Senior Data Scientist - Product Innovation - 37921

Informatica
1 month ago
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Build Your Career at Informatica

We're looking for a diverse group of collaborators who believe data has the power to improve society. Adventurous minds who value solving some of the world's most challenging problems. Here, employees are encouraged to push their boldest ideas forward, united by a passion to create a world where data improves the quality of life for people and businesses everywhere.

Senior Data Scientist - London

We're looking for a Senior Data Scientist candidate with an academic background to join our team in London (hybrid - 2 days per week in the office).

You will report to the Director of Development.

As a part of the Product organisation, you will work with product managers and engineers to explore product innovations arising from emerging technologies and new customer use cases.

Technology You'll Use

Python, pandas, PyTorch, Databricks, Snowflake, AWS Bedrock, SageMaker, Azure ML, Google VertexAI.

Your Role Responsibilities? Here's What You'll Do

  • Research and develop subject matter expertise in product innovation areas including unstructured data management, AI governance, and protected cross-entity data sharing.
  • Conduct technical feasibility assessments to determine the strengths and limitations of emerging technologies.
  • Recommend product enhancements to support the integration of new technology and to enhance our offering for new customer use cases including generative AI.
  • Interact with product, services, and sales teams to identify potential new customer trends and future product gaps over a 1-3 year horizon.

What We'd Like to See

  • Strong technical expertise in data-related areas, including data preparation, model training, and performance evaluation for machine learning/AI.
  • Passion for exploring and evaluating new technologies for data management and governance, with the ability to compare approaches to find the best fit for use cases.
  • Effective technical communication, able to advocate for solutions and explain them clearly to non-experts.
  • Proficient in Python, including libraries like pandas, PyTorch, matplotlib, and Seaborn, with experience in data science and engineering.
  • Experience with cloud service technologies and enterprise tools such as Databricks, Snowflake, AWS Bedrock, SageMaker, Azure ML, and Google VertexAI.

Role Essentials

  • Postgraduate level educational background is preferred (Science, Technology, Engineering, or Mathematics).
  • Minimum 2+ years of relevant professional experience as a Data Scientist, Research Scientist, or Software Engineer in the product area.

Perks & Benefits

  • Comprehensive health, vision, and wellness benefits (Paid parental leave, adoption benefits, life insurance, disability insurance, and 401k plan or international pension/retirement plans).
  • Flexible time-off policy and hybrid working practices.
  • Equity opportunities and an employee stock purchase program (ESPP).
  • Comprehensive Mental Health and Employee Assistance Program (EAP) benefit.

We're guided by our DATA values and we are passionate about building and delivering solutions that accelerate data innovations. At Informatica, we know diversity drives innovation. We are proud to be an Equal Opportunity Employer dedicated to maintaining a work environment free from discrimination, one where all employees are treated with dignity.

Informatica (NYSE: INFA), a leader in enterprise AI-powered cloud data management, brings data and AI to life by empowering businesses to realize the transformative power of their most critical assets. We pioneered the Informatica Intelligent Data Management Cloud that manages data across any multi-cloud, hybrid system, democratizing data to advance business strategies. Customers in approximately 100 countries and more than 80 of the Fortune 100 rely on Informatica. www.informatica.com. Connect with LinkedIn, X, and Facebook.

Informatica. Where data and AI come to life.

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