Hrushikesh Chavan
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Hrushikesh Chavan Email & Phone Number

Principal AI Engineer and Data Scientist at Revvity
Location: Bengaluru, Karnataka, India 7 work roles 3 schools
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Role
Principal AI Engineer and Data Scientist
Location
Bengaluru, Karnataka, India

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Hrushikesh Chavan is listed as Principal AI Engineer and Data Scientist at Revvity, based in Bengaluru, Karnataka, India. AeroLeads shows a matched LinkedIn profile for Hrushikesh Chavan.

Hrushikesh Chavan previously worked as Senior Data Scientist at John Deere India Pvt. Ltd. (Jdtci) and AI/ML Engineer at Eaton. Hrushikesh Chavan holds Master Of Technology - Mtech, Machine Learning - Manufacturing Domain, 8.75/10 from Indian Institute Of Technology, Kanpur.

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About Hrushikesh Chavan

Data Scientist and AI/ML Engineer with 8 years of experience in developing and deploying advanced AI solutions. Expertise in generative AI, machine learning, deep learning, natural language processing and MLOps with a proven track record in creating innovative AI-powered systems. Demonstrated leadership in managing data science, AI/ML projects, optimizing model performance, and achieving significant cost savings. Strong academic background with an MTech from IIT Kanpur and extensive industry experience in predictive modeling, generative AI, and data-driven decision-making. Recognized for taking ownership, mentoring colleagues, quickly adapting to new technologies, and delivering products within tight timelines.Technical Proficiency:Generative AI: GPT-3.5 Turbo, GPT-4o, Llama 2, Mistral, Gemini, Langchain, LlamaIndex, LLM finetuning, LORA, QLORA, RLHF, DPO, Multimodal RAG, Ollama, AI Agents (SerpApi, Crew AI) , Prompt EngineeringVector Databases: Chroma, FAISS, Pinecone, Weaviate, Lance DBMachine learning / Deep Learning: Linear Regression, Logistic Regression, KNN, Decision Tree, Random Forest, Clustering (Kmeans, DBSCAN), SVM, Naïve Bayes, Bagging, XG boost, ANN, CNN, RNN, LSTM, GRUNatural Language Processing: BERT, RoBERTa, DistilBERT, T5, BART, Pegasus, Text processing, Word embedding (BOW, Tf-IDf, Word2Vec), Sentence transformers, NER, Transformer fine-tuning, Text Classification, Sentiment Analysis, Topic Modelling, Hugging Face etcTech stack: Python, SQL, Pyspark, Databricks, Streamlit, Power BI, Tableau, Databricks AutoMLPackages: NumPy, Pandas, Scikit-learn, Seaborn, Matplotlib, RegEx, SciPy, TensorFlow, Keras, Pytorch, NLTK, Spacy, Gensim, Beautiful Soup etc.MLOPS: Git, GitHub, CI/CD using GitHub Actions, AWS (SageMaker, EC2, S3, ECR, ECS), Azure AI, Flask, FastAPI, Docker, MLflow, Databricks Data EngineeringVision:I aim to continue leading impactful AI projects and innovation, leveraging cutting-edge technology to solve real-world business problems and drive organizational success.Contact:Reach out at hrushihc2@gmail.com for professional opportunities.Connect with me to explore how we can innovate together.

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Revvity
Revvity
Principal AI Engineer and Data Scientist
AeroLeads page
7 roles

Hrushikesh Chavan work experience

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Principal Ai Engineer And Data Scientist

Current
Nov 2024 - Present

Senior Data Scientist

Pune, Maharashtra, India

Gen AI-Powered Visual Chatbot for Rapid AssistanceDeveloped an advanced system to generate videos from documents. Utilizing Multimodal RAG, the system dynamically produces video responses by integrating contextually relevant images and synchronized audio. This solution leverages sophisticated image retrieval and text-tospeechsynthesis, enhancing information accessibility and engagement, while optimizing content creation workflows and reducing operational costs for businesses. Multimodal RAG, LlamaIndex, Lance DB, GPT 4oSurvival Analysis for Product Reliability:Achieved an 83% reduction in runtime for product reliability analysis using Survival Analysis (Weibull Distribution) by developing and deploying efficient model-building code.Measured success through enhanced workflow and productivity, setting a new benchmark for automated life data analysis.Successfully eliminated software dependencies, resulting in a substantial cost savings of USD 65,000 in license fees.Software Fault Prediction and Risk Mitigation:Pioneered a comprehensive risk quantification and mitigation approach throughout various phases of the software development lifecycle.Implemented a machine learning-based software defect prediction model, reducing development costs by detecting faults earlier.Improved software quality, reliability, and efficiency through the creation of a robust bug prediction model using ML algorithms.Demonstrated expertise in understanding key factors influencing software performance.Document Focused Chatbot:Innovated and developed a chatbot tailored for document-related queries, significantly enhancing user experience.Utilized advanced techniques such as embeddings using sentence structure to enable the chatbot to extract relevant information from documents.Transformed the user interaction experience by efficiently retrieving important information from documents and providing precise answers.

Apr 2023 - Oct 2024

Ai/Ml Engineer

Pune, Maharashtra, India

1. Enhancing User Experience through NLP:Accomplished: Developed an NLP model to discern user sentiments, measured by a 20% increase in user engagement.Methodology (Y): Analyzing user reviews with advanced NLP techniques.Impactful Action (Z): Executed comprehensive text preprocessing and exploratory data analysis, employing techniques such as lowercasing, stop word removal, stemming, lemmatization, and tokenizer. Implemented text vectorization methods like Bag of Words and Tf-IDF. Utilized Word Clouds for insightful exploratory data analysis.Result: Identified key areas for product and service improvement, contributing to enhanced user satisfaction.2. Aerospace Application Simulation Efficiency:Accomplished: Developed a transfer function to predict hose fitting failure, resulting in a 60% reduction in data acquisition time.Methodology (Y): Utilizing design of experiment (DOE) methods for efficient simulation.Impactful Action (Z): Generated data points for simulation, saving 60% of the time previously required for data acquisition. This led to a significant reduction in the time needed for new product launches.Result: Improved efficiency in aerospace application simulations, ensuring timely product launches and reduced costs.3. Boosting Conversion Rate in Aerospace Sales:Accomplished: Improved conversion rate from 30% to 70% for new enquiries in the aerospace sector.Methodology (Y): Developing a model to identify promising enquiries with high conversion potential.Impactful Action (Z): Managed null values in categorical and numerical columns using techniques like Simple Imputer and KNN Imputer. Implemented dimensionality reduction techniques such as PCA, Variance Inflation Factor, and p-value analysis.Result: Successfully increased the conversion rate, optimizing the sales process and enhancing revenue generation.

Oct 2020 - Mar 2023

Machine Learning Researcher

Kanpur Area, India

Developed Open Source Python-Based Tool for Generating STL Files of TPMS Surfaces for 3D Printing Developed a Python-based tool that enhanced the generation of complex 3D printed structures by applying advanced algorithmic techniques and leveraging open-source libraries, significantly improving the efficiency and practicality of 3D printing Objective: Designed and implemented an open-source tool to generate STL files of Triply Periodic Minimal Surfaces (TPMS) suitable for 3D printing, enhancing the ability to create complex and efficient structures.Algorithm Used: Leveraged the Lewiner Marching Cubes algorithm for efficient and accurate isosurface extraction from volumetric data.Technical Implementation:Implemented the gyroid function to define the mathematical representation of TPMS.Utilized numpy for creating a 3D grid and skimage.measure for applying the Marching Cubes algorithm.Generated vertices and faces for the isosurface and created a mesh structure using the numpy-stl library.Enabled the addition of thickness to the generated surfaces by creating offset surfaces, ensuring robust and practical 3D printed structures.Outcome: Successfully generated STL files of TPMS structures with adjustable thickness, facilitating advanced 3D printing applications and contributing to the open-source community.Technologies Used: Python, Numpy, Scikit-Image, Matplotlib, Numpy-STL.

Jan 2018 - Oct 2020

Research And Development Engineer

Nagoya, Aichi, Japan

Department: Next Generation Machine Development Department, LT6600 3D GroupSupervisor: Mrs Yoko Hirono, Assistant Chief Engineer, R&D HQ, Next Generation Machine Development Department, LT6600 3D GroupProject Title: Design and Analysis of Jig for Transportation of Cable Control Unit of LASERTEC 6600 3DObjectives of Transportation Jig of Cable Control Unit:1) The jig should support Cable Control Unit during Transportation.2) It should resist static forces exerted by Cable Control Unit.3) It should withstand forces due to acceleration during transportation.4) It should resist Seismic forces occurs during the earthquake.I did analysis to check static deflection so that results obtained can compare with Theoretical deflection.I did analysis considering forces due to acceleration during transportation and also verified resistivity of jig against seismic forces.Material of Jig: STKR 400 Purpose: This material easily available in square and rectangular bars.Software used for Modelling and Analysis: Creo Parametric 4.0

Jun 2019 - Jul 2019

Data Science Researcher

Tokyo, Japan

Supervisor: Dr Hiromasa Suzuki, Professor, Precision Engineering Department, University of TokyoTitle: 3D printing of Different shapes with infill of Schwarz D Surface• Developed program to generate stereolithography (STL) file of Triply Periodic Minimal Surfaces • 3D printed the Schwarz D Surface• Developed program to generate STL files of different shapes with infill of TPMS surface and 3D printed it by Z250 printer.• Software used: Python, MATLAB, OpenSCAD, MeshLab

May 2019 - Jul 2019

Data Science Engineer

Pune, Maharashtra, India

Jul 2016 - Dec 2017
3 education records

Hrushikesh Chavan education

Master Of Technology - Mtech, Machine Learning - Manufacturing Domain, 8.75/10

Activities and Societies: • Academic Excellence Award IIT Kanpur, 2018: For outstanding academic performance across all departments.

Ml Researcher, Data Science, Ai Ml

Activities and Societies: Department of Data Science and Artificial IntelligenceDeveloped Python and Matlab code to generate STL file.

Visiting Student, Robotics Machine Learning

Activities and Societies: Life time Member of Sakura Science Club run by Japan Science and Technology Agency [Feb.

FAQ

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What company does Hrushikesh Chavan work for?

Hrushikesh Chavan works for Revvity.

What is Hrushikesh Chavan's role at Revvity?

Hrushikesh Chavan is listed as Principal AI Engineer and Data Scientist at Revvity.

Where is Hrushikesh Chavan based?

Hrushikesh Chavan is based in Bengaluru, Karnataka, India while working with Revvity.

What companies has Hrushikesh Chavan worked for?

Hrushikesh Chavan has worked for Revvity, John Deere India Pvt. Ltd. (Jdtci), Eaton, Indian Institute Of Technology, Kanpur, and Dmg Mori.

How can I contact Hrushikesh Chavan?

You can use AeroLeads to view verified contact signals for Hrushikesh Chavan at Revvity, including work email, phone, and LinkedIn data when available.

What schools did Hrushikesh Chavan attend?

Hrushikesh Chavan holds Master Of Technology - Mtech, Machine Learning - Manufacturing Domain, 8.75/10 from Indian Institute Of Technology, Kanpur.

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