Crypto Basics

Types of Stablecoins: A Complete Guide for 2025

Discover the types of stablecoins—fiat-backed, crypto-backed, algorithmic, and commodity-based. Learn how they work, their pros and cons, and which is best for your crypto strategy in 2025.
Token Metrics Team
8 min
MIN

The cryptocurrency market is famous for volatility—Bitcoin can swing by thousands of dollars in a day, and altcoins can rise or crash in hours. But what if you need price stability? That’s where stablecoins come in.

Stablecoins are digital currencies pegged to stable assets like the US dollar, gold, or even algorithmically maintained price levels. They bridge the gap between the speed and efficiency of blockchain technology and the reliability of traditional money.

As of 2025, stablecoins account for over $140 billion in circulating supply, making them essential for traders, investors, and decentralized finance (DeFi) users. But not all stablecoins are the same—different types use different mechanisms to maintain their stability, each with unique pros and cons.

In this guide, we’ll break down the types of stablecoins, how they work, their risks, and which might be best for your needs.

What Are Stablecoins?

A stablecoin is a cryptocurrency designed to maintain a stable value by pegging its price to a reference asset. Most stablecoins are pegged to fiat currencies like the U.S. dollar (e.g., 1 USDT ≈ $1), but some track commodities (like gold) or are algorithmically balanced to hold value.

They are widely used for:

  • Trading: Moving quickly in and out of volatile assets.
  • DeFi: Providing liquidity, borrowing, and earning yields.
  • Remittances: Sending low-cost, fast cross-border payments.
  • Hedging: Protecting against crypto market volatility.

Types of Stablecoins

There are four main types of stablecoins:

  1. Fiat‑Collateralized Stablecoins
  2. Crypto‑Collateralized Stablecoins
  3. Algorithmic (Non‑Collateralized) Stablecoins
  4. Commodity‑Backed Stablecoins

Each has a different method of maintaining its peg. Let’s break them down.

1. Fiat‑Collateralized Stablecoins

Definition:
These are backed 1:1 by traditional currencies like the U.S. dollar, euro, or yen. For every stablecoin issued, an equivalent amount of fiat is held in reserve by a trusted custodian.

How They Work:
If you buy 1 USDC, Circle (its issuer) holds $1 in a regulated bank account or short-term U.S. Treasury securities. When you redeem that stablecoin, the issuer sends you the equivalent amount in fiat and burns the coin.

Examples:

  • Tether (USDT) – Largest stablecoin by market cap; widely used on exchanges.
  • USD Coin (USDC) – Issued by Circle, fully regulated and audited.
  • TrueUSD (TUSD) – Offers real-time attestation of reserves.
  • PayPal USD (PYUSD) – Launched by PayPal for payments and DeFi.

Pros:

  • High stability – Pegged directly to fiat.
  • Transparent – Many provide audits and attestations.
  • Easy adoption – Ideal for traders, merchants, and payment platforms.

Cons:

  • Centralization – Custodians control reserves and can freeze accounts.
  • Regulatory risks – Subject to government oversight.
  • Less transparency for some issuers – (e.g., Tether faced scrutiny over its reserves).

2. Crypto‑Collateralized Stablecoins

Definition:
These are backed by cryptocurrencies like Ethereum or Bitcoin instead of fiat. Because crypto is volatile, these stablecoins are overcollateralized (e.g., $150 in ETH backs $100 in stablecoins).

How They Work:
When you mint a crypto-backed stablecoin like DAI, you deposit collateral (e.g., ETH) into a smart contract. If the collateral value drops too much, the contract automatically liquidates some assets to maintain the peg.

Examples:

  • DAI – Issued by MakerDAO, backed by ETH, USDC, and other assets.


  • sUSD – A synthetic USD issued by Synthetix.
  • MIM (Magic Internet Money) – Collateralized by multiple crypto assets.

Pros:

  • Decentralized – No single company controls reserves.
  • Transparent – All collateral balances are viewable on-chain.
  • Resistant to censorship – Issuers can’t freeze accounts.

Cons:

  • Volatility risk – Collateral can lose value quickly, requiring liquidations.
  • Overcollateralization – Ties up more capital than fiat-backed options.
  • Complexity – Requires understanding of DeFi mechanics.

