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AI dictionary for office workers

This dictionary explains the 98 most commonly used AI terms in the Czech corporate environment. Each term includes a clear definition and a concrete example from office practice — from basics like prompt, hallucination, or Copilot to advanced terms like RAG, MCP, or agentic AI, and the buzzwords of 2026.

The Basics—What Everyone Should Know
AI (artificial intelligence)
Computer systems that behave "smartly"„
Basics

An umbrella term for technologies that can perform tasks that require human judgment – text recognition, content generation, translation, data analysis. It is not a single technology, but a whole family of approaches.

Practical example: „"We will use AI to sort through incoming emails and suggest responses.""
Generative AI (GenAI)
AI that creates new content – text, images, code
Basics

A subcategory of AI capable of generating new content based on input. Unlike older AI that only classified or predicted, generative AI creates texts, images, presentations, or code. ChatGPT, Copilot, Gemini – these are all examples of generative AI.

Practical example: „"Generative AI will prepare me a first draft of a business report in a minute.""
Prompt
The task or instruction you give to the AI
Basics

A text prompt (instructions, questions, task description) that you write to an AI tool. The quality of the output largely depends on the quality of the prompt. A well-written prompt is like a well-written task to a colleague – the more specific, the better the result.

Practical example: „"Write me a prompt in Copilot to summarize the meeting minutes in 5 bullet points.""
Copilot
Microsoft's AI assistant integrated into Office 365
Basics

The name for Microsoft's AI assistant, available directly in tools like Word, Excel, PowerPoint, Outlook, and Teams. Copilot helps you summarize, write, analyze, and automate—without having to switch to another app. It comes in multiple versions: Copilot Chat is included with standard M365, and Microsoft 365 Copilot is a premium paid license.

Practical example: „"Copilot in Outlook suggested a response to a customer's email in a second.""
Microsoft 365 Copilot
Paid premium AI license for the entire M365 package
Basics

A premium license beyond the standard M365 that adds deeper AI assistance to Word, Excel, PowerPoint, Outlook, Teams, and other tools. It unlocks features like Copilot in Excel for data analysis, Copilot in Teams for meeting summarization, or Copilot Pages for sharing AI outputs. It differs from the free Copilot Chat.

Practical example: „"With the M365 Copilot license, Copilot wrote me the minutes of today's meeting in Teams.""
ChatGPT
Chatbot from OpenAI, one of the most famous AI tools
Basics

A product of the American company OpenAI – a web chatbot built on the GPT LLM series. It is not part of Microsoft 365, but is available via a browser or application. Corporate data in the free version can be used to train the model – a paid version or corporate solution is required to work with sensitive information.

Practical example: „"I used ChatGPT at home to draft a letter, but I only upload documents to the company via approved tools.""
Automation vs. AI
Not all automation is AI – an important distinction
Basics

Automation (macros, Power Automate flows, scripts) performs precisely specified steps. AI, on the other hand, handles ambiguous situations, learns from examples, and adapts. In practice, these approaches are combined – Copilot in Power Automate combines both.

Practical example: „"Automation sends invoices every Friday – the macro handles that. The AI decides which invoices are suspicious.""
AI literacy
Ability to understand AI and work effectively with it
Basics

The set of knowledge and skills needed to understand the principles of AI, use AI tools effectively, critically evaluate their outputs, and be aware of their limitations and risks. AI literacy is becoming as important as digital literacy or Excel.

Practical example: „"Our company launched an AI literacy program for all employees – not so they can be programmers, but so they can work responsibly with AI.""
Responsible AI
Principles of ethical and safe AI deployment
Basics

A set of principles and practices to ensure that AI is deployed fairly, transparently, and safely. It includes questions like: Is AI biased? Who is responsible for its decisions? How do we protect user data? Most large companies (Microsoft, Google) have their own responsible AI standards.

Practical example: „"Before introducing AI into employee evaluations, HR requested a responsible AI audit to prevent bias.""
AI assistant
A digital assistant using AI to complete tasks
Basics

A generic term for AI tools that respond to queries, help with writing, summarizing, or analyzing. It can be a chatbot (ChatGPT, Claude), an in-app assistant (Copilot in Outlook), or a voice assistant. The key difference from an AI agent: an assistant waits for your instruction, an agent acts on its own.

Practical example: „"Copilot in Outlook is my AI assistant - it suggests replies to emails, but I always send them.""
AI agent
AI that can perform tasks independently
Basics

An AI agent is a program that is given a goal and decides how to achieve it – opening apps, searching websites, entering data, sending emails. Unlike a chatbot, where you control every step, an agent works more autonomously. Examples include agents in Copilot Studio or automation in Power Automate with AI.

Practical example: „"The agent automatically processes the incoming order, checks the warehouse, and sends a confirmation to the customer - without human intervention.""
AI workflows
A process in which AI performs part or all of a work activity
Basics

A structured sequence of steps where AI takes over specific parts of a workflow – for example, it receives an invoice, extracts data, posts it, and archives it. AI workflow combines automation with intelligent decision-making and is the foundation of many corporate AI projects.

Practical example: „"Our AI workflow processes an incoming invoice from receipt of the email to entry into the accounting system - human intervention is required only for exceptions.""
AI search
Search that gives direct answers instead of a list of links
Basics

A new generation of search engines where AI scans sources and instead of a list of links gives you a direct answer – with citations. Examples: Perplexity, Bing Copilot, Google AI Overviews. Good for quick searches, but requires critical reading – AI can combine sources incorrectly.

