Pioneering trusted medical solutions to improve the lives we touch
Forward Deployed AI Engineer
Location
India
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
Forward Deployed AI Engineer
Convatec
• Lead the delivery of AI-powered solutions from concept to production • Design, build and deploy AI workflows and automation solutions using Azure AI, Copilot Studio and Microsoft Fabric • Own the end-to-end delivery lifecycle, from requirements and solution design through to deployment and operational handover • Provide technical leadership and guidance to engineers, analysts and project teams • Drive continuous improvement by evaluating new technologies
Job Requirements
- 4-5+ years’ experience in software engineering, AI/ML workflow delivery or systems integration
- At least 2 years operating in a senior or lead technical capacity
- Hands-on experience with Azure AI, Copilot Studio and Microsoft Fabric
- Strong proficiency in Python and SQL; solid REST and event-driven API integration experience
- Experience working directly with business stakeholders
Benefits
- Health insurance
- Professional development opportunities
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Role Description As a Forward Deployed ML/AI Engineer, you will bridge the gap between cutting-edge AI research and robust, production-grade applications. You will be responsible for the end-to-end lifecycle of intelligent systems, from data ingestion and model training to deployment. This role requires deep technical proficiency in: - Training and tuning classical machine learning models (such as gradient-boosted trees, random forests, and regression suites) - Modern Generative AI architectures, including Large Language Models (LLMs), retrieval-augmented generation (RAG) pipelines, and agentic workflows Your mission goes beyond model development—you will own the end-to-end delivery of intelligent systems that directly impact customer business metrics. You will: - Design scalable APIs - Optimize model inference latency - Architect full-stack infrastructure to ensure AI capabilities are seamlessly delivered to end-users This role requires exceptional ability to navigate ambiguity, build trust with diverse stakeholders, and operate effectively in fast-paced, cross-functional customer environments. Qualifications - 6+ years of Machine Learning, SWE Gen AI or DS experience (must have productionized models) - 3+ years of implementation and customer-facing experience - In-depth knowledge of classical models (Scikit-Learn, XGBoost) and Generative AI architectures (LLMs, RAG pipelines, and Vector Databases) - Strong engineering skills in backend development (Python, FastAPI/Flask) and ML frontend frameworks (Streamlit) - Proven experience deploying, monitoring, and maintaining models in production (Docker, CI/CD pipelines) - Ability to translate business challenges into clear technical solutions, focusing on business outcomes and identifying root causes - Ability to explain technical concepts and trade-offs to executives in clear business terms - Experience building trust with customers, managing stakeholders, and working independently in fast-paced, ambiguous environments - Deep familiarity with tools like MLflow or Weights & Biases to track experiments, manage model packaging, and maintain an organized model registry - Experience setting up and managing AI/ML environments on cloud platforms (AWS, GCP, or Azure) - Background in building data pipelines, ETL processes, and working with SQL/NoSQL databases Requirements - Familiarity with reducing inference latency and managing compute costs (e.g., quantization, caching strategies) - Experience building autonomous AI agents or multi-agent orchestration frameworks Benefits - Ownership through equity participation - Annual company retreat - Education bonus for continuous learning - Company-wide winter break - Paid time off - Optional in-person events and meetups - Tailored career roadmaps - High-performance culture
Lead Instructor – AI Augmented Engineering
Correlation OneWe transform workforces today to power the data economy of tomorrow. | #6 on LinkedIn's Top Startups 2022 list
• Deliver engaging, effective live sessions (virtual, via Microsoft Teams) covering AI-augmented full-stack development: agentic workflows, spec-driven development, Claude Code, GitHub Copilot, governance and compliance in AI-assisted engineering • Adapt delivery based on both evolving content (the underlying engineering platform is being built in parallel) and learner needs — reading the room to calibrate depth for beginners vs. more advanced participants • Review pre-work to understand where the cohort is struggling, then focus live time on the hard parts • Collaborate with SMEs and curriculum designers to stay current on what's being taught and why
• Contribute to the development of scalable algorithms for processing large datasets • Implement and evaluate machine learning and deep learning algorithms for Natural Language Processing/Understanding • Assist in the design, development, and testing of ML models and pipelines for real-time processing of unstructured data • Collaborate with senior team members to analyze the impact of algorithm changes • Learn and grow under mentorship, gaining exposure to industry-standard NLP tools and techniques
• Contribute to the development of scalable algorithms for processing large datasets, implement and evaluate machine learning and deep learning algorithms for Natural Language Processing/Understanding. • Assist in the design, development, and testing of ML models and pipelines for real-time processing of unstructured data. • Collaborate with senior team members to analyze the impact of algorithm changes. • Learn and grow under mentorship, gaining exposure to industry-standard NLP tools and techniques.



