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Bitcoin: A Peer-to-Peer Electronic Cash System

Satoshi Nakamoto

satoshin@gmx.com

www.bitcoin.org

Abstract. A purely peer-to-peer version of electronic cash would allow online payments to be sent directly from one party to another without going through a financial institution. Digital signatures provide part of the solution, but the main benefits are lost if a trusted third party is still required to prevent double-spending. We propose a solution to the double-spending problem using a peer-to-peer network. The network timestamps transactions by hashing them into an ongoing chain of hash-based proof-of-work, forming a record that cannot be changed without redoing the proof-of-work. The longest chain not only serves as proof of the sequence of events witnessed, but proof that it came from the largest pool of CPU power. As long as a mojority of CPU power is controlled by nodes that are not cooperating to attack the network, they'll generate the longest chain and outpace attackers. The network itself requires minimal structure. Messages are broadcast on a best effort basis, and nodes can leave and rejoin the network at will, accepting the longest proof-of-work chain as proof of what happened while they were gone.

1. Introduction

Commerce on the Internet has come to rely almost exclusively on financial institutions serving as trusted third parties to process electronic payments. While the system works well enough for most transactions, it still suffers from the inherent weaknesses of the trust based model. Completely non-reversible transactions are not really possible, since financial institutions cannot avoid mediating disputes. The cost of mediation increases transaction costs, limiting the minimum practical transaction size and cutting off the possibility for small casual transactions, and there is a broader cost in the loss of ability to make non-reversible payments for non reversible services. With the possibility of reversal, the need for trust spreads. Merchants must be wary of their customers, hassling them for more information than they would otherwise need. A certain percentage of fraud is accepted as unavoidable. These costs and payment uncertainties can be avoided in person by using physical currency, but no mechanism exists to make payments over a communications channel without a trusted party.

What is needed is an electronic payment system based on cryptographic proof instead of trust, allowing any two willing parties to transact directly with each other without the need for a trusted third party. Transactions that are computationally impractical to reverse would protect sellers from fraud, and routine escrow mechanisms could easily be implemented to protect buyers. In this paper, we propose a solution to the double-spending problem using a peer-to-peer distributed timestamp server to generate computational proof of the chronological order of transaction. The system is secure as long as honest nodes collectively control more CPU power than any cooperationg group of attacker nodes.

2. Transactions

We define an electronic coin as a chain of digital signatures. Each owner transfers the coin to the next by digitally signing a hash of the previous transaction and the public key of the next owner and adding these to the end of the coin. A payee can verify the signatures to verify the chain of ownership.

The problem of course is the payee can't verify that one of the owners did not double-spend the coin. A common solution is to introduce a trusted central authority, or mint, that checks every transaction for double spending. After each transaction, the coin must be returned to the mint to issue a new coin, and only coins issued directly from the mint are trusted not to be double-spent. The problem with this solution is that the fate of the entire money system depends on the company running the mint, with every transaction having to go through them, just like a bank.

We need a way for the payee to know that the previous owners did not sign any earlier transactions. For our purposes, the earliest transaction is the one that counts, so we don't care about later attempts to double-spend. The only way to confirm the abscence of a transaction is to be aware of all transactions. In the mint based model, the mint was aware of all transactions and decided which arrived first. To accomplish this without a trusted party, transactions must be publicly announced [1], and we need a system for participants to agree on a single history of the order in which they were received. The payee needs proof that at the time of each transaction, the majority of nodes agreed it was the first received.

3. Timestamp Server

The solution we propse begins with a timestamp server. A timestamp server works by taking a hash of block of items to be timestamped and widely publishing the hash, such as in a newspaper or Usenet post [2-5]. The timestamp proves that the data must have existed at the time, obviously, in order to get into the hash. Each timestamp includes the previous timestamp in its hash, forming a chain, with each additional timestamp reinforcing the ones before it.

4. Proof-of-Work

To implement a distributed timestamp server on a peer-to-peer basis, we will need to use a proof-of-work system similar to Adam Back's Hashcash [6], rather than newspaper or Usenet posts. The proof-of work involves scanning for a value that when hashed, such as with SHA-256, the hash begins with a number of zero bits. The avarage work required is exponential in the number of zero bits required and can be verified by executing a single hash.

