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Senior Data Scientist at Equity Bank
2025-06-06T09:36:12+00:00
Equity Bank
https://cdn.greatkenyanjobs.com/jsjobsdata/data/employer/comp_7833/logo/Equity%20Bank.png
FULL_TIME
 
Nairobi
Nairobi
00100
Kenya
Banking
Computer & IT
KES
 
MONTH
2025-06-20T17:00:00+00:00
 
Kenya
8

Senior Data Scientist at Equity Bank Kenya

Equity Bank Limited (The "Bank”) is incorporated, registered under the Kenyan Companies Act Cap 486 and domiciled in Kenya. The address of the Bank’s registered office is 9th Floor, Equity Centre, P.O. Box 75104 - 00200 Nairobi. The Bank is licensed under the Kenya Banking Act (Chapter 488), and continues to offer retail banking, microfinance

Reporting to Head Data Science, the Senior Data Scientist will apply data mining techniques and conduct statistical analysis to large, structured and unstructured data sets to understand and analyse phenomena. Model complex business problems, discovering insights and opportunities through statistical, algorithmic, machine learning and visualisation techniques, working closely with clients, data and technology teams to turn data into critical information used to make sound business decisions. Execute intelligent automation and predictive modelling.

Responsibilities of the Senior Data Scientist:

  • Direct the gathering of data for use in Data Science models, ensuring that chosen datasets best reflect the organisations goals.
  • Perform data pre-processing including data manipulation, transformation, normalisation, standardisation, visualisation and derivation of new variables/features.
  • Utilise advanced data analytics and mining techniques to analyse data, assessing data validity and usability; reviews data results to ensure accuracy; and communicates results and insights to stakeholders.
  • Designs various mathematical, statistical, and simulation techniques to typically large and unstructured data sets in order to answer critical business questions and create predictive solutions which drive improvement in business outcomes. Drives analytics and insights across the organisation by developing advanced statistical models and computational algorithms based on business initiatives
  • Use data profiling and visualisation techniques using tools to understand and explain data characteristics that will inform modelling approaches. Communicate data information to business with various skill levels and in various roles, presenting trends, correlations and patterns found in complicated datasets in a manner that clearly and concisely conveys meaningful insights and defend recommendations.
  • Create, maintain and optimise modelling solutions that enable the forecast of quality data outcomes. Ensures that volumetric predictions are modelled so that resource requirements are optimally considered. Develops and maintains optimal evaluation techniques to ensure that modelled outcomes are rigorous and creates model performance tracking. Drives sustainable and effective modelling solutions.
  • Provide input into Data management and modelling infrastructure requirements and adheres to the organisation’s infrastructure development processes, including the management of User Acceptance Testing (UAT). Conducts regression testing across all relevant systems as required.
  • Build machine learning models from and utilises distributed data processing and analysis methodologies. Competent in Machine Learning programming in R or Python, with supplementary still in Matlab, Java, etc. Familiar with the Hadoop distributed computational platform, including broader ecosystem of tools such as HDFS / Spark / Kafka
  • Act as a subject matter expert from a data science perspective and provides input into all decisions relating to data science and the use thereof. Educate the organisation on data science perspectives on new approaches, such as testing hypotheses and statistical validation of results. Ensure ongoing knowledge of industry standards as well as best practice and identify gaps between these definitions/data elements and organisation data elements/definitions

Qualifications and Experience:

