--- title: Network Domains --- Waku is a unified and cohesive entity that offers a rich ecosystem with three distinct network interaction domains. These domains serve specialized purposes and contribute to the robust functionality of Waku, forming its foundation. ## Discovery Domain Peer discovery in Waku facilitates locating other nodes within the network. As a modular protocol, Waku incorporates various discovery mechanisms, such as [Discv5](/overview/concepts/peer-discovery#discv5) and [Peer Exchange](/overview/concepts/peer-discovery#peer-exchange). These mechanisms allow developers to choose the most suitable option(s) for their specific use cases and user environments, including mobile phones, desktop browsers, servers, and more. ## Gossip Domain GossipSub derives its name from the practice within Pub/Sub networks where peers gossip about the messages they have encountered, thus establishing a message delivery network. Waku employs gossiping through [Relay](/overview/concepts/protocols#relay) to distribute messages across the network. Additionally, Waku introduces [RLN Relay](/overview/concepts/protocols#rln-relay), an experimental mechanism that combines privacy preservation and economic spam protection. ## Request/Response Domain Waku provides a set of protocols to optimize its performance in resource-limited environments like low bandwidth or mostly offline scenarios for multiple purposes. - [Store](/overview/concepts/protocols#store) enables the retrieval of historical messages. - [Filter](/overview/concepts/protocols#filter) efficiently retrieves a subset of messages to conserve bandwidth. - [Light Push](/overview/concepts/protocols#light-push) facilitates message publication for nodes with limited bandwidth and short connection windows. ## Overview of Protocol Interaction Here's a diagram illustrating the interaction between different protocols within the Waku Network. ```mermaid sequenceDiagram participant A as A relay participant B as B relay(pubtopic1) participant C as C relay(pubtopic1) participant D as D relay(pubtopic1), store(pubtopic1), filter participant E as E relay, store participant F as F filter A ->> A: msg1=WakuMessage(contentTopic1, data) (1) F ->> D: FilterRequest(pubtopic1, contentTopic1) (2) D ->> D: Subscribe F to filter (2) A ->> B: Publish msg1 on pubtopic1 (3) B ->> D: relay msg1 on pubtopic1 (3) D ->> D: store: saves msg1 (4) D ->> C: relay msg1 on pubtopic1 (4) D ->> F: MessagePush(msg1) (5) E ->> E: E comes online (6) E ->> D: HistoryQuery(pubtopic1, contentTopic1) (6) D ->> E: HistoryResponse(msg1, ...) (6) ``` The Pub/Sub topic `pubtopic1` serves as a means of routing messages (the network employs a default Pub/Sub topic) and indicates that it is subscribed to messages on that topic for a relay. Node D serves as a `Store` and is responsible for persisting messages. 1. Node A creates a WakuMessage `msg1` with [Content Topic](/overview/concepts/content-topics) `contentTopic1`. 2. Node F requests to get messages filtered by Pub/Sub topic `pubtopic1` and Content Topic `contentTopic1`. Node D subscribes F to this filter and will forward messages that match that filter in the future. 3. Node A publishes `msg1` on `pubtopic1`. The message is sent from Node A to Node B and then forwarded to Node D. 4. Node D, upon receiving `msg1` both stores the message for future retrieval by other nodes and forwards it to Node C. 5. Node D also pushes `msg1` to Node F, informing it about the arrival of a new message. 6. At a later time, Node E comes online and requests messages matching `pubtopic1` and `contentTopic1` from Node D. Node D responds with `msg1` and potentially other messages that match the query.