Demonstrates, at very small scale, how a language model is trained (unigram language model).
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Updated
Jan 20, 2026 - Python
Demonstrates, at very small scale, how a language model is trained (unigram language model).
Demonstrates, at very small scale, how a language model is trained (unigram language model).
Demonstrates, at very small scale, how a language model is trained (bigram language model).
Demonstrates, at very small scale, how a language model is trained (two-context model).
Demonstrates, at very small scale, how a language model is trained (bigram language model).
Demonstrates, at very small scale, how a language model is trained (two-context model).
Demonstrates, at very small scale, how a language model is trained (three-context model with explicit transform stage).
🚀 Train a custom unigram model using simple and efficient methods, enabling easy adoption for natural language processing tasks.
🚂 Train a custom GPT model with 300 contexts to enhance your natural language processing tasks and improve interactive applications.
🚀 Train a 200-bigram language model with ease, enhancing text generation tasks and improving natural language processing capabilities.
🐾 Train AI with 300 diverse contexts about animals to enhance understanding and interaction in natural language processing applications.
🐾 Train bigram models of 200 animal names to enhance natural language processing tasks in generating relevant text efficiently.
Small Tinker + LoRA notebook sandbox with Pig Latin & basketball datasets and Weights & Biases logging.
🚀 Train and fine-tune GPT models with 400-context support to enhance conversational capabilities and improve AI interactions.
🐾 Train a model using 100 unigram animal names to enhance natural language processing projects with simple, effective training data.
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