🤖 Machine learning models are like magic black boxes that take numerical inputs and provide numerical outputs.
🔢 Inputs and outputs of machine learning models are always numerical.
🌺 Machine learning models can be trained to recognize different species of flowers based on input values representing characteristics such as color and stem length.
🧠 Machine learning models require specific inputs and produce output predictions based on those inputs.
📊 The output of a machine learning model can be a confidence score that represents the model's prediction.
💻 Machine learning is just a small part of the overall code, with regular programming and application logic making up the majority.
🎯 Machine learning models need to be trained to perform well on a specific task.
🤖 There are three key forms of machine learning, with supervised learning being the most common.
🍎🍊 Supervised learning involves training a machine learning system using pre-labeled data points, like apples and oranges on a scatter plot.
👶 Training a machine learning system is similar to teaching a human baby, where it learns from examples and adjusts to improve over time.
🖥️ Computers can only work with numbers, which is different from how humans process data.
🔢 Machine learning models learn from numbers and use them to make predictions.
📊 The quality of training data is crucial for a machine learning model's performance.
🧩 Unsupervised learning involves discovering patterns in data without knowing the labels in advance.
🍎🍊 The data represents apples and oranges, with two distinct clusters.
🤔 Machine learning programs don't know the specific clusters and return general class names.
🔢 Sometimes the number of classes in the data is unknown, and educated guesses are made.
💡 Unsupervised learning can be useful for classifying data in meaningful ways.
🧠 Machine learning consists of three main types: supervised learning, unsupervised learning, and reinforcement learning.
🎮 Reinforcement learning involves taking actions to achieve a goal based on trial and error, and it has been successful in gaming and robotics.
⚖️ One must use reinforcement learning systems with caution and thoroughly test the solutions they create, as the results may not always align with human intuition.
🧠 Machine learning strengthens and weakens connections based on winning or losing moves.
🔍 Reinforcement learning is an active area of research, but supervised learning is currently the focus.
💡 Supervised learning is the most used and mature form of machine learning, capable of solving common industry problems.