Real Time Bidding: The Complete Guide to Data-Driven Programmatic Advertising
Introduction: What is Real Time Bidding?
Real Time Bidding (RTB) represents the evolution of digital advertising from manual media buying to automated, data-driven campaigns that deliver measurable business results. RTB is an instantaneous auction process where advertisers bid on individual ad impressions as users load web pages, with the entire transaction completing in milliseconds.
Unlike traditional advertising where impressions are purchased in bulk packages, RTB enables precise targeting based on user behavior, context, and business objectives. Each impression becomes an opportunity to reach the right customer at the right moment with a message optimized for their specific journey stage.
Key Insight
RTB transforms advertising from a placement-based game to a performance-based discipline. At Digital Thrive, we leverage this technology to track real conversions, revenue, and cost per acquisition—exactly what drives business growth for our clients across the US, Canada, UK, Ireland, Australia, and New Zealand.
Why RTB Matters for Modern Advertising
In today's competitive digital landscape, manual media buying cannot compete with the precision and efficiency of RTB. The technology enables sophisticated targeting strategies that consider:
- User intent signals from search behavior and browsing patterns
- Contextual relevance based on page content and placement
- Cross-device identity for consistent messaging across touchpoints
- Real-time optimization based on performance data
RTB's power lies in its ability to continuously learn and adapt, ensuring your advertising budget focuses on impressions most likely to convert rather than reaching broad audiences with generic messaging. This data-driven approach complements other paid advertising strategies to create comprehensive campaigns.
How Real Time Bidding Works: The Technical Foundation
The RTB Ecosystem Architecture
The RTB ecosystem operates through a sophisticated network of interconnected platforms, each serving specific functions in the advertising value chain.
Demand Side Platforms (DSPs)
Demand Side Platforms serve as advertisers' command centers for managing RTB campaigns. These platforms provide comprehensive tools for:
- Audience targeting: First-party data integration, behavioral segmentation, and lookalike modeling
- Bid optimization: Machine learning algorithms that adjust bids based on conversion probability
- Campaign management: Budget allocation, frequency capping, and performance monitoring
- Creative optimization: Dynamic creative assembly and A/B testing frameworks
Leading DSPs include Google Display & Video 360, The Trade Desk, Amazon DSP, and Adobe Advertising Cloud, each offering unique advantages for different business needs and campaign objectives. These platforms often integrate with PPC tools to streamline campaign management.
Supply Side Platforms (SSPs)
Supply Side Platforms empower publishers to maximize revenue from their ad inventory through automated selling processes. Key features include:
- Yield optimization: Floor pricing strategies and auction type selection
- Inventory management: Ad placement control and audience verification
- Revenue analytics: Performance reporting and revenue attribution
- Brand safety controls: Content filtering and advertiser blocklists
Popular SSPs include Google Ad Manager, Magnite, OpenX, and Xandr, each connecting publishers with thousands of potential advertisers through RTB marketplaces.
Ad Exchanges
Ad Exchanges function as digital marketplaces facilitating real-time transactions between DSPs and SSPs. These platforms:
- Process auction logic: Handle bid requests, conduct auctions, and determine winners
- Standardize protocols: Ensure interoperability between different platforms using OpenRTB standards
- Provide transparency: Offer reporting on auction dynamics and pricing
- Enable targeting: Pass user and contextual data to inform bidding decisions
Major exchanges include Google Ad Exchange, AppNexus (now Xandr), Rubicon Project, and Index Exchange, each specializing in different types of inventory and geographies. These exchanges form the backbone of the best PPC ad networks available today.
The Real-Time Auction Process
The RTB auction process showcases remarkable technological efficiency, completing multiple complex operations in the time it takes to blink an eye.
Step-by-Step Breakdown
- User visits webpage → Browser sends ad request containing available ad slots
- SSP receives request → Packages user data, contextual information, and inventory details
- Bid request sent → Multiple DSPs receive auction invitation with targeting parameters
- Bidding occurs → DSPs analyze data against campaign objectives and submit bids
- Winner selection → Ad exchange conducts auction (typically second-price) and determines winner
- Ad delivery → Winning creative loads on user's screen, impression logged for optimization
This entire process completes in 100-200 milliseconds, requiring sophisticated infrastructure and low-latency connections between all platform components.
