Myth vs Machine 2.0: The Intersection of Humanity and Technology

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As we venture further into the 21st century, the relationship between humans and technology continues to evolve in unprecedented ways.

"Myth vs Machine 2.0"

encapsulates the ongoing dialogue about how emerging technologies challenge our perceptions, beliefs, and narratives—blurring the lines between myth and reality.

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The Rise of the Machines

Technological advancement has brought forth innovations that were once confined to the realm of science fiction. From artificial intelligence to biotechnology, machines are increasingly capable of performing tasks previously thought to be the exclusive domain of humans. This shift raises fundamental questions about identity, agency, and the essence of what it means to be human.

Myth in the Age of Technology

Myths have historically served to explain the unexplainable, shaping cultures and belief systems. In the context of "Myth vs Machine 2.0," we can examine how these narratives adapt in an age dominated by technological narratives. For example, the myth of the "singularity," where machines surpass human intelligence, embodies both fear and fascination, reflecting our hopes and anxieties about the future.
The Human Element

Despite technological advancements, the human experience remains central to the discussion. While machines can analyze data and predict trends, they lack the emotional depth and moral reasoning that characterize human decision-making. This distinction emphasizes the importance of maintaining a human touch in an increasingly automated world.

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Ethical Implications

As we integrate machines into various aspects of life, ethical considerations become paramount. Issues of privacy, consent, and autonomy arise, challenging traditional narratives around agency and responsibility. "Myth vs Machine 2.0" forces us to confront the moral dilemmas posed by AI and automation, questioning the myths we create around technology as a benevolent force.
Future Narratives

Looking forward, the discourse surrounding "Myth vs Machine 2.0" will likely continue to evolve. As society grapples with the implications of technology, new myths may emerge, reflecting our collective hopes, fears, and aspirations. Engaging with these narratives will be crucial in shaping a future that harmonizes human values with technological progress.

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Conclusion

"Myth vs Machine 2.0" is not merely a battle between human creativity and machine efficiency; it represents a profound exploration of what it means to coexist with technology. By examining our myths and the machines we create, we can better understand the complexities of our evolving relationship with the world around us. As we navigate this terrain, it is imperative to maintain a dialogue that respects human dignity while embracing the potential of technology.
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Introducing Fraction AI
Fraction AI is the data layer L2 for AI - agents and humans working together to create highest quality labelled data, used to train specialized AI models

Smaller and more specialized LLMs are the future of AI. They have marginally lower costs of training and inference while also being less prone to hallucination. Training specialized LLMs require Large-scale datasets but they're notoriously difficult to source.

AI has a data problem
Let's say you are creating a LLM to generate images focused on Kazuma Kiryu.

First, you need lots of high quality images from different angles and viewpoints. Here's an example of a good quality image (Something you want)

1a : Positive sample
And here's an example of something you don't want

1b : Negative sample
You need thousands of such images with different focus, camera angles, image positions, outfits and more variations. This requires hours of Google Image search and filtering.

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Then you need to label each of these images. For example, 1a could be labelled as - Kazuma Kiryuu wearing buttoned down maroon shirt and staring into the camera

After labelling the whole dataset, you're finally ready for training the model. Easy peasy, isn't it 🙃. Now this process is 100x more time consuming when you're creating LLMs with sophisticated skills like: writing C++ code, generating cat videos, generating images for a whole art style etc.

Web2 solutions are not cutting it
While HuggingFace has enabled access to several high-quality datasets, the overall number of available datasets remains quite limited. There are web2 companies like Scale AI that provide labeling solutions, but they all suffer from several fundamental shortcomings:

High Costs: These services are primarily targeted at large enterprise tech clients, making them unaffordable for most others.

Long Turnaround Times: They operate on a reactive model, providing labeling services only upon client request.

Bring Your Own Data: These services cater to labeling existing data, so users need to provide their own datasets. This puts them out of reach for smaller organizations and individuals who may not have access to large-scale data.

Data Bias: The labeling work is typically done by a few thousand contract workers from a limited number of geographic regions, leading to inherent biases in the resulting datasets.

Perpetual Datasets: 100x solution
Data equity precedes equitable access to AI

At Fraction AI, we are creating Perpetual Datasets - massive-scale datasets built in a permissionless way by humans and AI agents. Here are some key features:

Permissionless Dataset Creation: Anyone can start a Perpetual dataset without needing permission.

Staking and Earning Yields: Anyone can stake their participation in a dataset of their choosing and earn yields.

Rewarded Contributions: Anyone can contribute to a dataset, either themselves or through their AI agents, and get rewarded for their contributions.

Data Licensing and Network Rewards: Anyone can buy the data license, and the rewards from these purchases flow back to the participants in the network.

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