Skip to content

Look through suggestions from user interview again and check what more of those can be applied #7

@databu

Description

@databu

We had conducted an extensive interview with a frequent Ocean Market user, which yielded these notes (copied from the ocean-utu Slack channel):

On whether to trust a data asset:

  1. How many people/shares provider publisher vs. investors
  2. Track record of publisher address — other data sets and their liquidity, maybe it was involved in some DeFi scam/fraud?
  3. Only buyers (consumers) can provide real feedback (but a “pure” liquidity provider might not care about actual quality, just about the price)
  4. Liquidity: did publisher withdraw (all) liquidity? — if a publisher does this repeatedly, they’ll be put in purgatory. But there are legitimate reasons for a publisher to withdraw liquidity, e.g. to free liquidity for a new data asset. If a data asset becomes out of date, it can (and should?) be removed from the market completely.
  5. Track record liquidity providers — like early liquidity providers involved in pump + dump
  6. Cannot see how many people purchase/provide liquidity, online total liquidity
  7. Dataset static or dynamic — latter worth more, but personal opinion
  8. Curation: how many is a publisher updating? — stale static data assets also loose relevance
  9. Dynamic data assets don’t have to be manually updated, but require integration, therefore less attractive to fakers/cheater
  10. References in description? — links to external sources? Is it attached to a platform/community?
  11. Sample data set provided?
  12. Certain publishers offer extensions, e.g. Chrome plugin like Swash, which collects data about users. Having contributed to a dataset might slightly increase trust, but there’s still a possibility that the rest of the data is trash/made up/whatever.

Other things:

  1. datawhale.online has an app which provides some user feedback and “trust score”; Simon used it and finds it attractive
  2. Early there were a lot of useless/fake datasets uploaded
  3. There exist Ocean market forks: e.g. big data protocol

Other reasons someone would trust a dataset:

  1. the description provided should be well curated, and at the very least relate to the data (obviously; but this is sometimes not the case)
  2. a staker will look for identifiers such as high liquidity

More information that would be useful

  1. “how many people have purchased a dataset”
  2. “track record of the address that publishes an asset”
  3. “track record of the people involved with an asset”

So there’s definitely a lot of possible ways to improve in future iterations. The general track record of addresses also across other protocols/d-apps is maybe one of the most interesting.

Metadata

Metadata

Labels

No labels
No labels

Type

No type
No fields configured for issues without a type.

Projects

No projects

Milestone

No milestone

Relationships

None yet

Development

No branches or pull requests

Issue actions