ML Engineer at Antino Labs
Gurugram, haryana, India -
Full Time


Start Date

Immediate

Expiry Date

30 Jul, 26

Salary

0.0

Posted On

01 May, 26

Experience

2 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Machine Learning, Python, MLOps, Azure, Time-series modeling, SQL, Deep learning, Data pipelines, Forecasting, Optimization, TensorFlow, PyTorch, Feature engineering, Industrial AI, Data analysis, Cloud computing

Industry

IT Services and IT Consulting

Description
We seek a highly skilled ML Engineer with 3-5 years of industry experience specializing in AI/ML, MLOps, Azure cloud computing, and Python to collaborate with our team of Data Scientists, Data Engineers, and Subject Matter Experts (SMEs). Candidate should have strong expertise in traditional ML to design, develop, and deploy industrial AI solutions for refinery and petrochemical operations. The role focuses on time-series modeling, forecasting, optimization, and real-time deployment of ML systems that deliver measurable business impact (e.g., energy savings, yield improvement, process optimization). The candidate will develop, implement, and deploy advanced AI-driven solutions, including traditional ML, deep learning, neural networks, and advanced analytics tailored specifically to the refining and petrochemical industry. What You'll Be Doing Design, build and deploy end-to-end AI/ML pipelines for industrial use cases at scale on cloud-based platforms or on-prem server Select and implement appropriate AI/ML algorithms, and tools Build and maintain data pipelines using Python & SQL for reliable data flow between IT/OT systems Develop time-series forecasting and prediction models for process variables (e.g., temperature, pressure, yield, emissions, energy consumption) Build optimization models for refinery & petrochemical operations (e.g., fuel optimization, throughput maximization, energy efficiency) Work with high-frequency process data from historians (e.g., PHD, OPC, SCADA systems) Perform feature engineering on multivariate time-series data, including lag features, rolling statistics, and domain-driven transformations Train, evaluate, monitor, retrain and maintain AI/ML models Deploy models into production using APIs, batch pipelines, or real-time streaming systems Implement model monitoring, drift detection, and retraining pipelines Collaborate with process engineers, SMEs, operations teams, and business users to translate domain problems into ML solutions Ensure scalability, reliability, and performance of deployed AI systems Regularly update and leverage industry trends and advancements in AI, ML, and Optimization technologies. What We are looking for 3-5 years of experience in AI/ML engineering roles Bachelors or Masters in Engineering, Computer Science, or equivalent experience Strong programming skills in Python, R, or a similar language Robust understanding of machine learning and deep learning methodologies, including training, inferencing, and performance monitoring Strong experience in time-series modeling, forecasting, and prediction problems Proven experience in industrial/process data (Oil & Gas / Manufacturing preferred) Solid expertise with machine learning libraries (Numpy, Pandas, Matplotlib, Scikit-learn, Scipy, Seaborn, NLTK, Flask, Django) and frameworks (TensorFlow, PyTorch, Langchain, Langgraph). Strong expertise in SQL for data extraction, transformation, and pipeline building Understanding of feature engineering for time-series data Experience in building end-to-end ML systems (data → model → deployment → monitoring_>retraining) Hands-on experience with model deployment Solid understanding of MLOps concepts: Model versioning CI/CD pipelines Monitoring & alerting Automated retraining Experience handling large-scale data using PySpark / Apache Spark (good to have) Strong analytical and problem-solving capability in industrial contexts Ability to work closely with cross-functional teams (operations + data + IT) Clear written and oral communication skills with a strong desire to share knowledge with business users, partners, and co-workers Good to Have (Not Mandatory) Exposure to Azure (Azure ML, Data Factory, Databricks, etc.) Experience with real-time data streaming (Kafka, MQTT, OPC integration) Exposure to GenAI / LLMs / Agentic systems (secondary skill, not core requirement) Knowledge of refinery / petrochemical processes (CDU, FCC, Cracker, Boilers, etc.)
Responsibilities
Design, develop, and deploy end-to-end AI/ML pipelines and optimization models for refinery and petrochemical operations. Collaborate with cross-functional teams to translate industrial domain problems into scalable, real-time AI solutions.
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