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Job Title


Lead/ Senior Python Developer Data Scientist_ Exp: 8 years


Company : Atyeti Inc


Location : Jamnagar, Gujarat


Created : 2026-02-23


Job Type : Full Time


Job Description

ResponsibilitiesAI/ML & LLM Expertise:Design, fine-tune, and deploy small and open-source large language models (LLMs) such as Llama, Mistral, OpenAI GPT, etc.Hands-on leadership in prompt engineering, few-shot prompting, and building advanced NLP/NLU workflows.Guide adoption of modern AI/ML frameworks (Hugging Face Transformers, LangChain, LangGraph, etc.) and architect reusable pipelines in Python.Python & API Development:Drive critical systems architecture in Python, using best practices in API and microservices design (FastAPI, Flask, Django, etc.).Cloud Deployment (AWS/Azure/GCP):Architect, deploy, and scale robust, production-grade ML/AI solutions on cloud (AWS strongly preferred), leveraging cloud-native tools (Lambda, S3, ECS/ECR/Fargate, etc.), serverless, and IaC (CloudFormation/Terraform).Champion DevOps best practices, automation, containerization (Docker/K8s), CI/CD, and operational monitoring.Technical Leadership:Mentor engineers, lead by example, drive system architecture reviews and code standards, and ensure high-quality technical delivery across teams.Act as the technical point of contact for escalation, incident resolution, and production troubleshooting.RequirementsExperience:8+ years in software development, including 3+ in senior or lead roles delivering ML/AI solutions in a cloud environment.LLM & Prompt Engineering:Strong real-world experience in LLM prompt engineering, few-shot prompting, and fine-tuning (using frameworks like Hugging Face, LangChain, LangGraph, etc.).Python Expertise:Mastery of Python for API/microservice development, object-oriented patterns, code optimization, automated testing, and packaging.Cloud (AWS Preferred):Hands-on deployment and scaling of AI/ML services on AWS, Azure, or GCP; proficient in containers, serverless, and infrastructure as code.Technical Leadership:Proven experience mentoring software engineers, shaping system design, and driving cross-team initiatives.Communication:Exceptional ability to explain complex technical subjects and influence technical direction with diverse audiences.Nice to HaveDatabricks:Experience building, deploying, or orchestrating ML/AI or data pipelines on Databricks (Data Engineering, MLflow, collaborative workflows, jobs).(Note: Knowledge of Databricks is highly valued but not required; candidates without PySpark but with Databricks experience are welcome.)PySpark:Experience using PySpark for big data ETL/processing, but not a must-have.Data Engineering:Familiarity with Spark, Airflow, advanced data analytics stacks, and modern data lakes (e.g., Delta Lake).ML Productionization & MLOps:Experience with ML lifecycle tools, CI/CD pipelines, monitoring, and model governance.Visualization:Python-based dashboarding/analytics (Streamlit, Dash, Plotly).Security & Compliance:Secure cloud design, IAM, encryption, and compliance frameworks.Published Work / Open Source:Contributions to AI/ML communities, conference presentations, or technical publications.