Senior Cloud AI Engineer (Hybrid, Lahore, USD Salary)
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Senior Cloud AI Engineer (Hybrid, Lahore, USD Salary)
HR POD - Hiring Talent GloballyLahore, Pakistan
30+ days ago
Job type
Quick Apply
Job description
Requirements :
Bachelor's or Masters degree in Computer Science, Engineering, or a related field.
7+ years of professional software development experience, with at least 3-4 years focused on cloud architecture and backend systems.
Proficient in Google Cloud Platform (GCP) with hands-on experience in Compute (Cloud Run, Cloud Functions, GKE), Messaging (Pub / Sub), Storage & Databases (BigQuery, Cloud Storage, Spanner, Firestore), AI / ML tools (Vertex AI, Generative AI APIs), and Networking & Security.
Proven experience designing and building event-driven architectures and microservices.
Strong programming skills, preferably in Python (especially for AI / ML and GCP), Java, or Go.
Experience with workflow orchestration tools (e.g., Apache Airflow, Cloud Workflows, or custom solutions).
Solid understanding of AI / ML concepts, including experience with LLMs, RAG, vector databases, and building agentic or autonomous systems.
Demonstrable experience implementing resilience patterns (retries, circuit breakers, idempotency) and ensuring system observability.
Experience with data modeling, SQL, and NoSQL databases.
Proficiency with CI / CD tools, containerization (Docker, Kubernetes), and infrastructure-as-code (Terraform).
Excellent problem-solving skills and the ability to architect solutions for complex, ambiguous problems.
Experience with building cloud-based AI, Compute, and Storage tools and concepts.
Familiarity with knowledge graphs (e.g., Neo4j, JanusGraph) and their application in RAG or knowledge management.
Experience with Document AI or similar document processing technologies.
Understanding of front-end interactions with backend agentic systems.
Responsibilities :
Design AI-driven systems on GCP using agentic pipelines, Pub / Sub workflows, Cloud Run, BigQuery, and automation.
Lead backend development of core services, atomic actions, orchestration, and agentic control loops, including context, session, and history management.
Integrate AI / ML models (LLMs, custom agents) with focus on RAG, embeddings, and prompt engineering.