Website:
ltm.com
Job details:
Hi,
Kindly attach your updated resume & share the below information at Nikhil.Singh@LTM.com -
Current location -
Open to relocate to Pune (If not in Pune) -
Current CTC -
Expected CTC -
Notice period (LWD if serving) -
Years of Experience -
Job Title: AI / ML Architect
Location - Pune
Experience required - 15+ years relevant
The AI Engineer Trainer plays a pivotal role in enabling safe responsible and enterprise ready AI adoption within the Exponential Engineer Program This role focuses on demystifying AI for BFSI contexts teaching participants how to integrate AI capabilities into complex systems without compromising compliance security or reliability The trainer will guide engineers through AI lifecycle management risk mitigation and practical integration patterns ensuring AI becomes a governed system component rather than an uncontrolled bolton
Key Responsibilities
- Design and deliver comprehensive modules on AI system behaviour lifecycle and failure modes contextualised for BFSI environments
- Teach integration patterns for AI services eg LLM APIs predictive analytics into enterprise applications using REST gRPC and eventdriven architectures
- Explain AI drift data and model bias and regulatory implications including GDPR PCI DSS and emerging AI governance frameworks
- Guide participants on embedding AI across the SDLC requirements AI discoverability design placement and boundaries development safe API consumption testing scenario expansion and operations drift monitoring
- Demonstrate secure AI consumption practices including prompt engineering for developers API authentication OAuth2OIDC and audit logging
- Collaborate with Full Stack Engineer and Data Architect trainers to ensure seamless integration of AI components with application and data layers
- Simulate realworld BFSI project scenarios such as AIassisted credit risk scoring or fraud detection highlighting compliance and humanintheloop controls
- Support capstone projects by reviewing AI integration strategies failure handling mechanisms and governance artefacts
Required Experience
- 8 12 years of overall technology experience with at least 46 years in AIML systems engineering
- Handson experience integrating AI services into enterprise applications via APIs and SDKs
- Exposure to BFSI or other regulated domains with understanding of compliance and risk management
- Proficiency in Python for AI workflows and Java for enterprise integration contexts
- Familiarity with AI platforms and tools such as TensorFlow PyTorch conceptual OpenAI APIs Azure Cognitive Services or AWS AI services
- Experience implementing observability for AI components including logging metrics and drift detection
Core Skills Competencies
- Deep understanding of AI system behaviour and lifecycle management
- Knowledge of BFSI regulatory frameworks and AI governance principles
- Ability to articulate complex AI concepts to nonAI engineers and business stakeholders
- Strong collaboration skills for working with application and data architecture teams
- Expertise in riskaware design failuremode analysis and humanintheloop patterns
- Excellent communication and facilitation skills for workshops and executive presentations
Example Deliverables
Detailed training modules on AI lifecycle integration patterns and risk mitigation
Handson labs demonstrating secure AI API consumption and drift monitoring
Capstone project artefacts including AI integration design fallback strategies and compliance checklists
Reference architectures for AIenabled BFSI systems with documented governance controls
Preferred Certifications
Certified Artificial Intelligence Practitioner CAIP or equivalent
AWS Certified Machine Learning Specialty or Azure AI Engineer Associate
TOGAF or similar architecture certification added advantage
Reporting Collaboration
Reports to Programme Director Exponential Coach Collaborates closely with Full Stack Engineer Data Architect QA Architect and Business Analyst trainers to ensure cohesive delivery and integrated learning outcomes
Click on Apply to know more.