Technical Support Engineer
United Kingdom, Remote
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Dataiku
Dataiku is the world’s leading platform for Everyday AI, systemizing the use of data for exceptional business results.At Dataiku, we're not just adapting to the AI revolution, we're leading it. Since our beginning in Paris in 2013, we've been pioneering the future of AI with a platform that makes data actionable and accessible. With over 1,000 teammates across 25 countries and backed by a renowned set of investors, we're the architects of Everyday AI, enabling data experts and domain experts to work together to build AI into their daily operations, from advanced analytics to Generative AI.
What to know about the Dataiku Support Team
At Dataiku, the Support organization is a fully remote team focused on enabling our customers and helping them work through any technical issues or questions related to our Everyday AI Platform (DSS). We are a rapidly scaling and globally distributed team, with members spanning 10+ countries and across 3 major continents. Our focus is to take our growth to the next stage by building out an enterprise-grade global support function.
How you’ll make an impact
We are looking for an experienced technical support engineer who is comfortable working in a complex and dynamic environment and who can help contribute to the growth of our global support function as we continue to scale up our operations. As a Technical Support Engineer, you will help our EMEA and global customers solve their wide range of technical issues with Dataiku, such as installation, security, and integration with other big data technologies. You will also collaborate with various internal teams to solve and escalate customer issues as needed.
Some expected outcomes for this role
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Help EMEA and global customers solve their technical issues with Dataiku through a variety of communication channels
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Communicate with our R&D team to solve complex issues and/or share feedback from our EMEA customers for future product improvement
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Work with other customer-facing teams when escalating or rerouting issues to help ensure a proper and efficient / timely resolution
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Document knowledge in the form of technical articles and contribute to knowledge bases or forums within specific areas of expertise
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Occasionally wear multiple hats and help out with other activities in a fast-paced and dynamic startup team environment
What you’ll need to be successful
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At least 3 years of experience in a client-facing engineering or technical role, ideally involving a complex and rapidly evolving software/product
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Experience with cloud platforms such as AWS, Azure, and GCP
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Experience with Docker and Kubernetes
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Collaborative and helpful mindset with a focus on always working as a team
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A strong competency in technical problem solving with demonstrated experience performing advanced log analysis, debugging, and reproducing errors
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Proficiency working with Unix-based operating systems
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Experience with relational databases (or data warehouses like Snowflake) and SQL
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Ability to read and write Python or R code
What will make you stand out
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Experience with big data technologies, such as Hadoop or Spark
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Experience with authentication and authorization systems such as LDAP, SAML, and Kerberos
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Experience with ML models and LLMs
What does the hiring process look like? #LI-Remote #LI-AN1
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Initial call with a member of our Technical Recruiting team
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Video call with the Technical Support Manager
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Technical Assessment to show your skills (Home Test)
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Debrief of your Tech Assessment with Support Team member
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Final Interview with the VP Technical Support
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: AWS Azure Big Data Docker Engineering GCP Generative AI Hadoop Kubernetes LLMs Machine Learning ML models Python R R&D RDBMS Security Snowflake Spark SQL
Perks/benefits: Career development Startup environment Team events
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