Ignosis is a well-funded fintech infrastructure company building intelligent systems for the BFSI ecosystem. Backed by reputed investors, we focus on financial data intelligence, hyper-personalization, automation, and democratized credit access.
At Ignosis, we believe the next wave of fintech will be powered by AI systems that can think, speak, and act. We are building cutting-edge AI platforms that help financial institutions unlock deeper insights, automate complex workflows, and deliver smarter financial experiences.
Join us in building the future of AI-driven financial infrastructure.
Job Overview
We are building a production Voice AI Orchestrator a system where LLM agents listen, reason, and respond in real time across voice and messaging channels.
As an AI Engineer, you will design and build LLM-powered agent systems, orchestration frameworks, and real-time voice pipelines. This is not a wrapper role you will own the AI system architecture end-to-end, from agent design and evaluation to production reliability.
We are looking for engineers who have built and shipped AI systems in production, understand the challenges of non-deterministic LLM outputs, and enjoy solving complex real-world engineering problems.
Key Responsibilities
AI Agents & Orchestration
- Design and build multi-agent systems using frameworks like LangGraph and LangChain.
- Implement orchestration workflows with branching logic, retries, and parallel tool calls.
- Build intelligent pipelines with custom tools, memory layers, and dynamic routing.
Voice AI Systems
- Build real-time voice AI pipelines (STT LLM TTS) optimized for low latency.
- Integrate telephony systems via Twilio, WebRTC, and SIP.
- Engineer conversational voice experiences that perform reliably in production.
LLM Reliability & Evaluation
- Design LLM evaluation pipelines including regression testing and adversarial evaluation.
- Build guardrails, output validation, and fallback routing for reliable AI behavior.
- Implement observability and monitoring for LLM systems.
Retrieval & Knowledge Systems
- BuildRAG pipelinesfor intelligent knowledge retrieval
- Implement hybrid search, re-ranking, and context compression strategies
- Work with vector databases and embedding systems
Backend & System Integration
- Integrate AI systems with Java / Spring Boot backend services
- Implement WebSocket and asynchronous APIs for real-time agent communication.
- Build scalable and reliable system architectures.
Experience
- 2+ years of software engineering experience
- Experience building AI or LLM-based applications
- Prior experience deploying LLM agents or AI pipelines into production environments
Agents Framework
Experience with one or more: LangChain/LangGraph/LlamaIndex/CrewAI/Haystack/Semantic Kernel
LLM Engineering
- OpenAI APIs / GPT models
- RAG (Retrieval-Augmented Generation)
- Prompt engineering and context design
- Function calling and structured outputs
- LLM evaluation and reliability techniques
Voice AI
STT / TTS systems/Whisper/Deepgram/ Azure Speech/Google Speech/Real-time voice pipelines/Telephony integration (Twilio, WebRTC, SIP)
Backend
JavaSpring BootWebSocketsAsync / MultithreadingREST APIs
AI Infrastructure
- Vector DatabasesEmbeddingsSemantic Search
- PineconeQdrantWeaviateMilvusFAISS
Who We Are Looking For
- Engineers who have shipped AI systems to production
- Builders who think in systems latency, evaluation, reliability
- People who understand that prompt engineering is engineering
- Engineers comfortable working in fast-moving, ambiguous environments
- Individuals who take full ownership from idea to production
Nice to Have
- Experience with open-source LLMs (Llama, Mistral, Gemma)
- Familiarity with LangSmith, Helicone, or LLM observability tools
- Experience with real-time voice or telephony AI
- Contributions to open-source AI tools
What's in it for you
- Build cutting-edge AI systems combining LLMs, voice AI, and agent orchestration
- Work on real-world fintech problems with top banks, NBFCs, and fintechs
- Be part of a fast-moving startup building next-generation AI infrastructure
- Competitive compensation and high ownership
To conclude, this role is ideal for engineers who want to build production-grade AI systems that think, speak, and act. At Ignosis, you will help shape the future of AI-powered fintech infrastructure.
To apply, send your resume to [Confidential Information]