  • Degree in Statistics, Machine Learning, Mathematics, Computer Science, Economics, or any other related quantitative field.
  • 5-7 years’ experience in working with unstructured data (e.g. Streams, images) Understanding of data flows, data architecture, ETL and processing of structured and unstructured data. Using data mining to discover new patterns from large datasets. Implement standard and proprietary algorithms for handling and processing data. Experience with common data science toolkits, such as SAS, R, SPSS, etc. Experience with data visualisation tools, such as Power BI, Tableau, etc.
  • Proficiency in application and web development. Structured and Unstructured Query languages e.g. SQL, Power BI; QlikView; Tableau; SSIS SSRS, R, Python, JSON , C#, Java, C++, HTML
  • Proven development experience in software and software engineering. Understanding of financial services data processes, systems, and products. Experience in technical business intelligence. Knowledge of IT infrastructure and data principles.
  • Project management experience. Exposure to governance and regulatory matters as it relates to data. Experience in building models (credit scoring, propensity models, churn, etc.).
  • The candidate must also have a proven and successful experience track record of leading high-performing data analyst teams leading through the successful performance of advanced quantitative analyses and statistical modelling that positively impact business performance.
  • A suitable candidate will also have had experience working with and influencing and possess vast experience and expertise with probability and statistics, inclusive of machine learning, experimental design, and optimization. As a bonus he will also have had experience working with Hadoop.
  • Communication Skills: Communication skills will also be a necessity for the Senior Data Scientist. He must be able to convey important messages and information down the line in order to ensure proper exception of duties by junior data science personnel.
  • Ms Office/Software: Outstanding skills in the use of Ms Word, Ms Excel, PowerPoint, and Outlook, which will all be necessary for the creation of both visually and verbally engaging reports and presentations, for senior data science management, executives, and stakeholders.
  • The candidate must also demonstrate exceptionally good skills in SQL server reporting services, analysis services, Tableau, integration services, Salesforce, or any other data visualization tools.
  • Technological Savvy/Analytical Skills: Technologically adept and especially demonstrate an understanding of database and computer software.
  • Interpersonal Skills: A suitable candidate for this position will be a team-builder, be result-oriented, be proactive and self-driven requiring minimal supervision, be open and welcoming to change, be a creative and strategic thinker, have innovative problem-solving skills, be highly organized, have an ability to handle multiple simultaneous tasks prioritize and meet tight deadlines, and demonstrate calmness in times of uncertainty and stress.
  • People Skills: A people person who is able to form strong, lasting, and meaningful bonds with other people. This will make him/her an approachable and trustworthy individual who junior personnel readily follow and who Data and Analytics colleagues and stakeholders trust and who’s insights they give credit to, making execution of his duties that much easier
Direct the gathering of data for use in Data Science models, ensuring that chosen datasets best reflect the organisations goals. Perform data pre-processing including data manipulation, transformation, normalisation, standardisation, visualisation and derivation of new variables/features. Utilise advanced data analytics and mining techniques to analyse data, assessing data validity and usability; reviews data results to ensure accuracy; and communicates results and insights to stakeholders. Designs various mathematical, statistical, and simulation techniques to typically large and unstructured data sets in order to answer critical business questions and create predictive solutions which drive improvement in business outcomes. Drives analytics and insights across the organisation by developing advanced statistical models and computational algorithms based on business initiatives Use data profiling and visualisation techniques using tools to understand and explain data characteristics that will inform modelling approaches. Communicate data information to business with various skill levels and in various roles, presenting trends, correlations and patterns found in complicated datasets in a manner that clearly and concisely conveys meaningful insights and defend recommendations. Create, maintain and optimise modelling solutions that enable the forecast of quality data outcomes. Ensures that volumetric predictions are modelled so that resource requirements are optimally considered. Develops and maintains optimal evaluation techniques to ensure that modelled outcomes are rigorous and creates model performance tracking. Drives sustainable and effective modelling solutions. Provide input into Data management and modelling infrastructure requirements and adheres to the organisation’s infrastructure development processes, including the management of User Acceptance Testing (UAT). Conducts regression testing across all relevant systems as required. Build machine learning models from and utilises distributed data processing and analysis methodologies. Competent in Machine Learning programming in R or Python, with supplementary still in Matlab, Java, etc. Familiar with the Hadoop distributed computational platform, including broader ecosystem of tools such as HDFS / Spark / Kafka Act as a subject matter expert from a data science perspective and provides input into all decisions relating to data science and the use thereof. Educate the organisation on data science perspectives on new approaches, such as testing hypotheses and statistical validation of results. Ensure ongoing knowledge of industry standards as well as best practice and identify gaps between these definitions/data elements and organisation data elements/definitions
 
