Senior Product Manager, AI Platform

QAD, Inc.

Not Interested
Bookmark
Report This Job

profile Job Location:

Pune - India

profile Monthly Salary: Not Disclosed
Posted on: 3 hours ago
Vacancies: 1 Vacancy

Department:

Product Management

Job Summary

Role Overview

This role owns the full product lifecycle for QADs Copilot Search and Conversational Analytics capabilities from architecture through to market launch. You will define what gets built why it matters to manufacturing users and how it reaches them: shaping the product vision driving engineering delivery and partnering with GTM to ensure adoption.

The intelligence that powers these surfaces how queries are understood how manufacturing context is assembled how data is retrieved and how responses are generated is where QADs AI moat is built. You will need to engage deeply with these layers not as an engineer but as the product owner who defines the contracts quality standards and sequencing decisions that determine whether they work in production at enterprise scale.

You will report to the Head of Platform Product with day-to-day direction from the Director of the AI Platform org. This role is evaluated through the quality of your product thinking your influence on engineering direction and the outcomes you drive in the market.

 

The Opportunity

Manufacturing users today cannot query their own operations without analysts BI tools or pre-built reports. QADs AI platform changes this but only if the Copilot and Search layer is built correctly and lands with users. You will own both sides of that equation.

  • Define the semantic search and conversational analytics product that allows manufacturing users to query operational data orders inventory suppliers quality records in natural language without SQL or BI expertise

  • Own the intelligence contract: how queries are understood how manufacturing context is assembled how retrieval is orchestrated and how responses are grounded in governed data the foundational decisions that determine product quality at scale

  • Drive the Copilot from concept to customer including the contextual layer architecture the grounding contract against the platforms Semantic Layer and the GTM motion that gets it adopted in manufacturing workflows

  • Build the feedback loops that make the product smarter over time: how recurring query patterns surface ontology gaps how session analytics drive prioritisation and how discovery findings translate into product improvements

  • Establish QADs conversational analytics presence in market working with GTM to define positioning enablement and the narrative that differentiates QADs intelligence layer from horizontal AI tools

 

Key Responsibilities: 

Copilot & Conversational Analytics

  • Own the product definition for QADs Copilot: how queries are understood context assembled data retrieved and responses generated specifying the contracts that engineering builds against

  • Define the grounding contract: the rules that ensure every Copilot response cites governed manufacturing data not hallucinated inference including confidence signalling and graceful fallback behaviour

  • Drive the conversational analytics strategy: how natural language queries translate into analytical results across manufacturing data domains without exposing SQL or BI complexity to the user

  • Specify the disambiguation model: how the Copilot handles ambiguous queries missing context and conflicting data signals in real manufacturing workflows

 

Search

  • Own the product definition for QADs semantic search layer: indexing strategy query understanding entity recognition ranking and result structure across manufacturing data domains

  • Define the search intent taxonomy operational (find order trace shipment) analytical (show trends compare periods) and diagnostic (why is this delayed what caused this variance) and specify result formats by intent type

  • Drive the federated search architecture: how results from ERP operational data analytical stores and the knowledge graph are ranked and merged into a coherent useful response

 

Discovery Delivery & GTM

  • Maintain a structured customer discovery programme extracting real manufacturing query patterns and translating findings into specific product and architecture implications

  • Own the product backlog: writing stories to Staff Engineer level of specificity API contracts state machines data flows edge cases that engineering can build without verbal clarification

  • Partner with GTM to define the launch and adoption strategy for Copilot and Search: positioning sales enablement onboarding playbooks and the narrative that lands with manufacturing buyers

  • Define the quality framework for these surfaces: what signals matter for product performance retrieval relevance grounding rate latency distribution and how they inform roadmap decisions

 

Stakeholder Management & Managing Up

  • Proactively surface dependencies risks and scope changes to the Director and Head of Platform Product with a resolution proposal not just an escalation

  • Communicate product and architecture decisions clearly to non-technical stakeholders translating trade-offs into business implications without jargon

  • Build credibility with Engineering Architecture and GTM through the quality and precision of written work

 

 


Qualifications :

What Youll Bring

Product Experience

  • 712 years in product management with significant time owning AI-powered search or analytics products in enterprise B2B environments from definition through production launch

  • Proven track record owning the full product lifecycle: customer discovery specification engineering delivery and GTM not just one slice

  • Experience working in matrixed organisations driving outcomes across Platform Engineering Architecture and GTM without direct authority

  • Evidence of structured discovery practice applied to a technical product surface ability to extract product implications from user research not just UX insights

 

Core Technical Depth Required

These are the primary technical domains this role owns. Strong command is expected from day one.

