Machine Learning Engineer

The Big Phone Store UK
Wolverhampton
3 weeks ago
Applications closed

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Machine Learning Engineer

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Machine Learning Engineer

Machine Learning Engineer – Hybrid Role
Location: Wolverhampton (Hybrid)
Salary: Starting at £25,000 per year
Full-Time Position

Are you passionate about AI and machine learning, and eager to apply your skills to real-world business challenges? We’re looking for a talented Machine Learning Engineer to join our team and help drive innovation in the fast-growing refurbished phone industry. This is an exciting opportunity to work on cutting-edge projects, collaborate with a forward-thinking team, and make a tangible impact on our business.

Key Responsibilities:


• Develop & Implement Models: Design and build machine learning models to optimize various aspects of our business, from inventory management to customer insights.

• Present Insights: Clearly communicate AI-driven insights and solutions to stakeholders at all levels, turning complex data into actionable business strategies.

• Collaborate Across Teams: Work closely with stakeholders from different departments to identify key business areas where AI can add value and improve efficiency.

• Foster Positive Team Culture: Contribute to a collaborative and humble working environment, sharing knowledge and learning from others.

Requirements:

• Strong Knowledge of AI & Machine Learning: Solid understanding of machine learning algorithms, data structures, and model development.

• Excellent Communication Skills: Ability to present complex ideas in a clear and concise way to both technical and non-technical stakeholders.

• Team-Oriented: Collaborative mindset with a passion for working with diverse teams and contributing to a positive work environment.

• Data-Driven Passion: A strong analytical background or deep passion for working with data to solve business problems.

• Results-Oriented: Self-motivated with a positive attitude and a strong sense of urgency to deliver solutions.

• Hungry for Growth: A proactive mindset and eagerness to take on challenges and make an impact.

Why Join Us?

• Be part of an innovative company at the forefront of the refurbished phone industry, using AI to drive business growth and operational efficiency.

• Join a supportive, creative, and dynamic team that thrives on collaboration and continuous learning.

• With mentorship, hands-on experience, and room for career development, you’ll have the chance to take your skills to the next level.

Company Perks:

• Permanent Role: A stable, long-term career with room to grow.
• Work-Life Balance: Flexible working hours and the ability to work from home.

• Employee Wellbeing: Sick pay, birthday off (paid!), and additional holidays for every year of service.

• Perks: Staff discounts, social events, free onsite parking, and a pension scheme.

• A Culture of Growth: Mentorship, training, and career advancement opportunities.

• Commitment to Diversity: We are an equal opportunities employer, committed to diversity, equality, and inclusion since 1999.


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