Founding Engineer (Machine Learning, Data Science) e-Hireo

  • company name e-Hireo
  • working location Office Location
  • job type Full Time

Experience: 8 - 8 years required

Pay:

Salary Information not included

Type: Full Time

Location: All India

Skills: Machine Learning, data science, Python, SQL, airflow, spark, Dbt, aws, GCP, Azure, Hadoop, Statistical Analysis, Tensorflow, PyTorch, Scikitlearn, ETLELT pipelines

About E-Hireo

Job Description

JOB DESCRIPTION Experience : 7 - 12 Yrs Location : Bengaluru Designation : Founding Engineer (Machine Learning, Data Science) The Role: Were looking for a talented Founding Engineer to lead the development and deployment of AI/ML models. Youll be responsible for the full pipelinefrom building and fine-tuning models to implementing scalable workflows and deploying production-grade AI solutions. As part of a small and dynamic team, your contributions will be instrumental in defining our AI/ML strategy. Additionally, you'll have the chance to mentor and shape the future of our growing data science team. Key Responsibilities: Machine Learning Model Development: Design, build, and deploy cutting-edge ML models across supervised/unsupervised learning, deep learning, and reinforcement learning. Agentic Workflows Implementation: Develop autonomous AI-driven workflows to enhance operational efficiency. Data Infrastructure: Architect and manage scalable data pipelines to handle structured and unstructured data. Model Optimization: Fine-tune pre-trained models and implement models optimized for real-world applications in pharma and materials. Collaboration: Work closely with cross-functional teams (product, engineering) to integrate AI solutions into business workflows. Mentorship: Help guide and mentor junior data scientists, setting technical standards for the team. Top Requirements: Experience: 8+ years in data science, preferably within pharmaceutical or highgrowth tech sectors (e.g., fintech, healthcare, or similar). Technical Proficiency: Expertise in Python, SQL, and machine learning frameworks (TensorFlow, PyTorch, Scikit-learn). Data Engineering Skills: Experience with tools like Airflow, Spark, or dbt for data pipelines and workflows. Cloud Platforms: Hands-on experience with cloud platforms (AWS, GCP, or Azure) for data storage and model deployment. Model Fine-Tuning: Expertise in fine-tuning ML models for specific tasks and ensuring optimal performance. Problem Solving: Strong analytical and problem-solving abilities with a focus on innovative solutions. Big Data: Knowledge of big data technologies (Hadoop, Spark) and ETL/ELT pipelines. Agentic Workflows: Experience designing and implementing agentic workflows that leverage AI agents for automation. Statistical Analysis: Strong foundation in statistical methods and machine learning algorithms. Bonus Skills: Startup Experience: Background in startup environments or high-growth companies. MLOps: Familiarity with MLOps best practices. Containerization & Orchestration: Experience with Docker, Kubernetes, etc. Data Visualization: Proficiency in tools like Tableau or Power BI for presenting data insights.,