TraceLink

Applied Scientist, GenAI

TraceLink$151K — $189K *
Information Technology
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 5+ years of experience in LLM/SLM optimization for agent-based systems.
  • Proficiency in building complex multi-agent systems in production environments.
  • Hands-on experience with fine-tuning SLMs and deploying them effectively.
  • Deep understanding of Advanced RAG and semantic search technologies.
  • Competency in inference optimization techniques like quantization and model routing.
  • Experience in developing retrieval systems using vector databases and search stacks.
  • Ability to manage full system lifecycle from research to production.

Responsibilities

  • Build and ship multi-agent systems from prototype to production.
  • Develop production-quality code for agent orchestration and context management.
  • Lead context engineering initiatives for effective multi-agent coordination.
  • Fine-tune and deploy SLM models for practical applications.
  • Create Advanced RAG pipelines that include semantic searches and hybrid retrieval.
  • Establish evaluation frameworks to assess multi-agent system performance.
  • Collaborate with engineering teams to ensure scalable and secure cloud-native solutions.
  • Optimize system performance for cost and latency.

Benefits

  • Competitive compensation package with base pay vs. market estimates.
  • Opportunities for mentoring and technical leadership.
  • Engagement with cutting-edge GenAI and ML technologies.
  • Full lifecycle project experience from research to production.
  • Collaborative working environment with cross-functional teams.
Full Job Description
Staff / Senior Applied Scientist, GenAI & ML Systems

Location: Wilmington, MA (US) - Fulltime Onsite

About the Role

We are hiring a Staff / Senior Applied Scientist to lead the design and deployment of production-grade GenAI and ML systems with a strong emphasis on being hands-on. You will personally build, iterate, and ship systems focused on LLM/SLM optimization for agentic, multi-agent architectures in cloud environments.

This role is ideal for someone with deep expertise in one or more areas of LLM/SLM optimization for agent-based systems, and hands-on experience in designing, implementing, and operating large-scale multi-agent systems in the cloud.

Key Responsibilities
  • Hands-on ownership of building and shipping multi-agent systems (planner/executor, tool-using agents, supervisor patterns, routing, role-based agents) from prototype to production.
  • Write production-quality code for agent orchestration, tool integration, memory/state design, and context management.
  • Lead context engineering strategies for multi-agent coordination: prompt design, state persistence, agent handoffs, grounding, constraints, and safety controls.
  • Hands-on fine-tune and deploy SLM models for production usage: dataset creation, training workflows, evaluation, and inference serving.
  • Build Advanced RAG pipelines end-to-end, including semantic search, embeddings, hybrid retrieval, and cross-encoder reranking.
  • Implement evaluation frameworks for multi-agent systems covering quality, latency, cost, robustness, and failure mode detection.
  • Collaborate with platform and product engineering to ensure solutions are cloud-native, secure, observable, and scalable (monitoring, logging, CI/CD).
  • Optimize for cost and latency via model routing, caching, compression strategies, and inference efficiency improvements.
  • Mentor peers through code reviews, architecture sessions, and hands-on technical leadership.
Required Knowledge & Experience
  • Context engineering for complex multi-agent systems
    (prompt orchestration, tool calling, memory/state design, routing, constraint handling)
  • Fine-tuning of SLMs and delivering them to production
    (training strategies, validation, deployment, monitoring, rollback readiness)
  • Experience with Advanced RAG, semantic search, embeddings, and cross-encoders
    (retrieval tuning, chunking strategies, query rewriting/planning, reranking)
  • Ability to translate ambiguous requirements into concrete architectures, metrics, and deliverables
  • Hands-on inference optimization experience: quantization, distillation, batching, caching, model routing, speculative decoding
  • Experience building retrieval systems at scale using vector DBs and search stacks
  • Comfort working across the full lifecycle: research  prototype  A/B test  production hardening


Preferred Qualifications
  • Familiarity with enterprise constraints: privacy, security, data governance, permissions, auditability
  • Experience designing and running GenAI observability: traces, prompt/versioning, tool call logging, feedback loops
  • Strong ability to implement production-quality systems in Python (and/or adjacent backend languages)
  • Proven experience deploying GenAI/ML systems in cloud environments (AWS/Azure/GCP)
  • Experience with scalable inference and service operations: containers, APIs, observability, reliability practices
  • MS/PhD in CS/ML/NLP/Stats (or equivalent applied experience building production systems)


TraceLink is committed to providing competitive compensation and benefits to all employees. This is the estimated base salary range for this role and should serve only as a guide. Final compensation offered may vary based on a variety of factors including but not limited to experience level, fit for the role, skills, domain knowledge, internal equity, budget, and location.

US Pay Range

$151,999.74-$189,263.73 USD

About TraceLink

TraceLink is the world’s largest integrated digital supply network, providing real-time information sharing for better patient outcomes. Leading businesses trust the TraceLink Life Sciences Cloud to deliver complete global connectivity, visibility and traceability of pharmaceuticals from ingredient to patient. A single point and click connection to the Life Sciences Cloud creates a supply chain control tower that delivers the information, insight and collaboration needed to improve performance and reduce risk across global supply, manufacturing and distribution operations. The TraceLink Life Sciences Cloud is used by businesses across the globe to meet strategic goals in ensuring global compliance, fighting drug counterfeiting, improving on-time and in-full delivery, protecting product quality and reducing operational cost. For more information on TraceLink and our solutions, visit www.tracelink.com.
Learn more about TraceLink
Size
500 employees
Industry
Founded
2009

Similar Jobs

More Jobs at TraceLink

  • TraceLink
    Senior Data Scientist
    $178K *
    Wilmington, MA 01887 (Middlesex County)
    Pharmaceuticals & Biotech
    In-Person

More Information Technology Jobs

Find similar Applied Scientist, GenAI jobs: