Data Scientist - Monitoring & Alerting Infrastructure

TieTalent
Manchester
1 month ago
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Overview

Data Scientist - Monitoring & Alerting Infrastructure: Our client is looking for a Data Scientist to help build and mature monitoring and alerting infrastructure, centralising efforts and enabling scalable, standardised approaches across multiple projects. This is a pivotal role for someone who thrives in autonomous environments and enjoys owning solutions from concept to deployment.

Responsibilities

  • Design and implement monitoring and alerting systems to ensure the reliability and accuracy of key datasets and processes.
  • Collaborate with teams to define relevant metrics, thresholds, and KPIs.
  • Build, maintain, and productionise machine learning and statistical models using Python and PySpark.
  • Deploy monitoring tools and models using AWS infrastructure.
  • Create scalable frameworks for future monitoring requirements across products and teams.
  • Investigate and troubleshoot anomalies in the data pipeline.
  • Promote data quality and monitoring best practices across the business.
  • Mentor junior team members and contribute to a culture of curiosity, rigour, and innovation.
  • Adhere to Company Policies and Procedures with respect to Security, Quality and Health & Safety.

About You / Qualifications

  • Proficiency in Python and SQL for analysis, model development, and data interrogation.
  • Experience in handling large datasets with PySpark and managing distributed data processing.
  • Comfortable deploying statistical or ML models into production environments.
  • Strong understanding of cloud infrastructure, preferably AWS.
  • A methodical, problem-solving mindset with high attention to detail.
  • Able to scope, define, and deliver complex solutions independently.
  • Comfortable working closely with non-technical stakeholders to define business-critical metrics.
  • Self-motivated, accountable, and keen to continuously learn and grow.
  • Previous experience building monitoring or data quality frameworks is highly desirable.

Benefits

  • Generous Time Off: 25 days of paid holiday, plus bank holidays. After two years, you can buy or sell up to 5 days of annual leave.
  • Life assurance and a workplace pension with employer contributions.
  • Bonus scheme that recognizes your hard work and contributions.
  • Cycle to Work Scheme.
  • Choice of equipment to suit you.
  • Learning & Growth: coaching, training budget, and support for ongoing development.
  • Giving Back: opportunities to support local charities.

Working Pattern

  • Hybrid working model with a Manchester office: office space, free parking, secure bike shed, good public transport links.
  • Split time between office and home with full equipment provided for home working (desk, screen, chair).
  • £100 annually to personalise your home workspace.
  • Flexible start and finish times.

Additional Details

  • Seniority level: Mid-Senior level
  • Employment type: Full-time
  • Job function: Engineering and Information Technology
  • Industries: Technology, Information and Internet


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