Auction Mechanics
Most RTB auctions use second-price auction models, where the winning bidder pays one cent more than the second-highest bid rather than their actual maximum bid. This encourages honest bidding and prevents advertisers from overpaying for impressions.
Digital Thrive's Data-Driven RTB Strategy
Beyond Basic Bidding: Our Competitive Advantage
While many agencies treat RTB as set-it-and-forget-it technology, we approach it as a sophisticated optimization challenge that integrates with your entire marketing ecosystem. Our interconnected strategy ensures RTB campaigns benefit from:
- SEO insights informing keyword selection, audience targeting, and landing page optimization
- Web analytics data driving conversion rate optimization and user journey mapping
- Cross-channel intelligence from email marketing, social media, and organic search
- AI-powered optimization testing creative variations and bidding strategies at scale
This holistic approach ensures your RTB campaigns don't operate in isolation but contribute to overall marketing objectives and business growth. We use advanced PPC competitive analysis to inform our bidding strategies.
Targeting Strategies That Drive Conversions
First-Party Data Integration
First-party data has become increasingly valuable in the privacy-first advertising landscape. We leverage multiple data sources to create comprehensive audience profiles:
- Customer data platform (CDP) integration for unified customer profiles across touchpoints
- Website visitor behavior analysis identifying high-intent audiences based on engagement patterns
- Email marketing audience insights segmenting users by engagement history and purchase behavior
- CRM data integration targeting high-value customer segments and lookalike audiences
This first-party data foundation enables precise targeting without relying on third-party cookies or invasive tracking methods.
Contextual and Behavioral Targeting
Our approach combines contextual relevance with behavioral insights to reach audiences at optimal moments:
- Real-time content analysis understanding page themes and user intent
- User intent recognition based on search patterns, browsing behavior, and device usage
- Purchase probability modeling identifying users most likely to convert based on behavioral signals
- Cross-device identity resolution delivering consistent messaging across multiple devices and platforms
Geographic and Demographic Precision
For clients serving specific markets, we implement sophisticated geographic and demographic targeting:
- Local market targeting for all service areas across North America, Europe, and Oceania
- Time-of-day optimization adjusting bids based on peak conversion times in different time zones
- Device-specific bidding strategies optimizing for mobile, desktop, and tablet performance differences
- Seasonal trend integration anticipating demand fluctuations and adjusting strategies accordingly
Implementation: Setting Up RTB Campaigns for Success
Campaign Architecture Best Practices
Account Structure for Maximum Control
Proper campaign architecture provides the foundation for precise optimization and reporting. We recommend a hierarchical structure:
Campaign > Ad Group > Targeting > Creative > Bid Strategy
This structure enables:
- Campaigns organized by objective: Awareness campaigns separated from conversion-focused initiatives
- Ad groups grouped by audience segments: Similar user characteristics grouped for targeted messaging
- Granular targeting controls: Precise control over demographics, geography, and behavioral parameters
- Creative testing frameworks: Built-in structures for testing variations across audience segments
Budget Allocation and Bid Optimization
Data-driven budget distribution ensures your advertising investment generates maximum returns:
- Historical performance analysis informing budget recommendations across campaigns and audiences
- A/B testing of bid strategies comparing performance across different optimization approaches
- Seasonal adjustment algorithms automatically scaling based on historical demand patterns
- Real-time budget shifting moving resources toward high-performing campaigns and audiences
Advanced Bidding Strategies
We implement sophisticated bidding strategies based on your specific business objectives:
- Target CPA (Cost Per Acquisition) optimization for customer acquisition campaigns
- Maximize Conversions with value adjustments for accounts with different customer values
- Target ROAS (Return On Ad Spend) optimization for eCommerce and revenue-focused campaigns
- Custom bidding models using first-party data for unique business requirements
Creative Optimization for RTB Success
Dynamic Creative Optimization (DCO)
Dynamic Creative Optimization revolutionizes ad creative by personalizing messages in real-time:
- Real-time creative assembly based on user data, context, and behavior
- Product recommendation integration showing relevant products based on browsing history
- Geographic customization incorporating local messaging and offers
- Behavioral response to user interactions adapting creative based on engagement patterns
DCO ensures each impression delivers the most relevant message possible, significantly improving engagement and conversion rates.
