E-Solutions

Data Scientist

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Data Scientist (GenAI) in Washington DC on a long-term contract, offering a competitive pay rate. Candidates must have expertise in Generative AI, NLP, Deep Learning, and experience in fintech or related fields.
🌎 - Country
United States
πŸ’± - Currency
$ USD
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πŸ’° - Day rate
Unknown
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πŸ—“οΈ - Date
March 10, 2026
πŸ•’ - Duration
Unknown
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🏝️ - Location
Hybrid
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πŸ“„ - Contract
Unknown
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πŸ”’ - Security
Unknown
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πŸ“ - Location detailed
Washington, DC
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🧠 - Skills detailed
#Datasets #Snowflake #Transformers #Monitoring #Data Privacy #NLP (Natural Language Processing) #AWS (Amazon Web Services) #Cloud #Deep Learning #Python #ML (Machine Learning) #Scala #Anomaly Detection #Databases #Data Enrichment #AI (Artificial Intelligence) #Data Science #Knowledge Graph #Azure #PyTorch #TensorFlow #Docker #Deployment #Databricks #"ETL (Extract #Transform #Load)" #Libraries #Kubernetes
Role description
Job Title: Data Scientist (GenAI) Location: Washington DC (Hybrid - Onsite) Long Term Contract We are now explicitly seeking candidates with demonstrable, hands-on expertise in the Generative AI lifecycle, and also with strong NLP and Deep Learning acumen. Since this shift significantly changes the interview landscape and screening process; I just wanted to align on the weight distribution: Should Traditional ML, Deep Learning, and GenAI concepts be weighted equally, or, given the nature of the new requirements, must we focus the majority of the evaluation on the candidate’s ability on implementing GenAI solutions and enterprise-scale MLOps deployment ? Understanding this is vital as then there will be a need to restructure the interview questions at all levels, including the structure of our hands-on assessment. Role Summary: We are seeking a highly skilled Senior Data Scientist with expertise in Machine Learning, Artificial Intelligence, Large Language Models (LLMs), foundation models, and fine-tuning techniques. In this role, you will architect, build, and deploy advanced ML & AI solutions that power next-generation products across payments, fraud detection, risk decisioning, and financial data enrichment. This position is ideal for someone who is passionate about building enterprise-grade AI & ML applications and applying cutting-edge techniques to real-world financial and payments challenges. Key Responsibilities: β€’ Design, build, and optimize Generative AI, LLM, and multimodal foundation models for enterprise fintech applications. β€’ Fine-tune or adapt open-source and proprietary models β€’ Build high-performance models for NLP, document intelligence, anomaly detection, risk scoring, predictive analytics, and decisioning use cases. β€’ Lead experimentation to evaluate model accuracy, scalability, and fairness. β€’ Partner with engineering teams to deploy models on cloud-based ML pipelines (Azure, AWS) & data platforms (Databricks & Snowflake) β€’ Work with large-scale structured and unstructured datasets across the payments and financial ecosystem. β€’ Implement model monitoring, drift detection, and continuous retraining strategies. β€’ Evaluate and operationalize new AI technologies, foundation model architectures, responsible AI frameworks, and emerging research. β€’ Drive POCs and innovation initiatives that enhance AI capabilities and differentiate our products. Required Qualifications: β€’ Hands-on experience building and deploying machine learning models in production. β€’ Proven expertise with LLMs, transformer architectures, transfer learning, and model fine-tuning. β€’ Strong proficiency in Python, PyTorch or TensorFlow, and ML libraries such as Transformers. β€’ Experience with cloud ML platforms, containerization (Docker/Kubernetes), and MLOps tools. β€’ Solid understanding of statistical modeling, optimization, and evaluation methodologies. β€’ Strong communication skills and ability to collaborate in cross-functional, fast-paced environments. Preferred Qualifications: β€’ Experience working in fintech, payments, banking, or fraud/risk environments. β€’ Background in vector databases, RAG pipelines, and knowledge graph integration. β€’ Experience with data privacy, model governance, and Responsible AI frameworks. β€’ Contributions to open-source AI/ML communities or research publications.