For our timestamp network, we implement the proof-of-work by incrementing a nonce in the block until a value is found that gives the block's hash the required zero bits. Once the CPU effort has been expended to make it satisfy the proof-of-work, the block cannot be changed without redoing the work. As later blocks are chained after it, the work to change the block would include redoing all the block after it.

The proof-of-work also solves the problem of determining representation in majority decision making. If the majority were based on one-IP-address-one-vote, it could be subverted by anyone able to allocate many IPs. Proof-of-work is essentially one-CPU-one-vote. The majority decision is represented by the longest chain, which has the greatest proof-of-work effort invested in it. If a majority of CPU power is controlled by honest nodes, the honest chain will grow the fastest and outpace any competing chains. To modify a past block, an attacker would have to redo the proof-of-work of the block and all blocks after it and then catch up with and surpass the work of the honest nodes. We will show later that the probability of a slower attacker catching up diminishes exponentially as subsequent blocks are added.

To compensate for increasing hardware speed and varying interest in running nodes over time, the proof-of-work difficulty is determined by a moving average targeting an average number of blocks per hour. If they're generated too fast, the difficulty increases.

5. Network

The steps to run the network are as follows:

1) New transactions are broadcast to all nodes.

2) Each node collects new transactions into a block.

3) Each node works on finding a difficult proof-of-work for its block.

4) When a node finds a proof-of-work, it broadcasts the block to all nodes.

5) Nodes accept the block only if all transactions in it are valid and not already spent.

6) Nodes express their acceptance of the block by working on creating the next block in the chain, using the hash of the accepted block as the previous hash.

Nodes always consider the longest chain to be the correct one and will keep working on extending it. If two nodes broadcast different versions of the next block simultaneously, some nodes may receive one or the other first. In that case, they work on the first one they received, but save the other branch in case it becomes longer. The tie will be broken when the next proofof-work is found and one branch becomes longer; the nodes that were working on the other branch will then switch to the longer one.

New transaction broadcasts do not necessarily need to reach all nodes. As long as they reach many nodes, they will get into a block before long. Block broadcasts are also tolerant of dropped messages. If a node does not receive a block, it will request it when it receives the next block and realizes it missed one

6. Incentive

By convention, the first transaction in a block is a special transaction that starts a new coin owned by the creator of the block. This adds an incentive for nodes to support the network, and provides a way to initially distribute coins into circulation, since there is no central authority to issue them. The steady addition of a constant of amount of new coins is analogous to gold miners expending resources to add gold to circulation. In our case, it is CPU time and electricity that is expended.

The incentive can also be funded with transaction fees. If the output value of a transaction is less than its input value, the difference is a transaction fee that is added to the incentive value of the block containing the transaction. Once a predetermined number of coins have entered circulation, the incentive can transition entirely to transaction fees and be completely inflation free.

The incentive may help encourage nodes to stay honest. If a greedy attacker is able to assemble more CPU power than all the honest nodes, he would have to choose between using it to defraud people by stealing back his payments, or using it to generate new coins. He ought to find it more profitable to play by the rules, such rules that favour him with more new coins than everyone else combined, than to undermine the system and the validity of his own wealth.

7. Reclaiming Disk Space

Once the latest transaction in a coin is buried under enough blocks, the spent transactions before it can be discarded to save disk space. To facilitate this without breaking the block's hash, transactions are hashed in a Merkle Tree [7][2][5], with only the root included in the block's hash. Old blocks can then be compacted by stubbing off branches of the tree. The interior hashes donot need to be stored.

A block header with no transactions would be about 80 bytes. If we suppose blocks are generated every 10 minutes, 80 bytes * 6 * 24 * 365 = 4.2MB per year. With computer systems typically selling with 2GB of RAM as of 2008, and Moore's Law predicting current growth of 1.2GB per year, storage should not be a problem even if the block headers must be kept in memory.

8. Simplified Payment Verification

It is possible to verify payments without running a full network node. A user only needs to keep a copy of the block headers of the longest proof-of-work chain, which he can get by querying network nodes until he's convinced he has the longest chain, and obtain the Merkle branch linking the transaction to the block it's timestamped in. He can't check the transaction for himself, but by linking it to a place in the chain, he can see that a network node has accepted it, and blocks added after it further confirm the network has accepted it.

As such, the verification is reliable as long as honest nodes control the network, but is more vulnerable if the network is overpowered by an attacker. While network nodes can verify transactions for themselves, the simplified method can be fooled by an attacker's fabricated transactions for as long as the attacker can continue to overpower the network. One strategy to protect against this would be to accept alerts from network nodes when they detect an invalid block, prompting the user's software to download the full block and alerted transactions to confirm the inconsistency. Businesses that receive frequent payments will probably still want to run their own nodes for more independent security and quicker verification

9. Combining and Splitting Value

Although it would be possible to handle coins individually, it would be unwieldy to make a separate transaction for every cent in a transfer. To allow value to be split and combined, transactions contain multiple inputs and outputs. Normally there will be either a single input from a larger previous transaction or multiple inputs combining smaller amounts, and at most two outputs: one for the payment, and one returning the change, if any, back to the sender.

It should be noted that fan-out, where a transaction depends on several transactions, and those transactions depend on many more, is not a problem here. There is never the need to extract a complete standalone copy of a transaction's history

10. Privacy

The traditional banking model achieves a level of privacy by limiting access to information to the parties involved and the trusted third party. The necessity to announce all transactions publicly precludes this method, but privacy can still be maintained by breaking the flow of information in another place: by keeping public keys anonymous. The public can see that someone is sending an amount to someone else, but without information linking the transaction to anyone. This is similar to the level of information released by stock exchanges, where the time and size of individual trades, the "tape", is made public, but without telling who the parties were

As an additional firewall, a new key pair should be used for each transaction to keep them from being linked to a common owner. Some linking is still unavoidable with multi-input transactions, which necessarily reveal that their inputs were owned by the same owner. The risk is that if the owner of a key is revealed, linking could reveal other transactions that belonged to the same owner.

11. Calculations

We consider the scenario of an attacker trying to generate an alternate chain faster than the honest chain. Even if this is accomplished, it does not throw the system open to arbitrary changes, such as creating value out of thin air or taking money that never belonged to the attacker. Nodes are not going to accept an invalid transaction as payment, and honest nodes will never accept a block containing them. An attacker can only try to change one of his own transactions to take back money he recently spent.

The race between the honest chain and an attacker chain can be characterized as a Binomial Random Walk. The success event is the honest chain being extended by one block, increasing its lead by +1, and the failure event is the attacker's chain being extended by one block, reducing the gap by -1.

The probability of an attacker catching up from a given deficit is analogous to a Gambler's Ruin problem. Suppose a gambler with unlimited credit starts at a deficit and plays potentially an infinite number of trials to try to reach breakeven. We can calculate the probability he ever reaches breakeven, or that an attacker ever catches up with the honest chain, as follows [8]:

p = probability an honest node finds the next block

q = probability the attacker finds the next block

qz = probability the attacker will ever catch up from z blocks behind

equasion

Given our assumption that p > q, the probability drops exponentially as the number of blocks the attacker has to catch up with increases. With the odds against him, if he doesn't make a lucky lunge forward early on, his chances become vanishingly small as he falls further behind.

We now consider how long the recipient of a new transaction needs to wait before being sufficiently certain the sender can't change the transaction. We assume the sender is an attacker who wants to make the recipient believe he paid him for a while, then switch it to pay back to himself after some time has passed. The receiver will be alerted when that happens, but the sender hopes it will be too late.

The receiver generates a new key pair and gives the public key to the sender shortly before signing. This prevents the sender from preparing a chain of blocks ahead of time by working on it continuously until he is lucky enough to get far enough ahead, then executing the transaction at that moment. Once the transaction is sent, the dishonest sender starts working in secret on a parallel chain containing an alternate version of his transaction.

The recipient waits until the transaction has been added to a block and z blocks have been linked after it. He doesn't know the exact amount of progress the attacker has made, but assuming the honest blocks took the average expected time per block, the attacker's potential progress will be a Poisson distribution with expected value:

=z q p

To get the probability the attacker could still catch up now, we multiply the Poisson density for each amount of progress he could have made by the probability he could catch up from that point:

Rearranging to avoid summing the infinite tail of the distribution...

Converting to C code...