3. Algorithmic (Non‑Collateralized) Stablecoins

Definition:
These don’t use physical reserves. Instead, they maintain their peg via algorithmic supply adjustments—minting or burning tokens to balance price around $1.

How They Work:
If demand increases and the price rises above $1, the protocol mints more coins. If it falls below $1, the protocol burns coins or incentivizes users to buy them back.

Examples:

  • Ampleforth (AMPL) – Elastic supply adjusts daily.
  • UST (TerraUSD) – Infamously collapsed in 2022 after its peg broke.
  • Frax (FRAX) – Uses a hybrid model: partly collateralized, partly algorithmic.

Pros:

  • Highly capital-efficient – Doesn’t require large reserves.
  • Decentralized – Often governed by smart contracts and DAOs.

Cons:

  • Peg instability – Prone to “death spirals” when market confidence drops.
  • Complex mechanisms – Harder for average users to understand.
  • History of failures – UST/LUNA crash eroded trust in algorithmic coins.

4. Commodity‑Backed Stablecoins

Definition:
These stablecoins are pegged to commodities like gold, silver, or oil, giving them intrinsic value beyond fiat.

How They Work:
For every coin issued, an equivalent amount of the commodity is held in a secure vault. For example, owning 1 PAX Gold (PAXG) means you own 1 troy ounce of physical gold stored by the issuer.

Examples:

  • PAX Gold (PAXG) – Backed by physical gold.


  • Tether Gold (XAUT) – Gold-backed token from Tether.
  • Digix Gold (DGX) – Pegged to gold bars in Singapore vaults.

Pros:

  • Hedge against inflation – Commodities like gold retain value during economic uncertainty.
  • Diversification – Offers exposure to both crypto and commodities.

Cons:

  • Low liquidity – Less widely used than fiat-backed stablecoins.
  • Storage & audit challenges – Requires trust in the issuer to maintain reserves.

Why Do Stablecoins Matter?

Stablecoins are the backbone of DeFi and crypto trading.

  • Trading & arbitrage: They provide a quick way to exit volatile positions without converting back to fiat.
  • Cross-border payments: Cheaper and faster than SWIFT or remittance services.
  • DeFi participation: Essential for lending, borrowing, yield farming, and liquidity pools.
  • On-ramp/off-ramp: They simplify converting between traditional finance and blockchain.

Which Type of Stablecoin Should You Use?

If you want simplicity & security: Go with fiat-backed coins like USDC or PYUSD.

If you value decentralization: Choose crypto-collateralized options like DAI.

If you’re comfortable with high risk: Explore algorithmic models like FRAX (but beware of peg risks).

If you want inflation protection: Consider commodity-backed coins like PAXG.

Key Risks of Stablecoins

  • Regulation: Governments are increasing oversight of fiat-backed coins.
  • Centralization: Some issuers can freeze funds or blacklist wallets.
  • Smart contract risks: DeFi-based stablecoins can suffer from bugs or exploits.
  • Peg breaks: Algorithmic models are especially vulnerable to confidence loss.

The Future of Stablecoins

In 2025, stablecoins are evolving to meet regulatory and market demands:

  • Central Bank Digital Currencies (CBDCs): Governments are issuing digital dollars and euros, potentially competing with stablecoins.
  • Regulated issuers: Projects like USDC are working closely with regulators to ensure compliance.
  • Hybrid models: Combining fiat and algorithmic elements (e.g., Frax) to enhance stability.

As DeFi expands and global adoption grows, stablecoins will remain at the heart of crypto finance.

Final Thoughts

Stablecoins are more than just “digital dollars.” They’re a critical bridge between traditional finance and blockchain innovation.

  • Fiat-backed stablecoins bring stability and ease of use.
  • Crypto-collateralized ones offer transparency and decentralization.
  • Algorithmic models push innovation but carry higher risks.
  • Commodity-backed coins provide a hedge against inflation and diversify exposure.

Choosing the right type depends on your risk tolerance, use case, and trust level. Whether for trading, saving, or participating in DeFi, understanding the types of stablecoins can help you navigate the crypto ecosystem with confidence.