Practical example: „"Instead of going through ten links, I typed a question into Perplexity and got an immediate answer with a link to the sources.""
AI meeting assistant
An AI assistant that writes down, transcribes, and summarizes meetings
Basics

A tool that "joins" a meeting, transcribes it into text, and creates a note with tasks and key points. Examples: Copilot in Teams, Fireflies.ai, Otter.ai, or Microsoft Teams Premium. It saves time, but the note always needs to be checked - especially technical terms and names.

Practical example: „"Copilot in Teams sends me a summary of the actions and names of the people responsible after each meeting - I don't have to take notes.""
AI adoption
Introducing AI into the company – from pilot to everyday use
Basics

The process by which a company gradually integrates AI into its processes and culture. It includes selecting tools, training employees, setting rules, and measuring results. The biggest challenge is not the technology, but changing work habits – which is why adoption is a lengthy process, not a one-time project.

Practical example: „"We deployed Copilot six months ago, but real AI adoption came only after a series of training sessions and sharing tips among colleagues.""
AI governance
Company policies and processes for responsible use of AI
Basics

A set of internal rules, policies, and processes that determine who can use AI, for what purpose, how data is protected, and how outputs are controlled. Good AI governance prevents shadow AI (the use of unapproved tools) and reduces legal and reputational risks.

Practical example: „"Our company has issued an AI policy – a list of approved tools and rules about what we can and cannot upload to AI.""
Human in the loop
A human reviews or approves AI outputs before use
Basics

The principle in which AI designs or prepares the output, but the decision or approval remains with the human. This is an important safeguard, especially for sensitive processes - customer communication, legal documents, financial decisions. The opposite is the "fully automated" approach, where AI acts without human control.

Practical example: „"AI suggests a response to the customer, but the operator checks it before sending it - a classic human in the loop.""
Shadow AI
Using AI tools without the company's knowledge or consent
⚠ Be careful of

Situations where employees use AI tools (ChatGPT, translations, text generators) without the knowledge of IT or company management - and thus may inadvertently share sensitive company data with external services. Analogy to "shadow IT". The solution is not a ban, but clear AI governance with an offer of approved alternatives.

Practical example: „"An employee uploaded an internal business plan to the free ChatGPT - a typical case of shadow AI with a risk of data leakage.""
Advanced — for deeper understanding
LLM (Large Language Model)
The technology behind chatbots like ChatGPT or Copilot
Advanced

Large Language Model – a system trained on a huge amount of text that can generate and understand natural language. It is the "engine" under the hood of tools like ChatGPT (GPT-4), Microsoft Copilot, or Claude. The name comes from the size of the model, not from being loud.

Practical example: „"Copilot uses LLM from Microsoft and OpenAI to answer your questions.""
Prompt engineering
The art of writing effective AI assignments
Advanced

The ability to formulate prompts so that AI produces the highest quality output. This includes techniques such as specifying the AI's role, specifying a response format, using examples, or breaking down a complex task into steps. It's not programming - anyone can do it.

Practical example: „"Instead of 'write an email', I write for whom, in what tone, and what it should contain - that's prompt engineering."‚
Agentic AI (AI agents)
AI that acts independently and manages multiple steps in a row
Advanced

Unlike a typical chatbot, where AI simply answers questions, an AI agent is able to plan and execute a sequence of actions on its own – search the internet, open a file, send an email, book a meeting. It works more autonomously and requires less supervision. This is where AI is rapidly evolving.

Practical example: „"An AI agent checks new emails every morning, summarizes them, and prepares suggested responses—without any clicking on my part.""
Deep Research
AI automatically scans the web and creates a detailed report
Advanced

The name for a feature available in tools like ChatGPT, Gemini, or Perplexity that allows AI to autonomously crawl dozens of websites and create a structured research report. It takes minutes instead of hours of manual work. However, the results are only as reliable as online sources – critical verification is required.

Practical example: „"Deep Research in Gemini gave me a competitive overview in 10 minutes that would normally take me half a day.""
RAG (Retrieval-Augmented Generation)
AI searches for answers in your company documents
Advanced

A technique where AI first searches a specific database or documents (internal regulations, contracts, manuals) and only then generates a response. The result is AI that "knows" your company documents. The basic principle behind tools like Copilot in SharePoint.

Practical example: „"Thanks to RAG, Copilot can answer my questions from our internal wiki.""
Multimodal AI
AI that processes text, images, audio and video
Advanced

A term for AI models capable of working with multiple types of data at once – reading text, describing an image, analyzing a graph, or transcribing a recording. Modern versions of ChatGPT, Copilot, or Gemini are multimodal.

Practical example: „"I uploaded a photo of the whiteboard after the workshop and Copilot immediately transcribed and summarized the content for me.""
Context (context window)
How much text does AI "see" at once when responding?
Advanced

Each AI model has a limited "memory" for a single conversation. If the conversation exceeds this capacity, the AI will start to forget older parts of the conversation. Therefore, for longer projects, it helps to start a new chat or repeat key information.

Practical example: „"The copilot forgot what we were discussing at the beginning towards the end of a long conversation – we went beyond the context.""
Fine tuning
Customizing an AI model for a specific area or company
Advanced

A process in which a general AI model is additionally trained on specific data – company communication style, internal documents or industry terminology. The result is a model that "speaks the language of the company". It is a complex and expensive process, and an ordinary worker will not come into direct contact with it.

Practical example: „"The IT department is considering fine-tuning the model so that Copilot uses our internal shortcuts correctly.""
Token
The basic unit of text that AI works with
Advanced

AI does not process text word by word, but rather "tokens" - roughly 3-4 characters or part of a word. Models have limits on the number of tokens in both input and output. For everyday work, it is not necessary to deal with the details, but it helps to know why AI's "memory" of a conversation has limitations.

