Prompt 正文
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Goal: Create a realistic screenshot of an AI chat interface showing a generated technical infographic about {argument name="topic" default="how Large Language Models (LLMs) work technically"}. The screenshot should look like a modern web app conversation, not a standalone poster.
Canvas: 768×1024 vertical screenshot, light gray app background, rounded white content areas, clean sans-serif typography, subtle shadows, high-resolution but with the infographic text slightly small like a real embedded generated image.
Chat UI layout: At the top left show a small circular user avatar, the chat title “Visualizing LLM Architecture” with a tiny dropdown chevron, and at the top right a simple “Files” label with an icon. Below, show a rounded user message bubble aligned near the top center/right containing: “make an image explaining how LLMs work technically”. Under it, show a small status row reading “Scira task complete” with a sparkle/loader icon and chevron. The main generated image appears below as a large rounded rectangle card. Beneath the image, include assistant explanatory text: “The image above is a comprehensive technical infographic breaking down how Large Language Models function under the hood. Here is a detailed walkthrough of each component shown:” followed by the bold section heading “Tokenization: From Text to Numbers”. At the bottom, show a rounded input box with placeholder “Ask a follow-up...”, a plus button on the left, small tool/model controls on the right, the model label “Kimi K2.6” with a dropdown, and a circular voice button.
Generated infographic inside the chat: Design a blue-and-white technical educational poster titled in large navy caps: “HOW LARGE LANGUAGE MODELS (LLMs) WORK”. Use a white background, navy-blue outlines, light-blue highlights, rounded panels, arrows connecting steps, miniature charts, equations, tables, and icons. The poster should be information-dense and engineering-oriented.
Infographic sections: Use exactly 8 labeled panels/areas:
1. “INPUT: TOKENIZATION” panel showing a raw text box with the sentence “The quick brown fox jumps over the lazy dog.”, a tokenizer block, token boxes for the words, and token ID boxes.
2. “EMBEDDINGS” panel showing token IDs converted into dense vectors, with a small table of numeric embedding values.
3. “TRANSFORMER ARCHITECTURE” panel showing a stacked transformer block with Add & Norm, Feed-Forward Network, Multi-Head Self-Attention, input embeddings, positional encoding, and layer repetition notation.
4A. “SELF-ATTENTION MECHANISM (INSIDE ONE HEAD)” wide lower-left panel showing matrices for input embeddings, queries, keys, values, attention scores, softmax, attention weights, weighted sum, and equations.
4B. “ATTENTION: TOKENS ATTEND TO EACH OTHER” panel showing a network graph of tokens from the example sentence connected by blue lines plus attention-weight bars.
5. “OUTPUT: NEXT TOKEN PREDICTION” panel showing probability distribution bars for candidate next tokens such as cat, sat, on, the, mat, roof, then highlighting the predicted next token “the”.
6. “TRAINING: PRE-TRAINING WITH NEXT-TOKEN PREDICTION” long bottom strip divided into 5 mini-cards: massive text corpus, creating training examples, model prediction, loss calculation, and backpropagation/update.
7. Bottom process arrow reading “Repeat for billions of examples over many epochs until convergence.”
8. Bottom-right result callout with a brain icon explaining that the model learns general language patterns and knowledge.
Visual style: Crisp vector infographic, academic but friendly, dark navy headings, medium-blue borders, pale-blue fills, tiny tables and plots, clean arrows, rounded cards, consistent spacing. Make the embedded infographic resemble an AI-generated educational diagram with dense but mostly legible small text.
Constraints: Keep all UI text in English. Do not add watermarks. Preserve the visible chat screenshot framing and the large embedded infographic. Use exactly the listed 8 infographic areas and exactly 5 mini-cards inside the training strip.猜你喜欢

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