Data Analyst Intern

Pimlico
10 months ago
Applications closed

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Company Description

AnxietEase is a dynamic consulting group dedicated to bridging the gap between education and industry. We provide hands-on training programs that equip aspiring professionals with real-world skills, mentorship, and exposure to industry projects, empowering them to thrive in today’s competitive business landscape.

Role Description

This is a part-time remote internship role for a Data Analyst Intern at AnxietEase in London Area, United Kingdom. The Data Analyst Intern will assist in gathering, analysing, and interpreting data to support decision-making processes across various business functions.

Qualifications



Strong analytical and problem-solving skills

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Proficiency in data analysis tools (Excel, SQL, Power BI, etc.)

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Knowledge of data visualization techniques and tools

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Understanding of business processes and decision-making

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Attention to detail and accuracy

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Ability to gather, clean, and interpret data sets

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Strong communication skills

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Currently pursuing or completed a degree in Data Science, Computer Science, Business Analytics, or a related field

What You’ll Gain

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Practical Experience: Work on real-world data analysis projects for AnxietEase and multinational collaborations.

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Mentorship: Receive personalized guidance and feedback from experienced data analysts and mentors.

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Certifications: Earn up to four certifications, including internship completion and excellence awards.

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Networking Opportunities: Connect with industry experts and peers.

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Flexibility: Fully remote program with a customizable schedule to balance your commitments.

Your Role

As a Data Analyst Intern, you will:

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Assist in collecting, cleaning, and organizing large datasets from various business functions.

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Analyze data to identify trends, patterns, and insights that support business decisions.

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Create data visualizations and dashboards to present findings effectively.

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Collaborate with cross-functional teams to provide data-driven recommendations.

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Participate in weekly review sessions to improve your skills and understanding of data analysis in a business context.

Program Highlights

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Duration: 4 weeks

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Schedule: Flexible

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Mode: 100% remote

Eligibility

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Open to undergraduates, recent graduates, or professionals seeking to pivot into data analytics.

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Strong analytical, problem-solving, and communication skills are preferred.

Application Process

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Submit your CV and answer assessment questions designed to evaluate your potential and alignment with the program.

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Participate in a competency assessment.

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Upon successful evaluation, wait for the decision

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