About ABC Legal Services
ABC Legal Services is the nation’s premier process serving and court filing company, operating across all 50 states. We are a technology-forward legal services company on a mission to make legal processes faster, smarter, and more reliable. Our data and engineering teams are central to that mission — building models and systems that power operations at scale. We’re now looking for a Data Scientist with strong ML engineering and MLOps experience to help us take our machine learning capabilities to the next level.
Role Overview
We’re seeking a Data Scientist with hands-on experience in machine learning engineering and MLOps. In this role, you’ll own the full model lifecycle — from research and experimentation through deployment, monitoring, and iteration. You’ll work within our AWS SageMaker Studio environment and collaborate closely with engineering, operations, and product teams to deliver models that drive measurable business outcomes.
Key Responsibilities
Develop, train, and evaluate machine learning models to solve business problems across operations, legal services, and marketing
Own the full ML lifecycle: data preparation, feature engineering, model training, validation, deployment, and monitoring
Build and maintain MLOps pipelines using AWS SageMaker Studio, including experiment tracking, model registry, and automated retraining workflows
Partner with product and operations teams to translate business requirements into data science solutions
Monitor deployed models in production, identify performance degradation, and drive continuous improvement
Document methodologies, model performance benchmarks, and technical decisions for internal knowledge sharing
Stay current with advances in ML and data science tooling, and advocate for best practices across the team
Requirements
Required
3+ years of experience in data science or a closely related role, with demonstrated ML engineering and MLOps responsibilities
Strong proficiency in Python for data science and ML development (pandas, scikit-learn, PyTorch or TensorFlow)
Hands-on experience with AWS SageMaker Studio for model development, training, and deployment
Solid understanding of MLOps principles: model versioning, pipeline automation, drift detection, and production monitoring
Experience with SQL and working with structured data in cloud data warehouses or relational databases
Proven ability to translate complex data science findings into clear, actionable insights for non-technical stakeholders
Strong self-direction and communication skills suited for a remote work environment
Nice to Have
Experience in the legal, collections, or financial services industry
Background in targeted mail marketing, direct mail modeling, or customer segmentation
Familiarity with AI coding agents and agentic development workflows (e.g., Claude, Copilot, Cursor, or similar tools)
Experience with propensity modeling, uplift modeling, or response prediction
Exposure to LLM-based workflows or applied NLP in a production setting
Data engineering experience with modern tooling such as Dagster, Airbyte, and dbt
Familiarity with AWS data services including Glue, Lambda, Redshift, and Step Functions
Compensation & Benefits
Fully remote position with flexible working hours
Comprehensive health, dental, and vision insurance
401(k) with company match
Paid time off and company holidays
Opportunity to shape data science strategy at a growing, industry-leading company
Salary Range: $110,000-$130,000 depending on experience