Testing Frameworks
Continuous creative testing maintains campaign performance and prevents ad fatigue:
- Multivariate testing across audience segments identifying winning combinations
- Creative fatigue monitoring tracking performance degradation over time
- Performance-based creative weighting allocating impressions to best-performing variations
- Cross-platform creative consistency maintaining brand messaging across channels
Privacy-First RTB: Navigating the 2025 Landscape
Adapting to Cookie-Less Advertising
The digital advertising ecosystem is undergoing fundamental changes as third-party cookies phase out and privacy regulations become more stringent. Successful RTB strategies must adapt to this new reality.
First-Party Data Strategies
Building robust first-party data capabilities has become essential for effective RTB:
- Comprehensive data collection implementing tracking systems across all customer touchpoints
- Contextual targeting resurgence leveraging page content and placement relevance
- Privacy-compliant audience segmentation using consented data for targeting decisions
- Consent management platform integration ensuring compliance with global privacy regulations
Alternative Identification Methods
As cookies become less viable, the industry is developing privacy-preserving identification methods:
- Unified ID 2.0 and industry collaboration open-source identity solutions based on email hashes
- Email-based identity resolution matching users across platforms using hashed email addresses
- Probabilistic matching algorithms using device characteristics and behavioral patterns
- Privacy-preserving data collaboration secure multi-party computation for audience insights
Compliance and Brand Safety
Regulatory Compliance
Operating across multiple jurisdictions requires comprehensive compliance strategies:
- GDPR (Europe) requirements for lawful data processing and user consent
- CCPA/CPRA (California) privacy rights including data deletion and opt-out mechanisms
- PIPEDA (Canada) privacy compliance for Canadian user data
- Industry self-regulation participation in accountability programs and best practices
Brand Safety Controls
Protecting brand reputation requires sophisticated filtering and monitoring systems:
- Pre-bid filtering for inappropriate content and brand-unsafe environments
- Real-time brand safety monitoring continuous assessment of placement suitability
- Sensitive category exclusions avoiding content that conflicts with brand values
- Custom brand safety rule sets tailoring filters to specific brand guidelines
Performance Measurement: What Actually Matters
Key Performance Indicators (KPIs) That Drive Business Value
At Digital Thrive, we focus on metrics that directly impact your bottom line rather than vanity metrics that look impressive but don't drive business results.
Conversion-Focused Metrics
- Cost Per Acquisition (CPA): The true cost to acquire a customer, including all campaign expenses
- Return On Ad Spend (ROAS): Revenue generated for every dollar invested in advertising
- Conversion Rate: Percentage of ad clicks that result in desired actions (purchases, leads, signups)
- Customer Lifetime Value (CLV): Long-term revenue potential of acquired customers
Diagnostic Metrics for Optimization
While conversion metrics measure success, diagnostic metrics provide insights for improvement:
- View-Through Conversions: Assisted conversions from users who saw ads but didn't click
- Frequency Cap Performance: Analysis of optimal exposure frequency to avoid ad fatigue
- Inventory Quality Metrics: Placement performance analysis identifying high-value inventory
- Audience Segment Performance: Detailed insights into demographic and behavioral segment effectiveness
Attribution and Multi-Touch Analysis
Understanding the Customer Journey
Modern customer journeys span multiple touchpoints and channels, requiring sophisticated attribution modeling:
- Multi-touch attribution modeling assigning credit to all relevant touchpoints in conversion paths
- Cross-device conversion tracking understanding how users interact across different devices
- Assisted conversion value analysis measuring how RTB campaigns support other marketing channels
- Time-lag analysis understanding consideration cycles and conversion timing
RTB's Role in the Full Funnel
RTB campaigns serve different strategic purposes across the marketing funnel:
- Upper-funnel awareness impact increasing brand visibility and consideration
- Mid-funnel consideration acceleration supporting users through evaluation phases
- Lower-funnel conversion efficiency driving final conversion decisions
- Post-click behavior analysis understanding how ad-influenced users behave after conversion
Advanced Optimization Strategies
Machine Learning and AI Integration
Artificial intelligence and machine learning have transformed RTB from manual optimization to automated, predictive systems that continuously improve performance.
