o
omosea_1

Success A

@omosea_1
5,0(1)

Quantitative Developer, Financial Engineering, Algorithmic Trading, Python

Nigéria
Inglês, Francês, Espanhol, Alemão, Italiano
Algumas informações são exibidas no idioma inglês.
Sobre mim
I am a Quantitative Developer specializing in financial engineering, algorithmic trading, and advanced Python solutions. I build robust quantitative models, back-testing systems, portfolio optimization frameworks, derivatives pricing models, risk analytics, and financial forecasting tools. I focus on delivering accurate, scalable, and production-ready solutions that help businesses, traders, researchers, and financial institutions make data-driven investment decisions.... Saiba mais

Habilidades

o
omosea_1
Success A
offline • 
Tempo médio de resposta: 3 horas

Conheça meus serviços

Eficiência e Automação do Negócio
I will perform portfolio optimization and risk analysis
5,0(1)
Integrações de IA
I will build custom ai agents and automate your business workflows

Portfólio

Experiência profissional

AlgoSmith

Algorithmic Trading Developer

AlgoSmith • Freelance

Jun 2026 - Present1 mo

Designed and implemented algorithmic trading strategies using Python, quantitative analysis, and machine learning approaches. Developed automated trading models based on historical market data, technical indicators, statistical signals, and time series analysis. Conducted backtesting and performance evaluation to measure strategy profitability, volatility, drawdowns, and risk-adjusted returns. Built research frameworks for analyzing market patterns, forecasting price movements, and identifying trading opportunities. Applied statistical methods and machine learning algorithms to improve predictive performance and strategy robustness. Created automated data pipelines for collecting, cleaning, and analyzing financial market information. Achievement: Developed systematic trading solutions that enhanced strategy testing, improved decision-making processes, and provided reliable quantitative insights for financial market analysis.

AIR™️

Machine Learning Finance Specialist

AIR™️

May 2026 - Present2 mos

Developed machine learning solutions for financial analysis, forecasting, and risk assessment. Built predictive models using Python, supervised learning algorithms, and financial datasets. Applied feature engineering and model optimization techniques to improve predictive accuracy. Integrated machine learning with traditional financial analysis methods to create advanced analytics solutions for market prediction, portfolio evaluation, and risk monitoring. Achievement: Successfully implemented AI-powered financial models that enhanced forecasting capabilities and improved analytical decision-making.

FinancialHedge

Portfolio Risk Management Analyst

FinancialHedge • Meio período

Jul 2026 - Jul 20260 mos

Designed portfolio risk analytics solutions using quantitative methods, Python programming, and financial modeling. Developed frameworks for measuring portfolio volatility, downside risk, and performance under different market scenarios. Created risk assessment tools using Monte Carlo simulation, stress testing, and statistical analysis. Evaluated portfolio diversification, asset relationships, and potential loss scenarios. Achievement: Delivered risk management systems that improved portfolio visibility and supported stronger investment strategies.

1 Avaliações
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Classificação detalhada
  • Nível de comunicação do freelancer
    5
  • Qualidade da entrega
    5
  • Valor da entrega
    5
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    R

    roor_90

    Cliente recorrente

    US

    Estados Unidos

    5

    Thank you so much. I truly appreciate your professionalism and the quality of your work. Your attention to detail and clear communication have made this process much easier. I’m grateful for your support and look forward to continuing to work with you.

    US$ 50-US$ 100

    Preço

    4 dias

    Tempo

    gig

    Eficiência e Automação do Negócio

    Útil?
    Sim
    Não