AI is a generic term that refers to computer programs that are advanced enough to perform tasks that typically require human intelligence to complete
In practice, when people speak about “AI” today, they’re talking about Machine or Deep Learning
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Although Machine and Deep Learning may seem like magic, they’re not – they’re just advanced pattern recognition tools
They analyze vast amounts of information, find hidden patterns and use the analysis to solve problems and make complex decisions
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That doesn’t make them any less impressive though, as computers can use “pattern recognition” to:
• Create art
• Write novels
• Build apps
• Converse with humans
• Drive cars
And a whole lot more!
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🔶 How does AI work?
Most deep learning is done using artificial neural networks (“ANNs”)
ANNs are structured to mimic the function of the human brain - they are composed of neurons, which are arranged in layers and learn through a process known as backpropagation.
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🔹 Neurons
Neurons are the brain’s information messengers. They receive information through dendrites, and determine if this information is important
If it is they “activate” and pass along the information to other neurons via a structure known as an axon
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Artificial neurons behave in a similar manner. They receive information, decide whether it’s important, and pass signals along to other artificial neurons.
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🔹 Layers
The neurons in an ANN are arranged into three layers:
• Input Layer: Receives information from the outside world
• Hidden Layers: Performs calculations
• Output Layer: Returns the outcome
ANNs can have dozens to hundreds of hidden layers
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These layers work through specialization
Let’s say you wanted to detect a face:
• One layer might detect edges and basic shapes
• The next would see if these shapes were eyes, ears or noses
• The third layer would see if these eyes, ears or noses made a face
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🔹 Backpropagation
Most artificial networks learn in a manner that is similar to their biological counterparts – through feedback
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For instance, imagine a child learning to play basketball
If his first shot was short, he would throw the ball harder next time
If the second missed to the right, he would then aim a little left
He would continue this through trial and error until he made a few baskets
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ANNs work the same way, through a process called “backpropagation”:
• The ANN makes a prediction and compares the results to the target output
• It calculates how far off it was, adjusts and tries again
• It continues this process until it gets it right
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🔶 Problem
In its current form, AI has little risk of becoming “sentient” and taking over the world
But it may pose an even bigger short-term threat – it may enable “Big Tech” to become exceedingly powerful and take over the world
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To understand why, it’s important to realize that AI needs three “raw materials” to function:
• Data
• Models
• Compute
All 3 of these resources are dominated by Big Tech
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🔹 Data
Deep learning models require massive amounts of data to train.
For example, OpenAI’s GPT-3 model required 45TB of text data (equivalent to 15 billion printed pages)
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Guess who controls the majority of data in the world today?
That’s right – “Big Tech” companies like Google, Amazon, Microsoft and Facebook
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🔹 Models
Significant amounts of human capital are needed to create and maintain AI
A typical ML or DL “flow”, involves several steps that need human oversight:
1. Data Collection
2. Data Cleaning
3. Model Selection
4. Model Training
5. Model Optimization
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Unfortunately, this talent is not spread around equally
The top data scientists are often either employed by Big Tech – as they are the only ones with the resources to support the armies of PhDs needed to build, train and optimize machine and deep learning models
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🔹 Compute
AI is getting more expensive.
Recent advances such as OpenAI’s GPT-3 required 3,640 petaflop days to train – over 500,000x more than similar breakthroughs a decade ago
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This trend shows few signs of stopping, and many researchers believe that the demand for computing resources will continue to grow at 700% per year
(which is much faster than the supply of resources, which only doubles every two years)
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Right now, Big Tech companies are the only ones with the resources to build the computers required for AI
For instance, Facebook is building the AI Research SuperCluster (RSC), a supercomputer that is expected to process up to 5 exaflops (>3x the fastest computer today)
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Big Tech has a monopoly on all three of these resources
And this creates a vicious cycle
More resources leads to better AI, better AI increases profits and more profits allow for the acquisition of more resources
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Indeed, the top four technology companies already control over 70% of the internet, and AI has the potential to make this problem much worse
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🔶 Solution
The way to stop Big Tech is to break their monopoly on the “raw materials” that create AI
In particular, we need to build decentralized:
• Data marketplaces
• Model marketplaces
• Supercomputers
• AI-enabled L1s
• AI-enabled dApps
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🔶 Decentralized AI ecosystem
Six protocols leading way in decentralized AI are:
Founded by @BrucePon in 2017, Ocean is a decentralized marketplace for data
Data owners can sell access to a variety of information types including public data, private data and synthetic data
Consumers can purchase or license this data
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Decentralized data markets such as Ocean bring a variety of benefits
• Privacy (consumers control their online identity and information)
• Profits (Users can monetize data)
• Lower Transaction Costs
• Ubiquitous Access
• Security (No single point of failure)
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Transactions are facilitated through either data NFTs or datatokens – NFTs allow a user to purchase full ownership rights a dataset while tokens only grant access to the data
Like a DeFi DeX, pricing is determined through an AMM protocol
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#OceanProtocol currently has a $99M market cap and $227M FDV
It leverages the $OCEAN token which currently trades at $0.16
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🔹 SingularityNET
Founded by @bengoertzel in 2017, SingularityNET is a decentralized marketplace for models
Data scientists can “rent” out ML and DL models to individuals and companies that need them
Customers pay in $AGIX and can leave reviews on the models
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Decentralized marketplaces provide many advantages to all market participants, including security, trust, privacy, lower transaction costs, and transaction integrity
Most importantly, they give data scientists an option to make money without working for Big Tech
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One unique feature of SingularityNET is that the models are interoperable
For instance, you could combine a model that translates Chinese to English to one that performs text to speech conversion in English to get a tool that translates written Chinese into spoken English
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#SingularityNET currently has a market cap of $59M and FDV of $104M
It leverages the $AGIX token, which currently trades at $0.05
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🔹 Numerai
Founded by @richardcraib in 2015, Numerai is an AI-based hedge fund that crowd-sources decisions through a weekly stock picking “tournament”
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Each week, the platform releases an encrypted set of market data
Data scientists use this data to create predictive ML and DL models
Numerai chooses and combines the best models, uses them to make investment decisions and rewards the creators with payouts in Bitcoin
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While this is an interesting approach, it’s not exactly novel, as Google’s Kaggle has been hosting predictive data science tournaments for years
What is novel is how Numerai approaches a problem known as overfitting
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Overfitting is a common problem in machine learning
It occurs when models match historical data too well, finding patterns that aren’t really there
While overfit models look like they are accurate, they tend to perform poorly when given new data.
