Hands-on Machine Learning Engineer who will release models in production.
Develop classifiers, predictive models, and multi-variate optimization algorithms on large-scale datasets using advanced statistical modeling, machine learning, and data mining.
Special focus on R&D that will be building predictive models for conversion optimization, Bidding algorithms for pacing & optimization, Reinforcement learning problems, and Forecasting.
Collaborate with Product Management to bring AI-based Assistive experiences to life. Socialize what s possible now or in the near future to inform the roadmap.
Responsible for driving all aspects of ML product development: ML modeling, data/ML pipelines, quality evaluations, productization, and ML Ops.
Create and instill a team culture that focuses on sound scientific processes and encourages deep engagement with our customers.
Handle project scope and risks with data, analytics, and creative problem-solving. What you'require:
Solid foundation in machine learning, classifiers, statistical modeling and multivariate optimization techniques
Experience with control systems, reinforcement learning problems, and contextual bandit algos.
Experience with DNN frameworks like TensorFlow or PyTorch on large-scale data sets.
TensorFlow, R, scikit, pandas
Proficient in one or more: Python, Java/Scala, SQL, Hive, Spark
Good to have - Git, Docker, Kubernetes
. GenAI, RAG pipelines a must have technology
. C loud based solutions is good to have
General understanding of data structures, algorithms, multi-threaded programming, and distributed computing concepts
Ability to be a self-starter and work closely with other data scientists and software engineers to design, test, and build production-ready ML and optimization models and distributed algorithms running on large-scale data sets. Ideal Candidate Profile:
A total of 10+ years of experience, including at least 5 years in technical roles involving Data Science, Machine Learning, or Statistics.
Masters or B.Tech in Computer Science/ Statistics
Comfort with ambiguity, adaptability to evolving priorities, and the ability to lead a team while working autonomously.
Proven management experience with highly diverse and global teams.
Demonstrated ability to influence technical and non-technical stakeholders.
Proven ability to effectively manage in a high-growth, matrixed organization.
Track record of delivering cloud-scale, data-driven products, and services that are widely adopted with large customer bases.
An ability to think strategically, look around corners, and create a vision for the current quarter, the year, and five years down the road.
A relentless pursuit of great customer experiences and continuous improvements to the product.