Data Analytics Campaign Portfolio Manager

Doncaster
1 year ago
Applications closed

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Role: Data Analytics Campaign Portfolio Manager

Location: Doncaster, South Yorkshire 

Salary: Circa £50,000

Contract: Permanent 

Multitask Personnel is hiring for a permanent, full-time Data Analytics Campaign Portfolio Manager based in Doncaster. Our client, a leader in innovative energy solutions, is advancing the UK’s smart energy transformation and decarbonization goals.

Data Analytics Campaign Portfolio Manager Role Overview:

The Portfolio Manager will optimize portfolio performance, analyse campaign data, and drive data-informed strategic decisions. Responsibilities include overseeing campaign metrics, managing investment decisions, and providing insights on portfolio growth and risk management.

Key Responsibilities for the Data Analytics Campaign Portfolio Manager:

Develop and execute portfolio strategies using data insights on performance and market trends.

Optimise portfolio performance through predictive modelling and advanced analytics.

Track key performance metrics, monitor risks, and create dashboards for leadership.

Adjust strategies to enhance returns and mitigate risks.

Requirements:

Proven experience in portfolio management or financial data analysis.

Skilled in data analytics tools (Python, R, SQL, Tableau, Power BI).

Strong problem-solving, communication, and data modelling skills.

Knowledge of machine learning and predictive modelling techniques.

Benefits:

25 days annual leave (increases with tenure), plus bank holidays.

Hybrid work, enhanced parental leave, Medicash health plan, life insurance, and pension matching.

Professional development support, including internal and external courses.

Application:

To apply, send your CV to or call Faye at (phone number removed).

Data Analytics Campaign Portfolio Manager

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