Develop Enterprise-Grade Machine Learning Solutions on
Vertex AI

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Key Solution Offerings

Build innovative ML models and accelerate MLOps implementation at varying levels of maturity with Quantiphi’s MLOps solution suite.

Evaluate the existing data science maturity and Pilot Implementation

Assessment & Discovery Workshops

Assess the current state of data and ML maturity to identify and build a business case and detailed roadmap for your envisioned AI adoption journey with Quantiphi’s ML expertise

PoC / Pilot

Identify use cases and develop AutoML Models along with demonstration of CI/CD pipelines. Evaluate the success metrics and get a detailed roadmap to scale to production

Vertex AI ML OPs Accelerator

A 5-week comprehensive engagement that includes a 360° assessment workshop to evaluate existing platforms and needs, followed by developing a working prototype using Machine Learning, Vertex AI and Google Cloud Platform

Operationalize and Deploy ML workloads to production environment

ML Data Harmonization

Build infrastructure for data ingestion pipelines and preprocessing required to make the data fit for the downstream activities, identify various data sources and integrate the cloud infrastructure with the existing databases

Accelerated ML Experimentation

Carry out rapid experimentation along with tracking & visualization. Build model training pipelines and perform feature engineering and model optimization

ML Orchestration for Production

Harmonize and identify the best fit model, develop production pipelines to deploy, scale and integrate the models into the organization’s workflows

Continuous Model Enhancement

Monitor the model performance and metrics with model monitoring frameworks, build retraining pipelines to improve model performance and achieve the required results.

Vertex AI Anywhere

Deploy trained models across a combination of on-prem and cloud environments
With Vertex AI, enterprises get multiple options to deploy trained models across a combination of on-prem and cloud environments without losing the ability to upgrade, scale, and monitor ML resources

Setup AI Center of Excellence to achieve enterprise level AI Adoption

AI thought leadership

Deployment of centralized team of SMEs to assist and consult on technical guidance, knowledge center designing and Organizational Change Management (OCM)

Team Enablement

Conducting training and educational sessions and workshops, feasibility studies for POC/Pilots, and recommendations for best practices

Development and Managed Support

Dedicated data science experts and SMEs as an extended consultation and support talent pool to augment customers engineering teams

Foundations
Evaluate the existing data science maturity and Pilot Implementation

 

Assessment & Discovery Workshops

Assess the current state of data and ML maturity to identify and build a business case and detailed roadmap for your envisioned AI adoption journey with Quantiphi’s ML expertise

PoC / Pilot

Identify use cases and develop AutoML Models along with demonstration of CI/CD pipelines. Evaluate the success metrics and get a detailed roadmap to scale to production

Vertex AI ML OPs Accelerator

A 5-week comprehensive engagement that includes a 360° assessment workshop to evaluate existing platforms and needs, followed by developing a working prototype using Machine Learning, Vertex AI and Google Cloud Platform

Scale: Modular ML Ops Offerings

Operationalize and Deploy ML workloads to production environment

 

ML Data Harmonization

Build infrastructure for data ingestion pipelines and preprocessing required to make the data fit for the downstream activities, identify various data sources and integrate the cloud infrastructure with the existing databases

Accelerated ML Experimentation

Carry out rapid experimentation along with tracking & visualization. Build model training pipelines and perform feature engineering and model optimization

ML Orchestration for Production

Harmonize and identify the best fit model, develop production pipelines to deploy, scale and integrate the models into the organization’s workflows

Continuous Model Enhancement

Monitor the model performance and metrics with model monitoring frameworks, build retraining pipelines to improve model performance and achieve the required results.

Vertex AI Anywhere

Deploy trained models across a combination of on-prem and cloud environments
With Vertex AI, enterprises get multiple options to deploy trained models across a combination of on-prem and cloud environments without losing the ability to upgrade, scale, and monitor ML resources

AI CoE & Advisory

Setup AI Center of Excellence to achieve enterprise level AI Adoption

 

AI thought leadership

Deployment of centralized team of SMEs to assist and consult on technical guidance, knowledge center designing and Organizational Change Management (OCM)

Team Enablement

Conducting training and educational sessions and workshops, feasibility studies for POC/Pilots, and recommendations for best practices

Development and Managed Support

Dedicated data science experts and SMEs as an extended consultation and support talent pool to augment customers engineering teams

Success Stories


Engagement Journey: A semiconductor Giant

The customer is a leading US-based producer of computer memory and computer data storage including dynamic random-access memory, flash memory, and USB flash drives. The clients' data science team wanted to perform image-related analysis and desired Quantiphi's expertise in building the “Model Training Flow” section.

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Following are the services developed for the customer:

Foundation and Scaling

Quantiphi developed a fully-automated MLOps pipeline in Google Cloud Platform (GCP) in two phases to perform analysis of over two million images per day, resulting in faster analysis and quicker defect detection in the images. Phase one of the engagement involved developing an end-to-end semi-automated orchestration pipeline. Phase two dealt with the complete automation of the pipelines that involved continuous evaluation pipelines and the development of CI/CD pipelines. Foreseeing the success of the earlier engagements, the customer wanted help in setting up an AI CoE for advisory on their ongoing projects. In addition, the client also wanted a bespoke training for their teams across the US and APAC region.

AI Center of Excellence

Quantiphi deployed a dedicated pool of SMEs to provide advisory support and technical guidance to the customers' team for the development of use cases along with consultative support and thought leadership aiding enterprise-wide AI adoption. The dedicated CoE team assisted the customer in the development and prioritization of the POC / pilot and production-grade use cases involving varying degrees of complexity to achieve maximum efficiency and ROI metrics meeting the customer's long-term business goals. The CoE team also conducted tailored workshops pertaining to the skill sets acquired and recommended best practices to streamline current and future workloads.

Training and Enablement Workshops

Quantiphi aims to conduct monthly and quarterly workshops for the customer focused on key learnings from fundamentals to advanced concepts and best practices featured from Phase 1 and 2 engagements of MLOps using Vertex AI. Additional training sessions will be covered based on the feedback received from the AI-CoE team for current and future workloads.


Vertex AI Accelerator

The customer is a privately held technology company headquartered in Lehi, Utah that develops cloud-based software to help businesses modernize customer interactions, such as customer feedback, to improve a businesses' online reputation.

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The client wanted to evaluate their current data and ML landscape and outline an MLOps framework that will help them define core processes and technical capabilities to establish mature ML Ops practices.

Quantiphi assessed the current state of data architecture, data science maturity, and business priorities to develop customer curated architecture along with deployment and demonstration of MLOps pipeline for the shortlisted churn prediction use case.