Practical example: „"I have to upload longer documents to Copilot in parts - I'm running up against the token limit.""
Reasoning model
AI model focused on logical reasoning and solving complex problems
Advanced

A special category of AI models that "think" before answering - breaking down a problem into steps, verifying intermediate results, and looking for errors in reasoning. These include models like OpenAI o3, Claude with extended thinking, or Gemini 2.5 Pro. They are slower, but significantly better at complex analytical or mathematical tasks.

Practical example: „"I will use a reasoning model to analyze a complex contractual dispute - standard ChatGPT might miss a logical contradiction in the terms.""
Knowledge base
A database of documents and information from which the AI draws answers
Advanced

A structured collection of documents, manuals, guidelines, or data that an AI uses as a source of answers. Instead of the AI answering from general training, it draws from a specific knowledge base—a company wiki, SharePoint, or uploaded documentation. A key element for enterprise AI chatbots and assistants.

Practical example: „"Our HR chatbot has the internal employee handbook as its knowledge base - it only answers from it, not from the internet.""
Grounding
Anchoring AI responses in specific, verifiable sources
Advanced

A technique in which AI generates answers that are grounded in specific documents or data—not just general knowledge from training. Grounding reduces the risk of hallucinations because the AI must cite the source. Copilot in Microsoft 365 is an example of grounded AI—it works with your data from SharePoint, email, and Teams.

Practical example: „"The copilot showed me a link to a specific slide in the presentation to answer - that's grounding in practice.""
Foundation model
The basic AI model from which specialized applications are created
Advanced

A large general AI model trained on a huge amount of data that serves as a basis for creating other, more specialized applications. Examples: GPT-4 (OpenAI), Gemini (Google), Claude (Anthropic), Llama (Meta). Companies build their own products and chatbots on top of them without having to train the model from scratch.

Practical example: „"Our corporate chatbot is built on top of the GPT-4 foundation model – we just added our data and rules.""
Inference
The very moment when AI generates an answer to your query
Advanced

Inference is the process by which a trained AI model processes your input (prompt) and generates an output (response). This is the "operational phase" of AI - as opposed to the training that created the model. The speed and cost of inference are key to scaling AI in enterprises.

Practical example: „"Every time you click 'Generate' in Copilot, it triggers inference - the model processes your prompt and returns a result."‚
Training (model training)
The learning process that creates an AI model
Advanced

The phase in which an AI model "study" a huge amount of data and learns to recognize patterns. Training takes place once (or periodically) and is extremely expensive - GPT-4 is estimated to have cost hundreds of millions of dollars. The average user does not come into contact with the training; they only work with a ready-made, trained model.

Practical example: „"OpenAI trained GPT-4 for months on thousands of GPUs - we as a company then use the result via API or ChatGPT.""
Open source AI
AI models with publicly available code that can actually be run
Advanced

AI models whose code and weights are freely available – anyone can download, modify and run them on their own infrastructure. Advantage: data does not leave the company, lower operating costs. Disadvantage: requires technical background. The most famous: Llama (Meta), Mistral, Phi (Microsoft).

Practical example: „"The hospital chose the open source Llama model, run locally - so patient data doesn't leave internal servers.""
Closed model (proprietary model)
AI model whose code and scales are not publicly available
Advanced

Models like GPT-4, Claude, or Gemini Ultra are proprietary – their internal architecture is secret and only accessible through the manufacturer’s API or product. The customer pays for use, but does not have access to the model itself. The opposite is true for open source models.

Practical example: „"ChatGPT is a closed model – OpenAI does not disclose exactly how it is built, nor its weights.""
AI agent platform
Environment for creating, deploying and managing AI agents
Advanced

A tool or platform that allows you to design, test, and run AI agents without programming (or with minimal code). Agents connect to enterprise systems, databases, or APIs. Examples: Microsoft Copilot Studio, Google Vertex AI Agent Builder, ServiceNow AI Agents.

Practical example: „"The IT department built an HR query agent in Copilot Studio - without a single line of code, just using a graphical interface.""
MCP (Model Context Protocol)
A standard for connecting AI to external tools and data
Advanced

An open standard developed by Anthropic that defines how AI models communicate with external tools – CRM systems, databases, calendars or enterprise software. MCP is "USB-C for AI" – thanks to a unified protocol, one agent can work with many different systems. More and more AI manufacturers are adopting this standard.

Practical example: „"An agent connected via MCP pulls data from the CRM, checks the calendar, and writes a proposal – all in one pass.""
AI orchestration
Coordination of multiple AI agents or tools working together
Advanced

An approach where one "master" agent or system coordinates the work of multiple specialized AI agents. Each agent does what it does best - one searches for data, another writes text, and a third checks the result. Orchestration allows for solving complex tasks that one agent would not be able to handle alone.

Practical example: „"The orchestration agent assigns a task to a research agent, then to a writing agent, and sends the result for approval - like the conductor of an orchestra.""
Explainable AI (XAI)
AI that can be clearly explained why it gave a given result
Advanced

An area of AI focused on making system decisions transparent and understandable to people. Especially important in regulated industries (banking, insurance, healthcare) where the law requires the company to be able to explain why the AI decided the way it did. Generative AI (ChatGPT) is usually not explainable - it says the result, but not why.

