Junior Data Analyst

Hawkroot
Oxford
3 days ago
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Company Overview

Hawkroot is a dynamic staffing and consulting firm focused on connecting businesses with top-tier talent for data, technology, and operational projects. Our team works closely with clients to deliver results through analytics, business intelligence, and automation solutions. We are passionate about supporting emerging professionals and empowering businesses with the data-driven insights they need to thrive.


Role Summary

Hawkroot is offering a Junior Data Analyst position for motivated individuals. This remote, part-time role is designed for recent graduates or junior professionals who want to gain practical experience in data analysis. Over the course of this internship, you will work on live projects, develop technical skills, and contribute directly to client deliverables in a supportive, hands-on environment.


Key Responsibilities

  • Collect, clean, and process data from various sources.
  • Perform data analysis and visualisation using Excel, SQL, and Python.
  • Create dashboards, reports, and visualisations to communicate data insights.
  • Support business decisions by identifying patterns and trends in datasets.
  • Collaborate with senior analysts and project leads on tasks and deliverables.
  • Document analysis processes and results clearly for stakeholders.


Required Qualifications

  • Recent graduate or early professional with a background in Data Science, Statistics, Computer Science, or Business Analytics.
  • Strong proficiency in Excel; basic knowledge of SQL or Python.
  • Strong analytical skills with the ability to interpret and transform data.
  • Excellent communication skills and the ability to work independently.


Preferred Skills

  • Experience with Power BI, Tableau, or other data visualisation tools.
  • Understanding of statistical analysis, predictive modelling, or machine learning techniques.
  • Previous internship or project-based experience in data analysis or reporting.


Benefits and Perks

Paid role at £16 per hour.

20 hours per week, .Monday–Friday.

Fully remote role.

Flexible working hours to accommodate study or other commitments.


Position Details

Location: Remote

Job Type: Part-Time

Compensation: £16 per hour

Hours: 20 hours per wee

Schedule: Monday–Friday, flexible working hours


Equal Opportunity Statement

Hawkroot is an equal opportunity employer. We embrace diversity and strive to create an inclusive environment for all employees, regardless of race, gender, religion, age, or disability. We believe that innovation thrives when diverse perspectives are valued.

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