Crypto Basics

What Are Zero Knowledge Proofs and How Does it Work?

Learn everything about zero knowledge proofs and discover how this cutting-edge technology works and reshapes digital space.
S. Vishwa
7 Minutes
MIN

In today's data-driven world, privacy and security are of paramount importance. One emerging technology that addresses these concerns is zero-knowledge proofs (ZKPs). 

ZKPs allow for the verification of information without revealing the underlying data, providing a high level of security and privacy. 

This comprehensive guide will explore the fundamentals of zero-knowledge proofs, how they work, their applications, and the benefits they offer. So, let's dive in!

What are Zero-Knowledge Proofs?

Zero-knowledge proofs (ZKPs) are cryptographic protocols that enable one party, known as the prover, to convince another party, the verifier, that a statement is true without revealing any details about the statement itself. 

The concept of zero-knowledge proofs was first introduced in the early 1980s by researchers Shafi Goldwasser, Silvio Micali, and Charles Rackoff.

A good zero-knowledge proof should fulfill three criteria: completeness, soundness, and zero-knowledge. Completeness ensures that the verifier will accept the proof if the statement is true and both parties adhere to the protocol. 

Soundness guarantees that if the statement is false, no dishonest prover can convince an honest verifier otherwise. 

Zero-knowledge ensures that even after engaging with the prover, the verifier only learns the truth of the statement and nothing else about the secret.

How do Zero-Knowledge Proofs Work?

Zero-knowledge proofs allow a prover to persuade a verifier of the validity of a statement without disclosing any information about the statement itself. 

The prover and the verifier engage in multiple rounds of interaction. At the end of the protocol, the verifier gains confidence in the statement's truth without learning any additional information about the secret.

To illustrate how zero-knowledge proofs work, let's consider the "Three Color Problem," also known as the "Graph Coloring Problem." 

The goal is to color each map region with one of three colors so that no neighboring regions have the same color. The prover wants to convince the verifier that they know a valid three-coloring for the given map without revealing the actual colors assigned to each region.

The protocol consists of several rounds: setup, statement, commitment, challenge, response, and iteration. In the setup phase, the prover and verifier agree on the map's regions and connections. In the statement phase, the prover asserts to have a reliable three-coloring for the map. 

The commitment phase involves the prover choosing colors for each region in secret and providing commitments to the verifier without revealing the actual colors. The challenge phase requires the verifier to choose a random region and request the prover to open the commitment for that region, revealing its color. 

The response phase involves the prover proving the accuracy of the revealed coloring by demonstrating the color differences between adjacent regions. The iteration phase repeats the challenge and response steps multiple times to establish a high degree of trust in the validity of the prover's assertion.

Throughout the protocol, the verifier becomes confident that the prover possesses a valid three-coloring without learning the actual colors assigned to each region. 

This exemplifies the zero-knowledge property of the proof, as the verifier gains knowledge about the truth of the statement without obtaining any additional information.

Types of Zero-Knowledge Proofs

There are several types of zero-knowledge proofs, each suited for different use cases. Let's explore some of the most commonly used types:

Interactive Zero-Knowledge Proofs

Interactive zero-knowledge proofs require back-and-forth communication between the prover and verifier. They involve multiple rounds of interaction, as seen in the "Three Color Problem" example.

Non-Interactive Zero-Knowledge Proofs

Non-interactive zero-knowledge proofs provide a compact proof that can be verified in a single step. They eliminate the need for repeated back-and-forth communication between the prover and verifier.

Statistical Zero-Knowledge Proofs

Statistical zero-knowledge proofs offer computational soundness with a small probability of error. They allow for probabilistic verification, making them suitable for scenarios where a small margin of error is acceptable.

Proof-of-Knowledge

Proof-of-knowledge (PoK) is a subclass of zero-knowledge proofs that demonstrates the prover's possession of specific knowledge related to the statement. It shows that the prover knows something without revealing what that something is.

Proofs of Shuffle and Range

Proofs of shuffle and range are used in electronic voting systems and privacy-preserving transactions. They allow for the verification of the correct shuffling of votes or the validation of values falling within a specific range without disclosing the actual votes or values.

Sigma Protocols

Sigma protocols are a class of zero-knowledge proofs that involve three steps: commitment, challenge, and response. They are widely used in various applications, including digital signatures and secure authentication.

Bulletproofs

Bulletproofs are designed to provide efficient range proofs for large sets of values. They enable efficient verification of values within a specified range without revealing the actual values themselves. Bulletproofs have been successfully used in privacy-focused cryptocurrencies such as Monero.

These are just a few examples of the types of zero-knowledge proofs available. Each type has its characteristics and use cases, making zero-knowledge proofs a versatile tool for achieving privacy and security in various domains.

Applications of Zero-Knowledge Proofs

Zero-knowledge proofs find applications in a wide range of fields and address important privacy and security concerns. Let's explore some of the key applications of zero-knowledge proofs:

Privacy-Preserving Cryptocurrencies

One prominent application of zero-knowledge proofs is in privacy-focused cryptocurrencies such as Zcash (ZEC). Zero-knowledge proofs allow for anonymous transactions without revealing the transaction details or the identities of the users. This enhances transaction privacy and confidentiality in blockchain networks.

Authentication and Access Control

Zero-knowledge proofs can be used in authentication and access control systems to demonstrate knowledge of a password or cryptographic key without revealing the actual password or key itself. This provides secure and user-friendly authentication techniques while preserving privacy.

Electronic Voting Systems

Zero-knowledge proofs play a crucial role in electronic voting systems. They enable voters to prove the legitimacy of their vote without disclosing their actual vote. This protects both voter privacy and the integrity of the electoral process.

Secure Data Transfer and Verification

Zero-knowledge proofs allow for secure data transfer and verification. They enable one party to demonstrate the accuracy of computations performed on private data without revealing the data itself. This is particularly useful in scenarios where data privacy is paramount, such as healthcare or financial applications.

Central Bank Digital Currencies (CBDCs)

Zero-knowledge proofs can enhance transaction privacy in central bank digital currencies (CBDCs). Zero-knowledge proofs enable auditability without disclosing transaction specifics by balancing privacy and transparency. This can contribute to adopting and accepting CBDCs while upholding user anonymity.

These are just a few examples of the diverse applications of zero-knowledge proofs. The versatility of zero-knowledge proofs makes them a valuable tool for enhancing privacy, security, and confidentiality in various domains.

Disadvantages of Zero-Knowledge Proofs

While zero-knowledge proofs offer significant benefits, they also come with certain disadvantages. Considering these drawbacks when evaluating the suitability of zero-knowledge proofs for a specific use case is important. Let's explore some of the key disadvantages:

Computational Intensity

Developing and verifying zero-knowledge proofs can be computationally intensive, especially for complex proofs. This can result in longer processing times for transactions and increased computational workload, which may pose challenges for the scalability of blockchain systems.

Complexity and Auditability

Zero-knowledge proofs can add complexity to protocols, making them more difficult to audit and verify. The intricate nature of zero-knowledge proofs may raise concerns about potential security flaws or bugs in the implementation.

Potential for Illegal Activity

While zero-knowledge proofs enhance privacy by hiding information, they may also facilitate illegal activities in certain situations. This poses challenges for regulatory compliance and may require additional measures to prevent misuse of zero-knowledge proofs.

Limited Applicability

Zero-knowledge proofs may not be suitable for all use cases or sectors. They require expertise and experience to implement correctly, which may limit their widespread adoption across different fields.

While zero-knowledge proofs offer valuable privacy and security features, it is essential to carefully assess the associated trade-offs and challenges before incorporating them into specific systems or applications.

Conclusion

Zero-knowledge proofs are a powerful cryptographic tool that enables the verification of information without revealing the underlying data. 

They offer enhanced privacy, security, and confidentiality, making them valuable in various applications. From privacy-focused cryptocurrencies to secure data transfer and authentication, zero-knowledge proofs provide solutions to critical challenges in the digital era. 

However, it is important to consider zero-knowledge proofs' computational intensity, complexity, and potential limitations when evaluating their suitability for specific use cases. 

By leveraging the benefits and addressing the challenges, zero-knowledge proofs can unlock new levels of privacy and security in our increasingly interconnected world.

