Product Analyst

Top Remote Talent
Bristol
11 months ago
Applications closed

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We are seeking a talented and motivated Product Analyst to join company’s team and contribute to the development of innovative solutions that enhance patient care and medical research. 

The company creating the world’s most used medical products and optimization software for small businesses and enterprises in the medical field. The company is a cutting-edge technology company at the forefront of healthcare innovation. They’re dedicated to harnessing the power of machine learning and data analysis to improve patient outcomes and healthcare processes. 

What about your role?Key responsibilities:  

●  Design and execute product experiments, such as A/B testing. 

●  Develop and implement data-driven methodologies for product improvements. 

●  Analyze product data to identify trends and insights (e.g., patient scoring for prioritization in healthcare). 

●  Present analysis findings clearly and structure data-driven reports. 

●  Collaborate with the business team to define product requirements. 

That'sgreat if you have: 

● SQL: Proficiency in advanced queries (e.g.,joins, window functions, CTEs). Ability to independently handle complex data queries. 

● Python: Solid knowledge ofPandas, NumPy, and related libraries. Ability to write and understand code. 

● Statistics: Strong understanding of comparative statistics and its application in product analysis. 

● DataAutonomy: Capable of working independently with large datasets. 

Nice-to-have skills: 

● Experience in structuring and presenting data analysis. 

● Ability to design and project data reports (e.g., BI tools, Power BI).

● Business analysis skills, capable of defining business requirements and translating them into technical tasks. 

● Willingness to grow into a Product Manager role. 

But wait, what about offer? 

 ●      Flexible working hours; 

 ●       Fully remote work from anywhere  

 ●       Ongoing professional development and training opportunities. 

 ●       Opportunity to work on cutting-edge projects with real-world impact. 

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