About the Role
Straive is looking for a talented and driven Consultant / Data Scientist / GenAI Engineer to join our Analytics & GenAI delivery team . In this role, you will work under the guidance of the Senior Project Manager / Engagement Manager to design, develop, and deploy advanced AI / ML and Generative AI solutions for global enterprise clients. You will be part of a high-performing team, collaborating with both onshore and offshore members to build scalable, production-grade AI systems.
This role is ideal for candidates from premier engineering institutes with 2–3 years of relevant experience in Python development, LLM integration, and RAG workflows, along with a passion for solving complex problems in real-world business contexts.
Key Responsibilities
- Develop and maintain Python-based applications, AI / ML models, and data processing pipelines for GenAI projects.
- Implement Large Language Model (LLM) integrations, including Retrieval-Augmented Generation (RAG) pipelines and embedding-based search solutions.
- Build data ingestion and transformation workflows, working with structured and unstructured datasets.
- Optimize AI model performance through prompt engineering , fine-tuning, and evaluation techniques.
- Collaborate closely with senior team members to translate business requirements into technical solutions.
- Integrate AI solutions with vector databases (e.g., Cosmos DB, Pinecone, ChromaDB) and API-driven applications.
- (Optional) Contribute to cloud-native deployments and Azure architecture –based solutions, including containerization, CI / CD, and basic MLOps workflows.
- Document workflows, maintain code repositories, and follow Agile development practices.
Required Qualifications
2–3 years of relevant experience in AI / ML development, preferably in enterprise projects.Bachelor’s or Master’s degree in Computer Science, Data Science, AI / ML, or related field from a premier engineering institute .Proficiency in Python programming and familiarity with relevant libraries (e.g., LangChain, Hugging Face, Pandas, NumPy).Hands-on experience implementing RAG pipelines , embeddings, and vector search solutions.Understanding of LLM architectures and integration patterns.Working knowledge of SQL and data processing best practices.Basic knowledge of cloud DevOps concepts , preferably with Azure (AWS / GCP experience is also acceptable).Preferred Skills
Exposure to agentic AI frameworks such as LangGraph, Semantic Kernel, or similar.Familiarity with ML model lifecycle management and deployment workflows.Prior experience working with cross-border teams and Agile environments.