Senior ML Engineer
Quick Summary
Design, build, and continuously improve the ML models that power our risk and intelligence products, and take ownership of new signals as they get scoped.
Truecaller's mission is to build trust in communication by making it safer, smarter, and more efficient. Born in Sweden, trusted by the world, and here’s why we stand out:
- We are trusted by over 450 million active users every month across 190+ countries
- We identify over 15 billion calls daily, helping users avoid spam and scams
- We are powered by a team of 450+ employees from 45+ nationalities
We always look for people who take initiative, own their work, and keep raising the bar. An entrepreneurial mindset matters here, especially when it turns bold ideas into real actions. We stay collaborative and focused, always searching for smarter paths forward. If you want to make an impact and grow with a team that inspires millions, you’ll fit right in.
As a Senior ML Engineer, you'll play a central role in building the data science behind the products — from framing new fraud, risk, and intelligence problems, to designing and deploying ML models at scale, to helping our enterprise customers and go-to-market teams understand and act on the insights we generate.
Responsibilities
~1 min read- →Design, build, and continuously improve the ML models that power our risk and intelligence products, and take ownership of new signals as they get scoped.
- →Take a loosely defined business or customer problem and break it into a clear data problem, articulating value, impact, and complexity before proposing a solution.
- →Build anomaly detection, fraud, and risk-modeling approaches — including network/graph-based methods — that keep our signals accurate and resistant to adversarial behaviour.
- →Own model development, deployment, and monitoring end-to-end, partnering with ML/data engineers on scalability, reliability, cost, and dashboards/alerting.
- →Design and run experiments (A/B tests, offline customer POCs) to validate new signals before they roll into production.
- →Manage and analyse large, multi-country datasets, ensuring data integrity, consistency, and compliance throughout.
- →Partner cross-functionally with Product, Engineering, Legal, and GTM/Sales to scope, prioritise, and ship data products on time, acting as a trusted advisor on what the data can and can't responsibly support.
- 5+ years of experience designing, building, and deploying ML models at scale, ideally including risk/fraud, propensity, or behavioural/network scoring use cases.
- Strong grounding in applied machine learning: classification, anomaly detection, propensity/scoring models, clustering, and time-series/drift monitoring.
- Exposure to graph-based analysis or graph ML (network embeddings, community detection, link prediction) is a plus.
- Hands-on experience taking models from research/experimentation into production — comfortable owning scalability, reliability, and monitoring, not just model accuracy.
- Working knowledge of NLP and LLM-based techniques (prompting, summarisation, fine-tuning) — useful for customer-facing AI insights and on-device text/SMS signal extraction.
- Proficiency in Python and the ML/data stack: Pandas, NumPy, Scikit-learn, TensorFlow or PyTorch; comfortable with Hugging Face Transformers where relevant.
- Strong SQL skills and experience with large-scale data processing (BigQuery, Spark/PySpark, Hive/Kafka ecosystem).
- Familiarity with database modelling and data warehousing principles.
- Ability to design, run, and interpret experiments and statistical tests to validate model and business impact.
- Strong communication skills — able to explain model output and trade-offs to both engineering peers and non-technical enterprise stakeholders.
- Comfort operating with a strong privacy/compliance mindset — Truecaller's data products are built on abstracted, privacy-safe signals, and you'll need to reason carefully about what can and can't be derived or stored.
- Experience with graph databases (e.g. Neo4j) or large-scale graph processing frameworks.
- Experience with ML lifecycle tools (Kubeflow, MLflow) and on-device/edge ML deployment.
- Familiarity with Google Cloud Platform (GCP) and BigQuery.
- Prior experience in fraud/risk scoring, credit/alternate-data, or contact-centre/dialer analytics domains.
- Experience working with data resellers, credit bureaus, or enterprise data partners on integrating and explaining model output.
What We Offer
~2 min readWe support growth through learning resources, leadership programs, mentoring, and real hands-on work. People can move between teams and projects to build new skills and keep things interesting. We offer clear internal mobility and a transparent path for progression, with leaders who stay involved and provide guidance throughout the year. In addition, you will benefit from:
We will fill the position as soon as we find the right candidate, so please send your application as soon as possible. As part of the recruitment process, we will conduct a background check.
We only accept applications in English.
Location & Eligibility
Listing Details
- Posted
- July 13, 2026
- First seen
- July 13, 2026
- Last seen
- July 14, 2026
Posting Health
- Days active
- 0
- Repost count
- 1
- Trust Level
- 61%
- Scored at
- July 13, 2026
Signal breakdown
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