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AI/ML Engineer - Financial Prediction & Quant Intelligence (Onsite, Dubai, AED Salary)

Requirements
  • Strong proficiency in Python, PyTorch or TensorFlow.
  • Hands on experience in NLP, ML, time series forecasting, and computer vision.
  • Solid understanding of financial markets, macroeconomic indicators, and technical analysis.
  • Experience building end to end ML pipelines and deploying models to production.
  • Familiarity with MLOps tools (MLflow, W&B), Docker, FastAPI, and cloud environments.
  • Background in fintech, algorithmic trading, or financial analytics.
  • Experience with LLMs, embeddings, RAG pipelines, and transformer architectures.
  • Knowledge of backtesting frameworks (Backtrader, Zipline, or custom engines).
  • Experience with distributed computing (Spark, Ray).
Responsibilities
  • Develop linear and data driven forecasting models for macroeconomic indicators (GDP, CPI, employment).
  • Build predictive models for on chain metrics, DVOL, volatility indices, and other market signals.
  • Design data settled forecasting instruments for expectation based trading.
  • Collaborate with product and engineering teams to integrate models into production systems.
  • Create rule based and ML driven technical indicators for short and mid term trading strategies.
  • Build ML models for pattern recognition, volatility regime detection, and microstructure analysis.
  • Conduct backtesting, feature engineering, and model optimization.
  • Work closely with traders and analysts to convert signals into actionable insights.
  • Develop financial NLP models (FinBERT style, transformer based, LLM based) real time sentiment scoring.
  • Build systems to evaluate market impact of news, economic releases, and social media signals.
  • Design pipelines for ingestion, cleaning, ranking, and scoring of text based financial data.
  • Integrate sentiment signals into trading and forecasting models.
  • Apply computer vision techniques to analyze candlestick charts, indicators, and visual market patterns.
  • Build CNN/ViT based models to detect technical patterns (breakouts, divergences, head & shoulders, etc.).
  • Convert chart images into structured features for ML and quant models.
  • Work with data engineering teams to generate and maintain chart based datasets.

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