

SynapOne
Lead Data Scientist
β - Featured Role | Apply direct with Data Freelance Hub
This role is for a Lead Data Scientist in Bethesda, MD or Boca Raton, FL, with a 6-month contract. Key skills include machine learning system design, production ML engineering, and model validation. A Bachelor's degree and 5-8 years of relevant experience are required.
π - Country
United States
π± - Currency
$ USD
-
π° - Day rate
Unknown
-
ποΈ - Date
April 28, 2026
π - Duration
More than 6 months
-
ποΈ - Location
On-site
-
π - Contract
Unknown
-
π - Security
Unknown
-
π - Location detailed
Maryland, United States
-
π§ - Skills detailed
#ML (Machine Learning) #Docker #Deployment #Data Management #Data Engineering #Cloud #Leadership #Datasets #Kubernetes #Statistics #Mathematics #Python #Data Science #Computer Science #Logging #SQL (Structured Query Language) #AI (Artificial Intelligence) #Model Validation #Monitoring #Programming #Security #Compliance #Scala
Role description
Position: Lead Data Scientist
Location: Bethesda, MD or Boca Raton, FL
Β· 5 days onsite (
β’
β’
β’ Bethesda is highly preferred
β’
β’
β’ )
Work Auth: Open to Sponsorship
Duration: 6 months CTH
About the Role
We are seeking a Lead Data Scientist to join our growing Data Services team in our Bethesda, MD office. You will play a pivotal role in designing, developing, and deploying machine learning and AI solutions that drive strategic decision-making and operational efficiency across Total Wine & More business. You will be responsible for supporting the full lifecycle of machine learning and AI developmentβfrom initial ideation and business problem framing through model development, deployment, and ongoing performance monitoring. This role requires a strong foundation in data science, with a deep interest in learning about production-grade ML systems, and a proactive approach to translating business needs into technical solutions. You will be expected to act independently to deliver high-impact technical solutions, taking ownership of projects from concept to execution. You will mentor junior team members on technical trade-offs on solutions and provide thought leadership about how different problems can be solve. This role reports to the Senior Director, Data Science.
You will
β’ Be responsible for designing machine learning and AI models by framing business problems, engineering features, and selecting appropriate algorithms and architectures. When designing solutions create processes that can be utilized for multiple business reasons and is adaptable. Responsible for larger more complex business problems that are multi-dimensional.
β’ Train models by preparing data, fitting algorithms, tuning hyperparameters, and validating robustness through cross-validation techniques. Prior to development able to articulate the trade-off on different modeling techniques and implications when applied to business problem.
β’ Validate model performance using statistical metrics, conduct fairness and bias assessments, and perform error analysis to refine model quality. Create evaluation metrics and results that tie to business outcomes. Able to articulate how model performance gain equates to business value.
β’ Deploy models into production environments by packaging them appropriately, integrating with systems, automating deployment workflows, including robust error handling and documenting for maintainability.
β’ Deploy models into production environments by packaging them appropriately, integrating with systems, automating deployment workflows, including robust error handling and documenting for maintainability.
β’ Monitor deployed models by tracking performance over time, detecting data drift, triggering retraining when necessary, and implementing logging and alerting mechanisms.
β’ Working with junior team members to discuss trade-offs and solutions for team members business problems. Provide thought leadership on different ways to advance the business utilizing machine learning and AI.
β’ Communicate model results and trade-offs to leadership and stakeholder.
You will come with
β’ Bachelor's Degree in Data Science, Computer Science, Mathematics, Statistics, Economics or related fields required or equivalent years of experience.
β’ Master's Degree in Computer Science, Mathematics, Statistics or related field preferred.
β’ 5-8 years in data science, predictive analytics, econometrics, software engineering, data engineering or related fields preferred.
β’ Proven expertise in designing and architecting advanced machine learning and AI solutions, including leading efforts to frame complex business problems, define scalable feature engineering strategies, and select optimal algorithms and architectures for enterprise-level applications.
β’ Proven expertise in model training and optimization, with the ability to design efficient training pipelines, implement distributed training strategies, and apply sophisticated hyperparameter tuning techniques to maximize performance and scalability.
β’ Proven expertise in model validation and governance, including establishing rigorous evaluation frameworks, conducting comprehensive fairness and bias audits, and driving continuous improvement through advanced error analysis and benchmarking.
β’ Proven expertise in production deployment of ML systems, including designing robust CI/CD pipelines, implementing containerization and orchestration (e.g., Docker, Kubernetes), and ensuring compliance with security and reliability standards across cloud environments.
β’ Oversight of model monitoring and lifecycle management, including building automated monitoring systems, implementing drift detection and retraining workflows, and defining alerting mechanisms to maintain long-term model health and business impact.
β’ Expert-level programming skills in Python and SQL, with the ability to develop production-grade code, optimize queries for large-scale datasets, and mentor team members on best practices for coding and data management.
β’ Working with junior team members to discuss trade-offs and solutions for team members business problems. Provide thought leadership on different ways to advance the business utilizing machine learning and AI.
Top Skills Needed:
β’ End to end machine learning system design
Ability to frame complex, multi dimensional business problems into scalable ML/AI solutions - covering feature engineering, algorithm selection, model architecture, and ensuring designs are reusable and adaptable across the enterprise.
