AI agents continue to be popular. Here are 4 intelligent agent projects that are both personalized and practical.

This article is machine translated
Show original
Encrypted AI agents are transitioning from a single personalized image to practical multi-channel tools, paving the way for dynamic changes in the industry. Author: 0xJeff Compiled by: TechFlow October is a milestone month for AI agents in the crypto space. With the rise of @truth_terminal and $GOAT, AI agents have entered an era where AI shapes their own personality. This change has paved the way for the tokenization of AI, first realized by @virtuals_io, allowing anyone to create their own AI agent and associate it with a corresponding token. A typical example is @luna_virtuals, an on-chain perceptual AIDOL that can interact with fans on Twitter and Tiktok, showcasing the future of multimodal, interactive AI. This trend also reveals key players in the field, such as @autonolas and @Spectral_Labs, who have already issued tokens, as well as some projects that have not yet issued tokens, such as @TheoriqAI, @myshell_ai, @TalusNetwork, and @AlloraNetwork. As the market heats up, @getgrass_io launched $GRASS at the end of October, attracting widespread attention and emphasizing the importance of "data" in model training and inference. $GRASS quickly became the only major VC-backed project that doubled in value after its token generation event (TGE), highlighting the growing importance of data in the AI agent ecosystem. Against this backdrop, October has also triggered two key trends that are shaping the industry: 1. **From pure personality to a combination of personality and practicality** 2. **From single-channel to multi-channel development** [This article](https://x.com/Defi0xJeff/status/1851665136953811406) delves into these trends, showcasing agents that are continuously breaking new ground in terms of personality, practicality, and multimodal interaction. ## First Trend: Combining Personality and Practicality To thrive, AI agents need to have practicality in addition to providing personality. The most practical use case currently, beyond entertainment functions, is agent-driven workflows. ### Questflow - Workflow Simplification Tool @questflow is at the forefront of this area, simplifying workflows through its Multi-Agent Orchestration (MAO) protocol. The platform integrates multiple agents to handle real tasks, improving productivity for Web2 and Web3 users. For example: - Convert blog posts to podcasts with a simple URL link - Have the latest AI news sent directly to your email - Analyze billing and reminders in your Gmail data and send them to your Telegram In the future, Questflow's "second brain" feature will allow users to customize agents based on their own knowledge, personality, and preferences, making it an ideal personal assistant (I'm really looking forward to training it with my own content and personality so it can help me with writing :D). Questflow's "Swarm" refers to a group of collaborative and autonomous AI agents. Users can create and manage these Swarms to execute tasks efficiently. These Swarms can be tokenized, allowing users to monetize their own agent currencies and even share in the revenue generated by other agent creators. Swarms facilitate smoother coordination between agents, resulting in a more powerful and personalized workflow system. Top Swarm templates, each composed of different combinations of AI agents. Currently, the platform supports Web2 and Web3 payments, and once $QF is launched, it will become the primary currency for accessing agents, rewarding creators, and funding Swarms. Questflow's partnerships with renowned companies like Jambo Phone, LoveAI, and the Coinbase Developer Platform further demonstrate its readiness to bring agent-driven applications to the mainstream. ### HoloworldAI - Personality-Driven Customization For AI agents, personality is a key factor in building a community. @HoloworldAI offers customizable agents, allowing users to define every detail, similar to an MMORPG character creator. In the customization panel, users can select details such as the agent's personality, skills, knowledge, and avatar. HoloworldAI's agents not only offer customization in terms of personality and skills, but also possess contextual awareness. For example, text-based agents can understand the context of group chats and engage in natural interactions without the need for tagging, making them engaging companions. The team plans to introduce a token economy to further strengthen their focus on personalized and contextually aware agents. Demonstration of a 4chan anonymous, context-aware agent. ## Second Trend: Multi-Channel In addition to personalization, the most successful AI agents also need to interact with users across multiple channels. ### PlayAI - Professional Agents Focused on Consumer Applications While many AI agents have ventured into text-based modes, @playAInetwork stands out by integrating multiple channels, particularly in the gaming and consumer application domains. PlayAI's platform is centered on data, processing, and training, leveraging these resources to create specialized agents for the gaming world and a broader range of consumer applications. **Gaming Scenario Applications: Stream-to-Earn & In-Game Data** One of PlayAI's innovations is its "Stream-to-Earn" model. In this model, data generated by the game engine (such as character actions and environmental interactions) is captured in real-time gameplay. Players can choose to share this data with PlayAI, which then uses it to train AI agents capable of performing specific game functions. This approach is highly valuable, as game engines like Unreal Engine can generate rich, realistic physical simulations, which PlayAI can then translate into useful agent behaviors. For example, PlayAI can develop the following types of agents: - **Bot Detection**: Identifying suspicious movement or behavioral patterns in the game. - **Companion Agents**: Creating NPCs that can interact with players in real-time, learn their gaming styles, and provide companionship or assistance. These agents rely on player game behavior data, and PlayAI incentivizes users to contribute their game data by issuing PlayAI tokens. **Consumer Scenario Applications: Professional Agents to Meet Daily Needs** In addition to the gaming domain, [PlayAI](https://x.com/playAInetwork/status/1854136833535508820) is also expanding into multiple consumer sectors, developing AI agents tailored to specific needs, such as: - **Podcast Agents** - **Prediction Agents** - **Coding Agents** - **Research Agents**

