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bridgeit

Fractional AI Architect (Consultant)

Company

bridgeit

Role

Fractional AI Architect (Consultant)

Location

Bangalore, Karnataka, India (Remote)

Job type

Contract

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Salary

Not disclosed by employer

Job description

Fractional AI Architect (Consultant)

Generative AI, ML Systems & Scalable Platform Architecture

Contract / Fractional Engagement Remote

Overview

Bridge-it.ai An AI-driven SaaS platform operating in the career readiness and education technology space is seeking a Fractional AI Architect to conduct an architecture review and provide technical guidance for the platform's AI and data systems.

Experience in the U.S. K-12 education ecosystem or EdTech platforms is highly desirable , particularly in systems that support students, educators, counselors, or workforce readiness initiatives.

The platform combines Generative AI copilots, retrieval-augmented generation (RAG), knowledge graphs, and traditional machine learning models to support career exploration, pathway planning, and personalized recommendations for students.

The engagement focuses on conducting a structured architecture audit and evaluating whether the current system design aligns with the platform's long-term goals for scalability, reliability, observability, and continuous improvement.

The consultant will collaborate with engineering and product leadership to identify architectural gaps and provide recommendations for strengthening the AI platform.

This role is intended for senior AI architects or principal-level engineers who have previously designed and operated production AI systems at scale.

Scope of Engagement

The consultant will review the current system architecture and provide recommendations across several key areas.

AI Platform Architecture Review

Conduct a structured audit of the platform's AI architecture, including:

generative AI copilot design

agentic workflow orchestration

retrieval-augmented generation pipelines

knowledge retrieval systems

vector database usage

knowledge graph integration

context management and AI memory strategies

prompt and instruction architecture

Assess whether the current design supports

reliable AI behavior

scalable inference

controllable AI workflows

maintainable system architecture.

Generative AI & LLM Systems

Evaluate the architecture and technical strategy related to:

LLM model selection

API-based vs self-hosted model strategies

embeddings and vector search pipelines

prompt and context engineering

RAG architecture

agent orchestration frameworks

guardrails and reliability mechanisms.

Provide recommendations to improve

model response quality

latency

cost efficiency

system reliability.

Traditional Machine Learning Systems

Review architecture related to traditional ML use cases such as:

recommendation systems

predictive analytics

forecasting models

clustering and segmentation pipelines.

Assess the architecture supporting

training pipelines

experimentation workflows

model deployment

model lifecycle management.

Copilot Interaction & Agentic Workflows

Evaluate the design of AI-driven workflows supporting the copilot experience, including:

user-initiated interactions

event-driven AI recommendations

multi-step reasoning workflows

recommendation pipelines.

Provide guidance on improving

intent detection

workflow orchestration

AI reasoning pipelines

reliability and safety mechanisms.

Platform Architecture & System Design

Assess the platform's core architecture, including

microservices architecture

event-driven system design

message-based communication patterns

API architecture

service boundaries and modularity.

Review the application of architectural patterns such as

event-driven architecture

message-driven systems

asynchronous processing

hexagonal / ports-and-adapters architecture.

Provide recommendations for improving

scalability

reliability

maintainability

operational efficiency.

Observability, Monitoring & Evaluation

Evaluate the platform's ability to monitor both traditional services and AI systems.

Assess current capabilities in areas such as

distributed tracing

system metrics and logging

operational monitoring

AI workflow traceability

prompt and model evaluation

experiment tracking.

Provide recommendations for implementing robust observability and evaluation frameworks .

Continuous Learning & Feedback Systems

Review architecture supporting long-term improvement of AI systems, including:

user feedback capture

interaction analytics

model performance evaluation

experimentation frameworks

learning pipelines.

Provide recommendations for enabling continuous learning and system improvement .

Deliverables

The consultant will deliver

a structured architecture assessment report

identified design gaps and architectural risks

prioritized technical recommendations

suggested architecture evolution roadmap.

The consultant will present findings to the leadership and engineering teams.

Required Experience

Candidates should have substantial experience designing AI-driven software systems in production environments .

Minimum qualifications include

12+ years of experience building distributed software systems and AI/ML platforms, any less experience - no need to apply

strong hands-on experience building Generative AI applications

  • deep understanding of:

Retrieval-Augmented Generation (RAG)

prompt and context engineering

embedding pipelines

vector search systems

agentic AI architectures

  • practical experience implementing traditional machine learning systems , including:

recommendation systems

forecasting models

predictive analytics pipelines.

Software Architecture Experience

Demonstrated experience designing modern distributed systems using:

microservices architecture

event-driven systems

message-based system communication

asynchronous processing patterns

hexagonal architecture / ports-and-adapters.

Cloud & Infrastructure

Experience building and operating systems on modern cloud platforms such as:

Google Cloud

AWS

Azure.

Experience with containerized systems and cloud-native infrastructure.

Observability & Production Systems

Strong experience operating production systems with

distributed tracing

system monitoring and metrics

centralized logging

operational diagnostics.

Experience with AI system observability and evaluation tools is highly desirable.

Preferred Experience

Experience building AI copilots or conversational AI systems

Experience with agent orchestration frameworks

Experience with vector databases and knowledge graphs

Experience designing AI evaluation pipelines

Prior experience in EdTech platforms

Familiarity with U.S. K-12 education systems .

Engagement Model

Fractional consulting engagement (part-time).

Initial architecture review phase followed by optional advisory support.

Expected duration for the initial engagement: 1–3 months .

Ideal Candidate Profile

This role is best suited for professionals who have previously served as:

Principal Architect

AI Platform Architect

Staff / Principal Engineer

ML Platform Architect

AI Infrastructure Architect

and who have direct experience building and operating production AI systems.

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