Valtech

Data Scientist

Valtech  •  Bengaluru, IN (Hybrid)  •  1 day ago
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Job Description

Why Valtech? We’re the experience innovation company - a trusted partner to the world’s most recognized brands. To our people we offer growth opportunities, a values-driven culture, international careers and the chance to shape the future of experience.

The opportunity

At Valtech, you’ll find an environment designed for continuous learning, meaningful impact, and professional growth. Whether you're pioneering new digital solutions, challenging conventional thinking or building the next generation of customer experiences, your work will help transform industries.

We are proud of:

The role

As a Data Scientist, you are passionate about experience innovation and eager to push the boundaries of what’s possible. You bring 4+YEARS of experience, a growth mindset and a drive to make a lasting impact.

You will thrive in this role if you are:

  • A curious problem solver who challenges the status quo
  • A collaborator who values teamwork and knowledge-sharing
  • Excited by the intersection of technology, creativity and data
  • Experienced in Agile methodologies and consulting (a plus)

Role responsibilities

Fraud & Banking Analytics

  • Develop, validate, and maintain supervised and unsupervised models for fraud detection, credit risk scoring, AML typology identification, and transaction anomaly detection.
  • Build real-time and near-real-time scoring pipelines integrating with banking event streams (Kafka, Pub/Sub) and decision engines. • Perform deep exploratory analysis of transactional data, customer behavioural signals, merchant data, and graph-based relationship networks to surface fraud patterns.
  • Collaborate with compliance, risk, and product teams to translate regulatory requirements (RBI guidelines, PCI-DSS, Basel III) into model design constraints.
  • Construct and maintain feature stores covering entity-level aggregations, velocity features, device/network signals, and geospatial behavioural attributes.
  • Champion model interpretability using SHAP, LIME, and counterfactual explanations to satisfy audit and regulatory scrutiny.

Generative AI & Deep Learning

  • Design and fine-tune LLMs (Gemini, GPT-4o, Llama, Mistral) on proprietary banking corpora using PEFT and LoRA for tasks such as SAR narrative generation, dispute summarisation, and customer communication.
  • Architect Retrieval-Augmented Generation (RAG) systems grounded in internal knowledge bases — policy documents, fraud rulebooks, regulatory circulars — with vector stores (Pinecone, Milvus, Weaviate, ChromaDB).
  • Apply Computer Vision and NLP to multimodal data pipelines (cheque images, KYC documents, audio call transcripts) for identity verification and fraud triage. • Develop generative models (GANs, VAEs, Diffusion) for synthetic data augmentation to address class imbalance in fraud datasets while meeting data-privacy obligations.
  • Build prompt engineering frameworks using LangChain and LlamaIndex; implement chain-of-thought and agentic reasoning for complex investigative workflows.

Engineering & Delivery

  • Write production-ready Python code adhering to Valtech engineering standards — unit-tested, type annotated, and reviewed.
  • Operationalise models with MLOps tooling (MLflow, Kubeflow, Vertex AI Pipelines) covering versioning, A/B experimentation, drift monitoring, and automated retraining.
  • Expose model outputs via FastAPI or Flask microservices integrated with banking middleware and case management platforms.
  • Work within Agile delivery squads, participate in sprint planning, demo sessions, and client-facing workshops.

Governance & Stakeholder Engagement

  • Enforce Responsible AI principles — bias audits, fairness metrics, model cards, and NeMo Guardrails for deployed LLMs.
  • Translate complex model behaviour into clear narratives for non-technical stakeholders including compliance officers, fraud investigators, and C-suite sponsors.

Must have qualifications

Fraud & Banking Domain

  • Proven track record building fraud models (card-not-present, account takeover, synthetic identity, first-party fraud, money-mule networks).
  • Experience with graph analytics (PyG, DGL, Neo4j) for network-based fraud ring detection.
  • Familiarity with banking data schemas: ISO 8583, SWIFT MT messages, core-banking extracts, and bureau data (CIBIL/Experian).
  • Exposure to regulatory frameworks: RBI Master Directions on Fraud, FATF AML/CFT guidelines, PCI-DSS Level 1 environments.

Core AI / ML

  • Expertise in supervised learning (XGBoost, LightGBM, neural networks) and unsupervised methods (isolation forest, autoencoders, DBSCAN) for anomaly detection.
  • Strong foundations in Computer Vision and NLP; proven experience with multimodal pipelines combining images, text, and structured tabular data.
  • Proficiency in PyTorch or TensorFlow for model development and custom training loops.

