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Job Description

Job Title : Tech Lead - AI & Data Systems


Experience : 3 - 7 Years


Role Type : Full-Time


Permanent Function : Engineering / AI & Data Platforms


Role Overview :


We are looking for a Tech Lead AI & Data Systems to design, build, and scale intelligent data-driven platforms. This role requires a strong blend of hands-on engineering, AI/ML system design, and technical leadership. The ideal candidate will drive end-to-end development of AI-powered data solutions while mentoring engineers and collaborating closely with product, analytics, and business stakeholders.


Key Responsibilities :


AI & Data Platform Engineering :


- Design, develop, and deploy scalable AI/ML-enabled data systems supporting analytics, prediction, and automation use cases.


- Build and optimize data pipelines (batch & real-time) for ingestion, processing, and transformation of structured and unstructured data.


- Lead the integration of ML models into production systems, ensuring reliability, performance, and scalability.


- Implement feature engineering pipelines, model inference workflows, and monitoring mechanisms.


Machine Learning & AI Systems :


- Develop and productionize ML models using frameworks such as TensorFlow, PyTorch, Scikit-learn, or similar.


- Work on ML lifecycle management (MLOps) including model versioning, deployment, retraining, and performance tracking.


- Apply AI techniques such as : Predictive modeling NLP / Computer Vision (where applicable) Recommendation systems Anomaly detection Ensure models are explainable, measurable, and aligned with business outcomes.


Data Architecture & Engineering :


- Design data architectures using data lakes, data warehouses, and streaming systems.


- Work with technologies such as SQL/NoSQL databases, Spark, Kafka, Airflow, Snowflake/BigQuery/Redshift.


- Ensure data quality, governance, and security across the data ecosystem.


- Optimize data storage, query performance, and cost efficiency.


Technical Leadership :


- Act as a technical owner for AI & data initiatives from design to deployment.


- Review architecture, code, and system designs to enforce best practices.


- Mentor junior engineers and guide them on system design, ML concepts, and coding standards.


- Collaborate with Product, Analytics, and Business teams to translate requirements into scalable technical solutions.


Cloud & DevOps :


- Build and deploy AI/data systems on cloud platforms (AWS, Azure, or GCP).


- Implement CI/CD pipelines for data and ML workflows. Use containerization and orchestration tools such as Docker and Kubernetes.


- Monitor system performance, reliability, and scalability in production.


Required Skills & Qualifications :


- 3- 7 years of experience in data engineering, AI/ML systems, or backend engineering.


- Strong programming skills in Python (mandatory); familiarity with Java/Scala is a plus.


- Hands-on experience with machine learning model development and deployment.


- Solid understanding of data structures, algorithms, and distributed systems.


- Experience working with big data frameworks (Spark, Hadoop) and streaming platforms.


- Strong SQL skills and experience with both relational and NoSQL databases.


- Knowledge of MLOps, model monitoring, and ML pipeline automation.


- Experience with cloud-native data and ML services.


- Familiarity with tools such as Airflow, MLflow, Kubeflow, SageMaker, Vertex AI, or equivalents.


- Exposure to monitoring, logging, and alerting tools.


Preferred / Good-to-Have Skills :


- Experience with Generative AI, LLMs, embeddings, or vector databases.


- Knowledge of data governance, privacy, and compliance frameworks.


- Exposure to real-time analytics and event-driven architectures.


- Prior experience working in Agile/Scrum environments.


- Startup or fast-scaling product company experience.

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