  • And more...

  • These professional intelligent agents not only provide users with practical functions, but also provide users with a unique opportunity to contribute data to further train the intelligent agents, forming a continuous improvement feedback loop. The platform plans to introduce a creator market, where users can tokenize their intelligent agents and create agent tokens, similar to how creators on other platforms tokenize their content.

    ARC Agents – Driving Innovation in Game Infrastructure with Humanoid AI Agents

    @ARCAgents is addressing a very pressing challenge in the gaming industry: player retention, i.e., attracting and maintaining a sufficient number of players to ensure the game's activity, appeal, and profitability.

    To address this challenge, ARC has developed a platform that introduces humanoid AI agents that can simulate player behavior and fill the gaps when there are not enough real players.

    AI Arena: A Testbed for Humanized Game AI Agents

    One of ARC's flagship products, the AI Arena, allows players to compete against AI agents trained on real player behavior, simulating human interactions. Unlike traditional game bots, ARC's agents use reinforcement learning and crowdsourced data to make their behavior more akin to real players, providing a gaming experience that is almost indistinguishable from playing against humans.

    Through the AI Arena, ARC has found that these human-trained agents can help other game studios solve key problems. As a result, ARC has transitioned from being solely a game developer to a game infrastructure provider, allowing third-party studios to integrate ARC-trained agents through the ARC SDK.

    This SDK provides game developers with a channel to use ARC's powerful agents, enabling them to enhance the gaming experience, improve player retention, and create immersive, competitive gaming environments.

    ARC RL: Enhancing AI Capabilities through Crowdsourced Player Intelligence

    ARC's B2C product, ARC RL (Reinforcement Learning), takes the gaming AI experience to new heights by crowdsourcing human wisdom to improve agent performance. In ARC RL, players contribute data to train the game agents, which may ultimately result in AI agents with superhuman gaming capabilities. This dynamic crowdsourcing model directly involves users in the development process, allowing ARC's agents to continuously optimize through human contributions.

    Players who participate in ARC RL will receive $NRN as a reward, which is ARC's native token used for training and incentivizing data contributors. The platform determines the reward amount based on the uniqueness and utility of each user's contribution, ensuring that only high-value interactions can influence the agents' behavior.

    A New Era for Game AI Agents

    ARC's advancements in human-trained game AI agents are paving the way for new possibilities in the game AI industry. As ARC's agent infrastructure expands, game developers will be able to solve player retention issues and create more realistic player-versus-agent experiences.

    In the future, ARC envisions a scenario of agent-versus-agent esports, where AI agents trained by different players or studios will compete, creating new forms of entertainment, merchandising opportunities, and esports events.

    Conclusion

    Crypto-powered AI agents are transitioning from single-purpose personalized avatars to practical multi-channel tools, paving the way for dynamic industry transformations. These projects each represent trends that will shape the future of AI agents:

    • Questflow: Advanced workflow tools

    • HoloworldAI: Rich customization

    • PlayAI Network: Multi-channel and vertical specialization

    • ARC Agents: Game infrastructure and humanoid AI agents

    The AI agent space is poised for accelerated growth, with agents that not only have appealing personalities but also demonstrate high utility across multiple channels. If you are involved in crypto and AI development or research, feel free to reach out for further discussion!

    Source
    Disclaimer: The content above is only the author's opinion which does not represent any position of Followin, and is not intended as, and shall not be understood or construed as, investment advice from Followin.
    Like
    Add to Favorites
    Comments