sitemap

sitemap status

40 (completed successful import of reports.txt file to table in_pages)

sitemap review version

2

sitemap urls count

30

sitemap urls adult

0

sitemap filtered products

0

sitemap filtered videos

0

sitemap found date

2024-09-17 08:00:25

sitemap process date

2024-09-17 08:00:25

sitemap first import date

-

sitemap last import date

2026-01-15 03:50:54