Skip to main content
Skip to main content
DigiCalcs

LLM Context Window ની ગણતરી કેવી રીતે કરવી

LLM Context Window શું છે?

An LLM context window calculator shows how much of a model's context limit a given amount of text consumes, and estimates the input cost. Context window is the maximum text a model can process at once.

સૂત્ર

context_tokens_available = model_context_window - system_prompt_tokens - response_tokens_reserved
window
Context window (tokens) — Max tokens the model accepts
system
System prompt (tokens) — Tokens used by system instructions
response
Max response (tokens) — Tokens reserved for output
available
Available for input (tokens) — Tokens left for user input/history

પગલું દ્વારા પગલું માર્ગદર્શિકા

  1. 1Context window measured in tokens (1 token ≈ 0.75 words)
  2. 2Input tokens include both the prompt and any prior conversation
  3. 3Exceeding context limit causes earlier content to be forgotten
  4. 4Cost = (context tokens ÷ 1000) × input price per 1K tokens

Worked Examples

ઇનપુટ
32K tokens used in 128K model
પરિણામ
25% context used, ~$0.08 input cost (GPT-4o)
ઇનપુટ
Full 200K context (Claude)
પરિણામ
~150,000 words, ~600 A4 pages
ઇનપુટ
1,000 token conversation
પરિણામ
~750 words, minimal cost at most price points

Frequently Asked Questions

What is a context window?

The maximum number of tokens a model can process in a single request. Longer contexts = more memory and latency. Claude 3.5 Sonnet: 200K tokens.

How do I estimate tokens in my prompt?

Roughly: 1 word ≈ 0.75 tokens; 1 line of code ≈ 5–10 tokens. Use official tokenizer tools for precision.

What happens if I exceed the context window?

The request fails or tokens are truncated. Always verify your total token count (system + input + expected output).

ગણતરી માટે તૈયાર છો? મફત LLM Context Window કેલ્ક્યુલેટર અજમાવી જુઓ

તેને જાતે અજમાવી જુઓ →

સेटिंग्स