Senior AI Engineer

Octus

$160K — $170K *
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • Bachelor's or Master's in Computer Science, Engineering, or related field; equivalent experience accepted
  • 5+ years as an AI or Machine Learning Engineer with a strong computer science foundation
  • Expertise in Python with experience building production systems at scale
  • Experience in developing LLM-driven applications with multi-agent architectures
  • Hands-on with automated evaluation frameworks for LLM systems
  • Competence in deep learning frameworks like PyTorch or TensorFlow
  • Familiarity with cloud deployments and modern DevOps practices.

Responsibilities

  • Design and implement multi-agent orchestration frameworks using various SDKs
  • Build and maintain servers and integrations for AI system capabilities
  • Optimize retrieval-augmented generation pipelines
  • Integrate managed LLM services across cloud platforms
  • Fine-tune and deploy deep learning models for production
  • Design automated evaluation frameworks for LLM system quality
  • Conduct code reviews and communicate technical strategies to stakeholders.

Benefits

  • Opportunities for continuous learning and advancement in AI and ML
  • Collaborative and innovative work environment
  • Exposure to cutting-edge technologies in generative AI
  • Support for effective project ownership and independence
  • Flexible work arrangements to foster work-life balance.
Full Job Description
Role

As a Senior AI Engineer focused on CreditAI, our flagship GenAI product, you will own complex technical problems across the full AI stack - designing distributed systems, orchestrating multi-agent workflows, and ensuring production reliability at scale.

Responsibilities
  • Design and implement multi-agent and agentic orchestration frameworks using agent SDKs such as the Claude Agent SDK, Google ADK, or AWS AgentCore, incorporating tools, external data sources, memory, and state management
  • Build and maintain MCP servers and integrations to extend AI system capabilities with structured tool use and external context
  • Build and optimize RAG pipelines including embedding strategies, vector database, retrieval quality tuning, and cost-aware ingestion design
  • Integrate with managed LLM services across cloud providers to support diverse deployment and cost optimization strategies.
  • Fine-tune, optimize, and deploy open-source deep learning models for production use cases, leveraging GPU infrastructure for training and inference
  • Apply systems thinking to design and optimize AI and LLM systems, balancing quality, scalability, latency, cost, and operational complexity, while implementing efficiency improvements using model selection, prompt design, batching, caching, and retrieval strategies.
  • Design and implement automated evaluation frameworks to assess LLM system quality, accuracy, and performance across production workloads
  • Apply reinforcement learning techniques (e.g., RLHF, RLAIF) to improve model alignment and task-specific performance
  • Architect and manage high-throughput, real-time data pipelines using Kafka
  • Design, deploy, and scale production AI services on AWS (Batch, Lambda, ECS, S3, etc), applying modern containerization, CI/CD, and infrastructure-as-code practices
  • Implement comprehensive observability frameworks using Datadog - tracking token usage, pipeline latency, error rates, consumer lag, and model performance with actionable alerting
  • Identify and resolve production bottlenecks across distributed systems, including database query optimization, consumer scaling, and LLM throughput tuning
  • Apply strong problem-solving and critical thinking skills to break down complex, ambiguous requirements into clear, implementable technical components and system designs.
  • Conduct code reviews; contribute to team standards around reliability, testing, and operational excellence
  • Communicate progress, trade-offs, and outcomes to relevant stakeholders.
  • Continuously learn and adapt to advancements in NLP and Generative AI to ensure solutions remain innovative and effective.

Requirements
  • Bachelor's or Master's degree in Computer Science, Engineering, or a related technical field (or equivalent practical experience).
  • 5+ years of experience as an AI Engineer, Machine Learning Engineer, or applied AI practitioner, with a strong foundation in computer science and algorithms.
  • Deep Python expertise with a track record of shipping production systems at scale; strong software engineering practices including clean code, testing, code review, and CI/CD.
  • Hands-on experience designing, building, and deploying LLM-driven or GenAI applications, including multi-agent architectures and agentic workflows, with familiarity with vector databases, embeddings pipelines, or semantic search systems.
  • Hands-on experience designing and implementing automated evaluation frameworks for LLM systems
  • Solid understanding of machine learning and applied AI concepts, with the ability to take solutions from prototype to production and translate research ideas into scalable, real-world systems.
  • Experience with GPUs for model training or inference, including tuning and deploying open-source deep learning models in production; proficiency with PyTorch or TensorFlow for model development and fine-tuning.
  • Practical experience with cloud-based deployments and infrastructure tools (e.g., AWS, Docker, GitHub) and an understanding of modern DevOps practices, containerization, orchestration, and caching strategies.
  • Strong problem-solving and systems thinking, with the ability to balance trade-offs across model quality, scalability, inference latency, and cost.
  • Excellent communication and collaboration skills, with experience working closely with product managers, engineers, and domain experts to deliver actionable technical solutions.
  • Strong ownership and initiative, with the ability to independently drive projects from problem definition to delivery; a passion for learning and staying current with the rapidly evolving AI/ML landscape.

At Octus, we consider a range of factors in connection with compensation decisions, including experience, skills, location, and our business needs and limitations. As a result, compensation may vary within and across similar roles and positions. Please note that the salary range information below is a good faith estimate for this position and actual compensation for any individual may fall outside this range if warranted by the circumstances applicable to that individual. If we identify a role that would be suitable for a broader range of skills and experience such that we would consider hiring at multiple levels then the range listed below may reflect that breadth.

The salary range estimate for this position is $160,000 - $170,000.

The actual compensation will be at Octus' sole discretion and will be determined by the aforementioned and other relevant factors.

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