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ML Engineer

ML Engineer

Verified Expert in Machine Learning

  • ML Engineer
  • Seattle, WA, USA
  • Member since April 5, 2019

Bio

Manuela specializes in taking machine learning models from prototype to production at scale. With expertise in both ML algorithms and software engineering, she builds robust ML pipelines that deliver business value. Her focus on MLOps practices ensures reliable, maintainable systems that serve millions of predictions daily.

Portfolio

Recommendation System

Python, TensorFlow, Collaborative Filtering, Real-time Serving, A/B Testing

Fraud Detection Pipeline

Scikit-learn, XGBoost, Feature Engineering, Model Monitoring, AWS

Predictive Maintenance System

PyTorch, Time Series, Anomaly Detection, Edge Deployment, IoT Integration

Experience

Machine Learning – 6 years
Python – 7 years
TensorFlow – 5 years
AWS – 6 years
Docker – 5 years
Scikit-learn – 6 years
MLOps – 4 years
SQL – 7 years

Availability

Full-time

Preferred Environment

Cloud-native, Remote

The most amazing…

…model I deployed serves 50M predictions/day with 99.9% uptime at Amazon.

Senior ML Engineer Amazon Web Services

2022 – 2025
  • Built production ML pipelines serving 50M+ daily predictions with sub-100ms latency.
  • Developed automated model retraining system reducing manual work by 80%.
  • Implemented feature store and model registry improving team productivity by 40%.
  • Led MLOps best practices adoption across 5 product teams.

Technologies: Python, TensorFlow, PyTorch, AWS SageMaker, Lambda, S3, DynamoDB, Docker, Kubernetes, MLflow, Airflow

ML Engineer Spotify

2020 – 2022
  • Developed recommendation models increasing user engagement by 25%.
  • Built real-time feature engineering pipeline processing 100M+ events per day.
  • Implemented A/B testing framework for ML model experiments.
  • Optimized model serving infrastructure reducing costs by 40%.

Technologies: Python, Scikit-learn, XGBoost, Spark, Kafka, PostgreSQL, Redis, Docker, Kubernetes, GCP

Data Scientist / ML Engineer Fintech Startup

2018 – 2020
  • Built fraud detection system saving company $5M annually.
  • Developed credit scoring models improving approval rates by 15%.
  • Created data pipelines for feature engineering and model training.

Technologies: Python, Scikit-learn, Pandas, SQL, AWS, Docker, Flask, PostgreSQL

2014 – 2018

Bachelor of Science in Computer Science & Statistics

University of Washington – Seattle, USA

Machine Learning

Supervised Learning, Unsupervised Learning, Deep Learning, Ensemble Methods, Time Series, Recommendation Systems, Feature Engineering

Languages

Python, SQL, R, Scala, Java

ML Frameworks

TensorFlow, PyTorch, Scikit-learn, XGBoost, LightGBM, CatBoost, Keras

Data Processing

Pandas, NumPy, Spark, Dask, Polars, Apache Airflow

MLOps

MLflow, Kubeflow, Weights & Biases, Model Registry, Feature Store, Model Monitoring, A/B Testing

Cloud & Infrastructure

AWS SageMaker, AWS Lambda, GCP Vertex AI, Docker, Kubernetes, Terraform, CI/CD

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Databases

PostgreSQL, MySQL, Redis, MongoDB, DynamoDB, Snowflake, BigQuery

Other

REST APIs, Flask, FastAPI, Git, Linux, Jupyter, Model Deployment, Data Visualization, Statistical Analysis