Mid-level Finance & FinTech Jobs in Africa

33 jobs found

Flutterwave

AI Engineer

Nairobi

Kenya

Closed for applications
Numida

Customer Experience & Quality (CX) Manager- Nairobi

Nairobi

Kenya

Closed for applicationsOnly on Fuzu
Numida

Customer Lifecycle & Experience Manager - East Africa (Kampala / Nairobi)

Nairobi

Kenya

Closed for applicationsOnly on Fuzu
Oasis Outsourcing

Bookkeeper

Nairobi

Kenya

Closed for applications
M-KOPA

Business Analyst - Credit Eligibility

Nairobi

Kenya

Closed for applications
Bayes (Pi Capital Ltd)

Partnership Sales Officer

Nairobi

Kenya

Closed for applicationsOnly on Fuzu
Numida

Field Assessment Officer

Nairobi

Kenya

Closed for applicationsOnly on Fuzu

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M-KOPA

Data Scientist - Credit Modeling

Nairobi

Kenya

Closed for applications

Country / Region

Industry (Mid-level)

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Flutterwave

Finance & FinTech

AI Engineer

Closed for applications
Job details

Contract Type

Description

Required competency and skillset to be a waver

  • 4–7+ years in Machine Learning / AI Engineering.
  • Strong Python proficiency (PyTorch, TensorFlow, Hugging Face).
  • Experience working with LLMs (fine-tuning, RAG, embeddings, retrieval systems).
  • Experience deploying ML systems in production (Docker, Kubernetes, CI/CD).
  • Experience building inference pipelines and monitoring systems.
  • Strong understanding of evaluation metrics and ML governance practices.
  • Experience working with large-scale structured and unstructured datasets.
  • Strong preference for previous fintech or payments experience


Responsibilities

Productionize AI for Payment Incident Investigation

  • Design and deploy a locally hosted LLM-powered agent for autonomous payment failure analysis.
  • Build internal LLM infrastructure with no external API dependency for core workflows.
  • Develop structured pipelines for root cause identification across transaction failures.
  • Automate Level 1 incident investigations.
  • Generate standardized root cause analysis (RCA) reports.
  • Optimize model performance to reduce Mean Time to Resolution (MTTR).

Build Reusable Internal AI Infrastructure

  • Develop scalable training and inference pipelines.
  • Create reusable model components adopted across multiple use cases.
  • Reduce time-to-deploy new AI applications.
  • Decrease reliance on external AI APIs through internal model development.
  • Implement monitoring systems for latency, drift, and model performance.

Expand AI into Operational Workflows

  • Deploy at least two additional AI use cases (e.g., chatbot, automated reporting, issue clustering).
  • Ensure ≥99.9% production uptime.
  • Maintain inference latency within defined thresholds.
  • Establish retraining cadence and continuous performance evaluation.
  • Deliver measurable efficiency improvements in operational workflows.

Ensure AI Reliability & Governance

  • Implement version-controlled datasets and model versioning.
  • Define evaluation benchmarks (precision, recall, accuracy thresholds).
  • Implement automated drift detection.
  • Document model architecture and training processes.
  • Ensure zero preventable production-critical failures due to model design.

Ensure personal information of customers, employees, and other individuals the company conducts business with is processed and protected in line with applicable data privacy policies, privacy laws, and global best practices.


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