Veridian Tech Solutions, Inc.

Solutions Architect Senior - AI/ML Engineer

⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Solutions Architect Senior - AI/ML Engineer in Washington, DC, on a contract basis. Key skills required include advanced Python, AI/ML development, generative AI, and MLOps. Experience with Databricks and cloud platforms is essential.
🌎 - Country
United States
💱 - Currency
$ USD
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💰 - Day rate
Unknown
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🗓️ - Date
February 19, 2026
🕒 - Duration
Unknown
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🏝️ - Location
On-site
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📄 - Contract
Unknown
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🔒 - Security
Unknown
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📍 - Location detailed
Washington DC-Baltimore Area
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🧠 - Skills detailed
#Data Science #NumPy #Pandas #HTML (Hypertext Markup Language) #Scala #ML (Machine Learning) #Streamlit #Data Processing #Automation #Data Quality #Azure #Classification #Storytelling #GIT #Data Cleaning #Clustering #Python #Containers #Libraries #Forecasting #Cloud #Deployment #AI (Artificial Intelligence) #Visualization #AWS (Amazon Web Services) #Docker #FastAPI #PyTorch #Regression #Jupyter #Neural Networks #Version Control #Strategy #Databricks #JavaScript
Role description
Hi, Hope you are doing good! We have a Contract opportunity for you as Solutions Architect Senior - AI/ML Engineer @ Washington, DC Role: Solutions Architect Senior - AI/ML Engineer Locations: Washington, DC Type of Hiring: Contract Required Qualifications: Project Mission: • To serve as the chief technical authority for the project, designing a robust and scalable architecture that bridges the gap between the business vision and technical implementation. • This role ensures the platform is built on sound engineering principles and aligns with long-term enterprise strategy. Key Responsibilities: Key Technical Skills and Responsibilities • AI/ML Development: Design and implement supervised and unsupervised models including regression, classification, clustering, time-series forecasting, and boosting methods. Build and fine-tune neural networks including CNNs, RNNs, and LSTMs. • Generative AI: Develop and integrate solutions powered by LLMs and open-source foundation models. Evaluate and optimize model performance, latency, and cost. Stay current with advances in foundation models, prompt engineering, fine-tuning techniques (LoRA, PEFT), and model safety practices. Modern Code Development: Write efficient, maintainable Python code (advanced Python required), using tools like JupyterLab, Databricks and VSCode for development and testing. Package and deploy solutions using Docker containers on cloud platforms like AWS and Azure. Use Git for version control and champion SWE best practices. Skills/Experience: • Model Management and Deployment: Manage MLOps and full model lifecycle. Serialize and manage models using Pickle, Joblib, and/or ONNX. Deploy models using FastAPI and serverless functions, building secure and scalable endpoints. Create user-facing AI tools using Streamlit and front-end technologies (HTML/CSS/JavaScript). • Platform Enablement: Databricks expertise to drive platform adoption and accelerate the development of new use cases, supporting model automation, AutoML, and template-based development. • Hands-on: Advanced data processing, visualization, and storytelling. Solid background in popular AI/ML open-source libraries including scikit-learn, PyTorch, pandas, polars, NumPy, seaborn, and other libraries for data cleaning, feature engineering, and visualization. • Systems Thinking: Approach problems with an end-to-end mindset, considering model performance, data quality, infrastructure, user experience, and downstream applications. Translate business goals into viable, scalable technical solutions. • Collaboration & Mentorship: Work closely with cross-functional teams and mentor junior engineers and data scientists for the overall improvement of data quality metrics, solution accessibility, self-service capabilities, governance, and business adoption of AI/ML best practices.