Business Client need AI Software Development
Contact person: Business Client
Phone:Show
Email:Show
Location: United States
Budget: Recommended by industry experts
Time to start: As soon as possible
Project description:
"Summary
Recommendation and ranking project.
Focus: build the ranking and data backbone that makes the algorithm feel “alive” — real-time features, logistic-regression ranking, and nightly retraining based on user interactions.
Tech Stack
Infra: Nats, Redis, Postgres or MongoDB, S3/GCS
Compute: Python, PyTorch / scikit-learn, Flink / Nats
Data: Parquet / Delta, Metabase, Feature Store (Feast-style Redis + S3)
Model Serving: ONNX / FastAPI / Triton
CI/CD: ArgoCD, GitHub Actions
You’re a Fit If You:
Have built production recommendation or ranking systems (newsfeed, ads, marketplace, video, etc.).
Know streaming data systems (Kafka, Flink, or Spark Structured Streaming).
Can implement online metrics (EMA, sketches, windowed aggregates).
Understand point-in-time feature joins and data leakage prevention.
Have shipped simple but high-impact models (logistic regression, tree-based, or two-tower retrieval).
Are hands-on — able to go from raw events to a deployed model in a few days.
Are pragmatic: prefer a working baseline this week over a perfect pipeline next month.
Deliverables
Implement the data → features → model → inference loop end-to-end.
Stand up real-time stream feature computation (Kafka, Flink, or Kafka Streams).
Build rolling metrics (CTR, finish rate, popularity EMAs) into Redis for live ranking.
Train and deploy a logistic regression model using nightly batches from S3/Parquet.
Implement isotonic calibration for well-behaved prediction scores.
Create a reproducible training pipeline with point-in-time joins and schema versioning.
Integrate model inference into the Feed API (Typescript microservice).
Monitor feature freshness, Nats lag, and model staleness SLIs." (client-provided description)
Matched companies (3)

JanakiBhuvi Tech Labs Private Limited

Kiantechwise Pvt. Ltd.
