# โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
# โ ahmed@research ~ $ python profile.py โ
# โโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโโ
class AIQuantResearcher :
def __init__ (self ):
self .name = "Ahmed"
self .role = "AI & Quantitative Researcher"
self .location = "Egypt ๐ช๐ฌ"
@property
def research_stack (self ) -> dict :
return {
"deep_rl" : ["Policy Gradient Methods" , "Actor-Critic Architectures" ,
"Continuous Action Spaces" , "e.g. DDPG, TD3, SAC" ],
"finance" : ["Algorithmic Trading" , "Market Microstructure" ,
"LOB Dynamics" , "Quantitative Strategy Design" ],
"probabilistic_ml" : ["Conformal Prediction" , "Uncertainty Quantification" ,
"Distribution-Free Inference" ],
"islamic_finance" : ["Shariah-Compliant AI Strategies" ,
"Riba-Free Portfolio Construction" ,
"ML-Driven Equity Screening" ],
"llm_agentic" : ["LangGraph" , "LangChain" , "PageIndex" ,
"Agentic Pipelines" , "RAG Systems" ],
"cloud_mlops" : ["Google Cloud Platform (GCP)" , "Cloud-native ML Workflows" ],
"competition" : ["IMC Prosperity 4 โ Active" ],
"game_theory" : ["Ordinal Games" , "Strategic Equilibria" ],
}
def current_focus (self ) -> str :
return (
"Quantification of Continuous Action Uncertainty in Reinforcement Learning "
"and its Application to Islamic Finance Equity"
)
ahmed = AIQuantResearcher ()
print (f"๐ Welcome to { ahmed .name } 's profile" )
print (f"๐ฌ Current Focus: { ahmed .current_focus ()} " )
Policy gradient methods in continuous action spaces (e.g. actor-critic, deterministic & stochastic variants)
Reward engineering for limit order book environments: liquidity gates, baseline formulations, mark-to-market terms
Offline and online RL pipelines for algorithmic trading
Implementation in JAX/Flax NNX with WandB experiment tracking
๐ฎ Probabilistic ML & Conformal Prediction
Distribution-free uncertainty quantification via conformal prediction sets
Coverage guarantees and calibration in non-exchangeable, financial time series settings
Uncertainty-aware decision-making under model misspecification
โช๏ธ Islamic Finance & Ethical AI
Current Focus: Quantification of continuous action uncertainty in RL and its application to Islamic Finance equity
Shariah-compliant strategy design: riba-free constraints, halal instrument selection
ML-driven equity screening and portfolio construction for Islamic capital markets
Multi-agent orchestration with LangGraph and LangChain
Retrieval-Augmented Generation (RAG) and PageIndex-based knowledge pipelines
Cloud-native deployment of agentic workflows on GCP
๐ Quant Finance & Market Microstructure
Reservation pricing, spread decomposition, and adverse selection modelling
ML techniques for alpha generation, factor research, and systematic strategy design
๐งฉ LLM & Agentic Frameworks
๐ฌ Scientific Computing
๐๏ธ Infrastructure & Tools
Quantitative Finance ยท Deep RL ยท Islamic Finance Equity ยท Conformal Prediction ยท LLM Agentic Systems