Sent Successfully.
Workflow Element Store
- Public Datasets
- Unstructured data (Audio)
- APIs and Data Feeds
- Data Pre-existing
- Crowdsourcing
- WebScraping
- Data Logging
- Unstructured data (Images / Videos)
- Data Collaboration and Partnerships
- Mobile Applications or IoT Applications
- Structured Data (Tabular)
- Surveys and Questionnaires
- Data Generation
- GCS
- S3
- GCP BigQuery
- Azure blob storage
- Azure Data Warehouse
- Oracle DB
- RDBMS
- MS SQL server
- Informatica
- NoSQL DB
- AWS Redshift
- PostgreSQL
- MySQL
- Feature Selection
- Polynomial Features
- Auto-Preprocessing libraries
- Time-Based Features
- AutoEDA libraries
- Binning
- Domain-Specific Feature Engineering
- Handling Noisy Data
- Textual Feature Extraction
- Data Scaling and Normalization
- Handling Categorical Data
- Interaction Features
- Feature Extraction from Images
- Dimensionality Reduction
- Dealing with Outliers
- Dimensionality Reduction
- Handling Imbalanced Classes
- Encoding Categorical Variables
- Data Scaling and Normalization
- Logarithmic Transform
- Handling Time-Series Data
- Handling Missing Data
- Supervised Learning-Regression
- Train-Test Split
- Supervised Learning-binary classification
- Ensemble Techniques
- Data Partitioning
- Supervised Learning-multiclass classification
- Unsupervised Learning
- Forecasting
- Time Series Anaysis
- Blackbox Techniques
- Regular Monitoring and Logging
- Cross-Validation
- Hyperparameter Tuning
- Early Stopping
- Data Partition-sequential
- Regularization
- Gradient Clipping
- Data Augmentation
- Ensemble Methods
- Weight Initialization
- Train-Test Split
- Batch Size Selection
- Learning Rate Scheduling
- Batch Normalization
- Transfer Learning
- Model Comparison
- Evaluation Metrics
- Hyperparameter Tuning
- Cross-Validation
- Performance Visualization
- External Validation
- Train-Test Split
- Model Interpretability
- Data Partitioning
- Regularization Techniques
- A/B Testing
- Model Health Monitoring
- Web APIs - Flask, FastAPI, etc.
- Alerting and Notification
- Security Considerations
- Model Drift
- Bias and Fairness Assessment
- Performance Metrics
- Continuous Integration and Deployment (CI/CD)
- Error Analysis
- Model Retraining and Updating
- Containerization
- Prediction Logging
- Model Registry
- Edge Deployment
- Cloud Deployment
- Documentation and Reporting
- Serverless Computing
- Model Serialization
- Streamlit
- Concept Drift Detection
- Model Versioning
- Feedback Collection
- Documentation and API Documentation
- Model Monitoring and Maintenance
- Monitoring and Logging
- Data Drift Monitoring
- End User Machine
- Mobile