Senior Machine Learning Engineer

Posted Yesterday
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Hiring Remotely in Office, Machaze, Manica, MOZ
Remote
Senior level
Fintech • Software • Financial Services • Cryptocurrency
The Role
Lead design, build, deploy, and maintain production ML and LLM systems, own ML infrastructure and pipelines, implement MLOps (CI/CD, monitoring, drift detection), optimize inference and cost, mentor engineers, and collaborate with product and data teams for scalable AI solutions.
Summary Generated by Built In

Welcome to MultiBank Group, a global financial pioneer established in 2005 in California and now proudly headquartered in Dubai, UAE. We specialize in delivering cutting-edge trading technology, unparalleled liquidity, and exceptional customer service. Our extensive range of financial products includes Forex, Metals, Shares, Indices, Commodities, and Cryptocurrency CFDs.

Join our thriving community of over 2 million clients across 100 countries, contributing to a daily trading volume exceeding US$ 35 billion. As a heavily regulated institution with oversight from 18+ financial regulators across 5 continents, and recipient of over 80 financial awards, MultiBank Group is devoted to innovation, excellence, and empowering our clients to achieve their financial goals.

Role Overview

We are seeking a Senior Machine Learning Engineer to join our AI team as a technical owner of ML products and infrastructure. This is a deeply hands-on engineering position for someone who builds and scales production AI systems used by real users in real-time environments. The right candidate operates across the full ML lifecycle — from model design through deployment, optimization, and ongoing performance in production — and contributes to the technical direction of the AI platform.

Key Responsibilities

  • Architect and implement robust ML systems in production environments, ensuring scalability, reliability, and performance from day one

  • Build and deploy supervised, unsupervised, deep learning, and generative AI models into live production environments at scale

  • Own technical design for ML pipelines, feature stores, training infrastructure, and inference systems, driving decisions that balance performance, cost, and maintainability

  • Design and deliver RAG systems, fine-tuning pipelines, prompt engineering frameworks, and evaluation pipelines for production-grade LLM applications

  • Implement and maintain CI/CD for ML, model versioning, monitoring, drift detection, and automated retraining pipelines

  • Continuously optimize model performance, inference latency, cost efficiency, and reliability across live systems

  • Collaborate with product managers, engineers, and data teams to translate business problems into scalable, maintainable AI solutions

  • Mentor junior and mid-level ML engineers, establish best practices, and contribute to technical standards across the team

  • Contribute to strategic decisions around data architecture, AI infrastructure, and cloud platform direction

  • Work with mobile attribution and customer engagement data sources including Adjust, MoEngage, and Firebase for ML use cases such as churn prediction, personalization, and campaign optimization

Requirements

  • 7 to 15 or more years of experience in software engineering, data science, or ML engineering

  • Strong background in product companies, scale-ups, or enterprise AI platforms

  • Proven track record of building production-grade AI systems, not solely notebooks or proof-of-concept work

  • Comfortable owning systems end-to-end from data through model through deployment through monitoring

  • Product-first engineering approach, not research-only profiles

  • Advanced Python engineering skills with strong systems thinking and a focus on production quality

  • Comfortable with fast iteration cycles and deploying models into live environments

  • Ability to work directly and confidently with stakeholders and product owners

  • Fintech or financial services experience is an advantage

Technical Skills

Machine Learning and AI: PyTorch, TensorFlow, XGBoost, LightGBM, Hugging Face (Transformers, Datasets, Diffusers)

LLM and GenAI: OpenAI and Anthropic APIs, LangChain, LlamaIndex; RAG architectures with vector DB and retrieval pipelines; embedding models (OpenAI, Cohere, open-source); Pinecone, Weaviate, Milvus, FAISS; fine-tuning via LoRA and PEFT frameworks; evaluation using RAGAS and custom pipelines

MLOps and Production: Docker, Kubernetes, MLflow, Weights and Biases, Airflow, Dagster, Prefect, GitHub Actions, GitLab CI, Evidently AI, Arize, custom observability stacks

Cloud: AWS (SageMaker, EKS, S3, Lambda), Azure ML, Azure Databricks, GCP

Data Stack: Databricks, Spark, PySpark, Delta Lake, Apache Iceberg, Lakehouse architectures

Why Join Us?

  • Work with one of the world’s leading financial derivatives institutions.

  • Competitive salary plus performance-based incentives.

  • Access to a dynamic, international, and fast-growing environment.

  • Strong opportunities for career progression within a global financial group.

  • Be part of a business committed to innovation, excellence, and long-term growth.

Become part of our international community at MultiBank Group, dedicated to excellence, innovation, and shaping the future of finance.

MultiBank Group is an equal opportunity employer. We welcome applications from candidates of all backgrounds and do not discriminate on the basis of nationality, gender, age, religion, or disability.

Skills Required

  • 7 to 15+ years of experience in software engineering, data science, or ML engineering
  • Proven track record of building production-grade AI systems (not just notebooks/PoCs)
  • End-to-end ownership of ML systems from data through model, deployment, and monitoring
  • Advanced Python engineering skills and strong systems thinking
  • Experience with PyTorch, TensorFlow, XGBoost, LightGBM
  • Experience with Hugging Face (Transformers, Datasets, Diffusers)
  • Experience with LLMs and GenAI tooling: OpenAI, Anthropic, LangChain, LlamaIndex and RAG architectures
  • Experience with vector databases and embeddings: Pinecone, Weaviate, Milvus, FAISS, Cohere or open-source embedding models
  • Fine-tuning experience using LoRA/PEFT and evaluation pipelines (RAGAS/custom evaluation)
  • MLOps and production tooling experience: Docker, Kubernetes, MLflow, Weights & Biases, Airflow, Dagster, Prefect, GitHub Actions/GitLab CI, Evidently AI, Arize
  • Cloud experience: AWS (SageMaker, EKS, S3, Lambda), Azure ML, Azure Databricks, and/or GCP
  • Data engineering/stack experience: Databricks, Spark, PySpark, Delta Lake, Apache Iceberg, Lakehouse architectures
  • Experience working with mobile attribution and engagement data sources: Adjust, MoEngage, Firebase
  • Strong background in product companies, scale-ups, or enterprise AI platforms
  • Product-first engineering approach (not research-only) and strong stakeholder communication
  • Fintech or financial services experience
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The Company
0 Employees
Year Founded: 2020

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