Rachit Patel

Distributed by:

Issued to

Rachit Patel

Want to report a typo or a mistake?

Credential Verification

Issue date: April 17, 2026

ID: 0ae6f33c-b754-4021-b232-8af6cbac0066

Issued by

Hireyy

Type

Certification

Level

Advanced

Format

Online

Duration

4 months

Price

Paid

Description

A Certified Data Analyst Professional A Certified Data Analyst Professional is a highly skilled individual equipped with strong analytical, technical, and problem-solving abilities. They possess hands-on experience in data collection, data wrangling, statistical analysis, and data visualization using modern tools and technologies. They enable organizations to make data-driven decisions by transforming complex datasets into meaningful insights. They demonstrate a comprehensive understanding of the data analytics ecosystem, including data types, file formats, data repositories, and architectures such as RDBMS, NoSQL, data lakes, and ETL pipelines. They are proficient in identifying relevant data sources, gathering, importing, and performing data wrangling techniques such as cleaning, preparation, and ensuring data reliability. They possess strong programming skills in Python, including data structures, loops, functions, exception handling, and object-oriented programming. They utilize libraries like NumPy and Pandas for efficient data manipulation and analysis. They are also capable of extracting data through APIs, REST services, and web scraping techniques. The professional demonstrates expertise in SQL, including DDL and DML operations, joins, subqueries, grouping, and working with multiple tables, along with a solid understanding of relational database concepts and database connectivity. They apply data preprocessing techniques such as handling missing values, normalization, binning, and transforming categorical data. They perform exploratory data analysis using descriptive statistics, correlation, and group-based analysis to identify patterns and trends. They are skilled in model development, including linear and multiple regression, and apply model evaluation techniques to address overfitting and improve performance. They create visualizations using tools such as Matplotlib and Seaborn, and build interactive dashboards using Plotly and Dash. They effectively communicate insights through data storytelling and support strategic business decision-making through data-driven analysis.

Skills

Python (Programming Language)

Matplotlib (Python Package)

Seaborn

NumPy (Python Package)

Pandas (Python Package)

PyTorch (Machine Learning Library)

Power BI

ExcelPackage

SQL (Programming Language)

SQL Injection

Exception Handling