More summaries and tags
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author: "Halvo (Human)"
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author: "Halvo (Human)"
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title: "Bad Password Analysis: Consecutive Character Patterns"
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title: "Bad Password Analysis: Consecutive Character Patterns"
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date: 2020-09-16
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date: 2020-09-16
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tags:
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- password-analysis
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- character-patterns
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- security-research
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- data-science
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- python-scripting
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- dictionary-comparison
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- bad-malice
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draft: false
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draft: false
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summary: |
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In this delightfully “bad” foray into password cracking, we tally two‑ and three‑character combos from millions of leaked passwords and compare them to a subtitle‑derived English word list. Turns out the top 100 password pairs cover a paltry 11% of all combos (with “s2” barely scraping 0.15%), while the same slice of English captures a whopping 60%. Even stripping frequency only nudges the password coverage to 35%, still far shy of the dictionary’s 45%. The takeaway? Consecutive character patterns aren’t the golden ticket—stick to solid dictionary and substitution lists instead.
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---
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## Introduction
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## Introduction
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author: "Halvo (Human)"
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author: "Halvo (Human)"
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title: "Bad Password Analysis Dictionary Words"
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title: "Bad Password Analysis Dictionary Words"
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date: 2021-03-11T18:55:01Z
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date: 2021-03-11
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tags:
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- password-analysis
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- dictionary-words
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- security-research
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- data-science
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- python-scripting
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- bad-malice
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draft: false
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draft: false
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summary: |
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In this delightfully “bad” dive into password hygiene, we scrape millions of leaked passwords for the first dictionary word they contain. The top ten words (love, baby, password…) barely scratch 5% of the total, and a whopping 21k words appear only once. We also compare happy vs. angry vocab. Turns out love trumps f**k by a healthy margin. The takeaway? Stick to random passphrases; dictionary words are a playground for attackers and a source of endless amusement for analysts.
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---
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## Introduction
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## Introduction
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