We are seeking a highly analytical and innovative Machine Learning Scientist to research, develop, and deploy advanced machine learning models and AI-driven solutions that solve complex business problems. This role combines scientific research, data science, and machine learning engineering to design predictive models, optimize algorithms, and drive data-informed decision-making across the organization.
The ideal candidate has strong expertise in machine learning, statistics, data modeling, experimentation, and applied AI. They should be comfortable working with large datasets, developing production-ready models, conducting research, and collaborating with cross-functional teams to transform business challenges into scalable AI solutions.
To support collaboration, client engagement, and strategic initiatives, candidates must currently reside in one of the following metropolitan areas in the United States:
Dallas
Houston
Austin
Atlanta
Jacksonville
Miami
Nashville
Charlotte
Phoenix
Candidates residing outside of these locations will not be considered for this position.
Research, design, and develop machine learning models for business and product applications
Evaluate and implement supervised, unsupervised, reinforcement learning, and deep learning techniques
Develop predictive, classification, recommendation, forecasting, and optimization models
Conduct model experimentation, validation, and performance analysis
Stay current with emerging machine learning research, methodologies, and industry advancements
Translate research findings into practical business solutions
Analyze large structured and unstructured datasets
Design and implement feature engineering strategies
Identify patterns, trends, anomalies, and predictive signals within data
Build scalable data preparation and transformation pipelines
Collaborate with Data Engineers to ensure data quality and accessibility
Develop datasets for training, validation, and testing purposes
Apply statistical techniques to solve complex analytical problems
Design and execute experiments, A/B tests, and hypothesis testing frameworks
Evaluate model effectiveness using appropriate metrics and methodologies
Conduct causal inference and advanced analytical studies when required
Generate actionable insights from model outputs and experimental results
Communicate findings to technical and non-technical stakeholders
Develop and optimize deep learning, neural network, and advanced AI models
Explore Generative AI, Natural Language Processing (NLP), and Computer Vision applications when applicable
Implement model tuning and optimization techniques
Evaluate emerging AI technologies for business opportunities
Support AI innovation and research initiatives
Collaborate with AI Engineering teams on model deployment and integration
Partner with Machine Learning Engineers and Software Engineers to deploy models into production
Develop scalable and maintainable model architectures
Support model monitoring, retraining, and lifecycle management
Collaborate on MLOps pipelines and automation frameworks
Ensure model reliability, reproducibility, and performance in production environments
Contribute to AI infrastructure planning and optimization
Work closely with Product, Operations, Marketing, Sales, and Leadership teams
Translate business challenges into machine learning solutions
Present technical findings and recommendations to stakeholders
Support strategic decision-making through predictive analytics and data science insights
Measure and communicate the business impact of machine learning initiatives
Contribute to AI and data science roadmaps
Ensure ethical and responsible use of machine learning technologies
Identify and mitigate model bias and fairness concerns
Support AI governance and model documentation standards
Ensure compliance with privacy, security, and regulatory requirements
Maintain transparency and explainability in model development
Participate in model risk management and validation activities
Master's degree or Ph.D. in Computer Science, Machine Learning, Artificial Intelligence, Statistics, Mathematics, Data Science, Engineering, or a related quantitative field
3+ years of experience in machine learning, data science, AI research, or related disciplines
Strong proficiency in Python and machine learning frameworks
Experience with machine learning libraries such as TensorFlow, PyTorch, Scikit-learn, XGBoost, or similar tools
Strong knowledge of statistics, probability, and predictive modeling techniques
Experience working with large datasets and data analysis tools
Familiarity with SQL and data querying technologies
Strong analytical thinking and problem-solving abilities
Excellent communication and presentation skills
Must currently reside in one of the approved locations listed above
Ph.D. in Machine Learning, Artificial Intelligence, Statistics, or related field
Experience with Deep Learning, NLP, Computer Vision, or Generative AI
Experience with Large Language Models (LLMs) and AI research
Familiarity with cloud platforms such as AWS, Azure, or GCP
Experience with MLOps, model deployment, and production AI systems
Knowledge of Spark, Databricks, Hadoop, or distributed computing frameworks
Experience publishing research papers, patents, or technical publications
Experience with reinforcement learning or advanced optimization techniques
Familiarity with AI governance, model explainability, and responsible AI frameworks
Experience working in highly regulated industries such as finance, healthcare, or insurance
Number of machine learning models developed and deployed
Model accuracy, precision, recall, F1 score, and business performance metrics
Improvement in predictive performance over baseline models
Research initiatives completed and successfully implemented
Revenue growth or cost savings generated through machine learning initiatives
Operational efficiency improvements
Stakeholder satisfaction with analytical insights and recommendations
Adoption and utilization of machine learning solutions
Model stability and production performance
Reduction in prediction errors and false positives/negatives
Monitoring and retraining effectiveness
Compliance with model governance standards
New methodologies, techniques, or technologies evaluated
Proof-of-concept projects completed
Contributions to AI and data science strategy
Knowledge sharing and technical leadership activities
Cross-functional project success rate
Timeliness and quality of stakeholder reporting
Effectiveness of technical presentations and recommendations
Team collaboration and mentorship contributions
Director of Data Science
Head of Machine Learning
AI Research Lead
Director of Artificial Intelligence
Chief Data Officer (CDO)
Chief Technology Officer (CTO)
Full-Time
Remote (Candidates must reside in approved locations)
Hybrid opportunities may be available based on business requirements
Agile and research-driven work environment
Participation in AI innovation, experimentation, and advanced analytics initiatives
Fast-paced, data-driven, and innovation-focused organization
Collaborative environment with AI, Engineering, Product, and Business teams
Access to large-scale datasets, cloud infrastructure, and modern AI tools
Opportunity to work on cutting-edge machine learning and AI initiatives
Strong focus on research, experimentation, business impact, and continuous learning
Career growth opportunities within Data Science, AI Research, and Machine Learning Leadership