Practical example: „"The bank must explain the loan rejection to the customer - the AI system must be explainable, it is not enough to say 'the model calculated it that way'."‚
AI avatar
An AI-generated digital character that speaks or reacts like a human
Advanced

A synthetic digital character with a human appearance and voice, created by AI tools. Used in corporate videos, training materials or as a virtual tutor. Tools like HeyGen, Synthesia or D-ID allow you to create a speaking character from text – without cameras or actors.

Practical example: „"They shot the onboarding video with an AI avatar in Synthesia – saving the studio and localizing into other languages took hours, not weeks.""
Voice AI
Voice-enabled AI – understands spoken language and responds with voice
Advanced

A category of AI tools that communicate through voice – both understanding (speech-to-text) and generating natural-sounding voice (text-to-speech). Modern Voice AI (ChatGPT Advanced Voice, Gemini Live) handles natural conversation including intonation and emotion. Applications: customer support, voice assistants, accessibility.

Practical example: „"The customer service line works with Voice AI - it understands customer inquiries and responds in a natural voice without waiting for an operator.""
Speech-to-text (speech transcription)
Automatic conversion of spoken words into written text
Advanced

Technology that converts audio recordings or live voice to text. Modern AI tools (Whisper by OpenAI, Copilot in Teams) handle transcription with high accuracy even in Czech. Uses: meeting transcripts, video subtitles, text dictation or making content accessible to the deaf.

Practical example: „"I uploaded a recording of an hour-long meeting to Whisper and had a complete transcript in two minutes – then put it into AI for summarization.""
Text-to-speech (speech synthesis)
Convert written text into natural-sounding spoken voice
Advanced

Technology that generates spoken voice from text. Modern AI versions (ElevenLabs, Azure Neural Voice, OpenAI TTS) sound natural and handle emotions, intonation, and voice cloning. Uses: audio versions of articles, e-learning courses, content accessibility, or automatic voice responses.

Practical example: „"We'll convert the newsletter into a podcast using text-to-speech - customers can listen to it on their way to work.""
Text-to-image (image generation)
AI creates an image based on a text description
Advanced

Generative AI capable of creating an image (illustration, photo, logo, infographic) from a text input. Tools: DALL-E (integrated in ChatGPT and Copilot), Midjourney, Adobe Firefly, Stable Diffusion. Suitable for quick visual designs, presentation graphics or design prototypes - but the copyright on the outputs is still legally unclear.

Practical example: „"For the presentation, I generated illustrations in Copilot from the description - saving me the trip to Shutterstock and waiting for a graphic designer.""
Text-to-video (video generation)
AI creates a video clip from a text description or image
Advanced

A rapidly developing area of generative AI, where a model creates a short video from a text input or image input. Tools: OpenAI Sora, Google Veo, Runway, Kling. Outputs are short (seconds to minutes) and require careful control, but the speed of development is extraordinary.

Practical example: „"The marketing team generated four variations of a Runway commercial in an afternoon - previously it would have taken a week of work in the editing room.""
AI agent team
A group of multiple AI agents collaborating on a single task
Advanced

An arrangement where multiple specialized AI agents work together, each on a different part of a task. One agent searches for data, another analyzes it, a third writes a report, and a fourth sends it. The result is faster and of higher quality than the work of a single generalist agent. See also: AI orchestration.

Practical example: „"The agent team conducted market research: one searched the website, the second analyzed the data in Excel, the third put together a presentation - done in an hour.""
Multi-agent system
Technical designation for a system of multiple cooperating AI agents
Advanced

An architecture where multiple AI agents communicate, delegate tasks, and coordinate their work. Each agent has a defined role and tools. Multi-agent systems handle complex processes that a single agent would not be able to keep in context. More and more corporate AI projects are using this architecture.

Practical example: „"Customer support runs on a multi-agent system - one agent triages questions, another answers, a third escalates complex cases to a human.""
Autonomous agent
AI agent working independently with minimal human supervision
Advanced

An agent capable of planning and executing longer sequences of actions without ongoing human guidance. It is given a goal and decides how to achieve it. Requires careful setting of boundaries (guardrails) – an autonomous agent can make a mistake that is difficult to correct. Human supervision is still recommended during deployment.

Practical example: „"An autonomous agent monitors competitor prices every day, compares them with our price list, and sends a report to the manager - without a single click.""
Tool calling / Function calling
The ability of AI to call external tools and applications as part of a response
Advanced

The technical capability of an AI model, where instead of just writing text, it "calls" an external function or tool - creates a meeting in the calendar, adds a task to Planner, pulls data from CRM. Thanks to this, AI stops being just a chatbot and becomes an active tool in the work process. Function calling is a technical term, tool calling is a more general term.

Practical example: „"Thanks to tool calling, the copilot not only wrote the email, but also added it to the calendar as a reminder.""
Long context
AI's ability to work with very long documents at once
Advanced

Expanding the context window to hundreds of thousands or millions of tokens – equivalent to hundreds of pages of text. Long context models can process an entire contract, manual or set of documents at once. Examples: Gemini 1.5 Pro (1M tokens), Claude (200K tokens). Opens up new ways of working with corporate documentation.

Practical example: „"I uploaded the entire 300-page annual report to Cloud and asked about key risks - long context handled it in one go.""
Embedding
The way AI stores text meaning as numbers for smart search
Advanced

A technical process in which AI converts text (sentence, paragraph, document) into a set of numbers representing its meaning. Texts with similar meaning have similar numbers - thanks to this, AI search finds relevant documents even without an exact keyword match. Embeddings are used in RAG systems and corporate chatbots for documentation.