Predictive Bidding
Machine learning algorithms analyze vast amounts of data to predict optimal bid amounts for each impression:
- Historical performance pattern recognition identifying factors that predict conversion likelihood
- Real-time market condition analysis adjusting bids based on competition and inventory availability
- Competitive bid prediction modeling anticipating competitor bidding strategies
- Seasonal trend forecasting anticipating performance fluctuations based on historical patterns
Automated Optimization Rules
AI systems continuously monitor and adjust campaigns based on performance data:
- Performance-based bid adjustments automatically increasing bids for high-performing segments
- Budget pacing algorithms ensuring consistent spend distribution throughout campaigns
- Audience segment reallocation shifting resources toward best-performing audience segments
- Creative performance weighting allocating impressions based on creative effectiveness
Cross-Channel Synergy
RTB + Search Integration
Integrating RTB with search advertising creates powerful synergy across channels:
- Search remarketing campaigns targeting users based on search history and behavior
- Keyword-based audience targeting using search intent signals for programmatic targeting
- Performance data sharing across channels optimizing overall marketing mix
- Sequential messaging strategies coordinating messages across search and display channels
Social Media Amplification
Social media data enhances RTB targeting and performance:
- Social-to-programmatic retargeting reaching users who engaged with social content
- Lookalike audience modeling expanding reach to users similar to existing customers
- Cross-platform frequency capping preventing ad overexposure across channels
- Consistent messaging across touchpoints maintaining brand coherence throughout customer journeys
Common RTB Challenges and Solutions
Technical Implementation Hurdles
Data Integration Complexity
Challenge: Connecting multiple data sources, platforms, and tracking systems into a cohesive whole requires significant technical expertise and resources.
Solution: Implement centralized data management with custom API integrations and robust testing protocols. Our approach includes:
- Custom data pipelines connecting first-party data sources to bidding platforms
- Comprehensive testing frameworks ensuring data accuracy and reliability
- Monitoring and alerting systems identifying issues before they impact performance
- Documentation and training ensuring team understanding of complex systems
Real-Time Optimization Demands
Challenge: RTB campaigns require constant monitoring and adjustment to maintain optimal performance, creating significant operational overhead.
Solution: Deploy AI-powered automation with human oversight for strategic decisions:
- Automated bid optimization algorithms making thousands of adjustments per second
- Anomaly detection systems identifying unusual performance patterns
- Human review processes for significant strategy changes and budget allocations
- Performance dashboards providing real-time insights into campaign health
Performance Optimization Issues
Inventory Quality Variations
Challenge: Performance varies dramatically across different placements and publishers, making it difficult to maintain consistent results.
Solution: Implement granular placement monitoring with automatic quality control systems:
- Placement performance tracking identifying high and low-performing inventory
- Automatic exclusion rules removing underperforming placements from campaigns
- Quality scoring systems rating inventory based on performance and brand safety
- Premium inventory targeting focusing budget on verified high-quality placements
Audience Saturation and Fatigue
Challenge: Over-targeting the same audiences leads to diminishing returns and reduced engagement over time.
Solution: Deploy comprehensive audience management and refresh strategies:
- Frequency capping systems limiting exposure to prevent ad fatigue
- Audience refresh strategies introducing new users into targeting segments
- Creative rotation systems regularly updating ad creative and messaging
- Lookalike expansion identifying and targeting similar user segments
Future Trends: The Evolution of RTB
Emerging Technologies and Opportunities
Connected TV (CTV) and OTT Advertising
The growth of streaming services and connected TV devices has created new RTB opportunities:
- Household-level targeting capabilities reaching specific households rather than individuals
- Premium video inventory access advertising on high-quality streaming content
- Cross-screen measurement solutions understanding how CTV advertising impacts other devices
- Programmatic guaranteed buying options reserving premium inventory while maintaining automation
Digital Out-of-Home (DOOH) Integration
Programmatic technology is transforming traditional outdoor advertising:
- Real-time bidding on digital billboards purchasing DOOH inventory through automated systems
- Contextual advertising in physical spaces triggering ads based on location and time
- Mobile location data integration measuring physical store visits from digital advertising
- Weather and event-triggered advertising adjusting messaging based on current conditions
Privacy-Preserving Innovation
New technologies enable effective advertising while protecting user privacy:
- Differential privacy adding mathematical noise to data to protect individual privacy
- Federated learning training machine learning models on decentralized data without data sharing
- Zero-knowledge proof applications verifying information without revealing sensitive data
- Blockchain for transparency creating auditable records of ad transactions and placements
Industry Consolidation and Evolution
Platform Convergence
The RTB ecosystem is experiencing significant consolidation and integration:
- DSP and SSP functionality merging creating unified advertising platforms
- All-in-one advertising platforms simplifying the advertising technology stack
- Direct integration with publishers reducing intermediaries in the supply chain
- Supply chain simplification efforts making programmatic advertising more transparent and efficient
Measurement Standardization
Industry initiatives are working to standardize measurement across platforms and channels:
- Cross-platform measurement initiatives creating unified metrics for all digital advertising
- Attention-based metrics development measuring actual user engagement rather than just impressions
- Brand lift measurement automation providing consistent brand impact measurement
- Viewability standard evolution updating standards to reflect new ad formats and platforms
Getting Started with RTB: Implementation Roadmap
Phase 1: Foundation Setup (Weeks 1-2)
The initial phase focuses on establishing the technical and strategic foundation for successful RTB campaigns:
- Data collection and integration setup implementing tracking systems across all customer touchpoints
- Platform selection and account configuration choosing appropriate DSPs and SSPs for your business needs
- Tracking implementation and testing ensuring accurate conversion tracking and measurement
- Initial audience segmentation strategy defining target audiences based on business objectives
This phase requires careful attention to technical implementation details to ensure accurate data collection and reliable campaign performance measurement.
