AI Implementation Engineer

Company: Ema
Apply for the AI Implementation Engineer
Location: London
Job Description:

Requirements

  • You are equally comfortable writing production code, debugging an integration the night before a go-live, walking a customer’s VP of Operations through an architecture decision and translating a messy business problem into a feasible agentic workflow
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  • You thrive in ambiguity, make abstract problems concrete, and reduce chaos rather than amplify it when things go wrong
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  • 5–8 years of relevant experience in technical implementation, post-sales engineering, solutions engineering, or hands-on software engineering with significant customer-facing exposure
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  • Bachelor’s degree in Computer Science or related field
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  • Hands-on production experience with agentic AI, automation, LLM applications, or workflow orchestration platforms — beyond pilots
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  • Strong back-end engineering skills in Python and/or Go; solid foundations in algorithms, data structures, and object-oriented programming
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  • Experience designing and building APIs (REST, gRPC) and integrations across enterprise systems
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  • Working knowledge of databases (PostgreSQL, Elastic, Redis, Clickhouse) and front- end frameworks (React or Angular)
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  • Experience with cloud platforms (AWS, GCP, Azure) and containerization (Docker, Kubernetes)
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  • Experience deploying and operating software in multi-tenant SaaS environments
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  • Understanding of security best practices and protocols for enterprise software
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  • Track record of owning customer-facing delivery end-to-end — production, scale, and accountability
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  • Background in fast-growing startups or enterprise platform companies
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  • Strong technical judgment, calm under pressure, and excellent written and verbal communication with both engineers and business stakeholders
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  • Experience working with global, distributed teams

What the job involves

  • The AI Implementation Engineer owns the technical delivery and stabilization of Ema’s agentic AI solutions in customer environments — from commitment through production rollout and steady state
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  • This is a hands-on, post-sales, customer-facing engineering role: you build, you deliver, and you are the technical anchor the customer leans on
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  • You’ll work closely with Value Engineering, Product, Engineering, Infrastructure, and the customer’s IT and business teams to prove that agentic AI can be implemented responsibly — not heroically
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  • Own technical delivery from design alignment through production rollout and Stabilization
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  • Configure, extend, and integrate Ema’s agentic AI platform to meet customer requirements
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  • Ensure solutions align with Ema’s agentic architecture and platform capabilities
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  • Write clean, efficient, maintainable code to build customer integrations, custom agents, and workflow extensions
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  • Build and maintain APIs (REST, gRPC) and integrations across enterprise SaaS systems
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  • Work with back-end languages such as Python and Go, and contribute to front-end interfaces (React/Angular, HTML, CSS, JavaScript) where customer-facing tooling is needed
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  • Work with data stores such as PostgreSQL, Clickhouse, Elastic, and Redis to shape scalable, extensible schemas for customer deployments
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  • Develop deep understanding of each customer’s business processes, systems, and constraints
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  • Translate business workflows into feasible agentic AI workflows — and push back when something shouldn’t be built
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  • Anticipate where AI implementations break: integrations, data quality, scale, edge cases
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  • Be the primary technical point of contact for customer business and IT stakeholders during implementation
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  • Coach customer teams and internal partners during high-stress phases — go-lives, incidents, scope changes
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  • Communicate progress, risks, and decisions clearly across technical and executive audiences
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  • Stand systems up in multi-tenant SaaS environments and harden them for production
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  • Apply security best practices and enterprise integration patterns (auth, RBAC, audit, compliance)
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  • Track success through adoption signals and outcome metrics — not just feature shipment
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  • Stabilize systems post go-live under real pressure
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  • Coordinate across Ema Engineering, Product, Data, Infrastructure, and Value Engineering
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  • Feed customer learnings back into product and platform improvements
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  • Contribute to shared standards, delivery discipline, and reusable patterns across the implementation team

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Posted: June 1st, 2026