Machine Learning Engineer / Data Scientist job at Avenews
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Machine Learning Engineer / Data Scientist
2026-03-26T11:16:27+00:00
Avenews
https://cdn.greatkenyanjobs.com/jsjobsdata/data/employer/comp_10953/logo/Avenews.png
FULL_TIME
Nairobi
Nairobi
00100
Kenya
Financial Services
Science & Engineering, Computer & IT
KES
MONTH
2026-04-05T17:00:00+00:00
8

Avenews provides fast and reliable financing solutions for Kenyan agribusinesses poised for growth, serving as a trusted partner to fuel expansion.

We're looking for a passionate Machine Learning Engineer or Data Scientist who is excited about building predictive models that have real-world impact in fintech. You'll work on developing and improving credit risk models, particularly probability of default (PD) models, while aggregating and analyzing data from multiple sources. This is a role for someone who loves working with data, is curious about machine learning, and wants to continuously learn and grow.

Responsibilities

  • Building and improving probability of default (PD) models for credit assessment
  • Aggregating and processing data from multiple sources (MongoDB, SQL databases, APIs, external data providers)
  • Designing and implementing end-to-end ML pipelines including data collection, preprocessing, feature engineering, model training, and deployment.
  • Developing data pipelines to collect, clean, and transform data for modeling
  • Working with financial data and credit scoring systems
  • Creating features and performing feature engineering for ML models
  • Evaluating model performance and iterating improvements
  • Collaborating with the development team to integrate models into production
  • Conducting research and experimentation with advanced ML techniques such as ensemble methods, deep learning, and time-series forecasting for credit risk prediction.

Requirements

  • 3-5 years of experience in machine learning, data science, or a related quantitative field
  • Strong Python experience (this is essential)
  • Experience with machine learning frameworks - Required: scikit-learn, XGBoost, LightGBM; Nice to have: TensorFlow, PyTorch, Keras
  • Experience with credit risk modeling is a strong plus but not mandatory
  • Experience working with multiple data sources and data integration
  • Familiarity with APIs - both consuming and building them
  • Knowledge of statistical analysis and model evaluation techniques
  • Experience with data manipulation libraries (pandas, numpy)
  • Understanding of databases - Must-have: MongoDB, PostgreSQL; Nice to have: MySQL, Redis
  • Knowledge of data versioning, model versioning, and MLOps pipelines is a plus
  • Building and improving probability of default (PD) models for credit assessment
  • Aggregating and processing data from multiple sources (MongoDB, SQL databases, APIs, external data providers)
  • Designing and implementing end-to-end ML pipelines including data collection, preprocessing, feature engineering, model training, and deployment.
  • Developing data pipelines to collect, clean, and transform data for modeling
  • Working with financial data and credit scoring systems
  • Creating features and performing feature engineering for ML models
  • Evaluating model performance and iterating improvements
  • Collaborating with the development team to integrate models into production
  • Conducting research and experimentation with advanced ML techniques such as ensemble methods, deep learning, and time-series forecasting for credit risk prediction.
  • Strong Python experience
  • scikit-learn
  • XGBoost
  • LightGBM
  • TensorFlow (Nice to have)
  • PyTorch (Nice to have)
  • Keras (Nice to have)
  • APIs (consuming and building)
  • Statistical analysis
  • Model evaluation techniques
  • pandas
  • numpy
  • MongoDB
  • PostgreSQL
  • MySQL (Nice to have)
  • Redis (Nice to have)
  • Data versioning (plus)
  • Model versioning (plus)
  • MLOps pipelines (plus)
  • BA/BSc/HND
  • 3-5 years of experience in machine learning, data science, or a related quantitative field
  • Experience with machine learning frameworks
  • Experience with credit risk modeling (strong plus but not mandatory)
  • Experience working with multiple data sources and data integration
  • Understanding of databases
  • Knowledge of data versioning, model versioning, and MLOps pipelines is a plus
bachelor degree
36
JOB-69c5158b338c4

Vacancy title:
Machine Learning Engineer / Data Scientist

[Type: FULL_TIME, Industry: Financial Services, Category: Science & Engineering, Computer & IT]

Jobs at:
Avenews

Deadline of this Job:
Sunday, April 5 2026

Duty Station:
Nairobi | Nairobi

Summary
Date Posted: Thursday, March 26 2026, Base Salary: Not Disclosed

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JOB DETAILS:

Avenews provides fast and reliable financing solutions for Kenyan agribusinesses poised for growth, serving as a trusted partner to fuel expansion.

We're looking for a passionate Machine Learning Engineer or Data Scientist who is excited about building predictive models that have real-world impact in fintech. You'll work on developing and improving credit risk models, particularly probability of default (PD) models, while aggregating and analyzing data from multiple sources. This is a role for someone who loves working with data, is curious about machine learning, and wants to continuously learn and grow.

Responsibilities

  • Building and improving probability of default (PD) models for credit assessment
  • Aggregating and processing data from multiple sources (MongoDB, SQL databases, APIs, external data providers)
  • Designing and implementing end-to-end ML pipelines including data collection, preprocessing, feature engineering, model training, and deployment.
  • Developing data pipelines to collect, clean, and transform data for modeling
  • Working with financial data and credit scoring systems
  • Creating features and performing feature engineering for ML models
  • Evaluating model performance and iterating improvements
  • Collaborating with the development team to integrate models into production
  • Conducting research and experimentation with advanced ML techniques such as ensemble methods, deep learning, and time-series forecasting for credit risk prediction.

Requirements

  • 3-5 years of experience in machine learning, data science, or a related quantitative field
  • Strong Python experience (this is essential)
  • Experience with machine learning frameworks - Required: scikit-learn, XGBoost, LightGBM; Nice to have: TensorFlow, PyTorch, Keras
  • Experience with credit risk modeling is a strong plus but not mandatory
  • Experience working with multiple data sources and data integration
  • Familiarity with APIs - both consuming and building them
  • Knowledge of statistical analysis and model evaluation techniques
  • Experience with data manipulation libraries (pandas, numpy)
  • Understanding of databases - Must-have: MongoDB, PostgreSQL; Nice to have: MySQL, Redis
  • Knowledge of data versioning, model versioning, and MLOps pipelines is a plus

Work Hours: 8

Experience in Months: 36

Level of Education: bachelor degree

Job application procedure

Application Link:Click Here to Apply Now

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Job Info
Job Category: Engineering jobs in Kenya
Job Type: Full-time
Deadline of this Job: Sunday, April 5 2026
Duty Station: Nairobi | Nairobi
Posted: 26-03-2026
No of Jobs: 1
Start Publishing: 26-03-2026
Stop Publishing (Put date of 2030): 10-10-2076
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