> For the complete documentation index, see [llms.txt](https://custos-org.gitbook.io/custos/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://custos-org.gitbook.io/custos/rollocker/interactive-blocks.md).

# Prediction Market&#x20;

Custos prediction markets turns the decentralized judgments and intuitions of participants about the future into tradable, liquid collective intelligence that drives growth for crypto assets. Key features include:

* **Broad Asset Compatibility:** Any ERC-20 token can be used to bet in the [markets](/custos/rollocker/interactive-blocks/understanding-market.md#markets).&#x20;
* **On-chain Transparency:** Every step - from rollocker creation, market setup, order execution to outcome resolution and reward distribution - is fully executed and permanently recorded on-chain.
* **Atomic Independent Order:** Each bet is an independent order. The same user can place multiple orders on the same market at different times, with varying options and amounts. Earnings are distributed at settlement based on the unique weight of each order.
* **Order-Driven Dynamic Balanced Algorithm (ODBA):** More accurately reflecting real-time changes in probability over time. The weight of each order is determined by three dynamic factors: time, odds, and interval between orders.


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