Phase 2: Pilot Campaign Launch (Weeks 3-4)
With foundations in place, we launch controlled test campaigns to gather performance data:
- Small-scale campaign testing running limited-budget campaigns to test targeting and creative approaches
- Performance baseline establishment measuring initial results to set optimization targets
- Creative development and testing creating and testing multiple ad variations
- Optimization rule setup implementing initial automated optimization rules based on business objectives
This phase focuses on learning and iteration rather than scale, using performance data to refine strategies before full deployment.
Phase 3: Scale and Optimize (Weeks 5-8)
As performance data accumulates, we expand successful campaigns and implement advanced strategies:
- Campaign scaling based on performance increasing budgets for high-performing campaigns and audiences
- Advanced targeting implementation deploying sophisticated audience segmentation and targeting tactics
- Automated optimization deployment implementing AI-driven bid optimization and campaign management
- Cross-channel integration development coordinating RTB campaigns with other marketing channels
This phase balances growth with optimization, ensuring that scaling maintains or improves performance efficiency.
Phase 4: Advanced Optimization (Ongoing)
With mature campaigns in place, we focus on continuous improvement and innovation:
- Machine learning model deployment implementing custom predictive models for your specific business
- Predictive bidding implementation using advanced algorithms to optimize bid decisions
- Advanced attribution setup implementing sophisticated multi-touch attribution modeling
- Continuous testing and refinement maintaining performance through ongoing experimentation and optimization
This phase never ends—successful RTB campaigns require continuous attention to maintain peak performance in the evolving digital landscape.
Why Digital Thrive for RTB Campaigns
The Interconnected Advantage
Our approach to RTB doesn't exist in isolation. Every campaign benefits from deep integration with your entire marketing ecosystem, creating synergies that amplify results across all channels.
SEO Integration
Organic search insights directly inform paid advertising strategies:
- Organic search data informs paid targeting identifying keywords and audience segments that convert
- Keyword performance across channels understanding how search behavior translates to display engagement
- Landing page optimization insights using organic search data to improve paid advertising landing pages
- Content strategy alignment coordinating organic and paid messaging for maximum impact
Web Development Excellence
Technical expertise ensures your advertising campaigns benefit from optimized digital properties:
- Landing page conversion optimization creating high-converting landing pages specifically for paid traffic
- Site speed monitoring and improvement ensuring fast loading times that maintain campaign performance
- Mobile experience optimization providing seamless experiences across all devices and platforms
- Technical SEO support ensuring paid advertising supports and benefits from organic search performance
Analytics and Data Science
Advanced analytics capabilities provide insights that drive continuous improvement:
- Custom attribution modeling understanding the true impact of each touchpoint in customer journeys
- Advanced audience segmentation identifying and targeting high-value customer segments
- Performance prediction algorithms forecasting results and optimizing budget allocation
- Competitive intelligence analysis understanding market dynamics and competitor strategies
Transparent, Remote-First Partnership
Our operating model provides premium expertise without geographic limitations:
- Clear dashboards and reporting providing visibility into campaign performance and ROI
- Regular performance reviews strategic consultations to align campaigns with business objectives
- Strategic consultation included expert guidance on marketing strategy beyond campaign management
- No geographic limitations on expertise accessing top talent regardless of location
Proven Process, Proven Results
Our RTB campaigns follow the same rigorous methodology that delivers results across all our digital marketing services:
- Discovery & Goal Setting – Deep understanding of your business objectives, target audiences, and success metrics
- Campaign Architecture – Building structures for precise control, testing, and optimization at scale
- Creative Development & Testing – Continuous improvement based on performance data and market insights
- Launch, Monitor, Optimize – Data-driven adjustments, not set-it-and-forget-it management
This process ensures your RTB campaigns deliver measurable business results while maintaining the flexibility to adapt to changing market conditions and business needs.
Frequently Asked Questions
How quickly can RTB campaigns start showing results?
RTB campaigns can generate traffic and impressions immediately upon launch, but optimal performance emerges through continuous testing and refinement. Initial learning periods typically last 2-4 weeks as algorithms gather data and optimization rules take effect. We focus on sustainable improvements rather than temporary wins that don't translate to long-term business value.
How does RTB work with privacy regulations like GDPR?
We implement comprehensive privacy-compliant strategies including obtaining proper consent through Consent Management Platforms (CMPs), focusing on first-party data strategies that respect user privacy, and maintaining detailed records of data processing activities. Our approach ensures compliance while maintaining campaign effectiveness through sophisticated targeting alternatives.
What's the difference between RTB and programmatic direct?
RTB involves real-time auctions for individual impressions, allowing precise targeting and dynamic optimization based on performance data. Programmatic direct involves pre-negotiated deals for specific inventory or audience segments at fixed prices. Both have strategic roles—RTB offers flexibility and optimization potential, while programmatic direct provides guaranteed access to premium inventory.
How do you measure RTB success beyond clicks?
We focus on business outcomes that directly impact your bottom line: conversions, revenue, cost per acquisition, and return on ad spend. Clicks and impressions serve as diagnostic metrics for optimization but are never treated as success indicators. Our comprehensive attribution modeling connects RTB campaigns to actual business results across the entire customer journey.
Can RTB work for small businesses with limited budgets?
Yes, RTB's efficiency and precision make it accessible for businesses of all sizes. The technology's ability to target specific audiences and optimize in real-time means smaller budgets can compete effectively with larger advertisers. We typically start with focused campaigns targeting high-value audience segments and scale based on performance data and business objectives.
Take the Next Step with Data-Driven RTB
Ready to transform your digital advertising with Real Time Bidding that delivers measurable business results? Digital Thrive combines cutting-edge RTB technology with proven data-driven strategies that connect every aspect of your digital marketing ecosystem.
Our integrated approach ensures your RTB campaigns benefit from comprehensive digital marketing expertise, technical excellence, and continuous optimization based on actual business results rather than vanity metrics.
Contact us for a free RTB consultation and campaign audit
Digital Thrive provides RTB and programmatic advertising services to businesses across the US, Canada, UK, Ireland, Australia, and New Zealand. Our remote-first approach delivers premium expertise without geographic limitations, ensuring access to top talent regardless of your location.
Sources
- 2024 Guide to Real-Time Bidding (RTB) in Programmatic Advertising - Comprehensive RTB technology overview and 2024 trends analysis
- Google Ads Help Center - Real-time bidding - Official documentation on RTB implementation and best practices
- IAB Tech Lab - OpenRTB Specification - Technical standards for real-time bidding protocols and implementation
- Digital Thrive Knowledge Base - Paid Advertising Service Documentation - Data-driven approach to paid advertising campaigns
- eMarketer - Programmatic Advertising Trends 2024 - Industry research on programmatic advertising growth and evolution
- Interactive Advertising Bureau (IAB) - Privacy Framework - Privacy guidelines and compliance standards for digital advertising
- Google Marketing Platform - Attribution Modeling - Best practices for cross-channel attribution and measurement
- Forrester Research - The Total Economic Impact of RTB - ROI analysis and business impact assessment of real-time bidding implementation
- AdExchanger - Programmatic Advertising News - Industry updates and trends in programmatic advertising technology
- MarketingLand - RTB Optimization Strategies - Tactical approaches for improving RTB campaign performance