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Arta Asadi | Senior AI Systems Engineer & AI Architect

💡 I build AI systems for high-stakes environments—engineering reasoning, risk-aware, and autonomous architectures for finance, decision intelligence, and large-scale institutional systems.

I specialize in transforming advanced mathematical, probabilistic, and philosophical concepts into production-grade AI infrastructure that can reason under uncertainty, manage risk, and operate reliably at scale.

As a Senior AI Systems Engineer, I design and deploy intelligent architectures for domains where reasoning quality, uncertainty management, and reliability are critical.

My work focuses on:

  • Generative AI and LLM reasoning systems
  • Retrieval-augmented and agentic architectures
  • Financial intelligence and tail-risk modeling
  • Autonomous decision systems
  • AI infrastructure and scalable inference pipelines

I work at the intersection of:

  • AI engineering
  • probabilistic and quantitative reasoning
  • systems architecture
  • quantitative finance
  • institutional-scale intelligence systems

I do not build AI demos. I build systems designed to operate under real-world ambiguity, adversarial conditions, and complex decision environments.

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🛠️ Hard Skills

Python PyTorch CUDA Transformers FastAPI Docker

🛠️ Core Expertise

Generative AI & Reasoning Systems — RAG Architectures · Structured Reasoning · Multi-Agent Systems · LangGraph · RLHF · Context Engineering · LLM Evaluation

AI & Machine Learning — Deep Learning · Reinforcement Learning · Anomaly Detection · Optimization Algorithms · Probabilistic Modeling

Financial Intelligence & Quantitative Systems — Tail-Risk Analysis · Portfolio Optimization · Algorithmic Trading · Risk Modeling · Market Simulation

Infrastructure & Scalable AI Systems — Distributed Systems · Scalable Inference · Vector Databases · Qdrant · GPU Workloads · Observability · MLOps · LLMOps

Data & Backend Engineering — Python · FastAPI · Pandas · MongoDB · Docker · CUDA · PyTorch · Transformers


🧠 Thinking Skills

Problem Solving at Scale — I decompose complex, high-dimensional problems into tractable components and build AI systems that handle real-world scale, noise, and ambiguity.

Risk Analysis — I think in probabilities and downside scenarios, with a focus on fat-tail modeling. I design systems that don't just optimize for expected reward, but deeply understand and manage extreme events where conventional models fail.

Systematic Thinking — I approach problems with structured, methodical frameworks—mapping cause and effect, identifying dependencies, and building reproducible pipelines from chaos.

Nonlinear Thinking — I identify hidden dependencies, second-order effects, and unconventional solution paths across AI, finance, infrastructure, and institutional systems. I focus on architectures that remain robust under uncertainty, scale, and adversarial conditions.


🌟 Featured Projects

1. Scenario Reasoner LM 🧠

A language model–based reasoning engine that processes complex scenarios, evaluates multi-step logical chains, and produces structured, defensible conclusions. Built to make LLMs reason through ambiguity—not just generate text.

🔗 View Project


2. RAFT-LM 🛡️

An implementation of the RAFT (Retrieval Augmented Fine-Tuning) paradigm for LLMs, combining domain-specific supervised fine-tuning with in-context retrieval. RAFT-LM trains models to intelligently distinguish between relevant and distractor documents, significantly improving answer accuracy in "open-book" domain-specific applications.

🔗 View Project


3. TailWarp

High-performance tools for extreme event analysis in financial and statistical domains. Focused on the tail of the distribution—where risk lives, conventional models fail, and precise AI methods are required.

🔗 View Project


4. RADA 🤖

An adaptive data augmentation framework designed to dynamically select and apply augmentation strategies based on dataset characteristics and model feedback. RADA moves beyond static, one-size-fits-all augmentations, using a contextual approach to optimize the training pipeline, improve model generalization, and enhance robustness across diverse domains.

🔗 View Project


🎓 Education

  • Ph.D. — Artificial Intelligence
  • M.Sc. — Computer Engineering (AI)
  • B.Sc. — Software Engineering

🧭 Current Research & System Design Directions

AI-Native Financial Infrastructure

Exploring autonomous financial intelligence systems that combine:

  • explainable AI
  • probabilistic reasoning
  • agentic workflows
  • risk-aware architectures
  • institutional-scale decision systems

Institutional & Civic Intelligence Systems

Researching AI-mediated governance and large-scale coordination systems inspired by:

  • Karl Popper’s Open Society
  • computational governance
  • adaptive institutional design
  • algorithmic social contracts
  • decentralized intelligence systems

Relevant concepts and adjacent research:

  • Society-in-the-Loop (SITL)
  • Constitutional AI
  • AI governance frameworks
  • Open institutional architectures

⚙️ Engineering Philosophy

I believe the next generation of AI systems will not simply generate content—they will coordinate institutions, manage uncertainty, reason under incomplete information, and augment large-scale decision systems.

My focus is building AI architectures that are:

  • reliable under uncertainty
  • explainable in high-stakes environments
  • robust against adversarial conditions
  • scalable across institutional contexts
  • grounded in systems thinking rather than hype

I am particularly interested in the intersection of:

  • AI reasoning
  • governance systems
  • financial intelligence
  • institutional architecture
  • computational social systems

Thanks for stopping by. Let's build the future of AI together. 🚀

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