Posted on: 11/11/2025
We are a leading provider of telecom analytics solutions
Role : Senior Director - AI/ML & GenAI\
About the Job :
We are building a high-impact engineering team to deliver AI/ML and Generative AI capabilities for telecom-grade platforms (roaming, security, analytics, customer experience). The Sr. Director will lead engineering strategy, architecture, and delivery for GenAI services and platform components. This role blends hands-on technical depth with strategic leadership across model training, serving, evaluation, infrastructure, and security-customized for the demands of telecom data and performance.
Roles & Responsibility :
1. Engineering Strategy & Technical Vision:
- Roadmap : Define the engineering roadmap for GenAI platform capabilities-training pipelines, inference layers, and domain-specific services.
- Goals : Establish clear non-functional goals (e.g., SLOs, quality metrics, performance KPIs) and drive alignment across engineering and product.
2. GenAI Model Lifecycle Management:
- LLM Workflows : Oversee pretraining, fine-tuning (SFT), LoRA/PEFT adaptation, and deployment of domain-specific LLMs.
- Guardrails : Build safety filters, hallucination checks, and prompt validation to ensure GenAI output quality and reliability.
3. AI Infrastructure & MLOps:
- Pipelines : Lead model CI/CD, reproducible pipelines, deployment frameworks, and GPU capacity planning.
- Reliability : Partner with SREs to establish observability standards and incident-handling protocols for AI/LLM systems.
4. Platform & Data Architecture:
- Services : Architect scalable services supporting vector search, retrieval-augmented generation (RAG), embedding storage, and model evaluation.
- Telco Data : Lead ingestion and integration strategies for telecom-centric data (CDRs, logs, network KPIs).
5. Release Management & Quality Assurance:
- Validation : Own model validation strategy-unit/perf tests, dataset quality checks, drift detection, and safety evaluations.
- QE Partnership : Collaborate with QE for automation and pre-release validations.
6. Privacy, Compliance & Responsible AI:
- Controls : Enforce data minimization, encryption, access controls, and alignment with GDPR/DPDP via engineering practices.
- Responsible AI : Guide auditability and transparency in the platform architecture.
7. Team Building & Technical Leadership:
- Hiring : Recruit and develop AI/ML engineers, MLOps specialists, and platform architects.
- Culture : Foster performance engineering, clean architecture, and collaboration.
8. Cross-functional Execution
- Partnerships : Interface with Product, Security, Platform, and QE teams to ensure scalable, reliable GenAI delivery.
- Ownership : Maintain architectural and code-level ownership while influencing cross-org execution.
Desired Profile :
- Telecom domain exposure (xDRs, OSS/BSS, network analytics, firewall/security).
- Experience with streaming/OLAP systems (Kafka, ClickHouse) and vector DBs (pgvector, FAISS).
- Strong grasp of model evaluation, prompt testing, and inference efficiency techniques.
Technical Skills :
- AI Systems Architecture : End-to-end design of scalable, performant GenAI systems.
- Operational Readiness : SLO compliance, uptime, monitoring, and incident response.
- Hands-on Technical Leadership : Deep reviews, mentoring, and a high quality bar.
- Execution Focus : Outcome ownership and iterative delivery of engineering plans.
- Strategic Vision : Prioritize investments and platform evolution roadmap.
Tech Stack Overview :
- LLM/GenAI : PyTorch, HuggingFace, Transformers, LoRA/PEFT
- Serving : vLLM, Triton, KServe, REST/gRPC
- Data : Kafka, ClickHouse, pgvector, Spark/Flink
- MLOps : MLflow, GitHub Actions, Argo, Helm
- Infra & Security : Kubernetes, OpenShift, Prometheus, etc.
Work Experience :
- 12+ years in software/AI engineering; 5+ years leading ML/GenAI engineering teams.
Educational Qualification :
- Master's/Ph.D. in CS/EE/Math (or related discipline) with strong grounding in ML, GenAI, and distributed systems.
Location : Bangalore
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