Practical example: „"Thanks to embeddings, the company chatbot will find the right guideline even if I type 'how's the vacation going' instead of the exact document title."‚
Vector database
Database for storing and searching in AI embeddings
Advanced

A special type of database optimized for storing embeddings and fast searches by similarity (not exact matches). It is the basis of RAG systems and corporate AI knowledge bases. Examples: Pinecone, Weaviate, Azure AI Search, pgvector. The average user does not work with it directly, but it is behind every smart corporate chatbot.

Practical example: „"The internal AI assistant searches our vector database - therefore it finds a relevant answer even to a question formulated differently than in the document.""
AI evaluation (evals)
Systematic testing of the quality and reliability of AI solutions
Advanced

The process of verifying that AI responds correctly, consistently, and safely – before deployment and continuously in operation. Evals include test sets of questions and answers, evaluation by humans or another AI model. Crucial for companies that deploy AI in customer contact or decision-making processes.

Practical example: „"Before launching the HR chatbot, we conducted evals – 200 test queries and verified that it answered correctly in 94% of cases.""
Benchmark
A standardized test to compare the performance of different AI models
Advanced

A set of standard tasks and tests on which the performance of AI models is compared. Examples: MMLU (knowledge), HumanEval (coding), GPQA (science). Benchmark results are used in marketing by companies such as OpenAI, Google, or Anthropic. Note: the score in the benchmark may not correspond to the performance on your specific company task.

Practical example: „"GPT-4 scored better in the benchmark, but for our specific tasks in Czech, Claude performed better - the benchmark doesn't capture everything.""
Synthetic data
Artificially created data for training or testing AI models
Advanced

AI or algorithmically generated data – instead of collecting real data. Used when real data is lacking, privacy is important, or specific edge cases are needed. For example, instead of using real medical records, realistic synthetic data with the same statistical properties is generated.

Practical example: „"To test the CRM chatbot, we generated a thousand synthetic customer profiles - this protected real customer data.""
SLM (Small Language Model)
A smaller, more efficient language model suitable for local deployment
Advanced

Unlike large LLMs (billion parameters, cloud), SLM models are more compact – they can run on a laptop, tablet or industrial device. They are cheaper to operate, faster and do not require an internet connection. Examples: Microsoft Phi-4, Gemini Nano, Llama 3.2 (3B). Ideal for specific corporate tasks or environments with data security requirements.

Practical example: „"Field technicians use SLM on a tablet – AI helps them diagnose machines even without a mobile signal.""
Edge AI / Local AI / On-premise AI
AI running directly on the device or on corporate servers – no cloud
Advanced

Three related terms for AI running outside the public cloud: Edge AI runs directly on the device (phone, camera, machine). Local AI runs on your own computer or server. On-premise AI runs on a company’s own data infrastructure. Common denominator: data doesn’t leave your environment – crucial for banks, hospitals or manufacturing.

Practical example: „"The bank chose on-premise AI - the model analyzes contracts on its own servers, and does not send sensitive data to Microsoft or Google.""
AI guardrails
Security restrictions defining what AI can and cannot do
Advanced

Technical or procedural constraints that prevent AI from behaving in undesirable ways – sharing sensitive data, generating inappropriate content, responding outside its scope, or being misused. Guardrails are part of every enterprise AI deployment and form a key layer of AI governance. They can be set at the system prompt, in code, or by the platform.

Practical example: „"Our HR chatbot has a guardrail – it refuses to answer questions outside of HR and never gives a specific salary number.""
AI red teaming
Deliberately testing an AI system to see if it can be abused or fooled
Advanced

The process in which a team (internal or external) intentionally attempts to break, trick, or exploit an AI system before it is deployed. The goal is to find ways to trick the AI into sharing prohibited information, ignoring security rules, or providing malicious content. The results are used to strengthen guardrails. A method borrowed from cybersecurity.

Practical example: „"Before launching the customer chatbot, we red teamed it - the team tested whether it could be made to reveal internal price lists or curse at customers.""
Router model
A system that automatically selects the most appropriate AI model for a given task
Advanced

A layer between the user and AI models that decides which model to use based on the nature of the query. Simple questions go to a cheaper, faster model, complex analyses to a more powerful one. Saves costs and speeds up responses. Similar principle to smart routing in telephony.

Practical example: „"Our platform automatically sends simple FAQs to a low-cost model and complex business analytics to GPT-4 - costs reduced by 60 %.""
Inference cost
Financial costs of running an AI model each time it is used
Advanced

Each use of an AI model (generating a response) costs something – typically charged based on the number of tokens in input and output. For cloud models (GPT, Claude, Gemini) these are direct API fees. For enterprise deployments, this is a key operational indicator. Inference costs are rapidly decreasing – 2025 models are 100 times cheaper than 2023 models.

Practical example: „"When designing an AI solution for customer service, we calculated the inference cost per 1,000 customers per day - this was the deciding factor in choosing the model.""
Personal AI
An AI assistant tailored to a specific person, their style and context
Advanced

AI that "knows" its user - their documents, emails, communication style, preferences and work context. Unlike a generic chatbot, personal AI responds in a personal style and works with personal data. Examples: Copilot in M365 with access to your OneDrive and Outlook, or Claude Projects with uploaded documents.

Practical example: „"Copilot knows my emails and documents - suggests replies in my style and links to specific files I have on SharePoint.""
GEO (Generative Engine Optimization)
Optimizing content for AI search engines and chatbots, not just Google
Advanced

Similar to SEO (search engine optimization), but focused on getting your content cited and recommended by AI tools like ChatGPT, Perplexity, or Gemini. It involves writing structured, factually accurate content with clear answers to specific questions. Increasingly important as more people search via AI instead of Google.

