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Pradyumn Pottapatri

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GUTEN TAG! 👋

I am Pradyumn K. Pottapatri! You can call me Sid!

🧠 About Me

I’m a Data Scientist / Machine Learning Engineer with 4+ years of experience building scalable ML systems, supporting supply chain strategy, time-series pipelines for anomaly detection, applied AI solutions for driving multimillion dollar impact.

  • 🧩 Currently exploring Computer Vision, Gen AI, developing a custom CNN layer that learns my photo-editing patterns and applies similar transformations autonomously; a fusion of style transfer and personalized learning.
  • 🚀 At Stanley Black & Decker, I automated procurement pipelines and A/B-tested email campaigns, driving $18M+ in measurable impact.
  • ⚙️ At ADP, I engineered a dynamic thresholding system in Splunk that reduced false alerts by 85%.
  • 📊 Passionate about experiments, causal inference, building interpretable ML systems. Advocate for ethical AI use in business and human context.

🛠️ Technical Skills

  • Languages: Python, C/C++, SQL, R
  • Frameworks: PyTorch, TensorFlow, scikit-learn, LangChain, OpenCV
  • ML Focus: CNNs, Time-Series Forecasting, NLP, Reinforcement Learning, Bayesian Inference, GenAI
  • Data Engineering: dbt, Autosys, Snowflake, Spark, Hadoop, ETL Pipelines
  • Visualization: Power BI, Matplotlib, Plotly
  • Cloud & Infra: AWS (Lambda, S3, RDS, Redshift), Azure
  • Specialties: Model Optimization, Statistical Analysis, Causal Experiments, MLOps, A/B Testing

🔬 Current Research Project : “CineMorph”

🎯 Goal

To design a custom Convolutional Neural Network layer capable of learning and replicating my personal image-editing style.
The system aims to capture transformation intent, not just color shifts; by modeling latent adjustments from before/after edit pairs.

⚙️ Key Components

  • Data Generation: Using personal edited/unedited image pairs as supervised training examples.
  • Model Architecture: CNN backbone (ResNet-style) with a custom delta layer that learns adjustment residuals.
  • Loss Functions: Combination of MSE (pixel difference) and perceptual loss (VGG features).
  • Training Setup: PyTorch, fastai, custom dataloader, augmentation pipelines.
  • Planned Extensions: Integrating reinforcement learning to refine edit confidence, and LLM-based tagging for semantic edit context.

🧩 Expected Outcome

An “auto-edit” model capable of generalizing my editing signature; creating a personalized, generative photo assistant.


📂 Featured Work

🧭 Noise Reduction in Splunk Alerts @ ADP

Reduced 85% alert noise and improved DevOps signal clarity using Kalman Filters and Exponential Smoothing within Splunk’s ML Toolkit. Designed a reusable ML pipeline and benchmarked ITS experiments for model reliability.

🏭 Procurement Optimization @ Stanley Black & Decker

Automated data aggregation from SAP ECC forecasts, Snowflake, to accelerate supplier negotiation reports by 90%. Delivered A/B experiments and improved profitability by $12M+.


🧩 Projects

  • 🛰️ Customer Churn Prediction: Built an end-to-end ML pipeline using XGBoost, FastAPI, Docker, and MLflow to predict customer churn.
  • 💬 Restaurant Name Generator: Built an LLM app with LangChain + Streamlit to generate creative, cuisine-specific brand ideas.
  • 🚗 Reinforcement Learning for Self-Driving Agents: Designed evolutionary agents via genetic algorithms and neural architecture tuning.

Certifications

  • AWS Certified Cloud Practitioner
  • Machine Learning
  • Deep Learning specializations
  • AI Engineer

⭐️ Exploring the boundary between model interpretability, personalization, one custom layer at a time. Hit me up at any platform if you'd like to connect!

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