Useful AI Terms You Should Know 🤖✨
1. Bias - AI unfairly prefers some answers due to skewed training data, leading to unfair outcomes like in hiring algorithms.
2. Label - A tag or answer AI learns as correct, essential for supervised training.
3. Model - A program that learns patterns from data to make predictions or generate outputs.
4. Training - Feeding AI examples so it improves at tasks, like teaching it to recognize cats in photos.
5. Chatbot - AI that converses with users, powering tools like customer support bots.
6. Dataset - A collection of data AI trains on—quality matters for accurate results.
7. Algorithm - Step-by-step rules AI follows to process data and solve problems.
8. Token - Small units like words or subwords that AI models like GPT break text into.
9. Overfitting - When AI memorizes training data too well and flops on new, unseen info.
10. AI Agent - Autonomous software that performs tasks independently, like booking meetings.
11. AI Ethics - Guidelines for responsible AI use, focusing on fairness and avoiding harm.
12. Explainability - How well you can understand why AI made a certain decision.
13. Inference - AI applying what it learned to new data, like generating a response.
14. Turing Test - A benchmark to see if AI can mimic human conversation convincingly.
15. Prompt - The input or question you give AI to guide its output.
16. Fine-Tuning - Tweaking a pre-trained model for specific tasks, like customizing for legal docs.
17. Generative AI - AI that creates new content, from text to images (think DALL-E).
18. AI Automation - Using AI to handle repetitive tasks without human input.
19. Neural Network - AI structure mimicking the brain's neurons for pattern recognition.
20. Computer Vision - AI "seeing" and analyzing images or videos, like facial recognition.
21. Transfer Learning - Reusing a model trained on one task for a related new one.
22. Guardrails (in AI) - Safety features to prevent harmful or incorrect outputs.
23. Open Source AI - Freely available AI code anyone can modify and build on.
24. Deep Learning - Advanced neural networks with many layers for complex tasks.
25. Reinforcement Learning - AI improving through trial-and-error rewards, like game-playing bots.
26. Hallucination (in AI) - When AI confidently spits out false info.
27. Zero-shot Learning - AI tackling new tasks without specific training examples.
28. Speech Recognition - AI converting spoken words to text, powering voice assistants.
29. Supervised Learning - AI trained on labeled data to predict outcomes.
30. Model Context Protocol - Standards for how AI handles and shares context in conversations.
31. Machine Learning - AI subset where systems learn from data without explicit programming.
32. Artificial Intelligence (AI) - Tech enabling machines to perform human-like tasks.
33. Unsupervised Learning - AI finding hidden patterns in unlabeled data.
34. LLM (Large Language Model) - Massive AI for understanding and generating human-like text.
35. ASI (Artificial Superintelligence) - Hypothetical AI surpassing human intelligence in all areas.
36. GPU (Graphics Processing Unit) - Hardware accelerating AI training with parallel processing.
37. Natural Language Processing (NLP) - AI handling human language, from translation to sentiment analysis.
38. AGI (Artificial General Intelligence) - AI matching human versatility across any intellectual task.
39. GPT (Generative Pretrained Transformer) - Architecture behind models like ChatGPT for natural text generation.
40. API (Application Programming Interface) - Bridge letting apps access AI features seamlessly.
Double Tap ❤️ if you learned something new!
1. Bias - AI unfairly prefers some answers due to skewed training data, leading to unfair outcomes like in hiring algorithms.
2. Label - A tag or answer AI learns as correct, essential for supervised training.
3. Model - A program that learns patterns from data to make predictions or generate outputs.
4. Training - Feeding AI examples so it improves at tasks, like teaching it to recognize cats in photos.
5. Chatbot - AI that converses with users, powering tools like customer support bots.
6. Dataset - A collection of data AI trains on—quality matters for accurate results.
7. Algorithm - Step-by-step rules AI follows to process data and solve problems.
8. Token - Small units like words or subwords that AI models like GPT break text into.
9. Overfitting - When AI memorizes training data too well and flops on new, unseen info.
10. AI Agent - Autonomous software that performs tasks independently, like booking meetings.
11. AI Ethics - Guidelines for responsible AI use, focusing on fairness and avoiding harm.
12. Explainability - How well you can understand why AI made a certain decision.
13. Inference - AI applying what it learned to new data, like generating a response.
14. Turing Test - A benchmark to see if AI can mimic human conversation convincingly.
15. Prompt - The input or question you give AI to guide its output.
16. Fine-Tuning - Tweaking a pre-trained model for specific tasks, like customizing for legal docs.
17. Generative AI - AI that creates new content, from text to images (think DALL-E).
18. AI Automation - Using AI to handle repetitive tasks without human input.
19. Neural Network - AI structure mimicking the brain's neurons for pattern recognition.
20. Computer Vision - AI "seeing" and analyzing images or videos, like facial recognition.
21. Transfer Learning - Reusing a model trained on one task for a related new one.
22. Guardrails (in AI) - Safety features to prevent harmful or incorrect outputs.
23. Open Source AI - Freely available AI code anyone can modify and build on.
24. Deep Learning - Advanced neural networks with many layers for complex tasks.
25. Reinforcement Learning - AI improving through trial-and-error rewards, like game-playing bots.
26. Hallucination (in AI) - When AI confidently spits out false info.
27. Zero-shot Learning - AI tackling new tasks without specific training examples.
28. Speech Recognition - AI converting spoken words to text, powering voice assistants.
29. Supervised Learning - AI trained on labeled data to predict outcomes.
30. Model Context Protocol - Standards for how AI handles and shares context in conversations.
31. Machine Learning - AI subset where systems learn from data without explicit programming.
32. Artificial Intelligence (AI) - Tech enabling machines to perform human-like tasks.
33. Unsupervised Learning - AI finding hidden patterns in unlabeled data.
34. LLM (Large Language Model) - Massive AI for understanding and generating human-like text.
35. ASI (Artificial Superintelligence) - Hypothetical AI surpassing human intelligence in all areas.
36. GPU (Graphics Processing Unit) - Hardware accelerating AI training with parallel processing.
37. Natural Language Processing (NLP) - AI handling human language, from translation to sentiment analysis.
38. AGI (Artificial General Intelligence) - AI matching human versatility across any intellectual task.
39. GPT (Generative Pretrained Transformer) - Architecture behind models like ChatGPT for natural text generation.
40. API (Application Programming Interface) - Bridge letting apps access AI features seamlessly.
Double Tap ❤️ if you learned something new!
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