Current jobs related to Cerebry — GenAI Implementation Engineer - Noida - Cerebry


  • Noida, India Cerebry Full time

    MissionTransform Cerebry Research designs into production-grade GenAI features—retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package GenAI services that power Cerebry end-to-end.Why this is exciting (Ownership-Forward)Founder-mindset equity. We emphasize meaningful ownership from day one.Upside...


  • Noida, India Cerebry Full time

    Mission Transform Cerebry Research designs into production-grade GenAI features-retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package GenAI services that power Cerebry end-to-end. Why this is exciting (Ownership-Forward) - Founder-mindset equity. We emphasize meaningful ownership from day one. -...


  • Noida, India Cerebry Full time

    Mission Transform Cerebry Research designs into production-grade GenAI features —retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package GenAI services that power Cerebry end-to-end. Why this is exciting (Ownership-Forward) Founder-mindset equity. We emphasize meaningful ownership from day one....


  • Noida, India Cerebry Full time

    Mission Transform Cerebry Research designs into production-grade GenAI features—retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package GenAI services that power Cerebry end-to-end. Why this is exciting (Ownership-Forward) - Founder-mindset equity. We emphasize meaningful ownership from day one....


  • Noida, India Cerebry Full time

    MissionTransform Cerebry Research designs into production-grade Gen AI features —retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package Gen AI services that power Cerebry end-to-end.Why this is exciting (Ownership-Forward)Founder-mindset equity. We emphasize meaningful ownership from day...


  • Noida, India Cerebry Full time

    Frontend Software Development Engineer :As a Frontend Software Development Engineer, you will own the end?to-end development of rich, high?performance web applications.You will work with modern React (v18) while maintaining and upgrading legacy codebases built in earlier versions (8 &?16), design micro?frontend architectures for modular delivery, and...


  • Noida, India Cerebry Full time

    Job Description Frontend Software Development Engineer As a Frontend Software Development Engineer, you will own the endto-end development of rich, highperformance web applications. You will work with modern React (v18) while maintaining and upgrading legacy codebases built in earlier versions (8 &16), design microfrontend architectures for modular delivery,...


  • Noida, India Cerebry Full time

    What youll build :Retrieval & data grounding : - Connectors for warehouses/blobs/APIs; schema validation and PII-aware pipelines; chunking/embeddings; hybrid search with rerankers; multi-tenant index management.Orchestration & reasoning : - Function/tool calling with structured outputs; controller logic for agent workflows; context/prompt management with...


  • Noida, Uttar Pradesh, India Consulting HR Solutions Full time ₹ 15,00,000 - ₹ 25,00,000 per year

    We're Hiring: GenAI Engineer / DeveloperLocation:PAN India (Remote & Hybrid options available)Experience:4 to 12 YearsCompany:Consulting HR SolutionsApply at:| Role Overview:Are you passionate about cutting-edge AI technologies? Join our dynamic team as aGenAI Engineer / Developerand work on state-of-the-art solutions leveraging OpenAI, Microsoft Azure,...

  • GenAI Architect

    2 weeks ago


    Noida, India SWITS DIGITAL Private Limited Full time

    Job Description Job Title: GenAI Architect Work Location: Noida Experience Required: 7 10 years total | 7+ years relevant | 2+ years in GenAI Job Description We are seeking an experienced GenAI Architect to design and implement advanced Generative AI solutions across text, image, and document intelligence domains. The ideal candidate will have hands-on...

Cerebry — GenAI Implementation Engineer

2 weeks ago


Noida, India Cerebry Full time

Mission Transform Cerebry Research designs into production-grade GenAI features —retrieval-grounded, safe, observable, and ready for seamless product rollout. Architect, code, evaluate, and package GenAI services that power Cerebry end-to-end. Why this is exciting (Ownership-Forward) Founder-mindset equity. We emphasize meaningful ownership from day one. Upside compounds with impact. Initial grants are designed for real participation in value creation, with refresh opportunities tied to scope and milestones. Transparent offers. We share the full comp picture (salary, equity targets, vesting cadence, strike/valuation context) during the process. Long-term alignment. Packages are crafted for builders who want to grow the platform and their stake as it scales. What you’ll build Retrieval & data grounding: connectors for warehouses/blobs/APIs; schema validation and PII-aware pipelines; chunking/embeddings; hybrid search with rerankers; multi-tenant index management. Orchestration & reasoning: function/tool calling with structured outputs; controller logic for agent workflows; context/prompt management with citations and provenance. Evaluation & observability: gold sets + LLM-as-judge; regression suites in CI; dataset/version tracking; traces with token/latency/cost attribution. Safety & governance: input/output filtering, policy tests, prompt hardening, auditable decisions. Performance & efficiency: streaming, caching, prompt compression, batching; adaptive routing across models/providers; fallback and circuit strategies. Product-ready packaging: versioned APIs/SDKs/CLIs, Helm/Terraform, config schemas, feature flags, progressive delivery playbooks. Outcomes you’ll drive Quality: higher factuality, task success, and user trust across domains. Speed: rapid time-to-value via templates, IaC, and repeatable rollout paths. Unit economics: measurable gains in latency and token efficiency at scale. Reliability: clear SLOs, rich telemetry, and smooth, regression-free releases. Reusability: template repos, connectors, and platform components adopted across product teams. How you’ll work Collaborate asynchronously with Research, Product, and Infra/SRE. Share designs via concise docs and PRs; ship behind flags; measure, iterate, and document. Enable product teams through well-factored packages, SDKs, and runbooks. Tech you’ll use LLMs & providers: OpenAI, Anthropic, Google, Azure OpenAI, AWS Bedrock; targeted OSS where it fits. Orchestration/evals: LangChain/LlamaIndex or lightweight custom layers; test/eval harnesses. Retrieval: pgvector/FAISS/Pinecone/Weaviate; hybrid search + rerankers. Services & data: Python (primary), TypeScript; FastAPI/Flask/Express; Postgres/BigQuery; Redis; queues. Ops: Docker, CI/CD, Terraform/CDK, metrics/logs/traces; deep experience in at least one of AWS/Azure/GCP. What you bring A track record of shipping and operating GenAI/ML-backed applications in production. Strong Python , solid SQL , and systems design skills (concurrency, caching, queues, backpressure). Hands-on RAG experience (indexing quality, retrieval/reranking) and function/tool use patterns. Experience designing eval pipelines and using telemetry to guide improvements. Clear, concise technical writing (design docs, runbooks, PRs). Success metrics Evaluation scores (task success, factuality) trending upward Latency and token-cost improvements per feature SLO attainment and incident trends Adoption of templates/connectors/IaC across product teams Clarity and usage of documentation and recorded walkthroughs Hiring process Focused coding exercise (2–3h): ingestion → retrieval → tool-calling endpoint with tests, traces, and evals Systems design (60m): multi-tenant GenAI service, reliability, and rollout strategy GenAI deep dive (45m): RAG, guardrails, eval design, and cost/latency tradeoffs Docs review (30m): discuss a short design doc or runbook you’ve written (or from the exercise) Founder conversation (30m) Apply Share links to code (GitHub/PRs/gists) or architecture docs you authored, plus a brief note on a GenAI system you built—problem, approach, metrics, and improvements over time. Email: