AI screens 250 applicants before you finish your coffee.
Bonami X-AI scores every application against the full competency profile of the role and returns a ranked, explainable shortlist in minutes — so recruiters action the top 10 instead of skimming 250.
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Trusted by startups and global leaders
Standards We Build To
Compliance is a design constraint we wire in from day one — not a review step before launch. Every agent we ship is built to the security, privacy, and governance standards that enterprise data demands.
Privacy
Privacy & Data Protection
Customer and employee data protected across every region you operate in.
GDPR
CCPA
HIPAA
PIPEDA
DPDP Act 2023
Security
Security & Risk
Security and risk controls, independently audited.
SOC 2 Type II
ISO/IEC 27001
OWASP Top 10
NIST CSF
AI Governance
AI Governance & Trust
Responsible-AI controls built into every agent — auditable decisions, human-in-the-loop review, and guardrails against bias and data leakage.
ISO/IEC 42001
NIST AI RMF
EU AI Act
Model Audit Trails
Human-in-the-Loop
Data & Operations
Data Governance & Operations
Enterprise-grade data management with audit trails, role-based access, and validation engineered into every release rather than bolted on before launch.
Audit Trails
Role-Based Access
Data Residency
Release Validation
Accessibility
Accessibility
Usable by every employee and customer, by design.
WCAG 2.1 AA
Section 508
Reliability
Reliability & Uptime
Production-grade availability backed by monitoring and SLAs.
99.9% Uptime SLA
SSO / SAML
Encryption at Rest
Core Capabilities of the AI Candidate-to-Role Matching Agent
Six capability pillars — from multi-dimensional skills matching to internal talent mobility and AI-generated interview guides — that move HR, TA, and People Ops teams to structured, evidence-based talent matching at scale.
Builds a competency model from job descriptions, hiring-manager input, and historical success profiles — a 20–40 attribute scoring rubric that captures real role requirements, not a keyword list.
A composite score for every applicant in seconds — skills match, experience depth, career trajectory, and team fit, ranked and fully explainable.
Anonymised scoring strips name, gender, age, address, and school-prestige signals — candidates are ranked purely on demonstrated competencies.
A workforce skills graph built from HRIS data, performance reviews, and learning records — matched to open roles before external candidates.
Interview guides tailored to each shortlisted candidate's match profile — questions target identified skills gaps, not one generic set.
Personalised status updates at every pipeline stage — receipt acknowledgement, screening timelines, rejection feedback, and next-step guidance.
Builds a competency model from job descriptions, hiring-manager input, and historical success profiles — a 20–40 attribute scoring rubric that captures real role requirements, not a keyword list.
AI Candidate Scoring & Ranked Shortlists
A composite score for every applicant in seconds — skills match, experience depth, career trajectory, and team fit, ranked and fully explainable.
Bias Mitigation & Structured Fairness Controls
Anonymised scoring strips name, gender, age, address, and school-prestige signals — candidates are ranked purely on demonstrated competencies.
Personalised status updates at every pipeline stage — receipt acknowledgement, screening timelines, rejection feedback, and next-step guidance.
Security & Compliance Responsibility
Every AI agent we build is designed with data protection and security at its core — tailored to your compliance requirements.
Why People Leaders Deploy Bonami's
From Keyword Matching to Genuine Skills Intelligence
Traditional ATS filtering is keyword matching — a candidate either has "Python" in their resume or they are filtered out, regardless of whether they have demonstrated the underlying competency through adjacent tools or described outcomes.
From 250 Resumes to a Ranked, Explainable Shortlist in Minutes
The six-second resume review is a rational response to impossible volume — an enterprise TA team cannot give each 250-application role the deep review that accurate assessment requires.
From Hiring Manager Intuition to Structured, Defensible Decisions
Harvard Business Review research shows unstructured interviews predict job performance at a validity coefficient of just 0.38 — meaning gut-feel assessments are wrong about job performance nearly two-thirds of the time.
Real Business Impact
Our clients achieve measurable improvements in efficiency, customer experience, and operational performance. Here are some examples of what businesses actually accomplish with our solutions.
AI-Driven Social Media Personalization & Moderation Platform
Building a trust-centered social ecosystem with AI personalization, real-time moderation, and sentiment analytics — improving engagement by 70% and achieving 95%+ harmful content detection accuracy.
Improving scheduling efficiency by 45% with AI-driven conflict resolution, predictive workload balancing, and automated onboarding for distributed teams.
Our process is designed to be clear, collaborative, and focused on delivering real business value. We believe the best AI solutions come from understanding your specific challenges and goals first.
We start by learning about your business objectives, current systems, and team capabilities. This helps us identify the right opportunities for AI to make a real impact.
Based on what we learn, we create a detailed plan for your AI implementation. This includes technical requirements, timeline, and success metrics.
We develop the AI solution in iterative cycles with regular check-ins. This allows us to adjust based on your feedback and ensure everything works as expected.
We handle the technical deployment and train your team to use the new AI tools effectively. This includes documentation and hands-on support.
After launch, we continue to monitor performance, make improvements, and help you get the most value from your AI investment.
Why People Leaders Deploy Bonami's
From Keyword Matching to Genuine Skills Intelligence
Traditional ATS filtering is keyword matching — a candidate either has "Python" in their resume or they are filtered out, regardless of whether they have demonstrated the underlying competency through adjacent tools or described outcomes.
From 250 Resumes to a Ranked, Explainable Shortlist in Minutes
The six-second resume review is a rational response to impossible volume — an enterprise TA team cannot give each 250-application role the deep review that accurate assessment requires.
