6 Steps to Fix a Failing Website [Start Ranking]

Weekend Growth - Jared Bauman · Beginner ·🧠 Large Language Models ·2y ago
Skills: RAG Basics53%
If your website is at least one year old, it should be getting traffic and making money. If it isn't, something is wrong. Get your website reviewed: https://weekendgrowth.com/website-review/ Here are the 6 most common reasons I see websites failing, based on my experience as the CEO of an SEO & Marketing Agency: 00:31 Content Quality 00:48: Issue 1: Overestimating content quality 01:47 Issue 2: Thin content 02:18 Issue 3: Good content, poor readability 03:44 Issue 4: Scattered content topics 05:42 Missing Search Intent 08:31 Targeting Wrong Keywords 10:05 Lacking Topical Authority 11:20 Insufficient Backlink Profile 13:39 Technical Problems How to Delete Content from your Website: https://weekendgrowth.com/how-to-delete-content-seo-growth/ Get your FREE LowFruits account here (affiliate link): https://lowfruits.io/?via=jared If you want any of the paid options, I've gotten you a discount! Use code "JARED" at checkout for a discount! Skyrocket Link Building With ChatGPT’s Help: https://weekendgrowth.com/link-building-chatgpt/ Learn more about my agency's services: https://201creative.com/ Read my SEO blog: https://weekendgrowth.com/
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Chapters (9)

0:31 Content Quality
1:47 Issue 2: Thin content
2:18 Issue 3: Good content, poor readability
3:44 Issue 4: Scattered content topics
5:42 Missing Search Intent
8:31 Targeting Wrong Keywords
10:05 Lacking Topical Authority
11:20 Insufficient Backlink Profile
13:39 Technical Problems
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