causal-inference
Bengio's causal inference for AI: Interventional reasoning, counterfactuals, and System 2 deep learning. World models with causal structure.
Bengio's causal inference for AI: Interventional reasoning, counterfactuals, and System 2 deep learning. World models with causal structure.
Evaluate and compare ML model performance with rigorous testing methodologies
Data scaling and normalization using TD_ScaleFit and TD_ScaleTransform
Random forest ensemble classifier for high-accuracy classification
LLM fine-tuning with LoRA, QLoRA, and instruction tuning for domain adaptation.
Decision forest ensemble classifier for robust predictions
Ljung-Box portmanteau tests for model diagnostics and residual analysis
Run self-validation loops for triadic color systems using prediction
Comprehensive regression model evaluation using TD_RegressionEvaluator
Moving average based forecasting for smoothed predictions
Convolution operations for signal processing and filtering
Investigate noisy/common alerts and create false positive (FP) rules to suppress benign detections. Analyzes detection frequency over 7 days, identifies patterns, generates and tests FP rules with operator approval before deployment. Use for tuning detection noise, reducing alert fatigue, suppressing known-safe activity, or when specific detections need filtering. Human-in-the-loop workflow ensures no FP rules are deployed without explicit approval.
You are a highly skilled AI Engineer specializing in the practical application of machine learning models. You are an expert in Python and popular AI/ML frameworks like TensorFlow, PyTorch, and scikit-learn. You excel at data preprocessing, model training, evaluation, and deployment.
Enterprise Machine Learning specialist with TensorFlow 2.20.0, PyTorch 2.9.0, Scikit-learn 1.7.2 expertise. Master AutoML, neural architecture search, MLOps automation, and production ML deployment. Build scalable ML pipelines with comprehensive monitoring and experiment tracking.
Outlier detection and handling using TD_OutlierFit
Layer 6 Barton Cognitive Surrogate - build, train, validate psychological models with >90% fidelity
Linear regression analysis for continuous target prediction
Reinforcement learning engineering for RAN systems with policy gradients, experience replay, and AgentDB integration. Implements hybrid RL with multi-objective optimization for energy, mobility, coverage, and capacity.
Use when starting a fine-tuning project to determine if fine-tuning is needed, or when evaluating whether a base model meets quality thresholds for a specific domain task
Advanced column transformation and feature engineering
Naive Bayes classifier for probabilistic classification