Jobs at Astreya

AI/ML Engineer I

at Astreya • Full-time

Location

remote (India)

Experience

1-2 years

About this Opportunity

Scope

  • Translate business goals into measurable ML goals (KPIs, acceptance thresholds) in collaboration with PMs and data scientists.

  • Own the full lifecycle from prototyping (incl. deep learning and GenAI) to deployment and monitoring.

  • Develop and maintain observability dashboards and alerts tied to ML metrics and feature drift.

  • Run and safeguard models in real time

  • Pilot new ML tools/frameworks, leading integration into production where appropriate.

  • Act as a cross-org ML thought leader—aligning product, infra, legal, and UX on responsible ML.

Key Deliverables by Level

Level 1

AI/ML Engineer I

  • Cleaned, annotated, and pre-processed datasets for supervised learning models

  • Simple machine learning models (e.g., logistic regression, decision trees) implemented under guidance

  • Exploratory data analysis reports

  • Jupyter notebooks documenting model experiments

  • Unit-tested ML scripts

  • Essential Duties and Responsibilities (All Levels):

  • Assist in data cleaning, feature engineering, testing basic ML models, write and debug simple scripts

  • Develop ML modules, assist in deployment, support data pipelines, contribute to documentation and unit testing

  • Support data preparation, model training under guidance, debug code, attend knowledge sessions

  • Develop and maintain smaller AI modules (e.g., anomaly detection), assist in deployments, write technical documentation

  • Lead development of scalable ML models, integrate into ITSM systems, ensure compliance and performance metricsArchitect end-to-end AI platforms, oversee cross-domain projects (e.g., NLP for service desk, CV for asset tracking)

Education and/or Work Experience Requirements

Minimum Requirements

  • Bachelor’s degree in Computer Science,Data Science, IT, or a related field.Master’s preferred or equivalent experience for senior levels

  • Level 1: 1–2 years in data science/ML roles; hands-on with frameworks like scikit-learn or PyTorch

  • Programming: Python (must), Java/C++ (optional), SQL, Apps Script, ServiceNow

  • Frameworks: TensorFlow, PyTorch, scikit-learn, HuggingFace

  • Tools: Git, Docker, Kubernetes, Airflow, MLflow,Jupyter, Postman

  • Data pipeline skills: SQL, Pandas, data APIs

  • Deployment: Flask/FastAPI, CI/CD, REST APIs, cloud functions

  • Strong analytical and debugging skills

  • Translate business problems into AI solutions

  • Communicate effectively with technical and non-technical stakeholders

  • Work under Agile or DevOps-based workflows

  • Stay current with research and emerging technologies

  • Rapidly learn new AI concepts and tools

  • Translate business challenges into ML solutions

  • Communicate technical findings to non-technical stakeholders

  • Handle ambiguity and balance research with delivery

  • Collaborate across globally distributed teams 

Competencies

  • Each level, 1 - 5, represents a progression in complexity, autonomy, and responsibility. The higher the level, the more critical thinking, leadership, and expertise are required.

  • Technical Expertise

  • Understands basic ML/DL principles

  • Codes in Python/R

  • Familiarity with AI/ML tools such as Jupyter, scikit-learn, or TensorFlow (basic use)

  • Applies supervised/unsupervised ML methods

  • Proficient in TensorFlow/PyTorch

  • Uses cloud ML services

  • Familiar with ML pipelines

  • Documents technical solutions and contributes to code reviews 

  • Designs and builds production-grade models

  • Uses MLflow, Airflow, CI/CD tools

  • Experience with model deployment and monitoring

  • Owns end-to-end AI/ML solutions including architecture, training, deployment, and monitoring

  • Applies domain knowledge to improve model relevance (e.g., IT ops, cybersecurity) 

  • Drives model optimization at scale

  • Understands data engineering best practices

  • Defines org-wide AI/ML standards

  • Oversees architecture for reusable platforms

  • Directs ML model governance and compliance

  • Evaluates and mitigates risks related to fairness, privacy, and regulatory requirements

  • Problem Solving & Innovation

  • Solves small coding and data cleaning problems

  • Ability to analyze and clean datasets 

  • Identifies root causes in data/model issues

  • Applies ML solutions to scoped problems

  • Effective in debugging and troubleshooting code and data issues

  • Selects and tunes algorithms for real-world impact

  • Innovates within team on novel use cases

Collaboration & Communication:

  • Good communication and team collaboration skills 

  • Shares ideas in meetings

  • Communicates findings clearly to peers

  • Contributes to documentation and demos

  • Collaborates cross-functionally to integrate models into services

  • Explains model behavior to technical and semi-technical audiences

  • Interprets results and presents actionable insights to stakeholders

  • Builds trust with cross-functional teams and leadership

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