#include <math.h>
double AttackerSuccessProbability(double q, int z)
{
    double p = 1.0 - q;
    double lambda = z * (q / p);
    double sum = 1.0;
    int i, k;
    for (k = 0; k <= z; k++)
    {
       double poisson = exp(-lanbda);
       for (i = 1; i <= k; i++)
          poisson *= lambda / i; 
       sum -= poisson * (1 - pow(q / p, z - k));
    }
    return sum;
}

Running some results, we can see the probability drop off exponentially with z.

q=0/1
z=0    P=1.0000000
z=1    P=0.2045873
z=2    P=0.0509779
z=3    P=0.0131722
z=4    P=0.0034552
z=5    P=0.0009137
z=6    P=0.0002428
z=7    P=0.0000647
z=8    P=0.0000173
z=9    P=0.0000046
z=10   P=0.0000012
q=0.3
z=0    P=1.0000000
z=5    P=0.1773523
z=10    P=0.0416605
z=15    P=0.0101008
z=20    P=0.0024804
z=25    P=0.0006132
z=30    P=0.0001522
z=35    P=0.0000379
z=40    P=0.0000095
z=45    P=0.0000024
z=50    P=0.0000006

Solving for P less than 0.1%...

P < 0.001
q=0.10    z=5
q=0.15    z=8
q=0.20    z=11
q=0.25    z=15
q=0.30    z=24
q=0.35    z=41
q=0.40    z=89
q=0.45    z=340

How do cryptocurrencies work? What is blockchain technology?

Cryptocurrencies - what is it?

Many people will be tempted to call cryptocurrencies digital money. Most of all, due to the fact that they can perform a payment function. However, the truth is that it is not a currency in the strict sense. Completely different mechanisms are at work here. It is definitely better to consider cryptocurrencies as a form of investing money. Especially since most of the buying and selling takes place on the stock market. Many people decide to buy cryptocurrencies in exchange offices for cryptocurrencies, which provide the service of buying and selling digital currencies, including the most popular bitcoin. Cryptocurrencies exist only in virtual form. Their price, as it happens on the stock exchange, is the result of free market mechanisms, determined by the current demand and supply.

how cryptocurrencies were created?

Probably the explanation that cryptocurrencies are virtual funds in which you can invest is not enough to understand what they are and what their principle of operation is. So it's worth going back to the moment of their creation. In 2008, Satoshi Nakamoto (programmer or group of developers) published his manifesto, which was the inauguration of bitcoin. It was titled: "Bitcoin: A peer-to-peer electronic money system." It was from the manifest that it was possible to find out how cryptocurrency works, so an explanation of blockchain technology was included. What is this? How does it matter?

Blockchain technology - how to understand it?

In principle, most cryptocurrencies use the same technology. So they function in a similar way. The entire mechanics of their operation is based on a decentralized system. It is the one of the main ideas of blockchain technology. Blockchain, literally translated, means "a chain of blocks" and it is a perfect pictorial representation of the issue.

How should blockchain be understood?

It is a technology that allows data to be stored using a cryptographic chain. Because this information is retrieved, verified, and encrypted using complex mathematical calculations, it is secure. Moreover, it is impossible to counterfeit both cryptocurrencies and the operations they participate in. It is worth knowing that in blockchain technology, information is not stored in one database, but is dispersed among many network users. Often the calculations (in the case of proof-of-work) also take place on their computers, using their computing power. Of course they get paid for it.

However, this should not be understood as intermediary process. Blockchain technology works directly between the sending and receiving parties. However, that's not all there is to know. In blockchain technology, the parties to the transaction only have the necessary details about them, although both the accounting register and the basic data for the operation are publicly available. Blockchain is a public record for everyone. This is the data that is placed in the blocks.

Each subsequent one is built on the basis of the previous one and contains information linking it to the next one. In this way, they create the aforementioned "blockchain". Thus, in the case of a blockchain, once entered data cannot be deleted or modified

It is worth knowing that this technology can also be used for other purposes, just like digital currencies can be implemented without a blockchain. The truth is, however, that it offers amazing technical benefits. This is why today the world's cryptocurrencies that are traded are based on blockchains.

Will the act on artificial intelligence protect us from the invasion of robots and the annihilation of humanity?

"In April 2021, the European Commission presented a very important legislative project - the Artificial Intelligence (AIA) Act, which is intended to establish a strong framework for human protection in the era of artificial intelligence. It also has other goals, such as promoting innovation through the so-called regulatory sandboxes or facilitations for entities from the SME sector, but the foundation is indeed a human being and fundamental rights and values. AIA has undergone a major evolution over the last two years, all due to unclear or too general terms and sometimes unrealistic assumptions that would prevent the implementation of appropriate solutions by the addressees of specific requirements.

