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🧪Data Scientist

Data Scientist

Agilebridge · Pretoria, South Africa
// classified as
Data Scientist (Modeling, experiments, research.)
posted
3d ago
location
Pretoria, South Africa
languages
tools
aws, azure
> stack
awsazure
> description

The Role Purpose: 

We are seeking a Data Scientist to join our team, with a primary focus on analysing complex datasets, developing predictive and statistical models, and generating actionable insights that enable smarter business decisions. 

The successful candidate will combine strong analytical and problem-solving capabilities with practical experience in machine learning, statistical modelling, and data-driven decision-making. This role focuses on leveraging data to solve business challenges through forecasting, predictive analytics, and advanced modelling techniques. 

The successful candidate will play a key role in helping the organisation unlock value from its data and build scalable analytical solutions that drive business outcomes. 


Your Responsibilities will include: 

  • Analyse large and complex datasets to identify trends, patterns, and opportunities for business improvement. 
  • Develop, test, and deploy predictive and statistical models to solve business problems. 
  • Build and maintain data models that support business intelligence and decision-making initiatives. 
  • Design and implement machine learning solutions for use cases such as customer churn prediction, fraud detection, forecasting, and customer segmentation. 
  • Prepare, clean, and transform structured and unstructured data for analysis and modelling. 
  • Conduct exploratory data analysis and communicate findings and recommendations to stakeholders. 
  • Develop and maintain reporting, dashboards, and analytical solutions that provide actionable insights. 
  • Monitor, evaluate, and improve the performance and accuracy of predictive models. 
  • Collaborate with business stakeholders to understand requirements and translate them into data-driven solutions. 
  • Work closely with Data Engineers and technology teams to ensure data quality, accessibility, and governance. 
  • Document methodologies, assumptions, and analytical processes to ensure repeatability and knowledge sharing. 
  • Stay informed of emerging technologies and best practices within Data Science and analytics. 


The ideal candidate for the role will have the following qualifications, experience and knowledge: 

Educational Background: 

  • Bachelor's Degree in Computer Science, Data Science, Statistics, Mathematics, Engineering, Information Technology, or a related quantitative field. 
  • Postgraduate qualification in Data Science, Applied Mathematics, Statistics, Machine Learning, or Artificial Intelligence is advantageous. 
  • Relevant certifications in Data Science, Machine Learning, or cloud platforms are advantageous. 

Work Experience: 

  • 3–5 years of experience as a Data Scientist delivering analytical and predictive solutions in production environments. 
  • Proven experience developing and deploying machine learning and statistical models to solve business problems. 
  • Experience working with large datasets and building data-driven solutions that deliver measurable business value. 
  • Experience collaborating with cross-functional teams and translating business requirements into analytical solutions. 
  • Exposure to cloud-based data platforms and modern data ecosystems is advantageous. 

Knowledge: 

  • Strong understanding of machine learning algorithms, statistical modelling techniques, and predictive analytics. 
  • Knowledge of data preparation, feature engineering, and model evaluation methodologies. 
  • Understanding of data modelling principles and analytical frameworks. 
  • Familiarity with data governance, data quality, and best practices for handling enterprise data. 
  • Exposure to Generative AI technologies and Retrieval-Augmented Generation (RAG) concepts is advantageous but not required. 


Technical Skills: 

Data Science & Analytics 

  • Python for data analysis and machine learning. 
  • SQL and relational databases. 
  • Statistical modelling and predictive analytics. 
  • Data wrangling, cleansing, and feature engineering. 
  • Data visualisation and reporting. 

Machine Learning 

  • Supervised and unsupervised learning techniques. 
  • Model evaluation and performance optimisation. 
  • Forecasting and predictive modelling. 
  • Classification and regression techniques. 

Data Platforms & Tools 

  • Experience with cloud data platforms such as Azure, AWS, or GCP is advantageous. 
  • Experience with data warehouses such as Snowflake, BigQuery, or similar platforms is advantageous. 
  • Familiarity with notebooks and analytical tools such as Jupyter. 

AI & Emerging Technologies (Advantageous) 

  • Exposure to Large Language Models (LLMs) and Generative AI concepts. 
  • Familiarity with Retrieval-Augmented Generation (RAG) principles. 
  • Exposure to frameworks such as LangChain is advantageous but not required. 

Engineering & Delivery 

  • Strong problem-solving and analytical thinking capabilities. 
  • Ability to communicate technical concepts and insights to both technical and non-technical stakeholders. 
  • Experience working in Agile delivery environments. 
  • Strong documentation and presentation skills.