Disclaimer

The information provided on this website does not constitute investment advice, financial advice, trading advice, or any other advice, and you should not treat any of the website's content as such.

Token Metrics does not recommend that any cryptocurrency should be bought, sold, or held by you. Conduct your due diligence and consult your financial advisor before making investment decisions.

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What Are the Main Types of Crypto Trading?

Token Metrics Team
8 min
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Cryptocurrency trading has evolved into one of the most dynamic ways to generate profits in financial markets. But before jumping in, it’s crucial to understand the different types of crypto trading strategies. Whether you’re a beginner or an experienced trader, knowing these styles will help you choose an approach that matches your risk tolerance, time commitment, and profit goals.

In this guide, we’ll break down the main types of crypto trading, who they’re best for, and how platforms like Token Metrics can help you succeed with AI-powered insights.

Why Understanding Crypto Trading Types Matters

Crypto is a 24/7, high-volatility market where fortunes can be made—or lost—quickly. Picking the right trading style helps you:

  • Align with your financial goals (short-term gains vs. long-term growth).
  • Manage risk by using strategies that suit your experience level.
  • Maximize opportunities by applying the right tools and insights.

‍

The 5 Main Types of Crypto Trading

There are several trading strategies in crypto, but these five dominate the space:

1. Day Trading

Day trading involves buying and selling crypto within the same day to profit from short-term price movements.

  • Key Features:

    • Traders close all positions before the day ends.
    • Relies on technical analysis and real-time data.
    • Requires constant market monitoring.

  • Who It’s For:

    • Active traders with time to watch charts and news.
    • Those who enjoy fast-paced decision-making.

  • How Token Metrics Helps:
    Token Metrics offers AI-powered trading signals to identify optimal entry and exit points, giving day traders a data-driven edge.

2. Swing Trading

Swing trading focuses on holding positions for several days or weeks to capture larger price swings.

  • Key Features:

    • Less intense than day trading.
    • Combines technical and fundamental analysis.
    • Aims to profit from medium-term trends.

  • Who It’s For:

    • Traders who want flexibility without 24/7 screen time.
    • Those who prefer a balance between risk and reward.

  • How Token Metrics Helps:
    Use Trader and Investor Grades to spot crypto assets with the strongest short- to mid-term growth potential.

3. Scalping

Scalping involves making dozens (or even hundreds) of trades daily to profit from tiny price changes.

  • Key Features:

    • High-frequency trading for micro-gains.
    • Requires low fees and ultra-fast execution.
    • Focuses on high-liquidity assets like BTC and ETH.

  • Who It’s For:

    • Experienced traders who thrive under pressure.
    • Those comfortable with high-volume trading.

  • How Token Metrics Helps:
    Scalpers can leverage real-time AI signals and market sentiment analysis to identify high-probability trades quickly.

4. Position Trading (HODLing)

Position trading, often called HODLing, is a long-term investment strategy. Traders buy and hold assets for months or years, ignoring short-term fluctuations.

  • Key Features:

    • Focuses on long-term growth.
    • Less stressful and time-intensive.
    • Ideal for blue-chip cryptos like Bitcoin, Ethereum, and top altcoins.

  • Who It’s For:

    • Investors with a long-term outlook.
    • Beginners who want low-maintenance strategies.

  • How Token Metrics Helps:
    Use AI Indices—auto-managed portfolios that rebalance based on market conditions—to maximize long-term returns without manually tracking assets.

5. Arbitrage Trading

Arbitrage trading exploits price differences for the same crypto on different exchanges.

  • Key Features:

    • Buy low on one exchange, sell high on another.
    • Requires speed and knowledge of multiple platforms.
    • Margins are small but relatively low-risk.

  • Who It’s For:

    • Advanced traders who can move funds quickly.
    • Those familiar with cross-platform trading tools.

  • How Token Metrics Helps:
    Our data-rich API can be integrated with arbitrage bots to monitor price discrepancies in real time.

How to Choose the Right Trading Style

When deciding which type of trading suits you, consider:

  1. Time Commitment:

    • Day trading and scalping require constant attention.
    • Swing and position trading allow more flexibility.

  2. Risk Tolerance:

    • Scalping and day trading are riskier but can deliver faster returns.
    • Position trading offers lower risk over time.

