Position : AI Applications Engineer
Experience : 4+Years
Timings : 3PM-12AM IST
Location : Remote
About the role
We’re building agentic AI apps for real business use—voice / chat agents that orchestrate workflows across CRMs / ERPs and internal tools. You’ll help us shipfeatures end-to- end : Django-based backends, real-time agent infra (LiveKit + Deepgram), and LLM integrations (API and self-hosted). Great for someone with solid Python fundamentals plus side projects in AI / agents.
What you’ll do
Build backend services in Python / Django (REST / WebSocket endpoints, auth, RBAC).
Implement agent flows that combine LiveKit (real-time media), Deepgram (ASR / TTS), and LLM APIs (OpenAI / Anthropic / Mistral / Azure).
Integrate tools and data : PostgreSQL , Redis , external SaaS (e.g., Salesforce / HubSpot / Zendesk) via APIs.
Add job orchestration C background work : Celery / RQ , scheduled tasks, retries.
Support self-hosted LLMs (Docker / Kubernetes) and vector search (e.g., pgvector , Qdrant , or FAISS ).
Deploy and operate services on Render.com (or similar) : blue-green deploys, background workers, cron jobs, service health checks, environment variables / secrets.
Write tests, logs, and metrics; add basic observability (Prometheus / OpenTelemetry, Sentry).
Document endpoints, flows, and runbooks.
Nice to have (you’ll learn here if you don’t know all yet)
LangChain / LlamaIndex , function / tool calling, multi-step “agents”.
Real-time comms basics : WebRTC , TURN / STUN, audio pipelines.
Prompt engineering, RAG patterns, evals C guardrails (prompt libraries, regex / JSON schema validation).
Frontend basics (React) to debug agent UIs.
CI / CD on Render.com (build C start commands, service dependencies, health checks, persistent disks).
Security hygiene : OAuth2, JWT, signed webhooks, PII handling, rate limits.
Minimum qualifications
~3 year experience (internships or personal projects count) with Python andDjango / FastAPI.
You’ve shipped at least one project using an LLM (API or local) or a speech API.
Comfortable with Git , Docker , PostgreSQL , Redis , and basic Linux .
Can read API docs and wire up third-party integrations quickly.
Clear written communication; habit of small, tested PRs.
Tech stack you’ll touch here
Python 3.11+, Django / DRF, FastAPI (selective), Celery, Redis, Postgres, WebSockets, LiveKit, Deepgram, LLMs (OpenAI / Anthropic / Mistral / Azure), self-hosted (Ollama / vLLM), vectorDB (pgvector / Qdrant),LangChain / LlamaIndex, Kafka (nice), Render.com, Docker, GitHubActions, Sentry / OTel.
Example problems you might work on
“Voice agent” that answers calls, verifies a customer, pulls order status from Django models, and schedules a return— LiveKit + Deepgram + tool-using LLM .
RAG : ingest PDFs / emails from a shared inbox, chunk / embed, store in pgvector, expose a search+answer endpoint.
Workflow : Celery pipeline to reconcile invoices nightly; retries with idempotency keys and alerting.
Ai Application Engineer • Ajit, Rajasthan, India