Crypto Cheat Sheet AI: Explaining 30 Common Slang Terms in One Shot
Original Title: "AI Insider Jargon Dictionary (March 2026 Edition), Recommended for Bookmarking"
Original Author: Golem, Odaily Planet Daily
Now, if you're in the crypto world and not paying attention to AI, you're easily subject to ridicule (yes, my friend, think about why you clicked in).
Are you completely clueless about the basic concepts of AI, asking the soy sauce bean for the meaning of every acronym in a sentence? Are you lost in a sea of proprietary terms at AI events, pretending you're not disconnected?
While it's not realistic to dive into the AI industry in a short amount of time, knowing a summary of high-frequency AI industry basics is worthwhile. Luckily, this article is prepared for you below. Sincerely advise you to read through and bookmark.
Basic Vocabulary (12)
· LLM (Large Language Model)
The core of LLM is a deep learning model trained on massive amounts of data, proficient in understanding and generating language. It can process text and increasingly handle other types of content.
In contrast is the SLM (Small Language Model) - usually emphasizing a language model with lower costs, lighter deployment, and more convenient localization.
· AI Agent
AI Agent refers not only to a "chatting model" but a system capable of understanding goals, invoking tools, step-by-step task execution, planning, and validation when necessary. Google defines an agent as software that can reason based on multimodal input and act on behalf of the user.
· Multimodal
Its AI model is not only text-based but can simultaneously process various input-output forms like text, images, audio, videos, etc. Google specifically defines multimodal as the ability to process and generate different types of content.
· Prompt
The user's input command to the model, the most basic form of human-machine interaction.
· Generative AI (Generative AI / AIGC)
Emphasizing AI "generation" rather than just classification or prediction, generative models can produce text, code, images, emojis, videos, etc., based on a prompt.
· Token
This is one of the concepts in the AI field most similar to the "Gas Unit." Models do not understand content based on "words," but rather process input and output based on tokens, with billing, context length, and response speed usually highly correlated to tokens.
· Context Window
Refers to the total number of tokens a model can "see" and utilize at once, also known as the number of tokens the model can consider or "remember" in a single processing step.
· Memory
Allows a model or agent to retain user preferences, task context, and historical states.
· Training
The process by which a model learns parameters from data.
· Inference
In contrast to training, refers to the process where a model, once deployed, receives input and generates output. In the industry, it is often said that "training is expensive, but inference is even costlier" because many costs in the real commercialization phase occur during inference. The distinction between training and inference is also the foundational framework for discussions of deployment costs in mainstream vendors.
· Tool Use / Tool Calling
Means that a model not only outputs text but can also call tools such as search, code execution, databases, external APIs, etc. This has already been regarded as a key capability of agents.
· API
Infrastructure for AI products, applications, and agents when interacting with third-party services.
Advanced Vocabulary (18)
· Transformer
A model architecture that makes AI better at understanding contextual relationships, serving as the technical foundation for most large language models today. Its key feature is the ability to simultaneously consider the relationship between each word in the entire piece of content.
· Attention
The central mechanism in Transformers, its role is to enable the model to automatically determine "which words are most worthy of attention" when reading a sentence.
· Agentic / Agentic Workflow
This is a recently popular term, which means a system is no longer just "question and answer," but has a certain degree of autonomy to break down tasks, decide on the next steps, and invoke external capabilities. Many vendors see it as a sign of "moving from Chatbot to executable system."
· Subagents
An Agent further breaks down into multiple dedicated sub-agents to handle subtasks.
· Skills
With the rise of OpenClaw, this term has become more common. It refers to installable, reusable, and combinable capability units/instructions for an AI Agent, but also warns of tool misuse and data exposure risks.
· Hallucination
It refers to a model confidently generating erroneous or absurd output by "perceiving non-existent patterns," presenting a seemingly reasonable but actually incorrect overconfident output.
· Latency
The time it takes for a model to process a request and produce an output, is one of the most common engineering jargon, frequently encountered in discussions on deployment and productization.
· Guardrails
Used to limit what a model/Agent can do, when to stop, and what content cannot be output.
· Vibe Coding
This term is also one of the hottest AI slang terminologies today, meaning users express their needs directly through conversation, and AI writes the code, without the user needing to understand how to code specifically.
· Parameters
Numerical scales used internally in a model to store capabilities and knowledge, often used to roughly measure the scale of a model. Phrases like "hundreds of billions of parameters" are common bragging statements in the AI community.
· Reasoning Model
It usually refers to models that are better at multi-step reasoning, planning, validation, and complex task execution.
· MCP (Model Context Protocol)
This is a very hot new buzzword in the past year, serving as a common interface between models and external tools/data sources.
· Fine-tuning
Continuing training on a base model to make it more suitable for a specific task, style, or domain. Google's terminology directly considers tuning and fine-tuning as related concepts.
· Distillation
Transferring the capabilities of a large model to a smaller model, like having the "teacher" instruct the "student."
· RAG (Retrieval-Augmented Generation)
This has almost become a standard configuration in enterprise AI. Microsoft defines it as a "search + LLM" pattern, using external data to ground the answers, addressing issues such as outdated training data and lack of understanding of private knowledge bases. The goal is to base the answers on real documents and private knowledge rather than solely on the model's own recall.
· Grounding
Often associated with RAG, it means ensuring that the model's answers are based on external sources such as documents, databases, web pages, rather than relying only on parameter memorization. Microsoft explicitly identifies grounding as a core value in the RAG documentation.
· Embedding (Vector Embedding / Semantic Vector)
Encoding textual, image, audio, and other content into high-dimensional numerical vectors for semantic similarity calculations.
· Benchmark
An evaluation method that uses a standardized set of criteria to test a model's capabilities, often used by various models to "prove their strength" through leaderboard rankings.
You may also like