  3. Capital Available:

    • Arbitrage often requires higher liquidity for meaningful profits.
    • Day or swing trading can start with smaller amounts.

  4. Experience Level:

    • Beginners are better off starting with swing trading or HODLing.
    • Advanced traders can explore scalping or arbitrage.

Why Token Metrics Is the Perfect Companion for Any Trading Style

No matter your trading strategy, Token Metrics provides the tools to help you succeed:

  • AI-Powered Trading Signals: Make smarter decisions using data-driven bullish/bearish signals.
  • Proprietary Trader & Investor Grades: Identify the best short-term and long-term crypto investments.
  • Moonshot Finder: Discover undervalued altcoins before they explode in value.
  • AI Indices: Auto-managed portfolios for long-term investors.
  • Flexible API & MCP Server: Integrate trading strategies with automation tools.

Whether you’re a day trader chasing fast gains or a long-term HODLer, Token Metrics simplifies research and helps you execute strategies with confidence.

Final Thoughts

So, what are the main types of crypto trading?

  • Day Trading: For active traders who thrive on quick decisions.
  • Swing Trading: For those wanting balance between time and profit potential.
  • Scalping: For high-frequency, experienced traders.
  • Position Trading: For long-term investors looking for steady growth.
  • Arbitrage: For advanced traders seeking low-risk, small-margin opportunities.

Each type of trading has its pros and cons, but with AI-powered tools from Token Metrics, you can make smarter decisions, reduce guesswork, and trade confidently—regardless of your preferred style.

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How Much Money Do I Need to Start Crypto Trading?

Token Metrics Team
8 min
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Cryptocurrency trading has revolutionized how people invest, allowing anyone with an internet connection to access global markets 24/7. But one of the most common questions beginners ask is: "How much money do I need to start trading crypto?"

The answer depends on your goals, risk tolerance, and the strategies you intend to use. In this article, we’ll explore how much you really need to get started, break down different trading approaches, and explain how platforms like Token Metrics can help you trade smarter with AI-driven insights—even with a small budget.

Understanding Crypto Trading: The Basics

Before determining how much money you need, it’s essential to understand what crypto trading involves. Cryptocurrency trading is the process of buying and selling digital assets like Bitcoin, Ethereum, and altcoins to profit from price movements. Unlike traditional stock markets, crypto markets:

  • Operate 24/7, offering constant trading opportunities.
  • Allow fractional ownership, meaning you can buy a small portion of a cryptocurrency instead of a whole coin.
  • Have low barriers to entry, enabling traders to start with minimal funds.

However, the volatile nature of crypto means your starting amount must align with your risk management plan.

How Much Money Do You Need to Start Crypto Trading?

There’s no single amount required to start trading crypto—it largely depends on your trading style, goals, and platform. Here’s a breakdown:

1. The Absolute Minimum: $10–$50

Most exchanges like Binance, Coinbase, and Kraken allow users to start trading with as little as $10–$50. This is a great entry point for beginners who want to learn the ropes without risking too much.

  • Pros:

    • Low financial commitment.
    • Great for testing strategies.
    • Less emotional stress compared to larger investments.

  • Cons:
    • Limited profit potential.
    • Transaction fees may eat into gains.

2. A Practical Starting Point: $250–$500

Many beginner traders find $250–$500 to be a sweet spot. This amount allows for diversification—spreading funds across multiple tokens—and gives you enough margin to experiment with different strategies.

  • Example:

    • $200 in Bitcoin or Ethereum (low-risk, high-liquidity assets).
    • $100–$200 in promising altcoins (higher growth potential).
    • $50–$100 reserved for short-term trades.

This amount balances risk and opportunity, helping you learn without overexposing yourself.

3. For Serious Traders: $1,000+

If your goal is to actively trade (day trading, swing trading, or building a diversified portfolio), starting with $1,000+ gives you more flexibility.

  • Why?

    • Allows for better diversification across multiple crypto assets.
    • Provides room to absorb market volatility without liquidating too early.
    • Enables you to take advantage of advanced tools and AI-driven insights on platforms like Token Metrics.

