Dataiku is looking for an experienced Field Engineer / Cloud Architect to join its Field Engineering Team to support the deployment of its Enterprise AI Platform (Dataiku DSS) to an ever-growing customer base.
As a Field Engineer, you’ll work with customers at every stage of their relationship with Dataiku - from the initial evaluations to enterprise-wide deployments. In this role, you will help customers to design, build and run their Data Science and AI Enterprise Platforms.
This role requires adaptability, inventiveness, and strong communication skills. Sometimes you will work with clients on traditional big data technologies such as SQL data warehouses and on-premise Hadoop data lakes, while at other times you will be helping them to discover and implement the most cutting edge tools; Spark on Kubernetes, cloud-based elastic compute engines and GPUs. If you are interested in staying at the bleeding edge of big data and AI while maintaining a strong working knowledge of existing enterprise systems, this will be a great fit for you.
In this role, you will
- Evangelize the challenges of building Enterprise Data Science Platforms to technical and non-technical audiences
- Understand customer requirements in terms of scalability, availability, and security and provide architecture recommendations
- Deploy Dataiku DSS in a large variety of technical environments (on-prem/cloud, Hadoop, Kubernetes, spark, …)
- Design and build reference architectures, howtos, scripts, and various helpers to make the deployment and maintenance of Dataiku DSS smooth and easy
- Automate operation, installation, and monitoring of the data science ecosystem components in our infrastructure stack
- Provide advanced support for strategic customers on deployment and scalability issues
- Coordinate with Revenue and Customer teams to deliver a consistent experience to our customers
- Train our clients and partners in the art and science of administering a bleeding-edge Elastic AI platform
It will be a great fit if you have
- Strong Linux system administration experience
- Grit when faced with technical issues.
- You don’t rest until you understand why it does not work.
- Comfort and confidence in client-facing interactions
- Ability to work both pre and post-sales experience with cloud-based services like AWS, Azure, and GCP
- Hands-on experience with the Hadoop and/or Spark ecosystem for setup, administration, troubleshooting, and tuning
- Hands-on experience with the Kubernetes ecosystem for setup, administration, troubleshooting, and tuning
- Some experience with Python
- Familiarity with Ansible or other application deployment tools
- Some knowledge in data science and/or machine learning as well as Java
- Bonus point if you have experience with authentication and authorization systems like LDAP, Kerberos, AD, and IAM and/or experience debugging networking issues such as DNS resolutions, proxy settings, and security groups