About Deborah
- Clarify the problem and align it with your business KPIs (no technology for technology's sake).
- Move fast from Scope→POC→MVP with proof (golden sets, scenario replays, A/B tests).
- Industrialize: guardrails, observability, escalation playbooks, post-launch reviews.
- Sell & deploy: AI narratives that speak to decision-makers, pricing/packaging, sales/CS enablement.
- Manage multidisciplinary teams (PM, Data, Eng, Design) with a clear cadence.
- 0→1→scale track record on 3 AI product lines, plus copilots/voice agents in production.
- Data-driven culture (cohorts, churn drivers, instrumentation) AND execution (rituals, quality, SLO).
- Ability to simplify AI for Enterprise sales cycles (targeted demos, quantified value proofs).
- AI Discovery→MVP (4–8 wks): PRD, user stories, offline/online evaluation, industrialization plan.
- LLM & Voice agents: playbooks, guardrails, AHT/FCR dashboards, API integrations, workflow, and automatic evaluations
- Interim CPO: OKR, roadmap, pricing/packaging, quality reviews & go-to-market.
- Deliverables: PRD & design specs, evaluation scorecards, architecture/observability diagrams, GTM decks, production runbooks.
English
Native or bilingual
Experience
- SunriseAI Product DirectorMEDICALAugust 2025 - Today (10 months)Paris, FranceFreelance AI Product Director in digital health, I manage the Scope → POC → MVP → Scale chain for clinical copilots and voice agents serving contact centers and sleep physicians, with cross-functional leadership (Ops, CC, Finance, Data, Eng, Design).
- Agent Governance & Quality: offline golden sets, regular scenario replays, online guardrails, and continuous observability; monitoring intents, grounding, escalations, and AHT/FCR/CSAT KPIs.
- Patient Ops & Stack: complete redesign of communication (irritant audit, standardized playbooks) and implementation of a stack (Front for omnichannel routing, SLA, analytics) integrated with EHR and telephony.
- Compliance & Explainability: traceability, consents, audit logs; formalized clinical explainability requirements.
- Delivery Cadence: weekly demos, quality gates, post-launch reviews (latency/relevance/security); tool-assisted triage and remediation.
- Impact: ↓ AHT, ↑ FCR, scaled through continuous self-evaluations
- MyTrafficAI Product DirectorSOFTWARE PUBLISHINGJune 2022 - June 2025 (3 years)Paris, FranceInterim CPO and AI Product Director mandates to design, launch, and scale 3 AI product lines in location intelligence (from 0→1→scale). AI/data strategy linked to impact metrics (adoption, retention, revenue contribution) and GTM (packaging/pricing/enablement). Management: 4 Senior PMs + 1 Senior Designer; alignment of Engineering / Data / Design through OKRs, rapid decision-making rituals (Discovery → precise PRDs → Design specs → Ship), and post-launch reviews (quality, latency, guardrails).
- GTM & Monetization: offering definition, pricing models, positioning; sales enablement (decks, battlecards, objection handling).
- Hands-on Sales Support: joint enterprise pitches, advanced discovery, narratives that make AI buyable, targeted demos, and quantified value proofs.
- Value Measurement: product instrumentation, adoption/retention/revenue dashboards, cohort analyses & churn drivers.
- Ops & Quality: release cadence, relevance/latency SLOs, triage/backlog, observability, and guardrails (post-mortems, remediation playbooks).
- Adoption & Training: workshops, customer playbooks, external content to accelerate onboarding and secure usage.
Impact: newly monetized AI offerings, shortened time-to-market, strengthened pipeline, sustainable execution discipline (cadence, quality, metrics). - OmdenaMachine Learning EngineerSeptember 2019 - August 2020 (11 months)ML Engineer within an international team, I designed and trained a U-Net model (Keras/TensorFlow) on satellite imagery (Google Earth Engine) to map micro-solar grids in Nigeria. I managed the end-to-end chain: data ingestion & cleaning, geospatial pre-processing, data augmentation, distributed training, and evaluation (IoU, F1) before experimental deployment.Beyond modeling, I structured dataset traceability (dataset/experiment versioning), documented reproducible pipelines, and led code reviews to ensure quality and maintainability.Impact: significant improvement in solar infrastructure detection, providing decision-support maps for deployment. Work conducted with an ethical approach (bias, limitations, uncertainty transparency) and MLOps reflexes (datasheets, logs/monitoring) that now inform my end-to-end AI product management (quality, observability, reproducibility).
Recommendations
Be the first to recommend Deborah
Help this freelancer shine by sharing your experience working together.
These freelancer profiles also match your criteria
Agatha Frydrych
Backend Java Software Engineer
4.7
(3)
2
Baptiste Duhen
Fullstack developer
4.6
(4)
5
Amed Hamou
Senior Lead Developer
4
(2)
7
Audrey Champion
Web developer
4.3
(3)
4
Education
- Engineer, Computer Science specializationENSEIRB2011
- ManagementKEDGE2011