Factors That Influence How Much You Should Start With

When deciding how much to invest, consider these factors:

1. Risk Tolerance

Crypto is volatile—price swings of 10–20% in a single day are common. Only invest what you can afford to lose.

2. Trading Goals

Are you aiming for quick profits (day trading), medium-term growth (swing trading), or long-term wealth (HODLing)? Your goals will dictate your starting amount.

3. Trading Strategy

Scalping or day trading requires more capital for frequent trades, while long-term investing can start with smaller amounts.

4. Fees

Trading fees, withdrawal fees, and network fees can impact your profits. Some exchanges have minimum trade sizes, so starting with too little might not be practical.

How Token Metrics Helps You Trade Smarter—Even with a Small Budget

Starting with a small amount doesn’t mean you can’t succeed. With AI-driven research and trading tools, platforms like Token Metrics level the playing field for beginners and experienced traders alike.

Here’s how Token Metrics can help:

1. AI-Powered Trading Signals

Token Metrics provides real-time bullish and bearish signals based on 80+ data points. This helps you make smarter entry and exit decisions—crucial when trading with limited funds.

2. Proprietary Trader and Investor Grades

Our Trader and Investor Grades score tokens based on short-term and long-term potential, helping you focus on assets with the best risk-reward profile.

3. Moonshot Finder for Low-Cap Opportunities

Want to turn a small investment into something bigger? Token Metrics’ Moonshot Finder identifies high-potential low-cap altcoins before they pump, giving you an edge.

4. AI Indices & Auto-Managed Portfolios

Don’t know where to start? Token Metrics offers AI-driven crypto indices, automatically managing a diversified portfolio based on current market conditions.

5. Free & Flexible Plans

Whether you’re starting with $0 or $166.7 per month, Token Metrics offers free and paid plans to match your needs.

Can You Really Make Money Starting Small?

Yes, you can—but it requires patience, strategy, and the right tools. Many traders have grown $100–$500 portfolios into thousands by leveraging long-term investments in quality projects and AI-guided trading signals.

  • Example:

    • A $100 investment in Ethereum in early 2020 would have grown to over $4,000 by 2021.
    • A $50 investment in a low-cap moonshot token could multiply 10x or more if chosen wisely.

Best Practices for Starting Small in Crypto Trading

  1. Start with what you can afford to lose – Never invest rent or essential funds.
  2. Diversify your portfolio – Spread your investment across multiple tokens.
  3. Use AI-powered tools – Platforms like Token Metrics reduce guesswork and improve decision-making.
  4. Avoid emotional trading – Stick to your strategy and avoid panic-selling.
  5. Stay educated – Follow market trends, join crypto communities, and use analytical tools.

Final Thoughts

So, how much money do you need to start crypto trading?
The truth is—you can start with as little as $10, but for a more meaningful experience and potential growth, $250–$1,000 is a practical starting range.

The key isn’t just the amount—it’s how you trade. Using AI-driven insights from Token Metrics, you can make smarter decisions, find hidden gems, and navigate crypto’s volatility like a pro.

Whether you’re starting small or diving in with a bigger budget, Token Metrics helps you trade confidently and build a strategy tailored to your goals.

Research

What’s the Difference Between Trading and Investing in Crypto?

Token Metrics Team
8 min
MIN

Introduction: Why This Question Matters

In 2025, crypto has matured into a multi‑trillion‑dollar market, attracting everyone from day traders to long‑term institutional investors. But not all approaches to crypto are the same.

If you’re new to digital assets, you might wonder: “What’s the difference between trading and investing in crypto?” Understanding the distinction will help you choose the strategy that matches your goals, risk tolerance, and time commitment.

This guide breaks down trading vs. investing in crypto — explaining their key differences, benefits, risks, and how Token Metrics empowers you to succeed at either.

What Is Crypto Trading?

Crypto trading is the short‑term buying and selling of cryptocurrencies to profit from price fluctuations.

Timeframe:

  • Minutes to weeks. Traders enter and exit positions quickly.

Objective:

  • Profit from volatility. Traders capitalize on price swings rather than holding assets for the long term.

Approach:

  • Use technical analysis (TA), price charts, and AI signals to make quick decisions.