Degree in Statistics, Machine Learning, Mathematics, Computer Science, Economics, or any other related quantitative field. 5-7 years’ experience in working with unstructured data (e.g. Streams, images) Understanding of data flows, data architecture, ETL and processing of structured and unstructured data. Using data mining to discover new patterns from large datasets. Implement standard and proprietary algorithms for handling and processing data. Experience with common data science toolkits, such as SAS, R, SPSS, etc. Experience with data visualisation tools, such as Power BI, Tableau, etc. Proficiency in application and web development. Structured and Unstructured Query languages e.g. SQL, Power BI; QlikView; Tableau; SSIS SSRS, R, Python, JSON , C#, Java, C++, HTML Proven development experience in software and software engineering. Understanding of financial services data processes, systems, and products. Experience in technical business intelligence. Knowledge of IT infrastructure and data principles. Project management experience. Exposure to governance and regulatory matters as it relates to data. Experience in building models (credit scoring, propensity models, churn, etc.). The candidate must also have a proven and successful experience track record of leading high-performing data analyst teams leading through the successful performance of advanced quantitative analyses and statistical modelling that positively impact business performance. A suitable candidate will also have had experience working with and influencing and possess vast experience and expertise with probability and statistics, inclusive of machine learning, experimental design, and optimization. As a bonus he will also have had experience working with Hadoop. Communication Skills: Communication skills will also be a necessity for the Senior Data Scientist. He must be able to convey important messages and information down the line in order to ensure proper exception of duties by junior data science personnel. Ms Office/Software: Outstanding skills in the use of Ms Word, Ms Excel, PowerPoint, and Outlook, which will all be necessary for the creation of both visually and verbally engaging reports and presentations, for senior data science management, executives, and stakeholders. The candidate must also demonstrate exceptionally good skills in SQL server reporting services, analysis services, Tableau, integration services, Salesforce, or any other data visualization tools. Technological Savvy/Analytical Skills: Technologically adept and especially demonstrate an understanding of database and computer software. Interpersonal Skills: A suitable candidate for this position will be a team-builder, be result-oriented, be proactive and self-driven requiring minimal supervision, be open and welcoming to change, be a creative and strategic thinker, have innovative problem-solving skills, be highly organized, have an ability to handle multiple simultaneous tasks prioritize and meet tight deadlines, and demonstrate calmness in times of uncertainty and stress. People Skills: A people person who is able to form strong, lasting, and meaningful bonds with other people. This will make him/her an approachable and trustworthy individual who junior personnel readily follow and who Data and Analytics colleagues and stakeholders trust and who’s insights they give credit to, making execution of his duties that much easier
bachelor degree
60
JOB-6842b68c63d63

Vacancy title:
Senior Data Scientist at Equity Bank

[Type: FULL_TIME, Industry: Banking, Category: Computer & IT]

Jobs at:
Equity Bank

Deadline of this Job:
Friday, June 20 2025

Duty Station:
Nairobi | Nairobi | Kenya

Summary
Date Posted: Friday, June 6 2025, Base Salary: Not Disclosed

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JOB DETAILS:
Senior Data Scientist at Equity Bank Kenya
Equity Bank Limited (The "Bank”) is incorporated, registered under the Kenyan Companies Act Cap 486 and domiciled in Kenya. The address of the Bank’s registered office is 9th Floor, Equity Centre, P.O. Box 75104 - 00200 Nairobi. The Bank is licensed under the Kenya Banking Act (Chapter 488), and continues to offer retail banking, microfinance

Reporting to Head Data Science, the Senior Data Scientist will apply data mining techniques and conduct statistical analysis to large, structured and unstructured data sets to understand and analyse phenomena. Model complex business problems, discovering insights and opportunities through statistical, algorithmic, machine learning and visualisation techniques, working closely with clients, data and technology teams to turn data into critical information used to make sound business decisions. Execute intelligent automation and predictive modelling.

Responsibilities of the Senior Data Scientist:

  • Direct the gathering of data for use in Data Science models, ensuring that chosen datasets best reflect the organisations goals.
  • Perform data pre-processing including data manipulation, transformation, normalisation, standardisation, visualisation and derivation of new variables/features.
  • Utilise advanced data analytics and mining techniques to analyse data, assessing data validity and usability; reviews data results to ensure accuracy; and communicates results and insights to stakeholders.
  • Designs various mathematical, statistical, and simulation techniques to typically large and unstructured data sets in order to answer critical business questions and create predictive solutions which drive improvement in business outcomes. Drives analytics and insights across the organisation by developing advanced statistical models and computational algorithms based on business initiatives
  • Use data profiling and visualisation techniques using tools to understand and explain data characteristics that will inform modelling approaches. Communicate data information to business with various skill levels and in various roles, presenting trends, correlations and patterns found in complicated datasets in a manner that clearly and concisely conveys meaningful insights and defend recommendations.
  • Create, maintain and optimise modelling solutions that enable the forecast of quality data outcomes. Ensures that volumetric predictions are modelled so that resource requirements are optimally considered. Develops and maintains optimal evaluation techniques to ensure that modelled outcomes are rigorous and creates model performance tracking. Drives sustainable and effective modelling solutions.
  • Provide input into Data management and modelling infrastructure requirements and adheres to the organisation’s infrastructure development processes, including the management of User Acceptance Testing (UAT). Conducts regression testing across all relevant systems as required.
  • Build machine learning models from and utilises distributed data processing and analysis methodologies. Competent in Machine Learning programming in R or Python, with supplementary still in Matlab, Java, etc. Familiar with the Hadoop distributed computational platform, including broader ecosystem of tools such as HDFS / Spark / Kafka
  • Act as a subject matter expert from a data science perspective and provides input into all decisions relating to data science and the use thereof. Educate the organisation on data science perspectives on new approaches, such as testing hypotheses and statistical validation of results. Ensure ongoing knowledge of industry standards as well as best practice and identify gaps between these definitions/data elements and organisation data elements/definitions

Qualifications and Experience:

  • Degree in Statistics, Machine Learning, Mathematics, Computer Science, Economics, or any other related quantitative field.
  • 5-7 years’ experience in working with unstructured data (e.g. Streams, images) Understanding of data flows, data architecture, ETL and processing of structured and unstructured data. Using data mining to discover new patterns from large datasets. Implement standard and proprietary algorithms for handling and processing data. Experience with common data science toolkits, such as SAS, R, SPSS, etc. Experience with data visualisation tools, such as Power BI, Tableau, etc.
  • Proficiency in application and web development. Structured and Unstructured Query languages e.g. SQL, Power BI; QlikView; Tableau; SSIS SSRS, R, Python, JSON , C#, Java, C++, HTML
  • Proven development experience in software and software engineering. Understanding of financial services data processes, systems, and products. Experience in technical business intelligence. Knowledge of IT infrastructure and data principles.
  • Project management experience. Exposure to governance and regulatory matters as it relates to data. Experience in building models (credit scoring, propensity models, churn, etc.).
  • The candidate must also have a proven and successful experience track record of leading high-performing data analyst teams leading through the successful performance of advanced quantitative analyses and statistical modelling that positively impact business performance.
  • A suitable candidate will also have had experience working with and influencing and possess vast experience and expertise with probability and statistics, inclusive of machine learning, experimental design, and optimization. As a bonus he will also have had experience working with Hadoop.
  • Communication Skills: Communication skills will also be a necessity for the Senior Data Scientist. He must be able to convey important messages and information down the line in order to ensure proper exception of duties by junior data science personnel.
  • Ms Office/Software: Outstanding skills in the use of Ms Word, Ms Excel, PowerPoint, and Outlook, which will all be necessary for the creation of both visually and verbally engaging reports and presentations, for senior data science management, executives, and stakeholders.
  • The candidate must also demonstrate exceptionally good skills in SQL server reporting services, analysis services, Tableau, integration services, Salesforce, or any other data visualization tools.
  • Technological Savvy/Analytical Skills: Technologically adept and especially demonstrate an understanding of database and computer software.
  • Interpersonal Skills: A suitable candidate for this position will be a team-builder, be result-oriented, be proactive and self-driven requiring minimal supervision, be open and welcoming to change, be a creative and strategic thinker, have innovative problem-solving skills, be highly organized, have an ability to handle multiple simultaneous tasks prioritize and meet tight deadlines, and demonstrate calmness in times of uncertainty and stress.
  • People Skills: A people person who is able to form strong, lasting, and meaningful bonds with other people. This will make him/her an approachable and trustworthy individual who junior personnel readily follow and who Data and Analytics colleagues and stakeholders trust and who’s insights they give credit to, making execution of his duties that much easier

 

Work Hours: 8

Experience in Months: 60

Level of Education: bachelor degree

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Job Info
Job Category: Data, Monitoring, and Research jobs in Kenya
Job Type: Full-time
Deadline of this Job: Friday, June 20 2025
Duty Station: Nairobi, Kenya
Posted: 06-06-2025
No of Jobs: 1
Start Publishing: 06-06-2025
Stop Publishing (Put date of 2030): 20-06-2025
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