In the meantime, other acts have appeared, such as the European Data Governance Act, the Data Act and the Digital Single Market Regulation. (...) it is worth knowing that the legal framework in this area is subject to very dynamic changes. Each of these legal acts - in its own way - is to protect us against the risks that artificial intelligence may generate.

Well, is this really about artificial intelligence? AIA itself uses the term not so much artificial intelligence as artificial intelligence systems, which – in simple terms – we treat as software or a system, a protocol or a set of instructions, developed by a man and in order to perform a task defined by him, although with the use of techniques and approaches that can be evidence of (seeming) autonomy, i.e. machine learning or deep learning. These systems have been classified according to the level of risk generated, and such classification is to be associated with specific obligations on the part of individual 'actors' of the life cycle of such a system.

The classification is relatively simple, although in each of the subsequent iterations there are certain 'flavors' aimed at specifying the expectations of the EU legislator. So, as originally proposed, we have artificial intelligence systems that will be banned; high-risk systems (quite wide catalogue); systems with an increased level of transparency and others. One of the latest proposals assumes the introduction of the concept of general-purpose systems, e.g. ChatGPT, Google Translate or systems for creating 'deep fakes', which will probably constitute the fifth category, however, similar to high-risk systems.

If we take a closer look at this classification, we will see that the prohibited practices include systems used by the public sector for the so-called social scoring or identification of citizens in public space (with exceptions) and those used by the private sector, such as systems that manipulate people, e.g. using their weaknesses or subliminal techniques. In turn, the high-risk ones are associated with the risk of violating the fundamental rights contained in the Charter of Fundamental Rights and we will find there, among others: systems for assessing job candidates, biometric identification systems or some solutions in the field of judiciary and prevention. These systems will entail specific – quite significant – obligations, the failure to comply with which will entail the risk of imposing an administrative sanction, which is to be quite - financially - severe.

And finally, the third category, which is to be related to the need to inform a person about the interaction not with another person, but with an 'automaton'. Chatbots, videobots or voice assistants, this is what the AIA draws attention to in the context of transparency.

At this point, let's return to the title question - will the act on artificial intelligence protect us from the invasion of robots and the destruction of humanity? That's not what the AIA is about. Rather, the aim is to impose some high standards on developers, operators and users of systems, who will have to pay more attention to what they design, deliver and use. Assuming that in the foreseeable future we will not be able to create an autonomous and, above all, conscious artificial intelligence system, we must protect ourselves from others. Unfortunately.

AIA imposes strict requirements and restrictions, which, however, are aimed at ensuring supervision, risk management, such as algorithmic bias (bias), high-quality data or the use of innovative solutions as intended and for the benefit of man. Regulations alone will not eliminate the risks associated with the improper or ethical use of such systems. Harm (economic, physical or psychological) and damages will also accompany us in the context of AI systems. The Union is working intensively to define clear rules in this area as well. One way or another, it will still be something for which man will be responsible. After all, today no one seriously thinks about granting legal personality to 'robots'. It is man who stands behind the system and it depends only on him whether it will serve humanity or become another obstacle for it, or even a 'small' destruction."

Feedfowrward Neural Networks and their Creation in Python

Today we will try to understand the operation of Feedforward neural networks, by constructing a simple example of such a network in Python.

Even though Machine Learning's mathematical engine is a complex concept to comprehend, in today's example only the ability to multiply matrices is required to grasp the idea.

If you ever want to go into Machine Learning industry, learning statistics would be a wise choice for setting your knowlege base as a neural network is a statistical computational model. You can think of it as a system of neurons connected by synapses that send impulses (data) to each other. Data travels across these synapses - from one layer to another. A simple neural network is build upon three layers: the input layer, the hidden layer, and the output layer, as shown below, on the Diagram.

image

Layers Diagram

SaaS?

Software as a service, or SaaS in short, a software sharing model that has gained immense popularity in recent years. To a large extent, this is due to the continuous development of cloud technologies and the greater opportunities that subsequent innovations in this area give to the creators of computer programs. Even if you've never heard of SaaS, you probably still use the applications provided in this model every day.

It is a model of distribution of computer applications, with clients having acces to the tool they need only via Internet. The application uses the public cloud infrastructure for efficient operation, where its resources are also stored.

The SaaS model is now widely used both in business and in the private sector. Every day, many users use e-mail boxes, cloud drives and ubiquitous websites that provide libraries of movies, music or books.