Common Trading Styles:

  1. Day Trading: Multiple trades in a single day, holding no overnight positions.
  2. Swing Trading: Holding assets for days or weeks to capture short‑term trends.
  3. Scalping: Executing many small trades for tiny gains.
  4. Futures & Margin Trading: Using leverage for higher potential returns (and risk).

Pro Tip:
Traders rely heavily on real‑time data and AI‑driven insights to react fast. Tools like Token Metrics provide trading signals, narrative detection, and technical ratings for hundreds of tokens.

What Is Crypto Investing?

Crypto investing is the long‑term holding of digital assets based on their growth potential.

Timeframe:

  • Months to years. Investors aim to benefit from long‑term appreciation.

Objective:

  • Accumulate wealth over time. Investors believe in the future of blockchain technology and hold through volatility.

Approach:

  • Focus on fundamental analysis (FA) — evaluating project teams, technology, tokenomics, and adoption potential.

Common Investing Strategies:

  1. HODLing: Holding strong assets like Bitcoin and Ethereum long‑term.
  2. Staking: Locking tokens (e.g., ETH, ADA) for passive income.
  3. Dollar‑Cost Averaging (DCA): Investing fixed amounts regularly regardless of price.
  4. Narrative‑Driven Investing: Allocating capital to emerging sectors (AI tokens, real‑world assets).

Pro Tip:
Investors benefit from portfolio optimization tools like Token Metrics, which helps identify high‑potential projects and maintain balanced allocations.

Trading vs. Investing: Key Differences

‍

Which One Is Right for You?

Choose Trading If:

  • You enjoy fast‑paced decision‑making.
  • You can dedicate time to monitoring markets daily.
  • You’re comfortable with higher short‑term risk.

Choose Investing If:

  • You believe in crypto’s long‑term potential.
  • You prefer less active management.
  • You want to earn passive income (staking, yield farming).

Or Do Both:
Many crypto enthusiasts combine the two — holding long‑term assets like Bitcoin and Ethereum while trading smaller portions for short‑term gains.

How Token Metrics Supports Both Traders and Investors

Whether you’re trading or investing, Token Metrics is an essential AI‑powered platform for making smarter decisions.

For Traders:

  • AI‑Driven Trading Signals: Detect bullish or bearish momentum.
  • Technical Ratings: Evaluate coins based on chart patterns and historical performance.
  • Real‑Time Alerts: Get notified when tokens hit target levels.

For Investors:

  • Fundamental Analysis: Access in‑depth ratings for over 6,000 projects.
  • Narrative Detection: Identify emerging sectors like AI tokens or DeFi 2.0 early.
  • Portfolio Optimization: Build and maintain a risk‑adjusted portfolio for the long term.

In short: Token Metrics helps traders react faster and investors plan smarter.

Benefits of Trading

  • Quick Profits: Capitalize on volatility.
  • Flexible: Enter and exit markets at any time.
  • Exciting: Appeals to those who enjoy active engagement.

Drawbacks:

  • Requires constant monitoring.
  • Higher emotional stress.
  • Greater risk of losses.

Benefits of Investing

  • Wealth Accumulation: Capture long‑term growth.
  • Less Time‑Intensive: No need for constant market tracking.
  • Passive Income: Earn from staking and yield farming.

Drawbacks:

  • Exposed to long‑term downturns.
  • Slower returns compared to active trading.

Practical Example: Combining Both

Imagine you allocate:

  • 70% to long‑term investments (BTC, ETH, Token Metrics AI (TMAI), and Layer 2 solutions).
  • 30% to short‑term trading (narrative‑driven altcoins).

How Token Metrics Helps:

  • Long‑Term: Use AI ratings and portfolio optimization for your HODL assets.
  • Short‑Term: Get trading alerts and technical signals for timely entry and exits.

‍

Conclusion

The difference between trading and investing in crypto comes down to timeframes, goals, and risk tolerance.

  • Trading is for those who want to actively profit from volatility.
  • Investing is for those who aim for long‑term wealth accumulation.

No matter which approach you choose, Token Metrics — the leading AI crypto analysis, research, and trading platform — gives you the tools to succeed.

By combining AI‑powered insights, narrative detection, and portfolio optimization, Token Metrics helps both traders and investors make smarter, data‑driven decisions in 2025.

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