Amtex Enterprises
Job Title: AI/ML Solutions Architect
Location: Washington, DC onsite
Job Description
The
AI/ML Solutions Architect
will be instrumental in designing and implementing end-to-end artificial intelligence and machine learning solutions in the DC area. This role requires an expert-level blend of advanced
AI/ML model development
(including Generative AI/LLMs, deep learning, and traditional ML),
modern software engineering
practices, and robust
MLOps
principles. The Architect will drive platform adoption using
Databricks , ensure models are securely deployed via cloud platforms (AWS/Azure) using
Docker/Kubernetes
and
FastAPI , and serve as a technical leader and mentor to junior team members, ultimately enabling self-service capabilities and accelerating the business adoption of scalable AI/ML solutions.
Responsibilities
Architect and Develop AI/ML Solutions:
Design, implement, and deploy advanced supervised and unsupervised models (regression, classification, clustering, time-series forecasting, boosting methods) and complex neural networks (CNNs, RNNs, LSTMs).
Lead Generative AI Initiatives:
Develop and integrate solutions powered by
LLMs
and open-source foundation models, applying expertise in prompt engineering, fine-tuning techniques ( LoRA, PEFT ), and model optimization for performance, latency, and cost.
Implement MLOps and Deployment Pipelines:
Manage the full model lifecycle and deployment strategy, including model serialization (Pickle, Joblib, ONNX), containerization with
Docker
and
Kubernetes , and building secure, scalable endpoints using
FastAPI
and serverless functions.
Champion Platform Enablement:
Drive adoption and utilization of the
Databricks
platform to accelerate use case development, promote model automation, facilitate AutoML, and create reusable template-based solutions.
Adhere to Software Engineering Excellence:
Write highly efficient, maintainable
Python
code (advanced Python skills required), utilizing tools like JupyterLab and VSCode, and enforce
Git
version control and best practices for testing and quality assurance.
Develop User-Facing AI Applications:
Build front-end tools and prototypes using
Streamlit
alongside standard front-end technologies (HTML/CSS/JavaScript) to demonstrate AI capabilities to business users.
Provide Technical Leadership & Mentorship:
Collaborate effectively with cross-functional teams, mentor junior engineers and data scientists, and establish governance standards for data quality, solution accessibility, and business adoption of AI/ML practices.
Qualifications
Advanced proficiency in
Python
(specifically for machine learning) and extensive experience with core AI/ML open-source libraries, including
scikit-learn, PyTorch, pandas, polars, NumPy, and seaborn .
Proven experience designing and deploying end-to-end AI/ML systems, with a strong emphasis on
MLOps
principles and tools (Docker, Kubernetes, Git).
Deep expertise in developing and optimizing Generative AI solutions using
LLMs
and foundation models, including hands‑on experience with fine‑tuning (e.g., LoRA) and performance optimization.
Expertise in cloud platform deployment and infrastructure management on major cloud providers ( AWS and/or Azure ).
Strong functional knowledge of
Databricks
for data processing, platform management, and accelerating AI/ML development.
Experience in data processing, feature engineering, advanced visualization, and communicating complex insights effectively through storytelling.
Demonstrated
Systems Thinking
approach to problem‑solving, with the ability to translate high-level business goals into secure, scalable, and viable technical architectures.
Excellent communication, collaboration, and mentorship skills, with a track record of driving best practices and team improvement.
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AI/ML Solutions Architect
will be instrumental in designing and implementing end-to-end artificial intelligence and machine learning solutions in the DC area. This role requires an expert-level blend of advanced
AI/ML model development
(including Generative AI/LLMs, deep learning, and traditional ML),
modern software engineering
practices, and robust
MLOps
principles. The Architect will drive platform adoption using
Databricks , ensure models are securely deployed via cloud platforms (AWS/Azure) using
Docker/Kubernetes
and
FastAPI , and serve as a technical leader and mentor to junior team members, ultimately enabling self-service capabilities and accelerating the business adoption of scalable AI/ML solutions.
Responsibilities
Architect and Develop AI/ML Solutions:
Design, implement, and deploy advanced supervised and unsupervised models (regression, classification, clustering, time-series forecasting, boosting methods) and complex neural networks (CNNs, RNNs, LSTMs).
Lead Generative AI Initiatives:
Develop and integrate solutions powered by
LLMs
and open-source foundation models, applying expertise in prompt engineering, fine-tuning techniques ( LoRA, PEFT ), and model optimization for performance, latency, and cost.
Implement MLOps and Deployment Pipelines:
Manage the full model lifecycle and deployment strategy, including model serialization (Pickle, Joblib, ONNX), containerization with
Docker
and
Kubernetes , and building secure, scalable endpoints using
FastAPI
and serverless functions.
Champion Platform Enablement:
Drive adoption and utilization of the
Databricks
platform to accelerate use case development, promote model automation, facilitate AutoML, and create reusable template-based solutions.
Adhere to Software Engineering Excellence:
Write highly efficient, maintainable
Python
code (advanced Python skills required), utilizing tools like JupyterLab and VSCode, and enforce
Git
version control and best practices for testing and quality assurance.
Develop User-Facing AI Applications:
Build front-end tools and prototypes using
Streamlit
alongside standard front-end technologies (HTML/CSS/JavaScript) to demonstrate AI capabilities to business users.
Provide Technical Leadership & Mentorship:
Collaborate effectively with cross-functional teams, mentor junior engineers and data scientists, and establish governance standards for data quality, solution accessibility, and business adoption of AI/ML practices.
Qualifications
Advanced proficiency in
Python
(specifically for machine learning) and extensive experience with core AI/ML open-source libraries, including
scikit-learn, PyTorch, pandas, polars, NumPy, and seaborn .
Proven experience designing and deploying end-to-end AI/ML systems, with a strong emphasis on
MLOps
principles and tools (Docker, Kubernetes, Git).
Deep expertise in developing and optimizing Generative AI solutions using
LLMs
and foundation models, including hands‑on experience with fine‑tuning (e.g., LoRA) and performance optimization.
Expertise in cloud platform deployment and infrastructure management on major cloud providers ( AWS and/or Azure ).
Strong functional knowledge of
Databricks
for data processing, platform management, and accelerating AI/ML development.
Experience in data processing, feature engineering, advanced visualization, and communicating complex insights effectively through storytelling.
Demonstrated
Systems Thinking
approach to problem‑solving, with the ability to translate high-level business goals into secure, scalable, and viable technical architectures.
Excellent communication, collaboration, and mentorship skills, with a track record of driving best practices and team improvement.
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