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Numerai reduces the tendency to overfit by required data scientists to stake the protocol’s native token $NMR as collateral
If the models perform well, the creators receive payouts in dollars or BTC
If they perform poorly, the collateral is burned
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#Numerai currently has an $84M market cap and $157M FDV
It uses the $NMR token which currently trades at $14.32
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🔹 Deep Brain Chain
Founded in 2017 by a trio of AI veterans, DeepBrain Chain is a shared computing platform that allows users to buy and sell idle computing resources
In particular, the platform focuses on graphical processing units (GPUs), which are a primary tool of AI
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Shared computing offers several benefits:
• More Processing Power: DBC leverages a global network
• Faster Speeds: up to 20% faster than centralized networks
• Lower Costs: Up to 70% cheaper than competitors
• More Security: Multiple nodes provide redundancy
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#DeepBrainChain currently has a market cap of $5M and FDV of $16M
It uses the $DBC token, which currently trades at $0.0016
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🔹 Cortex
Traditional L1s such as Ethereum don’t have the bandwidth to run complex machine and deep learning calculations on-chain
This puts them at a significant disadvantage to Web 2.0 competitors
Cortex is an AI-enabled L1 that seeks to overcome that problem
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Founded by @zchenzchen, the network seeks overcome the limitations of traditional smart contract platforms by performing complex AI calculations off-chain, and then bringing only the results on-chain
To satisfy the computing requirements of AI, all Cortex nodes run on GPUs
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The Cortex ecosystem is comprised of a network of smart contract developers, AI engineers and miners, and contains:
• A library of AI models
• AI-ready smart contracts
• System for independent verification
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#Cortex currently has a $35M market cap and $50M FDV
It uses the $CTXC token, which currently trades at $0.17
48/ 🔹 Fetch AI
Founded in 2017 by @HMsheikh4, FetchAI is building a decentralized network of autonomous “agents” that can perform real-world tasks
These agents are intelligent programs that act on their owner's behalf and make their own decisions
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Some early use cases for Fetch’s agents include:
• Optimizing trading for financial services users
• Reconfiguring public transport networks
• Supporting smart cities’ ability to adapt to citizen behavior
• Disintermediate the gig economy to remove middlemen
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#FetchAI currently has a $75M market cap and $116M FDV
It uses the $FET token, which currently trades at $0.10
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🔶 Potential
The potential for AI is immense
Many experts predict that it will increase productivity and reduce costs by orders of magnitude
As such, some researchers – such as Ark’s Cathie Wood – estimate that the market for AI will grow to over $80T by 2030
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But right now, all signs point to Big Tech firms – such as Google, Facebook, Amazon, Apple, Microsoft and Alibaba – owning this technology
That why the development of decentralized AI is so important!
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Important Disclaimer: None of the aforementioned projects are “calls” or “picks”
While I’m bullish on their “stories”, I haven’t done in-depth research into their management teams, performance, tokenomics, etc…
So if you’re going to invest, PLEASE do your own research
I hope you've found this thread helpful.
Follow me @MTorygreen for more fundamental analysis on Web3 protocols.
@ensdomains is one of the most important, yet least understood, pillars of the #Web3 ecosystem
While #ENS is often compared to the Internet’s domain name system, in reality it’s much more than that
Here’s why the $ENS token has the potential to 50x to 100x
👇
🧵
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Ethereum Name Services allows users to translate blockchain addresses into human-readable names
On the surface, it works like the DNS (we’ll explain this in a second)
It has a MC of $285M, FDV of $1.4B, and its $ENS token trades at $14.09
In 2021, the price hit $85.69
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This thread will cover the following:
• What is the DNS?
• What problem does #ENS solve?
• How does it work?
• What are its plans for the future?
• Who are the key players in the ecosystem?
• What are its #tokenomics?
• What’s the potential value of $ENS?
The #metaverse is inevitable and it's going to be worth TRILLIONS
BUT there’s one huge problem – our current infrastructure can’t support it
Protocols such as @RenderToken aim to fix this and, as such, have the potential to increase in value by 30x – 80x
Here’s how
👇
🧵
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Render is a decentralized “marketplace” that allows users to rent out unused #GPU processing power to #render 3D objects (we’ll explain this in a second)
It has a MC of $123M, FDV of $260M, and its $RNDR token trades at $0.48