Data Engineer

Jain Global
Harrow
4 days ago
Create job alert

Job Description


Data Analyst/Engineer

Jain Global, LLC


Jain Global is an innovative multi-strategy investment firm founded in July 2024 by Bobby Jain with over 400 employees operating from offices in New York, Houston, London, Singapore, and Hong Kong, we are looking to add to our growing teams.


Role Overview

As a scientifically minded Data Analyst/Engineer, you will be a member of the team responsible for delivering the data that enables the growing number of portfolio managers to research, test, execute and manage their investment strategies with ease and confidence, which is crucial to the firm’s success and growth.


You will be sourcing, analyzing, cleaning and curating vendor datasets and integrating them seamlessly with other datasets in the Data Platform to increase the data’s business value, including value through platform effects. This will enable portfolio managers, Quants and risk managers to focus on using high quality data instead of wrestling with problematic raw data, thus increasing their productivity.


You have worked in or with financial industry Front Office businesses. You thrive on diving deep into data, understand its business value and how to improve datasets to increase that value. You are curious and take a meticulous scientific approach to analyze and test data and thus ensure that the data sets you deliver add real value to the various business units.


Responsibilities

  • Curate customer‑centric data products: Collaborate with customers to understand their specific needs across trading, cross‑referencing market & alternative data, aggregation of fungible assets, researching & backtesting strategies. Source the relevant data, analyze, clean and enrich it at the pace demanded by hedge fund operations. Iterate with the customers to increase the data’s value and collaborate with the Data Platform team to maximize platform effects and the utility for the entire firm. Initial focus is on Equity identifier mappings (SecMaster) and Corporate Actions, beyond that all asset classes and data types are in scope.
  • Implement automated Data Quality checks to guarantee the high quality that increases the raw data’s value can be relied upon all the time, and any deviation from quality expectations are immediately noticeable. Automate monitoring and alerting to ensure any issues are dealt with immediately with minimal business impact.
  • Interact with data vendors: Manage data vendor relationships to understand the nuances of their data products, and how we can extract maximum value from their data.
  • Role‑model continuous improvement: Maintain high standards of analytical excellence, ownership and customer care. Mentor junior analysts and help hire new talent. Streamline workflows, improve data quality, and efficiency to support faster insights and improved decision‑making by our customers.

Qualifications & Experience

  • BSc/MSc/PhD in Computer Science, Physics, Engineering or similar and 3+ years financial industry experience in Front Office / Quant / organisations or on a PM desk, preferably with some time spent in a hedge fund.

Technical Skills

  • Expert level data analysis / science skills in Python and familiarity with Pandas/Polars/Snowpark data frames. Experience in other languages such as C#, F#, C++ or Java is a plus.
  • Advanced SQL skills are needed. Experience with modern data storage & querying technologies (e.g. Snowflake, Redshift, BigQuery), and/or file formats (e.g. Parquet and Iceberg) is desirable.
  • Familiarity with Linux environments, git and modern DevOps approach.
  • Demonstrated experience in test automation to maintain high standards and a fast rate of change with confidence.
  • Familiarity with monitoring production systems using modern observability & alerting solutions (e.g. Grafana/Prometheus, DataDog, ELK) is desirable.
  • Hands‑on experience with data pipeline orchestration tools, e.g. Airflow, and data download mechanisms, e.g. sFTP, various vendor APIs is helpful.
  • Financial Data: Deep understanding of market and reference data, ideally across a broad range of asset classes, but at least Equity identifiers and Corporate Action datasets. Clear understanding of how data adds value to a hedge fund’s business, and how that value can be increased.

Soft Skills

  • Effective communication skills with Front Office stakeholders and Tech colleagues, curiosity, a scientific and collaborative mindset, ability to produce in an agile environment.

Seniority level

  • Mid‑Senior level

Employment type

  • Full‑time

Job function

  • Information Technology


#J-18808-Ljbffr

Related Jobs

View all jobs

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Subscribe to Future Tech Insights for the latest jobs & insights, direct to your inbox.

By subscribing, you agree to our privacy policy and terms of service.

Industry Insights

Discover insightful articles, industry insights, expert tips, and curated resources.

Machine Learning Jobs for Career Switchers in Their 30s, 40s & 50s (UK Reality Check)

Are you considering a career change into machine learning in your 30s, 40s or 50s? You’re not alone. In the UK, organisations across industries such as finance, healthcare, retail, government & technology are investing in machine learning to improve decisions, automate processes & unlock new insights. But with all the hype, it can be hard to tell which roles are real job opportunities and which are just buzzwords. This article gives you a practical, UK-focused reality check: which machine learning roles truly exist, what skills employers really hire for, how long retraining realistically takes, how to position your experience and whether age matters in your favour or not. Whether you come from analytics, engineering, operations, research, compliance or business strategy, there is a credible route into machine learning if you approach it strategically.

How to Write a Machine Learning Job Ad That Attracts the Right People

Machine learning now sits at the heart of many UK organisations, powering everything from recommendation engines and fraud detection to forecasting, automation and decision support. As adoption grows, so does demand for skilled machine learning professionals. Yet many employers struggle to attract the right candidates. Machine learning job adverts often generate high volumes of applications, but few applicants have the blend of modelling skill, engineering awareness and real-world experience the role actually requires. Meanwhile, strong machine learning engineers and scientists quietly avoid adverts that feel vague, inflated or confused. In most cases, the issue is not the talent market — it is the job advert itself. Machine learning professionals are analytical, technically rigorous and highly selective. A poorly written job ad signals unclear expectations and low ML maturity. A well-written one signals credibility, focus and a serious approach to applied machine learning. This guide explains how to write a machine learning job ad that attracts the right people, improves applicant quality and strengthens your employer brand.

Maths for Machine Learning Jobs: The Only Topics You Actually Need (& How to Learn Them)

Machine learning job adverts in the UK love vague phrases like “strong maths” or “solid fundamentals”. That can make the whole field feel gatekept especially if you are a career changer or a student who has not touched maths since A level. Here is the practical truth. For most roles on MachineLearningJobs.co.uk such as Machine Learning Engineer, Applied Scientist, Data Scientist, NLP Engineer, Computer Vision Engineer or MLOps Engineer with modelling responsibilities the maths you actually use is concentrated in four areas: Linear algebra essentials (vectors, matrices, projections, PCA intuition) Probability & statistics (uncertainty, metrics, sampling, base rates) Calculus essentials (derivatives, chain rule, gradients, backprop intuition) Basic optimisation (loss functions, gradient descent, regularisation, tuning) If you can do those four things well you can build models, debug training, evaluate properly, explain trade-offs & sound credible in interviews. This guide gives you a clear scope plus a six-week learning plan, portfolio projects & resources so you can learn with momentum rather than drowning in theory.