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๐Ÿ“๐Ÿ†“ ALL this is FREEโ‰๏ธ๐Ÿ‘‡ Product Management Project Management Business Analytics Data visualization Microsoft Excel Data Analytics Scrum UI/UX Agile SQL etc.. โ“ How to GET IT?โฌ‡๏ธ โœ… Follow me ๐Ÿ”ƒ Repost ๐Ÿ’ฌ Comment mau yang mana๐Ÿ˜‰

176,422 views โ€ข 2 years ago โ€ขvia X (Twitter)

8 Comments

ใ‚ขใƒ•ใƒฉ's profile picture
ใ‚ขใƒ•ใƒฉ2 years ago

๐Ÿ“Œ You can access all the files above HEREโฌ‡๏ธ ๐ŸŸข Bantu repost ya ges๐Ÿ˜‡

syapaa's profile picture
syapaa2 years ago

Data analytics sama excel MAU KAKKK

sipanda's profile picture
sipanda2 years ago

mau excel, done follow

pe-cรฉl. ๐Ÿ˜ˆ๐Ÿข's profile picture
pe-cรฉl. ๐Ÿ˜ˆ๐Ÿข2 years ago

kak aku mauu yg excel, project management, business analytics, sama requirement

v aโญ’เน‹เฃญ's profile picture
v aโญ’เน‹เฃญ2 years ago

All ruless done. Mau product management, project manage, bisnis analy, excel, data analy, interview, QA, dan product owner kak๐Ÿ™๐Ÿป. Kalau boleh semua, mau semuanya kak, terima kasihhh๐Ÿค—

dep's profile picture
dep2 years ago

Sudaahh. Mau microsoft excel, data analytics, dan ui/ux. Tapi mau semuanya juga kalau boleh, aku mau belajar yang lainnya jugaa. Terima kasih yaa

๐Ÿ† CHAMPIONI D'ITALIA ๐Ÿ† #19's profile picture
๐Ÿ† CHAMPIONI D'ITALIA ๐Ÿ† #192 years ago

Mau domain document dong sama data analytics ๐Ÿ˜

roramyeon's profile picture
roramyeon2 years ago

Mau semua kak huhuhu

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Here is how Marc could improve the landing page: First, even tho the initial audience was Indie Makers, it's not the one that brings the most $$ (as per Marc). So, we need to make it super clear who is the landing page for. The "problem" is that there are multiple audiences, and we can't niche down the main landing page yet. It means the main landing will be more generalist to appeal to more people, but will be slightly less impactful as a result. The solution for this is to create multiple landing pages for specific audiences with super precise headlines For our general landing page, we want: - What is it - Who is this for - Make it clear what the main benefits are What is it -> Analytics app Who is this for -> Online businesses Main benefit -> Simple to use/setup (no code), accurate revenue tracking, it's modern, unlike what they use at the moment (Google Analytics) Headline: - "Modern analytics for online businesses" (if we position against Google Analytics and other bloated apps) - "Easy analytics for online businesses" ๐Ÿ‘‰ You might want to A/B test them eventually Now, it would be even BETTER if we had data on WHY they want to track revenues (ex: Measure ROI, find opportunities, etc), but for now, we can stay generic and then test different ones later As for the audience-specific landing pages, you can mention the name of the audience directly to make it relevant to them: - The analytics platform for marketplaces - The analytics platform for course creators - etc... Subheadline: - Accurate revenue tracking without a line of code Bullet points (all 3): - Integrates with 50+ platforms - Accurate revenue tracking & funnels - Setup in 5 minutes Call to action: - "Start 14-day trial" implies a payment will be needed, which creates friction at some point - Better have something neutral ("Start For Free", "Get Started Now") or action-focused (in this case "Create your project" or "Setup my website") Then we have the big image section. Right now, it occupies lots of space and provide little value. What would be better here is to either have an interactive embedding or a video showcasing the main features of the app. And in both case, you want to make it smaller, and interactive As for the signup page: Right now it's very austere, and the video on the left side catch the attention more than the form. I showed examples in the video, but you want to have a step by step guided onboarding that doesn't feel like people are creating accounts. No one like creating accounts, it creates additional friction. So I would start by asking the website URL, THEN ask for the email (and no need for email verification, just create the account and log them in automatically). That way you remove friction and then can jump straight to installing the code snippet (which is the point where they start getting value from the product) Obviously there is waaaaaay more things to do, and ultimately, especially since I don't have all the relevant data What I mentioned above are mainly good practices, and you will want to talk with users, A/B test and see what works the best :)

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