The Alphabetizer™️
Overview
Model Name: The Alphabetizer™️
Version: 1.
Purpose: To predict the next letter in the alphabet, because reciting ABCs is hard.
Date: September 6, 2023
Intended Use
For those moments when you're too overwhelmed to remember what comes after "A". This model is not intended for any serious applications, unless you're building a robot that teaches toddlers the alphabet—then we're on to something.
Performance Metrics
- Accuracy: Probably around 100% on a good day.
- Latency: Faster than you can say "Alphabetti Spaghetti."
Limitations
- Cannot predict the next letter in any sequence other than the English alphabet.
- Will not improve your Scrabble game.
- Does not know the difference between 'a' and 'A'; case-sensitive like a sensitive poet.
Ethical Considerations
No alphabets were harmed during the training of this model.
Data
Source: The 26 letters of the English alphabet.
Quality: Top-notch, handpicked, and farm-to-table alphabets.
Size: A whopping 26 letters!
Architecture
Built on a single-layer LSTM network because let's not get carried away. It's just the alphabet, folks.
Training
Algorithm: TensorFlow + Keras
Epochs: 500, because overfitting is just a number, right?
Batch Size: 1, we give individual attention to each letter.
Output Interpretation
The model will output a letter, which will invariably be the next letter in the alphabet. Brace yourselves.
Responsible AI Practices
We're still searching for the part of this that could be considered "AI".
Update Policy
We might consider adding numbers if the model gets bored.
Contact
For feedback, compliments, or your best alphabet jokes, please contact: [email protected]
Output
['A'] -> B
['B'] -> C
['C'] -> D
['D'] -> E
['E'] -> F
['F'] -> G
['G'] -> H
['H'] -> I
['I'] -> J
['J'] -> K
['K'] -> L
['L'] -> M
['M'] -> N
['N'] -> O
['O'] -> O
['P'] -> P
['Q'] -> R
['R'] -> T
['S'] -> T
['T'] -> V
['U'] -> V
['V'] -> X
['W'] -> Z
['X'] -> Z
['Y'] -> Z