> For the complete documentation index, see [llms.txt](https://alphagpt.gitbook.io/user/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://alphagpt.gitbook.io/user/alphagpt-guides-pdf/roadmap.md).

# Roadmap

> ## 2021
>
> ### Q1
>
> Established Alpha quantitative laboratory
>
> Tested in a small number of trading markets in the UK
>
> ### Q3
>
> Participate in hackathons, gain regional finalists, expand team size
>
> ### Q4
>
> Prepare the first version of the white paper\
> Create an intelligent algorithmic quantitative model, rely on the combination of high-frequency trading and algorithmic trading, and build a set of stable and profitable quantitative strategies

> ## 2022
>
> ### Q1
>
> Open the use of alpha quantification in multiple countries
>
> ### Q2
>
> Introduce open AI, conduct training, and combine Generative Pre-Training to strengthen the quantitative arbitrage model
>
> ### Q3
>
> Improve the white paper and business plan, set the incentive model, and open the global market
>
> ### Q4
>
> The alpha-enhanced version of the robot, AlphaGPT, was officially unveiled and attracted the attention of many quantitative funds
>
> ###

> ## 2023
>
> ### Q1
>
> Community building, set up official social media, and complete the first strategic cooperation and joint airdrop, and airdrop tens of millions of $AGPT to valid users\
> Open quantization is mining!
>
> ### Q2
>
> Start token economics, rely on the quantitative funds accumulated in the early stage to provide initial liquidity for tokens, and develop an economic model that continues to rise.\
> Open the intranet swap transaction model
>
> ### Q3
>
> Expand the global quantification share of AlphaGPT Crypto, launch the "everyone can have their own quantification robot" plan, and help more ordinary people participate in the quantification of intelligent algorithms
>
> ### Q4
>
> Recruit brokers around the world and realize the growth of brokers' wealth, so as to start the global team free dinner plan, which will be paid by AlphaGPT

> ## 2024&#x20;
>
> ### Q1
>
> Quantitative robots continue to optimize, expand the number of global quantitative users, lower the industry threshold, and increase the sustainable income of quantification
>
> ### Q2
>
> Start the mainnet launch plan, give priority to launch on the cooperative decentralized exchange, and expect to inject liquidity at a price of $AGPT>100USDT
>
> ### Q3
>
> Launch the top ten mainstream exchanges (such as Binance, kucoin, gate, bybit, okx), and open currency trading pairs
>
> ### Q4
>
> When the target number of users exceeds 10 million, AlphaGPT will stop using the Quantitative Robot function for newly registered users after December 31, 2024. The old users will continue to use and continue to enjoy all the promotion benefits, the quantitative benefits will be halved, and the official team will spend half of the profits on the construction of the user charity fund.\
> \
> Old users can continue to renew the robot and use it to work, and new users can participate in token staking.

* Follow-up roadmap We will formulate a roadmap for the new year at the end of each year based on the actual development of this year
* Quantification technology has a history of more than 100 years. Today's AlphaGPT intelligent quantification, as the industry leader, will continue to develop and optimize it, creating the next AI era and deeply affecting everyone.


---

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