AI/ML Engineer
Actively Reviewing the Applicationsr3 Consultant
Job Description
Job Title- ML Engineer AI Suggestion & Data-Enrichment Systems
Years of Exp- 4 to 6 Years relevant experience
Responsibilities
Role: Build ML components that power an enterprise tool where users assemble item/recipe-like structures from a bespoke ERP catalogue. Your models will
(1) suggest the right items and alternatives,
(2) pre-populate grids/forms based on a brief,
(3) learn from user overrides, and
(4) turn unstructured inputs (notes, transcripts) into structured updates.
Everything has to work with role based workflows and sometimes incomplete ERP data.
Responsibilities
- AI-powered suggestions: Build ranking/recommendation models that propose the most suitable items/components based on business variables such as cost, customer/profile, category, service/class, availability, and preferred/platformed items.
- Auto-population of structures/grids: Train models to generate or pre-fill data grids/forms from a short description or template (e.g. client type, duration, constraints) using items already present in the ERP.
- Human-in-the-loop learning: Capture user actions (accept, reject, replace, mark-as
- preferred) and feed them back to improve future suggestions for that unit/customer/profile.
- Use of complementary data: Join ERP data with extra attributes (nutrition/impact scores, trends, satisfaction scores, custom business attributes) so ranking can optimize for more than one objective.
- Unstructured structured (NLP): Take text or transcripts from review/presentation sessions and extract structured changes (replace item A with B, adjust quantity, add constraint) and map them to the right entities.
- Data pipelines & validation: Build reliable feature/data pipelines from ERP and external sources; add checks for missing codes, outdated cost data, and duplicates so models dont learn from bad rows.
- MLOps & serving: Package models behind low-latency services, register versions, enable A/B or shadow runs, and monitor latency, coverage, and suggestion quality.
Skills
Must-Have Qualifications
- 4+ years in production ML (recommendation/ranking/search or adjacent).
- Strong Python and ML ecosystem (pandas, scikit-learn, plus PyTorch/TensorFlow).
- Experience combining rules/business constraints with learned models in one scoring pipeline.
- Solid NLP for classification/extraction; able to work from ASR/transcripts to structured fields.
- Comfortable with ERP/master-datastyle inputs (incomplete, late, inconsistent) and building validation/normalization layers.
- Experience with MLOps (experiment tracking, model registry, CI/CD for ML, monitoring).
- Able to define and track acceptance rate, top-k hit rate, coverage, freshness as product ML metrics.
Required Skills
Quick Tip
Customize your resume and cover letter to highlight relevant skills for this position to increase your chances of getting hired.
Related Similar Jobs
View All
Delivery Manager/Senior Delivery Manager – Cloud
EPAM Systems
1970747-Lead Assistant Manager
EXL
Chief AI/ML Engineer
Mulya Technologies
Mid-Senior Machine Learning Engineer (Computer Vision)
Uplers
1970747-Lead Assistant Manager
EXL
Share
Quick Apply
Upload your resume to apply for this position