Mirror Analysis: Week 16 in Review (2024)

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This entry is part of the series: Mirror Entries Analysis. Each week, Post3 utilizes data extraction and data analysis techniques to deliver insightful reports with information concerning authors, articles, revenue, chains, keywords, and more, derived from exploring Mirror data.

A filter is applied to the extracted data. For instance, entries with one-word titles and bodies with less than 55 words are not considered to minimize the noise and incentivize good writing practices. In addition, Large Language Models (LLMs) are utilized to obtain tags from each article.

On week 16 we tackle the following questions:

  1. What are the general statistics?

  2. How does the user activity change over the week?

  3. Who are the authors from whom people have collected the most?

  4. Which entries were the most collected?

  5. Which authors/publications generated the most revenue?

  6. Which entries generated the most revenue?

  7. What was the networks/chains usage?

⚠️ Note: The number of collections/mints of some entries might have changed at the time I’m writing.

Let's begin to analyse 894 posts collected from week 16.

1 - What are the general statistics?

By analyzing weekly statistics, we can gain insights into user activity and identify any imbalances in collection and revenue distributions. Let's explore the total collected and earned revenue (in USD) along with the average (mean), middle value (median), and spread (standard deviation) of these metrics.

| Features    | Total    | Mean     | Median   | Std      |
| ----------- | -------- | -------- | -------- | -------- |
| Collections | 2079.0   | 2.4      | 0.0      | 23.1     |
| Revenue     | 2022.3   | 2.3      | 0.0      | 20.7     |

2 - How does the user activity change over the week?

While there are several ways to measure the user activity on Mirror, one that gives us a better understanding of the writers' activity, is by observing the total of articles created per day of the week, along with the number of collections and revenue. By visualizing these three metrics in a single chart, we can identify potential correlations between them.

Bar chart showing the number of entries, collections and revenue per day
Bar chart showing the number of entries, collections and revenue per day

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3 - Who are the authors/publications from whom people have collected the most?

The number of times an article has been collected/minted serves as a valuable metric to understand an author's popularity on Mirror. The “Author“ is the publication/newsletter, some authors such as protocols and ecosystems have several contributors that write to their publications. Let’s take a look at the ones whose work has attracted more collectors.

Bar chart showing the authors with the most collections
Bar chart showing the authors with the most collections

Below is the list of the authors/publications with the most collections:

  1. plug-talk-🔌📲

  2. RabbitHole

  3. Mason

  4. Linea

  5. Superseed

  6. Talent Protocol

  7. Layer3

  8. Safe

  9. Umoja

  10. Socket Protocol

  11. Ethena Labs

  12. Linea Ecosystem

  13. dotnouns.⌐◨-◨

  14. Multisynq

  15. Scroll Build

  16. 0x6AA1…ac4D

  17. 𝐒𝐜𝐫𝐨𝐥𝐥 📜

  18. Elys Network Academy

  19. MomoAI Lab

  20. Halo | halo.social

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4 - Which entries were the most collected?

Some authors publish several times in a weekly period, which grants them more collections than others. Hence we need to take a look at entries individually, to see which ones performed better. These are the top entries:

Bar chart showing the entries with the most collections
Bar chart showing the entries with the most collections
  1. 1 Bricklist 🧱 = 1 Bricklist 🧱

  2. How Coop Records Uses Boost

  3. How To Plan Your Onchain Go-To-Market

  4. Introducing the Linea Builder Launchpad to Start your Web3 Developer Journey

  5. Introducing Superseed

  6. Talent Protocol is based.

  7. Reintroducing Layer3: Identity and Distribution for a User-Owned Future

  8. Socket - First Chain Abstraction Protocol

  9. We're Making Bitcoin Fun, Again! 😏🟧

  10. SAFE Tokenomics

  11. Custodian Attestations of Assets Backing USDe

  12. Airdrop: Instructions for making EARLY ADOPTERS by Linea Surge

  13. NOGS: Ready, seat, launch!

  14. Multisynq—It’s About Time

  15. Scroll Session - A Significant Retroactive Opportunity from the Scroll Ecosystem

  16. REVOX Content Hub Points Rule

  17. Introducing Scroll Zero

  18. Original Assets Vs Wrapped assets

  19. FAQ about MomoAI Public Sale

  20. The Safe Case: Staking and Restaking

  21. Boosting Users Loyalty: How Nomis ScoreFront Can Drive Your Product’s Engagement and Growth

  22. Feature Highlight: Vault Simulations

  23. Empowering Community Growth: Celebrating $COME's Success and the Future of OEX Mainnet

  24. How to ‘mine’ with Digital Life in Cellula

  25. Full Guide to the Halo Membership Pass Public Sale

  26. How to Start Building with AI on OP Mainnet

  27. The Future of Kim: A Roadmap Deep Dive

  28. The Future of Funding: Zuzalu’s Quest for Community-Driven Sustainability

  29. ZKFair & Lumoz Dragon Slayer Campaign Concludes with Over 320,000 Participants!

  30. EigenLayer's Nice Design

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5 - Which authors/publications generated the most revenue?