  • Semantic search architecture: indexing strategy query understanding entity recognition ranking models and relevance evaluation at enterprise scale

  • Conversational AI product design: how natural language queries are translated into structured analytical results across complex domain-specific data without exposing backend complexity to users

  • LLM-integrated product specification: grounding strategies hallucination mitigation response quality gates and context window management sufficient to define product contracts engineering builds against

  • Data platform fluency: OLAP vs operational DB reads federated search across heterogeneous stores and how data freshness constraints affect product quality sufficient to hold authoritative conversations with data engineers

  • SQL and data modelling: sufficient to validate query plans understand schema implications and reason through retrieval architecture trade-offs

 

Working Familiarity Expected to Grow Into

These domains sit in adjacent platform layers that Copilot and Search consume. Deep expertise is not required on day one but working fluency is expected and will expand as the platform scales toward agentic capabilities.

  • Intent detection and query understanding pipelines: how user inputs are parsed classified and routed across platform layers

  • Context assembly and packaging: how metric definitions entity relationships and business rules are structured and passed downstream at inference time

  • Session and state management: conversation continuity context windowing across multi-turn interactions and memory summarisation patterns

  • Human-in-the-loop design: approval workflows confidence thresholds and escalation paths where AI-generated outputs require human validation before action

 

Competency Expectations

This role is calibrated to a Staff PM equivalent. Across QADs four PM competency pillars:

  • Product Execution Expert: Feature specification to Staff Engineer fidelity end-to-end delivery ownership and AI-specific quality gates (grounding rate retrieval relevance latency SLAs)

  • Customer Insight Expert: Translates discovery and usage data into product decisions. Understands that conversational UX quality is determined by the intelligence layer beneath it

  • Product Strategy Expert on vision and roadmapping; Intermediate on strategic impact with a clear growth path toward Advanced as the platform scales

  • Influencing People Intermediate on stakeholder management and managing up growing toward Advanced. No people management expectation; growth path is toward leading a TPO as the surface scales

 

Behavioural Signals Critical

  • Writes first asks second produces a concrete proposal or spec draft before escalating ambiguity

  • Distinguishes clearly between what is known assumed and needs validation and acts accordingly

  • Comfortable operating without a playbook defines the approach in novel problem spaces

  • Gravitates toward precision in language and specification understands that ambiguous requirements are a form of technical debt

 

Manufacturing or ERP Context Preferred

  • Familiarity with manufacturing ERP data models (inventory orders procurement quality) is a strong plus; not required if technical depth and learning velocity are demonstrated

  • Experience with operational analytics or supply chain intelligence products is valued especially where the product involved translating domain-specific data into natural language interfaces


Additional Information :

  • Your health and well being are important to us at QAD. We provide programs that help you strike a healthy work-life balance.
  • Opportunity to join a growing business launching into its next phase of expansion and transformation.
  • Collaborative culture of smart and hard-working people who support one another to get the job done.
  • An atmosphere of growth and opportunity where idea-sharing is always prioritized over level or hierarchy.
  • Compensation packages based on experience and desired skill set

 

Why This Role at QAD

  • End-to-end ownership: You define what gets built and ensure it lands from intelligence layer architecture to GTM motion and customer adoption

  • High-leverage surface: Copilot and Search are the primary interface through which manufacturing users experience QADs AI platform. The decisions you make here compound across the platform

  • Technical depth valued: Specification quality is the primary currency of influence in this environment. Strong product thinking is recognised and rewarded

  • Growth trajectory: Clear path from Staff PM to broader intelligence surface ownership including deeper agentic platform exposure and over time a small team

  • Pune platform hub: QAD is actively expanding its platform engineering and product capabilities in India you will be a founding voice in that growth

About QAD:

QAD  Redzone is redefining manufacturing and supply chains through its intelligent adaptive platform that connects people processes and data into a single System of Action. With three core pillars Redzone (frontline empowerment) Adaptive Applications (the intelligent backbone) and Champion AI (Agentic AI for manufacturing) QAD Redzone helps manufacturers operate with Champion Pace achieving measurable productivity resilience and growth in just 90 days.

QAD is committed to ensuring that every employee feels they work in an environment that values their contributions respects their unique perspectives and provides opportunities for growth regardless of background. QADs DEI program is driving higher levels of diversity equity and inclusion so that employees can bring their whole self to work.

We are an Equal Opportunity Employer and do not discriminate against any employee or applicant for employment because of race color sex age national origin religion sexual orientation gender identity status as a veteran and basis of disability or any other federal state or local protected class. 


Remote Work :

No


Employment Type :

Full-time

Role OverviewThis role owns the full product lifecycle for QADs Copilot Search and Conversational Analytics capabilities from architecture through to market launch. You will define what gets built why it matters to manufacturing users and how it reaches them: shaping the product vision driving engi...
View more view more

About Company

Company Logo

QAD is a virtual first company. While the job postings below indicate a city, state and country, the successful candidate can be located anywhere in the country listed on the job posting. Your primary work location at QAD will be virtual / working from home, with occasional travel int ... View more

View Profile View Profile