AI Essentials


Concepts Every Professional Should Know

Core Definitions

  • Large Language Model (LLM): A neural network trained to predict the next term of an input sequence.
    • Example: If you type “Please click the button to submit your…” the LLM predicts “…application.” (or “…form.”)
  • Tokenization: The process of breaking input text into discrete, smaller units called tokens (words or sub-words).
    • Example: Input Word: “Walking”, Tokens: Walk + ing.
      In this case, the AI separates the action (walk) from the tense (ing). This allows the model to mathematically relate “walking,” “swimming,” and “running” because they all share the same ing token suffix.
  • Vectors: The mapping of a word in an n-dimensional space such that similar meaning words are clustered together.
    • Example: In an AI’s internal “map,” the vector for “Dog” will be mathematically closer to “Puppy” than it is to “Airplane.”
  • Attention: A mechanism that adds context to a word by looking at nearby words to derive exact meaning.
    • Example: In the sentence “The bank was overflowing with water,” attention focuses on “water” to know you mean a river bank, not a financial bank.
  • Self-Supervised Learning: A training method where the model hides a section of input and tries to predict it, learning the underlying structure without human labels.
  • Transformer: A specific algorithm/architecture that uses attention blocks to process sequences and predict the next token.
    • Example: The underlying technology that allows ChatGPT to understand the relationship between the first and last sentence of a long essay.
  • Fine-Tuning: Taking a base model and training it on specific question-answer sets to make it an expert in a specific field.
  • Retrieval Augmented Generation (RAG): Fetching relevant documents from a database and adding them to the prompt to give the AI real-time, private context.

We will dive deep into these concepts in the upcoming pages. My goal is to break down these complex technical pillars into clear, actionable insights.