Subjective evaluation is the gold standard for the evaluation of speech in different tasks such as text-to-speech (TTS), and voice-cloning (VC). However, these evaluations can be costly, time-consuming, and not easily scalable. Therefore, to tackle these challenges, we propose IndicMOS, a multilingual MOS predictor for Indian languages. We train our models on ratings data from Indic TTS and TTS + VC Challenges. We assess open-source MOS predictors, train unsupervised MOS predictors and fine-tune Wav2Vec2-based pre-trained models. We further incorporate additional features to enhance performance. Additionally, we analyze zero-shot evaluation results for Indian languages, presenting mean squared error and correlation metrics. Achieving a Kendall Tau of 0.8095 (system level) and 0.7143 (utterance level) for TTS, and 0.5131 (system level) and 0.4292 (utterance level) for TTS + VC, we also release our best models as open-source.