β’ Production ML engineering & lifecycle management
Strong experience deploying, monitoring, and maintaining ML models in production, including CI/CD pipelines, containerization (Docker/Kubernetes), cloud environments, performance monitoring, drift detection, and automated retraining to ensure long term reliability and business impact.
β’ Model validation, governance & business communication
Expertise in validating models using statistical metrics, fairness and bias assessments, error analysis, and clearly translating model performance and trade offs into business value for leadership and stakeholders.
Position: Lead Data Scientist
Location: Bethesda, MD or Boca Raton, FL
Β· 5 days onsite (
β’
β’
β’ Bethesda is highly preferred
β’
β’
β’ )
Work Auth: Open to Sponsorship
Duration: 6 months CTH
About the Role
We are seeking a Lead Data Scientist to join our growing Data Services team in our Bethesda, MD office. You will play a pivotal role in designing, developing, and deploying machine learning and AI solutions that drive strategic decision-making and operational efficiency across Total Wine & More business. You will be responsible for supporting the full lifecycle of machine learning and AI developmentβfrom initial ideation and business problem framing through model development, deployment, and ongoing performance monitoring. This role requires a strong foundation in data science, with a deep interest in learning about production-grade ML systems, and a proactive approach to translating business needs into technical solutions. You will be expected to act independently to deliver high-impact technical solutions, taking ownership of projects from concept to execution. You will mentor junior team members on technical trade-offs on solutions and provide thought leadership about how different problems can be solve. This role reports to the Senior Director, Data Science.
You will
β’ Be responsible for designing machine learning and AI models by framing business problems, engineering features, and selecting appropriate algorithms and architectures. When designing solutions create processes that can be utilized for multiple business reasons and is adaptable. Responsible for larger more complex business problems that are multi-dimensional.
β’ Train models by preparing data, fitting algorithms, tuning hyperparameters, and validating robustness through cross-validation techniques. Prior to development able to articulate the trade-off on different modeling techniques and implications when applied to business problem.
β’ Validate model performance using statistical metrics, conduct fairness and bias assessments, and perform error analysis to refine model quality. Create evaluation metrics and results that tie to business outcomes. Able to articulate how model performance gain equates to business value.
β’ Deploy models into production environments by packaging them appropriately, integrating with systems, automating deployment workflows, including robust error handling and documenting for maintainability.
β’ Deploy models into production environments by packaging them appropriately, integrating with systems, automating deployment workflows, including robust error handling and documenting for maintainability.
β’ Monitor deployed models by tracking performance over time, detecting data drift, triggering retraining when necessary, and implementing logging and alerting mechanisms.
β’ Working with junior team members to discuss trade-offs and solutions for team members business problems. Provide thought leadership on different ways to advance the business utilizing machine learning and AI.
β’ Communicate model results and trade-offs to leadership and stakeholder.
You will come with
β’ Bachelor's Degree in Data Science, Computer Science, Mathematics, Statistics, Economics or related fields required or equivalent years of experience.
β’ Master's Degree in Computer Science, Mathematics, Statistics or related field preferred.
β’ 5-8 years in data science, predictive analytics, econometrics, software engineering, data engineering or related fields preferred.
β’ Proven expertise in designing and architecting advanced machine learning and AI solutions, including leading efforts to frame complex business problems, define scalable feature engineering strategies, and select optimal algorithms and architectures for enterprise-level applications.
β’ Proven expertise in model training and optimization, with the ability to design efficient training pipelines, implement distributed training strategies, and apply sophisticated hyperparameter tuning techniques to maximize performance and scalability.
β’ Proven expertise in model validation and governance, including establishing rigorous evaluation frameworks, conducting comprehensive fairness and bias audits, and driving continuous improvement through advanced error analysis and benchmarking.
β’ Proven expertise in production deployment of ML systems, including designing robust CI/CD pipelines, implementing containerization and orchestration (e.g., Docker, Kubernetes), and ensuring compliance with security and reliability standards across cloud environments.
β’ Oversight of model monitoring and lifecycle management, including building automated monitoring systems, implementing drift detection and retraining workflows, and defining alerting mechanisms to maintain long-term model health and business impact.
β’ Expert-level programming skills in Python and SQL, with the ability to develop production-grade code, optimize queries for large-scale datasets, and mentor team members on best practices for coding and data management.
β’ Working with junior team members to discuss trade-offs and solutions for team members business problems. Provide thought leadership on different ways to advance the business utilizing machine learning and AI.
Top Skills Needed:
β’ End to end machine learning system design
Ability to frame complex, multi dimensional business problems into scalable ML/AI solutions - covering feature engineering, algorithm selection, model architecture, and ensuring designs are reusable and adaptable across the enterprise.
β’ Production ML engineering & lifecycle management
Strong experience deploying, monitoring, and maintaining ML models in production, including CI/CD pipelines, containerization (Docker/Kubernetes), cloud environments, performance monitoring, drift detection, and automated retraining to ensure long term reliability and business impact.
β’ Model validation, governance & business communication
Expertise in validating models using statistical metrics, fairness and bias assessments, error analysis, and clearly translating model performance and trade offs into business value for leadership and stakeholders.






