Title: AI/ML Software Engineer.
Location: Client is (Annapolis, MD 21401) 100% Remote.
Duration: 12+ Months Contract (long term contract till 3 years).
Note: Onsite is required- first two (2) days of work
Job description:
Client is AI/ML Software Engineer to build software tools that incorporate AI/ML techniques to automate narrowly defined tasks with high accuracy, assist internal users with their job functions, and improve the experience external users have when interacting with the Maryland Judiciary. This includes, but is not limited to, RPA work, building or refining chatbots, incorporating AI/ML into reporting tools, building llm agents for knowledge retrieval, deep research, translation, transcription, redaction, document analysis, document generation, agentic coding, and data processing.
Required Education:
- Bachelor of Science in Engineering, Computer Science, Data Science, or Mathematics, or a related field (as determined by the AOC).
Required Experience:
- At least three (3) years’ experience in Data Science, Machine Learning, or Applied AI Development.
- At least three (3) years’ experience in Software Engineering, Architecture, or Web Development.
Experience with:
- SQL and Relational Database Systems (e.g., PostgreSQL).
- Fine-tuning small language models or embedding models .
- Contributing to or maintaining open-source software projects.
- Graph Databases or Graph Extensions (e.g., Neo4j, Apache AGE).
- Designing and implementing multi-agent or task-oriented AI systems.
- Embedding models, vector similarity, re-ranking, and graph retrieval techniques in RAG systems.
- Version control systems (e.g., Git), containerization technologies (e.g., Docker), and service-oriented architectures.
- Collaborating with Large Language Models (LLMs), including both API-based integration and local deployment.
- Validating AI-generated outputs, mitigating hallucinations, and integrating AI tools into production service pipelines.
Ability to:
- Understand data structures, algorithms, and clean coding principles.
- Select and apply appropriate techniques (LLM and non-LLM) based on task requirements.
- Develop and improve testing and evaluation pipelines for AI systems, including use of Synthetic Data.
- Demonstrate proficiency in Python, including the ability to develop productiongrade backend services, APIs, middleware, and data pipelines.
- Design and implement AI/ML systems that operate effectively on complex, inconsistent, or evolving datasets while balancing accuracy, latency, and cost (token consumption).
- Collaborate with team members to define system architecture, agent workflows, and data pipelines while working in constrained environments, including limited GPU availability and predefined infrastructure.
Knowledge of:
- Hybrid cloud environments and distributed system considerations.
- Threading, asynchronous processing, and queues in backend servers.
- React and Microsoft Teams Toolkit for developing chatbot user interfaces.
- Non-llm data analysis techniques for structured, semi-structured, and unstructured data.
- Classical natural language processing (NLP) techniques in addition to LLM-based approaches.
- Data science and LLM-related libraries in Rust or other performance-oriented programming languages.
Responsibilities:
System Design & Collaboration:
· Work within established constraints regarding infrastructure, programming languages, and model selection.
· Contribute to technical decision-making related to data processing, retrieval strategies, and system integration.
· Collaborate with team members to define agent architectures, workflows, and system design decisions.
· Evaluate and select appropriate approaches for given tasks, including determining when to use LLM-based versus non-LLM techniques
· Designing and building software systems that integrate AI/ML techniques to automate tasks, assist internal users, and improve user-facing services.
Testing, Evaluation, and Quality Assurance:
- Assist in the design and implementation of testing and evaluation pipelines for AI/ML systems.
- Develop unit and integration tests for AI-enabled workflows and data pipelines.
- Generate and utilize synthetic data to support evaluation and benchmarking efforts.
- Contribute to improving system performance, including accuracy, latency, and cost efficiency.
Deployment & Operations:
- Support deployment of AI/ML applications within a hybrid cloud environment.
- Work with containerized applications to ensure reliable deployment and updates.
- Optimize systems for environments with limited computational resources, including minimal GPU availability.
General Responsibilities:
- Deliver production-grade systems aligned with defined requirements, while supporting iterative improvement of evolving tools.
- Document system designs, workflows, and technical decisions as required.
- Stay informed on relevant advancements in AI/ML and apply them where appropriate within project constraints.
Thank you for your time and I look forward to your reply today.