As a
  
   Quantitative Machine Learning Engineer
  
  at
  
   Merli
  
  , you will help shape the next generation of
  
   AI-driven trading infrastructure
  
  . This role sits at the intersection of
  
   quantitative research, applied ML, and agentic system design
  
  , with the goal of optimizing high-frequency (HFT), medium-frequency (MFT), and wholesale trading strategies.
 
  You’ll architect
  
   adaptive, agent-based ML systems
  
  that learn from evolving market microstructures, build robust forecasting and optimization models, and work with trading and infrastructure teams to deploy these solutions in
  
   real-world, low-latency environments
  
  .
 
   Key Responsibilities
  
- 
    Design & Build Agentic ML Systems:
   
   Develop autonomous and semi-autonomous agents that perform data acquisition, alpha discovery, backtesting, and execution optimization.
  
- 
    End-to-End ML Engineering:
   
   Architect, train, and deploy ML pipelines for HFT/MFT and wholesale trading, from signal generation to execution integration.
  
- 
    Quantitative Research Integration:
   
   Collaborate with quant researchers to translate theoretical models into production-ready predictive and optimization systems.
  
- 
    Market Forecasting:
   
   Develop deep learning, time series, and reinforcement learning models for price movement prediction and regime detection.
  
- 
    Trading Optimization:
   
   Build reinforcement and meta-learning frameworks that adaptively tune strategy parameters in live environments.
  
- 
    Scalable ML Infrastructure:
   
   Implement real-time inference, model versioning, and continuous learning pipelines for production systems.
  
- 
    Performance Evaluation:
   
   Rigorously validate models with historical and synthetic simulations, ensuring robustness, latency, and financial soundness.
  
- 
    Documentation & Collaboration:
   
   Maintain high standards of reproducibility, version control, and code documentation across research and deployment layers.
  
   What You’ll Gain
  
- 
   Work at the frontier of
   
    AI, quantitative finance, and agentic automation
   
   .
  
- 
   Collaborate with
   
    quant researchers, data engineers, and trading teams
   
   shaping next-gen trading systems.
  
- 
   Exposure to
   
    meta-optimization frameworks
   
   ,
   
    reinforcement learning
   
   , and
   
    multi-agent orchestration
   
   .
  
- 
   Hands-on experience with
   
    low-latency ML deployment
   
   , GPU acceleration, and distributed training in real trading environments.
  
- 
   Ownership of models that directly influence
   
    market-making, forecasting, and strategy execution
   
   .
  
- 
   Continuous learning and experimentation in a
   
    research-first, innovation-driven
   
   environment.
  
   Qualifications
  
- 
   Bachelor’s, Master’s, or Ph.D. in Computer Science, Applied Mathematics, Financial Engineering, or a related quantitative field.
  
- 
    3+ years
   
   of experience developing and deploying ML models in production (preferably in finance, trading, or large-scale decision systems).
  
- 
   Strong proficiency in
   
    Python
   
   and ML frameworks:
   
    PyTorch, TensorFlow, scikit-learn, NumPy, Pandas
   
   .
  
- 
   Deep understanding of
   
    supervised, unsupervised, and reinforcement learning
   
   ,
   
    time-series modeling
   
   , and
   
    probabilistic forecasting
   
   .
  
- 
   Experience building
   
    scalable data pipelines
   
   with
   
    Kafka, Flink, or Ray
   
   and deploying models in
   
    Docker/Kubernetes
   
   environments.
  
- 
   Knowledge of
   
    market microstructure
   
   ,
   
    portfolio optimization
   
   , or
   
    signal-based trading systems
   
   is highly desirable.
  
- 
   Familiarity with
   
    meta-learning
   
   ,
   
    agent-based system design
   
   , or
   
    multi-agent coordination
   
   is a strong plus.
  
- 
   Solid analytical, programming, and debugging skills with an emphasis on
   
    system reliability and latency optimization
   
   .
  
   Preferred Technical Stack
  
- 
    Languages:
   
   Python, C++, Rust
  
- 
    ML Infrastructure:
   
   Ray, MLflow, Airflow, Weights & Biases
  
- 
    Data Systems:
   
   Kafka, Redpanda, Redis, QuestDB
  
- 
    Model Deployment:
   
   Triton Inference Server, TorchServe, or custom GPU inference
  
- 
    Cloud/Hybrid Setup:
   
   Kubernetes, ArgoCD, Helm