FSE Senior AI Engineer
Job in
Atlanta, Fulton County, Georgia, 30301, USA
Listed on 2026-07-09
Listing for:
Iconma
Full Time
position Listed on 2026-07-09
Job specializations:
-
Software Development
AI Engineer (Applied/Software), Machine Learning/ ML Engineer
Job Description & How to Apply Below
FSE Senior AI Engineer
Our client, an IT services and consultant company, is looking for a FSE Senior AI Engineer for their Atlanta, GA/Remote location.
Responsibilities:- Lead spec-first development initiatives using Git Hub Spec Kit — authoring specs, technical plans, and agent-ready task breakdowns before writing any code.
- Design and build full stack web applications using React, JavaScript/Type Script frameworks, and Node.js, from UI to backend API layer.
- Develop, integrate, and maintain RESTful and GraphQL APIs, ensuring performance, reliability, and security across services.
- Architect and deploy cloud-native solutions on AWS (Lambda, EC2, S3, API Gateway, RDS, Cloud Formation) with a focus on scalability and cost efficiency.
- Build and integrate AI-powered features — leveraging LLMs, AI agents, prompt engineering, and the GenAI ecosystem to enhance product capabilities.
- Design and manage relational (PostgreSQL) and document (MongoDB) databases, including schema design, query optimization, and data migrations.
- Collaborate with product managers, designers, and AI/ML engineers to translate requirements into well-specified, shippable software.
- Participate in code reviews, establish engineering best practices, and contribute to a culture of quality and continuous improvement.
- 5+ years of professional experience in full stack software development.
- Proven hands-on experience with GenAI tools and a spec-first development approach, including Git Hub Spec Kit or equivalent workflows.
- Strong proficiency in React and modern JavaScript / Type Script frameworks (Next.js, Vue, or similar).
- Solid backend development skills with Node.js — building and maintaining production REST or GraphQL APIs.
- Experience deploying and operating applications on AWS — comfortable with core services such as Lambda, EC2, S3, API Gateway, and RDS.
- Practical experience with both MongoDB (document store) and PostgreSQL (relational), including schema design and query tuning.
- Familiarity with AI agent frameworks, LLM APIs (OpenAI, Anthropic, or similar), and prompt engineering techniques.
- Strong understanding of software engineering fundamentals — data structures, system design, testing, and CI/CD practices.
- Bachelor's degree in computer science, Engineering, or equivalent practical experience.
- Required Technical Expertise:
- Supervised Learning:
- Linear regression and logistic regression,
- Decision trees, Random Forest, Gradient Boosting (XGBoost, LightGBM, Cat Boost),
- Support Vector Machines (SVMs) and kernel methods,
- Neural networks — CNNs, RNNs, LSTMs, and Transformers,
- Classification, regression, and ranking problems,
- Cross-validation, bias-variance trade-off, regularization (L1/L2, dropout)
- Unsupervised Learning:
- Clustering: K-Means, DBSCAN, Gaussian Mixture Models, hierarchical clustering
- Dimensionality reduction: PCA, t-SNE, UMAP
- Autoencoders and variational autoencoders (VAEs)
- Anomaly detection and outlier identification
- Association rule mining (Apriori, FP-Growth)
- Topic modelling (LDA, NMF)
- Reinforcement Learning:
- Markov Decision Processes (MDPs) states, actions, rewards, transitions
- Model-free methods: Q-Learning, SARSA, Deep Q-Networks (DQN)
- Policy gradient methods: REINFORCE, PPO, A3C / A2C
- Actor-Critic architectures
- Multi-armed bandits and contextual bandits
- Reward shaping, environment design, and simulation frameworks (OpenAI Gym)
- Relevant learning algorithms - Adjacent & advanced techniques:
- Transfer learning and fine-tuning of pre-trained models
- Semi-supervised and self-supervised learning
- Active learning and human-in-the-loop pipelines
- Federated learning for privacy-preserving training
- Bayesian optimization and hyperparameter tuning (Optuna, Ray Tune)
- Ensemble methods, stacking, and model blending
- Graph Neural Networks (GNNs) a plus
- Causal inference and counterfactual reasoning — a plus
- Good to Have:
- Experience with Git Hub Copilot, Cursor, or other AI-assisted coding environments in day-to-day development.
- Familiarity with containerization (Docker, Kubernetes) and infrastructure-as-code (Terraform, AWS CDK).
- Exposure to vector databases (Pinecone, pgvector) or RAG (Retrieval-Augmented Generation) pipelines.
- Knowledge of event-driven architecture using AWS SQS, SNS, or Event Bridge.
- Experience with Lang Chain, Llama Index, or similar AI orchestration frameworks.
- Contributions to open-source projects or a portfolio of AI-integrated applications.
- Familiarity with observability tools — Data Dog, Cloud Watch, or Splunk — for monitoring AI and API workloads.
- 10.00 Years of Experience
- Health Benefits
- Referral Program
- Excellent growth and advancement opportunities
Position Requirements
10+ Years
work experience
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