AI/ML Roadmap👨🏻💻👾🤖 -
==== Step 1: Basics ====
📊 Learn Math (Linear Algebra, Probability).
🤔 Understand AI/ML Fundamentals (Supervised vs Unsupervised).
==== Step 2: Machine Learning ====
🔢 Clean & Visualize Data (Pandas, Matplotlib).
🏋️♂️ Learn Core Algorithms (Linear Regression, Decision Trees).
📦 Use scikit-learn to implement models.
==== Step 3: Deep Learning ====
💡 Understand Neural Networks.
🖼️ Learn TensorFlow or PyTorch.
🤖 Build small projects (Image Classifier, Chatbot).
==== Step 4: Advanced Topics ====
🌳 Study Advanced Algorithms (Random Forest, XGBoost).
🗣️ Dive into NLP or Computer Vision.
🕹️ Explore Reinforcement Learning.
==== Step 5: Build & Share ====
🎨 Create real-world projects.
🌍 Deploy with Flask, FastAPI, or Cloud Platforms.
#ai #ml
==== Step 1: Basics ====
📊 Learn Math (Linear Algebra, Probability).
🤔 Understand AI/ML Fundamentals (Supervised vs Unsupervised).
==== Step 2: Machine Learning ====
🔢 Clean & Visualize Data (Pandas, Matplotlib).
🏋️♂️ Learn Core Algorithms (Linear Regression, Decision Trees).
📦 Use scikit-learn to implement models.
==== Step 3: Deep Learning ====
💡 Understand Neural Networks.
🖼️ Learn TensorFlow or PyTorch.
🤖 Build small projects (Image Classifier, Chatbot).
==== Step 4: Advanced Topics ====
🌳 Study Advanced Algorithms (Random Forest, XGBoost).
🗣️ Dive into NLP or Computer Vision.
🕹️ Explore Reinforcement Learning.
==== Step 5: Build & Share ====
🎨 Create real-world projects.
🌍 Deploy with Flask, FastAPI, or Cloud Platforms.
#ai #ml