Generative AI
-
Infosys Limited
- Bangalore
- 5 - 8 Years
- Full Time
- Prompt Engineering
- traditional ai ml
Posted July 18, 2026 applications close August 17, 2026
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Job Description
Responsibilities
Solution Delivery & Consulting
- Partner with client stakeholders to understand business goals, translate them into AI/ML and Generative AI use cases, and define success metrics.
- Contribute to solution design, effort estimation, and delivery planning for AI initiatives in a consulting environment.
- Communicate findings, trade-offs, and recommendations through clear documentation and presentations.
Generative AI Development
- Build Python-based prototypes and production-ready components for Generative AI workflows (prompting, evaluation, and iteration).
- Develop and refine prompts, templates, and guardrails to improve response quality, safety, and consistency.
- Implement evaluation approaches to measure output quality (accuracy, relevance, hallucination checks) and drive continuous improvement.
AI/ML Engineering
- Develop and maintain ML pipelines in Python for data preparation, training, inference, and monitoring.
- Perform model experimentation, feature engineering, and performance tuning aligned to business requirements.
- Collaborate with cross-functional teams to integrate AI services into applications and workflows.
Minimum Qualifications:
- 3–5 years of professional experience delivering Python-based solutions, including AI/ML or Generative AI components.
- Hands-on experience with Generative AI concepts and implementation (prompt engineering, evaluation, and iterative improvement).
- Working knowledge of AI/ML fundamentals (supervised/unsupervised learning, model validation, metrics).
- Strong Python programming skills with clean coding practices, testing, and debugging.
- Bachelor’s degree in engineering or computers or AI
Additional Responsibilities
Preferred Qualifications:
- Experience delivering end-to-end AI/ML solutions in a client-facing or consulting setup, including requirement discovery and stakeholder management.
- Exposure to LLM application patterns such as RAG, embeddings, vector search, and tool/function calling.
- Familiarity with MLOps practices such as experiment tracking, model versioning, CI/CD for ML, and production monitoring.
- Experience with scalable data/ML platforms and workflows (e.g., Databricks-style notebook-to-production practices).
- Proven ability to balance rapid prototyping with production readiness, including performance, security, and reliability considerations.
Good to have skills:
RAG, Embeddings, Vector Databases, Prompt Engineering, MLOps
Technical and Professional Requirements
Technology->AI/ML, Python, Gen AI, Databricks
Preferred Skills
- traditional ai ml
- Prompt Engineering
Educational Requirements
MCA,MSc,MTech,Bachelor of Engineering,BCA,BSc,BTech