BrainExpand🧠 - Exploratory AI Pipeline Overview
DataSets: DataCollection (Python, R, Apache Kafka, Google Colab, Kaggle) ➡ DataCleaning (Pandas, OpenRefine, Trifacta) ➡ DataAugmentation (imgaug, Albumentations) ➡ DataNormalization (scikit-learn, TensorFlow) ➡ DataSplitting (scikit-learn, train_test_split)
Algorithms: SupervisedLearning (scikit-learn, TensorFlow, Azure ML) ➡ UnsupervisedLearning (scikit-learn, Keras, IBM Watson) ➡ SemiSupervisedLearning (scikit-learn, PyTorch, Google Colab) ➡ ReinforcementLearning (OpenAI Gym, TensorFlow, Azure ML)
NeuralNetworks: Layers (Keras, PyTorch) ➡ ActivationFunctions (TensorFlow, Keras) ➡ WeightInitialization (PyTorch, Keras) ➡ Backpropagation (TensorFlow, PyTorch) ➡ GradientDescent (scikit-learn, TensorFlow)
Overfitting: Regularization (Keras, TensorFlow) ➡ Dropout (Keras, TensorFlow)
ModelEvaluation: CrossValidation (scikit-learn) ➡ Metrics (scikit-learn, TensorFlow)
FeatureEngineering: FeatureSelection (scikit-learn, Boruta) ➡ FeatureExtraction (Pandas, scikit-learn)
ModelTraining: Training (TensorFlow, PyTorch, Databricks) ➡ Validation (scikit-learn) ➡ Testing (scikit-learn)
HyperparameterTuning: GridSearch (scikit-learn) ➡ RandomSearch (scikit-learn) ➡ CrossValidation (scikit-learn)
FineTuning (Keras, PyTorch) ➡ TransferLearning (TensorFlow, Keras)
ModelDeployment: Docker, Kubernetes, AWS SageMaker, Google Cloud AI Platform, Azure ML ➡ Monitoring (Prometheus, Grafana, MLflow) ➡ Retraining (Kubeflow, Apache Airflow)
Interpretability: SHAP, LIME, PDP
Collaboration and Automation: Git, MLflow, Weights & Biases, Kubeflow, Apache Airflow
#AI #DeepLearning #MachineLearning #AIUnlock #TechMystery