From Hiring Manager Intuition to Structured, Defensible Decisions
Harvard Business Review research shows unstructured interviews predict job performance at a validity coefficient of just 0.38 — meaning gut-feel assessments are wrong about job performance nearly two-thirds of the time.
Our Process
Core Capabilities of the AI Candidate-to-Role Matching Agent
Six capability pillars — from multi-dimensional skills matching to internal talent mobility and AI-generated interview guides — that move HR, TA, and People Ops teams to structured, evidence-based talent matching at scale.
Builds a competency model from job descriptions, hiring-manager input, and historical success profiles — a 20–40 attribute scoring rubric that captures real role requirements, not a keyword list.
AI Candidate Scoring & Ranked Shortlists
A composite score for every applicant in seconds — skills match, experience depth, career trajectory, and team fit, ranked and fully explainable.
Bias Mitigation & Structured Fairness Controls
Anonymised scoring strips name, gender, age, address, and school-prestige signals — candidates are ranked purely on demonstrated competencies.
The Right Candidate Is in Your Pipeline. Your Process Is Failing to Find Them.
The average corporate job posting receives 250 applications, yet recruiters spend only 6–7 seconds reviewing each resume — leading to one in three hires being considered a "bad hire" within the first year, with costs from $14,900 to $240,000 (SHRM).
Builds a competency model from job descriptions, hiring-manager input, and historical success profiles — a 20–40 attribute scoring rubric that captures real role requirements, not a keyword list.
AI Candidate Scoring & Ranked Shortlists
AI Candidate Scoring & Ranked Shortlists
A composite score for every applicant in seconds — skills match, experience depth, career trajectory, and team fit, ranked and fully explainable.
Bias Mitigation & Structured Fairness Controls
Bias Mitigation & Structured Fairness Controls
Anonymised scoring strips name, gender, age, address, and school-prestige signals — candidates are ranked purely on demonstrated competencies.
A workforce skills graph built from HRIS data, performance reviews, and learning records — matched to open roles before external candidates.
Our Technology
Technologies We Work With
Leveraging cutting-edge frameworks, AI models, and cloud-native tools to build production-grade solutions.
TensorFlow
Keras
Apache Spark
scikit-learn
Kubeflow
MLflow
Python
NumPy
Pandas
ONNX
OpenAI GPT
Claude (Anthropic)
Meta Llama
Mistral AI
Grok
Google Gemini
Cohere
Hugging Face
LangChain
LlamaIndex
Python
JavaScript
TypeScript
Java
Go
React
Node.js
Django
FastAPI
Flutter
AWS
Google Cloud
Azure
Helm
Terraform
Jenkins
GitHub
Grafana
Datadog
Prometheus
Cassandra
Redis (AWS ElastiCache)
AWS DynamoDB
AWS RDS
Azure Cosmos DB
Google Cloud SQL
Chroma
Elasticsearch
Snowflake
Kafka
Technologies That Are Transforming
Virtual Healthcare
We build dependable, scalable telemedicine apps that keep providers compliant and patients cared for — anytime, anywhere. Expect smooth connectivity, strong security, and interfaces people enjoy using.
1/5
AI for Smart Healthcare
We bring AI-driven diagnostics, automatic medical transcription, and predictive health insights into your telemedicine apps.
2/5
IoT for Remote Patient Monitoring
We build connected health systems using wearables, smart medical devices, and live monitoring dashboards.
3/5
Blockchain for Secure Medical Data Exchange
We build tamper-proof health records, encrypted transactions, and decentralized identity tools that protect patient privacy and enable compliant data sharing across telehealth systems.
4/5
Cloud Computing for Scalable & Secure Telemedicine
We build HIPAA-compliant telemedicine platforms with real-time data access, secure video calls, and easy patient–provider collaboration from anywhere.
5/5
AR & VR for Enhanced Virtual Care
We use immersive AR/VR to create meaningful healthcare experiences — from remote diagnostics and virtual therapy to hands-on medical training.
Future-Proof Your
Telemedicine App with
Advanced AI Integrations
We specialize in seamless AI integration to enhance your telemedicine platform development, ensuring smarter, more efficient, and more secure healthcare delivery. Here's a look at how AI integrations work in telemedicine applications.
Everything HR leaders, talent acquisition directors, and People Operations professionals need to know about deploying an AI Candidate-to-Role Matching Agent.
An AI Candidate-to-Role Matching Agent builds a structured competency model from role requirements and scores every applicant using semantic skills analysis — assessing demonstrated competencies, adjacent skill inference, career trajectory, and role-relevant experience depth.
The competency model is built from three sources and typically contains 20–40 weighted attributes. The job description is parsed to extract explicit requirements, preferred qualifications, and implicit competency signals.
Bias mitigation operates at three levels. At the input level, the job description analyser flags exclusionary language before posting.
Yes — internal talent mobility is a native capability and often the highest-ROI use case. The agent ingests workforce data from Workday, SAP SuccessFactors, or ADP to build a skills graph for each employee, drawing on current role, tenure, skills assessments, learning completion, performance ratings, and project assignments.
Each candidate appears as a structured profile card with a composite match percentage, a breakdown of scores across each weighted competency attribute, a strengths summary highlighting the strongest match areas, an identified gaps section noting where evidence was partial, and specific evidence from the application supporting each attribute score.
Interview guides are generated individually for each shortlisted candidate based on their specific match profile — not drawn from a static question bank.
The agent integrates natively with Workday Recruiting (HCM API), SAP SuccessFactors Recruiting (OData API), Greenhouse (Harvest API), Lever (Data API and Webhooks), and iCIMS (API v2).
Implementation runs 6–8 weeks. Weeks 1–2 cover ATS integration and application data ingestion, competency taxonomy configuration for the organisation's most common role families.
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