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🤖 AI Engineer – Agent-Oriented LLM Workflows We’re building the future of AI-driven agent workflows—and we want you to help lead the way. As an AI Engineer, you'll architect, deploy, and optimize advanced LLM-based agent systems that can interact, reason, and deliver business value at scale. You’ll collaborate closely with data engineers and product stakeholders to bring multi-agent orchestration frameworks, retrieval-augmented generation (RAG) pipelines, and real-world deployment strategies to life.
🗓 Start date: ASAP📆 Contract type: Contractor - Indefinite🌐 Work hours: Monday to Friday, 7.30 am to 4.30 pm PST - 100% Remote
🛠️ What You’ll Be Doing
Design and deploy AI agent workflows using LangChain and LangFlow. Implement MCP (Model Context Protocol) to standardize agent-tool-data interactions. Build Agent-to-Agent (A2A) systems for orchestrated task automation across domains (e.g., reporting, validation, marketing agents). Define production-ready agentic pipelines with robust logging and resilience. Benchmark and select the most suitable LLMs (GPT-4, Claude, LLaMA) based on latency, cost, and task complexity. Design RAG architectures using vector databases to enhance response quality and domain alignment. Optimize prompts, model parameters, and outputs for consistency and accuracy. Containerize and deploy agents using Docker and Kubernetes. Set up real-time monitoring and performance evaluation dashboards for agent behavior and LLM output validation. Collaborate on CI/CD pipelines and implement production guardrails. Work closely with Data Engineering to ensure scalable and secure data pipelines for agents. Lead architectural discussions and share best practices in agent orchestration. Document workflows, configurations, and operational standards for internal teams.
✅ What You Need to Succeed Must-haves
3+ years of experience in AI/ML engineering or LLM-based systems. Hands-on experience in production with:
LangChain, LangFlow, or similar orchestration tools Vector databases (e.g., Pinecone, Weaviate, FAISS) Python + ML frameworks (e.g., PyTorch, TensorFlow) Docker, Kubernetes, and CI/CD systems (GitHub Actions, Jenkins)
Proven experience deploying agentic systems and building pipelines involving LLMs. Strong understanding of LLM prompt engineering, context management, and tool/agent interoperability. Comfortable with Linux environments and cloud platforms (AWS/GCP/Azure).
Nice-to-haves
Experience with LangGraph, AutoGen, CrewAI, or other multi-agent orchestration frameworks. Prior work on chatbots, autonomous agents, or RAG pipelines. Familiarity with AI security, compliance, or ethical risk mitigation. Contributions to open-source AI projects or academic publications.
🧭 Our Recruitment Process Here’s what to expect from our candidate-friendly interview process:
Initial Interview – 60 minutes with our Talent Acquisition Specialist
Culture Fit – 30 minutes with our Team Engagement Manager
Technical Assessment - Python, LangChain, LLM
Final Stage – 60 minutes with the Hiring Manager (Technical Interview)
🌟 Why Join Launchpad? We believe that great work starts with great people. At Launchpad, we offer:
💻 Fully remote work with hardware provided
🌎 Global team experience with clients in [regions]
💸 Competitive USD compensation
📚 Training and learning stipends
🌴 Paid Time Off (vacation, personal, study)
🧘♂️ A culture that values autonomy, purpose, and human connection
✨ Apply now and let’s architect what’s next together.
What is the salary of a Docker?
Docker is a technology that is used for containerization, and it is widely used in the software development industry
The Docker salary can depends on national averages and may vary depending on the company, location, and other factors
Additionally, the salary of a Docker professional can increase with years of experience and additional skills in related technologies such as Kubernetes or cloud computing
The salary of a Docker can vary depending on several factors such as location, years of experience, industry, and job position
Here are some estimates for the average salaries of Docker-related job positions in the United States based on data from various sources:
- DevOps Engineer with Docker skills: The average salary for a DevOps Engineer with Docker skills in the US is around $115,000 to $150,000 per year.
- Docker Engineer: The average salary for a Docker Engineer in the US is around $110,000 to $140,000 per year.
- Docker Architect: The average salary for a Docker Architect in the US is around $130,000 to $170,000 per year.
- Docker Administrator: The average salary for a Docker Administrator in the US is around $95,000 to $120,000 per year.