Junior Data Analyst

Austin Fraser International Ltd
London
8 months ago
Applications closed

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Role: Junior Data Analyst Location: London Rate: £200-£240 (Inside IR35) Duration: 3 month initial contract Currently on the lookout for an Junior Data Analyst to join an exciting brand and to take a lead on a pivotal 3 month project. This role will suit someone who is confident, driven, autonomous and has excellent stakeholder management. Our client is ideally looking for someone to start September for an upcoming project and who would be able to hit the ground running from day one. Essential Must have hands-on Python scripting and for data extraction experience. Must be willing to go to the office 1 days a week Must have specialist knowledge with Python scripting, Pandas for data manipulation & Expertise in web scraping. Must be able to work closely and own relationships with internal and external stakeholders across the business. If interested please submit your CV and call Chris Thorpe Austin Fraser is committed to being an equal opportunities employer, and encourages applications from candidates regardless of sex, race, disability, age, sexual orientation, gender reassignment, religion or belief, marital status, or pregnancy and maternity status. Due to the volume of applications received, we are unable to provide individual feedback to unsuccessful applicants. Check us out on our website and LinkedIn for more roles. We respect your personal data and would never offer it to third parties For more information on how we handle your data, feel free to check out the Austin Fraser Privacy Notice or contact privacyaustinfraser.com Austin Fraser International Ltd is registered in England: 14971372 Austin Fraser International Ltd, 33 Soho Square, London, W1D 3QU

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