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Ironbook AI
Ironbook AI

Head of Data Science

Location

Remote restrictions apply
See all remote locations

Salary Estimate

N/AIconOpenNewWindows

Seniority

N/A

Tech stacks

Amazon
Data
Data Science
+33

Permanent role
10 days ago
Apply now

Job Title: Senior Data Scientist – AWS

Location: Remote / Hybrid (Adjust as needed)

Department: Data & AI

Employment Type: Full-time

About the Role

We are looking for a Senior Data Scientist with deep experience on the AWS stack to lead end-to-end development of data science and ML solutions—from problem framing and data architecture design to model deployment and monitoring in production.

You will partner closely with product, engineering, and business stakeholders to deliver measurable impact using machine learning, experimentation, and advanced analytics on top of AWS data and ML services.

Key Responsibilities

1. Problem Definition & Stakeholder Collaboration

  • Work with business, product, and engineering teams to translate ambiguous problems into clear data science use cases and success metrics.
  • Define hypotheses, experimentation strategies, and measurable outcomes for ML and analytics initiatives.

2. Data & Feature Engineering (AWS-native)

  • Design and build robust data pipelines using AWS services such as S3, Glue, Athena, Redshift, EMR, Lambda, Step Functions.
  • Develop scalable feature stores and reusable data assets for multiple ML use cases.
  • Ensure data quality, observability, and governance in collaboration with data engineering teams.

3. Modeling & Analytics

  • Build, train, and optimize models for use cases such as prediction, recommendation, forecasting, personalization, segmentation, anomaly detection, etc.
  • Use Python and standard ML libraries (e.g., scikit-learn, XGBoost, PyTorch/TensorFlow) for experimentation and prototyping.
  • Design and run A/B tests, holdout experiments, and causal analyses to measure impact.

4. MLOps & Deployment (AWS SageMaker)

  • Productionize models using Amazon SageMaker (training, tuning, endpoints, pipelines, model registry).
  • Implement CI/CD for ML, monitoring and alerting for model drift, data drift, and performance degradation.
  • Optimize cost and performance of deployed models and pipelines.

5. Leadership & Mentoring

  • Provide technical leadership on projects, setting standards for experimentation, documentation, and code quality.
  • Mentor junior data scientists and analysts; contribute to best practices, templates, and internal tooling.
  • Advocate for data-driven decision-making across the organization.

Required Qualifications

  • 7+ years of hands-on experience in data science or applied machine learning roles.
  • Strong proficiency in Python and ML/data libraries (pandas, numpy, scikit-learn, XGBoost, PyTorch/TensorFlow).
  • Demonstrated experience building and deploying ML solutions on AWS, including:
  • Data: S3, Glue, Athena, Redshift, EMR / AWS Lake Formation
  • ML: SageMaker (training jobs, endpoints, pipelines, model registry)
  • Orchestration/Integration: Lambda, Step Functions, EventBridge, API Gateway
  • Solid understanding of statistics, experimental design, and causal inference (A/B testing, hypothesis testing, confidence intervals, etc.).
  • Proven track record of delivering ML solutions into production with measurable business impact.
  • Strong SQL skills and comfort working with large-scale datasets in data lake / data warehouse environments.
  • Excellent communication skills—able to explain complex topics to both technical and non-technical stakeholders.

Preferred Qualifications

  • Experience with streaming data / real-time ML using Kinesis, Kafka/MSK, or similar.
  • Experience with feature stores (SageMaker Feature Store or equivalent) and ML observability tools.
  • Domain experience in one or more areas such as marketing analytics, customer personalization, fraud/risk, pricing, demand forecasting, or operations optimization.
  • Familiarity with MLOps best practices (Git-based workflows, CI/CD, model versioning, monitoring).
  • AWS certifications such as AWS Certified Machine Learning – Specialty or AWS Data Analytics – Specialty.

About Ironbook AI

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