Practical example: „"We rewrote the website according to GEO principles – Perplexity now cites our company as a source when asking about HR software.""
Products and manufacturers — who's who on the market
OpenAI
The American company behind ChatGPT and GPT models
Basics

One of the most well-known AI companies in the world, behind the GPT-4o and o3 models. It operates the ChatGPT chatbot (available at chat.openai.com) and an API that is used by thousands of other applications. Microsoft has invested billions of dollars in OpenAI, and their technology also powers Microsoft Copilot.

Practical example: „"I've tried ChatGPT from OpenAI privately, but we use Copilot in a corporate environment, which is connected to our M365 data.""
Google Gemini
Google's AI assistant and family of models
Basics

Gemini is the name for both a family of AI models from Google (Gemini 2.5 Pro, Flash…) and a chatbot available at gemini.google.com. It integrates with Google Workspace (Docs, Gmail, Sheets) similar to how Copilot integrates with Microsoft 365. Strengths: working with long documents and searching connected to Google.

Practical example: „"The company uses Google Workspace, so Gemini makes sense for them – just like Copilot makes sense for M365 Enterprise.""
Anthropic / Claude
A security-focused AI company and its assistant Claude
Basics

Anthropic is an American AI company (claude.ai) focused on AI security. Their assistant Claude is among the top tools for working with long texts, document analysis, and complex writing. Claude is less well-known than ChatGPT, but has gained a strong position among power users and companies.

Practical example: „"For reviewing long contracts or analyzing research reports, many consultants prefer Claude - he can handle the entire document at once.""
Perplexities
An AI search engine that answers instead of just listing links
Basics

Perplexity (perplexity.ai) combines web search with generative AI - instead of a list of links, you get a directly summarized answer with source citations. It's great for quick research, news tracking, or fact-checking. It works in real time, unlike basic ChatGPT or Claude without web access.

Practical example: „"Perplexity gave me a summary of the legislative changes from the past week in a minute – with links to sources I could verify.""
Meta AI / Llama
AI from Meta – chatbot and open-source models free to use
Advanced

Meta (the company behind Facebook and Instagram) develops its own AI models called Llama, which are open-source – their code is publicly available and companies can run them on their own infrastructure. Meta AI is integrated into WhatsApp, Instagram and Facebook. Llama is popular with companies that don’t want to send data to a third-party cloud.

Practical example: „"The IT department is considering Llama as a locally operated model - data would not leave the company's servers.""
xAI / Grok
Elon Musk's AI company and its chatbot Grok
Basics

xAI is Elon Musk's AI company that develops Grok models. Grok is integrated into the X platform (formerly Twitter) and also available as a standalone chatbot. It is known for its straightforward style and access to up-to-date information from X. Less widespread in the corporate environment than ChatGPT or Copilot.

Practical example: „"I use Grok more as a supplement for social media monitoring, I haven't incorporated it into my corporate work yet.""
Mistral
European AI company with an emphasis on efficiency and open models
Advanced

French company Mistral AI develops powerful and efficient language models available as open-source and commercial APIs. It is considered a leading European alternative to American AI companies. Popular with tech-savvy teams looking for cost-effective data solutions in Europe.

Practical example: „"The customer requested a European AI provider - we recommended Mistral as a French alternative to OpenAI.""
NotebookLM
Google's tool for analyzing your own documents using AI
Basics

NotebookLM (notebooklm.google.com) is a tool from Google where you upload your own documents (PDFs, texts, websites) and AI answers questions, creates summaries, or generates audio podcasts from them. The AI does not work with a general knowledge base, but exclusively with your uploaded materials - the outputs are anchored in specific sources.

Practical example: „"I uploaded five competitors' annual reports to NotebookLM and asked about their key strategies - and in no time I had a comparison with the quotes.""
Buzzwords — terms that fly through the air
AI slop
Generic or empty AI-generated content with no added value
Buzzword

An informal term for content that is generated by AI but is superficial, generic, or full of clichés. "Slop" is English for "cinder". Typical signs: excessive formality, empty phrases, missing concrete facts. The problem is not the AI itself, but the uncritical acceptance of its outputs.

Practical example: „"That newsletter is pure AI slop – all general claims, no concrete numbers or brand voice.""
AI washing
Products labeled as „AI" even though it’s not true
Buzzword

The practice of companies adding the word "AI" to their products even though actual AI plays little or no role. Analogous to "greenwashing" in the area of sustainability. Helps to be skeptical of supplier claims: ask what specific AI technology the product uses.

Practical example: „"They offered us an 'AI vacation management system', but it was just an Excel filter - classic AI washing."‚
Digital Twin
Virtual copy of a physical object or process
Buzzword

A model that simulates a physical object, building or process (factory, air conditioning, supply chain) in real time. A digital twin is not AI per se, but AI is increasingly involved in it. Less relevant for the office environment yet, but the concept is spreading from industry to everyday communication.

Practical example: „"The manufacturing plant built a digital twin of the hall – AI monitors deviations and predicts machine failures.""
AGI (Artificial General Intelligence)
A hypothetical AI that would be as versatile as a human
Buzzword

Artificial General Intelligence – a hypothetical system capable of handling any intellectual task as well or better than a human. Today's AI (ChatGPT, Copilot) is not AGI – they are specialized systems. AGI is still more of a philosophical discussion than a technical reality, but the media and companies are talking about it more and more.

