Data Collection: Sourcing data from various internal and external databases, APIs, or through manual collection.
Data Cleaning: Processing and preparing data for analysis, which may include handling missing values, removing duplicates, or normalizing formats.
Exploratory Data Analysis (EDA): Analyzing datasets to summarize their main characteristics, often using visual methods to identify patterns and outliers.
Model Development: Creating predictive models using machine learning techniques, including supervised and unsupervised learning algorithms.
Data Visualization: Presenting data and analysis results in a clear and visually appealing manner to stakeholders, using tools like Tableau, Matplotlib, or Power BI.
Communication: Translating complex data-related findings into actionable insights for non-technical stakeholders.
Changes saved
0.0 · 0 Reviews
Reviews
No reviews to see here!
Verifications
Invite sent successfully!
Thanks! We’ve emailed you a link to claim your free credit.
Something went wrong while sending your email. Please try again.