Ray Dalio: If the United States loses Hormuz, it will lose more than just a war
How to Earn Up to 40% Rebates on Crypto Futures Trading (WEEX Trade to Earn IV Guide)
WEEX Trade to Earn IV lets traders earn up to 40% fee rebates in real time through a tiered miner system tied to trading activity. With additional boosts from referrals, it offers a more reliable alternative to airdrops as the crypto market gains momentum.

NVIDIA Plays Trillion-Dollar Chess Game | Rewire News Morning Edition

Real-time Update | NVIDIA GTC 2026 Conference Highlights Galore

People Behind Pokémon Go: Started with CIA's Money, Now Mapping the World for the Military AI

Huang Renxun GTC Speech Full Text: By 2027, Market Demand Will Exceed $1 Trillion; Everyone Should Develop an OpenClaw Strategy

Stratechery Debunks the AI Bubble Myth: What Should We Do with AI?

Three Charts to Watch at NVIDIA's GTC: Cheaper Compute, Spend More

BTC Eight Green Candles Reach $76K, What Is the Logic Behind Outperforming Gold in the Midst of Battle?

Morning Report | Strategy invested $1.57 billion last week to increase its holdings by 22,337 bitcoins; Abra plans to go public through a SPAC merger; Metaplanet aims to raise approximately $765 million to increase its bitcoin holdings

CB Insights: Nine Predictions for the Fintech Sector in 2026, with Asset Tokenization Already Becoming a Trend

Huang Renxun's full GTC speech: The era of inference has arrived, with revenue expected to reach at least one trillion dollars by 2027, and lobster is the new operating system
Trade Gold, Silver & Oil on WEEX: $300K Rewards and 0% Fees
WEEX has launched a large-scale Gold, Silver, and Oil trading campaign featuring 0% fees, a $300K reward pool, and Trade-to-Earn opportunities, allowing traders to deposit, trade tokenized commodities like PAXG and XAUT, and compete on leaderboards — all at WEEX.

WEEX P2P now supports KZT, UZS, AMD, GEL & MDL—Merchant Recruitment Now Open
To make crypto deposits easier, WEEX has officially launched its P2P trading platform and continues to expand fiat support. We're excited to announce that the Kazakhstani Tenge (KZT), Uzbekistani Som (UZS), Armenian Dram (AMD), Georgian Lari (GEL) and Moldovan Leu (MDL) are now available on WEEX P2P!

21Shares Enhances Crypto ETP Pricing with FTSE Partnership
Key Takeaways: 21Shares AG updates the pricing methodology for its Bitcoin and Ethereum-linked ETPs on the London Stock…

Alibaba AI Projects Crypto Value Surge for XRP, Bitcoin, and Ethereum by 2026
Key Takeaways: Alibaba’s AI predicts significant price increases for XRP, Bitcoin, and Ethereum by 2026’s end, driven by…

Ethereum USD Reclaims $2,200 Amidst Crypto Market Surge
Key Takeaways: Ethereum USD rebounds from $1,840 lows, reclaiming the $2,200 mark with a +19% recovery as of…

TRUMP Memecoin Investors Granted Exclusive Mar-a-Lago Invite
Key Takeaways: $TRUMP memecoin holders gain exclusive access to a Mar-a-Lago event featuring Donald Trump and other key…
Ray Dalio: If the United States loses Hormuz, it will lose more than just a war
How to Earn Up to 40% Rebates on Crypto Futures Trading (WEEX Trade to Earn IV Guide)
WEEX Trade to Earn IV lets traders earn up to 40% fee rebates in real time through a tiered miner system tied to trading activity. With additional boosts from referrals, it offers a more reliable alternative to airdrops as the crypto market gains momentum.