Product Manager - Cannock

Noir
Cannock
1 year ago
Applications closed

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Product Manager - Cannock

(Key skills: Product Manager, Software, Stakeholders, Roadmap, Functional Requirements, User Stories, Business Analyst, Project Manager, Product Manager)

I'm currently recruiting on behalf of my client, an innovative leader in digital solutions and insurance technology, looking for an experiencedProduct Managerto join their growing team. This is a fantastic chance to play a pivotal role in driving product strategy, collaborating closely with development teams, and staying on top of cutting-edge advancements in artificial intelligence and machine learning.

The Role:

As the Product Manager, you'll be responsible for steering product development from concept through to launch, working alongside software development teams to bring innovative, high-quality solutions to market. You'll utilize your skills in process mapping, business process reengineering, and Agile methodologies to streamline development, staying on top of market trends and AI applications that can transform the industry.

Key Responsibilities:

  • Collaborate with cross-functional teams to oversee the entire product lifecycle.
  • Analyse market trends and customer needs, translating insights into strategic product opportunities.
  • Engage in process mapping and reengineering to enhance product development.
  • Drive Agile product development processes, ensuring efficient, timely releases.
  • Maintain a strong focus on AI and machine learning advancements, identifying potential applications.

What We're Looking For:

Education and Experience

  • Bachelor's degree (or higher) in Business Administration, Computer Science, or a related field.
  • Proven experience in product management, ideally within digital solutions, software, or insurance.
  • Strong experience working with software development teams, familiar with SDLC and Agile methodologies.
  • Interest in AI and machine learning, and experience with related tools.
  • Experience with process mapping and business process reengineering.

Technical Skills

  • Proficiency in business analysis tools and techniques.
  • Knowledge of development languages and frameworks (e.g., Java, Python, .NET).
  • Familiarity with AI/ML platforms and process mapping tools like Lucidchart.
  • Strong analytical and problem-solving skills.

What's on Offer:

This is a unique opportunity to join a company that values innovation and customer-centric solutions. If you're results-oriented, passionate about technology, and ready to make an impact, this could be the perfect role for you.

Our client is building a company people love.A company that will stand the test of time. So they invest in their people, and optimize for your long term happiness. If you would like to explore the possibility of joining their family please apply without delay.

Location:Cannock, UK / Remote Working

Salary:£45,000 - £60,000 + Bonus + Pension + Benefits

Applicants must be based in the UK and have the right to work in the UK even though remote working is available.

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