Domino is a software company that helps AI-driven organizations build and operate advanced data science and AI solutions. The Solutions Engineer will play a crucial role in transforming customer curiosity into confidence by leading technical evaluations, designing proof-of-concept deployments, and collaborating with account executives to create tailored solution architectures.
Responsibilities:
- Lead technical evaluations and demonstrations of the Domino platform for Enterprise customers in a multitude of industry verticals
- Design and execute proof-of-concept deployments tailored to each customer’s environment and mission needs, showcasing Domino’s integration with their data science workflows and infrastructure
- Collaborate with account executives to craft solution architectures that meet industry-specific security and compliance standards
- Develop and maintain reusable demonstration environments and technical assets that accelerate future sales cycles
- Drive post-POC adoption readiness by partnering with Customer Success and Solutions Architects to ensure a smooth handoff into deployment
- Success will be evident through higher technical win rates, reduced time to close, and increased adoption within key prospect accounts
Requirements:
- Proven success in pre-sales or solutions engineering, ideally supporting enterprise software or AI/ML platforms. This does not necessarily need to be at a software vendor, equivalent solution engineering tasks internally or as a consultant developer could work
- Experience with Enterprise customers, understanding their procurement processes, compliance constraints, and security environments
- Track record of leading successful technical evaluations or pilots that resulted in multimillion-dollar enterprise software deals
- Experience working in complex IT environments, including hybrid or air-gapped systems
- Proficiency in Python, R, and modern data science / machine learning tools
- Familiarity with containerization (Docker, Kubernetes), cloud platforms (AWS, Azure, GCP), and networking concepts
- Understanding of the end-to-end AI lifecycle, from experimentation to production