Build Smarter Crypto Apps &
AI Agents in Minutes, Not Months
Real-time prices, trading signals, and on-chain insights all from one powerful API.
Grab a Free API Key
Token Metrics Team
Token Metrics Team

Recent Posts

Research

Mastering the OpenAI API: Practical Guide

Token Metrics Team
5
MIN

The OpenAI API has become a foundation for building modern AI applications, from chat assistants to semantic search and generative agents. This post breaks down how the API works, core endpoints, implementation patterns, operational considerations, and practical tips to get reliable results while managing cost and risk.

How the OpenAI API Works

The OpenAI API exposes pre-trained and fine-tunable models through RESTful endpoints. At a high level, you send text or binary payloads and receive structured responses — completions, chat messages, embeddings, or file-based fine-tune artifacts. Communication is typically via HTTPS with JSON payloads. Authentication uses API keys scoped to your account, and responses include usage metadata to help with monitoring.

Understanding the data flow is useful: client app → API request (model, prompt, params) → model inference → API response (text, tokens, embeddings). Latency depends on model size, input length, and concurrency. Many production systems put the API behind a middleware layer to handle retries, caching, and prompt templating.

Key Features & Endpoints

The API surface typically includes several core capabilities you should know when planning architecture:

  • Chat/Completion: Generate conversational or free-form text. Use system, user, and assistant roles for structured prompts.
  • Embeddings: Convert text to dense vectors for semantic search, clustering, and retrieval-augmented generation.
  • Fine-tuning: Customize models on domain data to improve alignment with specific tasks.
  • Files & Transcriptions: Upload assets for fine-tune datasets or to transcribe audio to text.
  • Moderation & Safety Tools: Automated checks can help flag content that violates policy constraints before generation is surfaced.

Choosing the right endpoint depends on the use case: embeddings for search/indexing, chat for conversational interfaces, and fine-tuning for repetitive, domain-specific prompts where consistency matters.

Practical Implementation Tips

Design patterns and practical tweaks reduce friction in real-world systems. Here are tested approaches:

  1. Prompt engineering and templates: Extract frequently used structures into templates and parameterize variables. Keep system messages concise and deterministic.
  2. Chunking & retrieval: For long-context tasks, use embeddings + vector search to retrieve relevant snippets and feed only the most salient content into the model.
  3. Batching & caching: Batch similar requests where possible to reduce API calls. Cache embeddings and immutable outputs to lower cost and latency.
  4. Retry logic and idempotency: Implement exponential backoff for transient errors and idempotent request IDs for safe retries.
  5. Testing and evaluation: Use automated tests to validate response quality across edge cases and measure drift over time.

For development workflows, maintain separate API keys and quotas for staging and production, and log both prompts and model responses (with privacy controls) to enable debugging and iterative improvement.

Security, Cost Control, and Rate Limits

Operational concerns are often the difference between a prototype and a resilient product. Key considerations include:

  • Authentication: Store keys securely, rotate them regularly, and avoid embedding them in client-side code.
  • Rate limits & concurrency: Respect published rate limits. Use client-side queues and server-side throttling to smooth bursts and avoid 429 errors.
  • Cost monitoring: Track token usage by endpoint and user to identify high-cost flows. Use sampling and quotas to prevent runaway spend.
  • Data handling & privacy: Define retention and redaction rules for prompts and responses. Understand whether user data is used for model improvement and configure opt-out where necessary.

Instrumenting observability — latency, error rates, token counts per request — lets you correlate model choices with operational cost and end-user experience.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

What are common failure modes and how to mitigate them?

Common issues include prompt ambiguity, hallucinations, token truncation, and rate-limit throttling. Mitigation strategies:

  • Ambiguity: Add explicit constraints and examples in prompts.
  • Hallucination: Use retrieval-augmented generation and cite sources where possible.
  • Truncation: Monitor token counts and implement summarization or chunking for long inputs.
  • Throttling: Apply client-side backoff and request shaping to prevent bursts.

Run adversarial tests to discover brittle prompts and incorporate guardrails in your application logic.

Scaling and Architecture Patterns

For scale, separate concerns into layers: ingestion, retrieval/indexing, inference orchestration, and post-processing. Use a vector database for embeddings, a message queue for burst handling, and server-side orchestration for prompt composition and retries. Edge caching for static outputs reduces repeated calls for common queries.

Consider hybrid strategies where smaller models run locally for simple tasks and the API is used selectively for high-value or complex inferences to balance cost and latency.

