# LingoAI Roadmap

## 2023 Q3-Q4

* [x] Fine-tuned the open source multilingual large language model LLM, test and compare the cross-language learning and multilingual translation effect of the large language model.&#x20;
* [x] LingoAI participates in the **World Artificial Intelligence Conference WAIC**.&#x20;
* [x] Officially released LingoTrans platform, including basic translation services and advanced features such as specialized domain crowdsourcing translation.

## 2024 Q1-Q2&#x20;

* #### Launched on [SmartMesh Spectrum Network](https://smartmesh.io/) and Binance Smart Chain (BSC) Mainnet&#x20;
* [x] LingoPod hardware electromagnetic compatibility testing LingoPod&#x20;
* [x] LingoPod Pre-sale, Global Roadshow and Market Dissemination
* [x] Adaptive development and testing of AI Agent for global locations.&#x20;

## 2024 Q3-Q4&#x20;

* [x] LingoPod corpus submission system and pass incentive system developed.&#x20;
* [x] Established LingoAI's first DAO organization and governed the decentralized social network node LingoAI Pub.&#x20;
* [x] Creation of ReviewDAO.
* [x] Data as as service platform LingoCrowd launched.&#x20;

## 2025 Q1-Q2

LanguageDAO operation automatically with Data recipients

LingoPod shipped globally

Low Resource Language Corpus Building to Scale LingoPod

## 2025 Q3-Q4

LingoAI Eco-Hackathon

R\&D of LingoGlass, cell phones and personal devices with small parameters and large language models&#x20;

First MetaGraph Technology to Deeply Associate Knowledge Graph RAG with MetaLife, DeSOLID, and Semantic Web

LingoData Marketplace open for AI developers, data consumer and research institute

## 2026 Q1-Q2

LingoData Agent launched

Federated Learning and Distributed AI Fine-Tuning and Inference

LingoLLM support multiple languages video transcription, dubbing and translation


---

# Agent Instructions: Querying This Documentation

If you need additional information that is not directly available in this page, you can query the documentation dynamically by asking a question.

Perform an HTTP GET request on the current page URL with the `ask` query parameter:

```
GET https://docs.lingoai.io/introduction/lingoai-roadmap.md?ask=<question>
```

The question should be specific, self-contained, and written in natural language.
The response will contain a direct answer to the question and relevant excerpts and sources from the documentation.

Use this mechanism when the answer is not explicitly present in the current page, you need clarification or additional context, or you want to retrieve related documentation sections.
