Product Data Analyst / Analytics Engineer — London

London

Conduktor

We provide simple, flexible and powerful tooling for Kafka developers and infrastructure. We also streamline your DevSecOps needs with Conduktor Gateway, the definitive Kafka proxy.

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We created Conduktor to help engineering teams everywhere harness the power of real-time data based on Apache Kafka. We already have dozens of thousands of happy users from all over the world. With backing from incredible investors, we’re a small international startup with team members across the globe and offices in New York, Dublin, London, and Paris. 
We are seeking an experienced, creative and ambitious Product Data Analyst / Analytics Engineer to help us build the next generation of Data Streaming tools.
The role
We are looking for our first Product Data Analyst / Analytics Engineer to focus on our data at Conduktor. 
Our ambition is to better serve our stakeholders and continuously understand our growth levers to drive strategic decisions. We need more bandwidth to be excellent at what we are committing to and better understand how our users are using our products. We have the ambition to drive best-in-class experiment analyses, but also to help Conduktor extract the data that will improve our understanding of our users and our product. 
You’ll partner directly with technical and non-technical stakeholders to identify the best ways to the instrument and transform our data to increase flexibility and repeatability of analysis, partnering on the development of KPIs and helping teams navigate our user experience through data. 
We are looking for an empathetic, humble, curious, and collaborative team member who is excited to build our foundational data capabilities and provide creative solutions that maximize data utility at Conduktor.

What will you be doing?

  • Help Product Teams and Product Managers define their product metrics (Segment metrics, Mixpanel/BQ dashboards)
  • Discover interesting trends or usage in our data to affect our roadmap. Help us drive Conduktor by numbers.
  • Answer product or sales questions by numbers/dashboards.
  • Define best practices for how we identify and resolve data quality issues, increase confidence in our product and business success metrics, and maintain data lineage.
  • Lead technical and non-technical team members to model what they need using methods that maximize business impact and our ability to ask meaningful questions.
  • Ability to translate data into easy-to-understand dashboards/reports

What skills & experience do you need?

  • Self-motivated and energetic team player with a strong work ethic and cooperative attitude in a fast-paced and sometimes ambiguous environment, solving complex and nuanced problems
  • Have expertise in writing performant SQL, data modeling, data warehousing, working with BI tools, and optimizing data workflows
  • Performance driven and willing to take action quickly
  • Engage both technical and non-technical audiences with clear and compelling communication
  • Be independent, you will be our first Data Analyst, find your way
  • Comfortable combining various sources of data (Hubspot, Auth0, Segment, Amplitude, BigQuery, ...)

Compensation & Benefits

  • Competitive compensation, including Stock Options for every permanent employee
  • 100% coverage of your health insurance for you and your partner
  • Flexible working hours and flex remote working (office in London - Holborn)
  • Pet-friendly office 🐕
  • Your choice of devices and tools ($5,000)
  • International team with a wealth of knowledge
  • Crazy offsites abroad (1-week duration somewhere in the world)

Tags: Amplitude BigQuery Data quality Data Warehousing Engineering Kafka KPIs SQL Streaming

Perks/benefits: Competitive pay Equity Flex hours Flex vacation Health care Pet friendly Startup environment Team events

Region: Europe
Country: United Kingdom
Job stats:  14  3  0

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