AI Solutions Architect

Neo4j
Summary
Join Neo4j as an AI Solutions Consultant and drive transformative change by designing, building, and deploying innovative solutions combining graph databases and AI. You will work directly with strategic customers, translating complex data challenges into tangible business value. This role involves collaborating with customer executives and technical leaders, leveraging expertise in graph technologies, LLMs, and AI orchestration frameworks. Providing hands-on consulting and technical expertise will be central, collaborating on projects revolutionizing businesses and with key Neo4j cloud partners. You will also contribute to internal teams and customer education, sharing expertise through workshops and documentation. This fast-growing company offers a unique opportunity to shape the future of data and analytics.
Requirements
- Enterprise Application Development : 5+ years of experience in designing and developing enterprise-class applications, demonstrating a strong understanding of software development lifecycle principles
- LLM Proficiency : 2+ years of Experience working with Large Language Models (LLMs), including prompt engineering, fine-tuning, and integrating LLMs into applications. Maintain up-to-date knowledge of different LLM providers and their strengths and limitations (e.g., OpenAI’s GPT and O families, Anthropic’s Claude family, Google’s Gemini, xAI’s Grok, as well as open-source LLMs like LLama, DeepSeek, and Mistral)
- Programming Proficiency : Competence and hands-on experience in at least one of the following languages: Java, JavaScript, Python, or C#. Ability to write clean, maintainable, and efficient code is essential
- Deployment and Version Control : Hands-on experience with deployment software on major platforms, such as Linux, Docker, and Kubernetes, and proficiency in source control software, including Git and SVN
- Cloud Computing Expertise : Practical experience with cloud platforms (e.g., AWS, Azure, GCP) and demonstrated proficiency in deploying applications within cloud environments
- Generative AI Ecosystem Knowledge : Deep understanding of the generative AI ecosystem, including AI orchestration frameworks (e.g., LangChain, Llama Index, Haystack) and cloud provider AI offerings (e.g., AWS Bedrock, Vertex AI, Azure Machine Learning)
- Data Expertise : Strong foundation in data engineering, data analytics, or data science, with the ability to work effectively with various data types and sources. Experience using big data technologies (e.g. Hadoop, Spark, Hive) and database management systems (e.g. SQL and NoSQL)
- Graph Database Expertise : Deep understanding of graph database concepts, data modeling, and query languages (e.g., Cypher). Demonstrate hands-on experience with graph databases (e.g., Neo4j, Neptune, TigerGraph) or triple stores (e.g., Ontotext, Stardog)
- Communication and Collaboration Skills : Excellent communication and interpersonal skills to effectively collaborate with customers and internal teams, fostering strong working relationships
- Problem-Solving and Analytical Abilities : Strong analytical and problem-solving abilities to address complex technical challenges and design effective AI solutions
- You will have the ability to travel up to 50% of the time for customer engagements
Responsibilities
- Work with customer technical leads, customer executives, and partners to manage and deliver successful implementations of Graph+GenAI solutions becoming a trusted advisor to decision-makers throughout the engagement
- Propose solution architectures and manage the deployment of Graph+GenAI solutions according to complex customer requirements and implementation best practices
- Work directly with customers to understand their business objectives and translate them into AI-powered solutions that leverage graph databases and LLMs. This includes gathering requirements, understanding existing data landscapes, and identifying opportunities to apply graph-based AI to solve business challenges
- Interact with customer stakeholders to manage project scope, priorities, deliverables, risks and issues, and timelines for successful customer outcomes
- Develop, test, and deploy production-ready AI applications that integrate graph databases with LLMs and orchestration frameworks. This involves writing production-level code, optimizing for performance and scalability, and ensuring seamless integration with customer systems
- Continuously evaluate and improve the performance, scalability, and efficiency of deployed AI applications, incorporating new techniques and technologies as they emerge
- Work with other teams at Neo4j (Product and Marketing) to influence the roadmap and provide insights from the field, and package approaches, best practices, and lessons learned into thought leadership, methodologies, and published assets
- Share your expertise internally with other Neo4j teams and also with customers through workshops, training sessions, and documentation to empower them to effectively utilize, maintain, and reproduce the AI solutions you deliver
- Maintain continuous learning and stay up-to-date with the rapidly evolving GenAI landscape, proactively seeking knowledge of new trends and technologies
Share this job:
Similar Remote Jobs
