AI Engineer
Indexed description
Also, This Role Will Give You The Chance To
- Use frameworks like Google Agent Development Kit (Google ADK) and LangGraph to build robust, controllable, and observable agentic architectures
- Assist in the design of LLM-powered agents and multi-agent workflows (planning, tool use, orchestration, memory, and human-in-the-loop)
What You’ll Be Doing
- Design and build complex agentic systems with multiple interacting agents
- Implement robust orchestration logic (state machines / graphs, retries, fallbacks, escalation to humans)
- Implement RAG pipelines, tool calling, and sophisticated system prompts for optimal reliability, latency, and cost control
- Apply core ML concepts to evaluate and improve agent performance, including dataset curation and bias/safety checks
- Lead the development of agents using Google ADK and/or LangGraph, leveraging advanced features for orchestration, memory, evaluation, and observability
- Integrate with supporting libraries and infrastructure (e.g., LangChain/LlamaIndex, vector databases, message queues, monitoring tools) with minimal supervision
- Define success metrics, build evaluation suites for agents (automatic + human evaluation), and drive continuous improvement
- Curate and maintain comprehensive prompt/test datasets; run regression tests for new model versions and prompt changes
- Deploy and operate AI services in production, establishing CI/CD pipelines, observability, logging, and tracing
- Debug complex failures end-to-end, identifying and document root causes across models, prompts, APIs, tools, and data
- Work closely with product managers and stakeholders to shape requirements, translate them into agent capabilities, and manage expectations
- Document comprehensive designs, decisions, and runbooks for complex systems
- Bachelor’s degree in Computer Science, Engineering, or related field
- At least 3 years of experience as Software Engineer / ML Engineer / AI Engineer, with at least 1-2 years working directly with LLMs in real applications
- Strong proficiency in Python (core language features, packaging, testing, async, type hints)
- Very strong software engineering practices: version control (Git), unit/integration testing, code reviews, CI/CD
- Experience building and consuming REST/gRPC APIs and integrating external tools/services
- Understanding of core ML concepts: supervised/unsupervised learning, train/validation/test splits, overfitting, regularization, and common metrics (precision, recall, F1, ROC-AUC, etc.)
- Good understanding of deep learning basics (neural networks, embeddings) and at least one ML/DL framework (e.g., PyTorch, TensorFlow, JAX, scikit-learn)
- Deep practical knowledge of large language models
- Tokenization, context windows, temperature, top-p, system vs user prompts
- Prompt engineering patterns (ReAct, chain-of-thought, tool-calling/tool-use)
- Fine-tuning / adapters / instruction-tuning, or experience with RAG as an alternative
- Experience building LLM-powered applications end-to-end: from idea → prototype → production
- Familiarity with safety and reliability considerations: hallucinations, guardrails, content filtering, privacy
- Conceptual understanding of modern agentic frameworks and patterns (stateful graphs, multi-agent coordination, human-in-the-loop, memory, and evaluation).
- Hands-on experience with at least one of: Google Agent Development Kit (ADK) – building multi-agent workflows, using its orchestration, tools, and evaluation features or LangGraph – designing graph-based, stateful agent workflows with cycles, branches, and durable execution
- Candidates must be able to read, reason about, and extend ADK/LangGraph-based codebases
- Direct production experience with both ADK and LangGraph is a strong plus
- Experience working with vector databases (e.g., Pinecone, Weaviate, pgvector, Chroma) for retrieval-augmented generation
- Comfortable with SQL and basic data modeling
- Experience deploying on at least one major cloud platform (GCP, AWS, Azure) and using managed services (e.g., serverless runtimes, container orchestration, secrets management)
- Vertex AI / Gemini or other hosted LLM ecosystems
- Related frameworks and tools: LangChain, LlamaIndex, semantic search, evaluation frameworks (e.g., RAGAS, custom eval harnesses)
- Monitoring and observability stacks (OpenTelemetry, Prometheus/Grafana/NewRelic, Datadog, etc.)
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