Lead Operator and Data Analyst Assistant

South East London
1 month ago
Applications closed

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Lead Operator

Lead Operator - London - Earn up to £16/h - Apply Now!

At Job&Talent, we are seeking an experienced and dynamic Lead Operator to manage a diverse team of 6 drivers and 7 decay hunters/investigators/cyclists. In this role, you will be responsible for ensuring efficient team performance, coordinating shift schedules, and ensuring uptime targets are consistently met. You will also have a strategic focus on understanding the market impact of tasks and driving operational excellence across the team

Shift Patterns:

  • Tuesday to Saturday - 8am-5pm

    Pay Rates:

  • £16/h

    As an Lead Operator, you will need to have:

    Proven experience in operations management, preferably in a similar leadership role.
    Strong leadership skills with experience managing teams and driving performance.
    Ability to develop and manage shift schedules while ensuring operational needs are met.
    Strong problem-solving and decision-making abilities.
    Understanding of market dynamics and how operational tasks impact broader business goals.
    Excellent communication skills and the ability to work effectively with cross-functional teams.
    A flexible, adaptable approach to working hours and tasks.
    Ability to handle high-pressure situations and meet operational targets.

    Role of an Lead Operator and Data Analyst Assistant:

    Team Management: Supervise, lead, and support a team of 6 drivers and 7 decay hunters/investigators, ensuring tasks are executed efficiently and safely.
    Shift Planning: Develop and manage shift schedules, ensuring optimal coverage and resource allocation while providing flexibility to accommodate team needs.
    Performance Management: Monitor individual and team performance, providing feedback, guidance, and support to meet operational goals. Conduct performance reviews and facilitate training and development to improve skills and productivity.
    Uptime Management: Ensure uptime targets are met consistently, working closely with the team to resolve any issues that may cause delays or disruptions.
    Market Impact Analysis: Understand the impact of team tasks on the broader market, ensuring operations align with business objectives and market demands.
    Problem-Solving: Proactively address and resolve operational challenges, making adjustments as needed to maintain smooth operations.
    Collaboration: Work closely with other departments and stakeholders to ensure the smooth flow of operations and communicate any potential disruptions or improvements.
    Reporting: Regularly report team performance, uptime, and market impact to upper management, highlighting any key issues or opportunities for improvement.

    Benefits of working with us as an Lead Operator and Data Analyst Assistant:

    Opportunity to contribute to a startup's growth
    Work alongside a vibrant and motivated team
    40 hours per week with potential for overtime paid at regular rates
    28 days of holidays
    Opportunities for professional development and advancement
    Weekly compensation
    Pension Scheme
    Mortgage references

    Location: London

    Duration: Ongoing

    This is an amazing opportunity if you are looking for Lead Operator jobs in London

    Sign your contract with Job&Talent for some great working benefits and professional stability.

    If you are interested in the above role please click apply and one of our team members will get in touch with you shortly!

    If you are looking to contact our onsite team, please visit the site locator on our website.

    Job&Talent do NOT charge any fees for our services.

    Job&Talent acts as an employment agency for permanent recruitment and employment business for the supply of temporary workers

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