FAQ: How to get started and troubleshoot

What authentication method does the OpenAI API use?

Most implementations use API keys sent in an Authorization header. Keys must be protected server-side. Rotate keys periodically and restrict scopes where supported.

Which models are best for embeddings versus chat?

Embedding-optimized models produce dense vectors for semantic tasks. Chat or completion models prioritize dialogue coherence and instruction-following. Select based on task: search and retrieval use embeddings; conversational agents use chat endpoints.

How can I reduce latency for user-facing apps?

Use caching, smaller models for simple tasks, pre-compute embeddings for common queries, and implement warm-up strategies. Also evaluate regional endpoints and keep payload sizes minimal to reduce round-trip time.

What are best practices for fine-tuning?

Curate high-quality, representative datasets. Keep prompts consistent between fine-tuning and inference. Monitor for overfitting and validate on held-out examples to ensure generalization.

How do I monitor and manage costs effectively?

Track token usage by endpoint and user journey, set per-key quotas, and sample outputs rather than logging everything. Use batching and caching to reduce repeated calls, and enforce strict guards on long or recursive prompts.

Can I use the API for production-critical systems?

Yes, with careful design. Add retries, fallbacks, safety checks, and human-in-the-loop reviews for high-stakes outcomes. Maintain SLAs that reflect model performance variability and instrument monitoring for regressions.

Disclaimer

This article is for educational purposes only. It explains technical concepts, implementation patterns, and operational considerations related to the OpenAI API. It does not provide investment, legal, or regulatory advice. Always review provider documentation and applicable policies before deploying systems.

Research

Inside DeepSeek API: Advanced Search for Crypto Intelligence

Token Metrics Team
5
MIN

DeepSeek API has emerged as a specialized toolkit for developers and researchers who need granular, semantically rich access to crypto-related documents, on-chain data, and developer content. This article breaks down how the DeepSeek API works, common integration patterns, practical research workflows, and how AI-driven platforms can complement its capabilities without making investment recommendations.

What the DeepSeek API Does

The DeepSeek API is designed to index and retrieve contextual information across heterogeneous sources: whitepapers, GitHub repos, forum threads, on-chain events, and more. Unlike keyword-only search, DeepSeek focuses on semantic matching—returning results that align with the intent of a query rather than only literal token matches.

Key capabilities typically include:

  • Semantic embeddings for natural language search.
  • Document chunking and contextual retrieval for long-form content.
  • Metadata filtering (chain, contract address, author, date).
  • Streamed or batched query interfaces for different throughput needs.

Typical Architecture & Integration Patterns

Integrating the DeepSeek API into a product follows common design patterns depending on latency and scale requirements:

  1. Server-side retrieval layer: Your backend calls DeepSeek to fetch semantically ranked documents, then performs post-processing and enrichment before returning results to clients.
  2. Edge-caching and rate management: Cache popular queries and embeddings to reduce costs and improve responsiveness. Use exponential backoff and quota awareness for production stability.
  3. AI agent workflows: Use the API to retrieve context windows for LLM prompts—DeepSeek's chunked documents can help keep prompts relevant without exceeding token budgets.

When building integrations, consider privacy, data retention, and whether you need to host a private index versus relying on a hosted DeepSeek endpoint.

Research Workflows & Practical Tips

Researchers using the DeepSeek API can follow a repeatable workflow to ensure comprehensive coverage and defensible results:

  • Define intent and query templates: Create structured queries that capture entity names, contract addresses, or conceptual prompts (e.g., “protocol upgrade risks” + contract).
  • Layer filters: Use metadata to constrain results to a chain, date range, or document type to reduce noise.
  • Iterative narrowing: Start with wide semantic searches, then narrow with follow-up queries using top results as new seeds.
  • Evaluate relevance: Score results using both DeepSeek’s ranking and custom heuristics (recency, authoritativeness, on-chain evidence).
  • Document provenance: Capture source URLs, timestamps, and checksums for reproducibility.

For reproducible experiments, version your query templates and save query-result sets alongside analysis notes.

