Moniepoint is a financial technology company digitising Africa’s real economy by building a financial ecosystem for businesses, providing them with all ...
We’re a health insurance company that acts like a technology company. We’re using software, data science and telemedicine to make health insurance ...
Great Brands Nigeria Ltd. is a World-Class, People Orientated, Performance Driven, Sales and Distribution Company. We are the leading consumer goods ...
Expertise & Experience for best results. Building Africa’s economy through innovative technology solutions.Responsibilities: Data Handling: Collect, ...
At Data2Bots, we build secure and scalable data solutions in the cloud, helping businesses make informed decisions off their data. Our solutions are driven ...
Revent Technologies Limited is a technology solutions provider for dynamic organizations, providing bespoke software design and development, developer ...
Trigyn Technologies is an innovative solutions provider and systems integrator that has been in business for 30 years with more than 1,500 resources deployed ...
To Lead In Attracting, Developing and Retaining Superior Human Capital That Creates a Dramatic Business Advantage for Our Clients. OUR VISION The Vision is to ...
Proten is an international Human Capital Development firm that offers a wide range of Training, Coaching and Consulting services to individuals, small ...
Seedstars Academy is an initiative launched by Seedstars, the company builder, supported by our Seedstars World network & our co-working space ...
M-KOPA is a fast-growing FinTech company offering millions of underbanked customers across Africa access to life-enhancing products and services. From our ...
Established in 2007, Accion Microfinance Bank has a mission, "To economically empower micro-entrepreneurs and low-income earners by providing financial ...
Turing.com allows U.S. and Silicon Valley companies to hire senior pre-vetted remote developers who have robust technical & communication skills and work in ...
Established in 2007, Accion Microfinance Bank has a mission, "To economically empower micro-entrepreneurs and low-income earners by providing financial ...
Licht Tech Limited, a Competency Enrichment and Skills Development Company is committed to empowering individuals and organisations with capacity building ...
At Data2Bots, we build secure and scalable data solutions in the cloud, helping businesses make informed decisions off their data. Our solutions are driven ...
A Data Scientist is a skilled professional who uses modern tools and techniques to develop solutions for companies based on the business challenges and opportunities available. With the use of statistical methods, data visualization techniques and machine learning algorithms, they can build predictive models and solve complex problems.
Data Scientists derive meaningful information from messy and unstructured data. They also communicate important information and insights to business leaders and various stakeholders.
Simply put, a data analyst makes sense out of existing data, whereas a data scientist works on new ways of capturing and analyzing data to be used by the analysts.
A Data Scientist develops algorithms and data models customized to their unique industry based on where the business would like to improve efficiency, service and brand reach.
A Data Scientist automates tedious tasks and generates insights using machine learning models.
A Data Scientist uses predictive analytics to better understand customer behaviour and preferences, ad performance, and other customer-facing metrics so the business can generate more revenue.
A Data Scientist creates suitable and personalized A/B testing frameworks. They use this to compare the performance of different features, such as logo designs. These frameworks reduce any type of bias or statistical errors and maximize the value of the test outcome.
A Data Scientist analyzes new data sources. They try to understand how the new data source fits into preexisting customer and statistical models and how it affects business analytics.
Expertise in all phases of data science, from initial data discovery through data cleansing and model selection, validation and deployment;
Knowledge and understanding of common data warehouse and data lake structures;
Experience with using statistical approaches to solve analytics problems;
Proficiency in popular machine learning frameworks;
Familiarity with common data science and machine learning techniques, such as decision trees, K-nearest neighbours, naive Bayes classifiers, random forests and support vector machines;
Experience with techniques for both qualitative and quantitative analysis;
The ability to identify new opportunities to apply machine learning and data mining tools to business processes to improve their efficiency and effectiveness;
Experience with public cloud platforms and services;
Familiarity with a wide variety of data sources, including databases and big data platforms, as well as public or private APIs and standard data formats, like JSON, YAML and XML;
The ability to aggregate data from disparate sources and prepare it for analysis;
Experience with data visualization tools, such as Tableau and Power BI;
The ability to design and implement reporting dashboards that can track key business metrics and provide actionable insights; and
The ability to do ad hoc analysis and present the results in a clear manner.