About the Company
Employees in this job function are responsible for designing, building, deploying and scaling complex self-running ML solutions in areas like computer vision, perception, localization etc. They also automate and optimize the end-to-end ML model lifecycle using their expertise in experimental methodologies, statistics, and coding for tool building and analysis.
About the Role
A short paragraph summarizing the key role responsibilities.
Responsibilities
- Collaborate with business and technology stakeholders to understand current and future ML requirements
- Design and develop innovative ML models and software algorithms to solve complex business problems in both structured and unstructured environments
- Design, build, maintain and optimize scalable ML pipelines, architecture and infrastructure
- Use machine language and statistical modeling techniques such as decision trees, logistic regression, Bayesian analysis and others to develop and evaluate algorithms to improve product/system performance, quality, data management and accuracy
- Adapt machine learning to areas such as virtual reality, augmented reality, object detection, tracking, classification, terrain mapping, and others.
- Train and re-train ML models and systems as required
- Deploy ML models and algorithms into production and run simulations for algorithm development and test various scenarios
- Automate model deployment, training and re-training, leveraging principles of agile methodology, CI/CD/CT (Continuous Integration/ Continuous Deployment/ Continuous Training) and MLOps
- Enable model management for model versioning and traceability to ensure modularity and symmetry across environments and models for ML systems
Qualifications
- Education Required: Bachelor's Degree, Master's Degree
- Education Preferred: Certification Program
Required Skills
- Python
- CI-CD
- LLM
- Deeplearning
- API
- AI/ML
- ALGORITHMS
Preferred Skills
Pay range and compensation package
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Equal Opportunity Statement
Employees in this job function are responsible for predicting and/or extracting meaningful trends/patterns/recommendations from raw data, leveraging data science methodologies including Machine Learning (ML), predictive modeling, math, statistics, advanced analytics, etc.
Key Responsibilities
- Understand business requirements and analyze datasets to determine suitable approaches to meet analytic business needs and support data-driven decision-making
- Design and implement data analysis and ML models, hypotheses, algorithms and experiments to support data driven decision-making
- Apply various analytics techniques like data mining, predictive modeling, prescriptive modeling, math, statistics, advanced analytics, machine learning models and algorithms, etc.; to analyze data and uncover meaningful patterns, relationships, and trends
- Design efficient data loading, data augmentation and data analysis techniques to enhance the accuracy and robustness of data science and machine learning models, including scalable models suitable for automation
- Research, study and stay updated in the domain of data science, machine learning, analytics tools and techniques etc.; and continuously identify avenues for enhancing analysis efficiency, accuracy and robustness
Additional Safety Training/Licensing/Personal Protection Requirements
Ability to design end-to-end ML system architecture with:
- Model orchestration (LLM + OCR + embeddings + prompt pipelines)
- Preprocessing for images/PDF/PPT/Excel
- Embedding store, vector DB, or structured extraction systems
- Async processing queue, job orchestration, microservice design
- GPU/CPU deployment strategy
Must be strong in scaling ML systems:
- Batch processing large files
- Handling concurrency, throughput, latency
- Model selection, distillation, quantization (GGUF, ONNX)
- CI/CD for ML (GitHub Actions, Jenkins)
- Model monitoring (concept drift, latency, cost optimization)
- Experience with cloud platforms: AWS/GCP/Azure with AI services (SageMaker, Vertex AI, Bedrocknice to have)
Problem-Solving & Solution Ownership:
- Able to identify the right ML approach (fine-tuning, retrieval, prompting, multimodal pipeline).
- Ability to break vague product problems into clear ML tasks.
- Skilled in PoC building, quick prototyping, and converting them into production systems.
- Capability to estimate feasibility, complexity, cost, and timelines of ML solutions.