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Lead Data Scientist/Machine Learning Engineer in ATB-market

Posted more than 30 days ago

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ATB-market

ATB-market

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Without experience
lviv
Full-time work
We invite you to join our team Lead Data Scientist/Machine Learning EngineerResponsibilities:lead the ML direction and roadmap; ensure the transition from ideas to stable production and scaling; demonstrate measurable impact on P&L.Areas of responsibility: ML initiative priorities, architectural principles, metrics/validation standard; Operational outline: dataset/feature standards, SRM control, roll-out/rollback policies; Reliability/observability of services (SLO/SLI, alerting, cost-aware infe

We invite you to join our team Lead Data Scientist/Machine Learning Engineer

Responsibilities:lead the ML direction and roadmap; ensure the transition from ideas to stable production and scaling; demonstrate measurable impact on P&L.

Areas of responsibility: 

  • ML initiative priorities, architectural principles, metrics/validation standard; 
  • Operational outline: dataset/feature standards, SRM control, roll-out/rollback policies; 
  • Reliability/observability of services (SLO/SLI, alerting, cost-aware inference), including edge scenarios; 
  • Technical leadership: hiring/mentoring, review, research and knowledge culture; 
  • Data governance: PII, access, lineage, model maps/documentation;
  • Experimental platform: events, stratification, incrementality;
  • Pricing/promo models with elasticities, cannibalization, shelf/stock limits; mission personalization;
  • Synchronization of ML goals with budget/plan, transparent impact reporting;

Expected results (OKR examples): 

  • NDCG@K > 2 v.p. in personalization (A/B, statistical significance) 
  • Maintenance growth due to a relevant promo mix within control corridors.

Requirements:

  • 5+ years in ML/DS, 2+ years as a lead/tech lead;
  • Proven experience in building and bringing to production on-prem ML services with store/region replication; 
  • Cases in CV/Recsys/TS with a proven business effect; production-Python/SQL; MLOps practices, testing, monitoring; 
  • Events (streaming) and batch, model monitoring (drifts/stability/degradations), design of experiments, business communications.

Will be a plus: 

  • Multimodal features/LLM-signals for cold-start; inventory-aware recsys; promotion optimization; 
  • Feature contracts/lineage/metadata management; inference cost optimization (ONNX/TensorRT/quantization);
  • Edge inference in hall/SCO, anti-fraud.

Technical stack (on-prem): 

Roles/models

  1. CV: Python, PyTorch, OpenCV, Albumentations, YOLOv8–v10 or Detectron2, TrOCR or Tesseract.
  2. Recsys: NVIDIA Merlin/Transformers4Rec, implicit (ALS), LightFM, TS reordering/Forecast: LightGBM, CatBoost, XGBoost, N-BEATS, N-HiTS, TFT
  3. Vectors: FAISS, pgvector, Milvus | Qdrant. Pandas/Polars for local processing.

NLP/LLM platform 

  1. NLP core: Hugging Face Transformers, Datasets, Tokenizers, SentencePiece, spaCy|Stanza (uk), Sacremoses.  
  2. LLM serving: vLLM|Hugging Face TGI; TensorRT-LLM|llama.cpp/gguf (by resource profile).  
  3. RAG: OpenSearch (BM25) plus re-ranker, chunking and ingest, hybrid search with FAISS|pgvector or Milvus|Qdrant.  
  4. Evaluation: ROUGE, BLEU, METEOR, BERTScore, MTEB, Recall@K, MRR, NDCG. Security/PII: Microsoft Presidio. 

MLOps/Serving/experiments

  1. MLflow (Tracking/Registry/Serving)
  2. Serving: NVIDIA Triton | KServe | Seldon Core | Ray Serve
  3. Feature Store: Feast (self-host)

Data and Processing Platform

  1. Streaming: Kafka | Redpanda
  2. Compute: Spark| Flink
  3. Orchestration: Airflow | Dagster
  4. Transformations: dbt Core
  5. SQL/Storefronts: PostgreSQL, ClickHouse

Data Storage and Architecture

  1. Lakehouse: Apache Iceberg | Delta Lake
  2. Formats: Parquet, ORC
  3. Object storage: MinIO | CEPH

Observability/quality

  1. Service observability: Prometheus, Grafana, Loki
  2. ML observability: Evidently, whylogs
  3. Lineage/directory: OpenLineage, OpenMetadata or DataHub

Infrastructure and security

  1. Containerization/cluster: Docker, Kubernetes | OpenShift
  2. Security: policy-as-code, Vault Secret Management | Sealed Secrets
gig contract or in the state (reservation is possible);
  • paid annual leave of 24 calendar days, paid sick leave;
  • regular payment of wages without delays and in the stipulated volumes, regular salary review;
  • possibility professional and career development;
  • training courses.

  • Contact person: Kateryna, tel.0984567857 (t.me/KaterynaB_HR)

    Without experience
    lviv
    Full-time work
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