Agentic Engineer at Vybers Inc. | Torre

Agentic Engineer

You'll build and ship production-grade AI agents, reliably completing real user tasks end-to-end.
Emma highlights
This highlight was written by Emma’s AI. Ask Emma to edit it.
Full-time

Legal agreement: Depends on the location of the candidate

Currency exchange and taxes to be paid by:

Company

Base compensation
USD60K - 180K/year

+ Health insurance

Negotiable
location_on
Remote (anywhere)
skeleton-gauges
You have opted out of job matches in .
To undo this, go to the 'Skills and Interests' section of your preferences.
Review preferences
Posted about 1 month ago

Requirements and responsibilities


Agentic Engineer (LLM Agents) — Full-Time About Vybers Vybers builds AI-native products that help users get real work done—fast. We’re building agentic systems that can reason over context, use tools, collaborate with humans, and reliably complete tasks end-to-end. The Role We’re looking for an Agentic Engineer to design, build, and ship production-grade AI agents. You’ll work across modeling, product, and infra to turn “LLM demos” into robust, observable, safe, and cost-effective agentic workflows. You’ll own agent behavior end-to-end: orchestration, tool use, memory, evaluation, reliability, and deployment—while partnering tightly with product and design to deliver delightful user outcomes. What You’ll Do - Build and improve agentic workflows (planning, tool-calling, reflection/verification, multi-step execution). - Design tool interfaces and function schemas; integrate with internal/external systems (APIs, databases, docs, web, etc.). - Implement memory and context management (retrieval, summarization, user/session state, long-term memory patterns). - Develop evaluation harnesses: offline tests, regression suites, simulation, human-in-the-loop review, and A/B experiments. - Improve reliability: guardrails, fallback strategies, constraint enforcement, error recovery, and adversarial testing. - Optimize performance and cost: caching, batching, routing, model selection, latency profiling, token economy. - Ship to production with observability: traces, structured logs, metrics, prompt/version management, and incident playbooks. - Collaborate across engineering, product, and research; help set best practices for agent development. What We’re Looking For Must-haves - Strong software engineering fundamentals (design, testing, debugging, performance). - Experience building LLM-based systems (agents, RAG, tool use, prompt/versioning). - Comfort working in ambiguous, fast-moving product environments. - Ability to reason about reliability, safety, and evaluation—not just “making it work once.” Nice-to-haves - Production experience with orchestration frameworks (LangGraph, Temporal, Prefect, Airflow, etc.). - Experience with vector databases / retrieval systems (pgvector, Pinecone, Weaviate, Elasticsearch, etc.). - Practical applied ML experience (fine-tuning, embedding models, distillation, reward modeling). - Experience building developer tooling (SDKs, internal platforms, analytics/observability). - Familiarity with security/privacy patterns for AI products. Tech Stack - Backend: Python / TypeScript, REST/gRPC. - Data: Postgres, Redis, vector search. - Infra: Docker/K8s, cloud services, CI/CD. - Observability: OpenTelemetry, metrics/logging/tracing. - AI: LLM APIs + internal evaluation/experimentation tooling. How We Evaluate Success - Agents complete real user tasks reliably with measurable quality. - Strong regression discipline: improvements don’t break prior behaviors. - Clear operational ownership: dashboards, alerts, root-cause analysis, iteration loops. - Product impact: higher task success rate, lower cost/latency, better user trust. Why Vybers - High-ownership role at the center of product and engineering. - Ship quickly, measure outcomes, iterate. - Work on challenging problems: reliability, tool use, memory, evaluation, and agent UX. Compensation & Benefits Competitive salary + equity + benefits. (Add specifics if you want.) How to Apply Send your resume + a short note on an agentic system you’ve built or shipped (repo, write-up, or screenshots welcome).
Optionally, you can add more information later (benefits, pre-screening questions, etc.)
check_circle

Payment confirmed

A member of the Torre team will contact you shortly

In the meantime, continue adding information to your job opening.