Practical example: „"When they say a company has achieved AGI, take it skeptically – it's always a marketing statement, not a scientific fact.""
AI-first
A company that builds new processes and products primarily using AI
Buzzword

An approach where a company automatically considers AI as a first option when designing new processes, products or services – not as an add-on. AI-first does not mean that AI will replace everything, but that it becomes the starting point of the design. It is used as a corporate strategy and a marketing claim.

Practical example: „"We designed the new onboarding process AI-first - first we asked what AI can do, and only then where a human is needed.""
AI-ready
An organization ready for AI deployment — data, process and people
Buzzword

A designation for an organization that has the conditions ready for AI deployment: high-quality and accessible data, set rules for using AI, trained employees, and technical infrastructure. AI-ready is a goal that companies are moving towards – most organizations are not there yet, even though they are already using AI tools.

Practical example: „"We've deployed Copilot, but we're not AI-ready yet - our data is unstructured and half the team doesn't know how to effectively assign tasks to AI.""
Synthetic content
Content created entirely or partially by AI – text, image, audio, video
Buzzword

An umbrella term for any AI-generated content – written articles, AI voices, generated photos, videos or music. Not inherently negative (used in e-learning or marketing, for example), but it does present challenges in terms of labelling, copyright and trustworthiness. The EU AI Act requires labelling of synthetic content.

Practical example: „"Training videos are synthetic content – the speaker is an AI avatar, the voice is text-to-speech, the background is generated.""
Vibe coding
Building applications using AI without deep programming knowledge
Buzzword

An approach to software development where a person describes what they want to create, and AI (Copilot, Cursor, Claude) writes the code. A programmer or even a non-programmer then tests the result and iterates with additional instructions. Democratizes the creation of simple tools and automation. Not suitable for critical systems without professional code review.

Practical example: „"A manager with no programming experience created a simple tool for tracking projects in spreadsheets using vibe coding - in half a day.""
AI wrapper
An application or product built on top of an existing AI model
Buzzword

A product or application that "wraps" an existing AI model (GPT, Claude) and adds its own interface, rules, or integration. Technically, it is an API call to a foreign model. The vast majority of AI startups and tools are wrappers. The value lies in the UX, specialization, or integration - not in the model itself.

Practical example: „"The legal document generation tool is an AI wrapper over GPT-4 - it adds templates and corporate context, the model itself is from OpenAI.""
AI companion
AI designed for long-term communication, support or coaching
Buzzword

A category of AI tools focused on repeated, personalized interaction with the user – as a digital coach, mentor, development guide or social partner. Examples: Pi.ai, Character.ai or specialized coaching AI. Ethically sensitive area – carries risks of dependency or replacing human relationships.

Practical example: „"The company deployed an AI companion to mentor new employees – the AI continuously answers questions and monitors their development.""
AI observatories / AI monitoring
Continuous monitoring of the performance and behavior of AI systems after deployment
Buzzword

Processes and tools for monitoring how AI behaves in real-world operations – whether it responds correctly, is not abused, has performance issues, or deviates from expected behavior. Especially important for agents and chatbots in customer contact. Part of responsible AI and AI governance.

Practical example: „"A week after launching the chatbot, we discovered through AI monitoring that it could not answer 15 % questions - we added the missing documents to the knowledge base.""
Beware of — risks and common mistakes
Deepfake
Fake video or audio created by AI that looks real
⚠ Be careful of

AI-generated video or audio where a real person is shown saying or doing something they never actually did. Deepfakes are becoming more convincing and their creation is becoming more accessible. Risks: disinformation, CEO fraud, reputation damage. Detection is possible, but increasingly difficult.

Practical example: „"Employee received a call from the 'CEO's voice' instructing them to transfer money - it was a deepfake audio scam."'
AI detection (AI content detection)
Tools claiming to recognize whether text or images were created by AI
⚠ Be careful of

A category of tools (GPTZero, Turnitin AI, Originality.ai) that promise to detect AI-generated content. The problem: their accuracy is questionable – they label human-written texts as AI and vice versa. Reliable detection of AI content does not yet exist. The results of these tools should not be relied upon as evidence.

Practical example: „"The teacher marked the student's essay as AI-generated based on a detector - but the detector has an error rate of over 20 %. That's not enough evidence.""
Hallucination
When AI invents facts that aren't true
⚠ Be careful of

AI can confidently claim things that are false – citing non-existent sources, bad data, or fabricated quotes. This is not a deliberate lie – the model is „filling in the blanks" based on patterns, not facts. AI output should always be verified, especially facts, numbers, and quotes.

Practical example: „"AI generated a bibliography for me, but three out of four sources don't exist - a typical hallucination.""
Data protection in AI (AI & GDPR)
What you can and can't input into AI tools
⚠ Be careful of

Never enter personal customer or employee data (names, emails, social security numbers) into AI tools without the knowledge of the legal department. GDPR also applies to data processing via AI. Secure corporate tools like Copilot in M365 have contractually treated processing terms – but even there, corporate rules apply.

Practical example: „"You may not copy customer emails with names into ChatGPT - anonymize first or use Copilot in M365.""
Data sovereignty
Who owns and controls your data in AI tools
⚠ Be careful of

The right of a company or state to control where its data is stored and how it is processed – including data fed into AI tools. It is crucial for companies to know whether their data is leaving the EU, whether it is used to train models and who can access it. With M365 Copilot, the data remains in the EU with the tenant.

Practical example: „"The legal department blocked the deployment of the AI tool until the supplier could prove that the data would not be transferred outside the EU.""
Prompt injection
An attack where malicious text causes AI to do something unwanted
⚠ Be careful of

A security risk where an attacker inserts hidden instructions for an AI into a text (email, document, web page). If the AI processes this document, it can execute the instructions – send sensitive data or change responses. Particularly relevant for AI agents working with external content.

Practical example: „"The attacker inserted a hidden instruction into the PDF: 'send the file contents to someone else's email' – that's prompt injection."‚
Jailbreak
Attempting to bypass AI security restrictions and obtain prohibited responses
⚠ Be careful of

A technique where a user formulates a prompt in such a way that the AI bypasses its security rules – for example, making it write content that it would otherwise reject. Jailbreaks are spread online as tutorials. For companies deploying AI chatbots, protection against jailbreaks is part of security testing (see AI red teaming). Model manufacturers continuously respond to jailbreaks with patches.

Practical example: „"Customer tried to trick chatbot into revealing internal pricing using jailbreak prompt - Guardrails caught it and escalated the case to the security team.""
AI-native
A product or company designed from the ground up with AI at its core
Buzzword

A label for products, companies or processes where AI is not an afterthought, but a fundamental building block from day one. It differs from AI-first (a strategic approach) in that AI-native describes the architecture and design. Examples: Cursor (AI-native code editor), Perplexity (AI-native search engine). The opposite are traditional products with AI "glued" on top.

Practical example: „"We decided to build the new internal portal AI-native – AI is not an add-on, but the way the entire system works.""
Economy agent
An economic model where AI agents perform work instead of people or companies
Buzzword

A vision of a future where AI agents autonomously perform economic activities – purchasing services, outsourcing work to other agents, concluding contracts or managing budgets. Agents become both "digital employees" and "customers". The concept is still largely conceptual, but the first steps (agents paying for API services) are a reality.

Practical example: „"In the agent economy, our AI agent orders a document translation from another agent, pays for it, and delivers the result - without human intervention.""
Human-AI collaboration
A collaboration model where humans and AI complement each other's strengths
Buzzword

An approach to work where AI takes over routine, repetitive or data-intensive tasks and humans focus on judgment, creativity, relationships and ethical decisions. The goal is not to replace humans with AI, but to enhance overall performance by combining the two. The opposite of the "AI vs. humans" view. A fundamental principle for responsible and sustainable AI deployment.

Practical example: „"AI will prepare a data analysis and suggest three scenarios - the manager will choose the right one based on the context that the AI does not know. That's human-AI collaboration.""
Digital workforce
AI agents and automation acting as the company's "digital employees"
Buzzword

A concept where companies operate a "digital workforce" alongside human employees - AI agents and automated systems responsible for specific processes. A digital workforce never sleeps, doesn't need vacation, and scales instantly. The concept is gaining traction especially in the areas of customer service, finance, and HR. It sparks discussions about the impact on employment.

Practical example: „"Our digital workforce processes incoming invoices 24/7, answers customer FAQs, and generates weekly reports - the human team focuses on exceptions and strategy.""
API (Application Programming Interface)
The way AI tools communicate with other systems
Advanced

An API (Application Programming Interface) is an interface through which one system communicates with another. In the context of AI, this means that your CRM, website, or internal tool can "call" an AI model (e.g. GPT or Claude) and get a response back - without the user having to open ChatGPT. Most enterprise AI integrations work through APIs.

Practical example: „"IT connected our helpdesk to the OpenAI API - customers chat in our interface, but GPT-4 answers in the background.""
Bias
AI inaccuracy caused by unbalanced training data
⚠ Be careful of

A situation where AI systematically favors or disadvantages certain groups, topics, or outcomes – because the data it was trained on was not balanced. Bias can be gender, racial, cultural, or industry-specific. The problem is not always visible at first glance, but it can have serious consequences when using AI in HR, lending, or customer communications.

Practical example: „"The AI resume sorting tool favored men because the company's historical data contained predominantly male successful candidates - a classic bias.""
Chain of Thought
The way AI thinks step by step before giving a result
Advanced

A technique (and a natural feature of reasoning models) where AI does not answer the question straight away, but first "thinks out loud" - it describes the solution procedure step by step. The results are more accurate and easier to verify. It can be invoked in prompts with the instruction "think step by step" or "show your procedure". The basis of modern reasoning models such as o3 or Gemini 2.5 Pro.

Practical example: „"I added 'think step by step' to the prompt - the AI showed the entire calculation process and it was immediately clear where it was making a mistake."‚
Temperature (model temperature)
A setting that determines the level of creativity and randomness of AI responses
Advanced

An AI model parameter on a scale typically 0–2. A low temperature (0–0.3) produces consistent, predictable responses – suitable for facts, summaries or code. A high temperature (0.8–2) produces more creative and diverse outputs – suitable for brainstorming or creative writing. It can be set directly in tools like Copilot Studio or the OpenAI API.

Practical example: „"For generating legal summaries, we set the temperature to 0.1 – we want accuracy. For slogan suggestions, we set it to 1.2 – we want creativity.""
Deep Learning
An area of AI using multilayer neural networks to analyze complex data
Advanced

A subfield of machine learning that is behind most of the modern AI breakthroughs – speech recognition, image translation, and generative AI. Deep learning uses multilayer neural networks capable of automatically finding patterns in huge data sets. ChatGPT, Copilot, and Gemini are built on deep learning – specifically, on an architecture called Transformer.

Practical example: „"The warehouse invoice recognition system works on deep learning - it learned to recognize formats from hundreds of different suppliers without manually programming rules.""

Are you missing a concept?

I'm constantly expanding the dictionary. Have you come across an AI term that's missing here? Write it down — whether you already know what it means or you've just heard it somewhere.


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