Revenue serves as an indicator of one's ability to attract and retain people to mint their content. Here we’ll take a look at the authors that generated the most revenue from minted entries, and how it correlates with collections.

Bar chart showing the authors that generated the most revenue
Bar chart showing the authors that generated the most revenue

Below is the list of authors/publications with the most revenue:

  1. plug-talk-🔌📲

  2. RabbitHole

  3. Mason

  4. Linea

  5. Superseed

  6. Linea Ecosystem

  7. Talent Protocol

  8. Scroll Build

  9. Layer3

  10. Safe

  11. Umoja

  12. Socket Protocol

  13. Officer's Blog

  14. Ethena Labs

  15. dotnouns.⌐◨-◨

  16. 𝐒𝐜𝐫𝐨𝐥𝐥 📜

  17. Multisynq

  18. 0x6AA1…ac4D

  19. Elys Network Academy

  20. MomoAI Lab

6 - Which entries generated the most revenue?

Just as for collections, revenue must be studied individually. People may be loyal to their favourite authors, but in the end, they will mint what they really like or find useful. Studying entries individually is important for writers to understand what kind of content people are willing to mint, and at what price. Below, are the entries with the most revenue:

Bar chart showing the entries that generated the most revenue
Bar chart showing the entries that generated the most revenue
  1. 1 Bricklist 🧱 = 1 Bricklist 🧱

  2. How Coop Records Uses Boost

  3. How To Plan Your Onchain Go-To-Market

  4. Introducing the Linea Builder Launchpad to Start your Web3 Developer Journey

  5. Introducing Superseed

  6. Airdrop: Instructions for making EARLY ADOPTERS by Linea Surge

  7. Talent Protocol is based.

  8. Scroll Session - A Significant Retroactive Opportunity from the Scroll Ecosystem

  9. Reintroducing Layer3: Identity and Distribution for a User-Owned Future

  10. Socket - First Chain Abstraction Protocol

  11. We're Making Bitcoin Fun, Again! 😏🟧

  12. Identifying the Telltale Signs of Surveillance: Are You Being Spied On?

  13. SAFE Tokenomics

  14. Custodian Attestations of Assets Backing USDe

  15. NOGS: Ready, seat, launch!

  16. Introducing Scroll Zero

  17. Multisynq—It’s About Time

  18. REVOX Content Hub Points Rule

  19. Original Assets Vs Wrapped assets

  20. FAQ about MomoAI Public Sale

  21. The Safe Case: Staking and Restaking

  22. Boosting Users Loyalty: How Nomis ScoreFront Can Drive Your Product’s Engagement and Growth

  23. Mirror Analysis: Week 15 in Review (2024)

  24. Feature Highlight: Vault Simulations

  25. How to ‘mine’ with Digital Life in Cellula

  26. Full Guide to the Halo Membership Pass Public Sale

  27. Empowering Community Growth: Celebrating $COME's Success and the Future of OEX Mainnet

  28. Coinbase ve Base: Bir Çarkın Farklı Dişlileri

  29. How to Start Building with AI on OP Mainnet

  30. The Future of Kim: A Roadmap Deep Dive

7 - What was the networks/chains usage?

Understanding the usage of L2 chains for minting NFT articles, is key for writers to decide which network should they use. The following pie chart only compares the usage, other metrics should be taken into account, such as the type of articles that are being published in each chain and so on.

Pie chart comparing the usage of the L2 chains
Pie chart comparing the usage of the L2 chains

On week 16, Optimism dominates with 94.0% of network usage. In the second position, we have Zora with 2.5%. The third most used network is Base with 1.5%. Followed by Linea with 1.5% and finally Polygon with 0.5%.

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Accessing week 16 entries dataset

Post3 encourages you to explore the dataset and uncover more gems or generate your own charts and insights. The datasets contain the following features:

  • platform: web3 publishing platform.

  • title: the title of the article.

  • description: a short description of the article.

  • body: the full content of the article.

  • link: the URL for the article.

  • arweave_link: the URL for the Arweave JSON content.

  • author: the author/publication.

  • contributor_link: the writer of the article.

  • date: the date when the article was first published.

  • tags: tags that define the article generated using LLMs.

  • collections: number of mints the article has at the time the data was extracted.

  • supply: the maximum number of mints an article can have.

  • price: the price of the article in ETH or MATIC depending on the currency feature.

  • price_usd: the price in USD.

  • currency: either MATIC or ETH, others may join in the future.

  • network: the L2 solution used to mint the article.

  • revenue: collections times the price in USD.

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