Limitations, Costs, and Risk Factors

Understanding the constraints of a semantic retrieval API is essential for reliable outputs:

  • Semantic drift: Embeddings and ranking models can favor topical similarity that may miss critical technical differences. Validate with deterministic checks (contract bytecode, event logs).
  • Data freshness: Indexing cadence affects the visibility of the newest commits or on-chain events. Verify whether the API supports near-real-time indexing if that matters for your use case.
  • Cost profile: High-volume or high-recall retrieval workloads can be expensive. Design sampling and caching strategies to control costs.
  • Bias and coverage gaps: Not all sources are equally represented. Cross-check against primary sources where possible.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

FAQ: What developers ask most about DeepSeek API

What data sources does DeepSeek index?

DeepSeek typically indexes a mix of developer-centric and community data: GitHub, whitepapers, documentation sites, forums, and on-chain events. Exact coverage depends on the provider's ingestion pipeline and configuration options you choose when provisioning indexes.

How do embeddings improve search relevance?

Embeddings map text into vector space where semantic similarity becomes measurable as geometric closeness. This allows queries to match documents by meaning rather than shared keywords, improving recall for paraphrased or conceptually related content.

Can DeepSeek return structured on-chain data?

While DeepSeek is optimized for textual retrieval, many deployments support linking to structured on-chain records. A common pattern is to return document results with associated on-chain references (contract addresses, event IDs) so downstream systems can fetch transaction-level details from block explorers or node APIs.

How should I evaluate result quality?

Use a combination of automated metrics (precision@k, recall sampling) and human review. For technical subjects, validate excerpts against source code, transaction logs, and authoritative docs to avoid false positives driven by surface-level similarity.

What are best practices for using DeepSeek with LLMs?

Keep retrieved context concise and relevant: prioritize high-salience chunks, include provenance for factual checks, and use retrieval augmentation to ground model outputs. Also, monitor token usage and prefer compressed summaries for long sources.

How does it compare to other crypto APIs?

DeepSeek is focused on semantic retrieval and contextual search, while other crypto APIs may prioritize raw market data, on-chain metrics, or analytics dashboards. Combining DeepSeek-style search with specialized APIs (for price, on-chain metrics, or signals) yields richer tooling for research workflows.

Where can I learn more or get a demo?

Explore provider docs and example use cases. For integrated AI research and ratings, see Token Metrics which demonstrates how semantic retrieval can be paired with model-driven analysis for structured insights.

Disclaimer

This article is for informational and technical education only. It does not constitute investment advice, endorsements, or recommendations. Evaluate tools and data sources critically and consider legal and compliance requirements before deployment.

Research

Practical Guide to Fabric API and Integrations

Token Metrics Team
5
MIN

Fabric API is a cornerstone for developers building permissioned blockchain solutions with Hyperledger Fabric. This article explains what Fabric APIs are, how they fit into Fabric's architecture, practical integration patterns, and how to evaluate tooling when you need reliable programmatic access to Fabric networks.

What is the Fabric API and why it matters

The term "Fabric API" broadly refers to the programmatic interfaces and SDKs that allow applications to interact with a Hyperledger Fabric network. These interfaces expose capabilities such as submitting transactions, querying ledger state, managing identities via Fabric CA, and deploying or invoking chaincode (smart contracts). For enterprise use cases—supply chain auditing, tokenized assets, or confidential data flows—the Fabric API is the gateway between business logic and the distributed ledger.

Key characteristics of Fabric APIs include:

  • Permissioned access: operations are gated by identity and certificate-based authentication.
  • Support for multiple languages: SDKs and chaincode runtimes enable JavaScript/TypeScript, Go, Java, and more.
  • Gateway patterns: modern Fabric versions favor the Gateway API for simplified connection management and transaction lifecycle handling.

Core components and SDKs to know

Interacting with Fabric typically involves several layers. Understanding these helps you choose the right API surface for your application:

  1. Fabric Gateway API: A high-level client API that simplifies endorsement, submission, and event handling. It abstracts peers, orderers, and channel configuration so developers can focus on transactions.
  2. Fabric SDKs: Language-specific SDKs (Node.js, Java, Go) provide programmatic access where fine-grained control is required—example: advanced endorsement policies, custom discovery, or private data collection management.
  3. Chaincode APIs: Chaincode runtimes expose an API surface for smart contract logic to access ledger state, emit events, and perform composite key queries.
  4. Fabric CA API: Certificate Authority endpoints for identity lifecycle operations—enrollment, revocation, and affiliation management—accessible via REST or SDK wrappers.
  5. REST/Proxy layers: Many deployments add a REST façade or API gateway in front of Fabric to translate HTTP requests to SDK calls, add RBAC, rate limiting, and telemetry.

Design patterns and integration best practices

Choosing how to surface Fabric functionality depends on risk, latency, and operational model. Common patterns include:

  • Direct SDK clients: Suitable for backend services with secure key management that need direct ledger access and deterministic transaction flows.
  • Gateway + Microservice: Use the Fabric Gateway for transaction orchestration behind microservices that encapsulate business logic and validation.
  • REST API gateway: A REST façade simplifies integration with web and mobile apps. Add authorization checks, input validation, and transformation layers to prevent malformed transactions reaching the ledger.
  • Event-driven integrations: Subscribe to Fabric events (block/chaincode events) to trigger downstream processes or ML pipelines for analytics and monitoring.

Cross-cutting concerns to design for:

  • Identity management: Use Fabric CA and hardware-backed keys where possible; separate admin and application identities.
  • Determinism and validation: Ensure chaincode logic is deterministic and validated across peers to avoid endorsement failures.
  • Observability: Instrument SDK calls, latency, retry behavior, and endorsement responses to troubleshoot production issues.

Practical steps for building, testing, and securing Fabric API integrations

Follow a structured approach when integrating with Fabric networks:

  1. Prototype locally: Use test networks (Fabric samples or Docker-based local networks) to validate transaction flows and endorsement policies before deploying to staging.
  2. Choose the right API layer: For rapid development, the Gateway API with the Node SDK reduces boilerplate. For advanced control, use language-specific SDKs and custom connection profiles.
  3. Implement a façade for public clients: Never expose Fabric SDK credentials to browsers or untrusted environments—place a server-side API between clients and Fabric.
  4. Automate CI/CD: Include unit tests for chaincode logic, integration tests against ephemeral networks, and deployment pipelines for chaincode packaging and approvals.
  5. Security posture: Enforce TLS, rotate certificates, isolate admin operations, and employ least-privilege identities for applications.

Testing tips: use channel-level mock data, replay recorded endorsement responses for deterministic unit tests, and simulate peer failures to validate client retry logic.

Build Smarter Crypto Apps & AI Agents with Token Metrics

Token Metrics provides real-time prices, trading signals, and on-chain insights all from one powerful API. Grab a Free API Key

FAQ: What is the Fabric API?

The Fabric API comprises SDKs, the Gateway API, chaincode interfaces, and CA endpoints that let applications manage identities, submit transactions, and query ledger state on Hyperledger Fabric networks.

FAQ: How do I choose between Gateway and direct SDKs?

Use the Gateway API for simpler, high-level transaction workflows and reduced configuration. Choose direct SDKs when you need low-level control over discovery, endorsement policies, or custom peer selection logic.

FAQ: Can I expose Fabric functionality via REST?

Yes. Implement a secure REST proxy or API gateway to translate HTTP calls to Fabric SDK operations. This adds flexibility for web/mobile clients but requires careful identity and input validation.

FAQ: What are best practices for identity and key management?

Use Fabric CA for certificate issuance, adopt hardware-backed key stores where possible, separate admin and app roles, and rotate/revoke certificates according to policy. Avoid embedding private keys in client-side code.

FAQ: How should I monitor Fabric API usage and performance?

Instrument SDK calls, capture latency and endorsement statistics, log chaincode events, and integrate with observability stacks (Prometheus/Grafana). Monitor peer health and orderer topology to correlate API issues with network state.

FAQ: What common pitfalls should I watch for?

Common issues include endorsement mismatches due to non-deterministic chaincode, exposing credentials to clients, insufficient testing of policy changes, and lacking observability for transaction failures.

Disclaimer: This article is educational and technical in nature. It does not provide financial, legal, or regulatory advice. Implementations should be validated against your organization's compliance and security requirements.

Choose from Platinum, Gold, and Silver packages
Reach with 25–30% open rates and 0.5–1% CTR
Craft your own custom ad—from banners to tailored copy
Perfect for Crypto Exchanges, SaaS Tools, DeFi, and AI Products