Generative AI Stack

  • Hands-on with Gemini, OpenAI GPT-4x, and open-source LLMs (Llama 3, Mistral, Phi-3).
  • Model fine-tuning using PEFT, LoRA, and QLoRA on domain-specific corpora.
  • RAG architecture design: chunking strategies, hybrid retrieval (BM25 + dense), re-ranking, and query routing.
  • Vector database proficiency: Pinecone, Milvus, Weaviate, or ChromaDB for semantic search and knowledge grounding.
  • Advanced prompt engineering: chain-of-thought, few-shot, structured output, and tool-calling patterns using LangChain or LlamaIndex

Engineering

  • Python (primary): pandas, NumPy, scikit-learn, PySpark; clean, production-ready, PEP-8 compliant code with test coverage.
  • Cloud: hands-on experience with GCP (Vertex AI, BigQuery, Dataflow, Cloud Run), AWS (SageMaker, Redshift), or Azure (ML Studio, Synapse).
  • SQL proficiency for complex analytical queries across relational and columnar stores (BigQuery, Snowflake, Redshift).
  • MLOps fundamentals: experiment tracking (MLflow), containerisation (Docker, Kubernetes), CI/CD pipelines for model deployment.

Nice to have qualifications

  • MLOps tooling: MLflow, Kubeflow, Vertex AI Pipelines for end-to-end model lifecycle management.
  • Responsible AI: bias detection frameworks, model fairness metrics, NeMo Guardrails for safe LLM deployment.
  • API Development: wrapping models in production REST APIs using FastAPI or Flask.
  • Reinforcement Learning from Human Feedback (RLHF) and self-supervised learning approaches.
  • Experience with emerging GenAI architectures: multi-agent systems, mixture-of-experts, speculative decoding.
  • Databricks (Unity Catalog, Delta Live Tables, MLflow) for large-scale feature engineering and model serving.
  • Exposure to open-banking APIs and real-time payment rails (UPI, IMPS, RTGS) from a data perspective.

If you do not meet all the listed qualifications or have gaps in your experience, we still encourage you to apply. At Valtech, we recognize that talent comes in many forms, and we value diverse perspectives and a willingness to learn.

Commitment to reaching all kinds of people

We design experiences that work for all kinds of people - and that starts with our own teams. At Valtech, we’re intentional about building an inclusive culture where everyone feels supported to grow, thrive and achieve their goals. No matter your background, you belong here. Explore our Diversity & Inclusion site to see how we’re creating a more equitable Valtech for all.

The benefits

This is a Full-Time position based in Bengaluru

Beyond a competitive compensation package, we offer:

  • Flexibility, with remote and hybrid work options (country-dependent)
  • Career advancement, with international mobility and professional development programs
  • Learning and development, with access to cutting-edge tools, training and industry experts

Our benefits are tailored to each location. Your Talent Partner will provide full details during the hiring process.

Your application process

Once you apply, our Talent Acquisition team will review your application. Your CV should cover key information on relevant experiences and expertise. We do not require information such as age, gender, marital status, or a headshot in your application. We review all candidates based on skills, experience, and potential.

⚠️ Beware of recruitment fraud! Only engage with official Valtech email addresses ending in @valtech.com

We are committed to inclusion and accessibility. If you need reasonable accommodations during the interview process, please either indicate it in your application or let your Talent Partner know.

About Valtech

Valtech is the experience innovation company that exists to unlock a better way to experience the world. By blending crafts, categories, and cultures, we help brands unlock new value in an increasingly digital world.

At the intersection of data, AI, creativity, and technology, we drive transformation for leading organizations, including L’Oréal, Mars, Audi, P&G, Volkswagen Dolby, and more.

At Valtech, we don’t just talk about transformation. We make it happen. Our people are the heart of our success, and we foster a workplace where everyone has the support to thrive, grow and innovate.

Are you ready to create what’s next? Join us.

Valtech

About Valtech

We are the experience innovation company. In a digitally accelerated world, where ‘the best’ race toward ‘best practices’, we help brands break through and leap beyond the competition. At the intersection of crafts, categories and cultures, our global teams unlock value by leveraging the power of data, AI, creativity and technology to achieve true experience innovation. With a focus on delivering exceptional business results, we exist to unlock a better way to experience the world.

𝗦𝗼𝗹𝘂𝘁𝗶𝗼𝗻𝘀 𝗱𝗲𝘀𝗶𝗴𝗻𝗲𝗱 𝘁𝗼 𝗮𝗰𝗵𝗶𝗲𝘃𝗲 𝘁𝗵𝗲 𝗲𝘅𝗰𝗲𝗽𝘁𝗶𝗼𝗻𝗮𝗹:

Experience elevation

Commerce acceleration

Enterprise transformation

Marketing creativity & performance

Data and AI

We are a network of more than 7000 people with 80+ offices in 25+ countries (Argentina, Brazil, Bulgaria, Canada, China Mainland, Columbia, Denmark, England, France, Germany, India, Kosovo, Mexico, Netherlands, North Macedonia, Poland, Portugal, Romania, Scotland, Singapore, Sweden, Switzerland, UAE, Ukraine, USA).

Industry
IT & Software
Company Size
5,001-10,000 employees
Headquarters
Worldwide, FR
Year Founded
1993
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